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Main Authors: Xu, Yuhao, Lu, Jiaying, Ding, Sirui, Cao, Defu, Hu, Xiao, Yang, Carl
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.08954
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author Xu, Yuhao
Lu, Jiaying
Ding, Sirui
Cao, Defu
Hu, Xiao
Yang, Carl
author_facet Xu, Yuhao
Lu, Jiaying
Ding, Sirui
Cao, Defu
Hu, Xiao
Yang, Carl
contents In the process of patient diagnosis, non-invasive measurements are widely used due to their low risks and quick results. Electrocardiogram (ECG), as a non-invasive method to collect heart activities, is used to diagnose cardiac conditions. Analyzing the ECG typically requires domain expertise, which is a roadblock to applying artificial intelligence (AI) for healthcare. Through advances in self-supervised learning and foundation models, AI systems can now acquire and leverage domain knowledge without relying solely on human expertise. However, there is a lack of comprehensive analyses over the foundation models' performance on ECG. This study aims to answer the research question: "Are Foundation Models Useful for ECG Analysis?" To address it, we evaluate language/general time-series/ECG foundation models in comparison with time-series deep learning models. The experimental results show that general time-series/ECG foundation models achieve a top performance rate of 80%, indicating their effectiveness in ECG analysis. In-depth analyses and insights are provided along with comprehensive experimental results. This study highlights the limitations and potential of foundation models in advancing physiological waveform analysis. The data and code for this benchmark are publicly available at https://github.com/yuhaoxu99/ECGMultitasks-Benchmark.
format Preprint
id arxiv_https___arxiv_org_abs_2512_08954
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle An Electrocardiogram Multi-task Benchmark with Comprehensive Evaluations and Insightful Findings
Xu, Yuhao
Lu, Jiaying
Ding, Sirui
Cao, Defu
Hu, Xiao
Yang, Carl
Machine Learning
Artificial Intelligence
In the process of patient diagnosis, non-invasive measurements are widely used due to their low risks and quick results. Electrocardiogram (ECG), as a non-invasive method to collect heart activities, is used to diagnose cardiac conditions. Analyzing the ECG typically requires domain expertise, which is a roadblock to applying artificial intelligence (AI) for healthcare. Through advances in self-supervised learning and foundation models, AI systems can now acquire and leverage domain knowledge without relying solely on human expertise. However, there is a lack of comprehensive analyses over the foundation models' performance on ECG. This study aims to answer the research question: "Are Foundation Models Useful for ECG Analysis?" To address it, we evaluate language/general time-series/ECG foundation models in comparison with time-series deep learning models. The experimental results show that general time-series/ECG foundation models achieve a top performance rate of 80%, indicating their effectiveness in ECG analysis. In-depth analyses and insights are provided along with comprehensive experimental results. This study highlights the limitations and potential of foundation models in advancing physiological waveform analysis. The data and code for this benchmark are publicly available at https://github.com/yuhaoxu99/ECGMultitasks-Benchmark.
title An Electrocardiogram Multi-task Benchmark with Comprehensive Evaluations and Insightful Findings
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2512.08954