Literature DB >> 17897592

Factor analysis models for structuring covariance matrices of additive genetic effects: a Bayesian implementation.

Gustavo de Los Campos1, Daniel Gianola.   

Abstract

Multivariate linear models are increasingly important in quantitative genetics. In high dimensional specifications, factor analysis (FA) may provide an avenue for structuring (co)variance matrices, thus reducing the number of parameters needed for describing (co)dispersion. We describe how FA can be used to model genetic effects in the context of a multivariate linear mixed model. An orthogonal common factor structure is used to model genetic effects under Gaussian assumption, so that the marginal likelihood is multivariate normal with a structured genetic (co)variance matrix. Under standard prior assumptions, all fully conditional distributions have closed form, and samples from the joint posterior distribution can be obtained via Gibbs sampling. The model and the algorithm developed for its Bayesian implementation were used to describe five repeated records of milk yield in dairy cattle, and a one common FA model was compared with a standard multiple trait model. The Bayesian Information Criterion favored the FA model.

Entities:  

Mesh:

Year:  2007        PMID: 17897592      PMCID: PMC2682801          DOI: 10.1186/1297-9686-39-5-481

Source DB:  PubMed          Journal:  Genet Sel Evol        ISSN: 0999-193X            Impact factor:   4.297


  12 in total

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8.  Dissecting high-dimensional phenotypes with bayesian sparse factor analysis of genetic covariance matrices.

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9.  A Genomic Bayesian Multi-trait and Multi-environment Model.

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10.  MegaLMM: Mega-scale linear mixed models for genomic predictions with thousands of traits.

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