利用运动学和肌肉活动识别慢性疼痛的疼痛水平

Temitayo A. Olugbade, N. Bianchi-Berthouze, Nicolai Marquardt, A. Williams
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引用次数: 49

摘要

患有慢性肌肉骨骼疼痛的人将受益于提供跑步时个性化反馈并帮助调整他们的体育锻炼计划的技术。然而,体育锻炼中疼痛的增加,或对预期疼痛增加的焦虑,可能导致挫折和对疼痛的敏感性增强。我们的研究探讨了在两种功能性体育锻炼中,通过身体运动的质量来检测疼痛程度的可能性。通过分析运动学和肌肉活动的记录,我们的特征优化算法和机器学习技术可以自动区分轻度疼痛和重度疼痛的人,并在锻炼时控制参与者。特征集优化算法获得的结果最好:使用支持向量机的躯干全屈曲和坐立运动分别达到94%和80%。由于抑郁可以影响疼痛体验,我们将参与者的抑郁得分纳入标准问卷,这提高了使用随机森林时对照参与者和疼痛患者之间的区别。
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Pain level recognition using kinematics and muscle activity for physical rehabilitation in chronic pain
People with chronic musculoskeletal pain would benefit from technology that provides run-time personalized feedback and help adjust their physical exercise plan. However, increased pain during physical exercise, or anxiety about anticipated pain increase, may lead to setback and intensified sensitivity to pain. Our study investigates the possibility of detecting pain levels from the quality of body movement during two functional physical exercises. By analyzing recordings of kinematics and muscle activity, our feature optimization algorithms and machine learning techniques can automatically discriminate between people with low level pain and high level pain and control participants while exercising. Best results were obtained from feature set optimization algorithms: 94% and 80% for the full trunk flexion and sit-to-stand movements respectively using Support Vector Machines. As depression can affect pain experience, we included participants' depression scores on a standard questionnaire and this improved discrimination between the control participants and the people with pain when Random Forests were used.
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