1,117 results on '"Adamski, J"'
Search Results
2. Pharmacogenomics of GLP-1 receptor agonists: a genome-wide analysis of observational data and large randomised controlled trials
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't Hart, L.M., Abdalla, M., Adam, J., Adamski, J., Adragni, K., Allin, K.H., Arumugam, M., Atabaki Pasdar, N., Baltauss, T., Banasik, K.B., Baum, P., Bell, J.D., Bergstrom, M., Beulens, J.W., Bianzano, S., Bizzotto, R., Bonneford, A., Brorsson, C.A.B., Brown, A.A., Brunak, S.B., Cabrelli, L., Caiazzo, R., Canouil, M., Dale, M., Davtian, D., Dawed, A.Y., De Masi, F.M., de Preville, N., Dekkers, K.F., Dermitzakis, E.T., Deshmukh, H.A., Dings, C., Donnelly, L., Dutta, A., Ehrhardt, B., Elders, P.J.M., Engel Thomas, C.E.T., Engelbrechtsen, L., Eriksen, R.G., Eriksen, R.E., Fan, Y., Fernandez, J., Ferrer, J., Fitipaldi, H., Forgie, I.M., Forman, A., Franks, P.W., Frau, F., Fritsche, A., Froguel, P., Frost, G., Gassenhuber, J., Giordano, G.N., Giorgino, T., Gough, S., Graefe-Mody, U., Grallert, H., Grempler, R., Groeneveld, L., Groop, L., Gudmundsdóttir, V.G., Gupta, R.G., Haid, M., Hansen, T., Hansen, T.H., Hattersley, A.T., Haussler, R.S., Heggie, A.J., Hennige, A.M., Hill, A.V., Holl, R.W., Hong, M.-G., Hudson, M., Jablonka, B., Jennison, C., Jiao, J., Johansen, J.J., Jones, A.G., Jonsson, A., Karaderi, T.K., Kaye, J., Klintenberg, M., Koivula, R.W., Kokkola, T., Koopman, A.D.M., Kurbasic, A, Kuulasmaa, T., Laakso, M., Lehr, T., Loftus, H., Lundbye Allesøe, R.L.A, Mahajan, A., Mari, A., Mazzoni, G.M., McCarthy, M.I., McDonald, T.J., McEvoy, D., McRobert, N., McVittie, I., Mourby, M., Musholt, P., Mutie, P, Nice, R., Nicolay, C., Nielsen, A.M.N., Nilsson, B.N., Palmer, C.N., Pattou, F., Pavo, I., Pearson, E.R., Pedersen, O., Pedersen, H.K.P., Perry, M.H., Pomares-Millan, H., Ramisch, A., Rasmussen, S.R., Raverdi, V., Ridderstrale, M., Robertson, N., Roderick, R.C., Rodriquez, M., Ruetten, H., Rutters, F., Sackett, W., Scherer, N., Schwenk, J.M., Shah, N., Sharma, S., Sihinevich, I., Sondertoft, N.B., Staerfeldt, H., Steckel-Hamann, B., Teare, H., Thomas, M.K., Thomas, E.L., Thomsen, H.S., Thorand, B., Thorne, C.E., Tillner, J., Troen Lundgaard, A.T.L., Troll, M., Tsirigos, K.D.T., Tura, A., Uhlen, M., van Leeuwen, N., van Oort, S., Verkindt, H., Vestergaard, H., Viñuela, A., Vogt, J.K, Wad Sackett, P.W.S, Wake, D., Walker, M., Wesolowska-Andersen, A., Whitcher, B., White, M.W., Wu, H., Dawed, Adem Y, Mari, Andrea, Brown, Andrew, McDonald, Timothy J, Li, Lin, Wang, Shuaicheng, Hong, Mun-Gwan, Sharma, Sapna, Robertson, Neil R, Mahajan, Anubha, Wang, Xuan, Walker, Mark, Gough, Stephen, Hart, Leen M ‘t, Zhou, Kaixin, Forgie, Ian, Ruetten, Hartmut, Pavo, Imre, Bhatnagar, Pallav, Jones, Angus G, and Pearson, Ewan R
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- 2023
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3. Blood and adipose tissue steroid metabolomics and mRNA expression of steroidogenic enzymes in periparturient dairy cows differing in body condition
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Schuh, K., Häussler, S., Sadri, H., Prehn, C., Lintelmann, J., Adamski, J., Koch, C., Frieten, D., Ghaffari, M. H., Dusel, G., and Sauerwein, H.
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- 2022
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4. VALIDATION OF A FLOW CYTOMETRY RELEASE ASSAY UTILIZING INSTITUTIONAL CLINICAL ASSAY FOR COMPARISON FOR TCRαß+/CD19+ DEPLETED HAPLOIDENTICAL HEMATOPOIETIC PROGENITOR CELL GRAFTS
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Reckard, G.A., primary, Missan, D.S., additional, Byrd, T., additional, Herring, J., additional, Huey, J., additional, Nizzi, F.A., additional, Adamski, J., additional, Adams, R.H., additional, Otto, M., additional, and Gustafson, M., additional
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- 2024
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5. Targeted assessment of the metabolome in skeletal muscle and in serum of dairy cows supplemented with conjugated linoleic acid during early lactation
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Yang, Y., Sadri, H., Prehn, C., Adamski, J., Rehage, J., Dänicke, S., Ghaffari, M.H., and Sauerwein, H.
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- 2021
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6. Serum metabolites characterize hepatic phenotypes derived by magnetic resonance imaging
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Maushagen, J, Nattenmüller, J, von Krüchten, R, Thorand, B, Peters, A, Rathmann, W, Adamski, J, Schlett, C, Bamberg, F, Wang-Sattler, R, Rospleszcz, S, Maushagen, J, Nattenmüller, J, von Krüchten, R, Thorand, B, Peters, A, Rathmann, W, Adamski, J, Schlett, C, Bamberg, F, Wang-Sattler, R, and Rospleszcz, S
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- 2024
7. Metabolome profiling in skeletal muscle to characterize metabolic alterations in over-conditioned cows during the periparturient period
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Sadri, H., Ghaffari, M.H., Schuh, K., Dusel, G., Koch, C., Prehn, C., Adamski, J., and Sauerwein, H.
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- 2020
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8. Proteasome activity and expression of mammalian target of rapamycin signaling factors in skeletal muscle of dairy cows supplemented with conjugated linoleic acids during early lactation
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Yang, Y., Sadri, H., Prehn, C., Adamski, J., Rehage, J., Dänicke, S., von Soosten, D., Metges, C.C., Ghaffari, M.H., and Sauerwein, H.
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- 2020
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9. Mammalian target of rapamycin signaling and ubiquitin-proteasome–related gene expression in skeletal muscle of dairy cows with high or normal body condition score around calving
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Ghaffari, M.H., Schuh, K., Dusel, G., Frieten, D., Koch, C., Prehn, C., Adamski, J., Sauerwein, H., and Sadri, H.
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- 2019
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10. Biogenic amines: Concentrations in serum and skeletal muscle from late pregnancy until early lactation in dairy cows with high versus normal body condition score
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Ghaffari, M.H., Sadri, H., Schuh, K., Dusel, G., Frieten, Dörte, Koch, C., Prehn, C., Adamski, J., and Sauerwein, H.
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- 2019
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11. Acylcarnitine profiles in serum and muscle of dairy cows receiving conjugated linoleic acids or a control fat supplement during early lactation
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Yang, Y., Sadri, H., Prehn, C., Adamski, J., Rehage, J., Dänicke, S., Saremi, B., and Sauerwein, H.
