Unlocking Telemetry Potential: Self-Supervised Learning for Continuous Clinical Electrocardiogram Monitoring
Thomas Kite, Uzair Tahamid Siam, Brian Ayers, Nicholas Houstis, Aaron, D Aguirre

TL;DR
This study demonstrates that self-supervised deep learning on large unlabeled ECG telemetry data can improve predictive performance and enable continuous, real-time monitoring in ICU settings, reducing reliance on expert annotations.
Contribution
The paper introduces a self-supervised learning approach for ECG telemetry data that enhances downstream task performance and allows continuous annotation without extensive labeled datasets.
Findings
Significant performance improvements on four downstream tasks.
Pretrained models enable continuous ECG annotation.
Effective use of unlabeled ECG telemetry data.
Abstract
Machine learning (ML) applied to routine patient monitoring within intensive care units (ICUs) has the potential to improve care by providing clinicians with novel insights into each patient's health and expected response to interventions. This paper applies deep learning to a large volume of unlabeled electrocardiogram (ECG) telemetry signals, which are commonly used for continuous patient monitoring in hospitals but have important differences from the standard, single time-point 12-lead ECG used in many prior machine learning studies. We applied self-supervised learning to pretrain a spectrum of deep networks on approximately 147,000 hours of ECG telemetry data. Our approach leverages this dataset to train models that significantly improve performance on four distinct downstream tasks compared with direct supervised learning using labeled data. These pretrained models enable medically…
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Taxonomy
TopicsECG Monitoring and Analysis
