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指导重症监护中高效、有效且以患者为导向的电解质替代:一种人工智能强化学习方法。

Guiding Efficient, Effective, and Patient-Oriented Electrolyte Replacement in Critical Care: An Artificial Intelligence Reinforcement Learning Approach.

作者信息

Prasad Niranjani, Mandyam Aishwarya, Chivers Corey, Draugelis Michael, Hanson C William, Engelhardt Barbara E, Laudanski Krzysztof

机构信息

Department of Computer Science, Princeton University, Princeton, NJ 08540, USA.

Gladstone Institutes, San Francisco, CA 94158, USA.

出版信息

J Pers Med. 2022 Apr 20;12(5):661. doi: 10.3390/jpm12050661.

Abstract

Both provider- and protocol-driven electrolyte replacement have been linked to the over-prescription of ubiquitous electrolytes. Here, we describe the development and retrospective validation of a data-driven clinical decision support tool that uses reinforcement learning (RL) algorithms to recommend patient-tailored electrolyte replacement policies for ICU patients. We used electronic health records (EHR) data that originated from two institutions (UPHS; MIMIC-IV). The tool uses a set of patient characteristics, such as their physiological and pharmacological state, a pre-defined set of possible repletion actions, and a set of clinical goals to present clinicians with a recommendation for the route and dose of an electrolyte. RL-driven electrolyte repletion substantially reduces the frequency of magnesium and potassium replacements (up to 60%), adjusts the timing of interventions in all three electrolytes considered (potassium, magnesium, and phosphate), and shifts them towards orally administered repletion over intravenous replacement. This shift in recommended treatment limits risk of the potentially harmful effects of over-repletion and implies monetary savings. Overall, the RL-driven electrolyte repletion recommendations reduce excess electrolyte replacements and improve the safety, precision, efficacy, and cost of each electrolyte repletion event, while showing robust performance across patient cohorts and hospital systems.

摘要

由医护人员主导和协议驱动的电解质补充都与常见电解质的过度处方有关。在此,我们描述了一种数据驱动的临床决策支持工具的开发和回顾性验证,该工具使用强化学习(RL)算法为重症监护病房(ICU)患者推荐个性化的电解质补充策略。我们使用了来自两个机构(UPHS;MIMIC-IV)的电子健康记录(EHR)数据。该工具利用一组患者特征,如他们的生理和药理状态、一组预定义的可能补充行动以及一组临床目标,为临床医生提供关于电解质补充途径和剂量的建议。由RL驱动的电解质补充显著降低了镁和钾补充的频率(高达60%),调整了所考虑的所有三种电解质(钾、镁和磷酸盐)的干预时间,并将其从静脉补充转向口服补充。推荐治疗的这种转变限制了过度补充潜在有害影响的风险,并意味着节省费用。总体而言,由RL驱动的电解质补充建议减少了过量的电解质补充,提高了每次电解质补充事件的安全性、精准性、有效性和成本,同时在不同患者群体和医院系统中表现出稳健的性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/997c/9143326/63b1b9fe5466/jpm-12-00661-g0A1.jpg

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