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使用快速沃尔什-哈达玛变换和人工神经网络检测局部和非局部脑电图信号。

Detection of Focal and Non-Focal Electroencephalogram Signals Using Fast Walsh-Hadamard Transform and Artificial Neural Network.

机构信息

Department of Electronics and Communication Engineering, Karunya Institute of Technology and Sciences, Tamil Nadu 641114, India.

Department of Electrical and Electronics Engineering, Karunya Institute of Technology and Sciences, Tamil Nadu 641114, India.

出版信息

Sensors (Basel). 2020 Sep 1;20(17):4952. doi: 10.3390/s20174952.

Abstract

The discrimination of non-focal class (NFC) and focal class (FC), is vital in localizing the epileptogenic zone (EZ) during neurosurgery. In the conventional diagnosis method, the neurologist has to visually examine the long hour electroencephalogram (EEG) signals, which consumes time and is prone to error. Hence, in this present work, automated diagnosis of FC EEG signals from NFC EEG signals is developed using the Fast Walsh-Hadamard Transform (FWHT) method, entropies, and artificial neural network (ANN). The FWHT analyzes the EEG signals in the frequency domain and decomposes it into the Hadamard coefficients. Five different nonlinear features, namely approximate entropy (ApEn), log-energy entropy (LogEn), fuzzy entropy (FuzzyEn), sample entropy (SampEn), and permutation entropy (PermEn) are extracted from the decomposed Hadamard coefficients. The extracted features detail the nonlinearity in the NFC and the FC EEG signals. The judicious entropy features are supplied to the ANN classifier, with a 10-fold cross-validation method to classify the NFC and FC classes. Two publicly available datasets such as the University of Bonn and Bern-Barcelona dataset are used to evaluate the proposed approach. A maximum sensitivity of 99.70%, the accuracy of 99.50%, and specificity of 99.30% with the 3750 pairs of NFC and FC signal are achieved using the Bern-Barcelona dataset, while the accuracy of 92.80%, the sensitivity of 91%, and specificity of 94.60% is achieved using University of Bonn dataset. Compared to the existing technique, the proposed approach attained a maximum classification performance in both the dataset.

摘要

非病灶类 (NFC) 和病灶类 (FC) 的区分对于神经外科中致痫区 (EZ) 的定位至关重要。在传统诊断方法中,神经科医生必须直观地检查数小时的脑电图 (EEG) 信号,这既耗时又容易出错。因此,在本研究中,使用快速沃尔什-哈达玛变换 (FWHT) 方法、熵和人工神经网络 (ANN) 开发了从 NFC EEG 信号自动诊断 FC EEG 信号的方法。FWHT 在频域中分析 EEG 信号,并将其分解为哈达玛系数。从分解的哈达玛系数中提取了五个不同的非线性特征,即近似熵 (ApEn)、对数能量熵 (LogEn)、模糊熵 (FuzzyEn)、样本熵 (SampEn) 和排列熵 (PermEn)。提取的特征详细描述了 NFC 和 FC EEG 信号的非线性。明智的熵特征被提供给 ANN 分类器,使用 10 折交叉验证方法对 NFC 和 FC 类进行分类。使用两个公开可用的数据集,即波恩大学和巴塞罗纳-贝尔纳数据集,评估所提出的方法。使用巴塞罗纳-贝尔纳数据集,对 3750 对 NFC 和 FC 信号,达到了 99.70%的最大灵敏度、99.50%的准确率和 99.30%的特异性,而使用波恩大学数据集,达到了 92.80%的准确率、91%的灵敏度和 94.60%的特异性。与现有技术相比,该方法在两个数据集上都达到了最大的分类性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/51cf/7506968/431b681c13e0/sensors-20-04952-g001.jpg

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