Division of Animal and Dairy Science, Chungnam National University, Daejeon, Korea.
Department of Animal and Dairy Science, University of Georgia, Athens, GA, United States of America.
PLoS One. 2020 Dec 2;15(12):e0241848. doi: 10.1371/journal.pone.0241848. eCollection 2020.
It was hypothesized that single-nucleotide polymorphisms (SNPs) extracted from text-mined genes could be more tightly related to causal variant for each trait and that differentially weighting of this SNP panel in the GBLUP model could improve the performance of genomic prediction in cattle. Fitting two GRMs constructed by text-mined SNPs and SNPs except text-mined SNPs from 777k SNPs set (exp_777K) as different random effects showed better accuracy than fitting one GRM (Im_777K) for six traits (e.g. backfat thickness: + 0.002, eye muscle area: + 0.014, Warner-Bratzler Shear Force of semimembranosus and longissimus dorsi: + 0.024 and + 0.068, intramuscular fat content of semimembranosus and longissimus dorsi: + 0.008 and + 0.018). These results can suggest that attempts to incorporate text mining into genomic predictions seem valuable, and further study using text mining can be expected to present the significant results.
研究假设从文本挖掘的基因中提取的单核苷酸多态性(SNP)可能与每个性状的因果变异更为密切相关,并且在 GBLUP 模型中对该 SNP 面板进行差异化加权可以提高牛的基因组预测性能。通过对 777k SNP 集(exp_777K)中的文本挖掘 SNP 和除文本挖掘 SNP 之外的两个 GRM 进行拟合,结果显示,与拟合一个 GRM(Im_777K)相比,这六个性状(如背膘厚:+0.002、眼肌面积:+0.014、半膜肌和背最长肌的 Warner-Bratzler 剪切力:+0.024 和+0.068、半膜肌和背最长肌的肌内脂肪含量:+0.008 和+0.018)的准确性更高。这些结果表明,将文本挖掘纳入基因组预测的尝试似乎具有价值,并且可以预期进一步的研究使用文本挖掘可以呈现出重要的结果。