Cost-effective genomic prediction of critical economic traits in sturgeons through low-coverage sequencing

Hailiang Song,Tian Dong,Wei Wang, Boyun Jiang,Xiaoyu Yan, Chenfan Geng, Song Bai,Shijian Xu,Hongxia Hu

Genomics(2024)

Cited 0|Views8
No score
Abstract
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.
More
Translated text
Key words
Sturgeon,Low-coverage whole-genome sequencing,Imputation,Genomic prediction,Linkage disequilibrium pruning,Incremental feature selection
AI Read Science
Must-Reading Tree
Example
Generate MRT to find the research sequence of this paper
Chat Paper
Summary is being generated by the instructions you defined