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首页> 外文期刊>Sensors >Motor Function Evaluation of Hemiplegic Upper-Extremities Using Data Fusion from Wearable Inertial and Surface EMG Sensors
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Motor Function Evaluation of Hemiplegic Upper-Extremities Using Data Fusion from Wearable Inertial and Surface EMG Sensors

机译:可穿戴式惯性和表面肌电图传感器的数据融合在偏瘫上肢运动功能评估中的应用

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摘要

Quantitative evaluation of motor function is of great demand for monitoring clinical outcome of applied interventions and further guiding the establishment of therapeutic protocol. This study proposes a novel framework for evaluating upper limb motor function based on data fusion from inertial measurement units (IMUs) and surface electromyography (EMG) sensors. With wearable sensors worn on the tested upper limbs, subjects were asked to perform eleven straightforward, specifically designed canonical upper-limb functional tasks. A series of machine learning algorithms were applied to the recorded motion data to produce evaluation indicators, which is able to reflect the level of upper-limb motor function abnormality. Sixteen healthy subjects and eighteen stroke subjects with substantial hemiparesis were recruited in the experiment. The combined IMU and EMG data yielded superior performance over the IMU data alone and the EMG data alone, in terms of decreased normal data variation rate (NDVR) and improved determination coefficient (DC) from a regression analysis between the derived indicator and routine clinical assessment score. Three common unsupervised learning algorithms achieved comparable performance with NDVR around 10% and strong DC around 0.85. By contrast, the use of a supervised algorithm was able to dramatically decrease the NDVR to 6.55%. With the proposed framework, all the produced indicators demonstrated high agreement with the routine clinical assessment scale, indicating their capability of assessing upper-limb motor functions. This study offers a feasible solution to motor function assessment in an objective and quantitative manner, especially suitable for home and community use.
机译:运动功能的定量评估对监测应用干预措施的临床结果并进一步指导治疗方案的建立有着巨大的需求。这项研究提出了一种基于惯性测量单元(IMU)和表面肌电图(EMG)传感器的数据融合来评估上肢运动功能的新颖框架。在测试的上肢佩戴可穿戴式传感器后,要求受试者执行十一项简单明了的,专门设计的规范的上肢功能性任务。将一系列机器学习算法应用于记录的运动数据以产生评估指标,该指标能够反映上肢运动功能异常的水平。实验招募了16名健康受试者和18名中风偏瘫的中风受试者。从降低的正常数据变异率(NDVR)和改进的衍生指标和常规临床评估之间的回归分析确定系数(DC)的角度来看,IMU和EMG组合数据的性能优于单独的IMU数据和单独的EMG数据得分了。三种常见的无监督学习算法在NDVR约为10%且强大DC约为0.85时达到了可比的性能。相比之下,使用监督算法能够将NDVR大大降低至6.55%。通过提出的框架,所有产生的指标均与常规临床评估量表高度吻合,表明其评估上肢运动功能的能力。这项研究以客观和定量的方式为运动功能评估提供了可行的解决方案,特别适合家庭和社区使用。

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