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Noise-augmented directional clustering of genetic association data identifies distinct mechanisms underlying obesity.

Published version
Peer-reviewed

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Authors

Kirk, Paul DW 

Abstract

Clustering genetic variants based on their associations with different traits can provide insight into their underlying biological mechanisms. Existing clustering approaches typically group variants based on the similarity of their association estimates for various traits. We present a new procedure for clustering variants based on their proportional associations with different traits, which is more reflective of the underlying mechanisms to which they relate. The method is based on a mixture model approach for directional clustering and includes a noise cluster that provides robustness to outliers. The procedure performs well across a range of simulation scenarios. In an applied setting, clustering genetic variants associated with body mass index generates groups reflective of distinct biological pathways. Mendelian randomization analyses support that the clusters vary in their effect on coronary heart disease, including one cluster that represents elevated body mass index with a favourable metabolic profile and reduced coronary heart disease risk. Analysis of the biological pathways underlying this cluster identifies inflammation as potentially explaining differences in the effects of increased body mass index on coronary heart disease.

Description

Funder: NIHR Cambridge Biomedical Research Centre

Keywords

Research Article, Biology and life sciences, Medicine and health sciences, Research and analysis methods, Physical sciences

Journal Title

PLoS Genet

Conference Name

Journal ISSN

1553-7390
1553-7404

Volume Title

18

Publisher

Public Library of Science (PLoS)
Sponsorship
Wellcome Trust (204623/Z/16/Z)