Diffusion-Based Electrocardiography Noise Quantification via Anomaly Detection
Diffusion-Based Electrocardiography Noise Quantification via Anomaly Detection
Electrocardiography (ECG) signals are often degraded by noise, which complicates diagnosis in clinical and wearable settings. This study proposes a diffusion-based framework for ECG noise quantification via reconstruction-based anomaly detection, addressing annotation inconsistencies and the limited generalizability of conventional methods. We introduce a distributional evaluation using the Wasserstein-1 distance ($W_1$), comparing the reconstruction error distributions between clean and noisy ECGs to mitigate inconsistent annotations. Our final model achieved robust noise quantification using only three reverse diffusion steps. The model recorded a macro-average $W_1$ score of 1.308 across the benchmarks, outperforming the next-best method by over 48%. External validations demonstrated strong generalizability, supporting the exclusion of low-quality segments to enhance diagnostic accuracy and enable timely clinical responses to signal degradation. The proposed method enhances clinical decision-making, diagnostic accuracy, and real-time ECG monitoring capabilities, supporting future advancements in clinical and wearable ECG applications.
Tae-Seong Han、Jae-Wook Heo、Hakseung Kim、Cheol-Hui Lee、Hyub Huh、Eue-Keun Choi、Dong-Joo Kim
医学研究方法临床医学
Tae-Seong Han,Jae-Wook Heo,Hakseung Kim,Cheol-Hui Lee,Hyub Huh,Eue-Keun Choi,Dong-Joo Kim.Diffusion-Based Electrocardiography Noise Quantification via Anomaly Detection[EB/OL].(2025-06-13)[2025-07-02].https://arxiv.org/abs/2506.11815.点此复制
评论