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BAGHELA, N BURGET, R. DUTTA, M.K.
Original Title
1D-FHRNet: Automatic Diagnosis of Fetal Acidosis from Fetal Heart Rate Signals
Type
journal article in Web of Science
Language
English
Original Abstract
Fetal heart rate (FHR) is used to monitor the fetal state by obstetricians as a screening tool. Common guidelines for visual interpretation of FHR signals results in significant subjective variability due to the fetal physiological dynamics complexity. Automated diagnostic technology can assist obstetricians in medical decisions based on artificial intelligence and also can be an automatic diagnostic tool for primary health care centres and remote areas. This work presents a machine learning-based automated diagnostic tool for classification and diagnosis of Fetal Acidosis using FHR. A 1D-CNN model has been proposed because of its ability to automatically diagnose Fetal Acidosis into healthy or pathological conditions with high accuracy. To make the method robust and to improve accuracy with the artefacts present in the signal, the signal pre-processing is performed before training and classification. The accuracy was evaluated on a comprehensive dataset and achieved 99.09% for the diagnosis of Fetal Acidosis. Low-cost electronic hardware integrated with the proposed methodology can perform in real-time and can achieve high accuracy and reliability. This method can be used to support the expert decision and as an automatic stand-alone diagnostic tool that can assist the obstetricians in the early diagnosis of fetal acidosis.
Keywords
Convolutional neural network;Fetal academia;Fetal heart rate;Signal filtering
Authors
BAGHELA, N; BURGET, R.; DUTTA, M.K.
Released
2. 6. 2021
Publisher
Biomedical Signal Processing and Control
ISBN
1746-8094
Periodical
BIOMED SIGNAL PROCES
Year of study
2021
Number
68
State
United Kingdom of Great Britain and Northern Ireland
Pages from
1
Pages to
10
Pages count
URL
https://authors.elsevier.com/a/1d81U6DBR31top
BibTex
@article{BUT171641, author="BAGHELA, N and BURGET, R. and DUTTA, M.K.", title="1D-FHRNet: Automatic Diagnosis of Fetal Acidosis from Fetal Heart Rate Signals", journal="BIOMED SIGNAL PROCES", year="2021", volume="2021", number="68", pages="1--10", doi="10.1016/j.bspc.2021.102794", issn="1746-8094", url="https://authors.elsevier.com/a/1d81U6DBR31top" }