Zhao Lina, Wang Yunying, Ge Zengzheng, Zhu Huadong, Li Yi
State Key Laboratory of Complex Severe and Rare Diseases, Emergency Department, Peking Union Medical College Hospital, Peking Union Medical College, Chinese Academy of Medical Sciences, Beijing, China.
Department of Critical Care Medicine, Chifeng Municipal Hospital, Inner Mongolia, China.
Front Comput Neurosci. 2021 Nov 16;15:739265. doi: 10.3389/fncom.2021.739265. eCollection 2021.
The study aims to develop a mechanical learning model as a predictive model for predicting the appearance of sepsis-associated encephalopathy (SAE). The prediction model was developed in a primary cohort of 2,028 sepsis patients from June 2001 to October 2012, retrieved from the Medical Information Mart for Intensive Care (MIMIC III) database. Least absolute shrinkage and selection operator (LASSO) regression model was used for data dimension reduction and feature selection. The model was developed using multivariable logistic regression analysis. The performance of the nomogram has been evaluated in terms of calibration, discrimination, and clinical utility. There were nine particular features in septic patients that were significantly associated with SAE. Predictors of individualized prediction nomograms included age, rapid sequential evaluation of organ failure (qSOFA), and drugs including carbapenem antibiotics, quinolone antibiotics, steroids, midazolam, H-antagonist, diphenhydramine hydrochloride, and heparin sodium injection. The area under the curve (AUC) was 0.743, indicating good discrimination. The prediction model showed calibration curves with minor deviations from the ideal predictions. Decision curve analysis (DCA) suggested that the nomogram was clinically useful. We propose a nomogram for the individualized prediction of SAE with satisfactory performance and clinical utility, which could aid the clinician in the early detection and management of SAE.
该研究旨在开发一种机器学习模型,作为预测脓毒症相关性脑病(SAE)出现的预测模型。该预测模型是在2001年6月至2012年10月期间从重症监护医学信息数据库(MIMIC III)中检索的2028例脓毒症患者的原始队列中开发的。采用最小绝对收缩和选择算子(LASSO)回归模型进行数据降维和特征选择。该模型使用多变量逻辑回归分析进行开发。已根据校准、区分度和临床实用性对列线图的性能进行了评估。脓毒症患者中有九个特定特征与SAE显著相关。个体化预测列线图的预测因素包括年龄、器官功能衰竭快速序贯评估(qSOFA)以及包括碳青霉烯类抗生素、喹诺酮类抗生素、类固醇、咪达唑仑、H拮抗剂、盐酸苯海拉明和肝素钠注射液在内的药物。曲线下面积(AUC)为0.743,表明区分度良好。预测模型显示校准曲线与理想预测有微小偏差。决策曲线分析(DCA)表明该列线图具有临床实用性。我们提出了一种用于SAE个体化预测的列线图,其性能和临床实用性令人满意,可帮助临床医生早期检测和管理SAE。