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- 2019
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12. OA5‐AM23‐TU‐13 | The Effect of Machine Perfusion Versus Cold Storage on Blood Product Usage During Liver Transplantation
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Garcia, J., primary, Jones, S., additional, Williams, L., additional, Adamski, J., additional, and Lu, Q., additional
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- 2023
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13. Solid Organ Graft-Versus-Host Disease in a Recipient of a COVID-19 Positive Liver Graft
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Ashcherkin, N, primary, Pisipati, S, additional, Athale, J, additional, Carey, EJ, additional, Chascsa, D, additional, Adamski, J, additional, and Shah, S, additional
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- 2023
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14. BIOMARKERS FOR DIAGNOSIS AND PROGNOSIS OF ENDOMETRIAL CARCINOMA: BIOENDOCAR: EP555
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Knific, T, Smrkolj, Š, Romano, A, Semczuk, A, Kaminska, A, Adamiak-Godlewska, A, Vilo, J, Fishman, D, Schröder, C, Adamski, J, and Rižner, Lanišnik T
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- 2019
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15. Pharmacogenomics of GLP-1 receptor agonists: a genome-wide analysis of observational data and large randomised controlled trials
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Dawed, Adem Y, primary, Mari, Andrea, additional, Brown, Andrew, additional, McDonald, Timothy J, additional, Li, Lin, additional, Wang, Shuaicheng, additional, Hong, Mun-Gwan, additional, Sharma, Sapna, additional, Robertson, Neil R, additional, Mahajan, Anubha, additional, Wang, Xuan, additional, Walker, Mark, additional, Gough, Stephen, additional, Hart, Leen M ‘t, additional, Zhou, Kaixin, additional, Forgie, Ian, additional, Ruetten, Hartmut, additional, Pavo, Imre, additional, Bhatnagar, Pallav, additional, Jones, Angus G, additional, Pearson, Ewan R, additional, 't Hart, L.M., additional, Abdalla, M., additional, Adam, J., additional, Adamski, J., additional, Adragni, K., additional, Allin, K.H., additional, Arumugam, M., additional, Atabaki Pasdar, N., additional, Baltauss, T., additional, Banasik, K.B., additional, Baum, P., additional, Bell, J.D., additional, Bergstrom, M., additional, Beulens, J.W., additional, Bianzano, S., additional, Bizzotto, R., additional, Bonneford, A., additional, Brorsson, C.A.B., additional, Brown, A.A., additional, Brunak, S.B., additional, Cabrelli, L., additional, Caiazzo, R., additional, Canouil, M., additional, Dale, M., additional, Davtian, D., additional, Dawed, A.Y., additional, De Masi, F.M., additional, de Preville, N., additional, Dekkers, K.F., additional, Dermitzakis, E.T., additional, Deshmukh, H.A., additional, Dings, C., additional, Donnelly, L., additional, Dutta, A., additional, Ehrhardt, B., additional, Elders, P.J.M., additional, Engel Thomas, C.E.T., additional, Engelbrechtsen, L., additional, Eriksen, R.G., additional, Eriksen, R.E., additional, Fan, Y., additional, Fernandez, J., additional, Ferrer, J., additional, Fitipaldi, H., additional, Forgie, I.M., additional, Forman, A., additional, Franks, P.W., additional, Frau, F., additional, Fritsche, A., additional, Froguel, P., additional, Frost, G., additional, Gassenhuber, J., additional, Giordano, G.N., additional, Giorgino, T., additional, Gough, S., additional, Graefe-Mody, U., additional, Grallert, H., additional, Grempler, R., additional, Groeneveld, L., additional, Groop, L., additional, Gudmundsdóttir, V.G., additional, Gupta, R.G., additional, Haid, M., additional, Hansen, T., additional, Hansen, T.H., additional, Hattersley, A.T., additional, Haussler, R.S., additional, Heggie, A.J., additional, Hennige, A.M., additional, Hill, A.V., additional, Holl, R.W., additional, Hong, M.-G., additional, Hudson, M., additional, Jablonka, B., additional, Jennison, C., additional, Jiao, J., additional, Johansen, J.J., additional, Jones, A.G., additional, Jonsson, A., additional, Karaderi, T.K., additional, Kaye, J., additional, Klintenberg, M., additional, Koivula, R.W., additional, Kokkola, T., additional, Koopman, A.D.M., additional, Kurbasic, A, additional, Kuulasmaa, T., additional, Laakso, M., additional, Lehr, T., additional, Loftus, H., additional, Lundbye Allesøe, R.L.A, additional, Mahajan, A., additional, Mari, A., additional, Mazzoni, G.M., additional, McCarthy, M.I., additional, McDonald, T.J., additional, McEvoy, D., additional, McRobert, N., additional, McVittie, I., additional, Mourby, M., additional, Musholt, P., additional, Mutie, P, additional, Nice, R., additional, Nicolay, C., additional, Nielsen, A.M.N., additional, Nilsson, B.N., additional, Palmer, C.N., additional, Pattou, F., additional, Pavo, I., additional, Pearson, E.R., additional, Pedersen, O., additional, Pedersen, H.K.P., additional, Perry, M.H., additional, Pomares-Millan, H., additional, Ramisch, A., additional, Rasmussen, S.R., additional, Raverdi, V., additional, Ridderstrale, M., additional, Robertson, N., additional, Roderick, R.C., additional, Rodriquez, M., additional, Ruetten, H., additional, Rutters, F., additional, Sackett, W., additional, Scherer, N., additional, Schwenk, J.M., additional, Shah, N., additional, Sharma, S., additional, Sihinevich, I., additional, Sondertoft, N.B., additional, Staerfeldt, H., additional, Steckel-Hamann, B., additional, Teare, H., additional, Thomas, M.K., additional, Thomas, E.L., additional, Thomsen, H.S., additional, Thorand, B., additional, Thorne, C.E., additional, Tillner, J., additional, Troen Lundgaard, A.T.L., additional, Troll, M., additional, Tsirigos, K.D.T., additional, Tura, A., additional, Uhlen, M., additional, van Leeuwen, N., additional, van Oort, S., additional, Verkindt, H., additional, Vestergaard, H., additional, Viñuela, A., additional, Vogt, J.K, additional, Wad Sackett, P.W.S, additional, Wake, D., additional, Walker, M., additional, Wesolowska-Andersen, A., additional, Whitcher, B., additional, White, M.W., additional, and Wu, H., additional
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- 2023
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16. High fat diet-induced modifications in membrane lipid and mitochondrial-membrane protein signatures precede the development of hepatic insulin resistance in mice
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Kahle, M., Schäfer, A., Seelig, A., Schultheiß, J., Wu, M., Aichler, M., Leonhardt, J., Rathkolb, B., Rozman, J., Sarioglu, H., Hauck, S.M., Ueffing, M., Wolf, E., Kastenmueller, G., Adamski, J., Walch, A., Hrabé de Angelis, M., and Neschen, S.
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- 2015
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17. Serum metabolomic profiling highlights pathways associated with liver fat content in a general population sample
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Koch, M, Freitag-Wolf, S, Schlesinger, S, Borggrefe, J, Hov, J R, Jensen, M K, Pick, J, Markus, M R P, Höpfner, T, Jacobs, G, Siegert, S, Artati, A, Kastenmüller, G, Römisch-Margl, W, Adamski, J, Illig, T, Nothnagel, M, Karlsen, T H, Schreiber, S, Franke, A, Krawczak, M, Nöthlings, U, and Lieb, W
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- 2017
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18. The human metabolic profile reflects macro- and micronutrient intake distinctly according to fasting time
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Sedlmeier, A., Kluttig, A., Giegling, I., Prehn, C., Adamski, J., Kastenmüller, G., and Lacruz, M. E.
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- 2018
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19. Instability of personal human metabotype is linked to all-cause mortality
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Lacruz, M. E., Kluttig, A., Tiller, D., Medenwald, D., Giegling, I., Rujescu, D., Prehn, C., Adamski, J., Greiser, K. H., and Kastenmüller, G.
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- 2018
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20. Four groups of type 2 diabetes contribute to the etiological and clinical heterogeneity in newly diagnosed individuals: An IMI DIRECT study
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Wesolowska-Andersen A, Brorsson CA, Bizzotto R, Mari A, Tura A, Koivula R, Mahajan A, Vinuela A, Tajes JF, Sharma S, Haid M, Prehn C, Artati A, Hong MG, Musholt PB, Kurbasic A, De Masi F, Tsirigos K, Pedersen HK, Gudmundsdottir V, Thomas CE, Banasik K, Jennison C, Jones A, Kennedy G, Bell J, Thomas L, Frost G, Thomsen H, Allin K, Hansen TH, Vestergaard H, Hansen T, Rutters F, Elders P, t'Hart L, Bonnefond A, Canouil M, Brage S, Kokkola T, Heggie A, McEvoy D, Hattersley A, McDonald T, Teare H, Ridderstrale M, Walker M, Forgie I, Giordano GN, Froguel P, Pavo I, Ruetten H, Pedersen O, Dermitzakis E, Franks PW, Schwenk JM, Adamski J, Pearson E, McCarthy MI, Brunak S, and ID Consortium
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General Economics, Econometrics and Finance - Published
- 2022
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21. Human 17β-Hydroxysteroid Dehydrogenase Type 5 is Inhibited by Dietary Flavonoids
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Krazeisen, A., Breitling, R., Möller, G., Adamski, J., Buslig, Béla S., editor, and Manthey, John A., editor
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- 2002
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22. Pre- versus post-operative untargeted plasma nuclear magnetic resonance spectroscopy metabolomics of pheochromocytoma and paraganglioma
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Bliziotis, N.G., Kluijtmans, L.A.J., Soto, S., Tinnevelt, G.H., Langton, K., Robledo, M., Pamporaki, C., Engelke, U.F., Erlic, Z., Engel, J., Deutschbein, T., Nölting, S., Prejbisz, A., Prehn, C., Adamski, J., Januszewicz, A., Reincke, M., Fassnacht, M., Eisenhofer, G., Beuschlein, F., Kroiss, M., Wevers, R.A., Jansen, J.J., Deinum, J., Timmers, H.J.L.M., Bliziotis, N.G., Kluijtmans, L.A.J., Soto, S., Tinnevelt, G.H., Langton, K., Robledo, M., Pamporaki, C., Engelke, U.F., Erlic, Z., Engel, J., Deutschbein, T., Nölting, S., Prejbisz, A., Prehn, C., Adamski, J., Januszewicz, A., Reincke, M., Fassnacht, M., Eisenhofer, G., Beuschlein, F., Kroiss, M., Wevers, R.A., Jansen, J.J., Deinum, J., and Timmers, H.J.L.M.
