基于深度学习的慢性疼痛保护行为检测

Chongyang Wang, Temitayo A. Olugbade, Akhil Mathur, A. Williams, N. Lane, N. Bianchi-Berthouze
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引用次数: 8

摘要

在慢性疼痛康复中,理疗师根据患者保护行为的表现,使身体活动适应患者的表现,逐渐使他们接触到令人恐惧但无害的基本日常活动。随着康复活动在诊所之外进行,技术应该自动检测这种行为,以提供类似的支持。先前的工作已经表明了在特定活动中自动保护行为检测(PBD)的可行性。在这篇文章中,我们使用从健康参与者和慢性疼痛患者那里收集的可穿戴运动捕捉和表面肌电图数据,研究了深度学习在不同活动类型的PBD中的应用。我们通过不断检测活动中的保护行为来解决这个问题,而不是估计其整体存在。最好的表现达到了0.82的平均F1分数,去掉了一个受试者的交叉验证。当按照活动类型对保护行为进行建模时,表现的平均F1得分为:弯腰0.77分,单腿站立0.81分,坐到站0.72分,站到坐0.83分,向前伸展0.67分。这一表现与专家的平均评分表现达到了极好的一致性,表明在家进行个性化慢性疼痛管理的潜力。我们分析了表征我们方法的各种参数,以了解结果如何推广到其他PBD数据集和不同级别的基本事实粒度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Chronic Pain Protective Behavior Detection with Deep Learning
In chronic pain rehabilitation, physiotherapists adapt physical activity to patients’ performance based on their expression of protective behavior, gradually exposing them to feared but harmless and essential everyday activities. As rehabilitation moves outside the clinic, technology should automatically detect such behavior to provide similar support. Previous works have shown the feasibility of automatic protective behavior detection (PBD) within a specific activity. In this article, we investigate the use of deep learning for PBD across activity types, using wearable motion capture and surface electromyography data collected from healthy participants and people with chronic pain. We approach the problem by continuously detecting protective behavior within an activity rather than estimating its overall presence. The best performance reaches mean F1 score of 0.82 with leave-one-subject-out cross validation. When protective behavior is modeled per activity type, performance achieves a mean F1 score of 0.77 for bend-down, 0.81 for one-leg-stand, 0.72 for sit-to-stand, 0.83 for stand-to-sit, and 0.67 for reach-forward. This performance reaches excellent level of agreement with the average experts’ rating performance suggesting potential for personalized chronic pain management at home. We analyze various parameters characterizing our approach to understand how the results could generalize to other PBD datasets and different levels of ground truth granularity.
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CiteScore
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