Objective assessments of human motor ability of the upper limb: A systematic review

IF 0.7 Q4 REHABILITATION
Edwin P. Duque, H. Trefftz, Sakti Srivastava
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引用次数: 0

Abstract

BACKGROUND: Most of the patients who survive stroke, spinal cord or others nervous system injuries, must face different challenges for a complete recovery of physical functional impairment. An accurate and recurrent assessment of the patient rehabilitation progress is very important. So far, wearable sensors (e.g. accelerometers, gyroscopes) and depth cameras have been used in medical rehabilitation for the automation of traditional motor assessments. Combined with machine learning techniques, these sensors are leading to novel metric systems for upper limb mobility assessment. OBJECTIVE: Review current research for objective and quantitative assessments of the upper limb movement, analyzing sensors used, health issues examined, and data processes applied such as: selected features, feature engineering approach, learning models and data processing techniques. METHOD: A systematic review conducted according to the PRISMA guidelines. EBSCOHOST discovery service was queried for relevant articles published from January 2014 to December 2018 with English language and scholarly peer reviewed journals limits. RESULTS: Of the 568 articles identified, 75 were assessed for eligibility and 43 were finally included and weighed for an in-depth analysis according to their ponderation. The reviewed studies show a wide use of sensors to capture raw data for subsequent motion analysis. CONCLUSION: As the volume of the data captured via these sensors increase, it makes sense to extract useful information about them such as prediction of performance scores, detection of movement impairments and measured progression of recovery.
人类上肢运动能力的客观评价:系统综述
背景:大多数中风、脊髓或其他神经系统损伤存活的患者必须面对不同的挑战,才能完全恢复身体功能障碍。准确和反复评估患者康复进展是非常重要的。到目前为止,可穿戴传感器(如加速度计、陀螺仪)和深度相机已用于医疗康复,以实现传统运动评估的自动化。结合机器学习技术,这些传感器为上肢活动能力评估提供了新的度量系统。目的:回顾目前对上肢运动的客观和定量评估的研究,分析使用的传感器,检查的健康问题,以及应用的数据处理,如:选择特征,特征工程方法,学习模型和数据处理技术。方法:根据PRISMA指南进行系统评价。EBSCOHOST检索服务查询2014年1月至2018年12月期间发表的相关文章,包含英文和学术同行评审期刊限制。结果:在确定的568篇文章中,75篇被评估为合格,43篇最终被纳入并根据其考虑程度进行称重以进行深入分析。回顾的研究表明,传感器广泛用于捕获原始数据,以进行后续运动分析。结论:随着通过这些传感器捕获的数据量的增加,提取有用的信息是有意义的,例如预测表现分数,检测运动障碍和测量恢复进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Technology and Disability
Technology and Disability Medicine-Rehabilitation
CiteScore
1.40
自引率
20.00%
发文量
19
期刊介绍: Technology and Disability communicates knowledge about the field of assistive technology devices and services, within the context of the lives of end users - persons with disabilities and their family members. While the topics are technical in nature, the articles are written for broad comprehension despite the reader"s education or training. Technology and Disability"s contents cover research and development efforts, education and training programs, service and policy activities and consumer experiences. - The term Technology refers to assistive devices and services. - The term Disability refers to both permanent and temporary functional limitations experienced by people of any age within any circumstance.
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