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Epileptic seizures in a heterogeneous excitatory network with short-term plasticity.具有短期可塑性的异质性兴奋性网络中的癫痫发作
Cogn Neurodyn. 2021 Feb;15(1):43-51. doi: 10.1007/s11571-020-09582-w. Epub 2020 Mar 16.
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On the Potential of Time Delay Neural Networks to Detect Indirect Coupling between Time Series.论时延神经网络检测时间序列间间接耦合的潜力。
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The EEG Signal Analysis for Spatial Cognitive Ability Evaluation Based on Multivariate Permutation Conditional Mutual Information-Multi-Spectral Image.基于多元排列条件互信息-多谱图像的空间认知能力评估的 EEG 信号分析
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Seizure localization using EEG analytical signals.利用 EEG 分析信号进行癫痫定位。
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Optimal Stimulation Protocol in a Bistable Synaptic Consolidation Model.双稳态突触巩固模型中的最佳刺激方案
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用于估计脑电图信号之间信息流的深层基序方法

Deep-layer motif method for estimating information flow between EEG signals.

作者信息

Fan Denggui, Wang Hui, Wang Jun

机构信息

School of Mathematics and Physics, University of Science and Technology Beijing, Beijing, 100083 China.

School of Information Network Security, People's Public Security University of China, Beijing, 100038 China.

出版信息

Cogn Neurodyn. 2022 Aug;16(4):819-831. doi: 10.1007/s11571-021-09759-x. Epub 2022 Jan 5.

DOI:10.1007/s11571-021-09759-x
PMID:35847539
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9279550/
Abstract

Accurate identification for the information flow between epileptic seizure signals is the key to construct the directional epileptic brain network which can be used to localize epileptic focus. In this paper, our concern is on how to improve the direction identification of information flow and also investigate how it can be cut off or weakened. In view of this, we propose the deep-layer motif method. Based on the directional index (DI) estimation using permutation conditional mutual information, the effectiveness of the proposed deep-layer motif method is numerically assessed with the coupled mass neural model. Furthermore, we investigate the robustness of this method in considering the interference of autaptic coupling, time delay and short-term plasticity. Results show that compared to the simple 1-layer motif method, the 2nd- and 3rd-layer motif methods have the dominant enhancement effects for the direction identification. In particular, deep-layer motif method possesses good anti-jamming performance and good robustness in calculating DI. In addition, we investigate the effect of deep brain stimulation (DBS) on the information flow. It is found that this deep-layer motif method is still superior to the single-layer motif method in direction identification and is robust to weak DBS. However, the high-frequency strong DBS can effectively decrease the DI suggesting the weakened information flow. These results may give new insights into the seizure detection and control.

摘要

准确识别癫痫发作信号之间的信息流是构建可用于定位癫痫病灶的定向癫痫脑网络的关键。在本文中,我们关注的是如何改进信息流方向识别,并研究如何切断或减弱信息流。鉴于此,我们提出了深层基序方法。基于使用排列条件互信息的方向指数(DI)估计,用耦合质量神经模型对所提出的深层基序方法的有效性进行了数值评估。此外,我们研究了该方法在考虑自突触耦合、时间延迟和短期可塑性干扰时的鲁棒性。结果表明,与简单的单层基序方法相比,第二层和第三层基序方法在方向识别方面具有显著的增强效果。特别是,深层基序方法在计算DI时具有良好的抗干扰性能和鲁棒性。此外,我们研究了深部脑刺激(DBS)对信息流的影响。发现这种深层基序方法在方向识别方面仍优于单层基序方法,并且对弱DBS具有鲁棒性。然而,高频强DBS可以有效地降低DI,表明信息流减弱。这些结果可能为癫痫发作的检测和控制提供新的见解。