- Abstract
Contains fulltext : 245740.pdf (Publisher’s version ) (Open Access)
- Published
- 2022
23. Metabolic Signatures of Healthy Lifestyle Patterns and Colorectal Cancer Risk in a European Cohort.
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Rothwell, JA, Murphy, N, Bešević, J, Kliemann, N, Jenab, M, Ferrari, P, Achaintre, D, Gicquiau, A, Vozar, B, Scalbert, A, Huybrechts, I, Freisling, H, Prehn, C, Adamski, J, Cross, AJ, Pala, VM, Boutron-Ruault, M-C, Dahm, CC, Overvad, K, Gram, IT, Sandanger, TM, Skeie, G, Jakszyn, P, Tsilidis, KK, Aleksandrova, K, Schulze, MB, Hughes, DJ, van Guelpen, B, Bodén, S, Sánchez, M-J, Schmidt, JA, Katzke, V, Kühn, T, Colorado-Yohar, S, Tumino, R, Bueno-de-Mesquita, B, Vineis, P, Masala, G, Panico, S, Eriksen, AK, Tjønneland, A, Aune, D, Weiderpass, E, Severi, G, Chajès, V, Gunter, MJ, Rothwell, JA, Murphy, N, Bešević, J, Kliemann, N, Jenab, M, Ferrari, P, Achaintre, D, Gicquiau, A, Vozar, B, Scalbert, A, Huybrechts, I, Freisling, H, Prehn, C, Adamski, J, Cross, AJ, Pala, VM, Boutron-Ruault, M-C, Dahm, CC, Overvad, K, Gram, IT, Sandanger, TM, Skeie, G, Jakszyn, P, Tsilidis, KK, Aleksandrova, K, Schulze, MB, Hughes, DJ, van Guelpen, B, Bodén, S, Sánchez, M-J, Schmidt, JA, Katzke, V, Kühn, T, Colorado-Yohar, S, Tumino, R, Bueno-de-Mesquita, B, Vineis, P, Masala, G, Panico, S, Eriksen, AK, Tjønneland, A, Aune, D, Weiderpass, E, Severi, G, Chajès, V, and Gunter, MJ
- Abstract
BACKGROUND & AIMS: Colorectal cancer risk can be lowered by adherence to the World Cancer Research Fund/American Institute for Cancer Research (WCRF/AICR) guidelines. We derived metabolic signatures of adherence to these guidelines and tested their associations with colorectal cancer risk in the European Prospective Investigation into Cancer and Nutrition cohort. METHODS: Scores reflecting adherence to the WCRF/AICR recommendations (scale, 1-5) were calculated from participant data on weight maintenance, physical activity, diet, and alcohol among a discovery set of 5738 cancer-free European Prospective Investigation into Cancer and Nutrition participants with metabolomics data. Partial least-squares regression was used to derive fatty acid and endogenous metabolite signatures of the WCRF/AICR score in this group. In an independent set of 1608 colorectal cancer cases and matched controls, odds ratios (ORs) and 95% CIs were calculated for colorectal cancer risk per unit increase in WCRF/AICR score and per the corresponding change in metabolic signatures using multivariable conditional logistic regression. RESULTS: Higher WCRF/AICR scores were characterized by metabolic signatures of increased odd-chain fatty acids, serine, glycine, and specific phosphatidylcholines. Signatures were inversely associated more strongly with colorectal cancer risk (fatty acids: OR, 0.51 per unit increase; 95% CI, 0.29-0.90; endogenous metabolites: OR, 0.62 per unit change; 95% CI, 0.50-0.78) than the WCRF/AICR score (OR, 0.93 per unit change; 95% CI, 0.86-1.00) overall. Signature associations were stronger in male compared with female participants. CONCLUSIONS: Metabolite profiles reflecting adherence to WCRF/AICR guidelines and additional lifestyle or biological risk factors were associated with colorectal cancer. Measuring a specific panel of metabolites representative of a healthy or unhealthy lifestyle may identify strata of the population at higher risk of colorectal cancer.
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- 2022
24. Machine learning for classification of hypertension subtypes using multi-omics: A multi-centre, retrospective, data-driven study
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Reel, P.S., Reel, S., Kralingen, J.C. van, Langton, K., Lang, K., Erlic, Z., Larsen, C.K., Amar, L., Pamporaki, C., Mulatero, P., Blanchard, A., Kabat, M., Robertson, S., MacKenzie, S.M., Taylor, A.E., Peitzsch, M., Ceccato, F., Scaroni, C., Reincke, M., Kroiss, M., Dennedy, M.C., Pecori, A., Monticone, S., Deinum, J., Rossi, G.P., Lenzini, L., McClure, J.D., Nind, T., Riddell, A., Stell, A., Cole, C., Sudano, I., Prehn, C., Adamski, J., Gimenez-Roqueplo, A.P., Assié, G., Arlt, W., Beuschlein, F., Eisenhofer, G., Davies, E., Zennaro, M.C., Jefferson, E., Reel, P.S., Reel, S., Kralingen, J.C. van, Langton, K., Lang, K., Erlic, Z., Larsen, C.K., Amar, L., Pamporaki, C., Mulatero, P., Blanchard, A., Kabat, M., Robertson, S., MacKenzie, S.M., Taylor, A.E., Peitzsch, M., Ceccato, F., Scaroni, C., Reincke, M., Kroiss, M., Dennedy, M.C., Pecori, A., Monticone, S., Deinum, J., Rossi, G.P., Lenzini, L., McClure, J.D., Nind, T., Riddell, A., Stell, A., Cole, C., Sudano, I., Prehn, C., Adamski, J., Gimenez-Roqueplo, A.P., Assié, G., Arlt, W., Beuschlein, F., Eisenhofer, G., Davies, E., Zennaro, M.C., and Jefferson, E.
- Abstract
Item does not contain fulltext, BACKGROUND: Arterial hypertension is a major cardiovascular risk factor. Identification of secondary hypertension in its various forms is key to preventing and targeting treatment of cardiovascular complications. Simplified diagnostic tests are urgently required to distinguish primary and secondary hypertension to address the current underdiagnosis of the latter. METHODS: This study uses Machine Learning (ML) to classify subtypes of endocrine hypertension (EHT) in a large cohort of hypertensive patients using multidimensional omics analysis of plasma and urine samples. We measured 409 multi-omics (MOmics) features including plasma miRNAs (PmiRNA: 173), plasma catechol O-methylated metabolites (PMetas: 4), plasma steroids (PSteroids: 16), urinary steroid metabolites (USteroids: 27), and plasma small metabolites (PSmallMB: 189) in primary hypertension (PHT) patients, EHT patients with either primary aldosteronism (PA), pheochromocytoma/functional paraganglioma (PPGL) or Cushing syndrome (CS) and normotensive volunteers (NV). Biomarker discovery involved selection of disease combination, outlier handling, feature reduction, 8 ML classifiers, class balancing and consideration of different age- and sex-based scenarios. Classifications were evaluated using balanced accuracy, sensitivity, specificity, AUC, F1, and Kappa score. FINDINGS: Complete clinical and biological datasets were generated from 307 subjects (PA=113, PPGL=88, CS=41 and PHT=112). The random forest classifier provided ∼92% balanced accuracy (∼11% improvement on the best mono-omics classifier), with 96% specificity and 0.95 AUC to distinguish one of the four conditions in multi-class ALL-ALL comparisons (PPGL vs PA vs CS vs PHT) on an unseen test set, using 57 MOmics features. For discrimination of EHT (PA + PPGL + CS) vs PHT, the simple logistic classifier achieved 0.96 AUC with 90% sensitivity, and ∼86% specificity, using 37 MOmics features. One PmiRNA (hsa-miR-15a-5p) and two PSmallMB (C9 and PC ae C38:1
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- 2022
25. Machine learning for classification of hypertension subtypes using multi-omics: A multi-centre, retrospective, data-driven study
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Reel, PS, Reel, S, van Kralingen, JC, Langton, K, Lang, K, Erlic, Z, Larsen, CK, Amar, L, Pamporaki, C, Mulatero, P, Blanchard, A, Kabat, M, Robertson, S, MacKenzie, SM, Taylor, AE, Peitzsch, M, Ceccato, F, Scaroni, C, Reincke, M, Kroiss, M, Dennedy, MC, Pecori, A, Monticone, S, Deinum, J, Rossi, GP, Lenzini, L, McClure, JD, Nind, T, Riddell, A, Stell, A, Cole, C, Sudano, I, Prehn, C, Adamski, J, Gimenez-Roqueplo, A-P, Assie, G, Arlt, W, Beuschlein, F, Eisenhofer, G, Davies, E, Zennaro, M-C, Jefferson, E, Reel, PS, Reel, S, van Kralingen, JC, Langton, K, Lang, K, Erlic, Z, Larsen, CK, Amar, L, Pamporaki, C, Mulatero, P, Blanchard, A, Kabat, M, Robertson, S, MacKenzie, SM, Taylor, AE, Peitzsch, M, Ceccato, F, Scaroni, C, Reincke, M, Kroiss, M, Dennedy, MC, Pecori, A, Monticone, S, Deinum, J, Rossi, GP, Lenzini, L, McClure, JD, Nind, T, Riddell, A, Stell, A, Cole, C, Sudano, I, Prehn, C, Adamski, J, Gimenez-Roqueplo, A-P, Assie, G, Arlt, W, Beuschlein, F, Eisenhofer, G, Davies, E, Zennaro, M-C, and Jefferson, E
- Abstract
BACKGROUND: Arterial hypertension is a major cardiovascular risk factor. Identification of secondary hypertension in its various forms is key to preventing and targeting treatment of cardiovascular complications. Simplified diagnostic tests are urgently required to distinguish primary and secondary hypertension to address the current underdiagnosis of the latter. METHODS: This study uses Machine Learning (ML) to classify subtypes of endocrine hypertension (EHT) in a large cohort of hypertensive patients using multidimensional omics analysis of plasma and urine samples. We measured 409 multi-omics (MOmics) features including plasma miRNAs (PmiRNA: 173), plasma catechol O-methylated metabolites (PMetas: 4), plasma steroids (PSteroids: 16), urinary steroid metabolites (USteroids: 27), and plasma small metabolites (PSmallMB: 189) in primary hypertension (PHT) patients, EHT patients with either primary aldosteronism (PA), pheochromocytoma/functional paraganglioma (PPGL) or Cushing syndrome (CS) and normotensive volunteers (NV). Biomarker discovery involved selection of disease combination, outlier handling, feature reduction, 8 ML classifiers, class balancing and consideration of different age- and sex-based scenarios. Classifications were evaluated using balanced accuracy, sensitivity, specificity, AUC, F1, and Kappa score. FINDINGS: Complete clinical and biological datasets were generated from 307 subjects (PA=113, PPGL=88, CS=41 and PHT=112). The random forest classifier provided ∼92% balanced accuracy (∼11% improvement on the best mono-omics classifier), with 96% specificity and 0.95 AUC to distinguish one of the four conditions in multi-class ALL-ALL comparisons (PPGL vs PA vs CS vs PHT) on an unseen test set, using 57 MOmics features. For discrimination of EHT (PA + PPGL + CS) vs PHT, the simple logistic classifier achieved 0.96 AUC with 90% sensitivity, and ∼86% specificity, using 37 MOmics features. One PmiRNA (hsa-miR-15a-5p) and two PSmallMB (C9 and PC ae C38:1
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- 2022
26. Pan-cancer analysis of pre-diagnostic blood metabolite concentrations in the European Prospective Investigation into Cancer and Nutrition.
