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How Can Affect Be Detected and Represented in Technological Support for Physical Rehabilitation?

机译:如何在身体康复的技术支持中发现并体现影响?

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Although clinical best practice suggests that affect awareness could enable more effective technological support for physical rehabilitation through personalisation to psychological needs, designers need to consider what affective states matter, and how they should be tracked and addressed. In this article, we set the standard by analysing how the major affective factors in chronic pain (pain, fear/anxiety, and low/depressed mood) interfere with everyday physical functioning. Further, based on discussion of the modality that should be used to track these states to enable technology to address them, we investigated the possibility of using movement behaviour to automatically detect the states. Using two body movement datasets on people with chronic pain, we show that movement behaviour enables very good discrimination between two emotional distress levels (F1=0.86), and three pain levels (F1=0.9). Performance remained high (F1=0.78 for two pain levels) with a reduced set of movement sensors. Finally, in an overall discussion, we suggest how technology-provided encouragement and awareness can be personalised given the capability to automatically monitor the relevant states, towards addressing the barriers that they pose. In addition, we highlight movement behaviour features to be tracked to provide technology with information necessary for such personalisation.
机译:尽管临床最佳实践表明,情感意识可以通过个性化满足心理需求来为身体康复提供更有效的技术支持,但设计人员需要考虑哪些情感状态很重要,以及如何跟踪和解决这些情感状态。在本文中,我们通过分析慢性疼痛的主要情感因素(疼痛,恐惧/焦虑和情绪低落/抑郁)如何影响日常的身体机能来设定标准。此外,基于对应该用来跟踪这些状态以使技术能够解决这些状态的方式的讨论,我们研究了使用运动行为自动检测状态的可能性。使用两个针对慢性疼痛患者的身体运动数据集,我们发现运动行为可以很好地区分两个情绪困扰水平(F1 = 0.86)和三个疼痛程度(F1 = 0.9)。在减少运动传感器的情况下,性能仍然很高(两个疼痛级别的F1 = 0.78)。最后,在总体讨论中,我们建议,鉴于能够自动监视相关状态以解决它们所造成的障碍的能力,如何个性化技术提供的鼓励和意识。此外,我们重点介绍了要跟踪的运动行为特征,以向技术提供此类个性化所需的信息。

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