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Classification of Vibroarthrographic SignalsBased on PCNN-LSTM Neural Network |
Yang Jia1, Qiu Tianshuang1#*, Liu Yupeng2 |
1(Faculty of Electronic Information and Electrical Engineering,Dalian University of Technology,Dalian 116024,Liaoning, China) 2(Zhongshan Hospital,Dalian University,Dalian 116001,Liaoning, China) |
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Abstract The vibroarthrographic (VAG) signal is a sound of the knee joint during flexion and extension. VAG signal can be used to describe the health status of knee joint sensitively and objectively. Hence, it is often used in the detection of knee joint diseases. However, at present, classification accuracy of the normal and abnormal classification method of VAG signal is still low and not automated. The performance needs to be further improved. To solve this problem, in this paper, a classification algorithm of VAG signal based on improved convolutional neural network (PCNN-LSTM) was proposed. First, empirical mode decomposition (EMD) and wavelet transform are used to transform one-dimensional VAG signal into two-dimensional time-frequency characteristic spectrum, which was used as data set. Second, on the basis of CNN, the parallel CNN network structure was combined with LSTM neural network to form the PCNN-LSTM model, which could classify normal or abnormal VAG signals and realizd the automatic detection of knee joint health status. In this paper, the performances of the proposed algorithm were verified by the data set that composed of the real VAG signals collected by the acceleration sensor (181A02) and USB acquisition instrument (FSC812). The data set consisted of 654 samples, including 222 health data and 432 data of patients with knee diseases. Results showed that the classification accuracy of the proposed algorithm was 96.93%, the sensitivity was 100%, and the specificity was 95.56%. Compared with other algorithms, the proposed algorithm achieved better results, and realized the classification and recognition of VAG signals, which was of great significance for non-invasive detection and auxiliary diagnosis of knee joint diseases.
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Received: 10 July 2020
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About author:: Member, Chinese Society of Biomedical Engineering |
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