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Breeur, M, Ferrari, P, Dossus, L, Jenab, M, Johansson, M, Rinaldi, S, Travis, RC, His, M, Key, TJ, Schmidt, JA, Overvad, K, Tjønneland, A, Kyrø, C, Rothwell, JA, Laouali, N, Severi, G, Kaaks, R, Katzke, V, Schulze, MB, Eichelmann, F, Palli, D, Grioni, S, Panico, S, Tumino, R, Sacerdote, C, Bueno-de-Mesquita, B, Olsen, KS, Sandanger, TM, Nøst, TH, Quirós, JR, Bonet, C, Barranco, MR, Chirlaque, M-D, Ardanaz, E, Sandsveden, M, Manjer, J, Vidman, L, Rentoft, M, Muller, D, Tsilidis, K, Heath, AK, Keun, H, Adamski, J, Keski-Rahkonen, P, Scalbert, A, Gunter, MJ, Viallon, V, Breeur, M, Ferrari, P, Dossus, L, Jenab, M, Johansson, M, Rinaldi, S, Travis, RC, His, M, Key, TJ, Schmidt, JA, Overvad, K, Tjønneland, A, Kyrø, C, Rothwell, JA, Laouali, N, Severi, G, Kaaks, R, Katzke, V, Schulze, MB, Eichelmann, F, Palli, D, Grioni, S, Panico, S, Tumino, R, Sacerdote, C, Bueno-de-Mesquita, B, Olsen, KS, Sandanger, TM, Nøst, TH, Quirós, JR, Bonet, C, Barranco, MR, Chirlaque, M-D, Ardanaz, E, Sandsveden, M, Manjer, J, Vidman, L, Rentoft, M, Muller, D, Tsilidis, K, Heath, AK, Keun, H, Adamski, J, Keski-Rahkonen, P, Scalbert, A, Gunter, MJ, and Viallon, V
- Abstract
BACKGROUND: Epidemiological studies of associations between metabolites and cancer risk have typically focused on specific cancer types separately. Here, we designed a multivariate pan-cancer analysis to identify metabolites potentially associated with multiple cancer types, while also allowing the investigation of cancer type-specific associations. METHODS: We analysed targeted metabolomics data available for 5828 matched case-control pairs from cancer-specific case-control studies on breast, colorectal, endometrial, gallbladder, kidney, localized and advanced prostate cancer, and hepatocellular carcinoma nested within the European Prospective Investigation into Cancer and Nutrition (EPIC) cohort. From pre-diagnostic blood levels of an initial set of 117 metabolites, 33 cluster representatives of strongly correlated metabolites and 17 single metabolites were derived by hierarchical clustering. The mutually adjusted associations of the resulting 50 metabolites with cancer risk were examined in penalized conditional logistic regression models adjusted for body mass index, using the data-shared lasso penalty. RESULTS: Out of the 50 studied metabolites, (i) six were inversely associated with the risk of most cancer types: glutamine, butyrylcarnitine, lysophosphatidylcholine a C18:2, and three clusters of phosphatidylcholines (PCs); (ii) three were positively associated with most cancer types: proline, decanoylcarnitine, and one cluster of PCs; and (iii) 10 were specifically associated with particular cancer types, including histidine that was inversely associated with colorectal cancer risk and one cluster of sphingomyelins that was inversely associated with risk of hepatocellular carcinoma and positively with endometrial cancer risk. CONCLUSIONS: These results could provide novel insights for the identification of pathways for cancer development, in particular those shared across different cancer types.
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- 2022
27. Comparison of metabolic profiles of acutely ill and short-term weight recovered patients with anorexia nervosa reveals alterations of 33 out of 163 metabolites
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Föcker, M., Timmesfeld, N., Scherag, S., Knoll, N., Singmann, P., Wang-Sattler, R., Bühren, K., Schwarte, R., Egberts, K., Fleischhaker, C., Adamski, J., Illig, T., Suhre, K., Albayrak, Ö., Hinney, A., Herpertz-Dahlmann, B., and Hebebrand, J.
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- 2012
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28. Hematopoietic Stem/Progenitor Cells and Engineering: CRYOPRESERVATION OF UNRELATED DONOR PERIPHERAL BLOOD HEMATOPOIETIC CELL PRODUCTS DOES NOT IMPAIR PLATELET AND NEUTROPHIL ENGRAFTMENT
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Dopico, J. Triana, primary, Bonilla-Baker, J., additional, Feehery, L., additional, Malakian, S., additional, Gustafson, M., additional, and Adamski, J., additional
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- 2022
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29. Hematopoietic Stem/Progenitor Cells and Engineering: EVALUATION OF CELL CONCENTRATION, TRANSIT TIME AND CRYOPRESERVATION OF UNRELATED DONOR PRODUCTS ON ENGRAFTMENT
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Dopico, J. Triana, primary, Bonilla-Baker, J., additional, Feehery, L., additional, Malakian, S., additional, Gustafson, M., additional, and Adamski, J., additional
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- 2022
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30. Process Development and Manufacturing: VALIDATION OF THE MANUFACTURING OF AUTOLOGOUS MUC-1 ACTIVATED T CELLS FOR A PHASE I DOSE ESCALATION TRIAL FOR PATIENTS WITH MULTIPLE MYELOMA
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McCoy, G.A., primary, Groen, C.A., additional, Missan, D.S., additional, Pathangey, L.B., additional, Myers, L.W., additional, Adamski, J., additional, Bergsagel, L., additional, Gendler, S.J., additional, and Gustafson, M., additional
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- 2022
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31. New C3H KitN824K/WT cancer mouse model develops late-onset malignant mammary tumors with high penetrance
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Klein-Rodewald, T., Micklich, K., Sanz-Moreno, A., Tost, M., Calzada-Wack, J., Adler, T., Klaften, M., Sabrautzki, S., Aigner, B., Kraiger, M.J., Gailus-Durner, V., Fuchs, H., German Mouse Clinic Consortium (Aguilar-Pimentel, J.A., Becker, L., Garrett, L., Hölter, S.M., Prehn, C., Rácz, I., Rozman, J., Puk, O., Schrewe, A., Adamski, J., Esposito, I., Wurst, W., Stöger, C.), Gründer, A., Pahl, H., Wolf, E., Hrabě de Angelis, M., and Rathkolb, B.
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Multidisciplinary - Abstract
Gastro-intestinal stromal tumors and acute myeloid leukemia induced by activating stem cell factor receptor tyrosine kinase (KIT) mutations are highly malignant. Less clear is the role of KIT mutations in the context of breast cancer. Treatment success of KIT-induced cancers is still unsatisfactory because of primary or secondary resistance to therapy. Mouse models offer essential platforms for studies on molecular disease mechanisms in basic cancer research. In the course of the Munich N-ethyl-N-nitrosourea (ENU) mutagenesis program a mouse line with inherited polycythemia was established. It carries a base-pair exchange in the Kit gene leading to an amino acid exchange at position 824 in the activation loop of KIT. This KIT variant corresponds to the N822K mutation found in human cancers, which is associated with imatinib-resistance. C3H KitN824K/WT mice develop hyperplasia of interstitial cells of Cajal and retention of ingesta in the cecum. In contrast to previous Kit-mutant models, we observe a benign course of gastrointestinal pathology associated with prolonged survival. Female mutants develop mammary carcinomas at late onset and subsequent lung metastasis. The disease model complements existing oncology research platforms. It allows for addressing the role of KIT mutations in breast cancer and identifying genetic and environmental modifiers of disease progression.
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- 2022
32. Increased amino acids levels and the risk of developing of hypertriglyceridemia in a 7-year follow-up
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Mook-Kanamori, D. O., Römisch-Margl, W., Kastenmüller, G., Prehn, C., Petersen, A. K., Illig, T., Gieger, C., Wang-Sattler, R., Meisinger, C., Peters, A., Adamski, J., and Suhre, K.
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- 2014
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33. Circulating metabolites significantly improve the prediction of renal dysfunction in type 2 diabetes
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Scarale M, De Cosmo S, Prehn C, Schena F, Adamski J, Trischitta V, Menzaghi C, Scarale, M, De Cosmo, S, Prehn, C, Schena, F, Adamski, J, Trischitta, V, and Menzaghi, C
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- 2020
34. A common FADS2 promoter polymorphism increases promoter activity and facilitates binding of transcription factor ELK1
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Lattka, E., Eggers, S., Moeller, G., Heim, K., Weber, M., Mehta, D., Prokisch, H., Illig, T., and Adamski, J.
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- 2010
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35. Metabolic signature associated with parameters of the complete blood count in apparently healthy individuals
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Masuch, A., Budde, K., Kastenmüller, G., Artati, A., Adamski, J., Völzke, H., Nauck, M., and Pietzner, M.
