Parkinson’s Disease Severity Estimation using Deep Learning and Cloud Technology

Asma Channa, G. Ruggeri, N. Mammone, R. Ifrim, A. Iera, N. Popescu
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引用次数: 2

Abstract

The management of motor complications in Parkinson’s disease (PD) is an unmet need. This paper proposes an eHealth platform for Parkinson’s disease (PD) severity estimation using a cloud-based and deep learning (DL) approach. The system quantifies the hallmark symptoms of PD using motor signals of patients with PD (PwPD). In this study, the dataset named "The Michael J. Fox Foundation-funded Levodopa Response Study" is used for the development and evaluation of computational methods focusing on severity estimation of motor function in response to the levodopa treatment. The data is derived from a wearable inertial device, named Shimmer 3, to collect motion data from a patient’s upper limb which is more affected by the disease during the performance of some standard activities selected by MDS-UPDRS III and at home while performing daily life activities (DLAs). Seventeen PwPD were enrolled from two clinical sites, who have varying degrees of motor impairment. An incorporated cloud-based framework is proposed where patients’ motion data is saved in MS Azure cloud where an automatic evaluation of patients’ motor activities in response to the levodopa dose is performed using continuous wavelet transform and CNN-based transfer learning approach. Experimental results show that the efficiency and the robustness of the proposed procedure are proven by 90.0% accuracy for tremor estimation and 86.4% for bradykinesia, with good performance in terms of sensitivity and specificity in each class.
利用深度学习和云技术估计帕金森病的严重程度
帕金森病(PD)运动并发症的管理是一个未满足的需求。本文提出了一个基于云计算和深度学习(DL)方法的帕金森病(PD)严重程度估计的电子健康平台。该系统使用PD患者的运动信号量化PD的标志性症状(PwPD)。在本研究中,使用名为“Michael J. Fox基金会资助的左旋多巴反应研究”的数据集,用于开发和评估左旋多巴治疗后运动功能严重程度估计的计算方法。数据来源于一种名为Shimmer 3的可穿戴惯性装置,用于收集患者在进行MDS-UPDRS III选择的一些标准活动期间以及在家中进行日常生活活动(DLAs)时受疾病影响更大的上肢的运动数据。从两个临床地点招募了17名PwPD,他们有不同程度的运动障碍。提出了一种合并的基于云的框架,将患者的运动数据保存在MS Azure云中,使用连续小波变换和基于cnn的迁移学习方法自动评估左旋多巴剂量对患者运动活动的响应。实验结果表明,该方法对震颤的估计准确率为90.0%,对运动迟缓的估计准确率为86.4%,具有较好的灵敏度和特异性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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