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MTG2: An efficient algorithm for multivariate linear mixed model analysis based on genomic information

Sang Hong Lee, Julius van der Werf
doi: https://doi.org/10.1101/027201
Sang Hong Lee
University of New England
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  • For correspondence: hong.lee@une.edu.au
Julius van der Werf
University of New England
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Abstract

We have developed an algorithm for genetic analysis of complex traits using genome-wide SNPs in a linear mixed model framework. Compared to current standard REML software based on the mixed model equation, our method could be more than 1000 times faster. The advantage is largest when there is only a single genetic covariance structure. The method is particularly useful for multivariate analysis, including multi-trait models and random regression models for studying reaction norms. We applied our proposed method to publicly available mice and human data and discuss advantages and limitations.

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  • Posted December 2, 2015.

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MTG2: An efficient algorithm for multivariate linear mixed model analysis based on genomic information
Sang Hong Lee, Julius van der Werf
bioRxiv 027201; doi: https://doi.org/10.1101/027201
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MTG2: An efficient algorithm for multivariate linear mixed model analysis based on genomic information
Sang Hong Lee, Julius van der Werf
bioRxiv 027201; doi: https://doi.org/10.1101/027201

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