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Predictive model for acute respiratory distress syndrome events in ICU patients in China using machine learning algorithms: a secondary analysis of a cohort study

机译:使用机器学习算法的中国ICU患者急性呼吸窘迫综合征事件的预测模型:一项队列研究的二级分析

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To develop a machine learning model for predicting acute respiratory distress syndrome (ARDS) events through commonly available parameters, including baseline characteristics and clinical and laboratory parameters. A secondary analysis of a multi-centre prospective observational cohort study from five hospitals in Beijing, China, was conducted from January 1, 2011, to August 31, 2014. A total of 296 patients at risk for developing ARDS admitted to medical intensive care units (ICUs) were included. We applied a random forest approach to identify the best set of predictors out of 42 variables measured on day 1 of admission. All patients were randomly divided into training (80%) and testing (20%) sets. Additionally, these patients were followed daily and assessed according to the Berlin definition. The model obtained an average area under the receiver operating characteristic (ROC) curve (AUC) of 0.82 and yielded a predictive accuracy of 83%. For the first time, four new biomarkers were included in the model: decreased minimum haematocrit, glucose, and sodium and increased minimum white blood cell (WBC) count. This newly established machine learning-based model shows good predictive ability in Chinese patients with ARDS. External validation studies are necessary to confirm the generalisability of our approach across populations and treatment practices.
机译:通过通用参数(包括基线特征以及临床和实验室参数)来开发用于预测急性呼吸窘迫综合征(ARDS)事件的机器学习模型。从2011年1月1日至2014年8月31日,对来自中国北京五家医院的多中心前瞻性观察队列研究进行了二次分析。共有296名有发展为ARDS风险的患者入住重症监护室(ICU)。我们采用随机森林方法从入院第1天测量的42个变量中识别出最佳的预测变量集。将所有患者随机分为训练组(80%)和测试组(20%)。此外,每天对这些患者进行随访,并根据柏林的定义进行评估。该模型在接收器工作特性(ROC)曲线(AUC)下获得的平均面积为0.82,预测准确性为83%。该模型首次包括四个新的生物标志物:最小血细胞比容,葡萄糖和钠含量的降低以及最小白细胞(WBC)数量的增加。这个新建立的基于机器学习的模型在中国ARDS患者中显示出良好的预测能力。外部验证研究对于确认我们的方法在人群和治疗实践中的普遍性是必要的。

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