The prognosis for patients with epithelial ovarian cancer remains dismal despite improvements in survival for other cancers. Treatment involves multiple lines of chemotherapy and becomes increasingly heterogeneous after first-line therapy. Reinforcement learning with real-world outcomes data has the potential to identify novel treatment strategies to improve overall survival. We design a reinforcement learning environment to model epithelial ovarian cancer treatment trajectories and use model free reinforcement learning to investigate therapeutic regimens for simulated patients.
翻译:尽管其他癌症的存活率有所改善,但上腺卵巢癌患者的预测仍然令人沮丧;治疗涉及多种化疗线,经过一线治疗后,治疗变得日益多样化;用现实世界结果数据加强学习,有可能确定新的治疗战略,改善总体生存状况;我们设计一个强化学习环境,以模拟上腺卵巢癌治疗轨迹,并利用免费强化学习模型,调查模拟病人的治疗方案。