Optimizing Uterine Synchronization Analysis in Pregnancy and Labor through Window Selection and Node Optimization
Kamil Bader El Dine, Noujoud Nader, Mohamad Khalil, Catherine, Marque

TL;DR
This paper introduces a novel windowing and node optimization approach for analyzing uterine electrical signals, significantly improving classification accuracy between pregnancy and labor contractions.
Contribution
It proposes a new pipeline combining window selection, node optimization, and graph theory to enhance EHG signal analysis for pregnancy and labor differentiation.
Findings
Identified optimal nodes 8-12 for better classification.
Best windows are 2, 4, and 5 for signal analysis.
Using selected nodes improves classification over full node sets.
Abstract
Preterm labor (PL) has globally become the leading cause of death in children under the age of 5 years. To address this problem, this paper will provide a new approach by analyzing the EHG signals, which are recorded on the abdomen of the mother during labor and pregnancy. The EHG signal reflects the electrical activity that induces the mechanical contraction of the myometrium. Because EHGs are known to be non-stationary signals, and because we anticipate connectivity to alter during contraction, we applied the windowing approach on real signals to help us identify the best windows and the best nodes with the most significant data to be used for classification. The suggested pipeline includes i) divide the 16 EHG signals that are recorded from the abdomen of pregnant women in N windows; ii) apply the connectivity matrices on each window; iii) apply the Graph theory-based measures on the…
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Taxonomy
TopicsMaternal and fetal healthcare · Preterm Birth and Chorioamnionitis · Pregnancy and preeclampsia studies
