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Classification of Epileptiform Events in Raw EEG Signals using Neural Classifier

机译:使用神经分类器对原始EEG信号中的癫痫样事件进行分类

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This study evaluated the capability of neural classifier to perform the separation between epileptiform and non-epileptiform events. To processing the EEG signals was used the Wavelet Transform through the use of the Coifletl function. The main elements present in the EEC signals were separated in five distinct event classes (spikes, sharp waves, blinks, background activity and noise). All the events were processed from first to the tenth decomposition level of the Wavelet Transform, where were generated graphics with the dispersion of each event class. Some experiments were made to try define a decision threshold to separate the groups of elements using the Coifletl function. The obtained results showed that only the amplitude of a decomposed signal don't show a distinction between the events classes. Thus, the raw epochs of EEG signals were applied directly in the neural network inputs. To evaluate the neural networks was used the method of cross-validation with early stopping. For the neural classifier was used ROC analysis and performance indexes applied to the diagnostic tests. The experiments have shown that the use of any epoch of training, indicated by the performance indexes (AUC and accuracy) showed the better results. The epochs indicated by the performance indexes were located close to the epoch indicated by the early stopping. The evaluation through of those indexes showed be an efficient method to verify the performance of the classifier, getting the following performance values: AUC index of 0,99910, sensitivity of 97,14%, specificity of 94,55% and an accuracy of 96,14%.
机译:这项研究评估了神经分类器在癫痫样和非癫痫样事件之间进行分离的能力。为了处理脑电信号,使用了Coifletl函数的小波变换。 EEC信号中存在的主要元素分为五个不同的事件类别(尖峰,尖波,眨眼,背景活动和噪音)。从小波变换的第一个分解等级到第十个分解等级处理所有事件,并在其中生成具有每个事件类别离散度的图形。进行了一些实验以尝试定义决策阈值,以使用Coifletl函数来分离元素组。获得的结果表明,仅分解信号的幅度并未在事件类别之间显示出区别。因此,脑电信号的原始时期被直接应用到神经网络输入中。为了评估神经网络,使用了交叉验证与早期停止的方法。对于神经分类器,使用ROC分析并将性能指标应用于诊断测试。实验表明,由性能指标(AUC和准确性)指示的任何训练时期的使用都显示出更好的结果。性能指标指示的时期位于早期停车指示的时期附近。通过这些指标的评估显示出是验证分类器性能的有效方法,获得了以下性能值:AUC指标为0,99910,灵敏度为97,14%,特异性为94,55%,准确度为96 ,14%。

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