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Representation of fluctuation features in pathological knee joint vibroarthrographic signals using kernel density modeling method

机译:核密度建模方法在病理性膝关节脉搏动心动图信号中表现波动特征

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摘要

This article applies advanced signal processing and computational methods to study the subtle fluctuations in knee joint vibroarthrographic (VAG) signals. Two new features are extracted to characterize the fluctuations of VAG signals. The fractal scaling index parameter is computed using the detrended fluctuation analysis algorithm to describe the fluctuations associated with intrinsic correlations in the VAG signal. The averaged envelope amplitude feature measures the difference between the upper and lower envelopes averaged over an entire VAG signal. Statistical analysis with the Kolmogorov-Smirnov test indicates that both of the fractal scaling index (. p=. 0.0001) and averaged envelope amplitude (. p=. 0.0001) features are significantly different between the normal and pathological signal groups. The bivariate Gaussian kernels are utilized for modeling the densities of normal and pathological signals in the two-dimensional feature space. Based on the feature densities estimated, the Bayesian decision rule makes better signal classifications than the least-squares support vector machine, with the overall classification accuracy of 88% and the area of 0.957 under the receiver operating characteristic (ROC) curve. Such VAG signal classification results are better than those reported in the state-of-the-art literature. The fluctuation features of VAG signals developed in the present study can provide useful information on the pathological conditions of degenerative knee joints. Classification results demonstrate the effectiveness of the kernel feature density modeling method for computer-aided VAG signal analysis.
机译:本文应用先进的信号处理和计算方法来研究膝关节纤颤(VAG)信号中的细微波动。提取了两个新特征来表征VAG信号的波动。使用去趋势波动分析算法计算分形缩放指数参数,以描述与VAG信号中固有相关性相关的波动。平均包络幅度特征测量在整个VAG信号上平均的上和下包络之间的差。使用Kolmogorov-Smirnov检验进行的统计分析表明,正常信号组和病理信号组的分形标度指数(。p = 0.0001)和平均包络幅度(。p = 0.0001)特征均存在显着差异。利用双变量高斯核对二维特征空间中正常信号和病理信号的密度进行建模。根据估计的特征密度,贝叶斯决策规则比最小二乘支持向量机做出更好的信号分类,总体分类精度为88%,接收器工作特性(ROC)曲线下的面积为0.957。这样的VAG信号分类结果要优于最新文献中报道的结果。在本研究中开发的VAG信号的波动特征可以提供有关退行性膝关节病理状况的有用信息。分类结果证明了核特征密度建模方法对计算机辅助VAG信号分析的有效性。

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