Automated Patient-Specific Classification of Long-Term Electroencephalography

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Date

2014

Journal Title

Journal ISSN

Volume Title

Publisher

Academic Press Inc Elsevier Science

Open Access Color

HYBRID

Green Open Access

No

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No
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Top 10%
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Top 10%
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Top 1%

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Abstract

This paper presents a novel systematic approach for patient-specific classification of long-term Electroencephalography (EEG). The goal is to extract the seizure sections with a high accuracy to ease the Neurologist's burden of inspecting such long-term EEG data. We aim to achieve this using the minimum feedback from the Neurologist. To accomplish this, we use the majority of the state-of-the-art features proposed in this domain for evolving a collective network of binary classifiers (CNBC) using multi-dimensional particle swarm optimization (MD PSO). Multiple CNBCs are then used to form a CNBC ensemble (CNBC-E), which aggregates epileptic seizure frames from the classification map of each CNBC in order to maximize the sensitivity rate. Finally, a morphological filter forms the final epileptic segments while filtering out the outliers in the form of classification noise. The proposed system is fully generic, which does not require any a priori information about the patient such as the list of relevant EEG channels. The results of the classification experiments, which are performed over the benchmark CHB-MIT scalp long-term EEG database show that the proposed system can achieve all the aforementioned objectives and exhibits a significantly superior performance compared to several other state-of-the-art methods. Using a limited training dataset that is formed by less than 2 min of seizure and 24 min of non-seizure data on the average taken from the early 25% section of the EEG record of each patient, the proposed system establishes an average sensitivity rate above 89% along with an average specificity rate above 93% over the test set. (C) 2014 Elsevier Inc. All rights reserved.

Description

Keywords

EEG classification, Seizure event detection, Evolutionary classifiers, Morphological filtering, Feature-Selection, Epileptic Seizures, Mutual Information, Algorithm, Relevance, Onset, Automation, Humans, Health Informatics, Electroencephalography, Computer Science Applications

Fields of Science

0206 medical engineering, 0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology

Citation

WoS Q

Q2

Scopus Q

Q1
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OpenCitations Citation Count
68

Source

Journal of Bıomedıcal Informatıcs

Volume

49

Issue

Start Page

16

End Page

31
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CrossRef : 17

Scopus : 76

PubMed : 13

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Mendeley Readers : 53

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76

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Web of Science™ Citations

64

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3

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14

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