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CNN and LSTM for the classification of parkinson's disease based on the GTCC and MFCC

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EN
Abstrakty
EN
Parkinson's disease is a recognizable clinical syndrome with a variety of causes and clinical presentations; it represents a rapidly growing neurodegenerative disorder. Since about 90 percent of Parkinson's disease sufferers have some form of early speech impairment, recent studies on tele diagnosis of Parkinson's disease have focused on the recognition of voice impairments from vowel phonations or the subjects' discourse. This paper presents a new approach for Parkinson's disease detection from speech sounds that are based on CNN and LSTM and uses two categories of characteristics. These are Mel Frequency Cepstral Coefficients (MFCC) and Gammatone Cepstral Coefficients (GTCC) obtained from noise-removed speech signals with comparative EMD-DWT and DWT-EMD analysis. The proposed model is divided into three stages. In the first step, noise is removed from the signals using the EMD-DWT and DWT-EMD methods. In the second step, the GTCC and MFCC are extracted from the enhanced audio signals. The classification process is carried out in the third step by feeding these features into the LSTM and CNN models, which are designed to define sequential information from the extracted features. The experiments are performed using PC-GITA and Sakar datasets and 10-fold cross validation method, the highest classification accuracy for the Sakar dataset reached 100% for both EMD-DWT-GTCC-CNN and DWT-EMD-GTCC-CNN, and for the PC-GITA dataset, the accuracy is reached 100% for EMD-DWT-GTCC-CNN and 96.55% for DWT-EMD-GTCC-CNN. The results of this study indicate that the characteristics of GTCC are more appropriate and accurate for the assessment of PD than MFCC.
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1--24
Opis fizyczny
Bibliogr.35 poz., fig., tab.
Twórcy
  • Laboratory Electrical and Industrial Engineering, Information Processing, Informatics, and Logistics (GEITIIL), Faculty of Science Ain Chock, University Hassan II, Casablanca, Morocco
  • Laboratory Electrical and Industrial Engineering, Information Processing, Informatics, and Logistics (GEITIIL), Faculty of Science Ain Chock, University Hassan II, Casablanca, Morocco
  • Research Center STIS, M2CS, National Higher School of Arts and Craft, Rabat (ENSAM), Mohammed V University in Rabat, Morocco
Bibliografia
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  • [6] Drissi, T. B., Zayrit, S., Nsiri, B., & Ammoummou, A. (2019). Diagnosis of Parkinson’s disease based on wavelet transform and Mel Frequency Cepstral Coefficients. International Journal of Advanced Computer Science and Applications, 10(3), 125–132. https://doi.org/10.14569/IJACSA.2019.0100315
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  • [23] Qin, J., Liu, T., Wang, Z., Zou, Q., Chen, L., & Hong, Ch. (2022). Speech Recognition for Parkinson’s Disease Based on Improved Genetic Algorithm and Data Enhancement Technology. In Wang, Y., Zhu, G., Han, Q., Wang, H., Song, X., & Lu, Z. Communications in Computer and Information Science, (vol. 1628, pp. 273–286).Springer. https://doi.org/10.1007/978-981-19-5194-7_21
  • [24] Quan, Ch., Ren, K., Luo, Z., Chen, Z., & Ling, Y. (2022). End-to-end deep learning approach for Parkinson’s disease detection from speech signals. Biocybernetics and Biomedical Engineering, 42(2), 556–574. https://doi.org/10.1016/j.bbe.2022.04.002
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  • [30] Taoufiq, B. D., Soumaya, Z., Benayad, N., & Nouhaila, B. (2022). Cepstral Coefficient Extraction using the MFCC with the Discrete Wavelet Transform for the Parkinson’s Disease Diagnosis. International Journal of Engineering Trends and Technology, 70(7), 283–290. https://doi.org/10.14445/22315381/IJETT-V70I7P229
  • [31] Terriza, M., Navarro, J., Retuerta, I., Alfageme, N., San-Segundo, R., Kontaxakis, G., Garcia-Martin, E., Marijuan, P. C., & Panetsos, F. (2022). Use of Laughter for the Detection of Parkinson’s Disease: Feasibility Study for Clinical Decision Support Systems, Based on Speech Recognition and Automatic Classification Techniques. International Journal of Environmental Research and Public Health, 19(17) 10884. https://doi.org/10.3390/ijerph191710884
  • [32] Valero, X., & Alias, F. (2012). Gammatone Cepstral Coefficients: Biologically Inspired Features for Non-Speech Audio Classification. IEEE Transactions on Multimedia, 14(6), 1684–1689. https://doi.org/10.1109/TMM.2012.2199972
  • [33] Yagnavajjula, M. K., Alku, P., Rao, K. S., & Mitra, P. (2022). Detection of Neurogenic Voice Disorders Using the Fisher Vector Representation of Cepstral Features. Journal of Voice. https://doi.org/10.1016/j.jvoice.2022.10.016
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  • [35] Zhang, T., Zhang, Y., Sun, H., & Shan, H. (2021). Parkinson disease detection using energy direction features based on EMD from voice signal. Biocybernetics and Biomedical Engineering, 41(1), 127–141. https://doi.org/10.1016/j.bbe.2020.12.009
Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-0eaa833c-6502-4a35-a2ca-ef9cbd4de8b1
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