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Resting state EEG-based sudden pain recognition method and experimental study

机译:基于状态EEG的突然疼痛识别方法和实验研究

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摘要

Pain is a sensory phenomenon when the body hurts and receptors are stimulated. Although pain activates the body's protective mechanism, some excessive pain reactions will damage the nearby biological tissues, and mostly it will bring people severe mental distress. In particular, some individuals with cognitive impairment, like the infants, are unable to describe their own pain, and thereby the disease will be delayed. These types of pain require intervention and relief and sudden pain belongs to one of them. Therefore, this paper proposes on a method of sudden pain recognition based on resting state EEG signals. This method can recognize the presence of sudden pain, distinguish the location of pain and can be effectively applied to disease diagnosis. The platform of sudden pain stimulation and EEG acquisition system was designed and built, and a series of experiments were carried out for different subjects. We preprocessed the raw EEG signals and extracted features via Power Spectral Density (PSD) and Multifractal Detrended Fluctuation Analysis (MF-DFA). We also utilized the Support Vector Machine (SVM), Sparse Bayesian Extreme Learning Machine (SBELM) and D-S Evidence Theory to do classification, utilizing 10-Fold Cross-validation. The results suggested that the accuracy of judging the presence of pain was up to 89.3 % on average, accuracy of pain location discrimination was up to 81.3 % on average, and accuracy of cross validation was up to 90.1 %. (C) 2020 Elsevier Ltd. All rights reserved.
机译:当刺激身体疼痛和受体时,疼痛是一种感官现象。虽然疼痛激活身体的保护机制,但一些过度的疼痛反应会损害附近的生物组织,大多数情况都会带来严重的精神痛苦。特别是,一些具有认知障碍的人,如婴儿,无法描述自己的疼痛,从而造成疾病将会延迟。这些类型的疼痛需要干预和缓解,突然的痛苦属于其中一个。因此,本文提出了一种基于静态状态EEG信号的突然疼痛识别方法。这种方法可以识别出突然疼痛的存在,区分疼痛的位置,可以有效地应用于疾病诊断。设计并建造了突然疼痛刺激和脑电图采集系统的平台,对不同的受试者进行了一系列实验。我们预处理了原始EEG信号并通过功率谱密度(PSD)和多重反应波动分析(MF-DFA)提取特征。我们还利用了支持向量机(SVM),稀疏的贝叶斯极端学习机(SBELM)和D-S证据理论进行分类,利用10倍交叉验证。结果表明,判断疼痛的存在的准确性平均高达89.3%,平均痛苦歧视的准确性高达81.3%,交叉验证的准确性高达90.1%。 (c)2020 elestvier有限公司保留所有权利。

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