Litcius/Paper detail

Automatic Contraction Detection Using Uterine Electromyography

Filipa Esgalhado, Arnaldo Batista, Helena Mouriño, Sara Russo, Catarina R. Palma dos Reis, Fátima Serrano, Valentina Vassilenko, Manuel Duarte Ortigueira

2020Applied Sciences26 citationsDOIOpen Access PDF

Abstract

Electrohysterography (EHG) is a promising technique for pregnancy monitoring and preterm risk evaluation. It allows for uterine contraction monitoring as early as the 20th gestational week, and it is a non-invasive technique based on recording the electric signal of the uterine muscle activity from electrodes located in the abdominal surface. In this work, EHG-based contraction detection methodologies are applied using signal envelope features. Automatic contraction detection is an important step for the development of unsupervised pregnancy monitoring systems based on EHG. The exploratory methodologies include wavelet energy, Teager energy, root mean square (RMS), squared RMS, and Hilbert envelope. In this work, two main features were evaluated: contraction detection and its related delineation accuracy. The squared RMS produced the best contraction (97.15 ± 4.66%) and delineation (89.43 ± 8.10%) accuracy and the lowest false positive rate (0.63%). Despite the wavelet energy method having a contraction accuracy (92.28%) below the first-rated method, its standard deviation was the second best (6.66%). The average false positive rate ranged between 0.63% and 4.74%—a remarkably low value.

Topics & Concepts

Uterine contractionRoot mean squareStandard deviationElectromyographyWaveletContraction (grammar)Pattern recognition (psychology)Computer scienceSpeech recognitionMathematicsArtificial intelligenceStatisticsMedicinePhysical medicine and rehabilitationPhysicsInternal medicineUterusQuantum mechanicsNon-Invasive Vital Sign MonitoringNeonatal Respiratory Health ResearchPreterm Birth and Chorioamnionitis