Seizure detection by convolutional neural network-based analysis of scalp electroencephalography plot images

We hypothesized that expert epileptologists can detect seizures directly by visually analyzing EEG plot images, unlike automated methods that analyze spectro-temporal features or complex, non-stationary features of EEG signals. If so, seizure detection could benefit from convolutional neural network...

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Published inNeuroImage clinical Vol. 22; p. 101684
Main Authors Emami, Ali, Kunii, Naoto, Matsuo, Takeshi, Shinozaki, Takashi, Kawai, Kensuke, Takahashi, Hirokazu
Format Journal Article
LanguageEnglish
Published Netherlands Elsevier Inc 01.01.2019
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Abstract We hypothesized that expert epileptologists can detect seizures directly by visually analyzing EEG plot images, unlike automated methods that analyze spectro-temporal features or complex, non-stationary features of EEG signals. If so, seizure detection could benefit from convolutional neural networks because their visual recognition ability is comparable to that of humans. We explored image-based seizure detection by applying convolutional neural networks to long-term EEG that included epileptic seizures. After filtering, EEG data were divided into short segments based on a given time window and converted into plot EEG images, each of which was classified by convolutional neural networks as ‘seizure’ or ‘non-seizure’. These resultant labels were then used to design a clinically practical index for seizure detection. The best true positive rate was obtained using a 1-s time window. The median true positive rate of convolutional neural networks labelling by seconds was 74%, which was higher than that of commercially available seizure detection software (20% by BESA and 31% by Persyst). For practical use, the median of detected seizure rate by minutes was 100% by convolutional neural networks, which was higher than the 73.3% by BESA and 81.7% by Persyst. The false alarm of convolutional neural networks' seizure detection was issued at 0.2 per hour, which appears acceptable for clinical practice. Moreover, we demonstrated that seizure detection improved when training was performed using EEG patterns similar to those of testing data, suggesting that adding a variety of seizure patterns to the training dataset will improve our method. Thus, artificial visual recognition by convolutional neural networks allows for seizure detection, which otherwise currently relies on skillful visual inspection by expert epileptologists during clinical diagnosis. [Display omitted] •Artificial visual recognition of scalp EEG plot images successfully detects seizures.•CNN-based automatic detection performed better than commercial software.•Customized CNN learning using large datasets improves detection.
AbstractList AbstractWe hypothesized that expert epileptologists can detect seizures directly by visually analyzing EEG plot images, unlike automated methods that analyze spectro-temporal features or complex, non-stationary features of EEG signals. If so, seizure detection could benefit from convolutional neural networks because their visual recognition ability is comparable to that of humans. We explored image-based seizure detection by applying convolutional neural networks to long-term EEG that included epileptic seizures. After filtering, EEG data were divided into short segments based on a given time window and converted into plot EEG images, each of which was classified by convolutional neural networks as ‘seizure’ or ‘non-seizure’. These resultant labels were then used to design a clinically practical index for seizure detection. The best true positive rate was obtained using a 1-s time window. The median true positive rate of convolutional neural networks labelling by seconds was 74%, which was higher than that of commercially available seizure detection software (20% by BESA and 31% by Persyst). For practical use, the median of detected seizure rate by minutes was 100% by convolutional neural networks, which was higher than the 73.3% by BESA and 81.7% by Persyst. The false alarm of convolutional neural networks' seizure detection was issued at 0.2 per hour, which appears acceptable for clinical practice. Moreover, we demonstrated that seizure detection improved when training was performed using EEG patterns similar to those of testing data, suggesting that adding a variety of seizure patterns to the training dataset will improve our method. Thus, artificial visual recognition by convolutional neural networks allows for seizure detection, which otherwise currently relies on skillful visual inspection by expert epileptologists during clinical diagnosis.
We hypothesized that expert epileptologists can detect seizures directly by visually analyzing EEG plot images, unlike automated methods that analyze spectro-temporal features or complex, non-stationary features of EEG signals. If so, seizure detection could benefit from convolutional neural networks because their visual recognition ability is comparable to that of humans. We explored image-based seizure detection by applying convolutional neural networks to long-term EEG that included epileptic seizures. After filtering, EEG data were divided into short segments based on a given time window and converted into plot EEG images, each of which was classified by convolutional neural networks as 'seizure' or 'non-seizure'. These resultant labels were then used to design a clinically practical index for seizure detection. The best true positive rate was obtained using a 1-s time window. The median true positive rate of convolutional neural networks labelling by seconds was 74%, which was higher than that of commercially available seizure detection software (20% by BESA and 31% by Persyst). For practical use, the median of detected seizure rate by minutes was 100% by convolutional neural networks, which was higher than the 73.3% by BESA and 81.7% by Persyst. The false alarm of convolutional neural networks' seizure detection was issued at 0.2 per hour, which appears acceptable for clinical practice. Moreover, we demonstrated that seizure detection improved when training was performed using EEG patterns similar to those of testing data, suggesting that adding a variety of seizure patterns to the training dataset will improve our method. Thus, artificial visual recognition by convolutional neural networks allows for seizure detection, which otherwise currently relies on skillful visual inspection by expert epileptologists during clinical diagnosis.We hypothesized that expert epileptologists can detect seizures directly by visually analyzing EEG plot images, unlike automated methods that analyze spectro-temporal features or complex, non-stationary features of EEG signals. If so, seizure detection could benefit from convolutional neural networks because their visual recognition ability is comparable to that of humans. We explored image-based seizure detection by applying convolutional neural networks to long-term EEG that included epileptic seizures. After filtering, EEG data were divided into short segments based on a given time window and converted into plot EEG images, each of which was classified by convolutional neural networks as 'seizure' or 'non-seizure'. These resultant labels were then used to design a clinically practical index for seizure detection. The best true positive rate was obtained using a 1-s time window. The median true positive rate of convolutional neural networks labelling by seconds was 74%, which was higher than that of commercially available seizure detection software (20% by BESA and 31% by Persyst). For practical use, the median of detected seizure rate by minutes was 100% by convolutional neural networks, which was higher than the 73.3% by BESA and 81.7% by Persyst. The false alarm of convolutional neural networks' seizure detection was issued at 0.2 per hour, which appears acceptable for clinical practice. Moreover, we demonstrated that seizure detection improved when training was performed using EEG patterns similar to those of testing data, suggesting that adding a variety of seizure patterns to the training dataset will improve our method. Thus, artificial visual recognition by convolutional neural networks allows for seizure detection, which otherwise currently relies on skillful visual inspection by expert epileptologists during clinical diagnosis.
