S. Hossain, Mohammadreza Reza Ebrahimi, B. Padmanabhan, I. E. El Naqa, Paul C. Kuo, Abigail Beard, Sarah Merkel
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引用次数: 0
摘要
基于人工智能/机器学习的方法的发展促进了乳腺癌治疗各个阶段临床决策的改善。虽然这解决了患者在特定治疗阶段的需求,但由于在获取相关数据方面存在挑战,从整体角度来看,患者的整体治疗路径仍未得到充分研究。在这项研究中,我们建议为乳腺癌患者开发一个人工智能支持的治疗路径模拟,同时将治疗路径描述为马尔可夫决策过程(MDP)。为了避免医疗记录的局限性(通常不完整且容易受到错误信息的影响),我们利用了Moffitt Cancer Center的临床实践指南和医生的专业知识来开发MDP。我们利用领域知识开发这样的MDP的研究有助于改进乳腺癌患者治疗路径模拟的研究。
Robust AI-enabled Simulation of Treatment Paths with Markov Decision Process for Breast Cancer Patients
Development in AI/ML-based methodologies has facilitated improvement in clinical decision making at various stages of treatment in breast cancer care. While this addresses patient needs at specific stages of treatment, the overall treatment path of a patient from a holistic standpoint has remained understudied due to challenges in accessing the relevant data. In this study, we propose to develop an AI-enabled treatment path simulation for breast cancer patients while characterizing the treatment paths as a Markov decision process (MDP). In order to avoid the limitations of healthcare records, which are often incomplete and subject to misinformation, we have leveraged clinical practice guidelines and expertise from physicians at Moffitt Cancer Center to develop the MDP. Our study of developing such an MDP, leveraging domain knowledge, contributes to improving research on treatment path simulation for breast cancer patients.