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Fine-Tuning the Deep Learning Models Using Transfer Learning for the Classification of Lung Diseases from Chest Radiographs

Lecture Notes in Electrical Engineering, ISSN: 1876-1119, Vol: 1095, Page: 175-182
2024
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Conference Paper Description

Lung diseases are one of the main sources of death across the globe which might prompt lung cancer when left unattended for an extensive stretch of time. X-ray imaging is the fundamental stage in clinical imaging for patients associated with lung oddities. However, because of the intricate morphology of the chest, radiologists have a difficult time visually interpreting the chest radiographs. The purpose of this study is to develop a medical image interpretation model for diagnosing multiple lung diseases by identifying abnormalities in chest X-ray images using transfer learning. The suggested approach has experimented with the four classes of the COVID-19 radiography dataset. The MobileNet V2 architecture performed effectively with the preprocessed dataset.

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