ISSN 2413‑1261 

Information Technology for Early Diagnosis of Pneumonia on Individual Radiographs

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Радюк, Павло Михайлович

Krak, Iurii

Oleksander, Barmak

Radiuk, Pavlo M.

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Nowadays, pneumonia remains a disease with one of the highest death rates around the world. The ailment’s pathogen instantly causes a large amount of fluid into the lungs, leading to acute exacerbation. Without preliminary examination and timely treatment, pneumonia can result in severe pulmonary complications. Consequently, early diagnosis of pneumonia becomes a decisive factor in treatment and monitoring the disease. Therefore, information systems that can identify early pneumonia on the Chest X-ray images are becoming more demanding nowadays. An individual approach to a person might be a promising way of early diagnosis. The presented study considers an approach to feature extraction of the early stage of pneumonia and identifying the disease using a relatively simple convolutional neural network. With only three convolutional and two linearization layers, the proposed architecture classifies radiographs with 90.87% accuracy, approaching the results of deep multilayer and resource-intensive architectures in classification accuracy and exceeding them in time efficiency. Our approach requires relatively fewer computing resources, confirming its efficiency in solving practical tasks on available computing devices.

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Krak Iu., Barmak O., Radiuk P. Information Technology for Early Diagnosis of Pneumonia on Individual Radiographs / Iu. Krak, O. Barmak, P. Radiuk // CEUR-Workshop Proceedings. – 2020. –Vol. 2753. – P. 11-21.

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Krak Iu., Barmak O., Radiuk P. Information Technology for Early Diagnosis of Pneumonia on Individual Radiographs / Iu. Krak, O. Barmak, P. Radiuk // CEUR-Workshop Proceedings. – 2020. –Vol. 2753. – P. 11-21.

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