4.7 Article

Application of imputation methods to genomic selection in Chinese Holstein cattle

Journal

Publisher

BMC
DOI: 10.1186/2049-1891-3-6

Keywords

Chinese Holstein Cows; dairy cattle; genomic selection; imputation methods; quality control; SNP

Funding

  1. National Natural Science Foundation of China [30800776]
  2. State High-Tech Development Plan of China [2008AA101002]
  3. Recommend International Advanced Agricultural Science and Technology Plan of China [2011-G2A]

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Missing genotypes are a common feature of high density SNP datasets obtained using SNP chip technology and this is likely to decrease the accuracy of genomic selection. This problem can be circumvented by imputing the missing genotypes with estimated genotypes. When implementing imputation, the criteria used for SNP data quality control and whether to perform imputation before or after data quality control need to consider. In this paper, we compared six strategies of imputation and quality control using different imputation methods, different quality control criteria and by changing the order of imputation and quality control, against a real dataset of milk production traits in Chinese Holstein cattle. The results demonstrated that, no matter what imputation method and quality control criteria were used, strategies with imputation before quality control performed better than strategies with imputation after quality control in terms of accuracy of genomic selection. The different imputation methods and quality control criteria did not significantly influence the accuracy of genomic selection. We concluded that performing imputation before quality control could increase the accuracy of genomic selection, especially when the rate of missing genotypes is high and the reference population is small.

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