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Multimodal Signal Analysis for Pain Recognition in Physiotherapy Using Wavelet Scattering Transform

机译:用小波散射变换进行物理疗法疼痛识别的多峰信号分析

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摘要

Fascial therapy is an effective, yet painful, procedure. Information about pain level is essential for the physiotherapist to adjust the therapy course and avoid potential tissue damage. We have developed a method for automatic pain-related reaction assessment in physiotherapy due to the subjectivity of a self-report. Based on a multimodal data set, we determine the feature vector, including wavelet scattering transforms coefficients. The AdaBoost classification model distinguishes three levels of reaction (no-pain, moderate pain, and severe pain). Because patients vary in pain reactions and pain resistance, our survey assumes a subject-dependent protocol. The results reflect an individual perception of pain in patients. They also show that multiclass evaluation outperforms the binary recognition.
机译:纵向治疗是一种有效的,但痛苦的程序。有关疼痛水平的信息对于物理治疗师来调整治疗课程并避免潜在的组织损伤至关重要。由于自我报告的主观性,我们开发了一种在物理治疗中自动疼痛相关的反应评估方法。基于多模式数据集,我们确定特征向量,包括小波散射变换系数。 AdaBoost分类模型区分了三种反应(无疼痛,中度疼痛和严重疼痛)。由于患者因疼痛反应和疼痛抗性而变化,因此我们的调查假设受试者依赖的协议。结果反映了对患者疼痛的个体感知。他们还表明,多种多数评估优于二进制识别。

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