Hailiang Song , Tian Dong , Wei Wang , Boyun Jiang , Xiaoyu Yan , Chenfan Geng , Song Bai , Shijian Xu , Hongxia Hu
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引用次数: 0
摘要
低覆盖率全基因组测序(LCS)为鲟鱼育种提供了一种具有成本效益的替代方法,特别是考虑到SNP芯片的缺乏和全基因组测序的高成本。本研究评估了 LCS 在 643 条测序后的俄罗斯鲟鱼(∼13.68×)中用于基因型归因和基因组预测的效率。结果表明,在测序深度为 2× 且样本量大于 300 的情况下,使用 BaseVar+STITCH 的基因分型准确率最高。此外,当测序深度达到 0.5× 且通过连接不平衡剪枝将 SNP 密度降低到 50 K 时,预测准确率与全测序深度的预测准确率相当。此外,增量特征选择方法也有可能提高预测准确率。这项研究表明,LCS 与估算相结合是一种经济有效的策略,有助于经济性状的遗传改良,促进水产养殖物种的遗传增殖。
Cost-effective genomic prediction of critical economic traits in sturgeons through low-coverage sequencing
Low-coverage whole-genome sequencing (LCS) offers a cost-effective alternative for sturgeon breeding, especially given the lack of SNP chips and the high costs associated with whole-genome sequencing. In this study, the efficiency of LCS for genotype imputation and genomic prediction was assessed in 643 sequenced Russian sturgeons (∼13.68×). The results showed that using BaseVar+STITCH at a sequencing depth of 2× with a sample size larger than 300 resulted in the highest genotyping accuracy. In addition, when the sequencing depth reached 0.5× and SNP density was reduced to 50 K through linkage disequilibrium pruning, the prediction accuracy was comparable to that of whole sequencing depth. Furthermore, an incremental feature selection method has the potential to improve prediction accuracy. This study suggests that the combination of LCS and imputation can be a cost-effective strategy, contributing to the genetic improvement of economic traits and promoting genetic gains in aquaculture species.
期刊介绍:
Genomics is a forum for describing the development of genome-scale technologies and their application to all areas of biological investigation.
As a journal that has evolved with the field that carries its name, Genomics focuses on the development and application of cutting-edge methods, addressing fundamental questions with potential interest to a wide audience. Our aim is to publish the highest quality research and to provide authors with rapid, fair and accurate review and publication of manuscripts falling within our scope.