140 results on '"Velez-Edwards, DR"'
Search Results
2. The genetic basis of endometriosis and comorbidity with other pain and inflammatory conditions
- Author
-
Rahmioglu, N, Mortlock, S, Ghiasi, M, Moller, PL, Stefansdottir, L, Galarneau, G, Turman, C, Danning, R, Law, MH, Sapkota, Y, Christofidou, P, Skarp, S, Giri, A, Banasik, K, Krassowski, M, Lepamets, M, Marciniak, B, Noukas, M, Perro, D, Sliz, E, Sobalska-Kwapis, M, Thorleifsson, G, Topbas-Selcuki, NF, Vitonis, A, Westergaard, D, Arnadottir, R, Burgdorf, KS, Campbell, A, Cheuk, CSK, Clementi, C, Cook, J, De Vivo, I, DiVasta, A, Dorien, O, Donoghue, JF, Edwards, T, Fontanillas, P, Fung, JN, Geirsson, RT, Girling, JE, Harkki, P, Harris, HR, Healey, M, Heikinheimo, O, Holdsworth-Carson, S, Hostettler, IC, Houlden, H, Houshdaran, S, Irwin, JC, Jarvelin, M-R, Kamatani, Y, Kennedy, SH, Kepka, E, Kettunen, J, Kubo, M, Kulig, B, Kurra, V, Laivuori, H, Laufer, MR, Lindgren, CM, MacGregor, S, Mangino, M, Martin, NG, Matalliotaki, C, Matalliotakis, M, Murray, AD, Ndungu, A, Nezhat, C, Olsen, CM, Opoku-Anane, J, Padmanabhan, S, Paranjpe, M, Peters, M, Polak, G, Porteous, DJ, Rabban, J, Rexrode, KM, Romanowicz, H, Saare, M, Saavalainen, L, Schork, AJ, Sen, S, Shafrir, AL, Siewierska-Gorska, A, Slomka, M, Smith, BH, Smolarz, B, Szaflik, T, Szyllo, K, Takahashi, A, Terry, KL, Tomassetti, C, Treloar, SA, Vanhie, A, Vincent, K, Vo, KC, Werring, DJ, Zeggini, E, Zervou, M, Stefansson, K, Nyegaard, M, Uimari, O, Yurttas-Beim, P, Tung, JY, Adachi, S, Buring, JE, Ridker, PM, D'Hooghe, T, Goulielmos, GN, Hapangama, DK, Hayward, C, Horne, AW, Low, S-K, Martikainen, H, Chasman, D, Rogers, PAW, Saunders, PT, Sirota, M, Spector, T, Strapagiel, D, Whiteman, DC, Giudice, LC, Velez-Edwards, DR, Kraft, P, Salumets, A, Nyholt, DR, Magi, R, Becker, CM, Steinthorsdottir, V, Missmer, SA, Montgomery, GW, Morris, AP, Zondervan, KT, Rahmioglu, N, Mortlock, S, Ghiasi, M, Moller, PL, Stefansdottir, L, Galarneau, G, Turman, C, Danning, R, Law, MH, Sapkota, Y, Christofidou, P, Skarp, S, Giri, A, Banasik, K, Krassowski, M, Lepamets, M, Marciniak, B, Noukas, M, Perro, D, Sliz, E, Sobalska-Kwapis, M, Thorleifsson, G, Topbas-Selcuki, NF, Vitonis, A, Westergaard, D, Arnadottir, R, Burgdorf, KS, Campbell, A, Cheuk, CSK, Clementi, C, Cook, J, De Vivo, I, DiVasta, A, Dorien, O, Donoghue, JF, Edwards, T, Fontanillas, P, Fung, JN, Geirsson, RT, Girling, JE, Harkki, P, Harris, HR, Healey, M, Heikinheimo, O, Holdsworth-Carson, S, Hostettler, IC, Houlden, H, Houshdaran, S, Irwin, JC, Jarvelin, M-R, Kamatani, Y, Kennedy, SH, Kepka, E, Kettunen, J, Kubo, M, Kulig, B, Kurra, V, Laivuori, H, Laufer, MR, Lindgren, CM, MacGregor, S, Mangino, M, Martin, NG, Matalliotaki, C, Matalliotakis, M, Murray, AD, Ndungu, A, Nezhat, C, Olsen, CM, Opoku-Anane, J, Padmanabhan, S, Paranjpe, M, Peters, M, Polak, G, Porteous, DJ, Rabban, J, Rexrode, KM, Romanowicz, H, Saare, M, Saavalainen, L, Schork, AJ, Sen, S, Shafrir, AL, Siewierska-Gorska, A, Slomka, M, Smith, BH, Smolarz, B, Szaflik, T, Szyllo, K, Takahashi, A, Terry, KL, Tomassetti, C, Treloar, SA, Vanhie, A, Vincent, K, Vo, KC, Werring, DJ, Zeggini, E, Zervou, M, Stefansson, K, Nyegaard, M, Uimari, O, Yurttas-Beim, P, Tung, JY, Adachi, S, Buring, JE, Ridker, PM, D'Hooghe, T, Goulielmos, GN, Hapangama, DK, Hayward, C, Horne, AW, Low, S-K, Martikainen, H, Chasman, D, Rogers, PAW, Saunders, PT, Sirota, M, Spector, T, Strapagiel, D, Whiteman, DC, Giudice, LC, Velez-Edwards, DR, Kraft, P, Salumets, A, Nyholt, DR, Magi, R, Becker, CM, Steinthorsdottir, V, Missmer, SA, Montgomery, GW, Morris, AP, and Zondervan, KT
- Abstract
Endometriosis is a common condition associated with debilitating pelvic pain and infertility. A genome-wide association study meta-analysis, including 60,674 cases and 701,926 controls of European and East Asian descent, identified 42 genome-wide significant loci comprising 49 distinct association signals. Effect sizes were largest for stage 3/4 disease, driven by ovarian endometriosis. Identified signals explained up to 5.01% of disease variance and regulated expression or methylation of genes in endometrium and blood, many of which were associated with pain perception/maintenance (SRP14/BMF, GDAP1, MLLT10, BSN and NGF). We observed significant genetic correlations between endometriosis and 11 pain conditions, including migraine, back and multisite chronic pain (MCP), as well as inflammatory conditions, including asthma and osteoarthritis. Multitrait genetic analyses identified substantial sharing of variants associated with endometriosis and MCP/migraine. Targeted investigations of genetically regulated mechanisms shared between endometriosis and other pain conditions are needed to aid the development of new treatments and facilitate early symptomatic intervention.
- Published
- 2023
3. Publisher Correction:Discovery of rare variants associated with blood pressure regulation through meta-analysis of 1.3 million individuals
- Author
-
Surendran, P, Feofanova, EV, Lahrouchi, N, Ntalla, I, Karthikeyan, S, Cook, J, Chen, L, Mifsud, B, Yao, C, Kraja, AT, Cartwright, JH, Hellwege, JN, Giri, A, Tragante, V, Thorleifsson, G, Liu, DJ, Prins, BP, Stewart, ID, Cabrera, CP, Eales, JM, Akbarov, A, Auer, PL, Bielak, LF, Bis, JC, Braithwaite, VS, Brody, JA, Daw, EW, Warren, HR, Drenos, F, Nielsen, SF, Faul, JD, Fauman, EB, Fava, C, Ferreira, T, Foley, CN, Franceschini, N, Gao, H, Giannakopoulou, O, Giulianini, F, Gudbjartsson, DF, Guo, X, Harris, SE, Havulinna, AS, Helgadottir, A, Huffman, JE, Hwang, S-J, Kanoni, S, Kontto, J, Larson, MG, Li-Gao, R, Lindstrom, J, Lotta, LA, Lu, Y, Luan, J, Mahajan, A, Malerba, G, Masca, NGD, Mei, H, Menni, C, Mook-Kanamori, DO, Mosen-Ansorena, D, Muller-Nurasyid, M, Pare, G, Paul, DS, Perola, M, Poveda, A, Rauramaa, R, Richard, M, Richardson, TG, Sepulveda, N, Sim, X, Smith, AV, Smith, JA, Staley, JR, Stanakova, A, Sulem, P, Theriault, S, Thorsteinsdottir, U, Trompet, S, Varga, TV, Velez Edwards, DR, Veronesi, G, Weiss, S, Willems, SM, Yao, J, Young, R, Yu, B, Zhang, W, Zhao, J-H, Zhao, W, Evangelou, E, Aeschbacher, S, Asllanaj, E, Blankenberg, S, Bonnycastle, LL, Bork-Jensen, J, Brandslund, I, Braund, PS, Burgess, S, Cho, K, Christensen, C, Connell, J, De Mutsert, R, Dominiczak, AF, Dorr, M, Eiriksdottir, G, Farmaki, A-E, Gaziano, JM, Grarup, N, Grove, ML, Hallmans, G, Hansen, T, Have, CT, Heiss, G, Jorgensen, ME, Jousilahti, P, Kajantie, E, Kamat, M, Karajamaki, A, Karpe, F, Koistinen, HA, Kovesdy, CP, Kuulasmaa, K, Laatikainen, I, Lannfelt, L, Lee, I-T, Lee, W-J, Linneberg, A, Martin, LW, Moitry, M, Nadkarni, G, Neville, MJ, Palmer, CNA, Papanicolaou, GJ, Pedersen, O, Peters, J, Poulter, N, Rasheed, A, Rasmussen, KL, Rayner, NW, Magi, R, Renstrom, F, Rettig, R, Rossouw, J, Schreiner, PJ, Sever, PS, Sigurdsson, EL, Skaaby, T, Sun, YV, Sundstrom, J, Thorgeirsson, G, Esko, T, Trabetti, E, Tsao, PS, Tuomi, T, Turner, ST, Tzoulaki, I, Vaartjes, I, Vergnaud, A-C, Willer, CJ, Wilson, PWF, Witte, DR, Yonova-Doing, E, Zhang, H, Aliya, N, Almgren, P, Amouyel, P, Asselbergs, FW, Barnes, MR, Blakemore, AI, Boehnke, M, Bots, ML, Bottinger, EP, Buring, JE, Chambers, JC, Chen, Y-DI, Chowdhury, R, Conen, D, Correa, A, Davey Smith, G, Boer, RAD, Deary, IJ, Dedoussis, G, Deloukas, P, Di Angelantonio, E, Elliott, P, Felix, SB, Ferrieres, J, Ford, I, Fornage, M, Franks, PW, Franks, S, Frossard, P, Gambaro, G, Gaunt, TR, Groop, L, Gudnason, V, Harris, TB, Hayward, C, Hennig, BJ, Herzig, K-H, Ingelsson, E, Tuomilehto, J, Jarvelin, M-R, Jukema, JW, Kardia, SLR, Kee, F, Kooner, JS, Kooperberg, C, Launer, LJ, Lind, L, Loos, RJF, Majumder, AAS, Laakso, M, McCarthy, MI, Melander, O, Mohlke, KL, Murray, AD, Nordestgaard, BG, Orho-Melander, M, Packard, CJ, Padmanabhan, S, Palmas, W, Polasek, O, Porteous, DJ, Prentice, AM, Province, MA, Relton, CL, Rice, K, Ridker, PM, Rolandsson, O, Rosendaal, FR, Rotter, JI, Rudan, I, Salomaa, V, Samani, NJ, Sattar, N, Sheu, WH-H, Smith, BH, Soranzo, N, Spector, TD, Starr, JM, Sebert, S, Taylor, KD, Lakka, TA, Timpson, NJ, Tobin, MD, Van der Harst, P, Van der Meer, P, Ramachandran, VS, Verweij, N, Virtamo, J, Volker, U, Weir, DR, Zeggini, E, Charchar, FJ, Wareham, NJ, Langenberg, C, Tomaszewski, M, Butterworth, AS, Caulfield, MJ, Danesh, J, Edwards, TL, Holm, H, Hung, AM, Lindgren, CM, Liu, C, Manning, AK, Morris, AP, Morrison, AC, O'Donnell, CJ, Psaty, BM, Saleheen, D, Stefansson, K, Boerwinkle, E, Chasman, DI, Levy, D, Newton-Cheh, C, Munroe, PB, Howson, JMM, and United Kingdom Research and Innovation
- Subjects
Genetics & Heredity ,Understanding Society Scientific Group ,Science & Technology ,business.industry ,Published Erratum ,Million Veteran Program ,MEDLINE ,Computational biology ,06 Biological Sciences ,Biology ,Blood pressure ,Text mining ,Meta-analysis ,EPIC-InterAct ,Genetics ,ComputingMethodologies_DOCUMENTANDTEXTPROCESSING ,business ,Life Sciences & Biomedicine ,EPIC-CVD ,11 Medical and Health Sciences ,LifeLines Cohort Study ,Developmental Biology - Abstract
In the version of this article originally published, the e-mail address of corresponding author Patricia B. Munroe was incorrect. The error has been corrected in the HTML and PDF versions of the article.
