CardioPatternFormer: Pattern-Guided Attention for Interpretable ECG Classification with Transformer Architecture
Journal:
arXiv
Published Date:
May 26, 2025
Abstract
Accurate ECG interpretation is vital, yet complex cardiac data and
"black-box" AI models limit clinical utility. Inspired by Transformer
architectures' success in NLP for understanding sequential data, we frame ECG
as the heart's unique "language" of temporal patterns. We present
CardioPatternFormer, a novel Transformer-based model for interpretable ECG
classification. It employs a sophisticated attention mechanism to precisely
identify and classify diverse cardiac patterns, excelling at discerning subtle
anomalies and distinguishing multiple co-occurring conditions. This
pattern-guided attention provides clear insights by highlighting influential
signal regions, effectively allowing the "heart to talk" through transparent
interpretations. CardioPatternFormer demonstrates robust performance on
challenging ECGs, including complex multi-pathology cases. Its interpretability
via attention maps enables clinicians to understand the model's rationale,
fostering trust and aiding informed diagnostic decisions. This work offers a
powerful, transparent solution for advanced ECG analysis, paving the way for
more reliable and clinically actionable AI in cardiology.