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Detection of epileptic seizure based on entropy analysis of short-term EEG

机译:基于短期脑电图熵分析的癫痫发作检测

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摘要

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.
机译:评估信号复杂性的熵测度方法最近在生物医学领域引起了越来越多的关注,因为它们已经显示出捕获固有的和生理学上有意义的特征的能力。在这项研究中,我们将熵分析应用于脑电图(EEG)数据,以基于短期脑电图检查其在癫痫检测中的性能,旨在建立具有最佳癫痫发作检测性能的短期分析方案。考虑了两个分类问题,即:1)从正常脑电图对发作性和发作性脑电图(癫痫组)进行分类; 2)从发作间脑电图分类发作发作。对于每个问题,我们探索了两种协议来分析EEG的熵:i)使用具有不同窗口长度的单个分析窗口,以及ii)使用每个窗口长度的多个窗口的平均值。使用了两种熵方法-模糊熵(FuzzyEn)和分布熵(DistEn)-对于任何给定的数据长度,它们都具有有效的输出。我们基于交叉验证过程执行了特征选择和训练有素的分类器。结果表明,FuzzyEn和DistEn的性能可以互补,并且可以通过组合以下方法获得最佳性能:1)一个5 s窗口的FuzzyEn和5个1 s窗口的平均DistEn用于将癫痫组的正常分类(准确度) :0.93,灵敏度:0.91,特异性:0.96); 2)五个1-s窗口的平均FuzzyEn和一个5-s窗口的DistEn用于从发作间脑电图中对发作进行分类(准确性:0.91,灵敏度:0.93,特异性:0.90)。有必要进行进一步的研究,以检查这种提议的短期分析程序是否可以帮助实时跟踪癫痫活动并为临床实践提供及时的反馈。

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