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一种基于时频分析特征提取的膝关节声音分类增强算法。

An enhanced algorithm for knee joint sound classification using feature extraction based on time-frequency analysis.

作者信息

Kim Keo Sik, Seo Jeong Hwan, Kang Jin U, Song Chul Gyu

机构信息

Division of Electronics and Information Engineering, Chonbuk National University, 664-14 Deokjin-dong, Jeonju, Jeonbuk 561-756, South Korea.

出版信息

Comput Methods Programs Biomed. 2009 May;94(2):198-206. doi: 10.1016/j.cmpb.2008.12.012. Epub 2009 Feb 13.

Abstract

Vibroarthrographic (VAG) signals, generated by human knee movement, are non-stationary and multi-component in nature and their time-frequency distribution (TFD) provides a powerful means to analyze such signals. The objective of this paper is to improve the classification accuracy of the features, obtained from the TFD of normal and abnormal VAG signals, using segmentation by the dynamic time warping (DTW) and denoising algorithm by the singular value decomposition (SVD). VAG and knee angle signals, recorded simultaneously during one flexion and one extension of the knee, were segmented and normalized at 0.5 Hz by the DTW method. Also, the noise within the TFD of the segmented VAG signals was reduced by the SVD algorithm, and a back-propagation neural network (BPNN) was used to classify the normal and abnormal VAG signals. The characteristic parameters of VAG signals consist of the energy, energy spread, frequency and frequency spread parameter extracted by the TFD. A total of 1408 segments (normal 1031, abnormal 377) were used for training and evaluating the BPNN. As a result, the average classification accuracy was 91.4 (standard deviation +/-1.7) %. The proposed method showed good potential for the non-invasive diagnosis and monitoring of joint disorders such as osteoarthritis.

摘要

由人体膝关节运动产生的振动关节造影(VAG)信号本质上是非平稳且多分量的,其时间频率分布(TFD)为分析此类信号提供了一种强大的手段。本文的目的是利用动态时间规整(DTW)分割和奇异值分解(SVD)去噪算法,提高从正常和异常VAG信号的TFD中获得的特征的分类准确率。在膝关节一次屈伸过程中同时记录的VAG和膝关节角度信号,通过DTW方法以0.5Hz进行分割和归一化。此外,通过SVD算法降低了分割后的VAG信号TFD内的噪声,并使用反向传播神经网络(BPNN)对正常和异常VAG信号进行分类。VAG信号的特征参数包括通过TFD提取的能量、能量扩散、频率和频率扩散参数。总共1408个片段(正常1031个,异常377个)用于训练和评估BPNN。结果,平均分类准确率为91.4(标准差±1.7)%。所提出的方法在骨关节炎等关节疾病的无创诊断和监测方面显示出良好的潜力。

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