4.6 Article

Genome-wide association study and genomic prediction for intramuscular fat content in Suhuai pigs using imputed whole-genome sequencing data

Journal

EVOLUTIONARY APPLICATIONS
Volume 15, Issue 12, Pages 2054-2066

Publisher

WILEY
DOI: 10.1111/eva.13496

Keywords

genomic prediction; GWAS; imputed WGS data; intramuscular fat content; pigs

Funding

  1. Cultivation Project of NSFC-Henan United Fund [U1904115]
  2. Fundamental Research Funds for the Central Universities [KJQN202129]
  3. Key Project of Jiangsu Agricultural New Variety Innovation [PZCZ201732]
  4. Ministry of Agriculture and Rural Affairs Joint Projects for the National High Quality and Lean Pig Breeding [19190540]
  5. National Natural Science Foundation of China [31601923, 31872318, 32002149]
  6. Project of Jiangsu Agricultural (pig) Industry Technology System [JATS[2020]179, JATS[2020]399]

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This study identified important genes affecting pork quality through genetic sequencing and association studies, and compared the accuracy of different genomic prediction models. The findings have significant implications for improving pork quality and breeding programs.
Integrating the single-nucleotide polymorphisms (SNPs) significantly affecting target traits from imputed whole-genome sequencing (iWGS) data into the genomic prediction (GP) model is an economic, efficient, and feasible strategy to improve prediction accuracy. The objective was to dissect the genetic architecture of intramuscular fat content (IFC) by genome wide association studies (GWAS) and to investigate the accuracy of GP based on pedigree-based BLUP (PBLUP) model, genomic best linear unbiased prediction (GBLUP) models and Bayesian mixture (BayesMix) models under different strategies. A total of 482 Suhuai pigs were genotyped using an 80 K SNP chip. Furthermore, 30 key samples were selected for resequencing and were used as a reference panel to impute the 80 K chip data to the WGS dataset. The 80 K data and iWGS data were used to perform GWAS and test GP accuracies under different scenarios. GWAS results revealed that there were four major regions affecting IFC. Two important functional candidate genes were found in the two most significant regions, including protein kinase C epsilon (PRKCE) and myosin light chain 2 (MYL2). The results of the predictions showed that the PBLUP model had the lowest reliability (0.096 +/- 0.032). The reliability (0.229 +/- 0.035) was improved by replacing pedigree information with 80 K chip data. Compared with using 80 K SNPs alone, pruning iWGS SNPs with the R-squared cutoff of linkage disequilibrium (0.55) led to a slight improvement (0.006), adding significant iWGS SNPs led to an improvement of reliability by 0.050 when using a one-component GBLUP, a further increase of 0.033 when using a two-component GBLUP model. For BayesMix models, compared with using 80 K SNPs alone, adding additional significant iWGS SNPs into one- or two-component BayesMix models led to improvements of reliabilities for IFC by 0.040 and 0.089, respectively. Our results may facilitate further identification of causal genes for IFC and may be beneficial for the improvement of IFC in pig breeding programs.

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