- Published
- 2021
- Full Text
- View/download PDF
4. Genomic analyses for age at menarche identify 389 independent signals and indicate BMI-independent effects of puberty timing on cancer susceptibility
- Author
-
Nora Franceschini, Rico Rueedi, Gerardo Heiss, Behrooz Z. Alizadeh, Marike Gabrielson, Henry Völzke, Daniela Ruggiero, Judith S. Brand, Stig E. Bojesen, Iffat Rahman, Fergus J. Couch, Patrick Sulem, Harold Snieder, Jenny Chang-Claude, Caterina Barbieri, Ute Hamann, Hinds D, Pascal Guénel, Amanda B. Spurdle, Paul M. Ridker, Ulla Sovio, Roger L. Milne, Hamdi Mbarek, H Brenner, Hilary K. Finucane, Maristella Steri, Lude Franke, Emmi Tikkanen, Ivana Kolcic, Vitart, Ken K. Ong, Alison M. Dunning, Aarno Palotie, Caroline Hayward, Jouke J. Hottenga, Abhishek Sarkar, Stefania Lenarduzzi, Nicholas G. Martin, Katharina E. Schraut, Eva Albrecht, Hiltrud Brauch, Lisette Stolk, Joop S.E. Laven, Penelope A. Lind, Ilaria Gandin, Patrik K. E. Magnusson, Ellen A. Nohr, Tanguy Corre, Jing Hua Zhao, N J Timpson, Jenny A. Visser, Harald Grallert, P. A. Fasching, Susan M. Ring, Stöckl D, Grant W. Montgomery, Marzyeh Amini, Velez Edwards Dr, Thomas Meitinger, Qinghua Wang, David Karasik, Daniel I. Chasman, Nicholas J. Wareham, Alexander Teumer, Mellissa C. Southey, Kathryn L. Lunetta, S. E. Medland, Dieter Flesch-Janys, Maartje J. Hooning, Lili Milani, D Lambrechts, Ozren Polasek, Po-Ru Loh, James F. Wilson, Campbell A, Julian Peto, Ellen W. Demerath, Christian Gieger, de Geus Ej, Cox A, Javier Benítez, Mitul Shah, Eric Boerwinkle, Matthias W. Beckmann, Thorsteindottir U, Julie E. Buring, De Vivo I, Hannes Helgason, Paolo Radice, Tracy A. O'Mara, L. J. Launer, D. F. Gudbjartsson, Frits R. Rosendaal, C.A. Hartman, Stefania Bandinelli, Felix R. Day, Lynda M. Rose, van Dijk Kw, Natalia Perjakova, Anneli Pouta, Igor Rudan, Sven Bergmann, Kamila Czene, Georgia Chenevix-Trench, Pau Navarro, Sean Whalen, Heli Nevanlinna, Teresa Nutile, Diana L. Cousminer, Albert V. Smith, Massimo Mangino, Uwe Völker, Michela Traglia, Lindsay Fernández-Rhodes, Ayush Giri, Linda Broer, Albertine J. Oldehinkel, Isabel dos-Santos-Silva, Peter Vollenweider, Jian'an Luan, Nancy L. Pedersen, Irene L. Andrulis, Reedik Mägi, Robert Winqvist, Gonneke Willemsen, John L. Hopper, Gudnason, Marjanka K. Schmidt, David G. Hunter, Robert A. Scott, T.B. Harris, Joanne M. Murabito, David J. Porteous, Harry Campbell, Eleonora Porcu, D.I. Boomsma, Thibaud Boutin, M. A. Ikram, Doug Easton, Magdalena Zoledziewska, Meir J. Stampfer, Katherine S. Pollard, Eulalia Catamo, Tõnu Esko, M-R Jarvelin, Laura Crisponi, Claudia Langenberg, Marek Zygmunt, Antonietta Robino, Emily Hallberg, Manjeet K. Bolla, Ruth Ks, Bruce H W Wolffenbuttel, Lavinia Paternoster, Tyrer Jp, P. Kraft, George Davey-Smith, Robert Karlsson, Graham G. Giles, Jingmei Li, Pharoah Pd, Segrè Av, Marina Ciullo, Perry, Brumat Marco, Peter K. Joshi, Chunyan He, Sara Lindström, Joe Dennis, Thérèse Truong, Yongmei Liu, Anna Marie Mulligan, Mike A. Nalls, Cinzia Sala, K. Stefansson, Murray A, Debbie A Lawlor, Tung Jy, Deborah J. Thompson, Dennis O. Mook-Kanamori, Daniela Toniolo, Luigi Ferrucci, Peter Devilee, S. Chanock, Cristina Menni, George McMahon, Murielle Bochud, A. Metspalu, Tomohiro Tanaka, E. Widen, Hae Kyung Im, Dale R. Nyholt, Ilja M. Nolte, Thomas Brüning, Christina Meisinger, Annette Peters, Kyriaki Michailidou, Per Hall, Rossella Sorice, Genevieve Lachance, Johan G. Eriksson, Francesco Cucca, A.G. Uitterlinden, Z. Kutalik, Mark I. McCarthy, Frank B. Hu, Konstantin Strauch, Tim D. Spector, Elisabeth Altmaier, S. Ulivi, Alkes L. Price, Arto Mannermaa, Raymond Noordam, and de Mutsert R
- Subjects
Genetics ,0303 health sciences ,03 medical and health sciences ,0302 clinical medicine ,030220 oncology & carcinogenesis ,Genotype ,Menarche ,Trait ,Cancer susceptibility ,Genomics ,Biology ,030304 developmental biology - Abstract
The timing of puberty is a highly polygenic childhood trait that is epidemiologically associated with various adult diseases. Here, we analyse 1000-Genome reference panel imputed genotype data on up to ~370,000 women and identify 389 independent signals (all P−8) for age at menarche, a notable milestone in female pubertal development. In Icelandic data from deCODE, these signals explain ~7.4% of the population variance in age at menarche, corresponding to one quarter of the estimated heritability. We implicate over 250 genes via coding variation or associated gene expression, and demonstrate enrichment across genes active in neural tissues. We identify multiple rare variants near the imprinted genes MKRN3 and DLK1 that exhibit large effects on menarche only when paternally inherited. Disproportionate effects of variants on early or late puberty timing are observed: single variant and heritability estimates are larger for early than late puberty timing in females. The opposite pattern is seen in males, with larger estimates for late than early puberty timing. Mendelian randomization analyses indicate causal inverse associations, independent of BMI, between puberty timing and risks for breast and endometrial cancers in women, and prostate cancer in men. In aggregate, our findings reveal new complexity in the genetic regulation of puberty timing and support new causal links with adult cancer risks.
- Published
- 2016
- Full Text
- View/download PDF
5. Genome-wide meta-analyses of breast, ovarian, and prostate cancer association studies identify multiple new susceptibility loci shared by at least two cancer types
- Author
-
Kar, SP, Beesley, J, Al Olama, AA, Michailidou, K, Tyrer, J, Kote-Jarai, ZA, Lawrenson, K, Lindstrom, S, Ramus, SJ, Thompson, DJ, Kibel, AS, Dansonka-Mieszkowska, A, Michael, A, Dieffenbach, AK, Gentry-Maharaj, A, Whittemore, AS, Wolk, A, Monteiro, A, Peixoto, A, Kierzek, A, Cox, A, Rudolph, A, Gonzalez-Neira, A, Wu, AH, Lindblom, A, Swerdlow, A, Ziogas, A, Ekici, AB, Burwinkel, B, Karlan, BY, Nordestgaard, BG, Blomqvist, C, Phelan, C, McLean, C, Pearce, CL, Vachon, C, Cybulski, C, Slavov, C, Stegmaier, C, Maier, C, Ambrosone, CB, Hogdall, CK, Teerlink, CC, Kang, D, Tessier, DC, Schaid, DJ, Stram, DO, Cramer, DW, Neal, DE, Eccles, D, Flesch-Janys, D, Velez Edwards, DR, Wokozorczyk, D, Levine, DA, Yannoukakos, D, Sawyer, EJ, Bandera, EV, Poole, EM, Goode, EL, Khusnutdinova, E, Hogdall, E, Song, F, Bruinsma, F, Heitz, F, Modugno, F, Hamdy, FC, Wiklund, F, Giles, GG, Olsson, H, Wildiers, H, and Ulmer, HU
- Abstract
© 2016 American Association for Cancer Research. Breast, ovarian, and prostate cancers are hormone-related and may have a shared genetic basis, but this has not been investigated systematically by genome-wide association (GWA) studies. Meta-analyses combining the largest GWA meta-analysis data sets for these cancers totaling 112,349 cases and 116,421 controls of European ancestry, all together and in pairs, identified at P < 10−8 seven new cross-cancer loci: three associated with susceptibility to all three cancers (rs17041869/2q13/ BCL2L11; rs7937840/11q12/ INCENP; rs1469713/19p13/ GATAD2A), two breast and ovarian cancer risk loci (rs200182588/9q31/ SMC2; rs8037137/15q26/ RCCD1), and two breast and prostate cancer risk loci (rs5013329/1p34/ NSUN4; rs9375701/6q23/ L3MBTL3). Index variants in five additional regions previously associated with only one cancer also showed clear association with a second cancer type. Cell-type-specific expression quantitative trait locus and enhancer-gene interaction annotations suggested target genes with potential cross-cancer roles at the new loci. Pathway analysis revealed significant enrichment of death receptor signaling genes near loci with P < 10−5 in the three-cancer meta-analysis. SIGNIFICANCE: We demonstrate that combining large-scale GWA meta-analysis findings across cancer types can identify completely new risk loci common to breast, ovarian, and prostate cancers. We show that the identification of such cross-cancer risk loci has the potential to shed new light on the shared biology underlying these hormone-related cancers.
- Published
- 2016
- Full Text
- View/download PDF
6. Genome-wide association and epidemiological analyses reveal common genetic origins between uterine leiomyomata and endometriosis
- Author
-
Gallagher, CS, Mäkinen, N, Harris, HR, Rahmioglu, N, Uimari, O, Cook, JP, Shigesi, N, Ferreira, T, Velez-Edwards, DR, Edwards, TL, Mortlock, S, Ruhioglu, Z, Day, F, Becker, CM, Karhunen, V, Martikainen, H, Järvelin, M-R, Cantor, RM, Ridker, PM, Terry, KL, Buring, JE, Gordon, SD, Medland, SE, Montgomery, GW, Nyholt, DR, Hinds, DA, Tung, JY, 23andMe Research Team, Perry, JRB, Lind, PA, Painter, JN, Martin, NG, Morris, AP, Chasman, DI, Missmer, SA, Zondervan, KT, and Morton, CC
- Subjects
Adult ,Leiomyoma ,Forkhead Box Protein O1 ,Endometriosis ,Ataxia Telangiectasia Mutated Proteins ,Mendelian Randomization Analysis ,Middle Aged ,Polymorphism, Single Nucleotide ,White People ,3. Good health ,Uterine Neoplasms ,Humans ,Female ,Receptor, Fibroblast Growth Factor, Type 4 ,Menorrhagia ,Telomerase ,Genome-Wide Association Study ,Proportional Hazards Models ,Signal Transduction - Abstract
Uterine leiomyomata (UL) are the most common neoplasms of the female reproductive tract and primary cause for hysterectomy, leading to considerable morbidity and high economic burden. Here we conduct a GWAS meta-analysis in 35,474 cases and 267,505 female controls of European ancestry, identifying eight novel genome-wide significant (P < 5 × 10-8) loci, in addition to confirming 21 previously reported loci, including multiple independent signals at 10 loci. Phenotypic stratification of UL by heavy menstrual bleeding in 3409 cases and 199,171 female controls reveals genome-wide significant associations at three of the 29 UL loci: 5p15.33 (TERT), 5q35.2 (FGFR4) and 11q22.3 (ATM). Four loci identified in the meta-analysis are also associated with endometriosis risk; an epidemiological meta-analysis across 402,868 women suggests at least a doubling of risk for UL diagnosis among those with a history of endometriosis. These findings increase our understanding of genetic contribution and biology underlying UL development, and suggest overlapping genetic origins with endometriosis.
7. Constructing a multi-ancestry polygenic risk score for uterine fibroids using publicly available data highlights need for inclusive genetic research.
- Author
-
Winters JLG, Piekos JA, Hellwege JN, Dikilitas O, Kullo IJ, Schaid DJ, Edwards TL, and Velez Edwards DR
- Subjects
- Humans, Female, Software, Genetic Research, Risk Factors, Polymorphism, Single Nucleotide, Cohort Studies, Databases, Genetic, Japan, Adult, Risk Assessment statistics & numerical data, Genetic Risk Score, Leiomyoma genetics, Genome-Wide Association Study statistics & numerical data, Uterine Neoplasms genetics, Computational Biology, Multifactorial Inheritance, Genetic Predisposition to Disease
- Abstract
Uterine leiomyomata, or fibroids, are common gynecological tumors causing pelvic and menstrual symptoms that can negatively affect quality of life and child-bearing desires. As fibroids grow, symptoms can intensify and lead to invasive treatments that are less likely to preserve fertility. Identifying individuals at highest risk for fibroids can aid in access to earlier diagnoses. Polygenic risk scores (PRS) quantify genetic risk to identify those at highest risk for disease. Utilizing the PRS software PRS-CSx and publicly available genome-wide association study (GWAS) summary statistics from FinnGen and Biobank Japan, we constructed a multi-ancestry (META) PRS for fibroids. We validated the META PRS in two cross-ancestry cohorts. In the cross-ancestry Electronic Medical Record and Genomics (eMERGE) Network cohort, the META PRS was significantly associated with fibroid status and exhibited 1.11 greater odds for fibroids per standard deviation increase in PRS (95% confidence interval [CI]: 1.05 - 1.17, p = 5.21x10-5). The META PRS was validated in two BioVU cohorts: one using ICD9/ICD10 codes and one requiring imaging confirmation of fibroid status. In the ICD cohort, a standard deviation increase in the META PRS increased the odds of fibroids by 1.23 (95% CI: 1.15 - 1.32, p = 9.68x10-9), while in the imaging cohort, the odds increased by 1.26 (95% CI: 1.18 - 1.35, p = 2.40x10-11). We subsequently constructed single ancestry PRS for FinnGen (European ancestry [EUR]) and Biobank Japan (East Asian ancestry [EAS]) using PRS-CS and discovered a nominally significant association in the eMERGE cohort within fibroids and EAS PRS but not EUR PRS (95% CI: 1.09 - 1.20, p = 1.64x10-7). These findings highlight the strong predictive power of multi-ancestry PRS over single ancestry PRS. This study underscores the necessity of diverse population inclusion in genetic research to ensure precision medicine benefits all individuals equitably.
- Published
- 2025
8. Session Introduction: Overcoming health disparities in precision medicine: Intersectional approaches in precision medicine.
- Author
-
De La Vega FM, Barnes KC, Bland H, Edwards T, Fox K, Ioannidis A, Kenny E, Mathias RA, Pasaniuc B, Torres JB, and Velez Edwards DR
- Subjects
- Humans, Health Status Disparities, Precision Medicine statistics & numerical data, Computational Biology, Healthcare Disparities statistics & numerical data, Social Determinants of Health
- Abstract
The following sections are included: Overview, Advancing multi-ancestry genetic research, Integrating social determinants of health to enhance genetic risk models, Methods to detect and mitigate disparities, Addressing Disparities in Adverse Drug Reactions, Conclusion, Acknowledgments,References.
