可解释性
医学
心房颤动
导管消融
结果(博弈论)
队列
窦性心律
内科学
烧蚀
机器学习
心脏病学
预测建模
临床预测规则
随机森林
人工智能
临床试验
选择(遗传算法)
队列研究
心脏消融
体质指数
特征选择
外科
试验预测值
前瞻性队列研究
作者
Matteo Anselmino,Stefano Bianchi,Raffele De Lucia,Claudio Tondo,Saverio Iacopino,Francesco Solimene,A Rossillo,Matteo Bertini,Sakis Themistoclakis,Ilaria Meynet,Maurizio Russo,Antonio Dello Russo,Gianluca Zingarini,Stefano Bandino,Mario Volpicelli,Pietro Rossi,Lorenzo Bianchini,Vincenzo Schillaci,Antonio De Simone,Marco Scaglione
出处
期刊:Europace
[Oxford University Press]
日期:2026-03-18
卷期号:28 (5)
被引量:1
标识
DOI:10.1093/europace/euag053
摘要
BACKGROUND: Despite being the most effective option for maintaining sinus rhythm, atrial fibrillation (AF) catheter ablation reaches few patients. For this reason, identifying candidates with the highest likelihood of success or individualizing counselling to a specific patient to improve procedural outcome could enhance clinical benefits and cost-effectiveness. OBJECTIVE: To integrate machine learning (ML) into an outcome prediction model based on a large cohort of AF patients undergoing pulsed field ablation (PFA). METHODS: Consecutive AF patients undergoing transcatheter PFA between June 2022 and December 2024 were prospectively enrolled in the ATHENA registry. All procedures were performed with a penta-splines 12F over-the-wire PFA catheter (FARAWAVE™, Boston Scientific). Clinical and procedural variables were collected to train five predictive models estimating 1 year arrhythmic recurrence; model interpretability was assessed using SHAP (SHapley Additive exPlanations) analysis. RESULTS: The study included 1688 AF patients with a median follow-up of 365 days (interquartile range 202-393), arrhythmic recurrence occurred in 314 patients (18.6%). The Boruta algorithm identified diagnosis-to-ablation time (DAT), CHA₂DS₂-VASc score, age, and body mass index (BMI) as most significant predictors. Among the five ML models developed to predict 1 year arrhythmic recurrence probability, Random Forest achieved the best performance (AUC = 0.75, 95% CI 0.69-0.82). SHAP analysis confirmed DAT, BMI, and indexed left atrial volume as major contributors to recurrence. CONCLUSION: This is the first ML model exclusively trained and validated on AF patients undergoing PFA providing actionable insights for personalized treatment planning. Routine use of the model holds the potential to optimize patient selection and improve procedural outcome, supporting individualized counselling and outcome-driven care pathways, moving from static to interactive risk prediction. CLINICAL TRIAL REGISTRATION: Advanced TecHnologies For SuccEssful AblatioN of AF in Clinical Practice (ATHENA). URL: http://clinicaltrials.gov/ Identifier: NCT05617456.
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