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Convolutional neural network for IT lung diagnostics

https://doi.org/10.21122/2309-4923-2024-1-59-64

Abstract

The subject of research is the use of voice processing technology of the patient in IT medicine. The purpose of the article is to develop a neural network for the diagnosis of lung diseases using sound analysis of the patient's voice. The study includes training of a neural network, development of a mobile program for collecting patient sound, extraction of sound characteristics on the server side, diagnostics of sound data using a trained neural network and return of diagnostic results to the mobile application program. A block diagram of voice processing from the source signal to the extraction of an audio file is presented, as an example, the extraction of MFCC and FBank functions is given. The structure of a convolutional neural network (CNN), which was trained on a standard dataset of respiratory diseases, is given. A simplified process of classification of breathing sounds necessary for the prediction of lung diseases is given. For practical implementation, the VGGish network is used in the Python programming environment, which has network parameters trained using a data set. The experiments were carried out on the Android service framework platform, which is divided into two parts: Android front-end and server. The interface part implements the interactive user function and is responsible for entering audio data. After downloading the audio, the server will pre-process the audio, and call CNN to classify the audio, the results are returned to an external module on the smartphone. The total accuracy of the model reached 83.6 %.

About the Authors

U. A. Vishniakou
Belarusian State University of Informatics and Radioelectronics
Belarus

Vishniakou Uladzimir Anatolyevich, Doctor of Technical Sciences, Professor, Professor

Minsk



T. He
Belarusian State University of Informatics and Radioelectronics
Belarus

He Tao, master student of ICT department

Minsk

 



References

1. Hwang E.J., Park S., Jin K.-N. et al. Development and Validation of a Deep Learning based Automatic Detection Algorithm for Active Pulmonary Tuberculosis on Chest Radiographs. Clinical Infectious Diseases, 2019, Vol. 69, Issue 5, pp. 739-747.

2. Little M.A., McSharry, P.E., Roberts, S.J. et al. Exploiting Nonlinear Recurrence and Fractal Scaling Properties for Voice Disorder Detection. BioMed Eng OnLine 6, 23 (2007). DOI: 10.1186/1475-925X-6-23

3. Das N., Topalovic M., Janssens W. Artificial intelligence in diagnosis of obstructive lung disease: current status and future potential. Current Opinion in Pulmonary Medicine, 2018, Volume 24, Issue 2, pp. 117–123.

4. Rocha B.M., Filos D., Mendes L. et al. Α Respiratory Sound Database for the Development of Automated Classification. In: Precision Medicine Powered by pHealth and Connected Health, Singapore: Springer Singapore. 2018, pp. 33-37. (IFMBE Proceedings; vol. 66).

5. Amoh J., Odame K. Deep Neural Networks for Identifying Cough Sounds. IEEE Transactions on Biomedical Circuits and Systems. 2016, Vol. 10, Issue 5, pp. 1003-1011.

6. Aykanat M., Kılıç Ö., Kurt B., Saryal S. Classification of lung sounds using convolutional neural networks. EURASIP Journal on Image and Video Processing, 2017, Vol. 2017, Issue 1, pp. 65.

7. The Robust Feature Extraction of Audio Signal by Using VGGish Model [Electronic resource]. − Access mode :https:// www.linkedin.com/pulse/robust-feature-extraction-audio-signal-using-vggish-ijcsis. − Access date: 20.10.2023.


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For citations:


Vishniakou U.A., He T. Convolutional neural network for IT lung diagnostics. «System analysis and applied information science». 2024;(1):59-64. (In Russ.) https://doi.org/10.21122/2309-4923-2024-1-59-64

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ISSN 2309-4923 (Print)
ISSN 2414-0481 (Online)