Learning Optimal Treatment Strategies for Sepsis Using Offline Reinforcement Learning in Continuous Space

Zeyu Wang, Huiying Zhao, Peng Ren, Yuxi Zhou, Ming Sheng
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引用次数: 3

Abstract

. Sepsis is a leading cause of death in the ICU. It is a disease requiring complex interventions in a short period of time, but its optimal treatment strategy remains uncertain. Evidence suggests that the practices of currently used treatment strategies are problematic and may cause harm to patients. To address this decision problem, we propose a new medical decision model based on historical data to help clinicians recommend the best reference option for real-time treatment. Our model combines offline reinforcement learning and deep reinforcement learning to solve the problem of traditional reinforcement learning in the medical field due to the inability to interact with the environment, while enabling our model to make decisions in a continuous state-action space. We demonstrate that, on average, the treatments recommended by the model are more valuable and reliable than those recommended by clinicians. In a large validation dataset, we find out that the patients whose actual doses from clinicians matched the decisions made by AI has the lowest mortality rates. Our model provides personalized and clinically interpretable treatment decisions for sepsis to improve patient care.
在连续空间中使用离线强化学习学习败血症的最佳治疗策略
. 败血症是重症监护病房的主要死亡原因。这是一种需要在短时间内进行复杂干预的疾病,但其最佳治疗策略仍不确定。有证据表明,目前使用的治疗策略存在问题,可能对患者造成伤害。为了解决这一决策问题,我们提出了一个基于历史数据的新的医疗决策模型,以帮助临床医生推荐实时治疗的最佳参考选择。我们的模型结合了离线强化学习和深度强化学习,解决了传统强化学习在医学领域无法与环境交互的问题,同时使我们的模型能够在连续的状态-动作空间中进行决策。我们证明,平均而言,模型推荐的治疗方法比临床医生推荐的治疗方法更有价值,更可靠。在一个大型验证数据集中,我们发现临床医生的实际剂量与人工智能的决策相匹配的患者死亡率最低。我们的模型为败血症提供个性化和临床可解释的治疗决策,以改善患者护理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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