慢性疼痛康复系统疼痛触及的双模态检测

Temitayo A. Olugbade, M. Aung, N. Bianchi-Berthouze, Nicolai Marquardt, A. Williams
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引用次数: 40

摘要

身体活动在慢性疼痛康复中是必不可少的。然而,由于疼痛或感知到的疼痛加剧而引起的焦虑会使人们避免有益的运动。对这种行为敏感的互动式康复技术可以提供反馈以克服这种心理障碍。为此,我们开发了一个支持向量机框架,融合了身体运动和肌肉活动描述符的特征水平,以区分三个级别的疼痛(无,低和高)。所有受试者都进行了前伸运动,这是慢性背痛患者通常害怕的运动。疼痛水平分为对照组(无疼痛)和慢性疼痛患者自我报告的阈值水平。使用反向特征选择过程识别显著特征。分别使用每种模式的特征集,运动和肌肉活动的疼痛分类F1得分分别为0.63和0.69。然而,使用组合的双峰特征集,这增加到F1 = 0.8。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bi-Modal Detection of Painful Reaching for Chronic Pain Rehabilitation Systems
Physical activity is essential in chronic pain rehabilitation. However, anxiety due to pain or a perceived exacerbation of pain causes people to guard against beneficial exercise. Interactive rehabiliation technology sensitive to such behaviour could provide feedback to overcome such psychological barriers. To this end, we developed a Support Vector Machine framework with the feature level fusion of body motion and muscle activity descriptors to discriminate three levels of pain (none, low and high). All subjects underwent a forward reaching exercise which is typically feared among people with chronic back pain. The levels of pain were categorized from control subjects (no pain) and thresholded self reported levels from people with chronic pain. Salient features were identified using a backward feature selection process. Using feature sets from each modality separately led to high pain classification F1 scores of 0.63 and 0.69 for movement and muscle activity respectively. However using a combined bimodal feature set this increased to F1 = 0.8.
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