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Sensory Processing: Automated classification of pain perception using high-density electroencephalography data

机译:感觉处理:使用高密度脑电图数据对疼痛知觉进行自动分类

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摘要

The translation of brief, millisecond-long pain-eliciting stimuli to the subjective perception of pain is associated with changes in theta, alpha, beta, and gamma oscillations over sensorimotor cortex. However, when a pain-eliciting stimulus continues for minutes, regions beyond the sensorimotor cortex, such as the prefrontal cortex, are also engaged. Abnormalities in prefrontal cortex have been associated with chronic pain states, but conventional, millisecond-long EEG paradigms do not engage prefrontal regions. In the current study, we collected high-density EEG data during an experimental paradigm in which subjects experienced a 4-s, low- or high-intensity pain-eliciting stimulus. EEG data were analyzed using independent component analyses, EEG source localization analyses, and measure projection analyses. We report three novel findings. First, an increase in pain perception was associated with an increase in gamma and theta power in a cortical region that included medial prefrontal cortex. Second, a decrease in lower beta power was associated with an increase in pain perception in a cortical region that included the contralateral sensorimotor cortex. Third, we used machine learning for automated classification of EEG data into low- and high-pain classes. Theta and gamma power in the medial prefrontal region and lower beta power in the contralateral sensorimotor region served as features for classification. We found a leave-one-out cross-validation accuracy of 89.58%. The development of biological markers for pain states continues to gain traction in the literature, and our findings provide new information that advances this body of work.>NEW & NOTEWORTHY The development of a biological marker for pain continues to gain traction in literature. Our findings show that high- and low-pain perception in human subjects can be classified with 89% accuracy using high-density EEG data from prefrontal cortex and contralateral sensorimotor cortex. Our approach represents a novel neurophysiological paradigm that advances the literature on biological markers for pain.
机译:短暂的,毫秒级的引起疼痛的刺激转换为疼痛的主观感受,与感觉运动皮层上的θ,α,β和γ振荡的变化有关。但是,当持续数分钟的疼痛刺激持续时,感觉运动皮层以外的区域(例如前额叶皮层)也会被接合。前额叶皮层异常与慢性疼痛状态有关,但传统的毫秒级脑电图范例不涉及前额叶区域。在当前的研究中,我们在实验范式中收集了高密度脑电图数据,在实验范式中,受试者经历了4秒,低强度或高强度的疼痛刺激刺激。使用独立的成分分析,脑电信号源定位分析和测量投影分析来分析脑电数据。我们报告了三个新颖的发现。首先,疼痛感觉的增加与包括内侧前额叶皮层在内的皮质区域中的伽马和theta功能增加有关。其次,较低的β功率的降低与包括对侧感觉运动皮层的皮质区域的疼痛感增加相关。第三,我们使用机器学习将脑电数据自动分类为低痛和高痛类别。内侧前额叶区域的Theta和γ屈光度以及对侧感觉运动区域的β屈光度较低,是分类的特征。我们发现留一法交叉验证的准确性为89.58%。疼痛状态的生物标志物的开发继续在文献中获得关注,我们的发现为推进这一工作提供了新的信息。> NEW&NOTEWORTHY 疼痛的生物标志物的开发仍在继续文学的牵引力。我们的发现表明,使用来自前额叶皮层和对侧感觉运动皮层的高密度EEG数据,可以以89%的准确度对人类受试者的高痛和低痛感知进行分类。我们的方法代表了一种新型的神经生理学范式,它推动了有关疼痛生物标记物的文献的发展。

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