We hypothesized that expert epileptologists can detect seizures directly by visually analyzing EEG plot images, unlike automated methods that analyze spectro-temporal features or complex, non-stationary features of EEG signals. If so, seizure detection could benefit from convolutional neural networks because their visual recognition ability is comparable to that of humans. We explored image-based seizure detection by applying convolutional neural networks to long-term EEG that included epileptic seizures. After filtering, EEG data were divided into short segments based on a given time window and converted into plot EEG images, each of which was classified by convolutional neural networks as ‘seizure’ or ‘non-seizure’. These resultant labels were then used to design a clinically practical index for seizure detection. The best true positive rate was obtained using a 1-s time window. The median true positive rate of convolutional neural networks labelling by seconds was 74%, which was higher than that of commercially available seizure detection software (20% by BESA and 31% by Persyst). For practical use, the median of detected seizure rate by minutes was 100% by convolutional neural networks, which was higher than the 73.3% by BESA and 81.7% by Persyst. The false alarm of convolutional neural networks' seizure detection was issued at 0.2 per hour, which appears acceptable for clinical practice. Moreover, we demonstrated that seizure detection improved when training was performed using EEG patterns similar to those of testing data, suggesting that adding a variety of seizure patterns to the training dataset will improve our method. Thus, artificial visual recognition by convolutional neural networks allows for seizure detection, which otherwise currently relies on skillful visual inspection by expert epileptologists during clinical diagnosis. [Display omitted] •Artificial visual recognition of scalp EEG plot images successfully detects seizures.•CNN-based automatic detection performed better than commercial software.•Customized CNN learning using large datasets improves detection.
We hypothesized that expert epileptologists can detect seizures directly by visually analyzing EEG plot images, unlike automated methods that analyze spectro-temporal features or complex, non-stationary features of EEG signals. If so, seizure detection could benefit from convolutional neural networks because their visual recognition ability is comparable to that of humans. We explored image-based seizure detection by applying convolutional neural networks to long-term EEG that included epileptic seizures. After filtering, EEG data were divided into short segments based on a given time window and converted into plot EEG images, each of which was classified by convolutional neural networks as 'seizure' or 'non-seizure'. These resultant labels were then used to design a clinically practical index for seizure detection. The best true positive rate was obtained using a 1-s time window. The median true positive rate of convolutional neural networks labelling by seconds was 74%, which was higher than that of commercially available seizure detection software (20% by BESA and 31% by Persyst). For practical use, the median of detected seizure rate by minutes was 100% by convolutional neural networks, which was higher than the 73.3% by BESA and 81.7% by Persyst. The false alarm of convolutional neural networks' seizure detection was issued at 0.2 per hour, which appears acceptable for clinical practice. Moreover, we demonstrated that seizure detection improved when training was performed using EEG patterns similar to those of testing data, suggesting that adding a variety of seizure patterns to the training dataset will improve our method. Thus, artificial visual recognition by convolutional neural networks allows for seizure detection, which otherwise currently relies on skillful visual inspection by expert epileptologists during clinical diagnosis.
We hypothesized that expert epileptologists can detect seizures directly by visually analyzing EEG plot images, unlike automated methods that analyze spectro-temporal features or complex, non-stationary features of EEG signals. If so, seizure detection could benefit from convolutional neural networks because their visual recognition ability is comparable to that of humans. We explored image-based seizure detection by applying convolutional neural networks to long-term EEG that included epileptic seizures. After filtering, EEG data were divided into short segments based on a given time window and converted into plot EEG images, each of which was classified by convolutional neural networks as ‘seizure’ or ‘non-seizure’. These resultant labels were then used to design a clinically practical index for seizure detection. The best true positive rate was obtained using a 1-s time window. The median true positive rate of convolutional neural networks labelling by seconds was 74%, which was higher than that of commercially available seizure detection software (20% by BESA and 31% by Persyst). For practical use, the median of detected seizure rate by minutes was 100% by convolutional neural networks, which was higher than the 73.3% by BESA and 81.7% by Persyst. The false alarm of convolutional neural networks' seizure detection was issued at 0.2 per hour, which appears acceptable for clinical practice. Moreover, we demonstrated that seizure detection improved when training was performed using EEG patterns similar to those of testing data, suggesting that adding a variety of seizure patterns to the training dataset will improve our method. Thus, artificial visual recognition by convolutional neural networks allows for seizure detection, which otherwise currently relies on skillful visual inspection by expert epileptologists during clinical diagnosis. Unlabelled Image • Artificial visual recognition of scalp EEG plot images successfully detects seizures. • CNN-based automatic detection performed better than commercial software. • Customized CNN learning using large datasets improves detection.