- Published
- 2025
9. Uterine fibroids show evidence of shared genetic architecture with blood pressure traits.
- Author
-
Akerele AT, Piekos JA, Kim J, Khankari NK, Hellwege JN, Edwards TL, and Velez Edwards DR
- Subjects
- Humans, Female, Genetic Predisposition to Disease, Risk Factors, Leiomyoma genetics, Genome-Wide Association Study, Hypertension genetics, Blood Pressure genetics, Uterine Neoplasms genetics, Mendelian Randomization Analysis, Computational Biology, Polymorphism, Single Nucleotide
- Abstract
Uterine leiomyomata (fibroids, UFs) are common, benign tumors in females, having an estimated prevalence of up to 80%. They are fibrous masses growing within the myometrium leading to chronic symptoms like dysmenorrhea, abnormal uterine bleeding, anemia, severe pelvic pain, and infertility. Hypertension (HTN) is a common risk factor for UFs, though less prevalent in premenopausal individuals. While observational studies have indicated strong associations between UFs and HTN, the biological mechanisms linking the two conditions remain unclear. Understanding the relationship between HTN and UFs is crucial because UFs and HTN lead to substantial comorbidities adversely impacting female health. Identifying the common underlying biological mechanisms can improve treatment strategies for both conditions. To clarify the genetic and causal relationships between UFs and BP, we conducted a bidirectional, two-sample Mendelian randomization (MR) analysis and evaluated the genetic correlations across BP traits and UFs. We used data from a multi-ancestry genome-wide association study (GWAS) meta-analysis of UFs (44,205 cases and 356,552 controls), and data from a cross-ancestry GWAS meta-analysis of BP phenotypes (diastolic BP [DBP], systolic BP [SBP], and pulse pressure [PP], N=447,758). We evaluated genetic correlation of BP phenotypes and UFs with linkage disequilibrium score regression (LDSC). LDSC results indicated a positive genetic correlation between DBP and UFs (Rg=0.132, p<5.0x10-5), and SBP and UFs (Rg=0.063, p<2.5x10-2). MR using UFs as the exposure and BP traits as outcomes indicated a relationship where UFs increases DBP (odds ratio [OR]=1.20, p<2.7x10-3). Having BP traits as exposures and UFs as the outcome showed that DBP and SBP increase risk for UFs (OR =1.04, p<2.2x10-3; OR=1.00, p<4.0x10-2; respectively). Our results provide evidence of shared genetic architecture and pleiotropy between HTN and UFs, suggesting common biological pathways driving their etiologies. Based on these findings, DBP appears to be a stronger risk factor for UFs compared to SBP and PP.
- Published
- 2025
10. Expanding the genetic landscape of endometriosis: Integrative -omics analyses uncover key pathways from a multi-ancestry study of over 900,000 women.
- Author
-
Guare LA, Das J, Caruth L, Rajagopalan A, Akerele AT, Brumpton BM, Chen TT, Kottyan L, Lin YF, Moreno E, Mulford AJ, Rovite V, Sanders AR, Dombrovska MS, Elhadad N, Hill A, Jarvik G, Jaworski J, Luo Y, Namba S, Okada Y, Shi Y, Shirai Y, Shortt J, Wei WQ, Weng C, Yamamoto Y, Chapman S, Zhou W, Velez Edwards DR, and Setia-Verma S
- Abstract
We report the findings of a genome-wide association study (GWAS) meta-analysis of endometriosis consisting of a large portion (31%) of non-European samples across 14 biobanks worldwide as part of the Global Biobank Meta-Analysis Initiative (GBMI). We identified 45 significant loci using a wide phenotype definition, seven of which are previously unreported and detected first genome-wide significant locus ( POLR2M ) among only African-ancestry. Our narrow phenotypes and surgically confirmed case definitions for endometriosis analyses replicated the known loci near CDC42 , SKAP1 , and GREB1 . Through this large ancestry stratified analyses, we document heritability estimates in range of 10-12% for all ancestral groups. Thirty-eight loci had at least one variant in the credible set after fine-mapping. An imputed transcriptome-wide association study (TWAS) identified 11 associated genes (two previously unreported), while the proteome-wide association study (PWAS) suggests significant association of R-spondin 3 (RSPO3) with wide endometriosis, which plays a crucial role in modulating the Wnt signaling pathway. Our diverse, comprehensive GWAS, coupled with integrative -omics analysis, identifies critical roles of immunopathogenesis, Wnt signaling, and balance between proliferation, differentiation, and migration of endometrial cells as hallmarks for endometriosis. These interconnected pathways and risk factors underscore a complex, multi-faceted etiology of endometriosis, suggesting multiple targets for precise and effective therapeutic interventions.
- Published
- 2024
- Full Text
- View/download PDF
11. Multi-ancestry GWAS of severe pregnancy nausea and vomiting identifies risk loci associated with appetite, insulin signaling, and brain plasticity.
- Author
-
Fejzo M, Wang X, Zöllner J, Pujol-Gualdo N, Laisk T, Finer S, van Heel DA, Brumpton B, Bhatta L, Hveem K, Jasper EA, Velez Edwards DR, Hellwege JN, Edwards T, Jarvik GP, Luo Y, Khan A, MacGibbon K, Gao Y, Ge G, Averbukh I, Soon E, Angelo M, Magnus P, Johansson S, Njølstad PR, Vaudel M, Shu C, and Mancuso N
- Abstract
While most pregnancies are affected by nausea and vomiting, hyperemesis gravidarum (HG) is at the severe end of the clinical spectrum and is associated with dehydration, undernutrition, and adverse maternal, fetal, and child outcomes. Herein we performed a multi-ancestry genome-wide association study (GWAS) of severe nausea and vomiting of pregnancy of 10,974 cases and 461,461 controls across European, Asian, African, and Latino ancestries. We identified ten significantly associated loci, of which six were novel ( SLITRK1 , SYN3 , IGSF11 , FSHB , TCF7L2 , and CDH9) , and confirmed previous genome-wide significant associations with risk genes GDF15 , IGFBP7 , PGR , and GFRAL . In a spatiotemporal analysis of placental development, GDF15 and TCF7L2 were expressed primarily in extra villous trophoblast, and using a weighted linear model of maternal, paternal, and fetal effects, we confirmed opposing effects for GDF15 between maternal and fetal genotype. Conversely, IGFBP7 and PGR were primarily expressed in developing maternal spiral arteries during placentation, with effects limited to the maternal genome. Risk loci were found to be under significant evolutionary selection, with the strongest effects on nausea and vomiting mid-pregnancy. Selected loci were associated with abnormal pregnancy weight gain, pregnancy duration, birth weight, head circumference, and pre-eclampsia. Potential roles for candidate genes in appetite, insulin signaling, and brain plasticity provide new pathways to explore etiological mechanisms and novel therapeutic avenues., Competing Interests: Competing interests The authors declare the existence of financial/non-financial competing interests. MF: Hyperemesis Education and Research (HER) Foundation (voluntary, unpaid Board member and Research Director); Harmonia Healthcare (CSO, stock, paid consultant); NGM Biosciences (stock, paid consultant); Foundation for Women’s Health (Board member, voluntary, unpaid).
- Published
- 2024
- Full Text
- View/download PDF
12. Patient-Reported Discussions on Fertility Preservation Before Early-Onset Cancer Treatment.
- Author
-
Keller SR, Rosen A, Lewis MA, Park HK, Babyak R, Feldman J, Ye F, Agarwal R, Ciombor KK, Geiger TM, Eng C, Hunzinger KJ, Viskochil RH, Roach MK, Velez Edwards DR, Cote ML, and Holowatyj AN
- Published
- 2024
- Full Text
- View/download PDF
13. PheMIME: an interactive web app and knowledge base for phenome-wide, multi-institutional multimorbidity analysis.
- Author
-
Zhang S, Strayer N, Vessels T, Choi K, Wang GW, Li Y, Bejan CA, Hsi RS, Bick AG, Velez Edwards DR, Savona MR, Phillips EJ, Pulley JM, Self WH, Hopkins WC, Roden DM, Smoller JW, Ruderfer DM, and Xu Y
- Subjects
- Humans, Knowledge Bases, Software, Schizophrenia, Phenomics, User-Computer Interface, Internet, Phenotype, Multimorbidity, Electronic Health Records
- Abstract
Objectives: To address the need for interactive visualization tools and databases in characterizing multimorbidity patterns across different populations, we developed the Phenome-wide Multi-Institutional Multimorbidity Explorer (PheMIME). This tool leverages three large-scale EHR systems to facilitate efficient analysis and visualization of disease multimorbidity, aiming to reveal both robust and novel disease associations that are consistent across different systems and to provide insight for enhancing personalized healthcare strategies., Materials and Methods: PheMIME integrates summary statistics from phenome-wide analyses of disease multimorbidities, utilizing data from Vanderbilt University Medical Center, Mass General Brigham, and the UK Biobank. It offers interactive and multifaceted visualizations for exploring multimorbidity. Incorporating an enhanced version of associationSubgraphs, PheMIME also enables dynamic analysis and inference of disease clusters, promoting the discovery of complex multimorbidity patterns. A case study on schizophrenia demonstrates its capability for generating interactive visualizations of multimorbidity networks within and across multiple systems. Additionally, PheMIME supports diverse multimorbidity-based discoveries, detailed further in online case studies., Results: The PheMIME is accessible at https://prod.tbilab.org/PheMIME/. A comprehensive tutorial and multiple case studies for demonstration are available at https://prod.tbilab.org/PheMIME_supplementary_materials/. The source code can be downloaded from https://github.com/tbilab/PheMIME., Discussion: PheMIME represents a significant advancement in medical informatics, offering an efficient solution for accessing, analyzing, and interpreting the complex and noisy real-world patient data in electronic health records., Conclusion: PheMIME provides an extensive multimorbidity knowledge base that consolidates data from three EHR systems, and it is a novel interactive tool designed to analyze and visualize multimorbidities across multiple EHR datasets. It stands out as the first of its kind to offer extensive multimorbidity knowledge integration with substantial support for efficient online analysis and interactive visualization., (© The Author(s) 2024. Published by Oxford University Press on behalf of the American Medical Informatics Association.)
- Published
- 2024
- Full Text
- View/download PDF
14. Pharmacogenetics of tuberculosis treatment toxicity and effectiveness in a large Brazilian cohort.
- Author
-
Amorim G, Jaworski J, Yang J, Cordeiro-Santos M, Kritski AL, Figueiredo MC, Turner M, Andrade BB, Velez Edwards DR, Santos AR, Rolla VC, Sterling TR, and Haas DW
- Subjects
- Humans, Brazil, Male, Female, Adult, Middle Aged, Polymorphism, Single Nucleotide, Tuberculosis, Pulmonary drug therapy, Tuberculosis, Pulmonary genetics, Glutathione Transferase genetics, Tuberculosis drug therapy, Tuberculosis genetics, Pharmacogenetics, Prospective Studies, Cohort Studies, Treatment Outcome, Pregnane X Receptor, Liver-Specific Organic Anion Transporter 1, Antitubercular Agents adverse effects, Antitubercular Agents therapeutic use, Arylamine N-Acetyltransferase genetics
- Abstract
Background: Genetic polymorphisms have been associated with risk of antituberculosis treatment toxicity. We characterized associations with adverse events and treatment failure/recurrence among adults treated for tuberculosis in Brazil., Methods: Participants were followed in Regional Prospective Observational Research in Tuberculosis (RePORT)-Brazil. We included persons with culture-confirmed drug-susceptible pulmonary tuberculosis who started treatment between 2015 and 2019, and who were eligible for pharmacogenetics. Treatment included 2 months of isoniazid, rifampin or rifabutin, pyrazinamide, and ethambutol, then 4 months of isoniazid and rifampin or rifabutin, with 24-month follow-up. Analyses included 43 polymorphisms in 20 genes related to antituberculosis drug hepatotoxicity or pharmacokinetics. Whole exome sequencing was done in a case-control toxicity subset., Results: Among 903 participants in multivariable genetic association analyses, NAT2 slow acetylator status was associated with increased risk of treatment-related grade 2 or greater adverse events, including hepatotoxicity. Treatment failure/recurrence was more likely among NAT2 rapid acetylators, but not statistically significant at the 5% level. A GSTM1 polymorphism (rs412543) was associated with increased risk of treatment-related adverse events, including hepatotoxicity. SLCO1B1 polymorphisms were associated with increased risk of treatment-related hepatoxicity and treatment failure/recurrence. Polymorphisms in NR1/2 were associated with decreased risk of adverse events and increased risk of failure/recurrence. In whole exome sequencing, hepatotoxicity was associated with a polymorphism in VTI1A , and the genes METTL17 and PRSS57 , but none achieved genome-wide significance., Conclusion: In a clinical cohort representing three regions of Brazil, NAT2 acetylator status was associated with risk for treatment-related adverse events. Additional significant polymorphisms merit investigation in larger study populations, particularly regarding risk of treatment failure/recurrence., (Copyright © 2024 Wolters Kluwer Health, Inc. All rights reserved.)
- Published
- 2025
- Full Text
- View/download PDF
15. Altered extracellular matrix-related pathways accelerate the transition from normal to prefibroid myometrium in Black women.
- Author
-
Bariani MV, Grimm SL, Coarfa C, Velez Edwards DR, Yang Q, Walker CL, Ali M, and Al-Hendy A
- Subjects
- Adult, Female, Humans, Middle Aged, Serum Response Factor metabolism, Serum Response Factor genetics, Transcriptome, White genetics, Black or African American genetics, Extracellular Matrix metabolism, Leiomyoma genetics, Leiomyoma metabolism, Leiomyoma ethnology, Myometrium metabolism, Uterine Neoplasms genetics, Uterine Neoplasms ethnology, Uterine Neoplasms metabolism
- Abstract
Background: Black women experience a disproportionate impact of uterine fibroids compared to White women, including earlier diagnosis, higher frequency, and more severe symptoms. The etiology underlying this racial disparity remains elusive., Objective: The aim of this study was to evaluate the molecular differences in normal myometrium (fibroid-free uteri) and at-risk myometrium (fibroid-containing uteri) tissues in Black and White women., Study Design: We conducted whole-genome RNA-seq on normal and at-risk myometrium tissues obtained from both self-identified Black and White women (not Hispanic or Latino) to determine global gene expression profiles and to conduct enriched pathway analyses (n=3 per group). We initially assessed the differences within the same type of tissue (normal or at-risk myometrium) between races. Subsequently, we analyzed the transcriptome of normal myometrium compared to at-risk myometrium in each race and determined the differences between them. We validated our findings through real-time PCR (sample size range=5-12), western blot (sample size range=5-6), and immunohistochemistry techniques (sample size range=9-16)., Results: The transcriptomic analysis revealed distinct profiles between Black and White women in normal and at-risk myometrium tissues. Interestingly, genes and pathways related to extracellular matrix and mechanosensing were more enriched in normal myometrium from Black than White women. Transcription factor enrichment analysis detected greater activity of the serum response transcription factor positional motif in normal myometrium from Black compared to White women. Furthermore, we observed increased expression levels of myocardin-related transcription factor-serum response factor and the serum response factor in the same comparison. In addition, we noted increased expression of both mRNA and protein levels of vinculin, a target gene of the serum response factor, in normal myometrium tissues from Black women as compared to White women. Importantly, the transcriptomic profile of normal to at-risk myometrium conversion differs between Black and White women. Specifically, we observed that extracellular matrix-related pathways are involved in the transition from normal to at-risk myometrium and that these processes are exacerbated in Black women. We found increased levels of Tenascin C, type I collagen alpha 1 chain, fibronectin, and phospho-p38 MAPK (Thr180/Tyr182, active) protein levels in at-risk over normal myometrium tissues from Black women, whereas such differences were not observed in samples from White women., Conclusion: These findings indicate that the racial disparities in uterine fibroids may be attributed to heightened production of extracellular matrix in the myometrium in Black women, even before the tumors appear. Future research is needed to understand early life determinants of the observed racial differences., (Copyright © 2024 Elsevier Inc. All rights reserved.)
