A new approach for single-trial detection of laser-evoked potentials and its application to pain prediction

Gan Huang, P. Xiao, Li Hu, Y. Hung, Zhiguo Zhang
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Abstract

Single-trial detection of evoked brain potentials is essential for many research topics in neural engineering and neuroscience. In present study, a novel approach, which combines common spatial pattern (CSP) and multiple linear regression (MLR), is proposed to for single-trial detection of pain-related laser-evoked potentials (LEPs). The CSP method is effective in separating laser-evoked EEG response from ongoing EEG activity, while MLR makes an automatic and reliable estimation of the amplitudes and latencies of N2 and P2 from single-trial LEP waveforms. The MLR coefficients are further used for the prediction of pain perception, which is of great importance for both basic and clinical applications. The prediction is performed with both binary (classification of low pain and high pain) and continuous (regression on a continuous scale from 0 to 10) outcomes. The results show that the proposed methods could provide reliable performance at both with- and cross-individual levels.
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激光诱发电位单次检测的新方法及其在疼痛预测中的应用
在神经工程和神经科学的许多研究课题中,脑诱发电位的单次试验检测是必不可少的。本研究提出了一种将共同空间模式(CSP)和多元线性回归(MLR)相结合的方法,用于疼痛相关激光诱发电位(LEPs)的单次检测。CSP方法可以有效地将激光诱发的脑电反应与正在进行的脑电活动分离开来,而MLR方法可以从单次LEP波形中自动可靠地估计N2和P2的振幅和潜伏期。MLR系数进一步用于疼痛感知的预测,在基础和临床应用中都具有重要意义。预测是用二元(低痛和高痛分类)和连续(从0到10的连续尺度回归)结果进行的。结果表明,所提出的方法在单个体和跨个体水平上都能提供可靠的性能。
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