2022
DOI: 10.3389/fphys.2022.912739
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Using Multi-Task Learning-Based Framework to Detect ST-Segment and J-Point Deviation From Holter

Abstract: Artificial intelligence is increasingly being used on the clinical electrocardiogram workflows. Few electrocardiograms based on artificial intelligence algorithms have focused on detecting myocardial ischemia using long-term electrocardiogram data. A main reason for this is that interference signals generated from daily activities while wearing the Holter monitor lowered the ability of artificial intelligence to detect myocardial ischemia. In this study, an automatic system combining denoising and segmentation… Show more

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References 31 publications
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