Cardiotocography Signal Abnormality Detection based on Deep Unsupervised Models
Julien Bertieaux, Mohammadhadi Shateri, Fabrice Labeau, Thierry Dutoit

TL;DR
This paper introduces a deep unsupervised learning approach using a modified GANomaly model for detecting abnormalities in cardiotocography signals, demonstrating superior performance over supervised methods on a comprehensive dataset.
Contribution
It presents a novel semi-supervised deep unsupervised model for CTG abnormality detection that outperforms existing supervised approaches and utilizes all available data samples.
Findings
Modified GANomaly outperforms state-of-the-art methods
Deep unsupervised models show better generalization
All CTG data samples are effectively used
Abstract
Cardiotocography (CTG) is a key element when it comes to monitoring fetal well-being. Obstetricians use it to observe the fetal heart rate (FHR) and the uterine contraction (UC). The goal is to determine how the fetus reacts to the contraction and whether it is receiving adequate oxygen. If a problem occurs, the physician can then respond with an intervention. Unfortunately, the interpretation of CTGs is highly subjective and there is a low inter- and intra-observer agreement rate among practitioners. This can lead to unnecessary medical intervention that represents a risk for both the mother and the fetus. Recently, computer-assisted diagnosis techniques, especially based on artificial intelligence models (mostly supervised), have been proposed in the literature. But, many of these models lack generalization to unseen/test data samples due to overfitting. Moreover, the unsupervised…
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Taxonomy
TopicsNeonatal and fetal brain pathology · Phonocardiography and Auscultation Techniques · Non-Invasive Vital Sign Monitoring
