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首页> 外文期刊>Cognitive Neurodynamics >Complex network based models of ECoG signals for detection of induced epileptic seizures in rats
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Complex network based models of ECoG signals for detection of induced epileptic seizures in rats

机译:基于复杂的ECOG信号模型,用于检测大鼠诱导癫痫发作

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The automatic detection of seizures bears a considerable significance in epileptic diagnosis as it can efficiently lead to a considerable reduction of the workload of the medical staff. The present study aims at automatic detecting epileptic seizures in epileptic rats. To this end, seizures were induced in rats implementing the pentylenetetrazole model, with the electrocorticogram (ECoG) signals during, before and after the seizure periods being recorded. For this purpose, five algorithms for transforming time series into complex networks based on visibility graph (VG) algorithm were used. In this study, VG based methods were used for the first time to analyze ECoG signals in rats. Afterward, Standard measures in network science (graph properties) were made to examine the topological structure of these networks produced on the basis of ECoG signals. Then these measures were given to a classifier as input features so that the ECoG signals could be classified into seizure periods and seizure-free periods. Artificial Neural Network, considered a popular classifier, was used in this work. The experimental results showed that the method managed to detect epileptic seizure in rats with a high accuracy of 92.13%. Our proposed method was also applied to the recorded EEG signals from Bonn database to show the efficiency of the proposed method for human seizure detection.
机译:癫痫发作的自动检测在癫痫诊断中具有相当大的意义,因为它可以有效地导致医务人员的工作量相当减少。本研究旨在自动检测癫痫大鼠癫痫发作。为此,在实施五苯甲酸四唑模型的大鼠中诱导癫痫发作,在记录癫痫发作期间和之后的电加声图(ECOG)信号。为此目的,使用了用于将时间序列转换为基于可见性图(VG)算法的复杂网络的五种算法。在本研究中,第一次使用基于VG的方法来分析大鼠的ECOG信号。之后,进行了网络科学(图形属性)的标准措施,以检查基于ECOG信号产生的这些网络的拓扑结构。然后将这些措施给予分类器作为输入特征,使得ECOG信号可以被分类为癫痫发作期和无癫痫潜会。在这项工作中使用了人工神经网络,被认为是流行的分类器。实验结果表明,该方法在高精度为92.13%的大鼠中检测癫痫癫痫发作。我们所提出的方法也应用于来自波恩数据库的记录的EEG信号,以显示提出的人类癫痫发作方法的效率。

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