4.3 Article

Cross-Validation Without Doing Cross-Validation in Genome-Enabled Prediction

期刊

G3-GENES GENOMES GENETICS
卷 6, 期 10, 页码 3107-3128

出版社

OXFORD UNIV PRESS INC
DOI: 10.1534/g3.116.033381

关键词

cross-validation; genomic selection; genomic prediction; genomic BLUP; reproducing kernels; GenPred; Shared Data Resources

资金

  1. Institute of Advanced Study, Technical University of Munich-Munchen, Germany
  2. United States Department of Agriculture (USDA) Hatch Grant [142-PRJ63CV]
  3. Wisconsin Agriculture Experiment Station

向作者/读者索取更多资源

Cross-validation of methods is an essential component of genome-enabled prediction of complex traits. We develop formulae for computing the predictions that would be obtained when one or several cases are removed in the training process, to become members of testing sets, but by running the model using all observations only once. Prediction methods to which the developments apply include least squares, best linear unbiased prediction (BLUP) of markers, or genomic BLUP, reproducing kernels Hilbert spaces regression with single or multiple kernel matrices, and any member of a suite of linear regression methods known as Bayesian alphabet. The approach used for Bayesian models is based on importance sampling of posterior draws. Proof of concept is provided by applying the formulae to a wheat data set representing 599 inbred lines genotyped for 1279 markers, and the target trait was grain yield. The data set was used to evaluate predictive mean-squared error, impact of alternative layouts on maximum likelihood estimates of regularization parameters, model complexity, and residual degrees of freedom stemming from various strengths of regularization, as well as two forms of importance sampling. Our results will facilitate carrying out extensive cross-validation without model retraining for most machines employed in genome-assisted prediction of quantitative traits.

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