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Identifying Distinct Effective Treatments for Acute Hypotension with SODA-RL: Safely Optimized Diverse Accurate Reinforcement Learning

机译:用SODA-RL识别急性低血压的独特有效治疗方法:安全优化的多种准确强化学习方法

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摘要

Hypotension in critical care settings is a life-threatening emergency that must be recognized and treated early. While fluid bolus therapy and vasopressors are common treatments, it is often unclear which interventions to give, in what amounts, and for how long. Observational data in the form of electronic health records can provide a source for helping inform these choices from past events, but often it is not possible to identify a single best strategy from observational data alone. In such situations, we argue it is important to expose the collection of plausible options to a provider. To this end, we develop SODA-RL: Safely Optimized, Diverse, and Accurate Reinforcement Learning, to identify distinct treatment options that are supported in the data. We demonstrate SODA-RL on a cohort of 10,142 ICU stays where hypotension presented. Our learned policies perform comparably to the observed physician behaviors, while providing different, plausible alternatives for treatment decisions.
机译:重症监护病房中的低血压是危及生命的紧急事件,必须及早发现和治疗。虽然液体推注疗法和血管加压药是常见的治疗方法,但通常不清楚要进行哪些干预,给予多少剂量和持续时间。电子健康记录形式的观察数据可以提供信息,以帮助从过去的事件中告知这些选择,但通常无法仅从观察数据中确定一个最佳策略。在这种情况下,我们认为将合理的期权集合暴露给提供者很重要。为此,我们开发了SODA-RL:安全优化,多样化和准确的强化学习,以识别数据中支持的不同治疗方案。我们在10142例出现低血压的ICU住院患者中证实了SODA-RL。我们学到的政策与观察到的医生行为具有可比性,同时为治疗决策提供了不同的,可行的选择。

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