We hypothesized that expert epileptologists can detect seizures directly by visually analyzing EEG plot images, unlike automated methods that analyze spectro-temporal features or complex, non-stationary features of EEG signals. If so, seizure detection could benefit from convolutional neural networks because their visual recognition ability is comparable to that of humans. We explored image-based seizure detection by applying convolutional neural networks to long-term EEG that included epileptic seizures. After filtering, EEG data were divided into short segments based on a given time window and converted into plot EEG images, each of which was classified by convolutional neural networks as ‘seizure’ or ‘non-seizure’. These resultant labels were then used to design a clinically practical index for seizure detection. The best true positive rate was obtained using a 1-s time window. The median true positive rate of convolutional neural networks labelling by seconds was 74%, which was higher than that of commercially available seizure detection software (20% by BESA and 31% by Persyst). For practical use, the median of detected seizure rate by minutes was 100% by convolutional neural networks, which was higher than the 73.3% by BESA and 81.7% by Persyst. The false alarm of convolutional neural networks' seizure detection was issued at 0.2 per hour, which appears acceptable for clinical practice. Moreover, we demonstrated that seizure detection improved when training was performed using EEG patterns similar to those of testing data, suggesting that adding a variety of seizure patterns to the training dataset will improve our method. Thus, artificial visual recognition by convolutional neural networks allows for seizure detection, which otherwise currently relies on skillful visual inspection by expert epileptologists during clinical diagnosis. Keywords: Convolutional neural networks, Seizure detection, Deep learning, Scalp electroencephalogram, Epileptic seizure
ArticleNumber 101684
Author Takahashi, Hirokazu
Shinozaki, Takashi
Matsuo, Takeshi
Emami, Ali
Kunii, Naoto
Kawai, Kensuke
AuthorAffiliation e Department of Neurosurgery, Jichi Medical University, Japan
c Tokyo Metropolitan Neurological Hospital, Japan
b Department of Neurosurgery, Graduate School of Medicine, The University of Tokyo, Japan
d CiNet, National Institute of Information and Communications Technology, Japan
a Research Center for Advanced Science and Technology, The University of Tokyo, Japan
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  fullname: Emami, Ali
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  givenname: Naoto
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BackLink https://www.ncbi.nlm.nih.gov/pubmed/30711680$$D View this record in MEDLINE/PubMed
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Cites_doi 10.1007/s10072-012-0949-5
10.1109/TBME.2007.905490
10.1111/j.1528-1167.2007.00920.x
10.1109/TBME.2006.886855
10.1136/jnnp.2005.069245
10.1142/S0129065718500107
10.1016/j.seizure.2015.01.012
10.1142/S0129065717500058
10.1016/S0165-0270(02)00340-0
10.5405/jmbe.1463
10.1111/epi.13979
10.1142/S012906571850003X
10.1016/j.clinph.2004.05.018
10.1016/j.medengphy.2012.05.005
10.1016/0013-4694(90)90032-F
10.1007/s11263-015-0816-y
10.1016/S0920-1211(99)00107-2
10.1007/978-3-319-06764-3_33
10.1038/nature14539
10.1016/S1474-4422(03)00664-1
10.1002/hbm.23730
10.1001/archneurpsyc.1935.02250240002001
10.1586/ern.09.157
10.1016/S0013-4694(98)00043-1
10.1038/nature21056
10.1093/brain/aww198
10.1109/TBME.2007.891945
10.3233/ICA-2007-14301
10.1177/1550059414535465
10.1111/epi.13907
10.1016/j.media.2017.07.005
10.1016/j.neunet.2009.04.003
10.1016/j.clinph.2004.08.004
10.1093/brain/awx098
10.1016/j.clinph.2013.12.104
10.1016/j.compbiomed.2017.09.017
10.1371/journal.pone.0185852
10.1159/000100148
10.1155/2014/627892
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Keywords CNN
STD
Sz
PLE
OLE
PFA
TLE
Epileptic seizure
Deep learning
rec
Seizure detection
FIAS
MF
DMF
PWE
RSA
ROC
Sup
Sb
RED
FBTCS
FAS
Convolutional neural networks
Scalp electroencephalogram
FLE
TS
seizure
subject
rhythmic slow activity
recording
occipital lobe epilepsy
multifocal
suppression
parietal lobe epilepsy
receiver operating characteristic
repetitive epileptiform discharge
temporal lobe epilepsy
patients with epilepsy
paroxysmal fast activity
focal aware seizure
focal to bilateral tonic-clonic seizure
frontal lobe epilepsy
focal impaired awareness seizure
diffuse multifocal
tonic seizure
standard deviation
Language English
License This is an open access article under the CC BY-NC-ND license.
Copyright © 2019 The Authors. Published by Elsevier Inc. All rights reserved.
This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
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References Esteva, Kuprel, Novoa, Ko, Swetter, Blau, Thrun (bb0080) 2017; 546
AliMardani, Boostani, Blankertz (bb0035) 2016; 5
Acharya, Oh, Hagiwara, Tan, Adeli (bb0005) 2018; 100
Ahmedt-Aristizabal, Fookes, Dionisio, Nguyen, Cunha, Sridharan (bb0025) 2017; 58
Wilson, Scheuer, Emerson, Gabor (bb0275) 2004; 115
Ahmedt-Aristizabal, Fookes, Nguyen, Sridharan (bb0030) 2018
Foldvary, Caruso, Mascha, Perry, Klem, McCarthy, Qureshi, Dinner (bb0090) 2000; 23
Schirrmeister, Springenberg, Fiederer, Glasstetter, Eggensperger, Tangermann, Hutter, Burgard, Ball (bb0210) 2017; 38
Gao, Cai, Yang, Dong, Zhang (bb0100) 2017; 27
Varsavsky, Mareels, Cook (bb0255) 2016
Aminoff (bb0040) 2012
Baldassano, Brinkmann, Ung, Blevins, Conrad, Leyde, Cook, Khambhati, Wagenaar, Worrell, Litt (bb0055) 2017; 140
Venkataraman, Vlachos, Faith, Krishnan, Tsakalis, Treiman, Iasemidis (bb0265) 2014
Theodore, Fisher (bb0245) 2004; 3
Russakovsky, Deng, Su, Krause, Satheesh, Ma, Huang, Karpathy, Khosla, Bernstein, Berg, Fei-Fei (bb0195) 2015; 115
