Métodos de aprendizaje automático para el desarrollo de un modelo predictivo de delirio durante el ingreso en unidades de cuidados intensivos cardiacos

IF 5.9 2区 医学 Q2 Medicine
Ryoung-Eun Ko , Jihye Lee , Sungeun Kim , Joong Hyun Ahn , Soo Jin Na , Jeong Hoon Yang
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Abstract

Introduction and objectives

Delirium, recognized as a crucial prognostic factor in the cardiac intensive care unit (CICU), has evolved in response to the changing demographics among critically ill cardiac patients. This study aimed to create a predictive model for delirium for patients in the CICU.

Methods

This study included consecutive patients admitted to the CICU of the Samsung Medical Center. To assess the candidate variables for the model: we applied the following machine learning methods: random forest, extreme gradient boosting, partial least squares, and Plmnet-elastic.net. After selecting relevant variables, we performed a logistic regression analysis to derive the model formula. Internal validation was conducted using 100-repeated hold-out validation.

Results

We analyzed 2774 patients, 677 (24.4%) of whom developed delirium in the CICU. Machine learning-based models showed good predictive performance. Clinically significant and frequently important predictors were selected to construct a delirium prediction scoring model for CICU patients. The model included albumin level, international normalized ratio, blood urea nitrogen, white blood cell count, C-reactive protein level, age, heart rate, and mechanical ventilation. The model had an area under the receiver operating characteristics curve (AUROC) of 0.861 (95%CI, 0.843-0.879). Similar results were obtained in internal validation with 100-repeated cross-validation (AUROC, 0.854; 95%CI, 0.826-0.883).

Conclusions

Using variables frequently ranked as highly important in four machine learning methods, we created a novel delirium prediction model. This model could serve as a useful and simple tool for risk stratification for the occurrence of delirium at the patient's bedside in the CICU.

用机器学习方法开发心脏重症监护病房入院期间谵妄的预测模型。
导言和目的谵妄被认为是心脏重症监护病房(CICU)的一个重要预后因素,随着重症心脏病患者人口统计学的变化而不断发展。本研究旨在为 CICU 患者建立一个谵妄预测模型。为了评估模型的候选变量,我们采用了以下机器学习方法:随机森林、极梯度提升、偏最小二乘法和 Plmnet-elastic.net。选定相关变量后,我们进行了逻辑回归分析,得出了模型公式。结果我们分析了2774名患者,其中677人(24.4%)在CICU中出现了谵妄。基于机器学习的模型显示出良好的预测性能。我们选择了具有临床意义且经常出现的重要预测因子,构建了CICU患者谵妄预测评分模型。该模型包括白蛋白水平、国际标准化比率、血尿素氮、白细胞计数、C反应蛋白水平、年龄、心率和机械通气。该模型的接收者操作特征曲线下面积 (AUROC) 为 0.861(95%CI,0.843-0.879)。结论利用四种机器学习方法中经常被列为高度重要的变量,我们创建了一种新型谵妄预测模型。该模型可作为一种有用且简单的工具,用于对 CICU 患者床旁发生谵妄的风险进行分层。
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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来源期刊
Revista espanola de cardiologia
Revista espanola de cardiologia 医学-心血管系统
CiteScore
4.20
自引率
13.60%
发文量
257
审稿时长
28 days
期刊介绍: Revista Española de Cardiología, Revista bilingüe científica internacional, dedicada a las enfermedades cardiovasculares, es la publicación oficial de la Sociedad Española de Cardiología.
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