BulkLMM: Real-time genome scans for multiple quantitative traits using linear mixed models

Gregory Farage Co-Author
 
Robert Williams Co-Author
 
Karl Broman Co-Author
University of Wisconsin-Madison
 
Saunak Sen Co-Author
University of Tennessee Health Science Center
 
Zifan Yu First Author
 
Saunak Sen Presenting Author
University of Tennessee Health Science Center
 
Sunday, Aug 4: 2:25 PM - 2:30 PM
3829 
Contributed Speed 
Oregon Convention Center 
Genetic studies often collect data using high-throughput phenotyping. That has led to the need for fast genomewide scans for large number of traits using linear mixed models (LMMs). Computing the scans one by one on each trait is time consuming. We have developed new algorithms for performing genome scans on a large number of quantitative traits using LMMs. Our method, BulkLMM, speeds up the computation by orders of magnitude compared to one trait at a time scans. On a mouse BXD Liver Proteome data with more than 35,000 traits and 7,000 markers, BulkLMM completed in a few seconds. We use vectorized, multi-threaded operations and regularization to improve optimization, and numerical approximations to speed up the computations. Our software implementation in the Julia programming language also provides permutation testing for LMMs and is available at
https://github.com/senresearch/BulkLMM.jl.

Keywords

GWAS

eQTL

LMM

Julia 

Main Sponsor

Section on Statistical Computing