2023
DOI: 10.1101/2023.04.28.538766
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Learning to Adapt - Deep Reinforcement Learning in Treatment-Resistant Prostate Cancer

Abstract: Standard-of-care treatment regimes have long been designed to for maximal cell kill, yet these strategies often fail when applied to treatment-resistant tumors, resulting in patient relapse. Adaptive treatment strategies have been developed as an alternative approach, harnessing intra-tumoral competition to suppress the growth of treatment resistant populations, to delay or even prevent tumor progression. Following recent clinical implementations of adaptive therapy, it is of significant interest to optimise a… Show more

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