Lecun, Bengio, Hinton (bb0165) 2015
Anusha, Mathews, Puthankattil (bb0045) 2012
Henry, Sha (bb0135) 2012; 1
Saab, Gotman (bb0200) 2005; 116
Velis, Plouin, Gotman, Da Silva (bb0260) 2007; 48
Smith (bb0225) 2005; 76
Adeli, Ghosh-Dastidar, Dadmehr (bb0020) 2007; 54
Ghosh-Dastidar, Adeli (bb0110) 2009; 22
Ghosh-Dastidar, Adeli, Dadmehr (bb0115) 2007; 54
Orosco, Correa, Laciar (bb0190) 2013
Dvey-Aharon, Fogelson, Peled, Intrator (bb0075) 2017; 12
Kingma, Ba (bb0155) 2014
Manzano, Ragazzo, Tavares, Marino (bb0185) 1986; 49
Simonyan, Zisserman (bb0220) 2014
Dodge, Karam (bb0070) 2017
Faust, Acharya, Adeli, Adeli (bb0085) 2015; 26
Gabor (bb0095) 1998; 107
Yuan, Zhou, Xu, Leng, Wei (bb0280) 2018; 28
Satapathy, Dehuri, Jagadev (bb0205) 2016; 11
Ma, Minett, Blu, Wang (bb0180) 2015
Ghosh-Dastidar, Adeli, Dadmehr (bb0120) 2008; 55
Jirayucharoensak, Pan-Ngum, Israsena (bb0145) 2014; 2014
Li, Cui, Luo, Li, Wang (bb0170) 2018; 28
Thodoroff, Pineau, Lim (bb0250) 2016
Ghosh-Dastidar, Adeli (bb0105) 2007; 14
Tanaka, Khoo, Dubeau, Gotman (bb0240) 2017; 59
Wilson (bb0270) 2004
Cascino (bb0065) 2002
Gibbs, Davis, Lennox (bb0125) 1935; 34
Stein, Eder, Blum, Drachev, Research (bb0230) 2000; 39
Gotman (bb0130) 1990; 76
Lam, Zepeda, Cole, Cash (bb0160) 2016; 139
Hopfengärtner, Kasper, Graf, Gollwitzer, Kreiselmeyer, Stefan, Hamer (bb0140) 2014; 125
Adeli, Zhou, Dadmehr (bb0015) 2003; 123
Ayoubian, Lacoma, Gotman (bb0050) 2013; 35
Takahashi, Takahashi, Kanzaki, Kawai (bb0235) 2012; 33
Juárez-Guerra, Alarcon-Aquino, Gómez-Gil (bb0150) 2015; 312
Litjens, Kooi, Bejnordi, Arindra, Setio, Ciompi, Ghafoorian, Van Der Laak, Van Ginneken, Sánchez, Van Der Laak, Van Ginneken, Sánchez (bb0175) 2017; 42
Benbadis (bb0060) 2010; 10
Sharma, Khan, Farooq, Tripathi, Adeli (bb0215) 2014; 45
Adeli, Ghosh-Dastidar (bb0010) 2010
Anusha (10.1016/j.nicl.2019.101684_bb0045) 2012
Ghosh-Dastidar (10.1016/j.nicl.2019.101684_bb0105) 2007; 14
Jirayucharoensak (10.1016/j.nicl.2019.101684_bb0145) 2014; 2014
Venkataraman (10.1016/j.nicl.2019.101684_bb0265) 2014
Aminoff (10.1016/j.nicl.2019.101684_bb0040) 2012
Hopfengärtner (10.1016/j.nicl.2019.101684_bb0140) 2014; 125
Esteva (10.1016/j.nicl.2019.101684_bb0080) 2017; 546
Ghosh-Dastidar (10.1016/j.nicl.2019.101684_bb0110) 2009; 22
Gabor (10.1016/j.nicl.2019.101684_bb0095) 1998; 107
Takahashi (10.1016/j.nicl.2019.101684_bb0235) 2012; 33
Adeli (10.1016/j.nicl.2019.101684_bb0010) 2010
Adeli (10.1016/j.nicl.2019.101684_bb0015) 2003; 123
Smith (10.1016/j.nicl.2019.101684_bb0225) 2005; 76
Varsavsky (10.1016/j.nicl.2019.101684_bb0255) 2016
Ma (10.1016/j.nicl.2019.101684_bb0180) 2015
Orosco (10.1016/j.nicl.2019.101684_bb0190) 2013
Theodore (10.1016/j.nicl.2019.101684_bb0245) 2004; 3
Wilson (10.1016/j.nicl.2019.101684_bb0270) 2004
Lam (10.1016/j.nicl.2019.101684_bb0160) 2016; 139
Russakovsky (10.1016/j.nicl.2019.101684_bb0195) 2015; 115
Satapathy (10.1016/j.nicl.2019.101684_bb0205) 2016; 11
Juárez-Guerra (10.1016/j.nicl.2019.101684_bb0150) 2015; 312
Cascino (10.1016/j.nicl.2019.101684_bb0065) 2002
Saab (10.1016/j.nicl.2019.101684_bb0200) 2005; 116
Ayoubian (10.1016/j.nicl.2019.101684_bb0050) 2013; 35
Lecun (10.1016/j.nicl.2019.101684_bb0165) 2015
Dodge (10.1016/j.nicl.2019.101684_bb0070) 2017
Sharma (10.1016/j.nicl.2019.101684_bb0215) 2014; 45
Gotman (10.1016/j.nicl.2019.101684_bb0130) 1990; 76
Wilson (10.1016/j.nicl.2019.101684_bb0275) 2004; 115
Kingma (10.1016/j.nicl.2019.101684_bb0155) 2014
AliMardani (10.1016/j.nicl.2019.101684_bb0035) 2016; 5
Acharya (10.1016/j.nicl.2019.101684_bb0005) 2018; 100
Yuan (10.1016/j.nicl.2019.101684_bb0280) 2018; 28
Ghosh-Dastidar (10.1016/j.nicl.2019.101684_bb0115) 2007; 54
Manzano (10.1016/j.nicl.2019.101684_bb0185) 1986; 49
Simonyan (10.1016/j.nicl.2019.101684_bb0220) 2014
Litjens (10.1016/j.nicl.2019.101684_bb0175) 2017; 42
Schirrmeister (10.1016/j.nicl.2019.101684_bb0210) 2017; 38
Thodoroff (10.1016/j.nicl.2019.101684_bb0250) 2016
Gibbs (10.1016/j.nicl.2019.101684_bb0125) 1935; 34
Henry (10.1016/j.nicl.2019.101684_bb0135) 2012; 1
Foldvary (10.1016/j.nicl.2019.101684_bb0090) 2000; 23
Gao (10.1016/j.nicl.2019.101684_bb0100) 2017; 27
Baldassano (10.1016/j.nicl.2019.101684_bb0055) 2017; 140
Adeli (10.1016/j.nicl.2019.101684_bb0020) 2007; 54
Tanaka (10.1016/j.nicl.2019.101684_bb0240) 2017; 59
Ahmedt-Aristizabal (10.1016/j.nicl.2019.101684_bb0030) 2018
Velis (10.1016/j.nicl.2019.101684_bb0260) 2007; 48
Li (10.1016/j.nicl.2019.101684_bb0170) 2018; 28
Dvey-Aharon (10.1016/j.nicl.2019.101684_bb0075) 2017; 12
Faust (10.1016/j.nicl.2019.101684_bb0085) 2015; 26
Ghosh-Dastidar (10.1016/j.nicl.2019.101684_bb0120) 2008; 55
Stein (10.1016/j.nicl.2019.101684_bb0230) 2000; 39
Benbadis (10.1016/j.nicl.2019.101684_bb0060) 2010; 10
Ahmedt-Aristizabal (10.1016/j.nicl.2019.101684_bb0025) 2017; 58
References_xml – volume: 140
  start-page: 1680
  year: 2017
  end-page: 1691
  ident: bb0055
  article-title: Crowdsourcing seizure detection: algorithm development and validation on human implanted device recordings
  publication-title: Brain
– volume: 100
  start-page: 270
  year: 2018
  end-page: 278
  ident: bb0005
  article-title: Deep convolutional neural network for the automated detection and diagnosis of seizure using EEG signals
  publication-title: Comput. Biol. Med.
– start-page: 1111
  year: 2002
  end-page: 1120
  ident: bb0065
  article-title: Clinical indications and diagnostic yield of video-electroencephalographic monitoring in patients with seizures and spells
  publication-title: Mayo Clinic Proceedings
– volume: 27
  start-page: 1750005
  year: 2017
  ident: bb0100
  article-title: Visibility graph from adaptive optimal kernel time-frequency representation for classification of epileptiform EEG
  publication-title: Int. J. Neural Syst.
– volume: 49
  start-page: 213
  year: 1986
  end-page: 217
  ident: bb0185
  article-title: Anterior zygomatic electrodes: a special electrode for the study of temporal lobe epilepsy
  publication-title: Stereotact. Funct. Neurosurg.
