Early prediction of sepsis using an XGBoost model with single time-point non-invasive vital signs and its correlation with C-reactive protein and procalcitonin: A multi-center study

Albert C. Yang , Wei-Ming Ma , Dung-Hung Chiang , Yi-Ze Liao , Hsien-Yung Lai , Shu-Chuan Lin , Mei-Chin Liu , Kai-Ting Wen , Tzong-Huei Lin , Wen-Xiang Tsai , Jun-Ding Zhu , Ting-Yu Chen , Hung-Fu Lee , Pei-Hung Liao , Huey-Wen Yien , Chien-Ying Wang
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Abstract

We aimed to develop an early warning system to predict sepsis based solely on single time-point and non-invasive vital signs, and to evaluate its correlation with related biomarkers, namely C-reactive protein (CRP) and Procalcitonin (PCT). We utilized retrospective data from Physionet and four medical centers in Taiwan, encompassing a total of 46,184 Intensive Care Unit (ICU) patients, to develop and validate a machine learning algorithm based on XGBoost for predicting sepsis. The model was specifically designed to use non-invasive vital signs captured at a single time point, The correlation between sepsis AI prediction model and levels of CRP and PCT was evaluated. The developed model demonstrated balanced performance across various datasets, with an average recall of 0.908 and precision of 0.577. The model's performance was further validated by the independent dataset from Cheng-Hsin General Hospital (recall: 0.986, precision: 0.585). Temperature, systolic blood pressure, and respiration rate were the top contributing predictors in the model. A significant correlation was observed between the model's sepsis predictions and elevated CRP levels, while PCT showed a less consistent pattern. Our approach, combining AI algorithms with vital sign data and its clinical relevance to CRP level, offers a more precise and timely sepsis detection, with the potential to improve care in emergency and critical care settings.
基于单时间点无创生命体征的XGBoost模型早期预测脓毒症及其与c反应蛋白和降钙素原的相关性:一项多中心研究
我们的目标是开发一种仅基于单一时间点和无创生命体征的脓毒症预警系统,并评估其与相关生物标志物,即c反应蛋白(CRP)和降钙素原(PCT)的相关性。我们利用来自Physionet和台湾四家医疗中心的回顾性数据,包括46,184名重症监护病房(ICU)患者,开发并验证了基于XGBoost的机器学习算法,用于预测败血症。该模型专门设计用于使用在单个时间点捕获的无创生命体征,评估脓毒症AI预测模型与CRP和PCT水平的相关性。开发的模型在各种数据集上表现出平衡的性能,平均召回率为0.908,精度为0.577。通过独立数据集验证模型的有效性(召回率:0.986,精度:0.585)。温度、收缩压和呼吸速率是模型中最重要的预测因子。在模型的脓毒症预测与CRP水平升高之间观察到显著的相关性,而PCT表现出不太一致的模式。我们的方法将人工智能算法与生命体征数据及其与CRP水平的临床相关性相结合,提供了更精确和及时的败血症检测,有可能改善急诊和重症监护环境的护理。
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来源期刊
Intelligence-based medicine
Intelligence-based medicine Health Informatics
CiteScore
5.00
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审稿时长
187 days
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