Liu Qingyuan, Zhang Yixin, Sun Jian, Wang Kaipeng, Wang Yueguo, Wang Yulan, Ren Cailing, Wang Yan, Zhu Jiashan, Zhou Shusheng, Zhang Mengping, Lai Yinglei, Jin Kui
School of Mathematics and Physics, Anhui Jianzhu University, Hefei 230601, China.
School of Mathematical Sciences, University of Science and Technology of China, Hefei 230026, China.
World J Emerg Med. 2025;16(2):113-120. doi: 10.5847/wjem.j.1920-8642.2025.031.
Rapid and accurate identification of high-risk patients in the emergency departments (EDs) is crucial for optimizing resource allocation and improving patient outcomes. This study aimed to develop an early prediction model for identifying high-risk patients in EDs using initial vital sign measurements.
This retrospective cohort study analyzed initial vital signs from the Chinese Emergency Triage, Assessment, and Treatment (CETAT) database, which was collected between January 1, 2020, and June 25, 2023. The primary outcome was the identification of high-risk patients needing immediate treatment. Various machine learning methods, including a deep-learning-based multilayer perceptron (MLP) classifier were evaluated. Model performance was assessed using the area under the receiver operating characteristic curve (AUC-ROC). AUC- ROC values were reported for three scenarios: a default case, a scenario requiring sensitivity greater than 0.8 (Scenario I), and a scenario requiring specificity greater than 0.8 (Scenario II). SHAP values were calculated to determine the importance of each predictor within the MLP model.
A total of 38,797 patients were analyzed, of whom 18.2% were identified as high-risk. Comparative analysis of the predictive models for high-risk patients showed AUC-ROC values ranging from 0.717 to 0.738, with the MLP model outperforming logistic regression (LR), Gaussian Naive Bayes (GNB), and the National Early Warning Score (NEWS). SHAP value analysis identified coma state, peripheral capillary oxygen saturation (SpO), and systolic blood pressure as the top three predictive factors in the MLP model, with coma state exerting the most contribution.
Compared with other methods, the MLP model with initial vital signs demonstrated optimal prediction accuracy, highlighting its potential to enhance clinical decision-making in triage in the EDs.
在急诊科快速准确地识别高危患者对于优化资源分配和改善患者预后至关重要。本研究旨在开发一种利用初始生命体征测量来识别急诊科高危患者的早期预测模型。
这项回顾性队列研究分析了中国急诊分诊、评估和治疗(CETAT)数据库中2020年1月1日至2023年6月25日期间收集的初始生命体征。主要结局是识别需要立即治疗的高危患者。评估了各种机器学习方法,包括基于深度学习的多层感知器(MLP)分类器。使用受试者操作特征曲线下面积(AUC-ROC)评估模型性能。报告了三种情况下的AUC-ROC值:默认情况、灵敏度大于0.8的情况(情况I)和特异性大于0.8的情况(情况II)。计算SHAP值以确定MLP模型中每个预测因子的重要性。
共分析了38797例患者,其中18.2%被确定为高危患者。对高危患者预测模型的比较分析显示,AUC-ROC值在0.717至0.738之间,MLP模型优于逻辑回归(LR)、高斯朴素贝叶斯(GNB)和国家早期预警评分(NEWS)。SHAP值分析确定昏迷状态、外周毛细血管血氧饱和度(SpO)和收缩压是MLP模型中的前三个预测因素,昏迷状态贡献最大。
与其他方法相比,具有初始生命体征的MLP模型显示出最佳的预测准确性,突出了其在急诊科分诊中增强临床决策的潜力。