– volume: 22
  start-page: 1419
  year: 2009
  end-page: 1431
  ident: bb0110
  article-title: A new supervised learning algorithm for multiple spiking neural networks with application in epilepsy and seizure detection
  publication-title: Neural Netw.
– volume: 48
  start-page: 379
  year: 2007
  end-page: 384
  ident: bb0260
  article-title: Recommendations regarding the requirements and applications for long-term recordings in epilepsy
  publication-title: Epilepsia
– volume: 26
  start-page: 56
  year: 2015
  end-page: 64
  ident: bb0085
  article-title: Wavelet-based EEG processing for computer-aided seizure detection and epilepsy diagnosis
  publication-title: Seizure
– volume: 34
  start-page: 1133
  year: 1935
  end-page: 1148
  ident: bb0125
  article-title: The electro-encephalogram in epilepsy and in conditions of impaired consciousness
  publication-title: Arch. Neurol. Psychiatr.
– volume: 10
  start-page: 343
  year: 2010
  end-page: 346
  ident: bb0060
  article-title: The tragedy of over-read EEGs and wrong diagnoses of epilepsy
  publication-title: Expert. Rev. Neurother.
– volume: 139
  start-page: 2679
  year: 2016
  end-page: 2693
  ident: bb0160
  article-title: Widespread changes in network activity allow non-invasive detection of mesial temporal lobe seizures
  publication-title: Brain
– volume: 58
  start-page: 1817
  year: 2017
  end-page: 1831
  ident: bb0025
  article-title: Automated analysis of seizure semiology and brain electrical activity in presurgery evaluation of epilepsy: a focused survey
  publication-title: Epilepsia
– volume: 115
  start-page: 2280
  year: 2004
  end-page: 2291
  ident: bb0275
  article-title: Seizure detection: evaluation of the Reveal algorithm
  publication-title: Clin. Neurophysiol.
– volume: 59
  start-page: 420
  year: 2017
  end-page: 430
  ident: bb0240
  article-title: Association between scalp and intracerebral electroencephalographic seizure-onset patterns: a study in different lesional pathological substrates
  publication-title: Epilepsia
– volume: 39
  start-page: 103
  year: 2000
  end-page: 114
  ident: bb0230
  article-title: An automated drug delivery system for focal epilepsy
  publication-title: Epilepsy Res.
– volume: 54
  start-page: 205
  year: 2007
  end-page: 211
  ident: bb0020
  article-title: A wavelet-chaos methodology for analysis of EEGs and EEG subbands to detect seizure and epilepsy
  publication-title: IEEE Trans. Biomed. Eng.
– year: 2014
  ident: bb0155
  article-title: Adam: a method for stochastic optimization
  publication-title: arXiv Prepr.
– volume: 11
  start-page: 973
  year: 2016
  end-page: 4562
  ident: bb0205
  article-title: An empirical analysis of different machine learning techniques for classification of EEG signal to detect epileptic seizure
  publication-title: Int. J. Appl. Eng. Res.
– volume: 45
  start-page: 274
  year: 2014
  end-page: 284
  ident: bb0215
  article-title: A wavelet-statistical features approach for nonconvulsive seizure detection
  publication-title: Clin. EEG Neurosci.
– year: 2018
  ident: bb0030
  article-title: Deep classification of epileptic signals
  publication-title: arXiv Prepr.
– volume: 76
  start-page: 317
  year: 1990
  end-page: 324
  ident: bb0130
  article-title: Automatic seizure detection: improvements and evaluation
  publication-title: Electroencephalogr. Clin. Neurophysiol.
– volume: 76
  start-page: ii2
  year: 2005
  end-page: ii7
  ident: bb0225
  article-title: EEG in the diagnosis, classification, and management of patients with epilepsy
  publication-title: J. Neurol. Neurosurg. Psychiatry
– volume: 12
  year: 2017
  ident: bb0075
  article-title: Connectivity maps based analysis of EEG for the advanced diagnosis of schizophrenia attributes
  publication-title: PLoS One
– start-page: 98
  year: 2012
  end-page: 101
  ident: bb0045
  article-title: Classification of normal and epileptic EEG signal using time & frequency domain features through artificial neural network
  publication-title: 2012 International Conference on advances in Computing and Communications (ICACC)
– volume: 116
  start-page: 427
  year: 2005
  end-page: 442
  ident: bb0200
  article-title: A system to detect the onset of epileptic seizures in scalp EEG
  publication-title: Clin. Neurophysiol.
– volume: 546
  start-page: 115
  year: 2017
  ident: bb0080
  article-title: Dermatologist-level classification of skin cancer with deep neural networks
  publication-title: Nature
– volume: 23
  start-page: 1
  year: 2000
  end-page: 9
  ident: bb0090
  article-title: Identifying montages that best detect electrographic seizure activity during polysomnography
  publication-title: Sleep
– year: 2015
  ident: bb0165
  article-title: Deep learning
  publication-title: Nature
– year: 2014
  ident: bb0220
  article-title: Very deep convolutional networks for large-scale image recognition
  publication-title: arXiv
– volume: 115
  start-page: 211
  year: 2015
  end-page: 252
  ident: bb0195
  article-title: ImageNet large scale visual recognition challenge
  publication-title: Int. J. Comput. Vis.
– volume: 14
  start-page: 187
  year: 2007
  end-page: 212
  ident: bb0105
  article-title: Improved spiking neural networks for EEG classification and epilepsy and seizure detection
  publication-title: Integr. Comput. Aided. Eng.
– volume: 54
  start-page: 1545
  year: 2007
  end-page: 1551
  ident: bb0115
  article-title: Mixed-band wavelet-chaos-neural network methodology for epilepsy and epileptic seizure detection
  publication-title: IEEE Trans. Biomed. Eng.
– volume: 5
  start-page: 79
  year: 2016
  end-page: 85
  ident: bb0035
  article-title: Presenting a spatial-geometric EEG feature to classify BMD and schizophrenic patients
  publication-title: Int. J. Adv. Telecommun. Electrotech. Signals Syst.
– year: 2016
  ident: bb0255
  article-title: Epileptic Seizures and the EEG : Measurement, Models, Detection and Prediction
– start-page: 946
  year: 2014
  end-page: 949
  ident: bb0265
  article-title: Brain dynamics based automated epileptic seizure detection
  publication-title: 2014 36th Annual International Conference of the IEEE Engineering in Medicine and Biology Society
– start-page: 2848
  year: 2015
  end-page: 2851
  ident: bb0180
  article-title: Resting state EEG-based biometrics for individual identification using convolutional neural networks
  publication-title: 2015 37th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC)
– volume: 38
  start-page: 5391
  year: 2017
  end-page: 5420
  ident: bb0210
  article-title: Deep learning with convolutional neural networks for EEG decoding and visualization
  publication-title: Hum. Brain Mapp.
