4.6 Article

An Integrative Genomic Prediction Approach for Predicting Buffalo Milk Traits by Incorporating Related Cattle QTLs

期刊

GENES
卷 13, 期 8, 页码 -

出版社

MDPI
DOI: 10.3390/genes13081430

关键词

buffalo; pGBLUP; genomic prediction; linear mixed model; enrichment; prior biological information

资金

  1. International Cooperation Key Project of China [2011 DFA32250]
  2. earmarked fund for CARS 36

向作者/读者索取更多资源

In this study, a new approach (pGBLUP) was introduced to improve genomic prediction in buffalo by incorporating QTL information from cattle milk traits. The results showed that the pGBLUP performed slightly better or equal to other approaches. The heritability of the buffalo genomic region corresponding to cattle milk trait QTLs was enriched in four buffalo milk traits when using DEBV as the response variable. The study suggests that a larger sample size, higher-density SNP chips, and more precise prior biological information can further improve genomic prediction in buffalo.
Background: The 90K Axiom Buffalo SNP Array is expected to improve and speed up various genomic analyses for the buffalo (Bubalus bubalis). Genomic prediction is an effective approach in animal breeding to improve selection and reduce costs. As buffalo genome research is lagging behind that of the cow and production records are also limited, genomic prediction performance will be relatively poor. To improve the genomic prediction in buffalo, we introduced a new approach (pGBLUP) for genomic prediction of six buffalo milk traits by incorporating QTL information from the cattle milk traits in order to help improve the prediction performance for buffalo. Results: In simulations, the pGBLUP could outperform BayesR and the GBLUP if the prior biological information (i.e., the known causal loci) was appropriate; otherwise, it performed slightly worse than BayesR and equal to or better than the GBLUP. In real data, the heritability of the buffalo genomic region corresponding to the cattle milk trait QTLs was enriched (fold of enrichment > 1) in four buffalo milk traits (FY270, MY270, PY270, and PM) when the EBV was used as the response variable. The DEBV as the response variable yielded more reliable genomic predictions than the traditional EBV, as has been shown by previous research. The performance of the three approaches (GBLUP, BayesR, and pGBLUP) did not vary greatly in this study, probably due to the limited sample size, incomplete prior biological information, and less artificial selection in buffalo. Conclusions: To our knowledge, this study is the first to apply genomic prediction to buffalo by incorporating prior biological information. The genomic prediction of buffalo traits can be further improved with a larger sample size, higher-density SNP chips, and more precise prior biological information.

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