- Published
- 2024
- Full Text
- View/download PDF
16. Genome-wide association study of hospitalized patients and acute kidney injury.
- Author
-
Siew ED, Hellwege JN, Hung AM, Birkelo BC, Vincz AJ, Parr SK, Denton J, Greevy RA, Robinson-Cohen C, Liu H, Susztak K, Matheny ME, and Velez Edwards DR
- Subjects
- Humans, Male, Female, Middle Aged, Aged, Genetic Predisposition to Disease, Alpha-Ketoglutarate-Dependent Dioxygenase FTO genetics, Risk Factors, Genetic Loci, Case-Control Studies, Acute Kidney Injury genetics, Acute Kidney Injury epidemiology, Genome-Wide Association Study, Glomerular Filtration Rate genetics, Polymorphism, Single Nucleotide, Hospitalization statistics & numerical data
- Abstract
Acute kidney injury (AKI) is a common and devastating complication of hospitalization. Here, we identified genetic loci associated with AKI in patients hospitalized between 2002-2019 in the Million Veteran Program and data from Vanderbilt University Medical Center's BioVU. AKI was defined as meeting a modified KDIGO Stage 1 or more for two or more consecutive days or kidney replacement therapy. Control individuals were required to have one or more qualifying hospitalizations without AKI and no evidence of AKI during any other observed hospitalizations. Genome-wide association studies (GWAS), stratified by race, adjusting for sex, age, baseline estimated glomerular filtration rate (eGFR), and the top ten principal components of ancestry were conducted. Results were meta-analyzed using fixed effects models. In total, there were 54,488 patients with AKI and 138,051 non-AKI individuals included in the study. Two novel loci reached genome-wide significance in the meta-analysis: rs11642015 near the FTO locus on chromosome 16 (obesity traits) (odds ratio 1.07 (95% confidence interval, 1.05-1.09)) and rs4859682 near the SHROOM3 locus on chromosome 4 (glomerular filtration barrier integrity) (odds ratio 0.95 (95% confidence interval, 0.93-0.96)). These loci colocalized with previous studies of kidney function, and genetic correlation indicated significant shared genetic architecture between AKI and eGFR. Notably, the association at the FTO locus was attenuated after adjustment for BMI and diabetes, suggesting that this association may be partially driven by obesity. Both FTO and the SHROOM3 loci showed nominal evidence of replication from diagnostic-code-based summary statistics from UK Biobank, FinnGen, and Biobank Japan. Thus, our large GWA meta-analysis found two loci significantly associated with AKI suggesting genetics may explain some risk for AKI., (Published by Elsevier Inc.)
- Published
- 2024
- Full Text
- View/download PDF
17. Genetic predictors of blood pressure traits are associated with preeclampsia.
- Author
-
Jasper EA, Hellwege JN, Breeyear JH, Xiao B, Jarvik GP, Stanaway IB, Leppig KA, Chittoor G, Hayes MG, Dikilitas O, Kullo IJ, Holm IA, Verma SS, Edwards TL, and Velez Edwards DR
- Subjects
- Adult, Female, Humans, Pregnancy, Genetic Predisposition to Disease, Multifactorial Inheritance, Polymorphism, Single Nucleotide, Black or African American, White, Blood Pressure genetics, Pre-Eclampsia genetics
- Abstract
Preeclampsia, a pregnancy complication characterized by hypertension after 20 gestational weeks, is a major cause of maternal and neonatal morbidity and mortality. Mechanisms leading to preeclampsia are unclear; however, there is evidence of high heritability. We evaluated the association of polygenic scores (PGS) for blood pressure traits and preeclampsia to assess whether there is shared genetic architecture. Non-Hispanic Black and White reproductive age females with pregnancy indications and genotypes were obtained from Vanderbilt University's BioVU, Electronic Medical Records and Genomics network, and Penn Medicine Biobank. Preeclampsia was defined by ICD codes. Summary statistics for diastolic blood pressure (DBP), systolic blood pressure (SBP), and pulse pressure (PP) PGS were acquired from Giri et al. Associations between preeclampsia and each PGS were evaluated separately by race and data source before subsequent meta-analysis. Ten-fold cross validation was used for prediction modeling. In 3504 Black and 5009 White included individuals, the rate of preeclampsia was 15.49%. In cross-ancestry meta-analysis, all PGSs were associated with preeclampsia (OR
DBP = 1.10, 95% CI 1.02-1.17, p = 7.68 × 10-3 ; ORSBP = 1.16, 95% CI 1.09-1.23, p = 2.23 × 10-6 ; ORPP = 1.14, 95% CI 1.07-1.27, p = 9.86 × 10-5 ). Addition of PGSs to clinical prediction models did not improve predictive performance. Genetic factors contributing to blood pressure regulation in the general population also predispose to preeclampsia., (© 2024. The Author(s).)- Published
- 2024
- Full Text
- View/download PDF
18. A new test for trait mean and variance detects unreported loci for blood-pressure variation.
- Author
-
Breeyear JH, Mautz BS, Keaton JM, Hellwege JN, Torstenson ES, Liang J, Bray MJ, Giri A, Warren HR, Munroe PB, Velez Edwards DR, Zhu X, Li C, and Edwards TL
- Subjects
- Humans, Polymorphism, Single Nucleotide, Models, Genetic, Genotype, Genetic Variation, Computer Simulation, Phenotype, Blood Pressure genetics, Quantitative Trait Loci, Genome-Wide Association Study
- Abstract
Variability in quantitative traits has clinical, ecological, and evolutionary significance. Most genetic variants identified for complex quantitative traits have only a detectable effect on the mean of trait. We have developed the mean-variance test (MVtest) to simultaneously model the mean and log-variance of a quantitative trait as functions of genotypes and covariates by using estimating equations. The advantages of MVtest include the facts that it can detect effect modification, that multiple testing can follow conventional thresholds, that it is robust to non-normal outcomes, and that association statistics can be meta-analyzed. In simulations, we show control of type I error of MVtest over several alternatives. We identified 51 and 37 previously unreported associations for effects on blood-pressure variance and mean, respectively, in the UK Biobank. Transcriptome-wide association studies revealed 633 significant unique gene associations with blood-pressure mean variance. MVtest is broadly applicable to studies of complex quantitative traits and provides an important opportunity to detect novel loci., Competing Interests: Declaration of interests The authors declare no competing interests., (Copyright © 2024 American Society of Human Genetics. All rights reserved.)
- Published
- 2024
- Full Text
- View/download PDF
19. Large-scale genome-wide association study of 398,238 women unveils seven novel loci associated with high-grade serous epithelial ovarian cancer risk.
- Author
-
Barnes DR, Tyrer JP, Dennis J, Leslie G, Bolla MK, Lush M, Aeilts AM, Aittomäki K, Andrieu N, Andrulis IL, Anton-Culver H, Arason A, Arun BK, Balmaña J, Bandera EV, Barkardottir RB, Berger LPV, de Gonzalez AB, Berthet P, Białkowska K, Bjørge L, Blanco AM, Blok MJ, Bobolis KA, Bogdanova NV, Brenton JD, Butz H, Buys SS, Caligo MA, Campbell I, Castillo C, Claes KBM, Colonna SV, Cook LS, Daly MB, Dansonka-Mieszkowska A, de la Hoya M, deFazio A, DePersia A, Ding YC, Domchek SM, Dörk T, Einbeigi Z, Engel C, Evans DG, Foretova L, Fortner RT, Fostira F, Foti MC, Friedman E, Frone MN, Ganz PA, Gentry-Maharaj A, Glendon G, Godwin AK, González-Neira A, Greene MH, Gronwald J, Guerrieri-Gonzaga A, Hamann U, Hansen TVO, Harris HR, Hauke J, Heitz F, Hogervorst FBL, Hooning MJ, Hopper JL, Huff CD, Huntsman DG, Imyanitov EN, Izatt L, Jakubowska A, James PA, Janavicius R, John EM, Kar S, Karlan BY, Kennedy CJ, Kiemeney LALM, Konstantopoulou I, Kupryjanczyk J, Laitman Y, Lavie O, Lawrenson K, Lester J, Lesueur F, Lopez-Pleguezuelos C, Mai PL, Manoukian S, May T, McNeish IA, Menon U, Milne RL, Modugno F, Mongiovi JM, Montagna M, Moysich KB, Neuhausen SL, Nielsen FC, Noguès C, Oláh E, Olopade OI, Osorio A, Papi L, Pathak H, Pearce CL, Pedersen IS, Peixoto A, Pejovic T, Peng PC, Peshkin BN, Peterlongo P, Powell CB, Prokofyeva D, Pujana MA, Radice P, Rashid MU, Rennert G, Richenberg G, Sandler DP, Sasamoto N, Setiawan VW, Sharma P, Sieh W, Singer CF, Snape K, Sokolenko AP, Soucy P, Southey MC, Stoppa-Lyonnet D, Sutphen R, Sutter C, Teixeira MR, Terry KL, Thomsen LCV, Tischkowitz M, Toland AE, Van Gorp T, Vega A, Velez Edwards DR, Webb PM, Weitzel JN, Wentzensen N, Whittemore AS, Winham SJ, Wu AH, Yadav S, Yu Y, Ziogas A, Berchuck A, Couch FJ, Goode EL, Goodman MT, Monteiro AN, Offit K, Ramus SJ, Risch HA, Schildkraut JM, Thomassen M, Simard J, Easton DF, Jones MR, Chenevix-Trench G, Gayther SA, Antoniou AC, and Pharoah PDP
- Abstract
Background: Nineteen genomic regions have been associated with high-grade serous ovarian cancer (HGSOC). We used data from the Ovarian Cancer Association Consortium (OCAC), Consortium of Investigators of Modifiers of BRCA1/BRCA2 (CIMBA), UK Biobank (UKBB), and FinnGen to identify novel HGSOC susceptibility loci and develop polygenic scores (PGS)., Methods: We analyzed >22 million variants for 398,238 women. Associations were assessed separately by consortium and meta-analysed. OCAC and CIMBA data were used to develop PGS which were trained on FinnGen data and validated in UKBB and BioBank Japan., Results: Eight novel variants were associated with HGSOC risk. An interesting discovery biologically was finding that TP53 3'-UTR SNP rs78378222 was associated with HGSOC (per T allele relative risk (RR)=1.44, 95%CI:1.28-1.62, P=1.76×10
-9 ). The optimal PGS included 64,518 variants and was associated with an odds ratio of 1.46 (95%CI:1.37-1.54) per standard deviation in the UKBB validation (AUROC curve=0.61, 95%CI:0.59-0.62)., Conclusions: This study represents the largest GWAS for HGSOC to date. The results highlight that improvements in imputation reference panels and increased sample sizes can identify HGSOC associated variants that previously went undetected, resulting in improved PGS. The use of updated PGS in cancer risk prediction algorithms will then improve personalized risk prediction for HGSOC.- Published
- 2024
- Full Text
- View/download PDF
20. The Future of Prediction Modeling in Clinical Practice for Obstetrics and Gynecology.
- Author
-
Velez Edwards DR and Edwards TL
- Subjects
- Female, Pregnancy, Humans, Gynecology, Obstetrics
- Abstract
Competing Interests: Financial Disclosure Digna R. Velez Edwards has served as a Member of the Board of Directors for American Society of Human Genetics. Todd L. Edwards did not report any potential conflicts of interest.
- Published
- 2024
- Full Text
- View/download PDF
21. Selection, optimization and validation of ten chronic disease polygenic risk scores for clinical implementation in diverse US populations.
- Author
-
Lennon NJ, Kottyan LC, Kachulis C, Abul-Husn NS, Arias J, Belbin G, Below JE, Berndt SI, Chung WK, Cimino JJ, Clayton EW, Connolly JJ, Crosslin DR, Dikilitas O, Velez Edwards DR, Feng Q, Fisher M, Freimuth RR, Ge T, Glessner JT, Gordon AS, Patterson C, Hakonarson H, Harden M, Harr M, Hirschhorn JN, Hoggart C, Hsu L, Irvin MR, Jarvik GP, Karlson EW, Khan A, Khera A, Kiryluk K, Kullo I, Larkin K, Limdi N, Linder JE, Loos RJF, Luo Y, Malolepsza E, Manolio TA, Martin LJ, McCarthy L, McNally EM, Meigs JB, Mersha TB, Mosley JD, Musick A, Namjou B, Pai N, Pesce LL, Peters U, Peterson JF, Prows CA, Puckelwartz MJ, Rehm HL, Roden DM, Rosenthal EA, Rowley R, Sawicki KT, Schaid DJ, Smit RAJ, Smith JL, Smoller JW, Thomas M, Tiwari H, Toledo DM, Vaitinadin NS, Veenstra D, Walunas TL, Wang Z, Wei WQ, Weng C, Wiesner GL, Yin X, and Kenny EE
- Subjects
- Adult, Child, Humans, Communication, Genetic Predisposition to Disease, Genome-Wide Association Study, Risk Factors, United States, Chronic Disease, Genetic Risk Score, Population Health
- Abstract
Polygenic risk scores (PRSs) have improved in predictive performance, but several challenges remain to be addressed before PRSs can be implemented in the clinic, including reduced predictive performance of PRSs in diverse populations, and the interpretation and communication of genetic results to both providers and patients. To address these challenges, the National Human Genome Research Institute-funded Electronic Medical Records and Genomics (eMERGE) Network has developed a framework and pipeline for return of a PRS-based genome-informed risk assessment to 25,000 diverse adults and children as part of a clinical study. From an initial list of 23 conditions, ten were selected for implementation based on PRS performance, medical actionability and potential clinical utility, including cardiometabolic diseases and cancer. Standardized metrics were considered in the selection process, with additional consideration given to strength of evidence in African and Hispanic populations. We then developed a pipeline for clinical PRS implementation (score transfer to a clinical laboratory, validation and verification of score performance), and used genetic ancestry to calibrate PRS mean and variance, utilizing genetically diverse data from 13,475 participants of the All of Us Research Program cohort to train and test model parameters. Finally, we created a framework for regulatory compliance and developed a PRS clinical report for return to providers and for inclusion in an additional genome-informed risk assessment. The initial experience from eMERGE can inform the approach needed to implement PRS-based testing in diverse clinical settings., (© 2024. The Author(s).)
