Fast and flexible linear mixed models for genome-wide genetics.
Linear mixed effect models are powerful tools used to account for population structure in genome-wide association studies (GWASs) and estimate the genetic architecture of complex traits. However, fully-specified models are computationally demanding and common simplifications often lead to reduced po...
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2019-02-01
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doaj-04ad80ac2ada459d8876168ee1db880d2020-11-25T02:30:15ZengPublic Library of Science (PLoS)PLoS Genetics1553-73901553-74042019-02-01152e100797810.1371/journal.pgen.1007978Fast and flexible linear mixed models for genome-wide genetics.Daniel E RuncieLorin CrawfordLinear mixed effect models are powerful tools used to account for population structure in genome-wide association studies (GWASs) and estimate the genetic architecture of complex traits. However, fully-specified models are computationally demanding and common simplifications often lead to reduced power or biased inference. We describe Grid-LMM (https://github.com/deruncie/GridLMM), an extendable algorithm for repeatedly fitting complex linear models that account for multiple sources of heterogeneity, such as additive and non-additive genetic variance, spatial heterogeneity, and genotype-environment interactions. Grid-LMM can compute approximate (yet highly accurate) frequentist test statistics or Bayesian posterior summaries at a genome-wide scale in a fraction of the time compared to existing general-purpose methods. We apply Grid-LMM to two types of quantitative genetic analyses. The first is focused on accounting for spatial variability and non-additive genetic variance while scanning for QTL; and the second aims to identify gene expression traits affected by non-additive genetic variation. In both cases, modeling multiple sources of heterogeneity leads to new discoveries.http://europepmc.org/articles/PMC6383949?pdf=render |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Daniel E Runcie Lorin Crawford |
spellingShingle |
Daniel E Runcie Lorin Crawford Fast and flexible linear mixed models for genome-wide genetics. PLoS Genetics |
author_facet |
Daniel E Runcie Lorin Crawford |
author_sort |
Daniel E Runcie |
title |
Fast and flexible linear mixed models for genome-wide genetics. |
title_short |
Fast and flexible linear mixed models for genome-wide genetics. |
title_full |
Fast and flexible linear mixed models for genome-wide genetics. |
title_fullStr |
Fast and flexible linear mixed models for genome-wide genetics. |
title_full_unstemmed |
Fast and flexible linear mixed models for genome-wide genetics. |
title_sort |
fast and flexible linear mixed models for genome-wide genetics. |
publisher |
Public Library of Science (PLoS) |
series |
PLoS Genetics |
issn |
1553-7390 1553-7404 |
publishDate |
2019-02-01 |
description |
Linear mixed effect models are powerful tools used to account for population structure in genome-wide association studies (GWASs) and estimate the genetic architecture of complex traits. However, fully-specified models are computationally demanding and common simplifications often lead to reduced power or biased inference. We describe Grid-LMM (https://github.com/deruncie/GridLMM), an extendable algorithm for repeatedly fitting complex linear models that account for multiple sources of heterogeneity, such as additive and non-additive genetic variance, spatial heterogeneity, and genotype-environment interactions. Grid-LMM can compute approximate (yet highly accurate) frequentist test statistics or Bayesian posterior summaries at a genome-wide scale in a fraction of the time compared to existing general-purpose methods. We apply Grid-LMM to two types of quantitative genetic analyses. The first is focused on accounting for spatial variability and non-additive genetic variance while scanning for QTL; and the second aims to identify gene expression traits affected by non-additive genetic variation. In both cases, modeling multiple sources of heterogeneity leads to new discoveries. |
url |
http://europepmc.org/articles/PMC6383949?pdf=render |
work_keys_str_mv |
AT danieleruncie fastandflexiblelinearmixedmodelsforgenomewidegenetics AT lorincrawford fastandflexiblelinearmixedmodelsforgenomewidegenetics |
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1724829081775636480 |