Lei Chuang, Ding Zhixiang, Wang Qinghai, Tao Shanqing, Zhou Qin, Yin Pengfei, Luo Yanhong, Yang Fan, Chen Xingtong, Cai Yang, Gong Hainan, Li Dehui, Li Hao
Department of Infectious Diseases, Changde Hospital, Xiangya School of Medicine, Central South University (The First People's Hospital of Changde City), Changde, China.
Intensive Care Unit, Changde Hospital, Xiangya School of Medicine, Central South University (The First People's Hospital of Changde City), Changde, China.
Clin Exp Med. 2025 Jun 11;25(1):198. doi: 10.1007/s10238-025-01744-6.
To develop and validate a machine learning prediction model for 28-day all-cause mortality in patients with alcoholic cirrhosis using data from the MIMIC-IV database. The data of 2134 patients diagnosed with alcoholic cirrhosis (AC) were obtained from Medical Information Mart for Intensive Care IV database. Machine learning algorithms, including decision trees, random forests, extreme gradient boosting, Logistic Regression and support vector machines were employed to develop the prediction model. The model was trained on 70% of the data and validated on the remaining 30% randomly. Performance was assessed using the area under the receiver operating characteristic curve, calibration curves and decision curve analysis (DCA). SHAP analysis was used to assess the marginal effects of each independent variable. The mean age was 56.2 years, and 69.5% were male. The primary factors associated with 28-day mortality included Age, SOFA score, ASPIII score, OASIS score, LODS score, Temperature, Chloride, Lactate, Total bilirubin (Tbil), international normalized ratio (INR), Activated partial thromboplastin time (Aptt), Stroke, Malignancy, Congenital coagulation defect (Ccd). The machine learning model demonstrated good predictive performance in the training and validation group, higher than traditional MELD score. Our machine learning prediction model effectively identifies patients with alcoholic cirrhosis at high risk of 28-day mortality. This model could assist clinicians in early risk stratification and guide clinical decision-making. Further validation in external cohorts is warranted to confirm its generalizability.
利用多中心重症医学信息数据库(MIMIC-IV)的数据,开发并验证用于预测酒精性肝硬化患者28天全因死亡率的机器学习预测模型。从多中心重症医学信息数据库IV中获取了2134例确诊为酒精性肝硬化(AC)患者的数据。采用包括决策树、随机森林、极限梯度提升、逻辑回归和支持向量机在内的机器学习算法来开发预测模型。该模型在70%的数据上进行训练,并在其余30%的数据上进行随机验证。使用受试者工作特征曲线下面积、校准曲线和决策曲线分析(DCA)来评估模型性能。采用SHAP分析评估各独立变量的边际效应。患者的平均年龄为56.2岁,男性占69.5%。与28天死亡率相关的主要因素包括年龄、序贯器官衰竭评估(SOFA)评分、急性生理和慢性健康状况评分系统III(ASPIII)评分、器官功能障碍评分系统(OASIS)评分、肝脏疾病严重程度评分(LODS)、体温、氯化物、乳酸、总胆红素(Tbil)、国际标准化比值(INR)、活化部分凝血活酶时间(Aptt)、中风、恶性肿瘤、先天性凝血缺陷(Ccd)。该机器学习模型在训练组和验证组中均表现出良好的预测性能,高于传统的终末期肝病模型(MELD)评分。我们的机器学习预测模型能够有效识别28天死亡率高风险的酒精性肝硬化患者。该模型可协助临床医生进行早期风险分层并指导临床决策。有必要在外部队列中进一步验证以确认其可推广性。