- Published
- 2024
- Full Text
- View/download PDF
22. Genomic insights into gestational weight gain uncover tissue-specific mechanisms and pathways.
- Author
-
Jasper EA, Hellwege JN, Greene CA, Edwards TL, and Velez Edwards DR
- Abstract
Gestational weight gain (GWG) is linked to adverse outcomes in pregnant persons and offspring. The Early Growth Genetics Consortium previously identified genetic variants contributing to GWG from fetal and maternal genomes. However, their biologic mechanisms and tissue-specificity are unknown. We evaluated the association between genetically predicted gene expression in relevant maternal (subcutaneous and visceral adipose, breast, uterus, and whole blood) tissues from GTEx (v7) and fetal (placenta) tissue and early, late, and total GWG using S-PrediXcan. We tested for pathway enrichment using the GENE2FUNC module from Functional Mapping and Annotation of Genome-Wide Association Studies. After Bonferroni correction, we found no associations between maternal or fetal gene expression and GWG. Among nominally significant ( P < 0.05) maternal genes, there was enrichment of several biological pathways, including metabolic processes, secretion, and intracellular transport, that varied across pregnancy. These results indicate the likely influence of diverse pathways, varying by tissue and weeks of gestation, on GWG., Competing Interests: Competing interestsThe authors declare no competing interests., (© The Author(s) 2024.)
- Published
- 2024
- Full Text
- View/download PDF
23. Evidence of recent and ongoing admixture in the U.S. and influences on health and disparities.
- Author
-
Seagle HM, Hellwege JN, Mautz BS, Li C, Xu Y, Zhang S, Roden DM, McGregor TL, Velez Edwards DR, and Edwards TL
- Subjects
- Aged, Humans, Linkage Disequilibrium, Software, United States epidemiology, Computational Biology, Genetics, Population, Racial Groups, Population Health
- Abstract
Many researchers in genetics and social science incorporate information about race in their work. However, migrations (historical and forced) and social mobility have brought formerly separated populations of humans together, creating younger generations of individuals who have more complex and diverse ancestry and race profiles than older age groups. Here, we sought to better understand how temporal changes in genetic admixture influence levels of heterozygosity and impact health outcomes. We evaluated variation in genetic ancestry over 100 birth years in a cohort of 35,842 individuals with electronic health record (EHR) information in the Southeastern United States. Using the software STRUCTURE, we analyzed 2,678 ancestrally informative markers relative to three ancestral clusters (African, East Asian, and European) and observed rising levels of admixture for all clinically-defined race groups since 1990. Most race groups also exhibited increases in heterozygosity and long-range linkage disequilibrium over time, further supporting the finding of increasing admixture in young individuals in our cohort. These data are consistent with United States Census information from broader geographic areas and highlight the changing demography of the population. This increased diversity challenges classic approaches to studies of genotype-phenotype relationships which motivated us to explore the relationship between heterozygosity and disease diagnosis. Using a phenome-wide association study approach, we explored the relationship between admixture and disease risk and found that increased admixture resulted in protective associations with female reproductive disorders and increased risk for diseases with links to autoimmune dysfunction. These data suggest that tendencies in the United States population are increasing ancestral complexity over time. Further, these observations imply that, because both prevalence and severity of many diseases vary by race groups, complexity of ancestral origins influences health and disparities.
- Published
- 2024
24. EVALUATING THE RELATIONSHIPS BETWEEN GENETIC ANCESTRY AND THE CLINICAL PHENOME.
- Author
-
Piekos JA, Kim J, Keaton JM, Hellwege JN, Edwards TL, and Velez Edwards DR
- Subjects
- Humans, Computational Biology methods, Phenotype, Atrial Fibrillation genetics, Hypertension genetics, Racial Groups genetics
- Abstract
There is a desire in research to move away from the concept of race as a clinical factor because it is a societal construct used as an imprecise proxy for geographic ancestry. In this study, we leverage the biobank from Vanderbilt University Medical Center, BioVU, to investigate relationships between genetic ancestry proportion and the clinical phenome. For all samples in BioVU, we calculated six ancestry proportions based on 1000 Genomes references: eastern African (EAFR), western African (WAFR), northern European (NEUR), southern European (SEUR), eastern Asian (EAS), and southern Asian (SAS). From PheWAS, we found phecode categories significantly enriched neoplasms for EAFR, WAFR, and SEUR, and pregnancy complication in SEUR, NEUR, SAS, and EAS (p < 0.003). We then selected phenotypes hypertension (HTN) and atrial fibrillation (AFib) to further investigate the relationships between these phenotypes and EAFR, WAFR, SEUR, and NEUR using logistic regression modeling and non-linear restricted cubic spline modeling (RCS). For EAS and SAS, we chose renal failure (RF) for further modeling. The relationships between HTN and AFib and the ancestries EAFR, WAFR, and SEUR were best fit by the linear model (beta p < 1x10-4 for all) while the relationships with NEUR were best fit with RCS (HTN ANOVA p = 0.001, AFib ANOVA p < 1x10-4). For RF, the relationship with SAS was best fit with a linear model (beta p < 1x10-4) while RCS model was a better fit for EAS (ANOVA p < 1x10-4). In this study, we identify relationships between genetic ancestry and phenotypes that are best fit with non-linear modeling techniques. The assumption of linearity for regression modeling is integral for proper fitting of a model and there is no knowing a priori to modeling if the relationship is truly linear.
- Published
- 2024
25. Uterine leiomyomata and keloids fibrosis origins: a mini-review of fibroproliferative diseases.
- Author
-
Hampton G, Kim J, Edwards TL, Hellwege JN, and Velez Edwards DR
- Subjects
- Female, Humans, Fibrosis, Uterus, Keloid genetics, Keloid pathology, Leiomyoma genetics, Leiomyoma pathology
- Abstract
Diseases such as uterine leiomyomata (fibroids and benign tumors of the uterus) and keloids (raised scars) may share common etiology. Fibroids and keloids can co-occur in individuals, and both are highly heritable, suggesting they may share common genetic risk factors. Fibroproliferative diseases are common and characterized by scarring and overgrowth of connective tissue, impacting multiple organ systems. These conditions both have racial disparities in prevalence, with the highest prevalence observed among individuals of African ancestry. Several fibroproliferative diseases are more severe and common in populations of sub-Saharan Africa. This mini-review aims to provide a broad overview of the current knowledge of the evolutionary origins and causes of fibroproliferative diseases. We also discuss current hypotheses proposing that the increased prevalence of these diseases in African-derived populations is due to the selection for profibrotic alleles that are protective against helminth infections and provide examples from knowledge of uterine fibroid and keloid research.
- Published
- 2023
- Full Text
- View/download PDF
26. Pharmacogenetics of tuberculosis treatment toxicity and effectiveness in a large Brazilian cohort.
- Author
-
Amorim G, Jaworski J, Cordeiro-Santos M, Kritski AL, Figueiredo MC, Turner M, Andrade BB, Velez Edwards DR, Santos AR, Rolla VC, Sterling TR, and Haas DW
- Abstract
Background: Genetic polymorphisms have been associated with risk of anti-tuberculosis treatment toxicity. We characterized associations with adverse events and treatment failure/recurrence among adults treated for tuberculosis in Brazil., Methods: Participants were followed in Regional Prospective Observational Research in Tuberculosis (RePORT)-Brazil. We included persons with culture-confirmed drug-susceptible pulmonary tuberculosis who started treatment between 2015-2019, and who were evaluable for pharmacogenetics. Treatment included 2 months of isoniazid, rifampin or rifabutin, pyrazinamide, and ethambutol, then 4 months of isoniazid and rifampin or rifabutin, with 24 month follow-up. Analyses included 43 polymorphisms in 20 genes related to anti-tuberculosis drug hepatotoxicity or pharmacokinetics. Whole exome sequencing was done in a case-control toxicity subset., Results: Among 903 participants in multivariable genetic association analyses, NAT2 slow acetylator status was associated with increased risk of treatment-related grade 2 or greater adverse events, including hepatotoxicity. Treatment failure/recurrence was more likely among NAT2 rapid acetylators, but not statistically significant at the 5% level. A GSTM1 polymorphism (rs412543) was associated with increased risk of treatment-related adverse events, including hepatotoxicity. SLCO1B1 polymorphisms were associated with increased risk of treatment- related hepatoxicity and treatment failure/recurrence. Polymorphisms in NR1/2 were associated with decreased risk of adverse events and increased risk of failure/recurrence. In whole exome sequencing, hepatotoxicity was associated with a polymorphism in VTI1A , and the genes METTL17 and PRSS57 , but none achieved genome-wide significance., Conclusions: In a clinical cohort representing three regions of Brazil, NAT2 acetylator status was associated with risk for treatment-related adverse events. Additional significant polymorphisms merit investigation in larger study populations.
- Published
- 2023
- Full Text
- View/download PDF
27. Challenges and Opportunities for Data Science in Women's Health.
- Author
-
Edwards TL, Greene CA, Piekos JA, Hellwege JN, Hampton G, Jasper EA, and Velez Edwards DR
- Subjects
- Female, Humans, Forecasting, Data Science, Women's Health
- Abstract
The intersection of women's health and data science is a field of research that has historically trailed other fields, but more recently it has gained momentum. This growth is being driven not only by new investigators who are moving into this area but also by the significant opportunities that have emerged in new methodologies, resources, and technologies in data science. Here, we describe some of the resources and methods being used by women's health researchers today to meet challenges in biomedical data science. We also describe the opportunities and limitations of applying these approaches to advance women's health outcomes and the future of the field, with emphasis on repurposing existing methodologies for women's health.
- Published
- 2023
- Full Text
- View/download PDF
28. PheMIME: An Interactive Web App and Knowledge Base for Phenome-Wide, Multi-Institutional Multimorbidity Analysis.
- Author
-
Zhang S, Strayer N, Vessels T, Choi K, Wang GW, Li Y, Bejan CA, Hsi RS, Bick AG, Velez Edwards DR, Savona MR, Philips EJ, Pulley J, Self WH, Hopkins WC, Roden DM, Smoller JW, Ruderfer DM, and Xu Y
- Abstract
Motivation: Multimorbidity, characterized by the simultaneous occurrence of multiple diseases in an individual, is an increasing global health concern, posing substantial challenges to healthcare systems. Comprehensive understanding of disease-disease interactions and intrinsic mechanisms behind multimorbidity can offer opportunities for innovative prevention strategies, targeted interventions, and personalized treatments. Yet, there exist limited tools and datasets that characterize multimorbidity patterns across different populations. To bridge this gap, we used large-scale electronic health record (EHR) systems to develop the Phenome-wide Multi-Institutional Multimorbidity Explorer (PheMIME), which facilitates research in exploring and comparing multimorbidity patterns among multiple institutions, potentially leading to the discovery of novel and robust disease associations and patterns that are interoperable across different systems and organizations., Results: PheMIME integrates summary statistics from phenome-wide analyses of disease multimorbidities. These are currently derived from three major institutions: Vanderbilt University Medical Center, Mass General Brigham, and the UK Biobank. PheMIME offers interactive exploration of multimorbidity through multi-faceted visualization. Incorporating an enhanced version of associationSubgraphs, PheMIME enables dynamic analysis and inference of disease clusters, promoting the discovery of multimorbidity patterns. Once a disease of interest is selected, the tool generates interactive visualizations and tables that users can delve into multimorbidities or multimorbidity networks within a single system or compare across multiple systems. The utility of PheMIME is demonstrated through a case study on schizophrenia., Availability and Implementation: The PheMIME knowledge base and web application are accessible at https://prod.tbilab.org/PheMIME/. A comprehensive tutorial, including a use-case example, is available at https://prod.tbilab.org/PheMIME_supplementary_materials/. Furthermore, the source code for PheMIME can be freely downloaded from https://github.com/tbilab/PheMIME., Data Availability Statement: The data underlying this article are available in the article and in its online web application or supplementary material., Competing Interests: Competing Interest Statement The authors have declared no competing interest.
- Published
- 2023
- Full Text
- View/download PDF
29. Leveraging electronic health record data for endometriosis research.
- Author
-
Penrod N, Okeh C, Velez Edwards DR, Barnhart K, Senapati S, and Verma SS
- Abstract
Endometriosis is a chronic, complex disease for which there are vast disparities in diagnosis and treatment between sociodemographic groups. Clinical presentation of endometriosis can vary from asymptomatic disease-often identified during (in)fertility consultations-to dysmenorrhea and debilitating pelvic pain. Because of this complexity, delayed diagnosis (mean time to diagnosis is 1.7-3.6 years) and misdiagnosis is common. Early and accurate diagnosis of endometriosis remains a research priority for patient advocates and healthcare providers. Electronic health records (EHRs) have been widely adopted as a data source in biomedical research. However, they remain a largely untapped source of data for endometriosis research. EHRs capture diverse, real-world patient populations and care trajectories and can be used to learn patterns of underlying risk factors for endometriosis which, in turn, can be used to inform screening guidelines to help clinicians efficiently and effectively recognize and diagnose the disease in all patient populations reducing inequities in care. Here, we provide an overview of the advantages and limitations of using EHR data to study endometriosis. We describe the prevalence of endometriosis observed in diverse populations from multiple healthcare institutions, examples of variables that can be extracted from EHRs to enhance the accuracy of endometriosis prediction, and opportunities to leverage longitudinal EHR data to improve our understanding of long-term health consequences for all patients., Competing Interests: The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest., (© 2023 Penrod, Okeh, Velez Edwards, Barnhart, Senapati and Verma.)
- Published
- 2023
- Full Text
- View/download PDF
30. Selection, optimization, and validation of ten chronic disease polygenic risk scores for clinical implementation in diverse populations.
- Author
-
Lennon NJ, Kottyan LC, Kachulis C, Abul-Husn N, Arias J, Belbin G, Below JE, Berndt S, Chung W, Cimino JJ, Clayton EW, Connolly JJ, Crosslin D, Dikilitas O, Velez Edwards DR, Feng Q, Fisher M, Freimuth R, Ge T, Glessner JT, Gordon A, Guiducci C, Hakonarson H, Harden M, Harr M, Hirschhorn J, Hoggart C, Hsu L, Irvin R, Jarvik GP, Karlson EW, Khan A, Khera A, Kiryluk K, Kullo I, Larkin K, Limdi N, Linder JE, Loos R, Luo Y, Malolepsza E, Manolio T, Martin LJ, McCarthy L, Meigs JB, Mersha TB, Mosley J, Namjou B, Pai N, Pesce LL, Peters U, Peterson J, Prows CA, Puckelwartz MJ, Rehm H, Roden D, Rosenthal EA, Rowley R, Sawicki KT, Schaid D, Schmidlen T, Smit R, Smith J, Smoller JW, Thomas M, Tiwari H, Toledo D, Vaitinadin NS, Veenstra D, Walunas T, Wang Z, Wei WQ, Weng C, Wiesner G, Xianyong Y, and Kenny E
- Abstract
Polygenic risk scores (PRS) have improved in predictive performance supporting their use in clinical practice. Reduced predictive performance of PRS in diverse populations can exacerbate existing health disparities. The NHGRI-funded eMERGE Network is returning a PRS-based genome-informed risk assessment to 25,000 diverse adults and children. We assessed PRS performance, medical actionability, and potential clinical utility for 23 conditions. Standardized metrics were considered in the selection process with additional consideration given to strength of evidence in African and Hispanic populations. Ten conditions were selected with a range of high-risk thresholds: atrial fibrillation, breast cancer, chronic kidney disease, coronary heart disease, hypercholesterolemia, prostate cancer, asthma, type 1 diabetes, obesity, and type 2 diabetes. We developed a pipeline for clinical PRS implementation, used genetic ancestry to calibrate PRS mean and variance, created a framework for regulatory compliance, and developed a PRS clinical report. eMERGE's experience informs the infrastructure needed to implement PRS-based implementation in diverse clinical settings., Competing Interests: Conflict of Interest The authors have no conflicts of interest to declare.
