Xu Guowu, Niu Yanxiang, Chen Xin, Zhou Wenjing, Halidan Abudou, Jin Heng, Wang Jinxiang
Department of Emergency Medicine, Tianjin Medical University General Hospital, Tianjin 300052, China.
Institute of Disaster and Emergency Medicine, Tianjin University, Tianjin 300072, China.
Zhonghua Wei Zhong Bing Ji Jiu Yi Xue. 2025 Jun;37(6):560-567. doi: 10.3760/cma.j.cn121430-20240409-00322.
To develop and compare risk prediction models for in-hospital post-cardiac arrest brain injury (PCABI) in critically ill patients using nomograms and random forest algorithms, aiming to identify the optimal model for early identification of high-risk PCABI patients and providing evidence for precise treatment.
A retrospective cohort study was used to collect the first-time in-hospital cardiac arrest (IHCA) patients admitted to the intensive care unit (ICU) from 2008 to 2019 in the Medical Information Mart for Intensive Care-IV (MIMIC-IV) as the study population, and the patients' age, gender, body mass, health insurance utilization, first vital signs and laboratory tests within 24 hours of ICU admission, mechanical ventilation, and critical care scores were extracted. Independent influencing factors of PCABI were identified through univariate and multivariate Logistic regression analyses. The included patients were randomly divided into a training cohort and an internal validation cohort in a 7:3 ratio, and the PCABI risk prediction model was constructed by the nomogram and random forest algorithm, respectively, and the model was evaluated by receiver operator characteristic curve (ROC curve), the calibration curve, and the decision curve analysis (DCA), and after the better model was selected, 179 patients admitted to Tianjin Medical University General Hospital as the external validation cohort for external evaluation were collected by using the same inclusion and exclusion criteria.
A total of 1 419 patients with without traumatic brain injury who had their first-time IHCA were enrolled, including 995 in the training cohort (including 176 PCABI and 819 non-PCABI) and 424 in the internal validation cohort (including 74 PCABI and 350 non-PCABI). Univariate and multivariate analysis showed that age, potassium, urea nitrogen, sequential organ failure assessment (SOFA), acute physiology and chronic health evaluation III (APACHE III), and mechanical ventilation were independent influences on the occurrence of PCABI in patients with IHCA (all P < 0.05). Combining the above variables, we constructed a nomogram model and a random forest model for comparison, and the results show that the nomogram model has better predictive efficacy than the random forest model [nomogram model: area under the ROC curve (AUC) of the training cohort = 0.776, with a 95% credible interval (95%CI) of 0.741-0.811; internal validation cohort AUC = 0.776, with a 95%CI of 0.718-0.833; random forest model: AUC = 0.720, with a 95%CI of 0.653-0.787], and they performed similarly in terms of calibration curves, but the nomogram performed better in terms of decision curve analysis (DCA); at the same time, the nomogram model was robust in terms of external validation cohort (external validation cohort AUC = 0.784, 95%CI was 0.692-0.876).
A nomogram risk prediction model for the occurrence of PCABI in critically ill patients was successfully constructed, which performs better than the random forest model, helps clinicians to identify the risk of PCABI in critically ill patients at an early stage and provides a theoretical basis for early intervention.
使用列线图和随机森林算法开发并比较危重症患者院内心脏骤停后脑损伤(PCABI)的风险预测模型,旨在确定用于早期识别PCABI高危患者的最佳模型,并为精准治疗提供依据。
采用回顾性队列研究,收集2008年至2019年入住重症监护病房(ICU)的首次院内心脏骤停(IHCA)患者作为研究人群,这些患者来自重症监护医学信息集市IV(MIMIC-IV),提取患者的年龄、性别、体重、医疗保险使用情况、入住ICU后24小时内的首次生命体征和实验室检查结果、机械通气情况以及重症监护评分。通过单因素和多因素Logistic回归分析确定PCABI的独立影响因素。将纳入的患者按7:3的比例随机分为训练队列和内部验证队列,分别采用列线图和随机森林算法构建PCABI风险预测模型,并通过受试者工作特征曲线(ROC曲线)、校准曲线和决策曲线分析(DCA)对模型进行评估,在选择出较好的模型后,采用相同的纳入和排除标准收集179例入住天津医科大学总医院的患者作为外部验证队列进行外部评估。
共纳入1419例无创伤性脑损伤的首次IHCA患者,其中训练队列995例(包括176例PCABI和819例非PCABI),内部验证队列424例(包括74例PCABI和350例非PCABI)。单因素和多因素分析显示,年龄、血钾、尿素氮、序贯器官衰竭评估(SOFA)、急性生理与慢性健康状况评估III(APACHE III)以及机械通气是IHCA患者发生PCABI的独立影响因素(均P<0.05)。结合上述变量,构建列线图模型和随机森林模型进行比较,结果显示列线图模型的预测效能优于随机森林模型[列线图模型:训练队列ROC曲线下面积(AUC)=0.776,95%可信区间(95%CI)为0.741-0.811;内部验证队列AUC=0.776,95%CI为0.718-0.833;随机森林模型:AUC=0.720,95%CI为0.653-0.787],二者在校准曲线上表现相似,但在决策曲线分析(DCA)方面列线图表现更好;同时,列线图模型在外部验证队列中表现稳健(外部验证队列AUC=0.784,95%CI为0.692-0.876)。
成功构建了危重症患者PCABI发生的列线图风险预测模型,其表现优于随机森林模型,有助于临床医生早期识别危重症患者的PCABI风险,并为早期干预提供理论依据。