Li Linling, Huang Gan, Lin Qianqian, Liu Jia, Zhang Shengli, Zhang Zhiguo
School of Biomedical Engineering, Health Science Center, Shenzhen University, Shenzhen, China.
Guangdong Provincial Key Laboratory of Biomedical Measurements and Ultrasound Imaging, Shenzhen, China.
Front Neurosci. 2018 May 31;12:340. doi: 10.3389/fnins.2018.00340. eCollection 2018.
The level of pain perception is correlated with the magnitude of pain-evoked brain responses, such as laser-evoked potentials (LEP), across trials. The positive LEP-pain relationship lays the foundation for pain prediction based on single-trial LEP, but cross-individual pain prediction does not have a good performance because the LEP-pain relationship exhibits substantial cross-individual difference. In this study, we aim to explain the cross-individual difference in the LEP-pain relationship using inter-stimulus EEG (isEEG) features. The isEEG features (root mean square as magnitude and mean square successive difference as temporal variability) were estimated from isEEG data (at full band and five frequency bands) recorded between painful stimuli. A linear model was fitted to investigate the relationship between pain ratings and LEP response for fast-pain trials on a trial-by-trial basis. Then the correlation between isEEG features and the parameters of LEP-pain model (slope and intercept) was evaluated. We found that the magnitude and temporal variability of isEEG could modulate the parameters of an individual's linear LEP-pain model for fast-pain trials. Based on this, we further developed a new individualized fast-pain prediction scheme, which only used training individuals with similar isEEG features as the test individual to train the fast-pain prediction model, and obtained improved accuracy in cross-individual fast-pain prediction. The findings could help elucidate the neural mechanism of cross-individual difference in pain experience and the proposed fast-pain prediction scheme could be potentially used as a practical and feasible pain prediction method in clinical practice.
在多次试验中,疼痛感知水平与疼痛诱发的大脑反应幅度相关,如激光诱发电位(LEP)。LEP与疼痛的正向关系为基于单次试验LEP进行疼痛预测奠定了基础,但个体间的疼痛预测效果不佳,因为LEP与疼痛的关系存在显著的个体差异。在本研究中,我们旨在利用刺激间隔脑电图(isEEG)特征来解释LEP与疼痛关系中的个体差异。isEEG特征(均方根作为幅度,均方逐次差作为时间变异性)是根据在疼痛刺激之间记录的isEEG数据(全频段和五个频段)估算得出的。采用线性模型逐一研究快速疼痛试验中疼痛评分与LEP反应之间的关系。然后评估isEEG特征与LEP - 疼痛模型参数(斜率和截距)之间的相关性。我们发现,isEEG的幅度和时间变异性可以调节个体快速疼痛试验线性LEP - 疼痛模型的参数。基于此,我们进一步开发了一种新的个性化快速疼痛预测方案,该方案仅使用与测试个体具有相似isEEG特征的训练个体来训练快速疼痛预测模型,并在个体间快速疼痛预测中提高了准确性。这些发现有助于阐明疼痛体验个体差异的神经机制,并且所提出的快速疼痛预测方案有可能在临床实践中作为一种实用且可行的疼痛预测方法。