Classification of Fetal Health on Cardiotocograph Data
using Machine Learning Techniques
Journal:
GRENZE International Journal of Engineering and Technology
Authors:
Deepa MS, Sujithra M
Volume:
10
Issue:
1
Grenze ID:
01.GIJET.10.1.312_1
Pages:
2842-2849
Abstract
Pregnancy and fetus development is an incredibly intricate biological process that can
go wrong when the health of fetus or the mother gets worse. Currently, India has the highest
number of stillbirths, with an estimated 5,92,100 deaths per year, and a WHO estimated rate of
22 per 1000 total births. Cardiotocography is one procedure used to check whether the fetus is
growing as expected. This diagnostic procedure measures the mother's uterine contractions and
the fetus' heartbeat, usually in the third trimester of pregnancy when the fetus heart is fully
developed. This paper aims to classify the results into one of three states (physiological, suspicious
or abnormal) based on cardiotocographic data using machine learning algorithms and compare
the accuracies of different ML classification models such as logistic regression, k-nearest
neighbor, decision tree, random forest classifier and support vector machine