基于瓦楞纸肌电图优化特征集的疼痛评估

P. Das, Jhilik Bhattacharyya, Kausik Sen, S. Pal
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引用次数: 1

摘要

疼痛是人类生理上最复杂的感觉之一。到目前为止,医生对任何个体的疼痛都是用主观评分来衡量的,医生对疼痛的评估需要完全依靠患者的反应。虽然,这些方法在医学领域并不总是有效的,当受试者不合作或无法回应。因此,受试者反应独立的疼痛识别系统至关重要。有害刺激刺激交感神经系统(SNS),与神经躯体生物信号和面部表情的变化有关。本文分析了与疼痛敏感有关的瓦楞纸肌肌电图。考虑到疼痛刺激下肌电信号的非线性和非平稳性,利用经验模态分解技术对肌电信号进行数据自适应处理。将特征优化的田口法应用于imf中,根据特征的重要度对特征进行排序。采用线性支持向量机算法,利用所有提取的特征以及最显著的特征,对不同的“无痛”伤害感觉水平进行分类。优化后的特征集显著提高了分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessment of Pain using Optimized Feature Set from Corrugator EMG
Pain is one of the most complex sensation of human physiology. Till now, physicians use subjective scores for measuring pain of any individual and doctors need to completely depend on patient's response for assessment of pain. Although, these methods are not always effective in the medical field, when the subjects are non-cooperative or unable to response. Hence, subject's response independent pain recognition systems are utmost important. Noxious stimulus excites Sympathetic Nervous System (SNS), which is related to changes in neuro-somatic biosignals and facial expression. In this present work, EMG of corrugator muscle which is pertaining to pain sensitiveness is analyzed. Considering non-linear & non-stationary nature of the EMG signal stimulated through pain, Empirical Mode Decomposition technique is applied on EMG for its data adaptive nature. Taguchi Method of feature optimization is applied onthe IMFs for ranking of features according to their significance. Classification of different nociception levels with ‘no pain' was performed employing linear SVM algorithm, using all extracted features as well as the most significant features. Appreciable increase in classification accuracy is noticed with optimized set of features.
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