Detecting potential pleiotropy across cardiovascular and neurological diseases using univariate, bivariate, and multivariate methods on 43,870 individuals from the eMERGE network
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Xinyuan Zhang | Marylyn D. Ritchie | Chunhua Weng | Joshua C. Denny | Yogasudha Veturi | Anurag Verma | Wei-Qi Wei | Iftikhar J. Kullo | Sarah A. Pendergrass | David R. Crosslin | Gail P. Jarvik | Anastasia Lucas | Jordan W. Smoller | Hakon Hakonarson | Eric B. Larson | Daniel J. Schaid | Scott J. Hebbring | Laura Rasmussen-Torvik | Patrick Sleiman | Wendy K. Chung | Shefali Setia Verma | William Bone | Ian Stanaway | David Fasel | W. Chung | H. Hakonarson | D. Schaid | J. Smoller | J. Denny | M. Ritchie | S. Pendergrass | I. Kullo | C. Weng | Wei-Qi Wei | E. Larson | G. Jarvik | S. Hebbring | Y. Veturi | D. Fasel | W. Bone | S. Verma | L. Rasmussen-Torvik | D. Crosslin | A. Verma | I. Stanaway | A. Lucas | Xinyuan Zhang | P. Sleiman
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