用智能手表量化帕金森患者的震颤

R. Contreras, M. Huerta, G. Sagbay, C. Llumiguano, M. Bravo, A. Bermeo, R. Clotet, Á. Soto
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引用次数: 16

摘要

帕金森氏症是一种神经系统疾病,大约1%的60岁以上的人会受到影响。疾病的复杂性难以对震颤程度进行客观的医学评估。本文介绍了一种系统,该系统使用智能手表中的加速度计和陀螺仪传感器来量化帕金森病患者的震颤。该系统基于由多个传感器节点(Android wear)和一个汇聚节点(Android Smartphone)组成的无线体域网络。该系统集成了四个过程:用户认证、传感器在身体上的放置、运动传感和数据上传。该系统在12名PD患者(5名男性和7名女性)进行多项活动时进行了评估,但在本文中,我们只分析了患者坐着休息时的情况。患者平均病程6.25年,平均年龄66.33岁,年龄跨度5186岁。地震震级在时域上以线加速度和角速度的形式表示。结果表明,这些变量可以确定诊断为3期和4期患者的帕金森病演变。
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Tremors quantification in parkinson patients using smartwatches
Parkinson's disease is a neurological disorder that affects about 1% of people over 60 years. The complexity of the disease difficult to carry out objective medical assessments of the level of tremors. This article presents a system which uses the accelerometer and gyroscope sensors in smartwatches to quantify the tremors in patients with Parkinson's disease. The system is based on a Wireless Body Area Network composed by multiple sensor nodes (Android Wears) and one sink node (Android Smartphone). The system integrates four processes: user authentication, placement of sensors on the body, movement sensing and data uploading. The system was evaluated in 12 patients with PD (five males and seven females) while they were doing several activities, but in this article we only analyses when the patients were seated at rest. The patients had an average disease duration of 6.25 years, an average age of 66.33 years and a range of 5186 years. The tremor magnitudes were presented in the form of linear acceleration and angular velocity in the time domain. The results indicate that these variables can determine Parkinson's disease evolution in a patient diagnosed with stage 3 and 4.
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