Transfer learning method in the problem of binary classification of
chest X-rays
- URL: http://arxiv.org/abs/2303.10601v1
- Date: Sun, 19 Mar 2023 08:35:47 GMT
- Title: Transfer learning method in the problem of binary classification of
chest X-rays
- Authors: Kolesnikov Dmitry
- Abstract summary: High-precision and rapid detection of pathologies on chest X-rays makes it possible to detect the development of pneumonia at an early stage and begin immediate treatment.
Artificial intelligence can speed up and qualitatively improve the procedure of X-ray analysis and give recommendations to the doctor for additional consideration of suspicious images.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The possibility of high-precision and rapid detection of pathologies on chest
X-rays makes it possible to detect the development of pneumonia at an early
stage and begin immediate treatment. Artificial intelligence can speed up and
qualitatively improve the procedure of X-ray analysis and give recommendations
to the doctor for additional consideration of suspicious images. The purpose of
this study is to determine the best models and implementations of the transfer
learning method in the binary classification problem in the presence of a small
amount of training data. In this article, various methods of augmentation of
the initial data and approaches to training ResNet and DenseNet models for
black-and-white X-ray images are considered, those approaches that contribute
to obtaining the highest results of the accuracy of determining cases of
pneumonia and norm at the testing stage are identified.
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