Multivariate genomic analysis of 5 million people elucidates the genetic architecture of shared components of the metabolic syndrome

  • Sanghyeon Park
  • , Soyeon Kim
  • , Beomsu Kim
  • , Dan Say Kim
  • , Jaeyoung Kim
  • , Yeeun Ahn
  • , Hyejin Kim
  • , Minku Song
  • , Injeong Shim
  • , Sang Hyuk Jung
  • , Chamlee Cho
  • , Soohyun Lim
  • , Sanghoon Hong
  • , Hyeonbin Jo
  • , Akl C. Fahed
  • , Pradeep Natarajan
  • , Patrick T. Ellinor
  • , Ali Torkamani
  • , Woong Yang Park
  • , Tae Yang Yu
  • Woojae Myung, Hong Hee Won

Research output: Contribution to journalArticlepeer-review

29 Scopus citations

Abstract

Metabolic syndrome (MetS) is a complex hereditary condition comprising various metabolic traits as risk factors. Although the genetics of individual MetS components have been investigated actively through large-scale genome-wide association studies, the conjoint genetic architecture has not been fully elucidated. Here, we performed the largest multivariate genome-wide association study of MetS in Europe (nobserved = 4,947,860) by leveraging genetic correlation between MetS components. We identified 1,307 genetic loci associated with MetS that were enriched primarily in brain tissues. Using transcriptomic data, we identified 11 genes associated strongly with MetS. Our phenome-wide association and Mendelian randomization analyses highlighted associations of MetS with diverse diseases beyond cardiometabolic diseases. Polygenic risk score analysis demonstrated better discrimination of MetS and predictive power in European and East Asian populations. Altogether, our findings will guide future studies aimed at elucidating the genetic architecture of MetS.

Original languageEnglish
Pages (from-to)2380-2391
Number of pages12
JournalNature Genetics
Volume56
Issue number11
DOIs
StatePublished - Nov 2024

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