Combined transcriptome and proteome analyses reveal differences in the longissimus dorsi muscle between Kazakh cattle and Xinjiang brown cattle |
Yan, XiangMin
(Institute of Animal Husbandry, Xinjiang Academy of Animal Husbandry)
Wang, Jia (College of Geographic Science, Shanxi Normal University) Li, Hongbo (Institute of Animal Husbandry, Xinjiang Academy of Animal Husbandry) Gao, Liang (Yili Vocational and Technical College) Geng, Juan (Xinjiang Animal Husbandry General Station) Ma, Zhen (Institute of Animal Husbandry, Xinjiang Academy of Animal Husbandry) Liu, Jianming (Yili Animal Husbandry General Station) Zhang, Jinshan (Institute of Animal Husbandry, Xinjiang Academy of Animal Husbandry) Xie, Penggui (Yili Vocational and Technical College) Chen, Lei (College of Animal Science and Technology, Shihezi University) |
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