Pathological Gait Detection of Parkinson's Disease Using Sparse Representation

Yuyao Zhang, P. Ogunbona, W. Li, B. Munro, G. Wallace
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引用次数: 22

Abstract

Parkinson's disease is a progressively degenerative neurological disorder which impacts the control of body movements. While there is no known permanent cure for the disorder, it is possible to monitor the progression and establish management regime that could help the medical team, patients and their family cope with the condition. Gait analysis becomes an attractive quantitative and non-invasive mechanism that can aid early detection and monitoring of the response of patients to the management schedules. In this paper, we model cycles of human gait as a sparsely represented signal using over-complete dictionary. This representation forms the basis of a classification that allows the recognition of symptomatic subjects. Experiments have been conducted using signals of vertical ground reaction force (GRF) from subjects with Parkinson's disease from the publicly available gait database (physionet.org). Our method achieved a classification accuracy of 83% in recognising pathological cases and represents a significant improvement on previously published results that use a selection of the Fourier transform coefficients as features.
基于稀疏表示的帕金森病病理步态检测
帕金森病是一种进行性退行性神经系统疾病,影响身体运动的控制。虽然这种疾病没有已知的永久治疗方法,但有可能监测病情进展并建立管理制度,帮助医疗团队、患者及其家人应对这种情况。步态分析成为一种有吸引力的定量和非侵入性机制,可以帮助早期发现和监测患者对管理计划的反应。在本文中,我们使用过完备字典将人类步态周期建模为稀疏表示的信号。这种表征构成了分类的基础,从而可以识别有症状的主体。实验使用来自公开步态数据库(physionet.org)的帕金森病患者的垂直地面反作用力(GRF)信号进行。我们的方法在识别病理病例方面实现了83%的分类准确率,并且代表了先前发表的使用傅立叶变换系数选择作为特征的结果的显着改进。
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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