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Use of Deep Learning to Detect the Maternal Heart Rate and False Signals on Fetal Heart Rate Recordings

We have developed deep learning models for automatic identification of the maternal heart rate (MHR) and, more generally, false signals (FSs) on fetal heart rate (FHR) recordings. The models can be used to preprocess FHR data prior to automated analysis or as a clinical alert system to assist the pr...

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Autores principales: Boudet, Samuel, Houzé de l’Aulnoit, Agathe, Peyrodie, Laurent, Demailly, Romain, Houzé de l’Aulnoit, Denis
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9496277/
https://www.ncbi.nlm.nih.gov/pubmed/36140076
http://dx.doi.org/10.3390/bios12090691
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author Boudet, Samuel
Houzé de l’Aulnoit, Agathe
Peyrodie, Laurent
Demailly, Romain
Houzé de l’Aulnoit, Denis
author_facet Boudet, Samuel
Houzé de l’Aulnoit, Agathe
Peyrodie, Laurent
Demailly, Romain
Houzé de l’Aulnoit, Denis
author_sort Boudet, Samuel
collection PubMed
description We have developed deep learning models for automatic identification of the maternal heart rate (MHR) and, more generally, false signals (FSs) on fetal heart rate (FHR) recordings. The models can be used to preprocess FHR data prior to automated analysis or as a clinical alert system to assist the practitioner. Three models were developed and used to detect (i) FSs on the MHR channel (the FSMHR model), (ii) the MHR and FSs on the Doppler FHR sensor (the FSDop model), and (iii) FSs on the scalp ECG channel (the FSScalp model). The FSDop model was the most useful because FSs are far more frequent on the Doppler FHR channel. All three models were based on a multilayer, symmetric, GRU, and were trained on data recorded during the first and second stages of delivery. The FSMHR and FSDop models were also trained on antepartum recordings. The training dataset contained 1030 expert-annotated periods (mean duration: 36 min) from 635 recordings. In an initial evaluation of routine clinical practice, 30 fully annotated recordings for each sensor type (mean duration: 5 h for MHR and Doppler sensors, and 3 h for the scalp ECG sensor) were analyzed. The sensitivity, positive predictive value (PPV) and accuracy were respectively 62.20%, 87.1% and 99.90% for the FSMHR model, 93.1%, 95.6% and 99.68% for the FSDop model, and 44.6%, 87.2% and 99.93% for the FSScalp model. We built a second test dataset with a more solid ground truth by selecting 45 periods (lasting 20 min, on average) on which the Doppler FHR and scalp ECG signals were recorded simultaneously. Using scalp ECG data, the experts estimated the true FHR value more reliably and thus annotated the Doppler FHR channel more precisely. The models achieved a sensitivity of 53.3%, a PPV of 62.4%, and an accuracy of 97.29%. In comparison, two experts (blinded to the scalp ECG data) respectively achieved a sensitivity of 15.7%, a PPV of 74.3%, and an accuracy of 96.91% and a sensitivity of 60.7%, a PPV of 83.5% and an accuracy of 98.24%. Hence, the models performed at expert level (better than one expert and worse than the other), although a well-trained expert with good knowledge of FSs could probably do better in some cases. The models and datasets have been included in the Fetal Heart Rate Morphological Analysis open-source MATLAB toolbox and can be used freely for research purposes.
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spelling pubmed-94962772022-09-23 Use of Deep Learning to Detect the Maternal Heart Rate and False Signals on Fetal Heart Rate Recordings Boudet, Samuel Houzé de l’Aulnoit, Agathe Peyrodie, Laurent Demailly, Romain Houzé de l’Aulnoit, Denis Biosensors (Basel) Article We have developed deep learning models for automatic identification of the maternal heart rate (MHR) and, more generally, false signals (FSs) on fetal heart rate (FHR) recordings. The models can be used to preprocess FHR data prior to automated analysis or as a clinical alert system to assist the practitioner. Three models were developed and used to detect (i) FSs on the MHR channel (the FSMHR model), (ii) the MHR and FSs on the Doppler FHR sensor (the FSDop model), and (iii) FSs on the scalp ECG channel (the FSScalp model). The FSDop model was the most useful because FSs are far more frequent on the Doppler FHR channel. All three models were based on a multilayer, symmetric, GRU, and were trained on data recorded during the first and second stages of delivery. The FSMHR and FSDop models were also trained on antepartum recordings. The training dataset contained 1030 expert-annotated periods (mean duration: 36 min) from 635 recordings. In an initial evaluation of routine clinical practice, 30 fully annotated recordings for each sensor type (mean duration: 5 h for MHR and Doppler sensors, and 3 h for the scalp ECG sensor) were analyzed. The sensitivity, positive predictive value (PPV) and accuracy were respectively 62.20%, 87.1% and 99.90% for the FSMHR model, 93.1%, 95.6% and 99.68% for the FSDop model, and 44.6%, 87.2% and 99.93% for the FSScalp model. We built a second test dataset with a more solid ground truth by selecting 45 periods (lasting 20 min, on average) on which the Doppler FHR and scalp ECG signals were recorded simultaneously. Using scalp ECG data, the experts estimated the true FHR value more reliably and thus annotated the Doppler FHR channel more precisely. The models achieved a sensitivity of 53.3%, a PPV of 62.4%, and an accuracy of 97.29%. In comparison, two experts (blinded to the scalp ECG data) respectively achieved a sensitivity of 15.7%, a PPV of 74.3%, and an accuracy of 96.91% and a sensitivity of 60.7%, a PPV of 83.5% and an accuracy of 98.24%. Hence, the models performed at expert level (better than one expert and worse than the other), although a well-trained expert with good knowledge of FSs could probably do better in some cases. The models and datasets have been included in the Fetal Heart Rate Morphological Analysis open-source MATLAB toolbox and can be used freely for research purposes. MDPI 2022-08-27 /pmc/articles/PMC9496277/ /pubmed/36140076 http://dx.doi.org/10.3390/bios12090691 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Boudet, Samuel
Houzé de l’Aulnoit, Agathe
Peyrodie, Laurent
Demailly, Romain
Houzé de l’Aulnoit, Denis
Use of Deep Learning to Detect the Maternal Heart Rate and False Signals on Fetal Heart Rate Recordings
title Use of Deep Learning to Detect the Maternal Heart Rate and False Signals on Fetal Heart Rate Recordings
title_full Use of Deep Learning to Detect the Maternal Heart Rate and False Signals on Fetal Heart Rate Recordings
title_fullStr Use of Deep Learning to Detect the Maternal Heart Rate and False Signals on Fetal Heart Rate Recordings
title_full_unstemmed Use of Deep Learning to Detect the Maternal Heart Rate and False Signals on Fetal Heart Rate Recordings
title_short Use of Deep Learning to Detect the Maternal Heart Rate and False Signals on Fetal Heart Rate Recordings
title_sort use of deep learning to detect the maternal heart rate and false signals on fetal heart rate recordings
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9496277/
https://www.ncbi.nlm.nih.gov/pubmed/36140076
http://dx.doi.org/10.3390/bios12090691
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