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A Novel Ensemble Classifier Framework for Accurate Fetal Heart Rate Classification

R. HephzibahKarunya University,Department of Mathematics,Coimbatore,IndiaHepzibah A. ChristinalKarunya University,Department of Mathematics,Coimbatore,IndiaR. JayanthiKarunya University,Department of Mathematics,Coimbatore,IndiaD. Abraham ChandyKarunya University,Department of Electronics and Communication Engineering,Coimbatore,IndiaChandrajit BajajUniversity of Texas,Computational Applied Mathematics Chair in Visualization,Austin
2023en
ABI

Аннотация

This paper presents a study on the prediction of fetal state, which is crucial for preventing fetal mortality. CTG is a technique widely used for monitoring the fetal heart rate and uterine contractions. In our paper, we implemented a novel ensemble classifier that combines the XGBoost and the Random Forest Classifiers to classify the fetal heart rate in CTG data. This study utilized a publicly available dataset with 2126 instances of fetal heart rate and uterine contractions. The results indicate that the ensemble classifier outperforms the individual XGBoost and Random Forest Classifier in terms of precision and F1 score. It also maintains a high level of accuracy of 96% across all categories, indicating that it effectively strikes a balance between correctly identifying true positives while avoiding false positives and negatives. We also compared the results with other classifiers combined with Adaboost and Gradient Boosting techniques and found that our method is more effective than other classifiers. This consistent performance demonstrates the classifier’s reliability.

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Цитирований: 3Использованных источников: 0