– volume: 55
  start-page: 512
  year: 2008
  end-page: 518
  ident: bb0120
  article-title: Principal component analysis-enhanced cosine radial basis function neural network for robust epilepsy and seizure detection
  publication-title: IEEE Trans. Biomed. Eng.
– volume: 3
  start-page: 111
  year: 2004
  end-page: 118
  ident: bb0245
  article-title: Brain stimulation for epilepsy
  publication-title: Lancet Neurol.
– volume: 33
  start-page: 1355
  year: 2012
  end-page: 1364
  ident: bb0235
  article-title: State-dependent precursors of seizures in correlation-based functional networks of electrocorticograms of patients with temporal lobe epilepsy
  publication-title: Neurol. Sci.
– volume: 1
  start-page: 1
  year: 2012
  end-page: 45
  ident: bb0135
  article-title: Seizures and epilepsy: electrophysiological diagnosis
  publication-title: Epilepsy Board Rev. Man.
– volume: 312
  start-page: 261
  year: 2015
  end-page: 269
  ident: bb0150
  article-title: Epilepsy seizure detection in EEG signals using wavelet transforms and neural networks
  publication-title: Lect. Notes Electr. Eng.
– year: 2013
  ident: bb0190
  article-title: Review: a survey of performance and techniques for automatic epilepsy detection
  publication-title: J. Med. Biol. Eng.
– volume: 35
  start-page: 319
  year: 2013
  end-page: 328
  ident: bb0050
  article-title: Automatic seizure detection in SEEG using high frequency activities in wavelet domain
  publication-title: Med. Eng. Phys.
– volume: 125
  start-page: 1346
  year: 2014
  end-page: 1352
  ident: bb0140
  article-title: Automatic seizure detection in long-term scalp EEG using an adaptive thresholding technique: a validation study for clinical routine
  publication-title: Clin. Neurophysiol.
– volume: 107
  start-page: 27
  year: 1998
  end-page: 32
  ident: bb0095
  article-title: Seizures detection using a self organizing neural network: validation and comparison with other detection strategies
  publication-title: Electroencephalogr. Clin. Neurophysiol.
– start-page: 178
  year: 2016
  end-page: 190
  ident: bb0250
  article-title: Learning Robust Features using Deep Learning for Automatic Seizure Detection
  publication-title: Proceedings of the 1st Machine Learning for Healthcare Conference, Proceedings of Machine Learning Research
– volume: 123
  start-page: 69
  year: 2003
  end-page: 87
  ident: bb0015
  article-title: Analysis of EEG records in an epileptic patient using wavelet transform
  publication-title: J. Neurosci. Methods
– start-page: 1
  year: 2017
  end-page: 7
  ident: bb0070
  article-title: A study and comparison of human and deep learning recognition performance under visual distortions
  publication-title: 2017 26th International Conference on Computer Communication and Networks (ICCCN)
– year: 2004
  ident: bb0270
  article-title: Method and System for Detecting Seizures Using Electroencephalograms
– volume: 28
  start-page: 1850010
  year: 2018
  ident: bb0280
  article-title: Epileptic EEG Identification via LBP Operators on Wavelet Coefficients
  publication-title: Int. J. Neural Syst.
– year: 2010
  ident: bb0010
  article-title: Automated EEG-Based Diagnosis of Neurological Disorders
– year: 2012
  ident: bb0040
  article-title: Aminoff’s Electrodiagnosis in Clinical Neurology
– volume: 28
  start-page: 1850003
  year: 2018
  ident: bb0170
  article-title: Epileptic seizure detection based on time-frequency images of EEG signals using Gaussian mixture model and gray level co-occurrence matrix features
  publication-title: Int. J. Neural Syst.
– volume: 2014
  year: 2014
  ident: bb0145
  article-title: EEG-based emotion recognition using deep learning network with principal component based covariate shift adaptation
  publication-title: Sci. World J.
– volume: 42
  start-page: 60
  year: 2017
  end-page: 88
  ident: bb0175
  article-title: A survey on deep learning in medical image analysis
  publication-title: Med. Image Anal.
– volume: 33
  start-page: 1355
  year: 2012
  ident: 10.1016/j.nicl.2019.101684_bb0235
  article-title: State-dependent precursors of seizures in correlation-based functional networks of electrocorticograms of patients with temporal lobe epilepsy
  publication-title: Neurol. Sci.
  doi: 10.1007/s10072-012-0949-5
– volume: 55
  start-page: 512
  year: 2008
  ident: 10.1016/j.nicl.2019.101684_bb0120
  article-title: Principal component analysis-enhanced cosine radial basis function neural network for robust epilepsy and seizure detection
  publication-title: IEEE Trans. Biomed. Eng.
  doi: 10.1109/TBME.2007.905490
– start-page: 1111
  year: 2002
  ident: 10.1016/j.nicl.2019.101684_bb0065
  article-title: Clinical indications and diagnostic yield of video-electroencephalographic monitoring in patients with seizures and spells
– volume: 48
  start-page: 379
  year: 2007
  ident: 10.1016/j.nicl.2019.101684_bb0260
  article-title: Recommendations regarding the requirements and applications for long-term recordings in epilepsy
  publication-title: Epilepsia
  doi: 10.1111/j.1528-1167.2007.00920.x
– volume: 54
  start-page: 205
  year: 2007
  ident: 10.1016/j.nicl.2019.101684_bb0020
  article-title: A wavelet-chaos methodology for analysis of EEGs and EEG subbands to detect seizure and epilepsy
  publication-title: IEEE Trans. Biomed. Eng.
  doi: 10.1109/TBME.2006.886855
– volume: 76
  start-page: ii2
  year: 2005
  ident: 10.1016/j.nicl.2019.101684_bb0225
  article-title: EEG in the diagnosis, classification, and management of patients with epilepsy
  publication-title: J. Neurol. Neurosurg. Psychiatry
  doi: 10.1136/jnnp.2005.069245
– volume: 28
  start-page: 1850010
  year: 2018
  ident: 10.1016/j.nicl.2019.101684_bb0280
  article-title: Epileptic EEG Identification via LBP Operators on Wavelet Coefficients
  publication-title: Int. J. Neural Syst.
  doi: 10.1142/S0129065718500107
– volume: 26
  start-page: 56
  year: 2015
  ident: 10.1016/j.nicl.2019.101684_bb0085
  article-title: Wavelet-based EEG processing for computer-aided seizure detection and epilepsy diagnosis
  publication-title: Seizure
  doi: 10.1016/j.seizure.2015.01.012
– volume: 27
  start-page: 1750005
  year: 2017
  ident: 10.1016/j.nicl.2019.101684_bb0100
  article-title: Visibility graph from adaptive optimal kernel time-frequency representation for classification of epileptiform EEG
  publication-title: Int. J. Neural Syst.
