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Decoding of Subjective Pain-Sensitivity by Brain Signal Analysis Using a General Type-2 Fuzzy Classifier

机译:一种使用普通型模糊分类器对脑信号分析进行主观疼痛敏感性的解码

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The prime mechanism governing the variability of pain perception across different subjects is still unexplored. This paper intends to develop a novel methodology to investigate this phenomenon using EEG signal analysis system. First, the EEG signals are procured from the scalp of subjects who are presented with three types of touch stimuli: heat, bristles and pinch with varying intensity levels. The raw brain signals acquired are analyzed using eLORETA software that confirms the involvement of primary somatosensory cortex and dorsal region of anterior cingulate cortex for this cognitive activity. Additionally, frequency analysis undertaken infers the participation of delta, alpha and theta bands for the said task. The signals are then transferred to a feature extraction module where a dual feature extraction strategy has been employed using Power Spectral Density (PSD) and Discrete Wavelet Transform (DWT) to enhance the diversity of the feature set. The abstracted features are further evaluated using Principal Component Analysis (PCA) to retain the most important or optimal features. The reduced feature set is transferred to a novel General Type-2 fuzzy classifier that is able to precisely classify the distinct class labels and also outperforms its conventional counterparts. Hence, this method can help to assess the variability of pain perception amongst individuals whose communication modality is crippled due to scenarios pertaining to neurological disorders, anaesthetic treatments and the like. Moreover, the present scheme can be utilized as a neuronal marker to distinguish individuals suffering from extreme sensitivity towards pain from the healthy ones.
机译:治疗不同主题疼痛感性变异性的主要机制仍未开发。本文旨在使用EEG信号分析系统开发一种新的方法来研究这种现象。首先,从主体的头皮中采购EEG信号,所述主体是具有三种类型的触摸刺激:热,刷毛和具有不同强度水平的夹紧的螺栓。使用Eloreta软件分析所获得的原始脑信号,该软件证实了原发性躯体感应性皮质和前型卷曲皮层的累积,用于这种认知活动。此外,频率分析为上述任务的Δ,alpha和theta频段的参与感兴趣。然后将信号传送到特征提取模块,其中使用功率谱密度(PSD)和离散小波变换(DWT)采用双重特征提取策略以增强特征集的分集。使用主成分分析(PCA)进一步评估抽象的特征,以保留最重要或最佳的功能。减少的特征集被传送到新的一般类型-2模糊分类器,能够精确地对不同的类标签进行分类,并且还优于其传统的对应物。因此,这种方法可以有助于评估由于与神经系统疾病,麻醉处理等的情景,这些疼痛感性的可变性。此外,本方案可以用作神经元标记物,以区分患有极端敏感性对健康疼痛的个体。

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