Yoshida Grazyella M, Yáñez José M
Facultad de Ciencias Veterinarias y Pecuarias Universidad de Chile Santiago Chile.
Núcleo Milenio INVASAL Concepción Chile.
Evol Appl. 2021 May 18;15(4):537-552. doi: 10.1111/eva.13240. eCollection 2022 Apr.
Through imputation of genotypes, genome-wide association study (GWAS) and genomic prediction (GP) using whole-genome sequencing (WGS) data are cost-efficient and feasible in aquaculture breeding schemes. The objective was to dissect the genetic architecture of growth traits under chronic heat stress in rainbow trout () and to assess the accuracy of GP based on imputed WGS and different preselected single nucleotide polymorphism (SNP) arrays. A total of 192 and 764 fish challenged to a heat stress experiment for 62 days were genotyped using a customized 1 K and 26 K SNP panels, respectively, and then, genotype imputation was performed from a low-density chip to WGS using 102 parents (36 males and 66 females) as the reference population. Imputed WGS data were used to perform GWAS and test GP accuracy under different preselected SNP scenarios. Heritability was estimated for body weight (BW), body length (BL) and average daily gain (ADG). Estimates using imputed WGS data ranged from 0.33 ± 0.05 to 0.55 ± 0.05 for growth traits under chronic heat stress. GWAS revealed that the top five cumulatively SNPs explained a maximum of 0.94%, 0.86% and 0.51% of genetic variance for BW, BL and ADG, respectively. Some important functional candidate genes associated with growth-related traits were found among the most important SNPs, including signal transducer and activator of transcription 5B and 3 ( and , respectively) and cytokine-inducible SH2-containing protein (). WGS data resulted in a slight increase in prediction accuracy compared with pedigree-based method, whereas preselected SNPs based on the top GWAS hits improved prediction accuracies, with values ranging from 1.2 to 13.3%. Our results support the evidence of the polygenic nature of growth traits when measured under heat stress. The accuracies of GP can be improved using preselected variants from GWAS, and the use of WGS marginally increases prediction accuracy.
通过基因型填充,利用全基因组测序(WGS)数据进行全基因组关联研究(GWAS)和基因组预测(GP)在水产养殖育种方案中具有成本效益且可行。目的是剖析虹鳟在慢性热应激下生长性状的遗传结构,并评估基于填充WGS和不同预选单核苷酸多态性(SNP)阵列的GP准确性。分别使用定制的1K和26K SNP面板对192条和764条接受62天热应激实验的鱼进行基因分型,然后以102个亲本(36雄66雌)作为参考群体,从低密度芯片到WGS进行基因型填充。填充的WGS数据用于进行GWAS并在不同预选SNP情况下测试GP准确性。对体重(BW)、体长(BL)和平均日增重(ADG)估计遗传力。在慢性热应激下,利用填充WGS数据对生长性状的估计范围为0.33±0.05至0.55±0.05。GWAS显示,前五个累积SNP分别解释了BW、BL和ADG遗传变异的最大值0.94%、0.86%和0.51%。在最重要的SNP中发现了一些与生长相关性状相关的重要功能候选基因,包括信号转导和转录激活因子5B和3(分别为 和 )以及细胞因子诱导含SH2蛋白( )。与基于系谱的方法相比,WGS数据使预测准确性略有提高,而基于GWAS顶级命中的预选SNP提高了预测准确性,值范围为1.2%至13.3%。我们的结果支持了热应激下生长性状多基因性质的证据。使用来自GWAS的预选变异可以提高GP的准确性,使用WGS略微提高了预测准确性。