Gupta Mohit D, Goyal Dixit, Kunal Shekhar, Shetty Manu Kumar, Girish M P, Batra Vishal, Bansal Ankit, Mishra Prashant, Shukla Mansavi, Kohli Vanshika, Chadha Akul, Fatima Arisha, Muduli Subrat, Gupta Anubha, Yusuf Jamal
Department of Cardiology, Govind Ballabh Pant Institute of Post Graduate Medical Education and Research, Delhi, India.
Department of Cardiology, Govind Ballabh Pant Institute of Post Graduate Medical Education and Research, Delhi, India.
Indian Heart J. 2025 May-Jun;77(3):133-141. doi: 10.1016/j.ihj.2025.03.010. Epub 2025 Mar 27.
Risk stratification is an integral component of ST-segment-elevation myocardial infarction (STEMI) management practices. This study aimed to derive a machine learning (ML) model for risk stratification and identification of factors associated with in-hospital and 30-day mortality in patients with STEMI and compare it with traditional TIMI score.
This was a single center prospective study wherein subjects >18 years with STEMI (n = 1700) were enrolled. Patients were divided into two groups: training (n = 1360) and validation dataset (n = 340). Six ML algorithms (Extra Tree, Random Forest, Multiple Perceptron, CatBoost, Logistic Regression and XGBoost) were used to train and tune the ML model and to determine the predictors of worse outcomes using feature selection. Additionally, the performance of ML models both for in-hospital and 30-day outcomes was compared to that of TIMI score.
Of the 1700 patients, 168 (9.88 %) had in-hospital mortality while 30-day mortality was reported in 210 (12.35 %) subjects. In terms of in-hospital mortality, Random Forest ML model (sensitivity: 80 %; specificity: 74 %; AUC: 80.83 %) outperformed the TIMI score (sensitivity: 70 %; specificity: 64 %; AUC:70.7 %). Similarly, Random Forest ML model (sensitivity: 81.63 %; specificity: 78.35 %; AUC: 78.29 %) had better performance as compared to TIMI score (sensitivity: 63.26 %; specificity: 63.91 %; AUC: 63.59 %) for 30-day mortality. Key predictors for worse outcomes at 30-days included mitral regurgitation on presentation, smoking, cardiogenic shock, diabetes, ventricular septal rupture, Killip class, age, female gender, low blood pressure and low ejection fraction.
ML model outperformed the traditional regression based TIMI score as a risk stratification tool in patients with STEMI.
风险分层是ST段抬高型心肌梗死(STEMI)管理实践的一个重要组成部分。本研究旨在推导一个用于风险分层和识别STEMI患者院内及30天死亡率相关因素的机器学习(ML)模型,并将其与传统的TIMI评分进行比较。
这是一项单中心前瞻性研究,纳入了年龄>18岁的STEMI患者(n = 1700)。患者被分为两组:训练组(n = 1360)和验证数据集(n = 340)。使用六种ML算法(Extra Tree、随机森林、多层感知器、CatBoost、逻辑回归和XGBoost)来训练和调整ML模型,并通过特征选择确定预后较差的预测因素。此外,将ML模型在院内和30天结局方面的表现与TIMI评分的表现进行比较。
在1700例患者中,168例(9.88%)有院内死亡,210例(12.35%)患者有30天死亡。就院内死亡率而言,随机森林ML模型(敏感性:80%;特异性:74%;AUC:80.83%)优于TIMI评分(敏感性:70%;特异性:64%;AUC:70.7%)。同样,对于30天死亡率,随机森林ML模型(敏感性:81.63%;特异性:78.35%;AUC:78.29%)比TIMI评分(敏感性:63.26%;特异性:63.91%;AUC:63.59%)表现更好。30天时预后较差的关键预测因素包括就诊时二尖瓣反流、吸烟、心源性休克、糖尿病、室间隔破裂、Killip分级、年龄、女性、低血压和低射血分数。
在STEMI患者中,作为一种风险分层工具,ML模型优于基于传统回归的TIMI评分。