  doi: 10.1142/S0129065717500058
– volume: 123
  start-page: 69
  year: 2003
  ident: 10.1016/j.nicl.2019.101684_bb0015
  article-title: Analysis of EEG records in an epileptic patient using wavelet transform
  publication-title: J. Neurosci. Methods
  doi: 10.1016/S0165-0270(02)00340-0
– start-page: 2848
  year: 2015
  ident: 10.1016/j.nicl.2019.101684_bb0180
  article-title: Resting state EEG-based biometrics for individual identification using convolutional neural networks
– start-page: 946
  year: 2014
  ident: 10.1016/j.nicl.2019.101684_bb0265
  article-title: Brain dynamics based automated epileptic seizure detection
– year: 2013
  ident: 10.1016/j.nicl.2019.101684_bb0190
  article-title: Review: a survey of performance and techniques for automatic epilepsy detection
  publication-title: J. Med. Biol. Eng.
  doi: 10.5405/jmbe.1463
– volume: 1
  start-page: 1
  year: 2012
  ident: 10.1016/j.nicl.2019.101684_bb0135
  article-title: Seizures and epilepsy: electrophysiological diagnosis
  publication-title: Epilepsy Board Rev. Man.
– volume: 59
  start-page: 420
  year: 2017
  ident: 10.1016/j.nicl.2019.101684_bb0240
  article-title: Association between scalp and intracerebral electroencephalographic seizure-onset patterns: a study in different lesional pathological substrates
  publication-title: Epilepsia
  doi: 10.1111/epi.13979
– volume: 28
  start-page: 1850003
  year: 2018
  ident: 10.1016/j.nicl.2019.101684_bb0170
  article-title: Epileptic seizure detection based on time-frequency images of EEG signals using Gaussian mixture model and gray level co-occurrence matrix features
  publication-title: Int. J. Neural Syst.
  doi: 10.1142/S012906571850003X
– volume: 115
  start-page: 2280
  year: 2004
  ident: 10.1016/j.nicl.2019.101684_bb0275
  article-title: Seizure detection: evaluation of the Reveal algorithm
  publication-title: Clin. Neurophysiol.
  doi: 10.1016/j.clinph.2004.05.018
– volume: 35
  start-page: 319
  year: 2013
  ident: 10.1016/j.nicl.2019.101684_bb0050
  article-title: Automatic seizure detection in SEEG using high frequency activities in wavelet domain
  publication-title: Med. Eng. Phys.
  doi: 10.1016/j.medengphy.2012.05.005
– volume: 76
  start-page: 317
  year: 1990
  ident: 10.1016/j.nicl.2019.101684_bb0130
  article-title: Automatic seizure detection: improvements and evaluation
  publication-title: Electroencephalogr. Clin. Neurophysiol.
  doi: 10.1016/0013-4694(90)90032-F
– volume: 115
  start-page: 211
  year: 2015
  ident: 10.1016/j.nicl.2019.101684_bb0195
  article-title: ImageNet large scale visual recognition challenge
  publication-title: Int. J. Comput. Vis.
  doi: 10.1007/s11263-015-0816-y
– year: 2014
  ident: 10.1016/j.nicl.2019.101684_bb0220
  article-title: Very deep convolutional networks for large-scale image recognition
  publication-title: arXiv
– start-page: 178
  year: 2016
  ident: 10.1016/j.nicl.2019.101684_bb0250
  article-title: Learning Robust Features using Deep Learning for Automatic Seizure Detection
– volume: 39
  start-page: 103
  year: 2000
  ident: 10.1016/j.nicl.2019.101684_bb0230
  article-title: An automated drug delivery system for focal epilepsy
  publication-title: Epilepsy Res.
  doi: 10.1016/S0920-1211(99)00107-2
– volume: 312
  start-page: 261
  year: 2015
  ident: 10.1016/j.nicl.2019.101684_bb0150
  article-title: Epilepsy seizure detection in EEG signals using wavelet transforms and neural networks
  publication-title: Lect. Notes Electr. Eng.
  doi: 10.1007/978-3-319-06764-3_33
– year: 2015
  ident: 10.1016/j.nicl.2019.101684_bb0165
  article-title: Deep learning
  publication-title: Nature
  doi: 10.1038/nature14539
– volume: 3
  start-page: 111
  year: 2004
  ident: 10.1016/j.nicl.2019.101684_bb0245
  article-title: Brain stimulation for epilepsy
  publication-title: Lancet Neurol.
  doi: 10.1016/S1474-4422(03)00664-1
– year: 2018
  ident: 10.1016/j.nicl.2019.101684_bb0030
  article-title: Deep classification of epileptic signals
  publication-title: arXiv Prepr.
– volume: 38
  start-page: 5391
  year: 2017
  ident: 10.1016/j.nicl.2019.101684_bb0210
  article-title: Deep learning with convolutional neural networks for EEG decoding and visualization
  publication-title: Hum. Brain Mapp.
  doi: 10.1002/hbm.23730
– volume: 34
  start-page: 1133
  year: 1935
  ident: 10.1016/j.nicl.2019.101684_bb0125
  article-title: The electro-encephalogram in epilepsy and in conditions of impaired consciousness
  publication-title: Arch. Neurol. Psychiatr.
  doi: 10.1001/archneurpsyc.1935.02250240002001
– volume: 10
  start-page: 343
  year: 2010
  ident: 10.1016/j.nicl.2019.101684_bb0060
  article-title: The tragedy of over-read EEGs and wrong diagnoses of epilepsy
  publication-title: Expert. Rev. Neurother.
  doi: 10.1586/ern.09.157
– volume: 107
  start-page: 27
  year: 1998
  ident: 10.1016/j.nicl.2019.101684_bb0095
  article-title: Seizures detection using a self organizing neural network: validation and comparison with other detection strategies
  publication-title: Electroencephalogr. Clin. Neurophysiol.
  doi: 10.1016/S0013-4694(98)00043-1
– year: 2010
  ident: 10.1016/j.nicl.2019.101684_bb0010
– volume: 546
  start-page: 115
  year: 2017
  ident: 10.1016/j.nicl.2019.101684_bb0080
  article-title: Dermatologist-level classification of skin cancer with deep neural networks
  publication-title: Nature
  doi: 10.1038/nature21056
– volume: 23
  start-page: 1
  year: 2000
  ident: 10.1016/j.nicl.2019.101684_bb0090
  article-title: Identifying montages that best detect electrographic seizure activity during polysomnography
  publication-title: Sleep
– volume: 5
  start-page: 79
  year: 2016
  ident: 10.1016/j.nicl.2019.101684_bb0035
  article-title: Presenting a spatial-geometric EEG feature to classify BMD and schizophrenic patients
  publication-title: Int. J. Adv. Telecommun. Electrotech. Signals Syst.
