The XGBoost model demonstrated a predictive performance with an AUC of 0.724 for type 4b acute myocardial infarction induced by very late stent thrombosis.
Cohort (n=519)
No
Can machine learning models accurately predict type 4b acute myocardial infarction induced by very late stent thrombosis in patients with prior stent implantation?
An XGBoost-based machine learning model can moderately predict the occurrence of very late stent thrombosis-induced type 4b AMI in patients with prior stent implantation.
Effect estimate: null (95% CI 0.640-0.809)
p-value: p=null
To analyze the risk factors for type 4b acute myocardial infarction (AMI) caused by very late stent thrombosis (VLST) and develop a predictive model using machine learning techniques. Patients who had a history of coronary stent implantation and developed AMI more than 1 year later, and had undergone coronary angiography were included. Based on the presence of VLST on coronary angiography, patients were classified into the VLST-4b-AMI group and the de novo AMI group. Data including the first coronary stent implantation, drug treatment, baseline hospitalization data, and coronary angiographic findings were collected and compared between the two groups. Logistic regression and Lasso machine learning were used to identify risk factors for VLST-4b-AMI, and a predictive model was developed using machine learning techniques, followed by performance evaluation. Univariate logistic regression analysis identified risk factors and protective factors for VLST-4b-AMI. Lasso regression selected 12 variables closely associated with VLST-4b-AMI occurrence. Based on these risk factors, predictive models were developed using eXtreme Gradient Boosting (XGBoost), support vector machine (SVM), random forest (RF), and k-nearest neighbors (KNN). The XGBoost model demonstrated the best predictive performance (AUC = 0.724, 95% CI: 0.640–0.809), followed by KNN (AUC = 0.698, 95% CI: 0.614–0.783), and RF (AUC = 0.669, 95% CI: 0.574–0.763). SVM had the lowest performance (AUC = 0.641, 95% CI: 0.547–0.736). The XGBoost-based machine learning model showed the best predictive performance for VLST-4b-AMI, offering a promising tool for early prediction of this high-risk type of AMI.
Li et al. (Sat,) conducted a cohort in type 4b acute myocardial infarction (n=519). The XGBoost model demonstrated a predictive performance with an AUC of 0.724 for type 4b acute myocardial infarction induced by very late stent thrombosis.