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首页> 外文期刊>Biomedical and Health Informatics, IEEE Journal of >A Pervasive Assessment of Motor Function: A Lightweight Grip Strength Tracking System
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A Pervasive Assessment of Motor Function: A Lightweight Grip Strength Tracking System

机译:运动功能的普遍评估:轻量级握力追踪系统

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摘要

With the growing cost associated with the diagnosis and treatment of chronic neuro-degenerative diseases, the design and development of portable monitoring systems becomes essential. Such portable systems will allow for early diagnosis of motor function ability and provide new insight into the physical characteristics of ailment condition. This paper introduces a highly mobile and inexpensive monitoring system to quantify upper-limb performance for patients with movement disorders. With respect to the data analysis, we first present an approach to quantify general motor performance using the introduced sensing hardware. Next, we propose an ailment-based analysis which employs a significant-feature identification algorithm to perform cross-patient data analysis and classification. The efficacy of the proposed framework is demonstrated using real data collected through a clinical trial. The results show that the system can be utilized as a preliminary diagnostic tool to inspect the level of hand-movement performance. The ailment-based analysis performs an intergroup comparison of physiological signals for cerebral vascular accident (CVA) patients, chronic inflammatory demyelinating polyneuropathy (CIDP) patients, and healthy individuals. The system can classify each patient group with an accuracy of up to $hbox{95.00}%$ and $hbox{91.42}%$ for CVA and CIDP, respectively.
机译:随着与慢性神经退行性疾病的诊断和治疗相关的成本不断增长,便携式监测系统的设计和开发变得至关重要。这种便携式系统将允许早期诊断运动功能,并提供对疾病状况物理特征的新见解。本文介绍了一种高度移动且价格便宜的监测系统,以量化运动障碍患者的上肢表现。关于数据分析,我们首先介绍一种使用引入的传感硬件来量化一般电机性能的方法。接下来,我们提出一种基于疾病的分析方法,该方法采用重要特征识别算法来进行跨患者数据分析和分类。利用通过临床试验收集的真实数据证明了所提出框架的有效性。结果表明,该系统可作为初步诊断工具来检查手部动作水平。基于疾病的分析对脑血管意外(CVA)患者,慢性炎性脱髓鞘性多发性神经病(CIDP)患者和健康个体进行了生理信号的组间比较。对于CVA和CIDP,系统可以分别对每个患者组进行分类,准确度分别高达$ hbox {95.00}%$和$ hbox {91.42}%$。

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