BECTS Substate Classification by Granger Causality Density Based Support Vector Machine Model

Objectives: To investigate the performance of substate classification of children with benign epilepsy with centrotemporal spikes (BECTS) by granger causality density (GCD) based support vector machine (SVM) model.Methods: Forty-two children with BECTS (21 females, 21 males; mean age, 8.6 ± 1.96 yea...

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Main Authors: Xi-Jian Dai, Qiang Xu, Jianping Hu, QiRui Zhang, Yin Xu, Zhiqiang Zhang, Guangming Lu
Format: Article
Language:English
Published: Frontiers Media S.A. 2019-11-01
Series:Frontiers in Neurology
Subjects:
Online Access:https://www.frontiersin.org/article/10.3389/fneur.2019.01201/full
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spelling doaj-50120f35c62d43b283fab7471dd789782020-11-25T01:47:21ZengFrontiers Media S.A.Frontiers in Neurology1664-22952019-11-011010.3389/fneur.2019.01201454422BECTS Substate Classification by Granger Causality Density Based Support Vector Machine ModelXi-Jian Dai0Xi-Jian Dai1Xi-Jian Dai2Qiang Xu3Jianping Hu4QiRui Zhang5Yin Xu6Zhiqiang Zhang7Guangming Lu8Department of Medical Imaging, Jinling Hospital, Medical School of Nanjing University, Nanjing, ChinaShenzhen Mental Health Centre, Shenzhen Kangning Hospital, Shenzhen, ChinaSleep Assessment Unit, Department of Psychiatry, Faculty of Medicine, Chinese University of Hong Kong, Hong Kong, ChinaShenzhen Mental Health Centre, Shenzhen Kangning Hospital, Shenzhen, ChinaShenzhen Mental Health Centre, Shenzhen Kangning Hospital, Shenzhen, ChinaShenzhen Mental Health Centre, Shenzhen Kangning Hospital, Shenzhen, ChinaShenzhen Mental Health Centre, Shenzhen Kangning Hospital, Shenzhen, ChinaShenzhen Mental Health Centre, Shenzhen Kangning Hospital, Shenzhen, ChinaShenzhen Mental Health Centre, Shenzhen Kangning Hospital, Shenzhen, ChinaObjectives: To investigate the performance of substate classification of children with benign epilepsy with centrotemporal spikes (BECTS) by granger causality density (GCD) based support vector machine (SVM) model.Methods: Forty-two children with BECTS (21 females, 21 males; mean age, 8.6 ± 1.96 years) were classified into interictal epileptic discharges (IEDs; 11 females, 10 males) and non-IEDs (10 females, 11 males) substates depending on presence of central-temporal spikes or not. GCD was calculated on four metrics, including inflow, outflow, total-flow (inflow + outflow) and int-flow (inflow – outflow) connectivity. SVM classifier was applied to discriminate the two substates.Results: The Rolandic area, caudate, dorsal attention network, visual cortex, language networks, and cerebellum had discriminative effect on distinguishing the two substates. Relative to each of the four GCD metrics, using combined metrics could reach up the classification performance (best value; AUC, 0.928; accuracy rate, 90.83%; sensitivity, 90%; specificity, 95%), especially for the combinations with more than three GCD metrics. Specially, combined the inflow, outflow and int-flow metric received the best classification performance with the highest AUC value, classification accuracy and specificity. Furthermore, the GCD-SVM model received good and stable classification performance across 14 dimension reduced data sets.Conclusions: The GCD-SVM model could be used for BECTS substate classification, which might have the potential to provide a promising model for IEDs detection. This may help assist clinicians for administer drugs and prognosis evaluation.https://www.frontiersin.org/article/10.3389/fneur.2019.01201/fullbenign epilepsy with centrotemporal spikesgranger causality densityseizure disordersupport vector machineclassificationprediction
collection DOAJ
language English
format Article
sources DOAJ
author Xi-Jian Dai
Xi-Jian Dai
Xi-Jian Dai
Qiang Xu
Jianping Hu
QiRui Zhang
Yin Xu
Zhiqiang Zhang
Guangming Lu
spellingShingle Xi-Jian Dai
Xi-Jian Dai
Xi-Jian Dai
Qiang Xu
Jianping Hu
QiRui Zhang
Yin Xu
Zhiqiang Zhang
Guangming Lu
BECTS Substate Classification by Granger Causality Density Based Support Vector Machine Model
Frontiers in Neurology
benign epilepsy with centrotemporal spikes
granger causality density
seizure disorder
support vector machine
classification
prediction
author_facet Xi-Jian Dai
Xi-Jian Dai
Xi-Jian Dai
Qiang Xu
Jianping Hu
QiRui Zhang
Yin Xu
Zhiqiang Zhang
Guangming Lu
author_sort Xi-Jian Dai
title BECTS Substate Classification by Granger Causality Density Based Support Vector Machine Model
title_short BECTS Substate Classification by Granger Causality Density Based Support Vector Machine Model
title_full BECTS Substate Classification by Granger Causality Density Based Support Vector Machine Model
title_fullStr BECTS Substate Classification by Granger Causality Density Based Support Vector Machine Model
title_full_unstemmed BECTS Substate Classification by Granger Causality Density Based Support Vector Machine Model
title_sort bects substate classification by granger causality density based support vector machine model
publisher Frontiers Media S.A.
series Frontiers in Neurology
issn 1664-2295
publishDate 2019-11-01
description Objectives: To investigate the performance of substate classification of children with benign epilepsy with centrotemporal spikes (BECTS) by granger causality density (GCD) based support vector machine (SVM) model.Methods: Forty-two children with BECTS (21 females, 21 males; mean age, 8.6 ± 1.96 years) were classified into interictal epileptic discharges (IEDs; 11 females, 10 males) and non-IEDs (10 females, 11 males) substates depending on presence of central-temporal spikes or not. GCD was calculated on four metrics, including inflow, outflow, total-flow (inflow + outflow) and int-flow (inflow – outflow) connectivity. SVM classifier was applied to discriminate the two substates.Results: The Rolandic area, caudate, dorsal attention network, visual cortex, language networks, and cerebellum had discriminative effect on distinguishing the two substates. Relative to each of the four GCD metrics, using combined metrics could reach up the classification performance (best value; AUC, 0.928; accuracy rate, 90.83%; sensitivity, 90%; specificity, 95%), especially for the combinations with more than three GCD metrics. Specially, combined the inflow, outflow and int-flow metric received the best classification performance with the highest AUC value, classification accuracy and specificity. Furthermore, the GCD-SVM model received good and stable classification performance across 14 dimension reduced data sets.Conclusions: The GCD-SVM model could be used for BECTS substate classification, which might have the potential to provide a promising model for IEDs detection. This may help assist clinicians for administer drugs and prognosis evaluation.
topic benign epilepsy with centrotemporal spikes
granger causality density
seizure disorder
support vector machine
classification
prediction
url https://www.frontiersin.org/article/10.3389/fneur.2019.01201/full
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