Improving multi-population genomic prediction accuracy using multi-trait GBLUP models which incorporate global or local genetic correlation information

Author:

Teng Jun123,Zhai Tingting45,Zhang Xinyi12,Zhao Changheng12,Wang Wenwen12,Tang Hui12,Wang Dan12,Shang Yingli6,Ning Chao12ORCID,Zhang Qin12ORCID

Affiliation:

1. Shandong Provincial Key Laboratory of Animal Biotechnology and Disease Control and Prevention , College of Animal Science and Technology, , Tai’an 271018, Shandong , China

2. Shandong Agricultural University , College of Animal Science and Technology, , Tai’an 271018, Shandong , China

3. Shandong Futeng Food Co. Ltd. , Zaozhuang 277500, Shandong , China

4. National Key Laboratory of Wheat Improvement , College of Life Science, , Tai’an 271018, Shandong , China

5. Shandong Agricultural University , College of Life Science, , Tai’an 271018, Shandong , China

6. College of Veterinary Medicine, Shandong Agricultural University , Tai’an 271018, Shandong , China

Abstract

Abstract In the application of genomic prediction, a situation often faced is that there are multiple populations in which genomic prediction (GP) need to be conducted. A common way to handle the multi-population GP is simply to combine the multiple populations into a single population. However, since these populations may be subject to different environments, there may exist genotype-environment interactions which may affect the accuracy of genomic prediction. In this study, we demonstrated that multi-trait genomic best linear unbiased prediction (MTGBLUP) can be used for multi-population genomic prediction, whereby the performances of a trait in different populations are regarded as different traits, and thus multi-population prediction is regarded as multi-trait prediction by employing the between-population genetic correlation. Using real datasets, we proved that MTGBLUP outperformed the conventional multi-population model that simply combines different populations together. We further proposed that MTGBLUP can be improved by partitioning the global between-population genetic correlation into local genetic correlations (LGC). We suggested two LGC models, LGC-model-1 and LGC-model-2, which partition the genome into regions with and without significant LGC (LGC-model-1) or regions with and without strong LGC (LGC-model-2). In analysis of real datasets, we demonstrated that the LGC models could increase universally the prediction accuracy and the relative improvement over MTGBLUP reached up to 163.86% (25.64% on average).

Funder

National Key Research and Development Program of China

Yangzhou University Interdisciplinary Research Foundation for Animal Science Discipline of Targeted Support

Project of Genetic Improvement for Agricultural Species of Shandong Province

Shandong Provincial Natural Science Foundation

National Natural Science Foundation of China

Publisher

Oxford University Press (OUP)

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