5 results on '"Velez-Edwards, DR"'
Search Results
2. Lossless integration of multiple electronic health records for identifying pleiotropy using summary statistics.
- Author
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Li R, Duan R, Zhang X, Lumley T, Pendergrass S, Bauer C, Hakonarson H, Carrell DS, Smoller JW, Wei WQ, Carroll R, Velez Edwards DR, Wiesner G, Sleiman P, Denny JC, Mosley JD, Ritchie MD, Chen Y, and Moore JH
- Subjects
- Communication, Databases, Factual, Genome-Wide Association Study statistics & numerical data, Humans, Models, Biological, Phenotype, Polymorphism, Single Nucleotide, Privacy, Electronic Health Records statistics & numerical data, Genetic Pleiotropy
- Abstract
Increasingly, clinical phenotypes with matched genetic data from bio-bank linked electronic health records (EHRs) have been used for pleiotropy analyses. Thus far, pleiotropy analysis using individual-level EHR data has been limited to data from one site. However, it is desirable to integrate EHR data from multiple sites to improve the detection power and generalizability of the results. Due to privacy concerns, individual-level patients' data are not easily shared across institutions. As a result, we introduce Sum-Share, a method designed to efficiently integrate EHR and genetic data from multiple sites to perform pleiotropy analysis. Sum-Share requires only summary-level data and one round of communication from each site, yet it produces identical test statistics compared with that of pooled individual-level data. Consequently, Sum-Share can achieve lossless integration of multiple datasets. Using real EHR data from eMERGE, Sum-Share is able to identify 1734 potential pleiotropic SNPs for five cardiovascular diseases.
- Published
- 2021
- Full Text
- View/download PDF
3. Genome-wide association and epidemiological analyses reveal common genetic origins between uterine leiomyomata and endometriosis.
- Author
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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
- Subjects
- Adult, Ataxia Telangiectasia Mutated Proteins genetics, Endometriosis epidemiology, Female, Forkhead Box Protein O1 genetics, Forkhead Box Protein O1 metabolism, Genome-Wide Association Study, Humans, Leiomyoma complications, Leiomyoma epidemiology, Mendelian Randomization Analysis, Menorrhagia etiology, Middle Aged, Polymorphism, Single Nucleotide, Proportional Hazards Models, Receptor, Fibroblast Growth Factor, Type 4 genetics, Signal Transduction, Telomerase genetics, Uterine Neoplasms complications, Uterine Neoplasms epidemiology, White People genetics, Endometriosis genetics, Leiomyoma genetics, Uterine Neoplasms genetics
- 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.- Published
- 2019
- Full Text
- View/download PDF
4. Mapping eGFR loci to the renal transcriptome and phenome in the VA Million Veteran Program.
- Author
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Hellwege JN, Velez Edwards DR, Giri A, Qiu C, Park J, Torstenson ES, Keaton JM, Wilson OD, Robinson-Cohen C, Chung CP, Roumie CL, Klarin D, Damrauer SM, DuVall SL, Siew E, Akwo EA, Wuttke M, Gorski M, Li M, Li Y, Gaziano JM, Wilson PWF, Tsao PS, O'Donnell CJ, Kovesdy CP, Pattaro C, Köttgen A, Susztak K, Edwards TL, and Hung AM
- Subjects
- Adult, Aged, Animals, Cell Line, Cohort Studies, Computational Biology, Female, Genetic Loci, Genetic Predisposition to Disease, Genome-Wide Association Study, Humans, Kidney cytology, Kidney metabolism, Male, Mice, Middle Aged, Polymorphism, Single Nucleotide, RNA-Seq, Renal Insufficiency, Chronic physiopathology, United States, United States Department of Veterans Affairs, Veterans, Chromosome Mapping methods, Glomerular Filtration Rate genetics, Kidney physiopathology, Renal Insufficiency, Chronic genetics, Transcriptome genetics
- Abstract
Chronic kidney disease (CKD), defined by low estimated glomerular filtration rate (eGFR), contributes to global morbidity and mortality. Here we conduct a transethnic Genome-Wide Association Study of eGFR in 280,722 participants of the Million Veteran Program (MVP), with replication in 765,289 participants from the Chronic Kidney Disease Genetics (CKDGen) Consortium. We identify 82 previously unreported variants, confirm 54 loci, and report interesting findings including association of the sickle cell allele of betaglobin among non-Hispanic blacks. Our transcriptome-wide association study of kidney function in healthy kidney tissue identifies 36 previously unreported and nine known genes, and maps gene expression to renal cell types. In a Phenome-Wide Association Study in 192,868 MVP participants using a weighted genetic score we detect associations with CKD stages and complications and kidney stones. This investigation reinterprets the genetic architecture of kidney function to identify the gene, tissue, and anatomical context of renal homeostasis and the clinical consequences of dysregulation.
- Published
- 2019
- Full Text
- View/download PDF
5. Meta-analysis identifies five novel loci associated with endometriosis highlighting key genes involved in hormone metabolism.
- Author
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Sapkota Y, Steinthorsdottir V, Morris AP, Fassbender A, Rahmioglu N, De Vivo I, Buring JE, Zhang F, Edwards TL, Jones S, O D, Peterse D, Rexrode KM, Ridker PM, Schork AJ, MacGregor S, Martin NG, Becker CM, Adachi S, Yoshihara K, Enomoto T, Takahashi A, Kamatani Y, Matsuda K, Kubo M, Thorleifsson G, Geirsson RT, Thorsteinsdottir U, Wallace LM, Yang J, Velez Edwards DR, Nyegaard M, Low SK, Zondervan KT, Missmer SA, D'Hooghe T, Montgomery GW, Chasman DI, Stefansson K, Tung JY, and Nyholt DR
- Subjects
- Adult, Aged, Endometriosis metabolism, Estrogen Receptor alpha genetics, Estrogen Receptor alpha metabolism, Female, Genome-Wide Association Study, Genotype, Humans, Middle Aged, Polymorphism, Single Nucleotide, Endometriosis genetics, Genetic Loci genetics, Genetic Predisposition to Disease, Gonadal Steroid Hormones metabolism, Metabolic Networks and Pathways genetics
- Abstract
Endometriosis is a heritable hormone-dependent gynecological disorder, associated with severe pelvic pain and reduced fertility; however, its molecular mechanisms remain largely unknown. Here we perform a meta-analysis of 11 genome-wide association case-control data sets, totalling 17,045 endometriosis cases and 191,596 controls. In addition to replicating previously reported loci, we identify five novel loci significantly associated with endometriosis risk (P<5 × 10
-8 ), implicating genes involved in sex steroid hormone pathways (FN1, CCDC170, ESR1, SYNE1 and FSHB). Conditional analysis identified five secondary association signals, including two at the ESR1 locus, resulting in 19 independent single nucleotide polymorphisms (SNPs) robustly associated with endometriosis, which together explain up to 5.19% of variance in endometriosis. These results highlight novel variants in or near specific genes with important roles in sex steroid hormone signalling and function, and offer unique opportunities for more targeted functional research efforts.- Published
- 2017
- Full Text
- View/download PDF
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