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Comparative Analysis of Different Efficient Machine Learning Methods for Fetal Health Classification

Obstetricians often utilize cardiotocography (CTG) to assess a child's physical health throughout pregnancy because it gives data on the fetal heartbeat and uterine contractions, which helps identify whether the fetus is pathologic or not. Obstetricians have traditionally analyzed CTG data arti...

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Autores principales: Alam, Md Takbir, Khan, Md Ashibul Islam, Dola, Nahian Nakiba, Tazin, Tahia, Khan, Mohammad Monirujjaman, Albraikan, Amani Abdulrahman, Almalki, Faris A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9050321/
https://www.ncbi.nlm.nih.gov/pubmed/35498140
http://dx.doi.org/10.1155/2022/6321884
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author Alam, Md Takbir
Khan, Md Ashibul Islam
Dola, Nahian Nakiba
Tazin, Tahia
Khan, Mohammad Monirujjaman
Albraikan, Amani Abdulrahman
Almalki, Faris A.
author_facet Alam, Md Takbir
Khan, Md Ashibul Islam
Dola, Nahian Nakiba
Tazin, Tahia
Khan, Mohammad Monirujjaman
Albraikan, Amani Abdulrahman
Almalki, Faris A.
author_sort Alam, Md Takbir
collection PubMed
description Obstetricians often utilize cardiotocography (CTG) to assess a child's physical health throughout pregnancy because it gives data on the fetal heartbeat and uterine contractions, which helps identify whether the fetus is pathologic or not. Obstetricians have traditionally analyzed CTG data artificially, which takes time and is unreliable. As a result, creating a fetal health classification model is essential, as it may save not only time but also medical resources in the diagnosis process. Machine learning (ML) is currently extensively used in fields such as biology and medicine to address a variety of issues, due to its fast advancement. This research covers the findings and analyses of multiple machine learning models for fetal health classification. The method was developed using the open-access cardiotocography dataset. Although the dataset is modest, it contains some noteworthy values. The data was examined and used in a variety of ML models. For classification, random forest (RF), logistic regression, decision tree (DT), support vector classifier, voting classifier, and K-nearest neighbor were utilized. When the results are compared, it is discovered that the random forest model produces the best results. It achieves 97.51% accuracy, which is better than the previous method reported.
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spelling pubmed-90503212022-04-29 Comparative Analysis of Different Efficient Machine Learning Methods for Fetal Health Classification Alam, Md Takbir Khan, Md Ashibul Islam Dola, Nahian Nakiba Tazin, Tahia Khan, Mohammad Monirujjaman Albraikan, Amani Abdulrahman Almalki, Faris A. Appl Bionics Biomech Research Article Obstetricians often utilize cardiotocography (CTG) to assess a child's physical health throughout pregnancy because it gives data on the fetal heartbeat and uterine contractions, which helps identify whether the fetus is pathologic or not. Obstetricians have traditionally analyzed CTG data artificially, which takes time and is unreliable. As a result, creating a fetal health classification model is essential, as it may save not only time but also medical resources in the diagnosis process. Machine learning (ML) is currently extensively used in fields such as biology and medicine to address a variety of issues, due to its fast advancement. This research covers the findings and analyses of multiple machine learning models for fetal health classification. The method was developed using the open-access cardiotocography dataset. Although the dataset is modest, it contains some noteworthy values. The data was examined and used in a variety of ML models. For classification, random forest (RF), logistic regression, decision tree (DT), support vector classifier, voting classifier, and K-nearest neighbor were utilized. When the results are compared, it is discovered that the random forest model produces the best results. It achieves 97.51% accuracy, which is better than the previous method reported. Hindawi 2022-04-21 /pmc/articles/PMC9050321/ /pubmed/35498140 http://dx.doi.org/10.1155/2022/6321884 Text en Copyright © 2022 Md Takbir Alam et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Alam, Md Takbir
Khan, Md Ashibul Islam
Dola, Nahian Nakiba
Tazin, Tahia
Khan, Mohammad Monirujjaman
Albraikan, Amani Abdulrahman
Almalki, Faris A.
Comparative Analysis of Different Efficient Machine Learning Methods for Fetal Health Classification
title Comparative Analysis of Different Efficient Machine Learning Methods for Fetal Health Classification
title_full Comparative Analysis of Different Efficient Machine Learning Methods for Fetal Health Classification
title_fullStr Comparative Analysis of Different Efficient Machine Learning Methods for Fetal Health Classification
title_full_unstemmed Comparative Analysis of Different Efficient Machine Learning Methods for Fetal Health Classification
title_short Comparative Analysis of Different Efficient Machine Learning Methods for Fetal Health Classification
title_sort comparative analysis of different efficient machine learning methods for fetal health classification
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9050321/
https://www.ncbi.nlm.nih.gov/pubmed/35498140
http://dx.doi.org/10.1155/2022/6321884
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