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膝关节振动关节造影信号的参数表示与筛选

Parametric representation and screening of knee joint vibroarthrographic signals.

作者信息

Rangayyan R M, Krishnan S, Bell G D, Frank C B, Ladly K O

机构信息

Department of Electrical and Computer Engineering, University of Calgary, Alta., Canada.

出版信息

IEEE Trans Biomed Eng. 1997 Nov;44(11):1068-74. doi: 10.1109/10.641334.

Abstract

We have been investigating analysis of knee joint vibration or vibroarthrographic (VAG) signals as a potential tool for noninvasive diagnosis and monitoring of cartilage pathology. In this paper, we present a comprehensive comparative study of different parametric representations of VAG signals. Dominant poles and cepstral coefficients were derived from autoregressive models of adaptively segmented VAG signals. Signal features and a few clinical features were used as feature vectors in pattern classification experiments based on logistic regression analysis and the leave-one-out method. The results using 51 normal and 39 abnormal signals indicated the superior performance of cepstral coefficients in VAG signal classification with an accuracy rate of 75.6%. With 51 normal and 20 abnormal signals limited to chondromalacia patella, cepstral coefficients again gave the highest accuracy rate of 85.9%.

摘要

我们一直在研究膝关节振动分析或关节振动图(VAG)信号,将其作为软骨病理学无创诊断和监测的潜在工具。在本文中,我们对VAG信号的不同参数表示进行了全面的比较研究。主导极点和倒谱系数是从自适应分段VAG信号的自回归模型中推导出来的。在基于逻辑回归分析和留一法的模式分类实验中,信号特征和一些临床特征被用作特征向量。使用51个正常信号和39个异常信号的结果表明,倒谱系数在VAG信号分类中表现优异,准确率为75.6%。对于51个正常信号和20个仅限于髌骨软化症的异常信号,倒谱系数再次给出了最高准确率85.9%。

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