Supervised Convolutional Encoder-Decoder With Gated Linear Units for Detecting Fetal R-Peaks

Noninvasive fetal electrocardiography (ECG) is prevalently used for monitoring fetal heartbeats during pregnancy due to its affordability, ease of use, and constant monitoring capability. A crucial aspect of noninvasive fetal ECG is detecting the R-peak series from the abdominal electrode signal, wh...

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Main Authors: Yao Chen, Jian Wang, Jing Zhang, Junkun Zhang, Zhentao Qin, Xinran Liu
Format: Article
Language:English
Published: IEEE 2025-01-01
Series:IEEE Access
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Online Access:https://ieeexplore.ieee.org/document/10820529/
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author Yao Chen
Jian Wang
Jing Zhang
Junkun Zhang
Zhentao Qin
Xinran Liu
author_facet Yao Chen
Jian Wang
Jing Zhang
Junkun Zhang
Zhentao Qin
Xinran Liu
author_sort Yao Chen
collection DOAJ
description Noninvasive fetal electrocardiography (ECG) is prevalently used for monitoring fetal heartbeats during pregnancy due to its affordability, ease of use, and constant monitoring capability. A crucial aspect of noninvasive fetal ECG is detecting the R-peak series from the abdominal electrode signal, which is a fundamental baseline for determining fetal heart rate. This paper explores the direct detection of R-peaks by assigning categorical labels to each member of the observed values in the ECG sequence and proposes a convolutional encoder-decoder network and training strategy for processing the sequence annotation task. Specifically, the encoder is a stacked convolutional layer equipped with a gating linear unit (GLU), and the decoder is a recurrent neural network. The GLU convolutional layer can effectively extract and aggregate the features to improve the generalization ability. To address the issue of unbalanced sequence labels, we adopt and fine-tune the focal loss function, promoting superior prediction and faster convergence. The experimental results suggest that the proposed method can achieve promising performance on two benchmark datasets. The versatility of our approach is validated through tests of different label encoding strategies, demonstrating its potential for other complex fetal ECG labeling tasks.
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institution Kabale University
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publisher IEEE
record_format Article
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spelling doaj-art-5be975e5885849dca58f508bbe3cb70f2025-01-15T00:01:32ZengIEEEIEEE Access2169-35362025-01-01134290430310.1109/ACCESS.2025.352555510820529Supervised Convolutional Encoder-Decoder With Gated Linear Units for Detecting Fetal R-PeaksYao Chen0Jian Wang1https://orcid.org/0000-0002-9173-4979Jing Zhang2Junkun Zhang3Zhentao Qin4Xinran Liu5School of Mathematics and Computer Science, Panzhihua University, Panzhihua, ChinaCollege of Computer Science, Sichuan University, Chengdu, ChinaSchool of Mathematics and Computer Science, Panzhihua University, Panzhihua, ChinaSchool of Mathematics and Computer Science, Panzhihua University, Panzhihua, ChinaSchool of Mathematics and Computer Science, Panzhihua University, Panzhihua, ChinaFudan University Shanghai Cancer Center, Fudan University, Shanghai, ChinaNoninvasive fetal electrocardiography (ECG) is prevalently used for monitoring fetal heartbeats during pregnancy due to its affordability, ease of use, and constant monitoring capability. A crucial aspect of noninvasive fetal ECG is detecting the R-peak series from the abdominal electrode signal, which is a fundamental baseline for determining fetal heart rate. This paper explores the direct detection of R-peaks by assigning categorical labels to each member of the observed values in the ECG sequence and proposes a convolutional encoder-decoder network and training strategy for processing the sequence annotation task. Specifically, the encoder is a stacked convolutional layer equipped with a gating linear unit (GLU), and the decoder is a recurrent neural network. The GLU convolutional layer can effectively extract and aggregate the features to improve the generalization ability. To address the issue of unbalanced sequence labels, we adopt and fine-tune the focal loss function, promoting superior prediction and faster convergence. The experimental results suggest that the proposed method can achieve promising performance on two benchmark datasets. The versatility of our approach is validated through tests of different label encoding strategies, demonstrating its potential for other complex fetal ECG labeling tasks.https://ieeexplore.ieee.org/document/10820529/Fetal R-peakencoder-decoderGLU convolutional layersequence taggingfetal QRS complexes locations
spellingShingle Yao Chen
Jian Wang
Jing Zhang
Junkun Zhang
Zhentao Qin
Xinran Liu
Supervised Convolutional Encoder-Decoder With Gated Linear Units for Detecting Fetal R-Peaks
IEEE Access
Fetal R-peak
encoder-decoder
GLU convolutional layer
sequence tagging
fetal QRS complexes locations
title Supervised Convolutional Encoder-Decoder With Gated Linear Units for Detecting Fetal R-Peaks
title_full Supervised Convolutional Encoder-Decoder With Gated Linear Units for Detecting Fetal R-Peaks
title_fullStr Supervised Convolutional Encoder-Decoder With Gated Linear Units for Detecting Fetal R-Peaks
title_full_unstemmed Supervised Convolutional Encoder-Decoder With Gated Linear Units for Detecting Fetal R-Peaks
title_short Supervised Convolutional Encoder-Decoder With Gated Linear Units for Detecting Fetal R-Peaks
title_sort supervised convolutional encoder decoder with gated linear units for detecting fetal r peaks
topic Fetal R-peak
encoder-decoder
GLU convolutional layer
sequence tagging
fetal QRS complexes locations
url https://ieeexplore.ieee.org/document/10820529/
work_keys_str_mv AT yaochen supervisedconvolutionalencoderdecoderwithgatedlinearunitsfordetectingfetalrpeaks
AT jianwang supervisedconvolutionalencoderdecoderwithgatedlinearunitsfordetectingfetalrpeaks
AT jingzhang supervisedconvolutionalencoderdecoderwithgatedlinearunitsfordetectingfetalrpeaks
AT junkunzhang supervisedconvolutionalencoderdecoderwithgatedlinearunitsfordetectingfetalrpeaks
AT zhentaoqin supervisedconvolutionalencoderdecoderwithgatedlinearunitsfordetectingfetalrpeaks
AT xinranliu supervisedconvolutionalencoderdecoderwithgatedlinearunitsfordetectingfetalrpeaks