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Entropy-based analysis and classification of acute tonic pain from microwave transcranial signals obtained via the microwave-scattering approach

机译:通过微波散射方法获得的微波经颅信号急性滋补疼痛的基于熵分析及分类

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摘要

The use of microwave technology to detect pain-related neural activities has been demonstrated in the context of a cold pressure test (CPT). However, the selection of appropriate algorithms for extracting and selecting CPT and no pain (NP) features and the quantitative assessment of specific pain types in microwave signals remain problematic. For this purpose, multiscale fluctuation-based dispersion entropy (MFDE) and power spectral Shannon entropy (PSSE) are proposed in this study on the basis of time- and frequency-domain changes as features to ameliorate the problem of concern, respectively. First, the time series is decomposed into several components by using two algorithms, namely, empirical mode decomposition and variational mode decomposition (VMD), and the components in the specified frequency domain are selected in accordance with the spectral diagram. Second, the selected components are used to extract MFDE and PSSE entropy features, and the minimalredundancy-maximal-relevance (mRMR) criterion and principal component analysis (PCA) algorithms are used to select the features. The performance of different feature selection models is evaluated and compared on the basis of support vector machine (SVM), K-nearest neighbors, linear discriminant analysis, and naive Bayes. Results showed that the highest classification performance is obtained using SVM. The entropy-based features in the VMD-mRMR domain obtain high classification values in accuracy (93.25 %), sensitivity (94.44 %), specificity (90.91 %), positive predictive value (89.47 %), and area under curve (0.8238) in the SVM classifier. This classifier exhibits a broad application prospect for the detection of brain activities and the recognition of microwave neural signals via the microwave-scattering method.
机译:在冷压试验(CPT)的背景下,已经证明了微波技术来检测疼痛相关的神经活动。然而,用于提取和选择CPT的适当算法以及无疼痛(NP)特征和微波信号中特定疼痛类型的定量评估仍然存在问题。为此目的,基于多尺寸波动的分散熵(MFDE)和功率谱Shannon熵(PSSE)在本研究中提出了基于时间和频域的变化,分别为改善问题的问题。首先,时间序列通过使用两个算法,即经验模式分解和变分模式分解(VMD),并且根据光谱图选择指定频域中的组件。其次,所选组件用于提取MFDE和PSSE熵特征,并且最小化的最大关联(MRMR)标准和主成分分析(PCA)算法用于选择特征。根据支持向量机(SVM),K-CORMALE邻居,线性判别分析和幼稚贝叶斯评估不同特征选择模型的性能。结果表明,使用SVM获得了最高分类性能。 VMD-MRMR结构域中的基于熵的特征在精度(93.25%),敏感度(94.44%),特异性(90.91%),阳性预测值(89.47%)和曲线中的面积(0.8238) SVM分类器。该分类器展示了通过微波散射法检测大脑活动和微波神经信号的广泛应用前景。

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