- Published
- 2023
- Full Text
- View/download PDF
31. Association of genetically-predicted placental gene expression with adult blood pressure traits.
- Author
-
Hellwege JN, Stallings SC, Piekos JA, Jasper EA, Aronoff DM, Edwards TL, and Velez Edwards DR
- Subjects
- Pregnancy, Female, Humans, Blood Pressure genetics, Phenotype, Transcriptome, Polymorphism, Single Nucleotide, Genome-Wide Association Study, Placenta
- Abstract
Objective: Blood pressure is a complex, polygenic trait, and the need to identify prehypertensive risks and new gene targets for blood pressure control therapies or prevention continues. We hypothesize a developmental origins model of blood pressure traits through the life course where the placenta is a conduit mediating genomic and nongenomic transmission of disease risk. Genetic control of placental gene expression has recently been described through expression quantitative trait loci (eQTL) studies which have identified associations with childhood phenotypes., Methods: We conducted a transcriptome-wide gene expression analysis estimating the predicted gene expression of placental tissue in adult individuals with genome-wide association study (GWAS) blood pressure summary statistics. We constructed predicted expression models of 15 154 genes from reference placenta eQTL data and investigated whether genetically-predicted gene expression in placental tissue is associated with blood pressure traits using published GWAS summary statistics. Functional annotation of significant genes was generated using FUMA., Results: We identified 18, 9, and 21 genes where predicted expression in placenta was significantly associated with systolic blood pressure (SBP), diastolic blood pressure (DBP), and pulse pressure (PP), respectively. There were 14 gene-tissue associations (13 unique genes) significant only in placenta., Conclusions: In this meta-analysis using S-PrediXcan and GWAS summary statistics, the predicted expression in placenta of 48 genes was statistically significantly associated with blood pressure traits. Notable findings included the association of FGFR1 expression with increased SBP and PP. This evidence of gene expression variation in placenta preceding the onset of adult blood pressure phenotypes is an example of extreme preclinical biological changes which may benefit from intervention., (Copyright © 2023 Wolters Kluwer Health, Inc. All rights reserved.)
- Published
- 2023
- Full Text
- View/download PDF
32. Sex modifies the effect of genetic risk scores for polycystic ovary syndrome on metabolic phenotypes.
- Author
-
Actkins KV, Jean-Pierre G, Aldrich MC, Velez Edwards DR, and Davis LK
- Subjects
- Humans, Female, Male, Risk Factors, Body Mass Index, Phenotype, Polycystic Ovary Syndrome, Diabetes Mellitus, Type 2 complications, Cardiovascular Diseases
- Abstract
Females with polycystic ovary syndrome (PCOS), the most common endocrine disorder in women, have an increased risk of developing cardiometabolic disorders such as insulin resistance, obesity, and type 2 diabetes (T2D). While only diagnosable in females, males with a family history of PCOS can also exhibit a poor cardiometabolic profile. Therefore, we aimed to elucidate the role of sex in the cardiometabolic comorbidities observed in PCOS by conducting bidirectional genetic risk score analyses in both sexes. We first conducted a phenome-wide association study (PheWAS) using PCOS polygenic risk scores (PCOSPRS) to identify potential pleiotropic effects of PCOSPRS across 1,380 medical conditions recorded in the Vanderbilt University Medical Center electronic health record (EHR) database, in females and males. After adjusting for age and genetic ancestry, we found that European (EUR)-ancestry males with higher PCOSPRS were significantly more likely to develop hypertensive diseases than females at the same level of genetic risk. We performed the same analysis in an African (AFR)-ancestry population, but observed no significant associations, likely due to poor trans-ancestry performance of the PRS. Based on observed significant associations in the EUR-ancestry population, we then tested whether the PRS for comorbid conditions (e.g., T2D, body mass index (BMI), hypertension, etc.) also increased the odds of a PCOS diagnosis. Only BMIPRS and T2DPRS were significantly associated with a PCOS diagnosis in EUR-ancestry females. We then further adjusted the T2DPRS for measured BMI and BMIresidual (regressed on the BMIPRS and enriched for the environmental contribution to BMI). Results demonstrated that genetically regulated BMI primarily accounted for the relationship between T2DPRS and PCOS. Overall, our findings show that the genetic architecture of PCOS has distinct sex differences in associations with genetically correlated cardiometabolic traits. It is possible that the cardiometabolic comorbidities observed in PCOS are primarily explained by their shared genetic risk factors, which can be further influenced by biological variables including sex and BMI., Competing Interests: The authors declare they have no competing interests., (Copyright: © 2023 Actkins et al. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.)
- Published
- 2023
- Full Text
- View/download PDF
33. Time-Varying Exposures and Miscarriage: A Comparison of Statistical Models Through Simulation.
- Author
-
Sundermann AC, Slaughter JC, Velez Edwards DR, and Hartmann KE
- Subjects
- Female, Humans, Pregnancy, Cohort Studies, Fetal Development, Models, Statistical, United States epidemiology, Abortion, Spontaneous epidemiology, Alcohol Drinking adverse effects, Alcohol Drinking epidemiology, Maternal Exposure
- Abstract
Epidemiologists face a unique challenge in measuring risk relationships involving time-varying exposures in early pregnancy. Each week in early pregnancy is distinct in its contribution to fetal development, and this period is commonly characterized by shifts in maternal behavior and, consequently, exposures. In this simulation study, we used alcohol as an example of an exposure that often changes during early pregnancy and miscarriage as an outcome affected by early exposures. Data on alcohol consumption patterns from more than 5,000 women in the Right From the Start cohort study (United States, 2000-2012) informed measures of the prevalence of alcohol exposure, the distribution of gestational age at cessation of alcohol use, and the likelihood of miscarriage by week of gestation. We then compared the bias and precision of effect estimates and statistical power from 5 different modeling approaches in distinct simulated relationships. We demonstrate how the accuracy and precision of effect estimates depended on alignment between model assumptions and the underlying simulated relationship. Approaches that incorporated data about patterns of exposure were more powerful and less biased than simpler models when risk depended on timing or duration of exposure. To uncover risk relationships in early pregnancy, it is critical to carefully define the role of exposure timing in the underlying causal hypothesis., (© The Author(s) 2023. Published by Oxford University Press on behalf of the Johns Hopkins Bloomberg School of Public Health. All rights reserved. For permissions, please e-mail: journals.permissions@oup.com.)
- Published
- 2023
- Full Text
- View/download PDF
34. Returning integrated genomic risk and clinical recommendations: The eMERGE study.
- Author
-
Linder JE, Allworth A, Bland HT, Caraballo PJ, Chisholm RL, Clayton EW, Crosslin DR, Dikilitas O, DiVietro A, Esplin ED, Forman S, Freimuth RR, Gordon AS, Green R, Harden MV, Holm IA, Jarvik GP, Karlson EW, Labrecque S, Lennon NJ, Limdi NA, Mittendorf KF, Murphy SN, Orlando L, Prows CA, Rasmussen LV, Rasmussen-Torvik L, Rowley R, Sawicki KT, Schmidlen T, Terek S, Veenstra D, Velez Edwards DR, Absher D, Abul-Husn NS, Alsip J, Bangash H, Beasley M, Below JE, Berner ES, Booth J, Chung WK, Cimino JJ, Connolly J, Davis P, Devine B, Fullerton SM, Guiducci C, Habrat ML, Hain H, Hakonarson H, Harr M, Haverfield E, Hernandez V, Hoell C, Horike-Pyne M, Hripcsak G, Irvin MR, Kachulis C, Karavite D, Kenny EE, Khan A, Kiryluk K, Korf B, Kottyan L, Kullo IJ, Larkin K, Liu C, Malolepsza E, Manolio TA, May T, McNally EM, Mentch F, Miller A, Mooney SD, Murali P, Mutai B, Muthu N, Namjou B, Perez EF, Puckelwartz MJ, Rakhra-Burris T, Roden DM, Rosenthal EA, Saadatagah S, Sabatello M, Schaid DJ, Schultz B, Seabolt L, Shaibi GQ, Sharp RR, Shirts B, Smith ME, Smoller JW, Sterling R, Suckiel SA, Thayer J, Tiwari HK, Trinidad SB, Walunas T, Wei WQ, Wells QS, Weng C, Wiesner GL, Wiley K, and Peterson JF
- Subjects
- Humans, Prospective Studies, Risk Factors, Risk Assessment, Genome, Genomics methods
- Abstract
Purpose: Assessing the risk of common, complex diseases requires consideration of clinical risk factors as well as monogenic and polygenic risks, which in turn may be reflected in family history. Returning risks to individuals and providers may influence preventive care or use of prophylactic therapies for those individuals at high genetic risk., Methods: To enable integrated genetic risk assessment, the eMERGE (electronic MEdical Records and GEnomics) network is enrolling 25,000 diverse individuals in a prospective cohort study across 10 sites. The network developed methods to return cross-ancestry polygenic risk scores, monogenic risks, family history, and clinical risk assessments via a genome-informed risk assessment (GIRA) report and will assess uptake of care recommendations after return of results., Results: GIRAs include summary care recommendations for 11 conditions, education pages, and clinical laboratory reports. The return of high-risk GIRA to individuals and providers includes guidelines for care and lifestyle recommendations. Assembling the GIRA required infrastructure and workflows for ingesting and presenting content from multiple sources. Recruitment began in February 2022., Conclusion: Return of a novel report for communicating monogenic, polygenic, and family history-based risk factors will inform the benefits of integrated genetic risk assessment for routine health care., Competing Interests: Conflict of Interest N.S.A.-H. is an employee and equity holder of 23andMe; serves as a scientific advisory board member for Allelica, Inc; received personal fees from Genentech Inc, Allelica Inc, and 23andMe; received research funding from Akcea Therapeutics; and was previously employed by Regeneron Pharmaceuticals. T.W. has grant funding from Gilead Sciences, Inc. L.O. and T.R.-B are founders of a company developing MeTree. T.S., E.D.E., and E.H. are employees and stockholders of Invitae Corporation. E.M.M. has been a consultant for Avidity Bioscience, Amgen Inc, AstraZeneca, Cytokinetics, Invitae Corporation, Janssen Pharmaceuticals, Pfizer Inc, PepGen Inc, Tenaya Therapeutics, and Stealth BioTherapeutics Inc; she is also the founder of Ikaika Therapeutics. E.E.K. received personal fees from Illumina Inc, 23andMe, and Regeneron Pharmaceuticals and serves as a scientific advisory board member for Encompass Bioscience, Foresite Labs, and Galateo Bio. B.K. is an advisory board member and stockholder of Genome Medical. M.S. is a member of the Institutional Review Board of the All of Us Research Program. E.F.P. is a paid consultant for Allecia Inc. J.F.P. is a paid consultant for Natera Inc. All other authors declare no conflicts of interest., (Copyright © 2023 The Authors. Published by Elsevier Inc. All rights reserved.)
- Published
- 2023
- Full Text
- View/download PDF
35. Inference of Causal Relationships Between Genetic Risk Factors for Cardiometabolic Phenotypes and Female-Specific Health Conditions.
- Author
-
Xiao B, Velez Edwards DR, Lucas A, Drivas T, Gray K, Keating B, Weng C, Jarvik GP, Hakonarson H, Kottyan L, Elhadad N, Wei WQ, Luo Y, Kim D, Ritchie M, and Verma SS
- Subjects
- Humans, Female, Risk Factors, Phenotype, Diabetes Mellitus, Type 2 epidemiology, Diabetes Mellitus, Type 2 genetics, Coronary Artery Disease epidemiology, Coronary Artery Disease genetics, Polycystic Ovary Syndrome epidemiology, Polycystic Ovary Syndrome genetics
- Abstract
Background Cardiometabolic diseases are highly comorbid, but their relationship with female-specific or overwhelmingly female-predominant health conditions (breast cancer, endometriosis, pregnancy complications) is understudied. This study aimed to estimate the cross-trait genetic overlap and influence of genetic burden of cardiometabolic traits on health conditions unique to women. Methods and Results Using electronic health record data from 71 008 ancestrally diverse women, we examined relationships between 23 obstetrical/gynecological conditions and 4 cardiometabolic phenotypes (body mass index, coronary artery disease, type 2 diabetes, and hypertension) by performing 4 analyses: (1) cross-trait genetic correlation analyses to compare genetic architecture, (2) polygenic risk score-based association tests to characterize shared genetic effects on disease risk, (3) Mendelian randomization for significant associations to assess cross-trait causal relationships, and (4) chronology analyses to visualize the timeline of events unique to groups of women with high and low genetic burden for cardiometabolic traits and highlight the disease prevalence in risk groups by age. We observed 27 significant associations between cardiometabolic polygenic scores and obstetrical/gynecological conditions (body mass index and endometrial cancer, body mass index and polycystic ovarian syndrome, type 2 diabetes and gestational diabetes, type 2 diabetes and polycystic ovarian syndrome). Mendelian randomization analysis provided additional evidence of independent causal effects. We also identified an inverse association between coronary artery disease and breast cancer. High cardiometabolic polygenic scores were associated with early development of polycystic ovarian syndrome and gestational hypertension. Conclusions We conclude that polygenic susceptibility to cardiometabolic traits is associated with elevated risk of certain female-specific health conditions.
