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Incorporating Genome Annotation Into Genomic Prediction for Carcass Traits in Chinese Simmental Beef Cattle

Ling Xu, Ning Gao, Zezhao Wang, Lei Xu, Ying Liu, Yan Chen, Lingyang Xu, Xue Gao, Lupei Zhang, Huijiang Gao, Bo Zhu, Junya Li

2020Frontiers in Genetics40 citationsDOIOpen Access PDF

Abstract

Various methods have been proposed for genomic prediction (GP) in livestock. These methods have mainly focused on statistical considerations and did not include genome annotation information. In this study, to improve the predictive performance of carcass traits in Chinese Simmental beef cattle, we incorporated the genome annotation information into GP. Single nucleotide polymorphisms (SNPs) were annotated to five genomic classes: intergenic, gene, exon, protein coding sequences, and 3'/5' untranslated region. Haploblocks were constructed for all markers and these five genomic classes by defining a biologically functional unit, and haplotype effects were modeled in both numerical dosage and categorical coding strategies. The first-order epistatic effects among SNPs and haplotypes were modeled using a categorical epistasis model. For all makers, the extension from the SNP-based model to a haplotype-based model improved the accuracy by 5.4-9.8% for carcass weight (CW), live weight (LW), and striploin (SI). For the five genomic classes using the haplotype-based prediction model, the incorporation of gene class information into the model improved the accuracies by an average of 1.4, 2.1, and 1.3% for CW, LW, and SI, respectively, compared with their corresponding results for all markers. Including the first-order epistatic effects into the prediction models improved the accuracies in some traits and genomic classes. Therefore, for traits with moderate-to-high heritability, incorporating genome annotation information of gene class into haplotype-based prediction models could be considered as a promising tool for GP in Chinese Simmental beef cattle, and modeling epistasis in prediction can further increase the accuracy to some degree.

Topics & Concepts

EpistasisBiologyHaplotypeSingle-nucleotide polymorphismGeneticsGenomeBeef cattleIndelComputational biologyAnnotationSNPCategorical variableGeneComputer scienceGenotypeMachine learningGenetic and phenotypic traits in livestockGenetic Mapping and Diversity in Plants and AnimalsCancer-related molecular mechanisms research