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An imputed whole-genome sequence-based GWAS approach pinpoints causal mutations for complex traits in a specific swine population

Science China Life Sciences, ISSN: 1869-1889, Vol: 65, Issue: 4, Page: 781-794
2022
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Reports Outline Engineering Study Findings from Jiangxi Agricultural University (An Imputed Whole-genome Sequence-based Gwas Approach Pinpoints Causal Mutations for Complex Traits In a Specific Swine Population)

2023 APR 25 (NewsRx) -- By a News Reporter-Staff News Editor at Tech Daily News -- Investigators publish new report on Engineering. According to news

Article Description

Sequencing-based genome-wide association studies (GWAS) have facilitated the identification of causal associations between genetic variants and traits in diverse species. However, it is cost-prohibitive for the majority of research groups to sequence a large number of samples. Here, we carried out genotype imputation to increase the density of single nucleotide polymorphisms in a large-scale Swine F population using a reference panel including 117 individuals, followed by a series of GWAS analyses. The imputation accuracies reached 0.89 and 0.86 for allelic concordance and correlation, respectively. A quantitative trait nucleotide (QTN) affecting the chest vertebrate was detected directly, while the investigation of another QTN affecting the residual glucose failed due to the presence of similar haplotypes carrying wild-type and mutant allelesin the reference panel used in this study. A high imputation accuracy was confirmed by Sanger sequencing technology for the most significant loci. Two candidate genes, CPNE5 and MYH3, affecting meat-related traits were proposed. Collectively, we illustrated four scenarios in imputation-based GWAS that may be encountered by researchers, and our results will provide an extensive reference for future genotype imputation-based GWAS analyses in the future.

Bibliographic Details

Yan, Guorong; Liu, Xianxian; Xiao, Shijun; Xin, Wenshui; Xu, Wenwu; Li, Yiping; Huang, Tao; Qin, Jiangtao; Xie, Lei; Ma, Junwu; Zhang, Zhiyan; Huang, Lusheng

Springer Science and Business Media LLC

Biochemistry, Genetics and Molecular Biology; Environmental Science; Agricultural and Biological Sciences

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