Title of article :
Clinical Feature-Based Machine Learning Model for 1-Year Mortality Risk Prediction of ST-Segment Elevation Myocardial Infarction in Patients with Hyperuricemia: A Retrospective Study
Author/Authors :
Bai, Zhixun Department of Cardiology - Affiliated Hospital of Zunyi Medical University - Zunyi, China , Lu, Jing Department of Pathology - Zunyi Medical and Pharmaceutical College - Zunyi, China , Li, Ting Department of Cardiology - Affiliated Hospital of Zunyi Medical University - Zunyi, China , Ma, Yi Department of Cardiology - Affiliated Hospital of Zunyi Medical University - Zunyi, China , Liu, Zhijiang Department of Cardiology - Affiliated Hospital of Zunyi Medical University - Zunyi, China , Zhao, Ranzun Department of Cardiology - Affiliated Hospital of Zunyi Medical University - Zunyi, China , Wang, Zhenglong Department of Cardiology - Affiliated Hospital of Zunyi Medical University - Zunyi, China , Shi, Bei Department of Cardiology - Affiliated Hospital of Zunyi Medical University - Zunyi, China
Abstract :
Accurate risk assessment of high-risk patients is essential in clinical practice. However, there is no practical method to predict or
monitor the prognosis of patients with ST-segment elevation myocardial infarction (STEMI) complicated by hyperuricemia. We
aimed to evaluate the performance of different machine learning models for the prediction of 1-year mortality in STEMI
patients with hyperuricemia. We compared five machine learning models (logistic regression, k-nearest neighbor, CatBoost,
random forest, and XGBoost) with the traditional global (GRACE) risk score for acute coronary event registrations. We
registered patients aged >18 years diagnosed with STEMI and hyperuricemia at the Affiliated Hospital of Zunyi Medical
University between January 2016 and January 2020. Overall, 656 patients were enrolled (average age, 62:5 ± 13:6 years; 83.6%,
male). All patients underwent emergency percutaneous coronary intervention. We evaluated the performance of five machine
learning classifiers and the GRACE risk model in predicting 1-year mortality. The area under the curve (AUC) of the six
models, including the GRACE risk model, ranged from 0.75 to 0.88. Among all the models, CatBoost had the highest predictive
accuracy (0.89), AUC (0.87), precision (0.84), and F1 value (0.44). After hybrid sampling technique optimization, CatBoost had
the highest accuracy (0.96), AUC (0.99), precision (0.95), and F1 value (0.97). Machine learning algorithms, especially the
CatBoost model, can accurately predict the mortality associated with STEMI complicated by hyperuricemia after a 1-year
follow-up.
Keywords :
ST-Segment , Hyperuricemia , GRACE , STEMI
Journal title :
Computational and Mathematical Methods in Medicine