基于机器学习的预测支持高龄呼吸道感染患者的ICU入院决策:一项基于全国人群的队列研究的概念验证

IF 3.1 3区 医学 Q2 HEALTH CARE SCIENCES & SERVICES
Lionel Tchatat Wangueu, Arthur Kassa-Sombo, Guy Ilango, Christophe Gaborit, Mustapha Si-Tahar, Leslie Grammatico-Guillon, Antoine Guillon
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引用次数: 0

摘要

背景:高龄急性呼吸道感染患者的重症监护病房(ICU)住院率有所上升。ICU入院的决策过程是多方面的,长期生存结果的预测是一个重要组成部分。我们假设数据驱动的算法可以通过检查大量的现实数据来建立长期预测。我们的目标是评估机器学习(ML)算法,以预测高龄严重呼吸道感染患者的1年生存率。方法采用法国医院出院数据库,对2011-2020年ICU≥80岁呼吸道感染患者进行研究。培训队列数据收集于2013年至2016年建立模型,2017年提取的患者数据用于外部验证。我们提出的模型是使用随机森林、逻辑回归(LR)和XGBoost开发的。根据模型的准确性、敏感性、特异性、马修斯相关系数(MCC)、受者-工作特征曲线(AUROC)和决策曲线分析(DCA)筛选出最优模型。采用局部可解释模型不可知论解释(LIME)算法分析个体特征的贡献。结果2013-2017年ICU共收治1岁生命体征已知的特高龄呼吸道感染患者24270例。1年生存率为41.3%(中位生存期:3个月[2.7-3.3])。在测试的3 ML模型中,LR表现出良好的性能,其准确性、敏感性、特异性、MCC和AUROC(95%置信区间)分别为0.65、0.76、0.60、0.27和0.70(0.69-0.72)。在时间分裂外部验证中,LR的AUROC为0.70(0.68-0.71)。在DCA的阈值概率值范围内,LR显示出更高的净效益。LIME算法在个体尺度上确定了10个最具影响力的特征。结论:我们证明ML模型具有预测高龄急性呼吸道感染患者长期预后的潜力。作为概念验证,我们提出了一个程序,作为ML模型的“解释器”。这项工作代表了将ML模型转化为实用、透明和可靠的临床工具以支持医疗决策的一步。对于重症监护医师来说,接纳高龄患者入住ICU的决定是最复杂的挑战之一,往往依赖于主观判断。在这项研究中,我们评估了机器学习算法在预测严重呼吸道感染的危重极老患者(≥80岁)1年生存率方面的有效性,使用入院决定之前的可用数据。我们的研究结果表明,机器学习可以有效地预测高龄患者的长期预后。我们采用了一种创新的方法,旨在支持ICU住院的医疗决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning-Based Prediction to Support ICU Admission Decision Making among Very Old Patients with Respiratory Infections: A Proof of Concept on a Nationwide Population-Based Cohort Study.

BackgroundIntensive care unit (ICU) hospitalizations of very old patients with acute respiratory infection have risen. The decision-making process for ICU admission is multifaceted, and the prediction of long-term survival outcome is an important component. We hypothesized that data-driven algorithms could build long-term prediction by examining massive real-life data. Our objective was to assess machine learning (ML) algorithms to predict the 1-y survival of very old patients with severe respiratory infections.MethodsA national 2011-2020 study of ICU patients ≥80 y with respiratory infection was carried out, using French hospital discharge databases. Data for the training cohort were collected from 2013 to 2016 to build the models, and the data of patients extracted in 2017 were used for external validation. Our proposed models were developed using random forest, logistic regression (LR), and XGBoost. The optimal model was selected based on its accuracy, sensitivity, specificity, Matthews coefficient correlation (MCC), receiver-operating characteristic curve (AUROC), and decision curve analysis (DCA). The local interpretable model-agnostic explanation (LIME) algorithm was used to analyze the contribution of individual features.ResultsA total of 24,270 very old patients were hospitalized in the ICU for respiratory infection (2013-2017) with a known vital status at 1 y. The 1-y survival rate was 41.3% (median survival: 3 mo [2.7-3.3]). Of the 3 ML models tested, LR exhibited promising performance with an accuracy, sensitivity, specificity, MCC, and AUROC (95% confidence interval) of 0.65, 0.76, 0.60, 0.27, and 0.70 (0.69-0.72), respectively. LR achieved an AUROC of 0.70 (0.68-0.71) in external validation by temporal splitting. LR demonstrated higher net benefits across a range of threshold probability values in DCA. The LIME algorithm identified the 10 most influential features at an individual scale.ConclusionsWe demonstrated that a ML model has the potential to predict long-term outcomes for very old patients with acute respiratory infections. As a proof of concept, we proposed a program that acts as an "explainer" for the ML model. This work represents a step forward in translating ML models into practical, transparent, and reliable clinical tools to support medical decision making.HighlightsThe decision to admit a very old patient to the ICU is one of the most complex challenges faced by intensivists, often relying on subjective judgment.In this study, we evaluated the efficacy of machine learning algorithms in predicting the 1-y survival rate of critically ill very old patients (≥80 y) with severe respiratory infections, using data available prior to the admission decision.Our findings demonstrate that machine learning can effectively predict long-term outcomes in very old patients. We used an innovative approach that aims to support medical decision making about admission in ICU.

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来源期刊
Medical Decision Making
Medical Decision Making 医学-卫生保健
CiteScore
6.50
自引率
5.60%
发文量
146
审稿时长
6-12 weeks
期刊介绍: Medical Decision Making offers rigorous and systematic approaches to decision making that are designed to improve the health and clinical care of individuals and to assist with health care policy development. Using the fundamentals of decision analysis and theory, economic evaluation, and evidence based quality assessment, Medical Decision Making presents both theoretical and practical statistical and modeling techniques and methods from a variety of disciplines.
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