Computational Modeling to Identify Drugs Targeting Metastatic Castration-Resistant Prostate Cancer Characterized by Heightened Glycolysis
Mei‐Chi Su(University of Minnesota), R. Stephanie Huang(Sun Yat-sen University), Adam M. Lee(University of Minnesota), Robert F. Gruener(University of Minnesota), Danielle Maeser(University of Minnesota), Weijie Zhang(University of Minnesota), Yibin Deng(University of Minnesota Medical Center)
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