Department of Cardiac Surgery The First Affiliated Hospital of Sun Yat-sen University Guangzhou P. R. China.
School of Computer Science and Technology Xidian University Xi'an P. R. China.
J Am Heart Assoc. 2022 Jun 7;11(11):e025433. doi: 10.1161/JAHA.122.025433. Epub 2022 Jun 3.
Background The early mortality after surgery for infective endocarditis is high. Although risk models help identify patients at high risk, most current scoring systems are inaccurate or inconvenient. The objective of this study was to construct an accurate and easy-to-use prediction model to identify patients at high risk of early mortality after surgery for infective endocarditis. Methods and Results A total of 476 consecutive patients with infective endocarditis who underwent surgery at 2 centers were included. The development cohort consisted of 276 patients. Eight variables were selected from 89 potential predictors as input of the XGBoost model to train the prediction model, including platelet count, serum albumin, current heart failure, urine occult blood ≥(++), diastolic dysfunction, multiple valve involvement, tricuspid valve involvement, and vegetation >10 mm. The completed prediction model was tested in 2 separate cohorts for internal and external validation. The internal test cohort consisted of 125 patients independent of the development cohort, and the external test cohort consisted of 75 patients from another center. In the internal test cohort, the area under the curve was 0.813 (95% CI, 0.670-0.933) and in the external test cohort the area under the curve was 0.812 (95% CI, 0.606-0.956). The area under the curve was significantly higher than that of other ensemble learning models, logistic regression model, and European System for Cardiac Operative Risk Evaluation II (all, <0.01). This model was used to develop an online, open-access calculator (http://42.240.140.58:1808/). Conclusions We constructed and validated an accurate and robust machine learning-based risk model to predict early mortality after surgery for infective endocarditis, which may help clinical decision-making and improve outcomes.
感染性心内膜炎手术后的早期死亡率较高。尽管风险模型有助于识别高危患者,但大多数当前的评分系统不准确或不方便。本研究旨在构建一种准确且易于使用的预测模型,以识别感染性心内膜炎手术后早期死亡风险较高的患者。
共纳入 2 个中心的 476 例连续感染性心内膜炎手术患者。发展队列由 276 例患者组成。从 89 个潜在预测因子中选择 8 个变量作为 XGBoost 模型的输入,以训练预测模型,包括血小板计数、血清白蛋白、当前心力衰竭、尿潜血≥(++)、舒张功能障碍、多瓣膜受累、三尖瓣受累和>10mm 的赘生物。已完成的预测模型在 2 个独立的队列中进行内部和外部验证。内部测试队列由 125 例独立于发展队列的患者组成,外部测试队列由另一个中心的 75 例患者组成。在内部测试队列中,曲线下面积为 0.813(95%CI,0.670-0.933),外部测试队列中曲线下面积为 0.812(95%CI,0.606-0.956)。曲线下面积显著高于其他集成学习模型、逻辑回归模型和欧洲心脏手术风险评估系统 II(均<0.01)。该模型用于开发在线、开放获取的计算器(http://42.240.140.58:1808/)。
我们构建并验证了一种准确且强大的基于机器学习的风险模型,以预测感染性心内膜炎手术后的早期死亡率,这可能有助于临床决策并改善预后。