Glycosylation shapes the efficacy and safety of diverse protein, gene and cell therapies
Frances Rocamora(University of California San Diego), Nathan E. Lewis(University of Georgia), Seunghyeon Shin(University of California San Diego), Angelo G. Peralta(University of California San Diego), James V. Sorrentino(University of California San Diego), Thomas R. Fuerst(University of Maryland, Baltimore), Eric A. Toth(Institute for Bioscience and Biotechnology Research), Mina Wu(University of Georgia)
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