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Adult ,Male ,complete blood count ,Apparently Healthy ,Blood Cell Metabolism ,Complete Blood Count ,Metabolomics ,Populationbased Study ,Health Status ,Original Articles ,metabolomics ,Mass Spectrometry ,Blood Cell Count ,parasitic diseases ,blood cell metabolism ,Humans ,Original Article ,Female ,apparently healthy ,population‐based study - Abstract
Metabolomics studies now approach large sample sizes and the health characterization of the study population often include complete blood count (CBC) results. Upon careful interpretation the CBC aids diagnosis and provides insight into the health status of the patient within a clinical setting. Uncovering metabolic signatures associated with parameters of the CBC in apparently healthy individuals may facilitate interpretation of metabolomics studies in general and related to diseases. For this purpose 879 subjects from the population‐based Study of Health in Pomerania (SHIP)‐TREND were included. Using metabolomics data resulting from mass‐spectrometry based measurements in plasma samples associations of specific CBC parameters with metabolites were determined by linear regression models. In total, 118 metabolites significantly associated with at least one of the CBC parameters. Strongest associations were observed with metabolites of heme degradation and energy production/consumption. Inverse association seen with mean corpuscular volume and mean corpuscular haemoglobin comprised metabolites potentially related to kidney function. The presently identified metabolic signatures are likely derived from the general function and formation/elimination of blood cells. The wealth of associated metabolites strongly argues to consider CBC in the interpretation of metabolomics studies, in particular if mutual effects on those parameters by the disease of interest are known.
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- 2019
36. Zebrafish 17beta-hydroxysteroid dehydrogenases: An evolutionary perspective
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Mindnich, R. and Adamski, J.
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- 2009
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37. Variation of serum metabolites related to habitual diet: a targeted metabolomic approach in EPIC-Potsdam
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Floegel, A., von Ruesten, A., Drogan, D., Schulze, M.B., Prehn, C., Adamski, J., Pischon, T., and Boeing, H.
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High-fiber diet -- Health aspects ,Chronic diseases -- Prevention ,Meat -- Health aspects ,Metabolites -- Physiological aspects ,Metabolomics -- Research ,Food/cooking/nutrition ,Health - Abstract
BACKGROUND/OBJECTIVE: Serum metabolites have been linked to higher risk of chronic diseases but determinants of serum metabolites are not clear. We aimed to investigate the association between habitual diet as a modifiable risk factor and relevant serum metabolites. SUBJECTS/METHODS: This cross-sectional study comprised 2380 EPIC-Potsdam participants. Intake of 45 food groups was assessed by food frequency questionnaire and concentrations of 127 serum metabolites were measured by targeted metabolomics. Reduced rank regression was used to find dietary patterns that explain the maximum variation of metabolites. RESULTS: In the multivariable-adjusted model, the proportion of explained variation by habitual diet was ranked as follows: acyl-alkyl-phosphatidylcholines (5.7%), sphingomyelins (5.1%), diacyl-phosphatidylcholines (4.4%), lyso-phosphatidylcholines (4.1%), acylcarnitines (3.5%), amino acids (2.2%) and hexose (1.6%). A pattern with high intake of butter and low intake of margarine was related to acylcarnitines, acyl-alkyl-phosphatidylcholines, lyso-phosphatidylcholines and hydroxy-sphingomyelins, particularly with saturated and monounsaturated fatty acid side chains. A pattern with high intake of red meat and fish and low intake of whole-grain bread and tea was related to hexose and phosphatidylcholines. A pattern consisting of high intake of potatoes, dairy products and cornflakes particularly explained methionine and branched chain amino acids. Dietary patterns related to type 2 diabetes-relevant metabolites included high intake of red meat and low intake of whole-grain bread, tea, coffee, cake and cookies, canned fruits and fish. CONCLUSIONS: Dietary patterns characterized by intakes of red meat, whole-grain bread, tea and coffee were linked to relevant metabolites and could be potential targets for chronic disease prevention. European Journal of Clinical Nutrition (2013) 67, 1100-1108; doi: 10.1038/ejcn.2013.147; published online 14 August 2013 Keywords: metabolomics; metabolites; diet; food intake; reduced rank regression; systems epidemiology, INTRODUCTION Advancement of technologies from analytical chemistry, particularly nuclear magnetic resonance spectroscopy and mass spectrometry (MS), made high-throughput metabolomic analysis of biological specimen possible. To date, an increasing number of [...]
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- 2013
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38. Genetic analysis of blood molecular phenotypes reveals regulatory networks affecting complex traits: a DIRECT study
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Petra J. M. Elders, Andrea Mari, Femke Rutters, Musholt P, Caiazzo R, Ana Viñuela, Harriet Teare, Fernandez J, H Grallert, McEvoy D, Kristine H. Allin, Pattou F, Jochen M. Schwenk, Pavo I, Mourby M, Dupuis T, Giuseppe N. Giordano, Tarja Kokkola, Andrew T. Hattersley, Adam J, Jagadish Vangipurapu, Ian M Forgie, Anubha Mahajan, Cédric Howald, Caroline Brorsson, Adamski J, Henrik Vestergaard, Gary Frost, Emmanouil T. Dermitzakis, Thomas Willum Hansen, Alison Heggie, Deborah Penet, Sapna Sharma, McDonald Tj, Mark Haid, De Masi F, Raverdy, Bernd Jablonka, Paul W. Franks, Robert W. Koivula, Andrew A. Brown, Søren Brunak, Mark I. McCarthy, Konstantinos D. Tsirigos, Angus G. Jones, Ridderstrale M, Mun-Gwan Hong, E R Pearson, Markku Laakso, Birgitte Nilsson, Davtian D, T’Hart Lm, Walker M, Oluf Pedersen, Ruetten H, Henna Cederberg, and Luciana Romano
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Genetics ,Pleiotropy ,Genetic variation ,Genome-wide association study ,Allelic heterogeneity ,Biology ,Genetic analysis ,Gene ,Phenotype ,Genetic association - Abstract
Genetic variants identified by genome-wide association studies can contribute to disease risk by altering the production and abundance of mRNA, proteins and other molecules. However, the interplay between molecular intermediaries that define the pathway from genetic variation to disease is not well understood. Here, we evaluated the shared genetic regulation of mRNA molecules, proteins and metabolites derived from whole blood from 3,029 human donors. We find abundant allelic heterogeneity, where multiple variants regulate a particular molecular phenotype, and pleiotropy, where a single variant was associated with multiple molecular phenotypes over multiple genomic regions. We find varying proportions of shared genetic regulation across phenotypes, highest between expression and proteins (66.6%). We were able to recapitulate a substantial proportion of gene expression genetic regulation in a diverse set of 44 tissues, with a median of 88% shared associations for blood expression and 22.3% for plasma proteins. Finally, the genetic and molecular associations were represented in networks including 2,828 known GWAS variants. One sub-network shows the trans relationship between rs149007767 and RTEN, and identifies GRB10 and IKZF1 as candidates mediating genes. Our work provides a roadmap to understanding molecular networks and deriving the underlying mechanism of action of GWAS variants across different molecular phenotypes.
