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Analysis

This paper addresses the vulnerability of deep learning models for ECG diagnosis to adversarial attacks, particularly those mimicking biological morphology. It proposes a novel approach, Causal Physiological Representation Learning (CPR), to improve robustness without sacrificing efficiency. The core idea is to leverage a Structural Causal Model (SCM) to disentangle invariant pathological features from non-causal artifacts, leading to more robust and interpretable ECG analysis.
Reference

CPR achieves an F1 score of 0.632 under SAP attacks, surpassing Median Smoothing (0.541 F1) by 9.1%.