Ultra-Fast Implementation of Multivariate GWAS in Genomic SEM Using Flexible Analytic Estimation. Journal Article uri icon

Overview

abstract

  • Many medical, physiological, and psychiatric traits and disorders are highly polygenic and exhibit complex patterns of genetic sharing and differentiation. In 2018, we introduced Genomic Structural Equation Modelling (Genomic SEM) as a formal framework and free, open source, R-based software for modelling the multivariate genetic architecture of both continuous and binary Genome-Wide Association Study (GWAS) phenotypes, interrogating their joint and distinct functional genomic pathways, and leveraging empirical models of the genetic relations among phenotypes to guide multivariate GWAS discovery. Here we introduce a closed-form analytic solution for estimating SNP effects within multivariate GWAS in Genomic SEM. This estimator is over 800 times faster than the existing iterative estimator, drastically decreasing reliance on high performance computing (HPC). On a MacBook pro laptop with M4 Max chip, a multivariate GWAS (∼1M SNPs) of 5 common factors underlying 13 phenotypes takes approximately 2 minutes. Concurrent with the release of this preprint, we are adding an analytic estimation option to the userGWAS function in the GenomicSEM package for alpha testing along with a tutorial on our GitHub wiki.

publication date

  • June 4, 2026

Date in CU Experts

  • June 14, 2026 12:31 PM

Full Author List

  • de la Fuente J; Rhemtulla M; Mallard TT; Nivard M; Grotzinger AD; Tucker-Drob EM

author count

  • 6

Other Profiles

Electronic International Standard Serial Number (EISSN)

  • 2692-8205