Glycome informatics: using systems biology to gain mechanistic insights into glycan biosynthesis

Current Opinion in Chemical Engineering - Tập 32 - Trang 100683 - 2021
Kiyoko F Aoki-Kinoshita1
1Glycan & Life Systems Integration Center (GaLSIC), Soka University, Japan

Tài liệu tham khảo

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