Deep Metric Learning for the Hemodynamics Inference with Electrocardiogram Signals
Hyewon Jeong, Collin M. Stultz, Marzyeh Ghassemi

TL;DR
This paper introduces a novel self-supervised deep metric learning approach to estimate intracardiac pressures from ECG signals, improving accuracy and robustness over existing methods, especially with limited labeled data.
Contribution
The study develops a self-supervised deep metric learning model with distance-based mining for non-invasive cardiac pressure estimation from ECGs, outperforming traditional supervised models.
Findings
Self-supervised DML improves classification of elevated mPCWP.
Supervised DML achieves better regression performance.
Models are effective across diverse patient subgroups.
Abstract
Heart failure is a debilitating condition that affects millions of people worldwide and has a significant impact on their quality of life and mortality rates. An objective assessment of cardiac pressures remains an important method for the diagnosis and treatment prognostication for patients with heart failure. Although cardiac catheterization is the gold standard for estimating central hemodynamic pressures, it is an invasive procedure that carries inherent risks, making it a potentially dangerous procedure for some patients. Approaches that leverage non-invasive signals - such as electrocardiogram (ECG) - have the promise to make the routine estimation of cardiac pressures feasible in both inpatient and outpatient settings. Prior models trained to estimate intracardiac pressures (e.g., mean pulmonary capillary wedge pressure (mPCWP)) in a supervised fashion have shown good…
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Taxonomy
TopicsHeart Rate Variability and Autonomic Control · Cardiovascular Function and Risk Factors · ECG Monitoring and Analysis
