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Reinforcement learning-based control of drug dosing for cancer chemotherapy treatment

Mathematical biosciences, v.293, 2017년, pp.11 - 20  

Padmanabhan, Regina (The Department of Electrical Engineering, Qatar University, Qatar) ,  Meskin, Nader (Corresponding author.) ,  Haddad, Wassim M. (The School of Aerospace Engineering, Georgia Institute of Technology, Atlanta, GA, 30332-0150, USA)

Abstract AI-Helper 아이콘AI-Helper

Abstract The increasing threat of cancer to human life and the improvement in survival rate of this disease due to effective treatment has promoted research in various related fields. This research has shaped clinical trials and emphasized the necessity to properly schedule cancer chemotherapy to e...

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