Assessment of the performance of hidden Markov models for imputation in animal breeding.
Andrew WhalenGregor GorjancRoger Ros-FreixedesJohn M HickeyPublished in: Genetics, selection, evolution : GSE (2018)
The results of this study suggest that hidden Markov model-based imputation algorithms are an accurate and computationally feasible approach for performing imputation without a pedigree when pre-phasing and haploid imputation are used. Of the algorithms tested, the combination of Eagle2 and Minimac3 gave the highest accuracy across the simulated and real datasets.