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Differentiation of Gait Using Principal Component Analysis and Application for Parkinson's Disease Monitoring

机译:基于主成分分析的步态鉴别方法及其在帕金森病监测中的应用

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Parkinson's disease (PD) is the second most common neurodegenerative disease. The diagnosis of PD can be difficult, especially in its early stage since there are no existing specific biomarkers. Most biomechanical data characterizing human movement is shown as time series or temporal waveforms representing different joint measures. Principal component analysis (PCA) can be used as a tool to identify differences in gait between healthy persons and those diagnosed with PD. The purpose of this study is to compare hip and knee kinematics during walking in PD group and control (CO) group using PCA, and to identify the specific PCA variables that can be used for differentiating Parkinsonian gait from normal gait. The subjects were divided into two groups: PD group n = 15, control group n = 12. Each subject performed a gait task and kinematics of limbs was measured using nine degrees of freedom inertial measurement unit (IMU). PCA was performed on the angular velocity of right and left side hip and knee joints in the sagittal plane of the gait cycle. Different numbers of principal components (PC) are needed to describe important information from hip (PC - 3) and knee (PC - 4) joints in sagittal plane. Statistically significant differences were found between PD and CO groups: right hip PC3 (p=0.0026); left hip PC3 (p=0.0262); right knee PC3 (p=0.0286). The PCA applied in this paper identified differences in gait features between PD and CO groups. Identification of these differences between PD and CO groups could clarify PD progress.
机译:帕金森氏病(PD)是第二常见的神经退行性疾病。 PD的诊断可能很困难,尤其是在早期阶段,因为目前尚无特定的生物标志物。大多数表征人体运动的生物力学数据都显示为时间序列或代表不同联合措施的时间波形。主成分分析(PCA)可以用作识别健康人与诊断为PD的人之间步态差异的工具。本研究的目的是使用PCA比较PD组和对照组(CO)组在行走过程中的髋部和膝部运动学,并确定可用于区分帕金森氏步态与正常步态的特定PCA变量。将受试者分为两组:PD组n = 15,对照组n =12。每个受试者执行步态任务,并使用九个自由度惯性测量单元(IMU)测量肢体运动学。 PCA是在步态周期的矢状面内左右髋关节和膝关节的角速度上执行的。需要不同数量的主成分(PC)来描述矢状面中髋关节(PC-3)和膝关节(PC-4)的重要信息。 PD组和CO组之间的差异有统计学意义:右髋PC3(p = 0.0026);左髋PC3(p = 0.0262);右膝PC3(p = 0.0286)。本文应用的PCA可以确定PD和CO组之间步态特征的差异。确定PD和CO组之间的这些差异可以澄清PD的进展。

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