A statistical framework for multi-trait rare variant analysis in large-scale whole-genome sequencing studies

  • NHLBI Trans-Omics for Precision Medicine (TOPMed) Consortium
  • , Xihao Li
  • , Han Chen
  • , Margaret Sunitha Selvaraj
  • , Eric Van Buren
  • , Hufeng Zhou
  • , Yuxuan Wang
  • , Ryan Sun
  • , Zachary R. McCaw
  • , Zhi Yu
  • , Min Zhi Jiang
  • , Daniel DiCorpo
  • , Sheila M. Gaynor
  • , Rounak Dey
  • , Donna K. Arnett
  • , Emelia J. Benjamin
  • , Joshua C. Bis
  • , John Blangero
  • , Eric Boerwinkle
  • , Donald W. Bowden
  • Jennifer A. Brody, Brian E. Cade, April P. Carson, Jenna C. Carlson, Nathalie Chami, Yii Der Ida Chen, Joanne E. Curran, Paul S. de Vries, Myriam Fornage, Nora Franceschini, Barry I. Freedman, Charles Gu, Nancy L. Heard-Costa, Jiang He, Lifang Hou, Yi Jen Hung, Marguerite R. Irvin, Robert C. Kaplan, Sharon L.R. Kardia, Tanika N. Kelly, Iain Konigsberg, Charles Kooperberg, Brian G. Kral, Changwei Li, Yun Li, Honghuang Lin, Ching Ti Liu, Ruth J.F. Loos, Michael C. Mahaney, Lisa W. Martin, Rasika A. Mathias, Braxton D. Mitchell, May E. Montasser, Alanna C. Morrison, Take Naseri, Kari E. North, Nicholette D. Palmer, Patricia A. Peyser, Bruce M. Psaty, Susan Redline, Alexander P. Reiner, Stephen S. Rich, Colleen M. Sitlani, Jennifer A. Smith, Kent D. Taylor, Hemant K. Tiwari, Ramachandran S. Vasan, Satupa’itea Viali, Zhe Wang, Jennifer Wessel, Lisa R. Yanek, Bing Yu, Lisa de las Fuentes, Mariza de Andrade, Sebastian Zoellner, Michael Zody, Elad Ziv, Xiaofeng Zhu, Wei Zhao, Snow Xueyan Zhao, Yingze Zhang, Seyedeh Maryam Zekavat, Ketian Yu, Ivana Yang, Huichun Xu, Joseph Wu, Baojun Wu, Quenna Wong, Lara Winterkorn, James Wilson, Carla Wilson, Scott Williams, L. Keoki Williams, Kayleen Williams, Cristen Willer, Lu Chen Weng, Scott T. Weiss, Bruce Weir, Joshua Weinstock, Daniel E. Weeks, Jennifer Watt, Karol Watson, Jiongming Wang, Heming Wang, Fei Fei Wang, Avram Walts, Robert Wallace, Tarik Walker, Scott Vrieze, Peter VandeHaar, David Van Den Berg, Dhananjay Vaidya, Michael Tsai, Russell Tracy, Catherine Tong, Sarah Tishkoff, David Tirschwell, Lesley Tinker, Machiko Threlkeld, Timothy A. Thornton, Marilyn Telen, Simeon Taylor, Matthew Taylor, Margaret Taub, Hua Tang, Daniel Taliun, Frédéric Sériès, Adam Szpiro, Jody Sylvia, Yun Ju Sung, Jessica Lasky Su, Elizabeth Streeten, Garrett Storm, Adrienne M. Stilp, Nona Sotoodehnia, Tamar Sofer, Michael Snyder, Beverly Snively, Sylvia Smoller, Tanja Smith, Nicholas Smith, Josh Smith, Albert Vernon Smith, Robert Skomro, Edwin Silverman, Brian Silver, M. Benjamin Shoemaker, Wayne Hui Heng Sheu, Aniket Shetty, Amol Shetty, Stephanie L. Sherman, Vivien Sheehan, Jonathan Seidman, Christine Seidman, Frank Sciurba, David Schwartz, Karen Schwander, Jireh Santibanez, Vijay G. Sankaran, Kevin Sandow, Steven Salzberg, Sejal Salvi, Shabnam Salimi, Danish Saleheen, Ester Cerdeira Sabino, Kathleen Ryan, Sarah Ruuska, Pamela Russell, Alexi Runnels, Ingo Ruczinski, Carolina Roselli, Roden Dan Roden, Nicolas Robine, Rebecca Robillard, Muagututi’a Sefuiva Reupena, Elizabeth Regan, Catherine Reeves, Robert Reed, Aakrosh Ratan, Laura Rasmussen-Torvik, D. C. Rao, Mahitha Rajendran, Nicholas Rafaels, Zhaohui Qin, Dandi Qiao, Pankaj Qasba, Michael Preuss, Meher Preethi Boorgula, Julia Powers Becker, Wendy Post, Toni Pollin, Jacob Pleiness, Lawrence S. Phillips, Ulrike Peters, James Perry, Marco Perez, Juan Manuel Peralta, Cora Parker, George Papanicolaou, Lucinda Fulton, Susan K. Dutcher

Research output: Contribution to journalArticlepeer-review

5 Scopus citations

Abstract

Large-scale whole-genome sequencing (WGS) studies have improved our understanding of the contributions of coding and noncoding rare variants to complex human traits. Leveraging association effect sizes across multiple traits in WGS rare variant association analysis can improve statistical power over single-trait analysis, and also detect pleiotropic genes and regions. Existing multi-trait methods have limited ability to perform rare variant analysis of large-scale WGS data. We propose MultiSTAAR, a statistical framework and computationally scalable analytical pipeline for functionally informed multi-trait rare variant analysis in large-scale WGS studies. MultiSTAAR accounts for relatedness, population structure and correlation among phenotypes by jointly analyzing multiple traits, and further empowers rare variant association analysis by incorporating multiple functional annotations. We applied MultiSTAAR to jointly analyze three lipid traits in 61,838 multi-ethnic samples from the Trans-Omics for Precision Medicine (TOPMed) Program. We discovered and replicated new associations with lipid traits missed by single-trait analysis.

Original languageEnglish
Pages (from-to)125-143
Number of pages19
JournalNature Computational Science
Volume5
Issue number2
DOIs
StatePublished - Feb 2025

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