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A Neural-Based Approach to Aid Early Parkinson's Disease Diagnosis

机译:一种基于神经的促进早期帕金森病诊断方法

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In this paper, a neural approach based on using Long-Short Term Memory (LSTM) neural networks is proposed to diagnose patients suffering from PD. In this study, it is shown that the temporal patterns of the gait cycle are different for healthy persons and patients. Therefore, by using a recurrent structure like LSTM, able to analyze the dynamic nature of the gait cycle, the proposed method extracts the temporal patterns to diagnose patients from healthy persons. Utilized data to extract the temporal shapes of the gait cycle are based on changing vertical Ground Reaction Force (vGRF), measured by 16 sensors placed in the soles of shoes worn by each subject. To reduce the number of data dimensions, the sequences of corresponding sensors placed in different feet are combined by subtraction. This method analyzes the temporal pattern of time-series collected from different sensors, without extracting special features representing statistics of different parts of the gait cycle. Finally, by recording and presenting data from 10 seconds of subject walking, the proposed approach can diagnose the patient from healthy persons with an average accuracy of 97.66%, and the total F1 score equal to 97.78%.
机译:在本文中,提出了一种基于使用长短短期存储器(LSTM)神经网络的神经方法来诊断患有PD的患者。在这项研究中,表明步态周期的时间模式对健康人和患者不同。因此,通过使用像LSTM这样的反复化结构,能够分析步态循环的动态性质,提出的方法提取时间模式以诊断来自健康人的患者。利用数据提取步态循环的时间形状基于改变垂直地反作用力(VGRF),通过16个传感器测量,所述16个传感器放置在每个受试者穿的鞋子中。为了减少数据尺寸的数量,将相应的传感器的序列放置在不同的脚上通过减法组合。该方法分析了从不同传感器收集的时间序列的时间模式,而不提取代表步态周期的不同部分的统计数据的特殊功能。最后,通过从10秒的主题行走中记录和呈现数据,所提出的方法可以从平均精度为97.66%的健康人诊断患者,并且总F1得分等于97.78%。

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