Machine Learning Approach for Sepsis Risk Assessment in Ischemic Stroke Patients.

IF 3 3区 医学 Q2 CRITICAL CARE MEDICINE
Fengkai Mao, Leqing Lin, Dongcheng Liang, Weiling Cheng, Ning Zhang, Ji Li, Siming Wu
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Abstract

Background: Ischemic stroke is a critical neurological condition, with infection representing a significant aspect of its clinical management. Sepsis, a life-threatening organ dysfunction resulting from infection, is among the most dangerous complications in the intensive care unit (ICU). Currently, no model exists to predict the onset of sepsis in ischemic stroke patients. This study aimed to develop the first predictive model for sepsis in ischemic stroke patients using data from the MIMIC-IV database, leveraging machine learning techniques.

Methods: A total of 2238 adult patients with a diagnosis of ischemic stroke, admitted to the ICU for the first time, were included from the MIMIC-IV database. The outcome of interest was the development of sepsis. Model development adhered to the TRIPOD guidelines. Feature selection was performed using Least Absolute Shrinkage and Selection Operator (LASSO) regression, identifying 28 key variables. Multiple machine learning algorithms, including logistic regression, k-nearest neighbors, support vector machines, decision trees, and XGBoost, were trained and internally validated. Performance metrics were assessed, and XGBoost was selected as the optimal model. The SHAP method was used to interpret the XGBoost model, revealing the impact of individual features on predictions. The model was also deployed on a user-friendly platform for practical use in clinical settings.

Results: The XGBoost model demonstrated superior performance in the validation set, achieving an area under the curve (AUC) of 0.863 and offering greater net benefit compared to other models. SHAP analysis identified key factors influencing sepsis risk, including the use of invasive mechanical ventilation on the first day, excessive body weight, a Glasgow Coma Scale verbal score below 3, age, and elevated body temperature (>37.5 °C). A user interface had been developed to enable clinicians to easily access and utilize the model.

Conclusions: This study developed the first machine learning-based model to predict sepsis in ischemic stroke patients. The model exhibited high accuracy and holds potential as a clinical decision support tool, enabling earlier identification of high-risk patients and facilitating preventive measures to reduce sepsis incidence and mortality in this population.

缺血性脑卒中患者脓毒症风险评估的机器学习方法。
背景:缺血性脑卒中是一种严重的神经系统疾病,感染是其临床管理的一个重要方面。脓毒症是由感染引起的危及生命的器官功能障碍,是重症监护病房(ICU)最危险的并发症之一。目前,尚无模型能够预测缺血性脑卒中患者脓毒症的发生。本研究旨在利用机器学习技术,利用MIMIC-IV数据库的数据,开发缺血性卒中患者脓毒症的第一个预测模型。方法:从MIMIC-IV数据库中纳入2238例首次入住ICU的成年缺血性脑卒中患者。关注的结果是脓毒症的发展。模型开发遵循TRIPOD指南。使用最小绝对收缩和选择算子(LASSO)回归进行特征选择,确定28个关键变量。多种机器学习算法,包括逻辑回归、k近邻、支持向量机、决策树和XGBoost,进行了训练和内部验证。对性能指标进行了评估,并选择XGBoost作为最优模型。SHAP方法被用来解释XGBoost模型,揭示了个体特征对预测的影响。该模型还部署在一个用户友好的平台上,以便在临床环境中实际使用。结果:与其他模型相比,XGBoost模型在验证集中表现出优越的性能,曲线下面积(AUC)为0.863,提供了更大的净效益。SHAP分析确定了影响脓毒症风险的关键因素,包括第一天使用有创机械通气、体重过重、格拉斯哥昏迷量表言语评分低于3分、年龄和体温升高(>37.5°C)。已经开发了一个用户界面,使临床医生能够轻松访问和使用该模型。结论:本研究开发了第一个基于机器学习的模型来预测缺血性脑卒中患者的败血症。该模型具有较高的准确性,具有作为临床决策支持工具的潜力,能够更早地识别高危患者,并促进预防措施,以降低该人群的脓毒症发病率和死亡率。
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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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