Machine Learning-Predicted Progression to Permanent Atrial Fibrillation After Catheter Ablation

Author:

Park Je-Wook,Kwon Oh-Seok,Shim Jaemin,Hwang Inseok,Kim Yun Gi,Yu Hee Tae,Kim Tae-Hoon,Uhm Jae-Sun,Kim Jong-Youn,Choi Jong Il,Joung Boyoung,Lee Moon-Hyoung,Kim Young-Hoon,Pak Hui-Nam

Abstract

IntroductionWe developed a prediction model for atrial fibrillation (AF) progression and tested whether machine learning (ML) could reproduce the prediction power in an independent cohort using pre-procedural non-invasive variables alone.MethodsCohort 1 included 1,214 patients and cohort 2, 658, and all underwent AF catheter ablation (AFCA). AF progression to permanent AF was defined as sustained AF despite repeat AFCA or cardioversion under antiarrhythmic drugs. We developed a risk stratification model for AF progression (STAAR score) and stratified cohort 1 into three groups. We also developed an ML-prediction model to classify three STAAR risk groups without invasive parameters and validated the risk score in cohort 2.ResultsThe STAAR score consisted of a stroke (2 points, p = 0.003), persistent AF (1 point, p = 0.049), left atrial (LA) dimension ≥43 mm (1 point, p = 0.010), LA voltage <1.109 mV (2 points, p = 0.004), and PR interval ≥196 ms (1 point, p = 0.001), based on multivariate Cox analyses, and it had a good discriminative power for progression to permanent AF [area under curve (AUC) 0.796, 95% confidence interval (CI): 0.753–0.838]. The ML prediction model calculated the risk for AF progression without invasive variables and achieved excellent risk stratification: AUC 0.935 for low-risk groups (score = 0), AUC 0.855 for intermediate-risk groups (score 1–3), and AUC 0.965 for high-risk groups (score ≥ 4) in cohort 1. The ML model successfully predicted the high-risk group for AF progression in cohort 2 (log-rank p < 0.001).ConclusionsThe ML-prediction model successfully classified the high-risk patients who will progress to permanent AF after AFCA without invasive variables but has a limited discrimination power for the intermediate-risk group.

Publisher

Frontiers Media SA

Subject

Cardiology and Cardiovascular Medicine

Cited by 3 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Artificial intelligence in cardiac electrophysiology;Artificial Intelligence in Clinical Practice;2024

2. Artificial Intelligence and Machine Learning in Electrophysiology—a Short Review;Current Treatment Options in Cardiovascular Medicine;2023-09-04

3. The Use of Artificial Intelligence for Detecting and Predicting Atrial Arrhythmias Post Catheter Ablation;Reviews in Cardiovascular Medicine;2023-07-31

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