Suppr超能文献

基于技术的补偿评估和脑卒中幸存者上肢活动的检测:系统评价。

Technology-Based Compensation Assessment and Detection of Upper Extremity Activities of Stroke Survivors: Systematic Review.

机构信息

School of Mechanical Science and Engineering, Huazhong University of Science and Technology, Wuhan, China.

KITE - Toronto Rehabilitation Institute, University Health Network, Toronto, ON, Canada.

出版信息

J Med Internet Res. 2022 Jun 13;24(6):e34307. doi: 10.2196/34307.

Abstract

BACKGROUND

Upper extremity (UE) impairment affects up to 80% of stroke survivors and accounts for most of the rehabilitation after discharge from the hospital release. Compensation, commonly used by stroke survivors during UE rehabilitation, is applied to adapt to the loss of motor function and may impede the rehabilitation process in the long term and lead to new orthopedic problems. Intensive monitoring of compensatory movements is critical for improving the functional outcomes during rehabilitation.

OBJECTIVE

This review analyzes how technology-based methods have been applied to assess and detect compensation during stroke UE rehabilitation.

METHODS

We conducted a wide database search. All studies were independently screened by 2 reviewers (XW and YF), with a third reviewer (BY) involved in resolving discrepancies. The final included studies were rated according to their level of clinical evidence based on their correlation with clinical scales (with the same tasks or the same evaluation criteria). One reviewer (XW) extracted data on publication, demographic information, compensation types, sensors used for compensation assessment, compensation measurements, and statistical or artificial intelligence methods. Accuracy was checked by another reviewer (YF). Four research questions were presented. For each question, the data were synthesized and tabulated, and a descriptive summary of the findings was provided. The data were synthesized and tabulated based on each research question.

RESULTS

A total of 72 studies were included in this review. In all, 2 types of compensation were identified: disuse of the affected upper limb and awkward use of the affected upper limb to adjust for limited strength, mobility, and motor control. Various models and quantitative measurements have been proposed to characterize compensation. Body-worn technology (25/72, 35% studies) was the most used sensor technology to assess compensation, followed by marker-based motion capture system (24/72, 33% studies) and marker-free vision sensor technology (16/72, 22% studies). Most studies (56/72, 78% studies) used statistical methods for compensation assessment, whereas heterogeneous machine learning algorithms (15/72, 21% studies) were also applied for automatic detection of compensatory movements and postures.

CONCLUSIONS

This systematic review provides insights for future research on technology-based compensation assessment and detection in stroke UE rehabilitation. Technology-based compensation assessment and detection have the capacity to augment rehabilitation independent of the constant care of therapists. The drawbacks of each sensor in compensation assessment and detection are discussed, and future research could focus on methods to overcome these disadvantages. It is advised that open data together with multilabel classification algorithms or deep learning algorithms could benefit from automatic real time compensation detection. It is also recommended that technology-based compensation predictions be explored.

摘要

背景

上肢(UE)障碍影响了多达 80%的中风幸存者,并占他们出院后康复的大部分内容。代偿,通常由中风幸存者在 UE 康复期间使用,适用于适应运动功能的丧失,并且可能从长远来看阻碍康复过程,并导致新的骨科问题。对代偿运动的密集监测对于改善康复过程中的功能结果至关重要。

目的

本综述分析了基于技术的方法如何应用于评估和检测中风 UE 康复过程中的代偿。

方法

我们进行了广泛的数据库搜索。所有研究均由 2 名评审员(XW 和 YF)独立筛选,如有分歧,则由第 3 名评审员(BY)介入解决。根据与临床量表的相关性(相同的任务或相同的评估标准),根据临床证据水平对最终纳入的研究进行评分。一名评审员(XW)提取了关于出版物、人口统计学信息、代偿类型、用于代偿评估的传感器、代偿测量以及统计或人工智能方法的数据。另一名评审员(YF)检查了准确性。提出了四个研究问题。对于每个问题,都对数据进行了综合制表,并提供了研究结果的描述性总结。根据每个研究问题对数据进行了综合制表。

结果

本综述共纳入 72 项研究。总共确定了 2 种代偿类型:上肢失用和上肢笨拙使用以适应有限的力量、活动能力和运动控制。已经提出了各种模型和定量测量方法来描述代偿。穿戴式技术(72 项研究中的 25 项,35%)是评估代偿最常用的传感器技术,其次是基于标记的运动捕捉系统(72 项研究中的 24 项,33%)和无标记视觉传感器技术(72 项研究中的 16 项,22%)。大多数研究(72 项研究中的 56 项,78%)使用统计方法进行代偿评估,而异构机器学习算法(72 项研究中的 15 项,21%)也用于自动检测代偿运动和姿势。

结论

本系统综述为基于技术的中风 UE 康复中代偿评估和检测的未来研究提供了参考。基于技术的代偿评估和检测具有增强康复的能力,而无需治疗师的持续护理。讨论了每种传感器在代偿评估和检测中的缺点,未来的研究可以集中于克服这些缺点的方法。建议使用开放式数据以及多标签分类算法或深度学习算法可以受益于自动实时代偿检测。还建议探索基于技术的代偿预测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ecce/9237771/1502803fa526/jmir_v24i6e34307_fig1.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验