Weller Joconde, Gutton Johann, Hocquet Guillaume, Pellet Leïla, Aroulanda Marie-José, Bruandet Amélie, Theis Didier, Boudis Fabio, Cador Romain, Zweigenbaum Pierre, Buronfosse Anne, de Groote Pascal, Komajda Michel
Direction of Medical Information, Prospects and Data Sciences, Hôpitaux Paris Saint-Joseph and Marie-Lannelongue, Paris, France.
Department of Cardiology, Hôpital Paris Saint-Joseph, Paris, France.
ESC Heart Fail. 2025 Jun;12(3):2200-2209. doi: 10.1002/ehf2.15244. Epub 2025 Feb 13.
Mortality risk after hospitalization for heart failure (HF) is high, especially in the first 90 days. This study aimed to construct a model automatically predicting 90 day post-discharge mortality using electronic health record (EHR) data 48 h after admission and artificial intelligence.
All HF-related admissions from 2015 to 2020 in a single hospital were included in the model training. Comprehensive EHR data were collected 48 h after admission. Natural language processing was applied to textual information. Deaths were identified from the French national database. After variable selection with least absolute shrinkage and selection operator, a logistic regression model was trained. Model performance [area under the receiver operating characteristic curve (AUC)] was tested in two independent cohorts of patients admitted to two hospitals between March and December 2021.
The derivation cohort included 2257 admissions (248 deaths after hospitalization). The evaluation cohorts included 348 and 388 admissions (34 and 38 deaths, respectively). Forty-two independent variables were selected. The model performed well in the derivation cohort [AUC: 0.817; 95% confidence interval (CI) (0.789-0.845)] and in both evaluation cohorts [AUC: 0.750; 95% CI (0.672-0.829) and AUC: 0.723; 95% CI (0.644-0.803]), with better performance than previous models in the literature. Calibration was good: 'low-risk' (predicted mortality ≤8%), 'intermediate-risk' (8-12.5%) and 'high-risk' (>12.5%) patients had an observed 90 day mortality rate of 3.8%, 8.4% and 19.4%, respectively.
The study proposed a robust model for the automatic prediction of 90 day mortality risk 48 h after hospitalization for decompensated HF. This could be used to identify high-risk patients for intensification of therapeutic management.
心力衰竭(HF)住院后的死亡风险很高,尤其是在最初的90天内。本研究旨在构建一个模型,利用入院48小时后的电子健康记录(EHR)数据和人工智能自动预测出院后90天的死亡率。
将2015年至2020年在一家医院的所有HF相关入院病例纳入模型训练。入院48小时后收集全面的EHR数据。对文本信息应用自然语言处理。从法国国家数据库中识别死亡病例。在使用最小绝对收缩和选择算子进行变量选择后,训练了一个逻辑回归模型。在2021年3月至12月期间入住两家医院的两个独立患者队列中测试了模型性能[受试者操作特征曲线下面积(AUC)]。
推导队列包括2257例入院病例(住院后248例死亡)。评估队列包括348例和388例入院病例(分别为34例和38例死亡)。选择了42个独立变量。该模型在推导队列中表现良好[AUC:0.817;95%置信区间(CI)(0.789 - 0.845)],在两个评估队列中也表现良好[AUC:0.750;95%CI(0.672 - 0.829)和AUC:0.723;95%CI(0.644 - 0.803)],性能优于文献中先前的模型。校准良好:“低风险”(预测死亡率≤8%)、“中风险”(8 - 12.5%)和“高风险”(>12.5%)患者的90天观察死亡率分别为3.8%、8.4%和19.4%。
该研究提出了一个强大的模型,用于自动预测失代偿性HF住院48小时后90天的死亡风险。这可用于识别高风险患者以加强治疗管理。