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Using of deep learning in the task of diagnosing diseases using optical coherence tomography images

Authors: Tsykunov D.V., Moiseeva V.A.
Published in issue: #12(29)/2018
DOI: 10.18698/2541-8009-2018-12-416


Category: Medical sciences | Chapter: Medical equipment and devices

Keywords: optical coherent tomography, deep learning, convolutional neural networks, artificial intelligence, image classification, choroidal neovascularization, diabetic retinopathy, retina
Published: 17.12.2018

Nowadays artificial intelligence technologies play a very important role in the development of many fields of science, including medicine. In this article considers the possibility of using deep convolutional neural networks to solve the problem of image classification of optical coherent tomography. In the process of developing a model, a method of transfer learning was used. As a result, a convolutional neural network was trained, the accuracy of which in the test sample is 99.5%. This result shows that using of deep learning in the tasks of diagnosis can play a large role in the mass diagnosis of patients.


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