- Published
- 2023
- Full Text
- View/download PDF
36. The genetic basis of endometriosis and comorbidity with other pain and inflammatory conditions.
- Author
-
Rahmioglu N, Mortlock S, Ghiasi M, Møller PL, Stefansdottir L, Galarneau G, Turman C, Danning R, Law MH, Sapkota Y, Christofidou P, Skarp S, Giri A, Banasik K, Krassowski M, Lepamets M, Marciniak B, Nõukas M, Perro D, Sliz E, Sobalska-Kwapis M, Thorleifsson G, Topbas-Selcuki NF, Vitonis A, Westergaard D, Arnadottir R, Burgdorf KS, Campbell A, Cheuk CSK, Clementi C, Cook J, De Vivo I, DiVasta A, Dorien O, Donoghue JF, Edwards T, Fontanillas P, Fung JN, Geirsson RT, Girling JE, Harkki P, Harris HR, Healey M, Heikinheimo O, Holdsworth-Carson S, Hostettler IC, Houlden H, Houshdaran S, Irwin JC, Jarvelin MR, Kamatani Y, Kennedy SH, Kepka E, Kettunen J, Kubo M, Kulig B, Kurra V, Laivuori H, Laufer MR, Lindgren CM, MacGregor S, Mangino M, Martin NG, Matalliotaki C, Matalliotakis M, Murray AD, Ndungu A, Nezhat C, Olsen CM, Opoku-Anane J, Padmanabhan S, Paranjpe M, Peters M, Polak G, Porteous DJ, Rabban J, Rexrode KM, Romanowicz H, Saare M, Saavalainen L, Schork AJ, Sen S, Shafrir AL, Siewierska-Górska A, Słomka M, Smith BH, Smolarz B, Szaflik T, Szyłło K, Takahashi A, Terry KL, Tomassetti C, Treloar SA, Vanhie A, Vincent K, Vo KC, Werring DJ, Zeggini E, Zervou MI, Adachi S, Buring JE, Ridker PM, D'Hooghe T, Goulielmos GN, Hapangama DK, Hayward C, Horne AW, Low SK, Martikainen H, Chasman DI, Rogers PAW, Saunders PT, Sirota M, Spector T, Strapagiel D, Tung JY, Whiteman DC, Giudice LC, Velez-Edwards DR, Uimari O, Kraft P, Salumets A, Nyholt DR, Mägi R, Stefansson K, Becker CM, Yurttas-Beim P, Steinthorsdottir V, Nyegaard M, Missmer SA, Montgomery GW, Morris AP, and Zondervan KT
- Subjects
- Female, Humans, Genetic Predisposition to Disease, Genome-Wide Association Study, Pain, Comorbidity, Endometriosis genetics, Endometriosis metabolism
- Abstract
Endometriosis is a common condition associated with debilitating pelvic pain and infertility. A genome-wide association study meta-analysis, including 60,674 cases and 701,926 controls of European and East Asian descent, identified 42 genome-wide significant loci comprising 49 distinct association signals. Effect sizes were largest for stage 3/4 disease, driven by ovarian endometriosis. Identified signals explained up to 5.01% of disease variance and regulated expression or methylation of genes in endometrium and blood, many of which were associated with pain perception/maintenance (SRP14/BMF, GDAP1, MLLT10, BSN and NGF). We observed significant genetic correlations between endometriosis and 11 pain conditions, including migraine, back and multisite chronic pain (MCP), as well as inflammatory conditions, including asthma and osteoarthritis. Multitrait genetic analyses identified substantial sharing of variants associated with endometriosis and MCP/migraine. Targeted investigations of genetically regulated mechanisms shared between endometriosis and other pain conditions are needed to aid the development of new treatments and facilitate early symptomatic intervention., (© 2023. The Author(s), under exclusive licence to Springer Nature America, Inc.)
- Published
- 2023
- Full Text
- View/download PDF
37. Tutorial: Using Community Engagement Studios to Enhance Pharmacogenetic Study Design for Maximizing Enrollment of Diverse Children and Pregnant People.
- Author
-
Jasper EA, Holley SE, Jones SH, Liu M, Israel T, Van Driest SL, and Velez Edwards DR
- Subjects
- Adult, Humans, Child, Delivery of Health Care, Research Design, Pharmacogenomic Testing, Pharmacogenetics
- Abstract
Most pharmacogenetic research is conducted in adult, non-pregnant populations of European ancestry. Study of more diverse and special populations is necessary to validate findings and improve health equity. However, there are significant barriers to recruitment of diverse populations for genetic studies, such as mistrust of researchers due to a history of unethical research and ongoing social inequities. Engaging communities and understanding community members' perspectives may help to overcome these barriers and improve research quality. Here, we highlight one method for engaging communities, the Community Engagement Studio (CES), a consultative session that allows researchers to obtain guidance and feedback based on community members' lived experiences. We also provide an example of its use in pharmacogenetic studies. In designing a survey study of knowledge and attitudes around pharmacogenetic testing among children with chronic conditions and pregnant individuals, we sought input from diverse community stakeholders through CESs at Vanderbilt University Medical Center. We participated in two CESs with community stakeholders representing study target populations. Our goals were to learn specific concerns about pharmacogenetic testing and preferred recruitment strategies for these communities. Concerns were expressed about how genetic information would be used beyond the immediate study. Participants emphasized the importance of clarity and transparency in communication to overcome participation hesitancy and mistrust of the study team. Recruitment strategy recommendations ranged from informal notices posted in healthcare settings to provider referrals. The CES enabled us to modify our recruitment methods and research materials to better communicate with populations currently under-represented in pharmacogenetics research., (© 2022 The Authors. Clinical Pharmacology & Therapeutics © 2022 American Society for Clinical Pharmacology and Therapeutics.)
- Published
- 2023
- Full Text
- View/download PDF
38. Genetic Predictors of Blood Pressure Traits are Associated with Preeclampsia.
- Author
-
Jasper EA, Hellwege JN, Breeyear JH, Xiao B, Jarvik GP, Stanaway IB, Leppig KA, Chittoor G, Hayes MG, Dikilitas O, Kullo IJ, Holm IA, Verma SS, Edwards TL, and Velez Edwards DR
- Abstract
Background: Preeclampsia, a pregnancy complication characterized by hypertension after 20 gestational weeks, is a major cause of maternal and neonatal morbidity and mortality. The mechanisms leading to preeclampsia are unclear; however, there is evidence that preeclampsia is highly heritable. We evaluated the association of polygenic risk scores (PRS) for blood pressure traits and preeclampsia to assess whether there is shared genetic architecture., Methods: Participants were obtained from Vanderbilt University's BioVU, the Electronic Medical Records and Genomics network, and the Penn Medicine Biobank. Non-Hispanic Black and White females of reproductive age with indications of pregnancy and genotype information were included. Preeclampsia was defined by ICD codes. Summary statistics for diastolic blood pressure (DBP), systolic blood pressure (SBP), and pulse pressure (PP) PRS were obtained from Giri et al 2019. Associations between preeclampsia and each PRS were evaluated separately by race and study population before evidence was meta-analyzed. Prediction models were developed and evaluated using 10-fold cross validation., Results: In the 3,504 Black and 5,009 White individuals included, the rate of preeclampsia was 15.49%. The DBP and SBP PRSs were associated with preeclampsia in Whites but not Blacks. The PP PRS was significantly associated with preeclampsia in Blacks and Whites. In trans-ancestry meta-analysis, all PRSs were associated with preeclampsia (OR
DBP =1.10, 95% CI=1.02-1.17, p =7.68×10-3 ; ORSBP =1.16, 95% CI=1.09-1.23, p =2.23×10-6 ; ORPP =1.14, 95% CI=1.07-1.27, p =9.86×10-5 ). However, addition of PRSs to clinical prediction models did not improve predictive performance., Conclusions: Genetic factors contributing to blood pressure regulation in the general population also predispose to preeclampsia.- Published
- 2023
- Full Text
- View/download PDF
39. Predictive models for abdominal aortic aneurysms using polygenic scores and PheWAS-derived risk factors.
- Author
-
Hellwege JN, Dorn C, Irvin MR, Limdi NA, Cimino J, Beasley TM, Tsao PS, Damrauer SM, Roden DM, Velez Edwards DR, Wei WQ, and Edwards TL
- Subjects
- Male, Humans, Risk Assessment, Computational Biology, Risk Factors, Genome-Wide Association Study, Aortic Aneurysm, Abdominal diagnostic imaging, Aortic Aneurysm, Abdominal genetics
- Abstract
Abdominal aortic aneurysms (AAA) are common enlargements of the abdominal aorta which can grow larger until rupture, often leading to death. Detection of AAA is often by ultrasonography and screening recommendations are mostly directed at men over 65 with a smoking history. Recent large-scale genome-wide association studies have identified genetic loci associated with AAA risk. We combined known risk factors, polygenic risk scores (PRS) and precedent clinical diagnoses from electronic health records (EHR) to develop predictive models for AAA, and compared performance against screening recommendations. The PRS included genome-wide summary statistics from the Million Veteran Program and FinnGen (10,467 cases, 378,713 controls of European ancestry), with optimization in Vanderbilt's BioVU and validated in the eMERGE Network, separately across both White and Black participants. Candidate diagnoses were identified through a temporally-oriented Phenome-wide association study in independent EHR data from Vanderbilt, and features were selected via elastic net. We calculated C-statistics in eMERGE for models including PRS, phecodes, and covariates using regression weights from BioVU. The AUC for the full model in the test set was 0.883 (95% CI 0.873-0.892), 0.844 (0.836-0.851) for covariates only, 0.613 (95% CI 0.604-0.622) when using primary USPSTF screening criteria, and 0.632 (95% CI 0.623-0.642) using primary and secondary criteria. Brier scores were between 0.003 and 0.023 for our models indicating good calibration, and net reclassification improvement over combined primary and secondary USPSTF criteria was 0.36-0.60. We provide PRS for AAA which are strongly associated with AAA risk and add to predictive model performance. These models substantially improve identification of people at risk of a AAA diagnosis compared with existing guidelines, with evidence of potential applicability in minority populations.
- Published
- 2023
40. Interactive network-based clustering and investigation of multimorbidity association matrices with associationSubgraphs.
- Author
-
Strayer N, Zhang S, Yao L, Vessels T, Bejan CA, Hsi RS, Shirey-Rice JK, Balko JM, Johnson DB, Phillips EJ, Bick A, Edwards TL, Velez Edwards DR, Pulley JM, Wells QS, Savona MR, Cox NJ, Roden DM, Ruderfer DM, and Xu Y
- Subjects
- Algorithms, Cluster Analysis, Phenomics, Software, Multimorbidity
- Abstract
Motivation: Making sense of networked multivariate association patterns is vitally important to many areas of high-dimensional analysis. Unfortunately, as the data-space dimensions grow, the number of association pairs increases in O(n2); this means that traditional visualizations such as heatmaps quickly become too complicated to parse effectively., Results: Here, we present associationSubgraphs: a new interactive visualization method to quickly and intuitively explore high-dimensional association datasets using network percolation and clustering. The goal is to provide an efficient investigation of association subgraphs, each containing a subset of variables with stronger and more frequent associations among themselves than the remaining variables outside the subset, by showing the entire clustering dynamics and providing subgraphs under all possible cutoff values at once. Particularly, we apply associationSubgraphs to a phenome-wide multimorbidity association matrix generated from an electronic health record and provide an online, interactive demonstration for exploring multimorbidity subgraphs., Availability and Implementation: An R package implementing both the algorithm and visualization components of associationSubgraphs is available at https://github.com/tbilab/associationsubgraphs. Online documentation is available at https://prod.tbilab.org/associationsubgraphs_info/. A demo using a multimorbidity association matrix is available at https://prod.tbilab.org/associationsubgraphs-example/., (© The Author(s) 2022. Published by Oxford University Press.)
- Published
- 2023
- Full Text
- View/download PDF
41. Periconceptional folic acid supplementation and child asthma: a Right From the Start follow-up study.
- Author
-
Adgent MA, Vereen S, McCullough A, Jones SH, Torstenson E, Velez Edwards DR, Hartmann KE, and Carroll KN
- Subjects
- Pregnancy, Infant, Newborn, Female, Humans, Child, Child, Preschool, Follow-Up Studies, Prospective Studies, Dietary Supplements, Folic Acid therapeutic use, Asthma epidemiology
- Abstract
Objective: High maternal folic acid exposure has been studied as a risk factor for child asthma with inconclusive results. Folic acid supplementation that begins before pregnancy may propagate high exposures during pregnancy, particularly in regions with fortified food supplies. We investigated whether folic acid supplementation initiated periconceptionally is associated with childhood asthma in a US cohort., Materials and Methods: We re-contacted mother-child dyads previously enrolled in a prospective pregnancy cohort and included children age 4 to 8 years at follow-up ( n = 540). Using first trimester interviews, we assessed whether initial folic acid-containing supplement (FACS) use occurred near/before estimated conception ("periconceptional") or after (during the "first trimester"). Follow-up questionnaires were used to determine if a child ever had an asthma diagnosis ("ever asthma") or asthma diagnosis with prevalent symptoms or medication use ("current asthma"). We examined associations between FACS initiation and asthma outcomes using logistic regression, excluding preterm births and adjusting for child age, sex, maternal race, maternal education, and parental asthma., Results: Approximately half of women initiated FACS use periconceptionally (49%). Nine percent of children had "ever asthma" and 6% had "current asthma." Periconceptional initiation was associated with elevated odds of ever asthma [adjusted odds ratio (95% Confidence Interval): 1.65 (0.87, 3.14)] and current asthma [1.87 (0.88, 4.01)], relative to first trimester initiation., Conclusion: We observed positive, but imprecisely estimated associations between periconceptional FACS initiation and child asthma. Folic acid prevents birth defects and is recommended. However, larger studies of folic acid dosing and timing, with consideration for childhood asthma, are needed.
- Published
- 2022
- Full Text
- View/download PDF
42. Maternal alcohol metabolism predicted by alcohol dehydrogenase genotype and the association between alcohol consumption and miscarriage.
