Unveiling the Unborn: Advancing Fetal Health Classification through Machine Learning
Sujith K Mandala

TL;DR
This paper introduces a machine learning model using LightGBM that achieves high accuracy in fetal health classification by integrating multiple physiological features, aiming to improve early detection and management of fetal health issues.
Contribution
The study presents a novel comprehensive feature-based machine learning approach that enhances fetal health classification accuracy over traditional methods.
Findings
Achieved 98.31% accuracy on test data.
Integrated multiple physiological features for holistic assessment.
Demonstrated potential for improved early detection of fetal health problems.
Abstract
Fetal health classification is a critical task in obstetrics, enabling early identification and management of potential health problems. However, it remains challenging due to data complexity and limited labeled samples. This research paper presents a novel machine-learning approach for fetal health classification, leveraging a LightGBM classifier trained on a comprehensive dataset. The proposed model achieves an impressive accuracy of 98.31% on a test set. Our findings demonstrate the potential of machine learning in enhancing fetal health classification, offering a more objective and accurate assessment. Notably, our approach combines various features, such as fetal heart rate, uterine contractions, and maternal blood pressure, to provide a comprehensive evaluation. This methodology holds promise for improving early detection and treatment of fetal health issues, ensuring better…
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Taxonomy
TopicsNeonatal and fetal brain pathology · Pregnancy and preeclampsia studies
MethodsFeature Selection
