Machine Learning for In-hospital Mortality Prediction in Critically Ill Patients With Acute Heart Failure: A Retrospective Analysis Based on the MIMIC-IV Database.

IF 2.3 4区 医学 Q2 ANESTHESIOLOGY
Jun Li, Yiwu Sun, Jie Ren, Yifan Wu, Zhaoyi He
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Abstract

Background: The incidence, mortality, and readmission rates for acute heart failure (AHF) are high, and the in-hospital mortality for AHF patients in the intensive care unit (ICU) is higher. However, there is currently no method to accurately predict the mortality of AHF patients.

Methods: The Medical Information Mart for Intensive Care Ⅳ (MIMIC-Ⅳ) database was used to perform a retrospective study. Patients meeting the inclusion criteria were identified from the MIMIC-Ⅳ database and randomly divided into a training set (n = 3,580, 70%) and a validation set (n = 1,534, 30%). The variates collected include demographic data, vital signs, comorbidities, laboratory test results, and treatment information within 24 hours of ICU admission. By using the least absolute shrinkage and selection operator (LASSO) regression model in the training set, variates that affect the in-hospital mortality of AHF patients were screened. Subsequently, in the training set, five common machine learning (ML) algorithms were applied to construct models using variates selected by LASSO to predict the in-hospital mortality of AHF patients. The predictive ability of the models was evaluated for sensitivity, specificity, accuracy, the area under the curve of receiver operating characteristics, and clinical net benefit in the validation set. To obtain a model with the best predictive ability, the predictive ability of common scoring systems was compared with the best ML model.

Results: Among the 5,114 patients, in-hospital mortality was 12.5%. Comparing the area under the curve, the XGBoost model had the best predictive ability among all ML models, and the XGBoost model was chosen as the final model for its higher net benefit. Its predictive ability was superior to common scoring systems.

Conclusions: The XGBoost model can effectively predict the in-hospital mortality of AHF patients admitted to the ICU, which may assist clinicians in precise management and early intervention for patients with AHF to reduce mortality.

机器学习用于急性心力衰竭危重患者住院死亡率预测:基于MIMIC-IV数据库的回顾性分析
背景:急性心力衰竭(AHF)的发病率、死亡率和再入院率较高,重症监护病房(ICU) AHF患者的住院死亡率较高。然而,目前还没有准确预测AHF患者死亡率的方法。方法:采用重症监护医疗信息市场Ⅳ(MIMIC-Ⅳ)数据库进行回顾性研究。从MIMIC-Ⅳ数据库中识别符合纳入标准的患者,并随机分为训练集(n = 3580, 70%)和验证集(n = 1534, 30%)。收集的变量包括人口统计数据、生命体征、合并症、实验室检查结果和ICU入院24小时内的治疗信息。利用训练集中的最小绝对收缩和选择算子(LASSO)回归模型,筛选影响AHF患者住院死亡率的变量。随后,在训练集中,应用五种常见的机器学习(ML)算法,利用LASSO选择的变量构建模型,预测AHF患者的住院死亡率。评估模型的预测能力,包括敏感性、特异性、准确性、受试者操作特征曲线下面积和验证集中的临床净收益。为了获得预测能力最好的模型,将常用评分系统的预测能力与最佳ML模型进行比较。结果:5114例患者住院死亡率为12.5%。对比曲线下面积,在所有ML模型中,XGBoost模型的预测能力最好,最终选择XGBoost模型作为净效益较高的模型。其预测能力优于普通评分系统。结论:XGBoost模型能有效预测AHF入住ICU患者的住院死亡率,有助于临床医生对AHF患者进行精准管理和早期干预,降低死亡率。
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来源期刊
CiteScore
4.80
自引率
17.90%
发文量
606
审稿时长
37 days
期刊介绍: The Journal of Cardiothoracic and Vascular Anesthesia is primarily aimed at anesthesiologists who deal with patients undergoing cardiac, thoracic or vascular surgical procedures. JCVA features a multidisciplinary approach, with contributions from cardiac, vascular and thoracic surgeons, cardiologists, and other related specialists. Emphasis is placed on rapid publication of clinically relevant material.
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