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基于复杂性的图卷积神经网络用于正常、急性和慢性阶段的癫痫诊断

Complexity-based graph convolutional neural network for epilepsy diagnosis in normal, acute, and chronic stages.

作者信息

Zheng Shiming, Zhang Xiaopei, Song Panpan, Hu Yue, Gong Xi, Peng Xiaoling

机构信息

Guangdong Provincial Key Laboratory of Interdisciplinary Research and Application for Data Science, BNU-HKBU United International College, Zhuhai, China.

Department of Neurology, Children's Hospital of Chongqing Medical University, Chongqing, China.

出版信息

Front Comput Neurosci. 2023 Sep 29;17:1211096. doi: 10.3389/fncom.2023.1211096. eCollection 2023.

Abstract

INTRODUCTION

The automatic precision detection technology based on electroencephalography (EEG) is essential in epilepsy studies. It can provide objective proof for epilepsy diagnosis, treatment, and evaluation, thus helping doctors improve treatment efficiency. At present, the normal and acute phases of epilepsy can be well identified through EEG analysis, but distinguishing between the normal and chronic phases is still tricky.

METHODS

In this paper, five popular complexity indicators of EEG signal, including approximate entropy, sample entropy, permutation entropy, fuzzy entropy and Kolmogorov complexity, are computed from rat hippocampi to characterize the normal, acute, and chronic phases during epileptogenesis. Results of one-way ANOVA and principal component analysis both show that utilizing complexity features, we are able to easily identify differences between normal, acute, and chronic phases. We also propose an innovative framework for epilepsy detection based on graph convolutional neural network (GCNN) using multi-channel EEG complexity as input.

RESULTS

Combining information of five complexity measures at eight channels, our GCNN model demonstrate superior ability in recognizing the normal, acute, and chronic phases. Experiments results show that our GCNN model reached the high prediction accuracy above 98% and F1 score above 97% among these three phases for each individual rat.

DISCUSSION

Our research practice based on real data shows that EEG complexity characteristics are of great significance for recognizing different stages of epilepsy.

摘要

引言

基于脑电图(EEG)的自动精确检测技术在癫痫研究中至关重要。它可以为癫痫的诊断、治疗和评估提供客观依据,从而帮助医生提高治疗效率。目前,通过脑电图分析可以很好地识别癫痫的正常阶段和急性期,但区分正常阶段和慢性阶段仍然很棘手。

方法

本文从大鼠海马体计算了脑电图信号的五个常用复杂性指标,包括近似熵、样本熵、排列熵、模糊熵和柯尔莫哥洛夫复杂性,以表征癫痫发生过程中的正常、急性和慢性阶段。单因素方差分析和主成分分析结果均表明,利用复杂性特征,我们能够轻松识别正常、急性和慢性阶段之间的差异。我们还提出了一种基于图卷积神经网络(GCNN)的创新癫痫检测框架,该框架使用多通道脑电图复杂性作为输入。

结果

结合八个通道的五个复杂性度量的信息,我们的GCNN模型在识别正常、急性和慢性阶段方面表现出卓越的能力。实验结果表明,我们的GCNN模型在每只大鼠的这三个阶段中达到了高于98%的高预测准确率和高于97%的F1分数。

讨论

我们基于真实数据的研究实践表明,脑电图复杂性特征对于识别癫痫的不同阶段具有重要意义。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1700/10570412/a77e58d48cce/fncom-17-1211096-g0001.jpg

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