Wang Shuai, Tao Sichen, Zhu Ying, Gu Qiao, Ni Peifeng, Zhang Weidong, Wu Chenxi, Zhao Ruihan, Hu Wei, Diao Mengyuan
Department of Critical Care, Affiliated Hangzhou First People's Hospital, School of Medicine, Westlake University, Hangzhou, 310006, China.
Faculty of Engineering, University of Toyama, Toyama-shi, 930-8555, Japan.
Sci Rep. 2025 Mar 26;15(1):10362. doi: 10.1038/s41598-025-94734-3.
Veno-arterial extracorporeal membrane oxygenation (VA-ECMO) is a critical life support technology for severely ill patients. Despite its benefits, patients face high costs and significant mortality risks. To improve clinical decision-making, this study aims to develop a non-invasive, efficient artificial intelligence (AI)-enabled model to predict the risk of mortality within 28 days post-weaning from VA-ECMO. A multicenter, retrospective cohort study was conducted across five hospitals in China, including all the patients who received VA-ECMO support between January 2020 and January 2024. Based on the innovatively selected 25 easily obtainable patient examination features as potentially relevant, this study involved developing ten predictive models using both classical and advanced machine learning techniques. The model's performance is evaluated using various statistical metrics and the optimal predictive model are identified. Feature correlations are analyzed using Pearson correlation coefficients, and SHapley Additive exPlanations (SHAP) are employed to interpret feature importance. Decision curve analysis is used to evaluate the clinical utility of the predictive models. The study included 225 patients, with 66 patients from one hospital forming the training cohort. Three validation cohorts were used: internal validation with 16 patients from the training hospital and external validation with 30 and 60 patients from the other 4 hospitals. The random forest model emerged as the best predictor of 28-day mortality, achieving an AUROC of 1.00 in the training cohort and 1.00, 0.97, and 0.93 in the three validation cohorts, respectively. Despite the limited training data, the developed model, eCMoML, demonstrated high accuracy, generalizability and reliability. The model will be available online for immediate use by clinicians. The eCMoML model, validated in a multicenter cohort study, offers a rapid, stable, and accurate tool for predicting 28-day mortality post-VA-ECMO weaning. It has the potential to significantly enhance clinical decision-making, helping doctors better assess patient prognosis, optimize treatment plans, and improve survival rates.
静脉-动脉体外膜肺氧合(VA-ECMO)是一项用于重症患者的关键生命支持技术。尽管它有诸多益处,但患者面临高昂的费用和显著的死亡风险。为了改善临床决策,本研究旨在开发一种非侵入性、高效的人工智能(AI)模型,以预测VA-ECMO撤机后28天内的死亡风险。在中国的五家医院开展了一项多中心回顾性队列研究,纳入了2020年1月至2024年1月期间所有接受VA-ECMO支持的患者。基于创新性地选择的25个易于获取的患者检查特征作为潜在相关因素,本研究使用经典和先进的机器学习技术开发了十个预测模型。使用各种统计指标评估模型性能,并确定最佳预测模型。使用Pearson相关系数分析特征相关性,并采用SHapley加性解释(SHAP)来解释特征重要性。决策曲线分析用于评估预测模型的临床实用性。该研究纳入了225名患者,其中一家医院的66名患者组成训练队列。使用了三个验证队列:来自训练医院的16名患者进行内部验证,来自其他4家医院的30名和60名患者进行外部验证。随机森林模型成为28天死亡率的最佳预测模型,在训练队列中的曲线下面积(AUROC)为1.00,在三个验证队列中分别为1.00、0.97和0.93。尽管训练数据有限,但开发的模型eCMoML表现出了高准确性、可推广性和可靠性。该模型将在线提供,供临床医生即时使用。在多中心队列研究中得到验证的eCMoML模型,为预测VA-ECMO撤机后28天死亡率提供了一种快速、稳定且准确的工具。它有潜力显著改善临床决策,帮助医生更好地评估患者预后、优化治疗方案并提高生存率。