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首页> 外文期刊>Frontiers in Computational Neuroscience >Decoding Subjective Intensity of Nociceptive Pain from Pre-stimulus and Post-stimulus Brain Activities
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Decoding Subjective Intensity of Nociceptive Pain from Pre-stimulus and Post-stimulus Brain Activities

机译:从刺激前和刺激后的大脑活动中对伤害性疼痛的主观强度进行解码

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Pain is a highly subjective experience. Self-report is the gold standard for pain assessment in clinical practice, but it may not be available or reliable in some populations. Neuroimaging data, such as electroencephalography (EEG) and functional magnetic resonance imaging (fMRI), have the potential to be used to provide physiology-based and quantitative nociceptive pain assessment tools that complements self-report. However, existing neuroimaging-based nociceptive pain assessments only rely on the information in pain-evoked brain activities, but neglect the fact that the perceived intensity of pain is also encoded by ongoing brain activities prior to painful stimulation. Here, we proposed to use machine learning algorithms to decode pain intensity from both pre-stimulus ongoing and post-stimulus evoked brain activities. Neural features that were correlated with intensity of laser-evoked nociceptive pain were extracted from high-dimensional pre- and post-stimulus EEG and fMRI activities using partial least-squares regression (PLSR). Further, we used support vector machine (SVM) to predict the intensity of pain from pain-related time-frequency EEG patterns and BOLD-fMRI patterns. Results showed that combining predictive information in pre- and post-stimulus brain activities can achieve significantly better performance in classifying high-pain and low-pain and in predicting the rating of perceived pain than only using post-stimulus brain activities. Therefore, the proposed pain prediction method holds great potential in basic research and clinical applications.
机译:疼痛是一种高度主观的经历。自我报告是临床实践中评估疼痛的金标准,但在某些人群中可能无法获得或可靠。脑电图(EEG)和功能磁共振成像(fMRI)等神经影像数据有潜力用于提供基于生理学的定量伤害性疼痛评估工具,以补充自我报告。但是,现有的基于神经影像的伤害性疼痛评估仅依赖于疼痛诱发的大脑活动中的信息,而忽略了这样的事实,即疼痛的感知强度也由疼痛刺激之前持续的大脑活动编码。在这里,我们建议使用机器学习算法从刺激前进行中和刺激后诱发的大脑活动中解码疼痛强度。使用偏最小二乘回归(PLSR)从高维刺激前后的脑电图和功能磁共振成像活动中提取与激光诱发的伤害性疼痛强度相关的神经特征。此外,我们使用支持向量机(SVM)从与疼痛相关的时频EEG模式和BOLD-fMRI模式预测疼痛的强度。结果表明,与仅使用刺激后的大脑活动相比,在刺激前和刺激后的大脑活动中结合预测信息可以在对高疼痛和低痛进行分类以及预测感知到的疼痛程度方面获得明显更好的表现。因此,提出的疼痛预测方法在基础研究和临床应用中具有巨大的潜力。

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