Literature DB >> 27032931

Optimal training dataset composition for SVM-based, age-independent, automated epileptic seizure detection.

J G Bogaarts1, E D Gommer2, D M W Hilkman2, V H J M van Kranen-Mastenbroek2, J P H Reulen2.   

Abstract

Automated seizure detection is a valuable asset to health professionals, which makes adequate treatment possible in order to minimize brain damage. Most research focuses on two separate aspects of automated seizure detection: EEG feature computation and classification methods. Little research has been published regarding optimal training dataset composition for patient-independent seizure detection. This paper evaluates the performance of classifiers trained on different datasets in order to determine the optimal dataset for use in classifier training for automated, age-independent, seizure detection. Three datasets are used to train a support vector machine (SVM) classifier: (1) EEG from neonatal patients, (2) EEG from adult patients and (3) EEG from both neonates and adults. To correct for baseline EEG feature differences among patients feature, normalization is essential. Usually dedicated detection systems are developed for either neonatal or adult patients. Normalization might allow for the development of a single seizure detection system for patients irrespective of their age. Two classifier versions are trained on all three datasets: one with feature normalization and one without. This gives us six different classifiers to evaluate using both the neonatal and adults test sets. As a performance measure, the area under the receiver operating characteristics curve (AUC) is used. With application of FBC, it resulted in performance values of 0.90 and 0.93 for neonatal and adult seizure detection, respectively. For neonatal seizure detection, the classifier trained on EEG from adult patients performed significantly worse compared to both the classifier trained on EEG data from neonatal patients and the classier trained on both neonatal and adult EEG data. For adult seizure detection, optimal performance was achieved by either the classifier trained on adult EEG data or the classifier trained on both neonatal and adult EEG data. Our results show that age-independent seizure detection is possible by training one classifier on EEG data from both neonatal and adult patients. Furthermore, our results indicate that for accurate age-independent seizure detection, it is important that EEG data from each age category are used for classifier training. This is particularly important for neonatal seizure detection. Our results underline the under-appreciated importance of training dataset composition with respect to accurate age-independent seizure detection.

Entities:  

Keywords:  Age independent; Classification; Electroencephalography; Epilepsy; Support vector machines

Mesh:

Year:  2016        PMID: 27032931      PMCID: PMC4958398          DOI: 10.1007/s11517-016-1468-y

Source DB:  PubMed          Journal:  Med Biol Eng Comput        ISSN: 0140-0118            Impact factor:   2.602


  27 in total

1.  Automated neonatal seizure detection: a multistage classification system through feature selection based on relevance and redundancy analysis.

Authors:  A Aarabi; F Wallois; R Grebe
Journal:  Clin Neurophysiol       Date:  2005-12-22       Impact factor: 3.708

2.  Seizure detection algorithm for neonates based on wave-sequence analysis.

Authors:  Michael A Navakatikyan; Paul B Colditz; Chris J Burke; Terrie E Inder; Jane Richmond; Christopher E Williams
Journal:  Clin Neurophysiol       Date:  2006-04-19       Impact factor: 3.708

3.  Electrophysiological brain maturation in premature infants: an historical perspective.

Authors:  B R Tharp
Journal:  J Clin Neurophysiol       Date:  1990-07       Impact factor: 2.177

4.  The impact of signal normalization on seizure detection using line length features.

Authors:  Lojini Logesparan; Esther Rodriguez-Villegas; Alexander J Casson
Journal:  Med Biol Eng Comput       Date:  2015-05-16       Impact factor: 2.602

5.  A comparison of quantitative EEG features for neonatal seizure detection.

Authors:  B R Greene; S Faul; W P Marnane; G Lightbody; I Korotchikova; G B Boylan
Journal:  Clin Neurophysiol       Date:  2008-04-01       Impact factor: 3.708

Review 6.  Seizure detection, seizure prediction, and closed-loop warning systems in epilepsy.

Authors:  Sriram Ramgopal; Sigride Thome-Souza; Michele Jackson; Navah Ester Kadish; Iván Sánchez Fernández; Jacquelyn Klehm; William Bosl; Claus Reinsberger; Steven Schachter; Tobias Loddenkemper
Journal:  Epilepsy Behav       Date:  2014-08-29       Impact factor: 2.937

7.  A multistage knowledge-based system for EEG seizure detection in newborn infants.

Authors:  Ardalan Aarabi; Reinhard Grebe; Fabrice Wallois
Journal:  Clin Neurophysiol       Date:  2007-10-01       Impact factor: 3.708

8.  EEG detection of nontonic-clonic status epilepticus in patients with altered consciousness.

Authors:  M Privitera; M Hoffman; J L Moore; D Jester
Journal:  Epilepsy Res       Date:  1994-06       Impact factor: 3.045

9.  EEG-based neonatal seizure detection with Support Vector Machines.

Authors:  A Temko; E Thomas; W Marnane; G Lightbody; G Boylan
Journal:  Clin Neurophysiol       Date:  2010-08-14       Impact factor: 3.708

10.  Normality tests for statistical analysis: a guide for non-statisticians.

Authors:  Asghar Ghasemi; Saleh Zahediasl
Journal:  Int J Endocrinol Metab       Date:  2012-04-20
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  6 in total

1.  Classification of Focal and Non Focal Epileptic Seizures Using Multi-Features and SVM Classifier.

Authors:  N Sriraam; S Raghu
Journal:  J Med Syst       Date:  2017-09-02       Impact factor: 4.460

2.  Automated epileptic seizures detection using multi-features and multilayer perceptron neural network.

Authors:  N Sriraam; S Raghu; Kadeeja Tamanna; Leena Narayan; Mehraj Khanum; A S Hegde; Anjani Bhushan Kumar
Journal:  Brain Inform       Date:  2018-09-03

3.  Beta Electroencephalographic Oscillation Is a Potential GABAergic Biomarker of Chronic Peripheral Neuropathic Pain.

Authors:  Micael Teixeira; Christian Mancini; Corentin Aurèle Wicht; Gianluca Maestretti; Thierry Kuntzer; Dario Cazzoli; Michael Mouthon; Jean-Marie Annoni; Joelle Nsimire Chabwine
Journal:  Front Neurosci       Date:  2021-02-26       Impact factor: 4.677

Review 4.  Current Status and Future Directions of Neuromonitoring With Emerging Technologies in Neonatal Care.

Authors:  Gabriel Fernando Todeschi Variane; João Paulo Vasques Camargo; Daniela Pereira Rodrigues; Maurício Magalhães; Marcelo Jenné Mimica
Journal:  Front Pediatr       Date:  2022-03-23       Impact factor: 3.418

5.  A Novel Permutation Entropy-Based EEG Channel Selection for Improving Epileptic Seizure Prediction.

Authors:  Jee S Ra; Tianning Li; Yan Li
Journal:  Sensors (Basel)       Date:  2021-11-29       Impact factor: 3.576

Review 6.  Bio-Signal Complexity Analysis in Epileptic Seizure Monitoring: A Topic Review.

Authors:  Zhenning Mei; Xian Zhao; Hongyu Chen; Wei Chen
Journal:  Sensors (Basel)       Date:  2018-05-26       Impact factor: 3.576

  6 in total

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