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- 2021
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39. The blood metabolome of incident kidney cancer: A case-control study nested within the MetKid consortium
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Guida, F., Tan, V.Y., Corbin, L.J., Smith-Byrne, K., Alcala, K., Langenberg, C., Stewart, I.D., Butterworth, A.S., Surendran, P., Achaintre, D., Adamski, J., Exezarreta, P.A., Bergmann, M.M., Bull, C.J., Dahm, C.C., Gicquiau, A., Giles, G.G., Gunter, M.J., Haller, T., Langhammer, A., Larose, T.L., Ljungberg, B., Metspalu, A., Milne, R.L., Muller, D.C., Nøst, T.H., Sørgjerd, E.P., Prehn, C., Riboli, E., Rinaldi, S., Rothwell, J.A., Scalbert, A., Schmidt, J.A., Severi, G., Sieri, S., Vermeulen, R., Vincent, E.E., Waldenberger, M., Timpson, N.J., Johansson, M., Afd. Theologie, Sub Inorganic Chemistry and Catalysis, IRAS OH Epidemiology Chemical Agents, dIRAS RA-2, Langenberg, Claudia [0000-0002-5017-7344], Butterworth, Adam [0000-0002-6915-9015], Apollo - University of Cambridge Repository, Cancer Research UK, Guida, Florence [0000-0002-9652-2430], Tan, Vanessa Y. [0000-0001-7938-127X], Corbin, Laura J. [0000-0002-4032-9500], Alcala, Karine [0000-0003-2308-9880], Adamski, Jerzy [0000-0001-9259-0199], Bull, Caroline J. [0000-0002-2176-5120], Dahm, Christina C. [0000-0003-0481-2893], Giles, Graham G. [0000-0003-4946-9099], Langhammer, Arnulf [0000-0001-5296-6673], Ljungberg, Börje [0000-0002-4121-3753], Milne, Roger L. [0000-0001-5764-7268], Nøst, Therese H. [0000-0001-6805-3094], Pettersen Sørgjerd, Elin [0000-0002-5995-2386], Prehn, Cornelia [0000-0002-1274-4715], Riboli, Elio [0000-0001-6795-6080], Rothwell, Joseph A. [0000-0002-6927-3360], Scalbert, Augustin [0000-0001-6651-6710], Schmidt, Julie A. [0000-0002-7733-8750], Severi, Gianluca [0000-0001-7157-419X], Sieri, Sabina [0000-0001-5201-172X], Vincent, Emma E. [0000-0002-8917-7384], Timpson, Nicholas J. [0000-0002-7141-9189], Johansson, Mattias [0000-0002-3116-5081], Tan, Vanessa Y [0000-0001-7938-127X], Corbin, Laura J [0000-0002-4032-9500], Bull, Caroline J [0000-0002-2176-5120], Dahm, Christina C [0000-0003-0481-2893], Giles, Graham G [0000-0003-4946-9099], Milne, Roger L [0000-0001-5764-7268], Muller, David C [0000-0002-2350-0417], Nøst, Therese H [0000-0001-6805-3094], Rothwell, Joseph A [0000-0002-6927-3360], Schmidt, Julie A [0000-0002-7733-8750], Vincent, Emma E [0000-0002-8917-7384], Timpson, Nicholas J [0000-0002-7141-9189], Afd. Theologie, Sub Inorganic Chemistry and Catalysis, IRAS OH Epidemiology Chemical Agents, and dIRAS RA-2
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Male ,Epidemiology ,Single Nucleotide Polymorphisms ,Physiology ,Biochemistry ,Body Mass Index ,0302 clinical medicine ,Risk Factors ,Metabolites ,Medicine ,Prospective Studies ,Prospective cohort study ,11 Medical and Health Sciences ,2. Zero hunger ,Medicine(all) ,0303 health sciences ,Cancer Risk Factors ,Incidence ,Neurochemistry ,General Medicine ,Neurotransmitters ,Middle Aged ,Kidney Neoplasms ,3. Good health ,Europe ,Oncology ,Nephrology ,030220 oncology & carcinogenesis ,Renal Cancer ,Metabolome ,Female ,Metabolic Pathways ,Metabolic Labeling ,ICEP ,Glutamate ,Research Article ,Victoria ,Risk Assessment ,03 medical and health sciences ,General & Internal Medicine ,Genetics ,Xenobiotic Metabolism ,Humans ,Metabolomics ,Obesity ,Risk factor ,Molecular Biology Techniques ,Molecular Biology ,030304 developmental biology ,Aged ,Medicine and health sciences ,Cancer och onkologi ,Biology and life sciences ,business.industry ,Case-control study ,Cancer ,Odds ratio ,Mendelian Randomization Analysis ,medicine.disease ,Research and analysis methods ,Metabolism ,Cell Labeling ,Medical Risk Factors ,Cancer and Oncology ,Case-Control Studies ,business ,Kidney cancer ,Body mass index ,Biomarkers ,Neuroscience - Abstract
Background Excess bodyweight and related metabolic perturbations have been implicated in kidney cancer aetiology, but the specific molecular mechanisms underlying these relationships are poorly understood. In this study, we sought to identify circulating metabolites that predispose kidney cancer and to evaluate the extent to which they are influenced by body mass index (BMI). Methods and findings We assessed the association between circulating levels of 1,416 metabolites and incident kidney cancer using pre-diagnostic blood samples from up to 1,305 kidney cancer case–control pairs from 5 prospective cohort studies. Cases were diagnosed on average 8 years after blood collection. We found 25 metabolites robustly associated with kidney cancer risk. In particular, 14 glycerophospholipids (GPLs) were inversely associated with risk, including 8 phosphatidylcholines (PCs) and 2 plasmalogens. The PC with the strongest association was PC ae C34:3 with an odds ratio (OR) for 1 standard deviation (SD) increment of 0.75 (95% confidence interval [CI]: 0.68 to 0.83, p = 2.6 × 10−8). In contrast, 4 amino acids, including glutamate (OR for 1 SD = 1.39, 95% CI: 1.20 to 1.60, p = 1.6 × 10−5), were positively associated with risk. Adjusting for BMI partly attenuated the risk association for some—but not all—metabolites, whereas other known risk factors of kidney cancer, such as smoking and alcohol consumption, had minimal impact on the observed associations. A mendelian randomisation (MR) analysis of the influence of BMI on the blood metabolome highlighted that some metabolites associated with kidney cancer risk are influenced by BMI. Specifically, elevated BMI appeared to decrease levels of several GPLs that were also found inversely associated with kidney cancer risk (e.g., −0.17 SD change [ßBMI] in 1-(1-enyl-palmitoyl)-2-linoleoyl-GPC (P-16:0/18:2) levels per SD change in BMI, p = 3.4 × 10−5). BMI was also associated with increased levels of glutamate (ßBMI: 0.12, p = 1.5 × 10−3). While our results were robust across the participating studies, they were limited to study participants of European descent, and it will, therefore, be important to evaluate if our findings can be generalised to populations with different genetic backgrounds. Conclusions This study suggests a potentially important role of the blood metabolome in kidney cancer aetiology by highlighting a wide range of metabolites associated with the risk of developing kidney cancer and the extent to which changes in levels of these metabolites are driven by BMI—the principal modifiable risk factor of kidney cancer., In a case-control study, Florence Guida and colleagues identify metabolites associated with risk of kidney cancer, and use Mendelian randomization techniques to study the role of body mass index in this relationship., Author summary Why was this study done? Several modifiable risk factors have been established for kidney cancer, among which elevated body mass index (BMI) and obesity are central. The biological mechanisms underlying these relationships are poorly understood, but obesity-related metabolic perturbations may be important. What did the researchers do and find? We looked at the association between kidney cancer and the levels of 1,416 metabolites measured in blood on average 8 years before the disease onset. The study included 1,305 kidney cancer cases and 1,305 healthy controls. We found 25 metabolites robustly associated with kidney cancer risk. Specifically, multiple glycerophospholipids (GPLs) were inversely associated with risk, while several amino acids were positively associated with risk. Accounting for BMI highlighted that some—but not all—metabolites associated with kidney cancer risk are influenced by BMI. What do these findings mean? These findings illustrate the potential utility of prospectively measured metabolites in helping us to understand the aetiology of kidney cancer. By examining overlap between the metabolomic profile of prospective risk of kidney cancer and that of modifiable risk factors for the disease—in this case BMI—we can begin to identify biological pathways relevant to disease onset.
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- 2021
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40. Targeted Metabolomics as a Tool in Discriminating Endocrine From Primary Hypertension
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Erlic, Z., Reel, P., Reel, S., Amar, L., Pecori, A., Larsen, C.K., Tetti, M., Pamporaki, C., Prehn, C., Adamski, J., Prejbisz, A., Ceccato, F., Scaroni, C., Kroiss, M., Dennedy, M.C., Deinum, J., Langton, K., Mulatero, P., Reincke, M., Lenzini, L., Gimenez-Roqueplo, A.P., Assié, G., Blanchard, A., Zennaro, M.C., Jefferson, E., Beuschlein, F., Erlic, Z., Reel, P., Reel, S., Amar, L., Pecori, A., Larsen, C.K., Tetti, M., Pamporaki, C., Prehn, C., Adamski, J., Prejbisz, A., Ceccato, F., Scaroni, C., Kroiss, M., Dennedy, M.C., Deinum, J., Langton, K., Mulatero, P., Reincke, M., Lenzini, L., Gimenez-Roqueplo, A.P., Assié, G., Blanchard, A., Zennaro, M.C., Jefferson, E., and Beuschlein, F.
- Abstract
Contains fulltext : 232525.pdf (Publisher’s version ) (Open Access), CONTEXT: Identification of patients with endocrine forms of hypertension (EHT) (primary hyperaldosteronism [PA], pheochromocytoma/paraganglioma [PPGL], and Cushing syndrome [CS]) provides the basis to implement individualized therapeutic strategies. Targeted metabolomics (TM) have revealed promising results in profiling cardiovascular diseases and endocrine conditions associated with hypertension. OBJECTIVE: Use TM to identify distinct metabolic patterns between primary hypertension (PHT) and EHT and test its discriminating ability. METHODS: Retrospective analyses of PHT and EHT patients from a European multicenter study (ENSAT-HT). TM was performed on stored blood samples using liquid chromatography mass spectrometry. To identify discriminating metabolites a "classical approach" (CA) (performing a series of univariate and multivariate analyses) and a "machine learning approach" (MLA) (using random forest) were used.The study included 282 adult patients (52% female; mean age 49 years) with proven PHT (n = 59) and EHT (n = 223 with 40 CS, 107 PA, and 76 PPGL), respectively. RESULTS: From 155 metabolites eligible for statistical analyses, 31 were identified discriminating between PHT and EHT using the CA and 27 using the MLA, of which 16 metabolites (C9, C16, C16:1, C18:1, C18:2, arginine, aspartate, glutamate, ornithine, spermidine, lysoPCaC16:0, lysoPCaC20:4, lysoPCaC24:0, PCaeC42:0, SM C18:1, SM C20:2) were found by both approaches. The receiver operating characteristic curve built on the top 15 metabolites from the CA provided an area under the curve (AUC) of 0.86, which was similar to the performance of the 15 metabolites from MLA (AUC 0.83). CONCLUSION: TM identifies distinct metabolic pattern between PHT and EHT providing promising discriminating performance.
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- 2021
41. The blood metabolome of incident kidney cancer: A case-control study nested within the MetKid consortium.
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Guida F., Tan V.Y., Corbin L.J., Smith-Byrne K., Alcala K., Langenberg C., Stewart I.D., Butterworth A.S., Surendran P., Achaintre D., Adamski J., Exezarreta P.A., Bergmann M.M., Bull C.J., Dahm C.C., Gicquiau A., Giles G.G., Gunter M.J., Haller T., Langhammer A., Larose T.L., Ljungberg B., Metspalu A., Milne R.L., Muller D.C., Nost T.H., Sorgjerd E.P., Prehn C., Riboli E., Rinaldi S., Rothwell J.A., Scalbert A., Schmidt J.A., Severi G., Sieri S., Vermeulen R., Vincent E.E., Waldenberger M., Timpson N.J., Johansson M., Guida F., Tan V.Y., Corbin L.J., Smith-Byrne K., Alcala K., Langenberg C., Stewart I.D., Butterworth A.S., Surendran P., Achaintre D., Adamski J., Exezarreta P.A., Bergmann M.M., Bull C.J., Dahm C.C., Gicquiau A., Giles G.G., Gunter M.J., Haller T., Langhammer A., Larose T.L., Ljungberg B., Metspalu A., Milne R.L., Muller D.C., Nost T.H., Sorgjerd E.P., Prehn C., Riboli E., Rinaldi S., Rothwell J.A., Scalbert A., Schmidt J.A., Severi G., Sieri S., Vermeulen R., Vincent E.E., Waldenberger M., Timpson N.J., and Johansson M.
