IDENTIFICATION OF LUNG DISEASE TYPES USING CONVOLUTIONAL NEURAL NETWORK AND VGG-16 ARCHITECTURE

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Abstract

Pneumonia, tuberculosis, and Covid-19 are different lung diseases but have similar characteristics. One of the reasons for the worsening of disease in lung sufferers is a diagnosis that takes a long time. Another factor, the results of the X-ray photos look blurry and lack contracture, causing different diagnostic results of X-ray photos. This research classifies lung images into four categories: normal lungs, tuberculosis, pneumonia, and Covid-19 using the Convolutional Neural Network method and VGG-16 architecture. The results of the research with models and scenarios without pre-trained use data with a ratio of 9:1 at epoch 50, an accuracy of 94%, while the lowest results are in scenarios using data with a ratio of 8:2 at epoch 50, non-pre-trained models, accuracy by 87%.

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Bukhori, S., Verdy, B. Y. N., Windi Eka, Y. R., & Januar, A. P. (2023). IDENTIFICATION OF LUNG DISEASE TYPES USING CONVOLUTIONAL NEURAL NETWORK AND VGG-16 ARCHITECTURE. System Research and Information Technologies, 2023(3), 96–107. https://doi.org/10.20535/SRIT.2308-8893.2023.3.07

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