Department of Communication Engineering, School of Information Science and Technology, Xiamen University, Xiamen, Fujian, China.
IEEE Trans Neural Syst Rehabil Eng. 2010 Apr;18(2):150-8. doi: 10.1109/TNSRE.2009.2033062.
To assess the gait variability in patients with Parkinson's disease (PD), we first used the nonparametric Parzen-window method to estimate the probability density functions (PDFs) of stride interval and its two subphases (i.e., swing interval and stance interval). The gait rhythm standard deviation (sigma) parameters computed with the PDFs indicated that the gait variability is significantly increased in PD. Signal turns count (STC) was also derived from each outlier-processed gait rhythm time series to serve as a dominant feature, which could be used to characterize the gait variability in PD. Since it was observed that the statistical parameters of swing interval or stance interval were highly correlated with those of stride interval, this article only used the stride interval parameters, i.e., sigma(r) and STC(r) , to form the feature vector in the pattern classification experiments. The results evaluated with the leave-one-out cross-validation method demonstrated that the least squares support vector machine with polynomial kernels was able to provide a classification accurate rate of 90.32% and an area (Az) of 0.952 under the receiver operating characteristic curve, both of which were better than the results obtained with the linear discriminant analysis (accuracy: 67.74%, Az: 0.917). The features and the classifiers used in the present study could be useful for monitoring of the gait in PD.
为了评估帕金森病(PD)患者的步态变异性,我们首先使用非参数 Parzen 窗方法来估计步长间隔及其两个子阶段(即摆动间隔和站立间隔)的概率密度函数(PDF)。用 PDF 计算的步态节律标准差(sigma)参数表明,PD 患者的步态变异性显著增加。还从每个离群处理的步态节律时间序列中推导出信号转弯计数(STC),作为主要特征,可用于表征 PD 中的步态变异性。由于观察到摆动间隔或站立间隔的统计参数与步长间隔的参数高度相关,因此本文仅使用步长间隔参数,即 sigma(r)和 STC(r),来形成模式分类实验中的特征向量。用留一交叉验证方法评估的结果表明,多项式核的最小二乘支持向量机能够提供 90.32%的分类准确率和 0.952 的接收者操作特性曲线下的面积(Az),均优于线性判别分析的结果(准确率:67.74%,Az:0.917)。本研究中使用的特征和分类器可用于监测 PD 患者的步态。