A systematic review of automated pre-processing, feature extraction and classification of cardiotocography

Author:

Al-yousif Shahad12,Jaenul Ariep3,Al-Dayyeni Wisam1,Alamoodi Ah4,Najm IA5,Md Tahir Nooritawati6,Alrawi Ali Amer Ahmed7,Cömert Zafer8,Al-shareefi Nael A.9,Saleh Abbadullah H.10

Affiliation:

1. Department of Medical Instrumentations Engineering Techniques, Dijlah University, Baghdad, Iraq

2. Faculty of Information Science & Engineering, Management and Science University, Shah Alam, Selangoor, Malaysia

3. Department of Electrical Engineering, Faculty of Engineering and Computer Science, Jakarta Global University, Jakarta, Indonesia

4. Department of Computing, Universiti Pendidikan Sultan Idris, Tanjong Malim, Perak, Malaysia

5. Faculty of Engineering, Tikrit University, Tikrit, Iraq

6. Faculty of Electrical Engineering, Universiti Teknologi MARA (UiTM), Shah Alam, Selangor, Malaysia

7. Training Directorate, Ministry of Science and Technology, Baghdad, Aljadireyah, Iraq

8. Department of Software Engineering, Samsun University, Samsun, Turkey

9. College of Biomedical Informatics, University of Information Technology and Communications (UOITC), Baghdad, Almansoor, Iraq

10. Department Computer Engineering, Karabük University,, Karabük, Karabük, Turkey

Abstract

Context The interpretations of cardiotocography (CTG) tracings are indeed vital to monitor fetal well-being both during pregnancy and childbirth. Currently, many studies are focusing on feature extraction and CTG classification using computer vision approach in determining the most accurate diagnosis as well as monitoring the fetal well-being during pregnancy. Additionally, a fetal monitoring system would be able to perform detection and precise quantification of fetal heart rate patterns. Objective This study aimed to perform a systematic review to describe the achievements made by the researchers, summarizing findings that have been found by previous researchers in feature extraction and CTG classification, to determine criteria and evaluation methods to the taxonomies of the proposed literature in the CTG field and to distinguish aspects from relevant research in the field of CTG. Methods Article search was done systematically using three databases: IEEE Xplore digital library, Science Direct, and Web of Science over a period of 5 years. The literature in the medical sciences and engineering was included in the search selection to provide a broader understanding for researchers. Results After screening 372 articles, and based on our protocol of exclusion and inclusion criteria, for the final set of articles, 50 articles were obtained. The research literature taxonomy was divided into four stages. The first stage discussed the proposed method which presented steps and algorithms in the pre-processing stage, feature extraction and classification as well as their use in CTG (20/50 papers). The second stage included the development of a system specifically on automatic feature extraction and CTG classification (7/50 papers). The third stage consisted of reviews and survey articles on automatic feature extraction and CTG classification (3/50 papers). The last stage discussed evaluation and comparative studies to determine the best method for extracting and classifying features with comparisons based on a set of criteria (20/50 articles). Discussion This study focused more on literature compared to techniques or methods. Also, this study conducts research and identification of various types of datasets used in surveys from publicly available, private, and commercial datasets. To analyze the results, researchers evaluated independent datasets using different techniques. Conclusions This systematic review contributes to understand and have insight into the relevant research in the field of CTG by surveying and classifying pertinent research efforts. This review will help to address the current research opportunities, problems and challenges, motivations, recommendations related to feature extraction and CTG classification, as well as the measurement of various performance and various data sets used by other researchers.

Publisher

PeerJ

Subject

General Computer Science

Reference50 articles.

1. Classification of cardiotocograms using random forest classifier and selection of important features from cardiotocogram signal;Arif;Biomaterials and Biomechanics in Bioengineering,2015

2. A cross-sectional comparison of three guidelines for intrapartum cardiotocography;Bhatia;International Journal of Gynecology & Obstetrics,2017

3. Fetal state classification from cardiotocography based on feature extraction using hybrid K-Means and support vector machine,;Chamidah,2015

4. Comparison of a novel computerized analysis program and visual interpretation of cardiotocography;Chen;PLOS ONE,2014

5. An outlier based bi-level neural network classification system for improved classification of cardiotocogram data;Chinnasamy;Life Science Journal,2013

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