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Daily Life Activity Routine Discovery in Hemiparetic Rehabilitation Patients Using Topic Models

机译:使用主题模型的偏瘫康复患者的日常生活活动常规发现

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Background: Monitoring natural behavior and activity routines of hemiparetic rehabilitation patients across the day can provide valuable progress information for therapists and patients and contribute to an optimized rehabilitation process. In particular, continuous patient monitoring could add type, frequency and duration of daily life activity routines and hence complement standard clinical scores that are assessed for particular tasks only. Machine learning methods have been applied to infer activity routines from sensor data. However, supervised methods require activity annotations to build recognition models and thus require extensive patient supervision. Discovery methods, including topic models could provide patient routine information and deal with variability in activity and movement performance across patients. Topic models have been used to discover characteristic activity routine patterns of healthy individuals using activity primitives recognized from supervised sensor data. Yet, the applicability of topic models for hemiparetic rehabilitation patients and techniques to derive activity primitives without supervision needs to be addressed.
机译:背景:全天监测偏瘫康复患者的自然行为和活动习惯,可以为治疗师和患者提供有价值的进展信息,并有助于优化康复过程。特别地,连续的患者监测可以增加日常生活活动程序的类型,频率和持续时间,从而补充仅针对特定任务评估的标准临床评分。机器学习方法已应用于从传感器数据推断活动例程。但是,受监督的方法需要活动注释来构建识别模型,因此需要广泛的患者监督。发现方法(包括主题模型)可以提供患者常规信息,并处理患者活动和运动表现的差异。主题模型已用于使用从监督的传感器数据中识别的活动原语来发现健康个体的特征性活动例程模式。然而,需要解决主题模型对偏瘫康复患者的适用性以及在没有监督的情况下得出活动原语的技术。

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