Predicting major adverse cardiovascular and cerebrovascular events in chronic heart failure: a machine learning study

Scritto il 13/06/2026
da Shitao Feng

CONCLUSION: HRR1 and VE/VCO(2) slope can serve as independent predictors for the incidence of MACCE in patients with CHF.

Ann Med. 2026 Dec;58(1):2667587. doi: 10.1080/07853890.2026.2667587. Epub 2026 Jun 12.

ABSTRACT

BACKGROUND: Heart failure (HF) is a clinical syndrome characterized by impaired cardiac diastolic and systolic function due to structural or functional damage to the myocardium. HF represents the end-stage manifestation of many cardiac diseases. Therefore, early identification of high-risk patients is crucial. This study aims to utilize machine learning (ML) methods to develop and validate a model to predict major adverse cardiovascular and cerebrovascular events (MACCE) in patients with HF and identify its key predictive features.

METHODS: This study is a retrospective cohort study. We enrolled a total of 271 patients, who were divided into training and testing sets. Baseline data, including cardiopulmonary exercise testing (CPET) parameters and laboratory tests, were collected for all participants. Based on the presence or absence of MACCE during follow-up, they were categorized into a No-event group and MACCE group. We developed seven ML models to predict the incidence of MACCE in patients with chronic heart failure (CHF) using CPET parameters. The predictive performance of these models was systematically compared, and model interpretability was evaluated using Shapley Additive exPlanations (SHAP). Subsequently, retaining only those with HF with preserved ejection fraction (HFpEF) for a sensitivity analysis. Additionally, a subgroup analysis was conducted between No-event group and Worsening HF (WHF) group.

RESULTS: We used Boruta feature selection, four important predictive features were identified. Among the ML models constructed with these features, the Categorical Boosting (CatBoost) model demonstrated the best performance. SHAP analysis was applied to interpret the optimal model, revealing that lower values of heart rate recovery at 1 min (HRR1), as well as a higher carbon dioxide ventilation equivalent slope (VE/VCO slope), were associated with higher SHAP values-indicating greater importance in predicting adverse outcomes.

CONCLUSION: HRR1 and VE/VCO slope can serve as independent predictors for the incidence of MACCE in patients with CHF.

PMID:42286995 | DOI:10.1080/07853890.2026.2667587