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为中风幸存者选择基于传感器的可穿戴上肢训练设备的任务:一种多阶段方法。

Task selection for a sensor-based, wearable, upper limb training device for stroke survivors: a multi-stage approach.

作者信息

Turk Ruth, Whitall Jill, Meagher Claire, Stokes Maria, Roberts Sue, Woodham Sasha, Clatworthy Philip, Burridge Jane

机构信息

School of Health Sciences, Faculty of Environmental Sciences, University of Southampton, Southampton, UK.

Department of Physical Therapy and Rehabilitation Science, School of Medicine, University of Maryland, Baltimore, MD, USA.

出版信息

Disabil Rehabil. 2023 May;45(9):1480-1487. doi: 10.1080/09638288.2022.2065542. Epub 2022 Apr 27.

Abstract

PURPOSE

Post-stroke survivors report that feedback helps to increase training motivation. A wearable system (M-MARK), comprising movement and muscle sensors and providing feedback when performing everyday tasks was developed. The objective reported here was to create an evidence-based set of upper-limb tasks for use with the system.

MATERIALS AND METHODS

Data from two focus groups with rehabilitation professionals, ten interviews with stroke survivors and a review of assessment tests were synthesized. In a two-stage process, suggested tasks were screened to exclude non-tasks and complex activities. Remaining tasks were screened for suitability and entered into a categorization matrix.

RESULTS

Of 83 suggestions, eight non-tasks, and 42 complex activities were rejected. Of the remaining 33 tasks, 15 were rejected: five required fine motor control; eight were too complex to standardize; one because the role of hemiplegic hand was not defined and one involved water. The review of clinical assessment tests found no additional tasks. Eleven were ultimately selected for testing with M-Mark.

CONCLUSIONS

Using a task categorization matrix, a set of training tasks was systematically identified. There was strong agreement between data from the professionals, survivors and literature. The matrix populated by tasks has potential for wider use in upper-limb stroke rehabilitation. IMPLICATIONS FOR REHABILITATIONRehabilitation technologies that provide feedback on quantity and quality of movements can support independent home-based upper limb rehabilitation.Rehabilitation technology systems require a library of upper limb tasks at different levels for people with stroke and therapists to choose from.A user-defined and evidence-based set of upper limb tasks for use within a wearable sensor device system have been developed.

摘要

目的

中风后幸存者报告称,反馈有助于提高训练积极性。因此研发了一种可穿戴系统(M-MARK),该系统包含运动和肌肉传感器,并在执行日常任务时提供反馈。本文报告的目的是创建一套基于证据的上肢任务,供该系统使用。

材料与方法

综合了来自两个与康复专业人员的焦点小组的数据、对十名中风幸存者的访谈以及评估测试的综述。在一个两阶段的过程中,对建议的任务进行筛选,以排除非任务和复杂活动。对剩余任务进行适用性筛选,并将其纳入分类矩阵。

结果

在83条建议中,排除了8条非任务和42项复杂活动。在剩下的33项任务中,又有15项被排除:5项需要精细运动控制;8项过于复杂难以标准化;1项是因为偏瘫手的作用未明确,1项涉及水。对临床评估测试的综述未发现其他任务。最终选择了11项用于M-Mark测试。

结论

使用任务分类矩阵,系统地确定了一组训练任务。专业人员、幸存者的数据与文献之间达成了高度一致。由任务构成的矩阵在中风上肢康复中具有更广泛的应用潜力。对康复的启示提供运动数量和质量反馈的康复技术可以支持独立的家庭上肢康复。康复技术系统需要为中风患者和治疗师提供不同水平的上肢任务库以供选择。已经开发了一套用户定义的、基于证据的上肢任务,用于可穿戴传感器设备系统。

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