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上肢任务期间使用可穿戴传感器评估运动障碍:一项范围综述。

Assessment of movement disorders using wearable sensors during upper limb tasks: A scoping review.

作者信息

Vanmechelen Inti, Haberfehlner Helga, De Vleeschhauwer Joni, Van Wonterghem Ellen, Feys Hilde, Desloovere Kaat, Aerts Jean-Marie, Monbaliu Elegast

机构信息

Research Group for Neurorehabilitation (eNRGy), KU Leuven Bruges, Department of Rehabilitation Sciences, Bruges, Belgium.

Amsterdam Movement Sciences, Amsterdam UMC, Department of Rehabilitation Medicine, Amsterdam, Netherlands.

出版信息

Front Robot AI. 2023 Jan 9;9:1068413. doi: 10.3389/frobt.2022.1068413. eCollection 2022.

Abstract

Studies aiming to objectively quantify movement disorders during upper limb tasks using wearable sensors have recently increased, but there is a wide variety in described measurement and analyzing methods, hampering standardization of methods in research and clinics. Therefore, the primary objective of this review was to provide an overview of sensor set-up and type, included tasks, sensor features and methods used to quantify movement disorders during upper limb tasks in multiple pathological populations. The secondary objective was to identify the most sensitive sensor features for the detection and quantification of movement disorders on the one hand and to describe the clinical application of the proposed methods on the other hand. A literature search using Scopus, Web of Science, and PubMed was performed. Articles needed to meet following criteria: 1) participants were adults/children with a neurological disease, 2) (at least) one sensor was placed on the upper limb for evaluation of movement disorders during upper limb tasks, 3) comparisons between: groups with/without movement disorders, sensor features before/after intervention, or sensor features with a clinical scale for assessment of the movement disorder. 4) Outcome measures included sensor features from acceleration/angular velocity signals. A total of 101 articles were included, of which 56 researched Parkinson's Disease. Wrist(s), hand(s) and index finger(s) were the most popular sensor locations. Most frequent tasks were: finger tapping, wrist pro/supination, keeping the arms extended in front of the body and finger-to-nose. Most frequently calculated sensor features were mean, standard deviation, root-mean-square, ranges, skewness, kurtosis/entropy of acceleration and/or angular velocity, in combination with dominant frequencies/power of acceleration signals. Examples of clinical applications were automatization of a clinical scale or discrimination between a patient/control group or different patient groups. Current overview can support clinicians and researchers in selecting the most sensitive pathology-dependent sensor features and methodologies for detection and quantification of upper limb movement disorders and objective evaluations of treatment effects. Insights from Parkinson's Disease studies can accelerate the development of wearable sensors protocols in the remaining pathologies, provided that there is sufficient attention for the standardisation of protocols, tasks, feasibility and data analysis methods.

摘要

最近,旨在使用可穿戴传感器客观量化上肢任务期间运动障碍的研究有所增加,但所描述的测量和分析方法存在很大差异,这阻碍了研究和临床中方法的标准化。因此,本综述的主要目的是概述传感器设置和类型、所包含的任务、传感器特征以及用于量化多种病理人群上肢任务期间运动障碍的方法。次要目的一方面是确定用于检测和量化运动障碍的最敏感传感器特征,另一方面是描述所提出方法的临床应用。使用Scopus、Web of Science和PubMed进行了文献检索。文章需要符合以下标准:1)参与者为患有神经系统疾病的成人/儿童;2)(至少)一个传感器放置在上肢,用于评估上肢任务期间的运动障碍;3)进行以下比较:有/无运动障碍的组之间、干预前后的传感器特征之间,或传感器特征与用于评估运动障碍的临床量表之间;4)结果测量包括来自加速度/角速度信号的传感器特征。总共纳入了101篇文章,其中56篇研究了帕金森病。手腕、手和食指是最常用的传感器位置。最常见的任务是:手指敲击、手腕旋前/旋后、将手臂伸直在身体前方以及指鼻试验。最常计算的传感器特征是加速度和/或角速度的均值、标准差、均方根、范围、偏度、峰度/熵,以及加速度信号的主导频率/功率。临床应用的例子包括临床量表的自动化或患者/对照组或不同患者组之间的区分。当前的综述可以支持临床医生和研究人员选择最敏感的、依赖于病理的传感器特征和方法,用于检测和量化上肢运动障碍以及客观评估治疗效果。帕金森病研究的见解可以加速其余病理情况下可穿戴传感器协议的开发,前提是对协议、任务、可行性和数据分析方法的标准化给予足够的关注。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bc3a/9879015/851299ce8dc8/frobt-09-1068413-g001.jpg

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