Objective identification of pain due to uterine contraction during the first stage of labour using continuous EEG signals and SVM

Document Type

Article

Publication Date

1-1-2019

Abstract

This study aimed to assess the utility of electroencephalography (EEG) as an objective marker of pain during the first stage of labour. EEG and cardiotocography (CTG) data were obtained from 10 parturient women during their first stage of labour. The study subjects reported the extent of their pain experienced due to uterine contractions, which were recorded by the CTG tracing. Simultaneous 16-channel EEG traces were obtained for spectral analysis and a subsequent machine learning classification using Support Vector Machine (SVM) aiming to predict the pain experienced in relation to uterine contractions. It was found that pain due to uterine contraction correlated positively with relative delta and beta band activities and negatively with relative theta and alpha band activities of the EEG signals. SVM using the spectral activities, statistical and non-linear features of the EEG classified the state of pain with 83% accuracy using a classification model generalizable across subjects. Furthermore, dimension reduction using Principal Component Analysis (PCA) successfully reduced the number of features used in the classification while achieving a maximum classification accuracy of 84%. Continuous EEG affords the means to assess objectively maternal pain experienced during the active contraction phase of the first stage of labour. Monitoring of the pain experience using EEG signals may complement the clinical decision-making process behind administration of epidural anaesthesia during labour. We envision future studies to investigate EEG markers of pain in other clinical states, aiming to generalize the use of EEG as an objective method of pain assessment. © 2019, Indian Academy of Sciences.

Keywords

Electroencephalography (EEG), first stage of labour, pain assessment, Principal Component Analysis (PCA), Support Vector Machine (SVM), uterine contraction

Divisions

fac_eng,fac_med

Funders

Ministry of Higher Education, Malaysia, and University of Malaya through HIR Grant (UM.C/HIR/MOHE/ENG/16 Account Code: D000016-16001) and PPP Grant (PG260-2015B)

Publication Title

Sadhana

Volume

44

Issue

4

Publisher

Springer

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