Extend mixed models to multilayer neural networks for genomic prediction including intermediate omics data

Author:

Zhao Tianjing12ORCID,Zeng Jian3ORCID,Cheng Hao1ORCID

Affiliation:

1. Department of Animal Science, University of California Davis , Davis, CA 95616, USA

2. Integrative Genetics and Genomics Graduate Group, University of California Davis , Davis, CA 95616, USA

3. Institute for Molecular Bioscience, The University of Queensland , Brisbane, QLD 4072, Australia

Abstract

Abstract With the growing amount and diversity of intermediate omics data complementary to genomics (e.g. DNA methylation, gene expression, and protein abundance), there is a need to develop methods to incorporate intermediate omics data into conventional genomic evaluation. The omics data help decode the multiple layers of regulation from genotypes to phenotypes, thus forms a connected multilayer network naturally. We developed a new method named NN-MM to model the multiple layers of regulation from genotypes to intermediate omics features, then to phenotypes, by extending conventional linear mixed models (“MM”) to multilayer artificial neural networks (“NN”). NN-MM incorporates intermediate omics features by adding middle layers between genotypes and phenotypes. Linear mixed models (e.g. pedigree-based BLUP, GBLUP, Bayesian Alphabet, single-step GBLUP, or single-step Bayesian Alphabet) can be used to sample marker effects or genetic values on intermediate omics features, and activation functions in neural networks are used to capture the nonlinear relationships between intermediate omics features and phenotypes. NN-MM had significantly better prediction performance than the recently proposed single-step approach for genomic prediction with intermediate omics data. Compared to the single-step approach, NN-MM can handle various patterns of missing omics measures and allows nonlinear relationships between intermediate omics features and phenotypes. NN-MM has been implemented in an open-source package called “JWAS”.

Funder

United States Department of Agriculture

Food Research Initiative National Institute of Food and Agriculture Competitive

Publisher

Oxford University Press (OUP)

Subject

Genetics

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