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Improving Phenotypic Prediction by Combining Genetic and Epigenetic Associations

We tested whether DNA-methylation profiles account for inter-individual variation in body mass index (BMI) and height and whether they predict these phenotypes over and above genetic factors. Genetic predictors were derived from published summary results from the largest genome-wide association stud...

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Autores principales: Shah, Sonia, Bonder, Marc J., Marioni, Riccardo E., Zhu, Zhihong, McRae, Allan F., Zhernakova, Alexandra, Harris, Sarah E., Liewald, Dave, Henders, Anjali K., Mendelson, Michael M., Liu, Chunyu, Joehanes, Roby, Liang, Liming, Levy, Daniel, Martin, Nicholas G., Starr, John M., Wijmenga, Cisca, Wray, Naomi R., Yang, Jian, Montgomery, Grant W., Franke, Lude, Deary, Ian J., Visscher, Peter M.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4572498/
https://www.ncbi.nlm.nih.gov/pubmed/26119815
http://dx.doi.org/10.1016/j.ajhg.2015.05.014
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author Shah, Sonia
Bonder, Marc J.
Marioni, Riccardo E.
Zhu, Zhihong
McRae, Allan F.
Zhernakova, Alexandra
Harris, Sarah E.
Liewald, Dave
Henders, Anjali K.
Mendelson, Michael M.
Liu, Chunyu
Joehanes, Roby
Liang, Liming
Levy, Daniel
Martin, Nicholas G.
Starr, John M.
Wijmenga, Cisca
Wray, Naomi R.
Yang, Jian
Montgomery, Grant W.
Franke, Lude
Deary, Ian J.
Visscher, Peter M.
author_facet Shah, Sonia
Bonder, Marc J.
Marioni, Riccardo E.
Zhu, Zhihong
McRae, Allan F.
Zhernakova, Alexandra
Harris, Sarah E.
Liewald, Dave
Henders, Anjali K.
Mendelson, Michael M.
Liu, Chunyu
Joehanes, Roby
Liang, Liming
Levy, Daniel
Martin, Nicholas G.
Starr, John M.
Wijmenga, Cisca
Wray, Naomi R.
Yang, Jian
Montgomery, Grant W.
Franke, Lude
Deary, Ian J.
Visscher, Peter M.
author_sort Shah, Sonia
collection PubMed
description We tested whether DNA-methylation profiles account for inter-individual variation in body mass index (BMI) and height and whether they predict these phenotypes over and above genetic factors. Genetic predictors were derived from published summary results from the largest genome-wide association studies on BMI (n ∼ 350,000) and height (n ∼ 250,000) to date. We derived methylation predictors by estimating probe-trait effects in discovery samples and tested them in external samples. Methylation profiles associated with BMI in older individuals from the Lothian Birth Cohorts (LBCs, n = 1,366) explained 4.9% of the variation in BMI in Dutch adults from the LifeLines DEEP study (n = 750) but did not account for any BMI variation in adolescents from the Brisbane Systems Genetic Study (BSGS, n = 403). Methylation profiles based on the Dutch sample explained 4.9% and 3.6% of the variation in BMI in the LBCs and BSGS, respectively. Methylation profiles predicted BMI independently of genetic profiles in an additive manner: 7%, 8%, and 14% of variance of BMI in the LBCs were explained by the methylation predictor, the genetic predictor, and a model containing both, respectively. The corresponding percentages for LifeLines DEEP were 5%, 9%, and 13%, respectively, suggesting that the methylation profiles represent environmental effects. The differential effects of the BMI methylation profiles by age support previous observations of age modulation of genetic contributions. In contrast, methylation profiles accounted for almost no variation in height, consistent with a mainly genetic contribution to inter-individual variation. The BMI results suggest that combining genetic and epigenetic information might have greater utility for complex-trait prediction.
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spelling pubmed-45724982016-01-02 Improving Phenotypic Prediction by Combining Genetic and Epigenetic Associations Shah, Sonia Bonder, Marc J. Marioni, Riccardo E. Zhu, Zhihong McRae, Allan F. Zhernakova, Alexandra Harris, Sarah E. Liewald, Dave Henders, Anjali K. Mendelson, Michael M. Liu, Chunyu Joehanes, Roby Liang, Liming Levy, Daniel Martin, Nicholas G. Starr, John M. Wijmenga, Cisca Wray, Naomi R. Yang, Jian Montgomery, Grant W. Franke, Lude Deary, Ian J. Visscher, Peter M. Am J Hum Genet Article We tested whether DNA-methylation profiles account for inter-individual variation in body mass index (BMI) and height and whether they predict these phenotypes over and above genetic factors. Genetic predictors were derived from published summary results from the largest genome-wide association studies on BMI (n ∼ 350,000) and height (n ∼ 250,000) to date. We derived methylation predictors by estimating probe-trait effects in discovery samples and tested them in external samples. Methylation profiles associated with BMI in older individuals from the Lothian Birth Cohorts (LBCs, n = 1,366) explained 4.9% of the variation in BMI in Dutch adults from the LifeLines DEEP study (n = 750) but did not account for any BMI variation in adolescents from the Brisbane Systems Genetic Study (BSGS, n = 403). Methylation profiles based on the Dutch sample explained 4.9% and 3.6% of the variation in BMI in the LBCs and BSGS, respectively. Methylation profiles predicted BMI independently of genetic profiles in an additive manner: 7%, 8%, and 14% of variance of BMI in the LBCs were explained by the methylation predictor, the genetic predictor, and a model containing both, respectively. The corresponding percentages for LifeLines DEEP were 5%, 9%, and 13%, respectively, suggesting that the methylation profiles represent environmental effects. The differential effects of the BMI methylation profiles by age support previous observations of age modulation of genetic contributions. In contrast, methylation profiles accounted for almost no variation in height, consistent with a mainly genetic contribution to inter-individual variation. The BMI results suggest that combining genetic and epigenetic information might have greater utility for complex-trait prediction. Elsevier 2015-07-02 /pmc/articles/PMC4572498/ /pubmed/26119815 http://dx.doi.org/10.1016/j.ajhg.2015.05.014 Text en © 2015 The Authors http://creativecommons.org/licenses/by/3.0/ This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/3.0/).
spellingShingle Article
Shah, Sonia
Bonder, Marc J.
Marioni, Riccardo E.
Zhu, Zhihong
McRae, Allan F.
Zhernakova, Alexandra
Harris, Sarah E.
Liewald, Dave
Henders, Anjali K.
Mendelson, Michael M.
Liu, Chunyu
Joehanes, Roby
Liang, Liming
Levy, Daniel
Martin, Nicholas G.
Starr, John M.
Wijmenga, Cisca
Wray, Naomi R.
Yang, Jian
Montgomery, Grant W.
Franke, Lude
Deary, Ian J.
Visscher, Peter M.
Improving Phenotypic Prediction by Combining Genetic and Epigenetic Associations
title Improving Phenotypic Prediction by Combining Genetic and Epigenetic Associations
title_full Improving Phenotypic Prediction by Combining Genetic and Epigenetic Associations
title_fullStr Improving Phenotypic Prediction by Combining Genetic and Epigenetic Associations
title_full_unstemmed Improving Phenotypic Prediction by Combining Genetic and Epigenetic Associations
title_short Improving Phenotypic Prediction by Combining Genetic and Epigenetic Associations
title_sort improving phenotypic prediction by combining genetic and epigenetic associations
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4572498/
https://www.ncbi.nlm.nih.gov/pubmed/26119815
http://dx.doi.org/10.1016/j.ajhg.2015.05.014
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