DeepBoost-AF: A Novel Unsupervised Feature Learning and Gradient Boosting Fusion for Robust Atrial Fibrillation Detection in Raw ECG Signals
Journal:
arXiv
Published Date:
May 30, 2025
Abstract
Atrial fibrillation (AF) is a prevalent cardiac arrhythmia associated with
elevated health risks, where timely detection is pivotal for mitigating
stroke-related morbidity. This study introduces an innovative hybrid
methodology integrating unsupervised deep learning and gradient boosting models
to improve AF detection. A 19-layer deep convolutional autoencoder (DCAE) is
coupled with three boosting classifiers-AdaBoost, XGBoost, and LightGBM
(LGBM)-to harness their complementary advantages while addressing individual
limitations. The proposed framework uniquely combines DCAE with gradient
boosting, enabling end-to-end AF identification devoid of manual feature
extraction. The DCAE-LGBM model attains an F1-score of 95.20%, sensitivity of
99.99%, and inference latency of four seconds, outperforming existing methods
and aligning with clinical deployment requirements. The DCAE integration
significantly enhances boosting models, positioning this hybrid system as a
reliable tool for automated AF detection in clinical settings.