- Abstract
Background Excess bodyweight and related metabolic perturbations have : been implicated in kidney cancer aetiology, but the specific molecular mechanisms underlying these relationships are poorly understood. In this study, we sought to identify circulating metabolites that predispose kidney cancer and to evaluate the extent to which they are influenced by body mass index (BMI). Methods and findings We assessed the association between circulating levels of 1,416 metabolites and incident kidney cancer using pre-diagnostic blood samples from up to 1,305 kidney cancer case-control pairs from 5 prospective cohort studies. Cases were diagnosed on average 8 years after blood collection. We found 25 metabolites robustly associated with kidney cancer risk. In particular, 14 glycerophospholipids (GPLs) were inversely associated with risk, including 8 phosphatidylcholines (PCs) and 2 plasmalogens. The PC with the strongest association was PC ae C34:3 with an odds ratio (OR) for 1 standard deviation (SD) increment of 0.75 (95% confidence interval [CI]: 0.68 to 0.83, p = 2.6 x 10-8). In contrast, 4 amino acids, including glutamate (OR for 1 SD = 1.39, 95% CI: 1.20 to 1.60, p = 1.6 x 10-5), were positively associated with risk. Adjusting for BMI partly attenuated the risk association for some -but not all-metabolites, whereas other known risk factors of kidney cancer, such as smoking and alcohol consumption, had minimal impact on the observed associations. A mendelian randomisation (MR) analysis of the influence of BMI on the blood metabolome highlighted that some metabolites associated with kidney cancer risk are influenced by BMI. Specifically, elevated BMI appeared to decrease levels of several GPLs that were also found inversely associated with kidney cancer risk (e.g., -0.17 SD change [sBMI] in 1-(1-enyl-palmitoyl)-2-linoleoyl-GPC (P-16:0/18:2) levels per SD change in BMI, p = 3.4 x 10-5). BMI was also associated with increased levels of glutamate (sBMI: 0.12, p = 1.5 x 10-3
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- 2021
42. The blood metabolome of incident kidney cancer: A case-control study nested within the MetKid consortium
- Author
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Afd. Theologie, Sub Inorganic Chemistry and Catalysis, IRAS OH Epidemiology Chemical Agents, dIRAS RA-2, Guida, F., Tan, V.Y., Corbin, L.J., Smith-Byrne, K., Alcala, K., Langenberg, C., Stewart, I.D., Butterworth, A.S., Surendran, P., Achaintre, D., Adamski, J., Exezarreta, P.A., Bergmann, M.M., Bull, C.J., Dahm, C.C., Gicquiau, A., Giles, G.G., Gunter, M.J., Haller, T., Langhammer, A., Larose, T.L., Ljungberg, B., Metspalu, A., Milne, R.L., Muller, D.C., Nøst, T.H., Sørgjerd, E.P., Prehn, C., Riboli, E., Rinaldi, S., Rothwell, J.A., Scalbert, A., Schmidt, J.A., Severi, G., Sieri, S., Vermeulen, R., Vincent, E.E., Waldenberger, M., Timpson, N.J., Johansson, M., Afd. Theologie, Sub Inorganic Chemistry and Catalysis, IRAS OH Epidemiology Chemical Agents, dIRAS RA-2, Guida, F., Tan, V.Y., Corbin, L.J., Smith-Byrne, K., Alcala, K., Langenberg, C., Stewart, I.D., Butterworth, A.S., Surendran, P., Achaintre, D., Adamski, J., Exezarreta, P.A., Bergmann, M.M., Bull, C.J., Dahm, C.C., Gicquiau, A., Giles, G.G., Gunter, M.J., Haller, T., Langhammer, A., Larose, T.L., Ljungberg, B., Metspalu, A., Milne, R.L., Muller, D.C., Nøst, T.H., Sørgjerd, E.P., Prehn, C., Riboli, E., Rinaldi, S., Rothwell, J.A., Scalbert, A., Schmidt, J.A., Severi, G., Sieri, S., Vermeulen, R., Vincent, E.E., Waldenberger, M., Timpson, N.J., and Johansson, M.
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- 2021
43. The blood metabolome of incident kidney cancer: A case-control study nested within the MetKid consortium
- Author
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Taal, MW, Guida, F, Tan, VY, Corbin, LJ, Smith-Byrne, K, Alcala, K, Langenberg, C, Stewart, ID, Butterworth, AS, Surendran, P, Achaintre, D, Adamski, J, Amiano Exezarreta, P, Bergmann, MM, Bull, CJ, Dahm, CC, Gicquiau, A, Giles, GG, Gunter, MJ, Haller, T, Langhammer, A, Larose, TL, Ljungberg, B, Metspalu, A, Milne, RL, Muller, DC, Nost, TH, Pettersen Sorgjerd, E, Prehn, C, Riboli, E, Rinaldi, S, Rothwell, JA, Scalbert, A, Schmidt, JA, Severi, G, Sieri, S, Vermeulen, R, Vincent, EE, Waldenberger, M, Timpson, NJ, Johansson, M, Taal, MW, Guida, F, Tan, VY, Corbin, LJ, Smith-Byrne, K, Alcala, K, Langenberg, C, Stewart, ID, Butterworth, AS, Surendran, P, Achaintre, D, Adamski, J, Amiano Exezarreta, P, Bergmann, MM, Bull, CJ, Dahm, CC, Gicquiau, A, Giles, GG, Gunter, MJ, Haller, T, Langhammer, A, Larose, TL, Ljungberg, B, Metspalu, A, Milne, RL, Muller, DC, Nost, TH, Pettersen Sorgjerd, E, Prehn, C, Riboli, E, Rinaldi, S, Rothwell, JA, Scalbert, A, Schmidt, JA, Severi, G, Sieri, S, Vermeulen, R, Vincent, EE, Waldenberger, M, Timpson, NJ, and Johansson, M
- Abstract
BACKGROUND: Excess bodyweight and related metabolic perturbations have been implicated in kidney cancer aetiology, but the specific molecular mechanisms underlying these relationships are poorly understood. In this study, we sought to identify circulating metabolites that predispose kidney cancer and to evaluate the extent to which they are influenced by body mass index (BMI). METHODS AND FINDINGS: We assessed the association between circulating levels of 1,416 metabolites and incident kidney cancer using pre-diagnostic blood samples from up to 1,305 kidney cancer case-control pairs from 5 prospective cohort studies. Cases were diagnosed on average 8 years after blood collection. We found 25 metabolites robustly associated with kidney cancer risk. In particular, 14 glycerophospholipids (GPLs) were inversely associated with risk, including 8 phosphatidylcholines (PCs) and 2 plasmalogens. The PC with the strongest association was PC ae C34:3 with an odds ratio (OR) for 1 standard deviation (SD) increment of 0.75 (95% confidence interval [CI]: 0.68 to 0.83, p = 2.6 × 10-8). In contrast, 4 amino acids, including glutamate (OR for 1 SD = 1.39, 95% CI: 1.20 to 1.60, p = 1.6 × 10-5), were positively associated with risk. Adjusting for BMI partly attenuated the risk association for some-but not all-metabolites, whereas other known risk factors of kidney cancer, such as smoking and alcohol consumption, had minimal impact on the observed associations. A mendelian randomisation (MR) analysis of the influence of BMI on the blood metabolome highlighted that some metabolites associated with kidney cancer risk are influenced by BMI. Specifically, elevated BMI appeared to decrease levels of several GPLs that were also found inversely associated with kidney cancer risk (e.g., -0.17 SD change [ßBMI] in 1-(1-enyl-palmitoyl)-2-linoleoyl-GPC (P-16:0/18:2) levels per SD change in BMI, p = 3.4 × 10-5). BMI was also associated with increased levels of glutamate (ßBMI: 0.12, p = 1.5 × 10-3)
- Published
- 2021
44. Linking diet, physical activity, cardiorespiratory fitness and obesity to serum metabolite networks: findings from a population-based study
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Floegel, A, Wientzek, A, Bachlechner, U, Jacobs, S, Drogan, D, Prehn, C, Adamski, J, Krumsiek, J, Schulze, M B, Pischon, T, and Boeing, H
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- 2014
- Full Text
- View/download PDF
45. Bacterial biofilms in patients with chronic rhinosinusitis
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Dworniczek, E., Frączek, M., Seniuk, A., Kassner, J., Sobieszczańska, B., Adamski, J., and Ciesielska, U.
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- 2009
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46. A common atopy-associated variant in the Th2 cytokine locus control region impacts transcriptional regulation and alters SMAD3 and SP1 binding
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Kretschmer, A., Möller, G., Lee, H., Laumen, H., von Toerne, C., Schramm, K., Prokisch, H., Eyerich, S., Wahl, S., Baurecht, H., Franke, A., Claussnitzer, M., Eyerich, K., Teumer, A., Milani, L., Klopp, N., Hauck, S. M., Illig, T., Peters, A., Waldenberger, M., Adamski, J., Reischl, E., and Weidinger, S.