- Author
-
Sundermann AC, Velez Edwards DR, and Hartmann KE
- Published
- 2022
- Full Text
- View/download PDF
43. Uterine fibroid polygenic risk score (PRS) associates and predicts risk for uterine fibroid.
- Author
-
Piekos JA, Hellwege JN, Zhang Y, Torstenson ES, Jarvik GP, Dikilitas O, Kullo IJ, Schaid DJ, Crosslin DR, Pendergrass SA, Lee MTM, Roden D, Denny JC, Edwards TL, and Velez Edwards DR
- Subjects
- Female, Genetic Predisposition to Disease, Genomics, Humans, Linkage Disequilibrium, Risk Factors, Genome-Wide Association Study, Leiomyoma genetics
- Abstract
Uterine fibroids (UF) are common pelvic tumors in women, heritable, and genome-wide association studies (GWAS) have identified ~ 30 loci associated with increased risk in UF. Using summary statistics from a previously published UF GWAS performed in a non-Hispanic European Ancestry (NHW) female subset from the Electronic Medical Records and Genomics (eMERGE) Network, we constructed a polygenic risk score (PRS) for UF. UF-PRS was developed using PRSice and optimized in the separate clinical population of BioVU. PRS was validated using parallel methods of 10-fold cross-validation logistic regression and phenome-wide association study (PheWAS) in a seperate subset of eMERGE NHW females (validation set), excluding samples used in GWAS. PRSice determined p
t < 0.001 and after linkage disequilibrium pruning (r2 < 0.2), 4458 variants were in the PRS which was significant (pseudo-R2 = 0.0018, p = 0.041). 10-fold cross-validation logistic regression modeling of validation set revealed the model had an area under the curve (AUC) value of 0.60 (95% confidence interval [CI] 0.58-0.62) when plotted in a receiver operator curve (ROC). PheWAS identified six phecodes associated with the PRS with the most significant phenotypes being 218 'benign neoplasm of uterus' and 218.1 'uterine leiomyoma' (p = 1.94 × 10-23 , OR 1.31 [95% CI 1.26-1.37] and p = 3.50 × 10-23 , OR 1.32 [95% CI 1.26-1.37]). We have developed and validated the first PRS for UF. We find our PRS has predictive ability for UF and captures genetic architecture of increased risk for UF that can be used in further studies., (© 2022. The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature.)- Published
- 2022
- Full Text
- View/download PDF
44. Dense phenotyping from electronic health records enables machine learning-based prediction of preterm birth.
- Author
-
Abraham A, Le B, Kosti I, Straub P, Velez-Edwards DR, Davis LK, Newton JM, Muglia LJ, Rokas A, Bejan CA, Sirota M, and Capra JA
- Subjects
- Algorithms, Electronic Health Records, Female, Gestational Age, Humans, Infant, Newborn, Machine Learning, Pregnancy, Premature Birth diagnosis, Premature Birth epidemiology
- Abstract
Background: Identifying pregnancies at risk for preterm birth, one of the leading causes of worldwide infant mortality, has the potential to improve prenatal care. However, we lack broadly applicable methods to accurately predict preterm birth risk. The dense longitudinal information present in electronic health records (EHRs) is enabling scalable and cost-efficient risk modeling of many diseases, but EHR resources have been largely untapped in the study of pregnancy., Methods: Here, we apply machine learning to diverse data from EHRs with 35,282 deliveries to predict singleton preterm birth., Results: We find that machine learning models based on billing codes alone can predict preterm birth risk at various gestational ages (e.g., ROC-AUC = 0.75, PR-AUC = 0.40 at 28 weeks of gestation) and outperform comparable models trained using known risk factors (e.g., ROC-AUC = 0.65, PR-AUC = 0.25 at 28 weeks). Examining the patterns learned by the model reveals it stratifies deliveries into interpretable groups, including high-risk preterm birth subtypes enriched for distinct comorbidities. Our machine learning approach also predicts preterm birth subtypes (spontaneous vs. indicated), mode of delivery, and recurrent preterm birth. Finally, we demonstrate the portability of our approach by showing that the prediction models maintain their accuracy on a large, independent cohort (5978 deliveries) from a different healthcare system., Conclusions: By leveraging rich phenotypic and genetic features derived from EHRs, we suggest that machine learning algorithms have great potential to improve medical care during pregnancy. However, further work is needed before these models can be applied in clinical settings., (© 2022. The Author(s).)
- Published
- 2022
- Full Text
- View/download PDF
45. Author Correction: Genome-wide association and epidemiological analyses reveal common genetic origins between uterine leiomyomata and endometriosis.
- Author
-
Gallagher CS, Mäkinen N, Harris HR, Rahmioglu N, Uimari O, Cook JP, Shigesi N, Ferreira T, Velez-Edwards DR, Edwards TL, Mortlock S, Ruhioglu Z, Day F, Becker CM, Karhunen V, Martikainen H, Järvelin MR, Cantor RM, Ridker PM, Terry KL, Buring JE, Gordon SD, Medland SE, Montgomery GW, Nyholt DR, Hinds DA, Tung JY, Perry JRB, Lind PA, Painter JN, Martin NG, Morris AP, Chasman DI, Missmer SA, Zondervan KT, and Morton CC
- Published
- 2022
- Full Text
- View/download PDF
46. Determinants of stage at diagnosis of HPV-related cancer including area deprivation and clinical factors.
- Author
-
Chakravarthy R, Stallings SC, Velez Edwards DR, Zhao SK, Conway D, Rao JS, Aldrich MC, Kobetz E, and Wilkins CH
- Subjects
- Censuses, Female, Humans, Male, Papillomaviridae, Alphapapillomavirus, Neoplasms diagnosis, Neoplasms epidemiology, Papillomavirus Infections complications, Papillomavirus Infections diagnosis, Papillomavirus Infections epidemiology
- Abstract
Background: Collecting social determinants of health in electronic health records is time-consuming. Meanwhile, an Area Deprivation Index (ADI) aggregates sociodemographic information from census data. The objective of this study was to ascertain whether ADI is associated with stage of human papillomavirus (HPV)-related cancer at diagnosis., Methods: We tested for the association between the stage of HPV-related cancer presentation and ADI as well as the association between stage and the value of each census-based measure using ordered logistic regression, adjusting for age, race and sex., Results: Among 3247 cases of HPV-related cancers presenting to an urban academic medical center, the average age at diagnosis was 57. The average stage at diagnosis was Surveillance, Epidemiology and End Results Stage 3. In the study population, 43% of patients were female and 87% were white. In this study population, there was no association between stage of HPV-related cancer presentation and either aggregate or individual census variables., Conclusions: These results may reflect insufficient sample size, a lack of socio-demographic diversity in our population, or suggest that simplifying social determinants of health into a single geocoded index is not a reliable surrogate for assessing a patient's risk for HPV-related cancer., (© The Author(s) 2021. Published by Oxford University Press on behalf of Faculty of Public Health.)
- Published
- 2022
- Full Text
- View/download PDF
47. Evidence that geographic variation in genetic ancestry associates with uterine fibroids.
- Author
-
Keaton JM, Jasper EA, Hellwege JN, Jones SH, Torstenson ES, Edwards TL, and Velez Edwards DR
- Subjects
- Adult, Aged, Aged, 80 and over, Female, Genetic Predisposition to Disease, Humans, Middle Aged, Race Factors, Risk Factors, Black or African American genetics, Ethnicity genetics, Genetic Variation, Geography, Leiomyoma genetics, Uterine Neoplasms genetics, White People genetics
- Abstract
Uterine fibroids disproportionately impact Black women. Evidence suggests Black women have earlier onset and higher cumulative risk. This risk disparity may be due an imbalance of risk alleles in one parental geographic ancestry subgroup relative to others. We investigated ancestry proportions for the 1000 Genomes phase 3 populations clustered into six geographic groups for association with fibroid traits in Black women (n = 583 cases, 797 controls) and White women (n = 1195 cases, 1164 controls). Global ancestry proportions were estimated using ADMIXTURE. Dichotomous (fibroids status and multiple fibroid status) and continuous outcomes (volume and largest dimension) were modeled for association with ancestry proportions using logistic and linear regression adjusting for age. Effect estimates are reported per 10% increase in genetically inferred ancestry proportion. Among Black women, West African (WAFR) ancestry was associated with fibroid risk, East African ancestry was associated with risk of multiple fibroids, Northern European (NEUR) ancestry was protective for multiple fibroids, Southern European ancestry was protective for fibroids and multiple fibroids, and South Asian (SAS) ancestry was positively associated with volume and largest dimension. In White women, NEUR ancestry was protective for fibroids, SAS ancestry was associated with fibroid risk, and WAFR ancestry was positively associated with volume and largest dimension. These results suggest that a proportion of fibroid risk and fibroid trait racial disparities are due to genetic differences between geographic groups. Further investigation at the local ancestry and single variant levels may yield novel insights into disease architecture and genetic mechanisms underlying ethnic disparities in fibroid risk., (© 2021. The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature.)
- Published
- 2021
- Full Text
- View/download PDF
48. Identification of a Locus Near ULK1 Associated With Progression-Free Survival in Ovarian Cancer.
- Author
-
Quinn MCJ, McCue K, Shi W, Johnatty SE, Beesley J, Civitarese A, O'Mara TA, Glubb DM, Tyrer JP, Armasu SM, Ong JS, Gharahkhani P, Lu Y, Gao B, Patch AM, Fasching PA, Beckmann MW, Lambrechts D, Vergote I, Velez Edwards DR, Beeghly-Fadiel A, Benitez J, Garcia MJ, Goodman MT, Dörk T, Dürst M, Modugno F, Moysich K, du Bois A, Pfisterer J, Bauman K, Karlan BY, Lester J, Cunningham JM, Larson MC, McCauley BM, Kjaer SK, Jensen A, Hogdall CK, Hogdall E, Schildkraut JM, Riggan MJ, Berchuck A, Cramer DW, Terry KL, Bjorge L, Webb PM, Friedlander M, Pejovic T, Moffitt M, Glasspool R, May T, Ene GEV, Huntsman DG, Woo M, Carney ME, Hinsley S, Heitz F, Fereday S, Kennedy CJ, Edwards SL, Winham SJ, deFazio A, Pharoah PDP, Goode EL, MacGregor S, and Chenevix-Trench G
- Subjects
- Biomarkers, Tumor blood, Carcinoma, Ovarian Epithelial mortality, Female, Gene Knockout Techniques, Genome-Wide Association Study, Humans, Ovarian Neoplasms mortality, Polymorphism, Single Nucleotide, Progression-Free Survival, Autophagy-Related Protein-1 Homolog, Carcinoma, Ovarian Epithelial genetics, Intracellular Signaling Peptides and Proteins, Ovarian Neoplasms genetics
- Abstract
Background: Many loci have been found to be associated with risk of epithelial ovarian cancer (EOC). However, although there is considerable variation in progression-free survival (PFS), no loci have been found to be associated with outcome at genome-wide levels of significance., Methods: We carried out a genome-wide association study (GWAS) of PFS in 2,352 women with EOC who had undergone cytoreductive surgery and standard carboplatin/paclitaxel chemotherapy., Results: We found seven SNPs at 12q24.33 associated with PFS ( P < 5 × 10
-8 ), the top SNP being rs10794418 (HR = 1.24; 95% CI, 1.15-1.34; P = 1.47 × 10-8 ). High expression of a nearby gene, ULK1 , is associated with shorter PFS in EOC, and with poor prognosis in other cancers. SNP rs10794418 is also associated with expression of ULK1 in ovarian tumors, with the allele associated with shorter PFS being associated with higher expression, and chromatin interactions were detected between the ULK1 promoter and associated SNPs in serous and endometrioid EOC cell lines. ULK1 knockout ovarian cancer cell lines showed significantly increased sensitivity to carboplatin in vitro ., Conclusions: The locus at 12q24.33 represents one of the first genome-wide significant loci for survival for any cancer. ULK1 is a plausible candidate for the target of this association., Impact: This finding provides insight into genetic markers associated with EOC outcome and potential treatment options. See related commentary by Peres and Monteiro, p. 1604 ., (©2021 American Association for Cancer Research.)- Published
- 2021
- Full Text
- View/download PDF
49. Association of Apparent Treatment-Resistant Hypertension With Differential Risk of End-Stage Kidney Disease Across Racial Groups in the Million Veteran Program.
- Author
-
Akwo EA, Robinson-Cohen C, Chung CP, Shah SC, Brown NJ, Ikizler TA, Wilson OD, Rowan BX, Shuey MM, Siew ED, Luther JM, Giri A, Hellwege JN, Velez Edwards DR, Roumie CL, Tao R, Tsao PS, Gaziano JM, Wilson PWF, O'Donnell CJ, Edwards TL, Kovesdy CP, and Hung AM
- Subjects
- Aged, Antihypertensive Agents therapeutic use, Apolipoprotein L1 genetics, Comorbidity, Female, Genetic Predisposition to Disease, Genotype, Humans, Hypertension drug therapy, Hypertension genetics, Incidence, Kidney Failure, Chronic genetics, Male, Middle Aged, Myocardial Infarction genetics, Retrospective Studies, Veterans, Blood Pressure physiology, Hypertension epidemiology, Kidney Failure, Chronic epidemiology, Myocardial Infarction epidemiology
- Abstract
[Figure: see text].
- Published
- 2021
- Full Text
- View/download PDF
50. Associations of biogeographic ancestry with hypertension traits.
- Author
-
Keaton JM, Hellwege JN, Giri A, Torstenson ES, Kovesdy CP, Sun YV, Wilson PWF, O'Donnell CJ, Edwards TL, Hung AM, and Velez Edwards DR
- Subjects
- Black or African American, Blood Pressure genetics, Hispanic or Latino, Humans, White People, Hypertension epidemiology, Hypertension genetics
- Abstract
Objectives: Ethnic disparities in hypertension prevalence are well documented, though the influence of genetic ancestry is unclear. The aim of this study was to evaluate associations of geographic genetic ancestry with hypertension and underlying blood pressure traits., Methods: We tested genetically inferred ancestry proportions from five 1000 Genomes reference populations (GBR, PEL, YRI, CHB, and LWK) for association with four continuous blood pressure (BP) traits (SBP, DBP, PP, MAP) and the dichotomous outcomes hypertension and apparent treatment-resistant hypertension in 220 495 European American, 59 927 African American, and 21 273 Hispanic American individuals from the Million Veteran Program. Ethnicity stratified results were meta-analyzed to report effect estimates per 10% difference for a given ancestry proportion in all samples., Results: Percentage GBR was negatively associated with BP (P = 2.13 × 10-19, 7.92 × 10-8, 4.41 × 10-11, and 3.57 × 10-13 for SBP, DBP, PP, and MAP, respectively; coefficient range -0.10 to -0.21 mmHg per 10% increase in ancestry proportion) and was protective against hypertension [P = 2.59 × 10-5, odds ratio (OR) = 0.98] relative to other ancestries. YRI percentage was positively associated with BP (P = 1.63 × 10-23, 1.94 × 10-26, 0.012, and 3.26 × 10-29 for SBP, DBP, PP, and MAP, respectively; coefficient range 0.06-0.32 mmHg per 10% increase in ancestry proportion) and was positively associated with hypertension risk (P = 3.10 × 10-11, OR = 1.04) and apparent treatment-resistant hypertension risk (P = 1.86 × 10-4, OR = 1.04) compared with other ancestries. Percentage PEL was inversely associated with DBP (P = 2.84 × 10-5, beta = -0.11 mmHg per 10% increase in ancestry proportion)., Conclusion: These results demonstrate that risk for BP traits varies significantly by genetic ancestry. Our findings provide insight into the geographic origin of genetic factors underlying hypertension risk and establish that a portion of BP trait ethnic disparities are because of genetic differences between ancestries., (Copyright © 2021 Wolters Kluwer Health, Inc. All rights reserved.)
- Published
- 2021
- Full Text
- View/download PDF
Catalog
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.