TL;DR
This study demonstrates that self-supervised deep learning models can accurately detect maternal and fetal stress from non-invasive abdominal ECGs, enabling early stress monitoring during pregnancy with high accuracy.
Contribution
It introduces a novel self-supervised deep learning approach for non-invasive stress detection in pregnant women using abdominal ECG data, outperforming previous methods.
Findings
High accuracy in detecting chronic stress (AUROC=0.982)
Strong correlation with psychological and biological stress markers
Effective use of maternal ECG alone for stress classification
Abstract
In the pregnant mother and her fetus, chronic prenatal stress results in entrainment of the fetal heartbeat by the maternal heartbeat, quantified by the fetal stress index (FSI). Deep learning (DL) is capable of pattern detection in complex medical data with high accuracy in noisy real-life environments, but little is known about DL's utility in non-invasive biometric monitoring during pregnancy. A recently established self-supervised learning (SSL) approach to DL provides emotional recognition from electrocardiogram (ECG). We hypothesized that SSL will identify chronically stressed mother-fetus dyads from the raw maternal abdominal electrocardiograms (aECG), containing fetal and maternal ECG. Chronically stressed mothers and controls matched at enrolment at 32 weeks of gestation were studied. We validated the chronic stress exposure by psychological inventory, maternal hair cortisol…
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