Abstract

Entropy measures that assess signals’ complexity have drawn increasing attention recently in biomedical field, as they have shown the ability of capturing unique features that are intrinsic and physiologically meaningful. In this study, we applied entropy analysis to electroencephalogram (EEG) data to examine its performance in epilepsy detection based on short-term EEG, aiming at establishing a short-term analysis protocol with optimal seizure detection performance. Two classification problems were considered, i.e., 1) classifying interictal and ictal EEGs (epileptic group) from normal EEGs; and 2) classifying ictal from interictal EEGs. For each problem, we explored two protocols to analyze the entropy of EEG: i) using a single analytical window with different window lengths, and ii) using an average of multiple windows for each window length. Two entropy methods—fuzzy entropy (FuzzyEn) and distribution entropy (DistEn)–were used that have valid outputs for any given data lengths. We performed feature selection and trained classifiers based on a cross-validation process. The results show that performance of FuzzyEn and DistEn may complement each other and the best performance can be achieved by combining: 1) FuzzyEn of one 5-s window and the averaged DistEn of five 1-s windows for classifying normal from epileptic group (accuracy: 0.93, sensitivity: 0.91, specificity: 0.96); and 2) the averaged FuzzyEn of five 1-s windows and DistEn of one 5-s window for classifying ictal from interictal EEGs (accuracy: 0.91, sensitivity: 0.93, specificity: 0.90). Further studies are warranted to examine whether this proposed short-term analysis procedure can help track the epileptic activities in real time and provide prompt feedback for clinical practices.

Highlights

  • Epilepsy affects approximately 9 million people in China [1] and more than 65 million people worldwide [2]

  • Their fuzzy entropy (FuzzyEn) and distribution entropy (DistEn) results calculated based on protocol Multiple windows protocol (MP) are shown in the right two panels of Fig 3

  • We proposed two protocols to analyze the entropy, i.e., FuzzyEn and DistEn, of EEGs with an aim of detecting epileptic activities based on nonlinear EEG dynamics

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Summary

Introduction

Epilepsy affects approximately 9 million people in China [1] and more than 65 million people worldwide [2]. It is the fourth most common neurological disorder in the USA [2]. Nsfc.gov.cn) under Grant 61471223 and the Department of Science & Technology of Shandong Province (http://www.sdstc.gov.cn/) under Grants 2014GSF118030 and 2015GSF118179. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript

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