Genomic selection study on resistance to Cryptocaryon irritans in turbot (Scophthalmus maximus)

生物 多宝鱼 菱鲆属 遗传力 遗传学 选择(遗传算法) SNP公司 人口 基因组选择 单核苷酸多态性 计算生物学 SNP阵列 选择性育种 基因组学 数量性状位点 群体基因组学 SNP基因分型 抗性(生态学) 基因 特质 进化生物学 贝叶斯定理 基因组 遗传力缺失问题 标记辅助选择 否定选择 基因组DNA 植物抗病性
作者
Ding Lyu,Yulong Hu,Guanzheng Lyu,Weiji Wang
出处
期刊:Aquaculture Reports [Elsevier BV]
卷期号:48: 103519-103519
标识
DOI:10.1016/j.aqrep.2026.103519
摘要

Cryptocaryon irritans , the causative agent of Cryptocaryoniasis disease, poses a major threat to turbot ( Scophthalmus maximus ) aquaculture. This study presents the first comprehensive genomic selection (GS) analysis for C. irritans resistance in turbot. A breeding population comprising 30 full-sib families was challenged with C. irritans via cohabitation, and survival time was recorded as the resistance phenotype. Whole-genome resequencing of 458 fish produced 3276,196 high-quality SNPs for analysis. Genomic heritability estimates ranged from 0.28 to 0.33, substantially higher than the pedigree-based estimate (0.25). All genomic prediction models (GBLUP, ssGBLUP, BayesA, BayesB, Bayes Lasso) significantly outperformed traditional pedigree-based BLUP in cross-validation. Although ssGBLUP achieved numerically higher accuracy, the performance differences among the GS models were marginal. Furthermore, prediction accuracy plateaued at approximately ∼10k SNPs, indicating that a low-density SNP panel is sufficient for accurate genomic prediction. Our findings demonstrate that C. irritans resistance is a heritable trait in turbot that can be effectively improved through GS, providing a foundation for implementing cost-effective breeding programs to enhance disease resistance in this high-value species. • All evaluated GS models significantly outperformed traditional pedigree-based methods in predicting resistance to Cryptocaryon irritans. • The ssBLUP method achieved only a slight advantage over other genomic prediction approaches. • Accurate genomic prediction can be achieved with a cost-effective low-density SNP panel (∼10k markers).
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