Differentiating essential tremor and Parkinson's disease using a wearable sensor — A pilot study

P. Locatelli, D. Alimonti
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引用次数: 14

Abstract

Essential tremor is the most common form of tremors presenting an outpatient neurology practice and yet it may be often difficult to differentiate with tremors in Parkinson's disease — one of the commonest neurodegenerative disease. Since using appropriate medication is fundamental for efficacy and avoiding serious side effects, precise diagnoses are recommended. Single photon emission computerized tomography (SPECT) of the dopamine transporter (DAT) is a sensitive and specific imaging tool, but expensive and not advisable as screening means. Wearable devices are developing such effective and affordable supports for clinicians. This work aims to be a pilot study of future tremor classification. A low-cost miniaturized wearable device was exploited to collect movements of subject's hand during resting, postural and kinetic tasks. Data were analyzed to extract parameters describing tremors frequency distribution. Results confirm that PD and ET are well separated in the frequency domain, laying the basis for accurate classification.
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使用可穿戴传感器鉴别原发性震颤和帕金森病-一项初步研究
原发性震颤是门诊神经病学实践中最常见的震颤形式,但它可能通常难以与帕金森病(最常见的神经退行性疾病之一)的震颤相区分。由于使用适当的药物是有效和避免严重副作用的基础,建议准确诊断。多巴胺转运体(DAT)的单光子发射计算机断层扫描(SPECT)是一种敏感和特异的成像工具,但价格昂贵,不适合作为筛查手段。可穿戴设备正在为临床医生提供有效和负担得起的支持。这项工作旨在成为未来震颤分类的先导研究。利用一种低成本的小型可穿戴设备来收集受试者在休息、姿势和运动任务时的手部运动。对数据进行分析,提取描述地震频率分布的参数。结果证实,PD和ET在频域上分离良好,为准确分类奠定了基础。
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