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- 2014
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47. Increased efficacy of omalizumab in atopic dermatitis patients with wild-type filaggrin status and higher serum levels of phosphatidylcholines
- Author
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Hotze, M., Baurecht, H., Rodríguez, E., Chapman-Rothe, N., Ollert, M., Fölster-Holst, R., Adamski, J., Illig, T., Ring, J., and Weidinger, S.
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- 2014
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48. Titania sol–gel-derived tyrosinase-based amperometric biosensor for determination of phenolic compounds in water samples. Examination of interference effects
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Kochana, J., Gala, A., Parczewski, A., and Adamski, J.
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- 2008
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49. Predicting and elucidating the etiology of fatty liver disease: A machine learning modeling and validation study in the IMI DIRECT cohorts
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Atabaki-Pasdar, N, Ohlsson, M, Vinuela, A, Frau, F, Pomares-Millan, H, Haid, M, Jones, AG, Thomas, EL, Koivula, RW, Kurbasic, A, Mutie, PM, Fitipaldi, H, Fernandez, J, Dawed, AY, Giordano, GN, Forgie, IM, McDonald, TJ, Rutters, F, Cederberg, H, Chabanova, E, Dale, M, Masi, FD, Thomas, CE, Allin, KH, Hansen, TH, Heggie, A, Hong, M-G, Elders, PJM, Kennedy, G, Kokkola, T, Pedersen, HK, Mahajan, A, McEvoy, D, Pattou, F, Raverdy, V, Haussler, RS, Sharma, S, Thomsen, HS, Vangipurapu, J, Vestergaard, H, 't Hart, LM, Adamski, J, Musholt, PB, Brage, S, Brunak, S, Dermitzakis, E, Frost, G, Hansen, T, Laakso, M, Pedersen, O, Ridderstrale, M, Ruetten, H, Hattersley, AT, Walker, M, Beulens, JWJ, Mari, A, Schwenk, JM, Gupta, R, McCarthy, MI, Pearson, ER, Bell, JD, Pavo, I, Franks, PW, Epidemiology and Data Science, General practice, APH - Health Behaviors & Chronic Diseases, Amsterdam Reproduction & Development (AR&D), ACS - Diabetes & metabolism, ACS - Heart failure & arrhythmias, APH - Aging & Later Life, Atabaki-Pasdar, Naeimeh [0000-0001-7229-1888], Ohlsson, Mattias [0000-0003-1145-4297], Viñuela, Ana [0000-0003-3771-8537], Pomares-Millan, Hugo [0000-0001-9245-4576], Haid, Mark [0000-0001-6118-1333], Jones, Angus G. [0000-0002-0883-7599], Thomas, E. Louise [0000-0003-4235-4694], Koivula, Robert W. [0000-0002-1646-4163], Kurbasic, Azra [0000-0002-1910-2619], Fitipaldi, Hugo [0000-0001-5352-2134], Dawed, Adem Y. [0000-0003-0224-2428], Forgie, Ian M. [0000-0002-8800-6145], Cederberg, Henna [0000-0003-2901-9373], Dale, Matilda [0000-0002-5788-7744], Masi, Federico De [0000-0003-4859-4170], Thomas, Cecilia Engel [0000-0001-6201-6380], Allin, Kristine H. [0000-0002-6880-5759], Hansen, Tue H. [0000-0001-5948-8993], Elders, Petra J. M. [0000-0002-5907-7219], Kennedy, Gwen [0000-0002-9856-3236], Kokkola, Tarja [0000-0002-3303-3912], Pedersen, Helle Krogh [0000-0001-9609-7377], Mahajan, Anubha [0000-0001-5585-3420], McEvoy, Donna [0000-0003-1546-5567], Häussler, Ragna S. [0000-0003-1664-8875], Vangipurapu, Jagadish [0000-0001-6657-2659], Vestergaard, Henrik [0000-0003-3090-269X], ‘t Hart, Leen M. [0000-0003-4401-2938], Brage, Soren [0000-0002-1265-7355], Frost, Gary [0000-0003-0529-6325], Hansen, Torben [0000-0001-8748-3831], Hattersley, Andrew T. [0000-0001-5620-473X], Mari, Andrea [0000-0002-1436-5591], Schwenk, Jochen M. [0000-0001-8141-8449], Gupta, Ramneek [0000-0001-6841-6676], McCarthy, Mark I. [0000-0002-4393-0510], Pearson, Ewan R. [0000-0001-9237-8585], Bell, Jimmy D. [0000-0003-3804-1281], Franks, Paul W. [0000-0002-0520-7604], Apollo - University of Cambridge Repository, HUS Abdominal Center, Clinicum, Department of Medicine, Endokrinologian yksikkö, Jones, Angus G [0000-0002-0883-7599], Thomas, E Louise [0000-0003-4235-4694], Koivula, Robert W [0000-0002-1646-4163], Dawed, Adem Y [0000-0003-0224-2428], Forgie, Ian M [0000-0002-8800-6145], Allin, Kristine H [0000-0002-6880-5759], Hansen, Tue H [0000-0001-5948-8993], Elders, Petra JM [0000-0002-5907-7219], Häussler, Ragna S [0000-0003-1664-8875], 't Hart, Leen M [0000-0003-4401-2938], Hattersley, Andrew T [0000-0001-5620-473X], Schwenk, Jochen M [0000-0001-8141-8449], McCarthy, Mark I [0000-0002-4393-0510], Pearson, Ewan R [0000-0001-9237-8585], Bell, Jimmy D [0000-0003-3804-1281], Franks, Paul W [0000-0002-0520-7604], and IMI
- Subjects
Male ,Proteomics ,Oral Glucose Suppression Test ,Biochemistry ,Machine Learning ,Fats ,Database and Informatics Methods ,Endocrinology ,Medicine and Health Sciences ,Insulin ,Prospective Studies ,11 Medical and Health Sciences ,GLOBAL EPIDEMIOLOGY ,INSULIN SENSITIVITY ,Proteomic Databases ,Liver Diseases ,Middle Aged ,Lipids ,Medicine ,Female ,Life Sciences & Biomedicine ,Research Article ,Computer and Information Sciences ,Endocrine Disorders ,BIOMARKERS ,Gastroenterology and Hepatology ,Research and Analysis Methods ,Risk Assessment ,Diabetes Complications ,Medicine, General & Internal ,SDG 3 - Good Health and Well-being ,Artificial Intelligence ,General & Internal Medicine ,NAFLD ,Diabetes Mellitus ,Humans ,Metabolomics ,Diabetic Endocrinology ,Pharmacology ,Science & Technology ,Models, Statistical ,Reproducibility of Results ,Biology and Life Sciences ,ALCOHOLIC STEATOHEPATITIS ,Hormones ,Pharmacologic-Based Diagnostics ,Fatty Liver ,Metabolism ,Biological Databases ,3121 General medicine, internal medicine and other clinical medicine ,Metabolic Disorders - Abstract
Background Non-alcoholic fatty liver disease (NAFLD) is highly prevalent and causes serious health complications in individuals with and without type 2 diabetes (T2D). Early diagnosis of NAFLD is important, as this can help prevent irreversible damage to the liver and, ultimately, hepatocellular carcinomas. We sought to expand etiological understanding and develop a diagnostic tool for NAFLD using machine learning. Methods and findings We utilized the baseline data from IMI DIRECT, a multicenter prospective cohort study of 3,029 European-ancestry adults recently diagnosed with T2D (n = 795) or at high risk of developing the disease (n = 2,234). Multi-omics (genetic, transcriptomic, proteomic, and metabolomic) and clinical (liver enzymes and other serological biomarkers, anthropometry, measures of beta-cell function, insulin sensitivity, and lifestyle) data comprised the key input variables. The models were trained on MRI-image-derived liver fat content (, In a modelling study, Naeimeh Atabaki-Pasdar and colleagues apply machine learning techniques to develop models to predict non-alcoholic fatty liver disease diagnosis using multi-omic and clinical data from individuals with and without type 2 diabetes in the IMI DIRECT cohorts., Author summary Why was this study done? Globally, about 1 in 4 adults have non-alcoholic fatty liver disease (NAFLD), which adversely affects energy homeostasis (in particular blood glucose concentrations), blood detoxification, drug metabolism, and food digestion. Although numerous noninvasive tests to detect NAFLD exist, these typically include inaccurate blood-marker tests or expensive imaging methods. The purpose of this work was to develop accurate noninvasive methods to aid in the clinical prediction of NAFLD. What did the researchers do and find? The analyses applied machine learning methods to data from the deep-phenotyped IMI DIRECT cohorts (n = 1,514) to identify sets of highly informative variables for the prediction of NAFLD. The criterion measure was liver fat quantified from MRI. We developed a total of 18 prediction models that ranged from very inexpensive models of modest accuracy to more expensive biochemistry- and/or omics-based models with high accuracy. We found that models using measures commonly collected in either clinical settings or research studies proved adequate for the prediction of NAFLD. The addition of detailed omics data significantly improved the predictive utility of these models. We also found that of all omics markers, proteomic markers yielded the highest predictive accuracy when appropriately combined. What do these findings mean? We envisage that these new approaches to predicting fatty liver may be of clinical value when screening at-risk populations for NAFLD. The identification of specific molecular features that underlie the development of NAFLD provides novel insights into the disease’s etiology, which may lead to the development of new treatments.
- Published
- 2020
- Full Text
- View/download PDF
50. P211 The Mayo Clinic Arizona virtual crossmatch algorithm supporting the largest solid organ transplant program in the United States
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Hacke, K., Adamski, J., Kinard, T.N., and Jaramillo, A.
- Published
- 2023
- Full Text
- View/download PDF
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