Prediction of Acute Kidney Injury in Critically ill Patients with Community-Acquired Pneumonia Using Machine Learning.

IF 3 3区 医学 Q2 CRITICAL CARE MEDICINE
Wenwen Ji, Guangdong Wang, Tingting Liu, Mengcong Li, Na Wang, Tinghua Hu, Zhihong Shi
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Abstract

BackgroundThe incidence of acute kidney injury (AKI) is increased in patients with community-acquired pneumonia (CAP), contributing to poor outcomes in ICUs. Early identification of patients at high risk for AKI is essential for timely intervention. This study aimed to develop a machine learning model for predicting AKI in CAP patients.MethodsPatients with CAP were identified from the MIMIC-IV database using ICD codes. AKI was defined according to the KDIGO criteria. Baseline characteristics, vital signs, laboratory data, comorbidities, and clinical scores were extracted. LASSO regression was applied for feature selection, and eight machine learning models, including logistic regression, k-nearest neighbors, decision tree, random forest, support vector machine, neural network, XGBoost, and LightGBM, were developed. Model performance was evaluated using AUC, sensitivity, specificity, accuracy, recall, F1 score, calibration curves, and decision curve analysis (DCA). SHapley Additive exPlanations (SHAP) were used to interpret the final model. A web-based risk calculator was created for clinical application.ResultsA total of 3213 CAP patients were included, with 2723 (84.8%) developing AKI. XGBoost demonstrated the best performance with an AUC of 0.937 (95% CI: 0.922-0.952), sensitivity of 0.875, specificity of 0.855, accuracy of 0.865 (95% CI: 0.841-0.887), recall of 0.875, and F1 score of 0.866. DCA showed the highest net benefit for XGBoost across various risk thresholds. After recursive feature elimination, a simplified model with seven key variables, including urine output, weight, ventilation, first-day minimum PTT, first-day maximum sodium, first-day minimum heart rate, and first-day maximum temperature, maintained high predictive performance (AUC = 0.925, 95% CI: 0.908-0.941).ConclusionsThe XGBoost model accurately predicted AKI risk in CAP patients, demonstrating robust performance and clinical utility. The web-based calculator offers an accessible tool for individualized risk assessment, supporting early detection and management of AKI in ICUs.

应用机器学习预测社区获得性肺炎危重患者急性肾损伤。
社区获得性肺炎(CAP)患者的急性肾损伤(AKI)发生率增加,导致icu预后不良。早期识别AKI高危患者对于及时干预至关重要。本研究旨在开发一种预测CAP患者AKI的机器学习模型。方法使用ICD编码从MIMIC-IV数据库中识别CAP患者。AKI是根据KDIGO标准定义的。提取基线特征、生命体征、实验室数据、合并症和临床评分。采用LASSO回归进行特征选择,建立了逻辑回归、k近邻、决策树、随机森林、支持向量机、神经网络、XGBoost、LightGBM等8种机器学习模型。通过AUC、灵敏度、特异性、准确性、召回率、F1评分、校准曲线和决策曲线分析(DCA)来评估模型的性能。使用SHapley加性解释(SHAP)来解释最终模型。创建了一个基于网络的风险计算器,用于临床应用。结果共纳入CAP患者3213例,其中2723例(84.8%)发生AKI。XGBoost表现最佳,AUC为0.937 (95% CI: 0.922-0.952),灵敏度为0.875,特异性为0.855,准确度为0.865 (95% CI: 0.841-0.887),召回率为0.875,F1评分为0.866。DCA显示XGBoost在各种风险阈值上的净收益最高。在递归特征剔除后,包含尿量、体重、通气、第一天最低PTT、第一天最高钠、第一天最低心率和第一天最高体温等7个关键变量的简化模型保持了较高的预测性能(AUC = 0.925, 95% CI: 0.908-0.941)。结论XGBoost模型能够准确预测CAP患者的AKI风险,具有良好的临床应用价值。基于网络的计算器为个性化风险评估提供了一个可访问的工具,支持icu患者AKI的早期发现和管理。
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来源期刊
Journal of Intensive Care Medicine
Journal of Intensive Care Medicine CRITICAL CARE MEDICINE-
CiteScore
7.60
自引率
3.20%
发文量
107
期刊介绍: Journal of Intensive Care Medicine (JIC) is a peer-reviewed bi-monthly journal offering medical and surgical clinicians in adult and pediatric intensive care state-of-the-art, broad-based analytic reviews and updates, original articles, reports of large clinical series, techniques and procedures, topic-specific electronic resources, book reviews, and editorials on all aspects of intensive/critical/coronary care.
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