生物心理社会模型
慢性疼痛
疼痛评估
物理疗法
医学
物理医学与康复
生物反馈
深度学习
急性疼痛
人工智能
计算机科学
疼痛管理
精神科
麻醉
作者
Yun Zhao,Franklin S. Ly,Qinghang Hong,Zhuowei Cheng,Tyler Santander,Henry T. Y. Yang,Paul K. Hansma,Linda Petzold
标识
DOI:10.1109/icdmw51313.2020.00092
摘要
Chronic pain is defined as pain that lasts or recurs for more than 3 to 6 months, often long after the injury or illness that initially caused the pain has healed. The "gold standard" for chronic pain assessment remains self report and clinical assessment via a biopsychosocial interview, since there has been no device that can measure it. A device to measure pain would be useful not only for clinical assessment, but potentially also as a biofeedback device leading to pain reduction. In this paper we propose an end-to-end deep learning framework for chronic pain score assessment. Our deep learning framework splits the long time-course data samples into shorter sequences, and uses Consensus Prediction to classify the results. We evaluate the performance of our framework on two chronic pain score datasets collected from two iterations of prototype Pain Meters that we have developed to help chronic pain subjects better understand their health condition.
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