Effects of preselection of genotyped animals on reliability and bias of genomic prediction in dairy cattle |
Togashi, Kenji
(Maebashi Institute of Animal Science, Livestock Improvement Association of Japan)
Adachi, Kazunori (Livestock Improvement Association of Japan) Kurogi, Kazuhito (Maebashi Institute of Animal Science, Livestock Improvement Association of Japan) Yasumori, Takanori (Livestock Improvement Association of Japan) Tokunaka, Kouichi (Livestock Improvement Association of Japan) Ogino, Atsushi (Maebashi Institute of Animal Science, Livestock Improvement Association of Japan) Miyazaki, Yoshiyuki (Maebashi Institute of Animal Science, Livestock Improvement Association of Japan) Watanabe, Toshio (Maebashi Institute of Animal Science, Livestock Improvement Association of Japan) Takahashi, Tsutomu (Livestock Improvement Association of Japan) Moribe, Kimihiro (Livestock Improvement Association of Japan) |
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