– year: 2014
  ident: 10.1016/j.nicl.2019.101684_bb0155
  article-title: Adam: a method for stochastic optimization
  publication-title: arXiv Prepr.
– volume: 139
  start-page: 2679
  year: 2016
  ident: 10.1016/j.nicl.2019.101684_bb0160
  article-title: Widespread changes in network activity allow non-invasive detection of mesial temporal lobe seizures
  publication-title: Brain
  doi: 10.1093/brain/aww198
– start-page: 98
  year: 2012
  ident: 10.1016/j.nicl.2019.101684_bb0045
  article-title: Classification of normal and epileptic EEG signal using time & frequency domain features through artificial neural network
– volume: 54
  start-page: 1545
  year: 2007
  ident: 10.1016/j.nicl.2019.101684_bb0115
  article-title: Mixed-band wavelet-chaos-neural network methodology for epilepsy and epileptic seizure detection
  publication-title: IEEE Trans. Biomed. Eng.
  doi: 10.1109/TBME.2007.891945
– year: 2004
  ident: 10.1016/j.nicl.2019.101684_bb0270
– year: 2012
  ident: 10.1016/j.nicl.2019.101684_bb0040
– volume: 14
  start-page: 187
  year: 2007
  ident: 10.1016/j.nicl.2019.101684_bb0105
  article-title: Improved spiking neural networks for EEG classification and epilepsy and seizure detection
  publication-title: Integr. Comput. Aided. Eng.
  doi: 10.3233/ICA-2007-14301
– volume: 45
  start-page: 274
  year: 2014
  ident: 10.1016/j.nicl.2019.101684_bb0215
  article-title: A wavelet-statistical features approach for nonconvulsive seizure detection
  publication-title: Clin. EEG Neurosci.
  doi: 10.1177/1550059414535465
– volume: 58
  start-page: 1817
  year: 2017
  ident: 10.1016/j.nicl.2019.101684_bb0025
  article-title: Automated analysis of seizure semiology and brain electrical activity in presurgery evaluation of epilepsy: a focused survey
  publication-title: Epilepsia
  doi: 10.1111/epi.13907
– volume: 42
  start-page: 60
  year: 2017
  ident: 10.1016/j.nicl.2019.101684_bb0175
  article-title: A survey on deep learning in medical image analysis
  publication-title: Med. Image Anal.
  doi: 10.1016/j.media.2017.07.005
– volume: 22
  start-page: 1419
  year: 2009
  ident: 10.1016/j.nicl.2019.101684_bb0110
  article-title: A new supervised learning algorithm for multiple spiking neural networks with application in epilepsy and seizure detection
  publication-title: Neural Netw.
  doi: 10.1016/j.neunet.2009.04.003
– volume: 116
  start-page: 427
  year: 2005
  ident: 10.1016/j.nicl.2019.101684_bb0200
  article-title: A system to detect the onset of epileptic seizures in scalp EEG
  publication-title: Clin. Neurophysiol.
  doi: 10.1016/j.clinph.2004.08.004
– volume: 140
  start-page: 1680
  year: 2017
  ident: 10.1016/j.nicl.2019.101684_bb0055
  article-title: Crowdsourcing seizure detection: algorithm development and validation on human implanted device recordings
  publication-title: Brain
  doi: 10.1093/brain/awx098
– volume: 125
  start-page: 1346
  year: 2014
  ident: 10.1016/j.nicl.2019.101684_bb0140
  article-title: Automatic seizure detection in long-term scalp EEG using an adaptive thresholding technique: a validation study for clinical routine
  publication-title: Clin. Neurophysiol.
  doi: 10.1016/j.clinph.2013.12.104
– volume: 100
  start-page: 270
  year: 2018
  ident: 10.1016/j.nicl.2019.101684_bb0005
  article-title: Deep convolutional neural network for the automated detection and diagnosis of seizure using EEG signals
  publication-title: Comput. Biol. Med.
  doi: 10.1016/j.compbiomed.2017.09.017
– volume: 12
  year: 2017
  ident: 10.1016/j.nicl.2019.101684_bb0075
  article-title: Connectivity maps based analysis of EEG for the advanced diagnosis of schizophrenia attributes
  publication-title: PLoS One
  doi: 10.1371/journal.pone.0185852
– year: 2016
  ident: 10.1016/j.nicl.2019.101684_bb0255
– start-page: 1
  year: 2017
  ident: 10.1016/j.nicl.2019.101684_bb0070
  article-title: A study and comparison of human and deep learning recognition performance under visual distortions
– volume: 49
  start-page: 213
  year: 1986
  ident: 10.1016/j.nicl.2019.101684_bb0185
  article-title: Anterior zygomatic electrodes: a special electrode for the study of temporal lobe epilepsy
  publication-title: Stereotact. Funct. Neurosurg.
  doi: 10.1159/000100148
– volume: 2014
  year: 2014
  ident: 10.1016/j.nicl.2019.101684_bb0145
  article-title: EEG-based emotion recognition using deep learning network with principal component based covariate shift adaptation
  publication-title: Sci. World J.
  doi: 10.1155/2014/627892
– volume: 11
  start-page: 973
  year: 2016
  ident: 10.1016/j.nicl.2019.101684_bb0205
  article-title: An empirical analysis of different machine learning techniques for classification of EEG signal to detect epileptic seizure
  publication-title: Int. J. Appl. Eng. Res.
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Snippet We hypothesized that expert epileptologists can detect seizures directly by visually analyzing EEG plot images, unlike automated methods that analyze...
AbstractWe hypothesized that expert epileptologists can detect seizures directly by visually analyzing EEG plot images, unlike automated methods that analyze...
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StartPage 101684
SubjectTerms Adolescent
Adult
Child
Convolutional neural networks
Deep Learning
Electroencephalography - methods
Electroencephalography - standards
Epilepsies, Partial - diagnosis
Epileptic seizure
Female
Humans
Image Processing, Computer-Assisted - methods
Image Processing, Computer-Assisted - standards
Male
Middle Aged
Radiology
Regular
Scalp
Scalp electroencephalogram
Seizure detection
Seizures - diagnosis
Sensitivity and Specificity
Young Adult
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Title Seizure detection by convolutional neural network-based analysis of scalp electroencephalography plot images
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