FEATURE EXTRACTION AND CLASSIFICATION OF FETAL HEART RATE USING WAVELET ANALYSIS AND SUPPORT VECTOR MACHINES

Author:

GEORGOULAS GEORGE1,STYLIOS CHRYSOSTOMOS2,GROUMPOS PETER1

Affiliation:

1. Laboratory for Automation & Robotics, University of Patras, 26500, Patras, Greece

2. Department of Communications, Informatics and Management, Technological Educational Institute of Epirus, Artas, Greece

Abstract

Since the fetus is not available for direct observations, only indirect information can guide the obstetrician in charge. Electronic Fetal Monitoring (EFM) is widely used for assessing fetal well being. EFM involves detection of the Fetal Heart Rate (FHR) signal and the Uterine Activity (UA) signal. The most serious fetal incident is the hypoxic injury leading to cerebral palsy or even death, which is a condition that must be predicted and avoided. This research work proposes a new integrated method for feature extraction and classification of the FHR signal able to associate FHR with umbilical artery pH values at delivery. The proposed method introduces the use of the Discrete Wavelet Transform (DWT) to extract time-scale dependent features of the FHR signal and the use of Support Vector Machines (SVMs) for the categorization. The proposed methodology is tested on a data set of intrapartum recordings were the FHR categories are associated with umbilical artery pH values, This proposed approach achieved high overall classification performance proving its merits.

Publisher

World Scientific Pub Co Pte Lt

Subject

Artificial Intelligence,Artificial Intelligence

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1. An Empirical and Statistical Analysis of Fetal Health Classification Using Different Machine Learning Algorithm;2024 4th International Conference on Data Engineering and Communication Systems (ICDECS);2024-03-22

2. Non-linear Methods Predominant in Fetal Heart Rate Analysis: A Systematic Review;Frontiers in Medicine;2021-11-30

3. Cardiotocography signal abnormality classification using time-frequency features and Ensemble Cost-sensitive SVM classifier;Computers in Biology and Medicine;2021-03

4. Enhancing the Prediction Accuracy for Cardiotocography (CTG) using Firefly Algorithm and Naive Bayesian Classifier;IOP Conference Series: Materials Science and Engineering;2020-03-01

5. Weighted Rough Set Theory for Fetal Heart Rate Classification;International Journal of Sociotechnology and Knowledge Development;2019-10

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