Multivariate genomic prediction for commercial traits of economic importance in Banana shrimp Fenneropenaeus merguiensis

Advantages of multi-trait machine and deep learning genomic prediction models for quantitative complex traits have not been documented or very limited in aquaculture species. Thus, the present study sought to understand effects of the multi-trait single-step genomic best linear unbiased prediction (...

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Bibliographic Details
Published inAquaculture Vol. 555; p. 738229
Main Authors Nguyen, Nguyen Hong, Vu, Nguyen Thanh, Patil, Shruti S., Sandhu, Karansher S.
Format Journal Article
LanguageEnglish
Published Elsevier B.V 30.06.2022
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Summary:Advantages of multi-trait machine and deep learning genomic prediction models for quantitative complex traits have not been documented or very limited in aquaculture species. Thus, the present study sought to understand effects of the multi-trait single-step genomic best linear unbiased prediction (ssGBLUP), Bayesian (BayesCpi), random forest (RF) and multilayer perceptron (MLP) models on genomic prediction accuracies for traits of commercial importance in banana white shrimp (Fenneropenaeus merguiensis). Our analyses were conducted in a breeding shrimp population comprising 562 individuals (offspring of 48 parental pairs) genotyped for 9472 single nucleotide polymorphisms (SNPs) and the animals had full phenotype records for five important traits (i.e., body weight, abdominal width, tail weight, raw colour of live shrimp and resistance to hepatopancreatic parvovirus). In both univariate and multi-trait analyses, machine (RF) and deep learning (MLP) models outperformed ssGBLUP for all traits studied. However, they had similar predictive performance to BayesCpi. The benefits of the multivariate relative to univariate models were trait- and method-specific. Multi-trait BayesCpi increased the prediction accuracies for growth (weight and width), carcass (tail weight) and HPV resistance by 9.3 to 17.8%. However, the multi-trait random forest models improved the predictive power for only abdominal width (14.3%) and disease resistance to hepatopancreatic parvovirus (10.0%). When the multi-trait MLP was used, the improvements in the prediction accuracies were observed for abdominal width and raw colour (4.9 and 6.0%, respectively). There were almost no differences in the predictive power between univariate and multi-trait ssGBLUP. Among the multi-trait models used, BayesCpi outperformed other methods (ssGBLUP, RF and MLP). It is concluded that either BayesCpi or machine and deep learning-based multi-trait genomic prediction models should be employed in large-scale genetic enhancement programs for banana shrimp. These approaches show enormous potential to enhance genetic progress made in this population of banana shrimp and potentially for other aquaculture species. •The accuracies of genomic prediction for commercial traits of banana shrimp were moderate to high.•Multi-trait model using machine and deep learning algorithms outperformed single-step Best Linear Unbiased Prediction (ss-GBLUP) method.•Benefits of the multi-trait models were trait- and method-specific.•The advantages of multi-trait models were observed for traits with low heritability and for traits that are strongly correlated.•The multi-trait genomic analyses show enormous potential to increase genetic progress in this banana shrimp population.
ISSN:0044-8486
1873-5622
DOI:10.1016/j.aquaculture.2022.738229