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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Abstract
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.
Description
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.
Citation
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.