Feature extraction of knee joint sound for non-invasive diagnosis of articular pathology

Keo-Sik Kim, Chulgyu Song, Jeong-Hwan Seo
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引用次数: 4

Abstract

The aim of this paper is to classify the vibroarthrographic (VAG) signals according to the pathological condition using the characteristic parameters extracted by the time-frequency transform, and to evaluate the classification accuracy. 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 dynamic time warping method. Also, the noise within the time-frequency distribution (TFD) of the segmented VAG signals was reduced by the singular value decomposition algorithm, and a back-propagation neural network (BPNN) was used to classify the normal and abnormal VAG signals. A total of 1408 segments (normal 1031, patient 377) were used for training and evaluating the BPNN. As a result, the average classification accuracy was 92.3 plusmn 0.9 %. The proposed method showed good potential for the non-invasive diagnosis and monitoring of joint disorders.
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膝关节声音特征提取在关节病理无创诊断中的应用
本文的目的是利用时频变换提取的特征参数,根据病理情况对关节振动图(VAG)信号进行分类,并评价分类精度。在膝关节一次屈伸同时记录VAG和膝关节角度信号,采用动态时间翘曲方法在0.5 Hz下进行分割和归一化。采用奇异值分解算法去除分割后的VAG信号时频分布(TFD)中的噪声,并利用反向传播神经网络(BPNN)对正常和异常VAG信号进行分类。共1408节段(正常1031节,患者377节)用于BPNN的训练和评估。结果,平均分类准确率为92.3±0.9%。该方法在关节疾病的无创诊断和监测方面具有良好的潜力。
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