Improving Genomic Prediction Accuracy in the Chinese Holstein Population by Combining with the Nordic Holstein Reference Population.

Animals (Basel)

National Engineering Laboratory for Animal Breeding, College of Animal Science and Technology, China Agricultural University, Beijing 100193, China.

Published: February 2023

AI Article Synopsis

  • - Combining multinational reference populations, like the Chinese and Nordic Holstein, significantly improves the accuracy of genomic prediction for complex traits such as milk and fat yield, yielding genetic correlation estimates ranging from 0.621 to 0.720.
  • - The study found a notable improvement (2.3 to 8.1 percent) in prediction accuracy for young Chinese Holsteins when utilizing joint reference data compared to single population analysis, while the improvement for Nordic Holsteins was minimal.
  • - Traits with low genetic correlations showed little to no improvement in prediction accuracy with the joint reference populations, indicating that the effectiveness of joint genomic prediction is dependent on the genetic similarity of the traits involved.

Article Abstract

The size of the reference population is critical in order to improve the accuracy of genomic prediction. Indeed, improving genomic prediction accuracy by combining multinational reference populations has proven to be effective. In this study, we investigated the improvement of genomic prediction accuracy in seven complex traits (i.e., milk yield; fat yield; protein yield; somatic cell count; body conformation; feet and legs; and mammary system conformation) by combining the Chinese and Nordic Holstein reference populations. The estimated genetic correlations between the Chinese and Nordic Holstein populations are high with respect to protein yield, fat yield, and milk yield-whereby these correlations range from 0.621 to 0.720-and are moderate with respect to somatic cell count (0.449), but low for the three conformation traits (which range from 0.144 to 0.236). When utilizing the joint reference data and a two-trait GBLUP model, the genomic prediction accuracy in the Chinese Holsteins improves considerably with respect to the traits with moderate-to-high genetic correlations, whereas the improvement in Nordic Holsteins is small. When compared with the single population analysis, using the joint reference population for genomic prediction in younger animals, results in a 2.3 to 8.1 percent improvement in accuracy. Meanwhile, 10 replications of five-fold cross-validation were also implemented in order to evaluate the performance of joint genomic prediction, thereby resulting in a 1.6 to 5.2 percent increase in accuracy. With respect to joint genomic prediction, the bias was found to be quite low. However, for traits with low genetic correlations, the joint reference data do not improve the prediction accuracy substantially for either population.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9951650PMC
http://dx.doi.org/10.3390/ani13040636DOI Listing

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