Metabolomics comparison of rumen fluid and milk in dairy cattle using proton nuclear magnetic resonance spectroscopy |
Eom, Jun Sik
(Division of Applied Life Science (BK21Four), Gyeongsang National University)
Kim, Eun Tae (National Institute of Animal Science, Rural Development Administration) Kim, Hyun Sang (Division of Applied Life Science (BK21Four), Gyeongsang National University) Choi, You Young (Division of Applied Life Science (BK21Four), Gyeongsang National University) Lee, Shin Ja (Institute of Agriculture and Life Science & University-Centered Labs, Gyeongsang National University) Lee, Sang Suk (Ruminant Nutrition and Anaerobe Laboratory, College of Bio-industry Science, Sunchon National University) Kim, Seon Ho (Ruminant Nutrition and Anaerobe Laboratory, College of Bio-industry Science, Sunchon National University) Lee, Sung Sill (Division of Applied Life Science (BK21Four), Gyeongsang National University) |
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