Literature DB >> 29248699

Machine learning ensemble modelling to classify caesarean section and vaginal delivery types using Cardiotocography traces.

Paul Fergus1, Malarvizhi Selvaraj2, Carl Chalmers3.   

Abstract

Human visual inspection of Cardiotocography traces is used to monitor the foetus during labour and avoid neonatal mortality and morbidity. The problem, however, is that visual interpretation of Cardiotocography traces is subject to high inter and intra observer variability. Incorrect decisions, caused by miss-interpretation, can lead to adverse perinatal outcomes and in severe cases death. This study presents a review of human Cardiotocography trace interpretation and argues that machine learning, used as a decision support system by obstetricians and midwives, may provide an objective measure alongside normal practices. This will help to increase predictive capacity and reduce negative outcomes. A robust methodology is presented for feature set engineering using an open database comprising 552 intrapartum recordings. State-of-the-art in signal processing techniques is applied to raw Cardiotocography foetal heart rate traces to extract 13 features. Those with low discriminative capacity are removed using Recursive Feature Elimination. The dataset is imbalanced with significant differences between the prior probabilities of both normal deliveries and those delivered by caesarean section. This issue is addressed by oversampling the training instances using a synthetic minority oversampling technique to provide a balanced class distribution. Several simple, yet powerful, machine-learning algorithms are trained, using the feature set, and their performance is evaluated with real test data. The results are encouraging using an ensemble classifier comprising Fishers Linear Discriminant Analysis, Random Forest and Support Vector Machine classifiers, with 87% (95% Confidence Interval: 86%, 88%) for Sensitivity, 90% (95% CI: 89%, 91%) for Specificity, and 96% (95% CI: 96%, 97%) for the Area Under the Curve, with a 9% (95% CI: 9%, 10%) Mean Square Error. Crown
Copyright © 2017. Published by Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Cardiotocography; Classification; Data science; Ensemble modelling; Machine learning; Perinatal complications

Mesh:

Year:  2017        PMID: 29248699     DOI: 10.1016/j.compbiomed.2017.12.002

Source DB:  PubMed          Journal:  Comput Biol Med        ISSN: 0010-4825            Impact factor:   4.589


  8 in total

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Journal:  Comput Biol Med       Date:  2020-06-24       Impact factor: 4.589

Review 2.  Artificial intelligence in dermatology and healthcare: An overview.

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Journal:  Womens Health (Lond)       Date:  2021 Jan-Dec

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

Authors:  Shahad Al-Yousif; Ariep Jaenul; Wisam Al-Dayyeni; Ah Alamoodi; Ihab Jabori; Nooritawati Md Tahir; Ali Amer Ahmed Alrawi; Zafer Cömert; Nael A Al-Shareefi; Abbadullah H Saleh
Journal:  PeerJ Comput Sci       Date:  2021-04-27

5.  Developing a Stacked Ensemble-Based Classification Scheme to Predict Second Primary Cancers in Head and Neck Cancer Survivors.

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Review 6.  Using Machine Learning to Predict Complications in Pregnancy: A Systematic Review.

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7.  Heart rate markers for prediction of fetal acidosis in an experimental study on fetal sheep.

Authors:  Louise Ghesquière; C Ternynck; D Sharma; Y Hamoud; R Vanspranghels; L Storme; V Houfflin-Debarge; J De Jonckheere; C Garabedian
Journal:  Sci Rep       Date:  2022-06-23       Impact factor: 4.996

8.  Intrapartum cardiotocography trace pattern pre-processing, features extraction and fetal health condition diagnoses based on RCOG guideline.

Authors:  Shahad Al-Yousif; Ihab A Najm; Hossam Subhi Talab; Nourah Hasan Al Qahtani; M Alfiras; Osama Ym Al-Rawi; Wisam Subhi Al-Dayyeni; Ali Amer Ahmed Alrawi; Mohannad Jabbar Mnati; Mu'taman Jarrar; Fahad Ghabban; Nael A Al-Shareefi; Mustafa Musa Jaber; Abbadullah H Saleh; Nooritawati Md Tahir; Huda T Najim; Mayada Taher
Journal:  PeerJ Comput Sci       Date:  2022-08-18
  8 in total

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