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用于评估电刺激引起的疼痛感知的疼痛事件相关电位分类。

Classification of Pain Event Related Potential for Evaluation of Pain Perception Induced by Electrical Stimulation.

机构信息

Department of Medical Engineering, Graduate School of Science and Engineering, Chiba University, Chiba 263-8522, Japan.

School of ICT, Sirindhorn International Institute of Technology, Thammasat University, Pathum Thani 12120, Thailand.

出版信息

Sensors (Basel). 2020 Mar 9;20(5):1491. doi: 10.3390/s20051491.

Abstract

Variability in individual pain sensitivity is a major problem in pain assessment. There have been studies reported using pain-event related potential (pain-ERP) for evaluating pain perception. However, none of them has achieved high accuracy in estimating multiple pain perception levels. A major reason lies in the lack of investigation of feature extraction. The goal of this study is to assess four different pain perception levels through classification of pain-ERP, elicited by transcutaneous electrical stimulation on healthy subjects. Nonlinear methods: Higuchi's fractal dimension, Grassberger-Procaccia correlation dimension, with auto-correlation, and moving variance functions were introduced into the feature extraction. Fisher score was used to select the most discriminative channels and features. As a result, the correlation dimension with a moving variance without channel selection achieved the best accuracies of 100% for both the two-level and the three-level classification but degraded to 75% for the four-level classification. The best combined feature group is the variance-based one, which achieved accuracy of 87.5% and 100% for the four-level and three-level classification, respectively. Moreover, the features extracted from less than 20 trials could not achieve sensible accuracy, which makes it difficult for an instantaneous pain perception levels evaluation. These results show strong evidence on the possibility of objective pain assessment using nonlinear feature-based classification of pain-ERP.

摘要

个体疼痛敏感性的变异性是疼痛评估中的一个主要问题。已经有研究报道使用疼痛事件相关电位(pain-ERP)来评估疼痛感知。然而,它们都没有在估计多个疼痛感知水平方面达到很高的准确性。一个主要原因在于缺乏特征提取的研究。本研究的目的是通过对健康受试者经皮电刺激诱发的 pain-ERP 进行分类,来评估四个不同的疼痛感知水平。非线性方法:引入 Higuchi 的分形维数、Grassberger-Procaccia 关联维数、自相关和移动方差函数进行特征提取。Fisher 得分用于选择最具判别力的通道和特征。结果表明,在不进行通道选择的情况下,关联维数与移动方差的组合取得了 100%的最佳二分类和三分类准确率,但四分类准确率降至 75%。最佳的组合特征组是基于方差的特征组,在四分类和三分类中的准确率分别达到 87.5%和 100%。此外,从少于 20 次试验中提取的特征无法达到敏感的准确性,这使得即时疼痛感知水平的评估变得困难。这些结果有力地证明了使用非线性特征 pain-ERP 分类进行客观疼痛评估的可能性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e8dc/7085779/86e7e04522e4/sensors-20-01491-g001.jpg

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