Abstract

Background: Electronic fetal monitoring (EFM) is widely applied as a routine diagnostic tool by clinicians using fetal heart rate (FHR) signals to prevent fetal hypoxia. However, visual interpretation of the FHR usually leads to significant inter-observer and intra-observer variability, and false positives become the main cause of unnecessary cesarean sections.Goal: The main aim of this study was to ensure a novel, consistent, robust, and effective model for fetal hypoxia detection.Methods: In this work, we proposed a novel computer-aided diagnosis (CAD) system integrated with an advanced deep learning (DL) algorithm. For a 1-dimensional preprocessed FHR signal, the 2-dimensional image was transformed using recurrence plot (RP), which is considered to greatly capture the non-linear characteristics. The ultimate image dataset was enriched by changing several parameters of the RP and was then used to feed the convolutional neural network (CNN). Compared to conventional machine learning (ML) methods, a CNN can self-learn useful features from the input data and does not perform complex manual feature engineering (i.e., feature extraction and selection).Results: Finally, according to the optimization experiment, the CNN model obtained the average performance using optimal configuration across 10-fold: accuracy = 98.69%, sensitivity = 99.29%, specificity = 98.10%, and area under the curve = 98.70%.Conclusion: To the best of our knowledge, this approached achieved better classification performance in predicting fetal hypoxia using FHR signals compared to the other state-of-the-art works.Significance: In summary, the satisfied result proved the effectiveness of our proposed CAD system for assisting obstetricians making objective and accurate medical decisions based on RP and powerful CNN algorithm.

Highlights

  • Since the brain of a neonate is influenced by the oxygen supply, fetal distress caused by a lack of oxygen may lead to different abnormalities that can be considered to be non-lifethreatening or life-threatening during pregnancy and delivery (Tharmaratnam, 2000)

  • We present a novel computer-aided diagnosis (CAD) system aimed at predicting fetal hypoxia based on an advanced Deep learning (DL) algorithm

  • An optimization experiment was employed using the validation set in this work divided into three primary aspects

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Summary

Introduction

Since the brain of a neonate is influenced by the oxygen supply, fetal distress caused by a lack of oxygen may lead to different abnormalities that can be considered to be non-lifethreatening or life-threatening during pregnancy and delivery (Tharmaratnam, 2000). Electronic fetal monitoring (EFM), often called cardiotocography (CTG), is a common way of monitoring a fetal state for obstetricians during intrauterine life (Menihan and Kopel, 2014). FHR traces are assessed visually in agreement with common guidelines, such as the International Federation of Gynecology and Obstetrics (FIGO) guideline (Ayres-de-Campos et al, 2015) by obstetricians in clinical practice. Electronic fetal monitoring (EFM) is widely applied as a routine diagnostic tool by clinicians using fetal heart rate (FHR) signals to prevent fetal hypoxia. Visual interpretation of the FHR usually leads to significant inter-observer and intraobserver variability, and false positives become the main cause of unnecessary cesarean sections.

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