A Novel Spike-Wave Discharge Detection Framework Based on the Morphological Characteristics of Brain Electrical Activity Phase Space in an Animal Model

Saleh Lashkari, A. Moghimi, H. Kobravi, M. A. Younessi Heravi
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Abstract

Background: Animal models of absence epilepsy are widely used in childhood absence epilepsy studies. Absence seizures appear in the brain’s electrical activity as a specific spike wave discharge (SWD) pattern. Reviewing long-term brain electrical activity is time-consuming and automatic methods are necessary. On the other hand, nonlinear techniques such as phase space are effective in brain electrical activity analysis. In this study, we present a novel SWD-detection framework based on the geometrical characteristics of the phase space. Methods: The method consists of the following steps: (1) Rat stereotaxic surgery and cortical electrode implantation, (2) Long-term brain electrical activity recording, (3) Phase space reconstruction, (4) Extracting geometrical features such as volume, occupied space, and curvature of brain signal trajectories, and (5) Detecting SDWs based on the thresholding method. We evaluated the approach with the accuracy of the SWDs detection method. Results: It has been demonstrated that the features change significantly in transition from a normal state to epileptic seizures. The proposed approach detected SWDs with 98% accuracy. Conclusion: The result supports that nonlinear approaches can identify the dynamics of brain electrical activity signals.
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基于动物脑电活动相空间形态特征的新型尖峰波放电检测框架
背景:缺席癫痫的动物模型被广泛用于儿童缺席癫痫的研究。失神发作在大脑的电活动中表现为一种特定的尖峰波放电(SWD)模式。回顾长期的脑电活动是耗时的,自动方法是必要的。另一方面,相位空间等非线性技术在脑电活动分析中是有效的。在这项研究中,我们提出了一种新的基于相空间几何特征的SWD检测框架。方法:该方法包括以下步骤:(1)大鼠立体定向手术和皮层电极植入,(2)长期脑电活动记录,(3)相空间重建,(4)提取脑信号轨迹的体积、占用空间和曲率等几何特征,(5)基于阈值法检测SDW。我们用SWD检测方法的准确性对该方法进行了评估。结果:研究表明,在从正常状态到癫痫发作的过渡过程中,癫痫发作的特征发生了显著变化。所提出的方法检测SWD的准确率为98%。结论:该结果支持非线性方法可以识别脑电活动信号的动力学。
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审稿时长
4 weeks
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