Youjiang Medical University for Nationalities, Baise, China.
Baise People's Hospital, Baise, China.
Medicine (Baltimore). 2024 Apr 5;103(14):e37634. doi: 10.1097/MD.0000000000037634.
The incidence of sepsis-induced coagulopathy (SIC) is high, leading to increased mortality rates and prolonged hospitalization and intensive care unit (ICU) stays. Early identification of SIC patients at risk of in-hospital mortality can improve patient prognosis. The objective of this study is to develop and validate machine learning (ML) models to dynamically predict in-hospital mortality risk in SIC patients. A ML model is established based on the Medical Information Mart for Intensive Care IV (MIMIC-IV) database to predict in-hospital mortality in SIC patients. Utilizing univariate feature selection for feature screening. The optimal model was determined by calculating the area under the curve (AUC) with a 95% confidence interval (CI). The optimal model was interpreted using Shapley Additive Explanation (SHAP) values. Among the 3112 SIC patients included in MIMIC-IV, a total of 757 (25%) patients experienced mortality during their ICU stay. Univariate feature selection helps us to pick out the 20 most critical variables from the original feature. Among the 10 developed machine learning models, the stacking ensemble model exhibited the highest AUC (0.795, 95% CI: 0.763-0.827). Anion gap and age emerged as the most significant features for predicting the mortality risk in SIC. In this study, an ML model was constructed that exhibited excellent performance in predicting in-hospital mortality risk in SIC patients. Specifically, the stacking ensemble model demonstrated superior predictive ability.
脓毒症相关性凝血障碍(SIC)的发病率很高,导致死亡率增加,住院时间和重症监护病房(ICU)停留时间延长。早期识别有院内死亡风险的 SIC 患者可以改善患者预后。本研究的目的是开发和验证机器学习(ML)模型,以动态预测 SIC 患者的院内死亡风险。基于医疗信息监护 IV (MIMIC-IV)数据库建立了一个 ML 模型,以预测 SIC 患者的院内死亡率。利用单变量特征选择进行特征筛选。通过计算 95%置信区间(CI)的曲线下面积(AUC)来确定最优模型。利用 Shapley Additive Explanation(SHAP)值对最优模型进行解释。在 MIMIC-IV 中纳入的 3112 例 SIC 患者中,共有 757 例(25%)患者在 ICU 期间死亡。单变量特征选择有助于我们从原始特征中挑选出 20 个最重要的变量。在所开发的 10 种机器学习模型中,堆叠集成模型表现出最高的 AUC(0.795,95%CI:0.763-0.827)。阴离子间隙和年龄是预测 SIC 患者死亡风险的最重要特征。在这项研究中,构建了一个 ML 模型,该模型在预测 SIC 患者的院内死亡风险方面表现出优异的性能。具体来说,堆叠集成模型表现出了卓越的预测能力。