Comprehensive genetic analysis of the human lipidome identifies loci associated with lipid homeostasis with links to coronary artery disease
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N. Wray | C. Rowe | A. Saykin | J. Hui | J. Beilby | K. Nho | R. Martins | C. Masters | R. Kaddurah-Daouk | G. Watts | P. Meikle | D. Ames | J. Blangero | A. Bush | M. Dubé | M. Brozynska | Tingting Wang | E. Moses | S. Laws | K. Taddei | V. Villemagne | G. Kastenmüller | M. Arnold | T. Porter | W. Lim | I. Martins | Xianlin Han | M. Vacher | G. Cadby | T. Duong | N. Mellett | P. Melton | P. Chatterjee | N. McCarthy | A. Ariff | M. Cinel | K. Huynh | C. Giles | A. Nguyen | Alexander Smith | G. Olshansky | Joseph Hung | M. Inouye | Sonia H. Shah
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