作者
Md Takbir Alam, Md Ashibul Islam Khan, Nahian Nakiba Dola, Tahia Tazin, Mohammad Monirujjaman Khan, Amani Abdulrahman Albraikan, Faris A Almalki
发表日期
2022
期刊
Applied Bionics and Biomechanics
卷号
2022
期号
1
页码范围
6321884
出版商
Hindawi
简介
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 …
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