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Synthesizing realistic high-resolution retina image by style-based generative adversarial network and its utilization

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Abstract
Realistic image synthesis based on deep learning is an invaluable technique for developing high-performance computer aided diagnosis systems while protecting patient privacy. However, training a generative adversarial network (GAN) for image synthesis remains challenging because of the large amounts of data required for training various kinds of image features. This study aims to synthesize retinal images indistinguishable from real images and evaluate the efficacy of the synthesized images having a specific disease for augmenting class imbalanced datasets. The synthesized images were validated via image Turing tests, qualitative analysis by retinal specialists, and quantitative analyses on amounts and signal-to-noise ratios of vessels. The efficacy of synthesized images was verified by deep learning-based classification performance. Turing test shows that accuracy, sensitivity, and specificity of 54.0 ± 12.3%, 71.1 ± 18.8%, and 36.9 ± 25.5%, respectively. Here, sensitivity represents correctness to find real images among real datasets. Vessel amounts and average SNR comparisons show 0.43% and 1.5% difference between real and synthesized images. The classification performance after augmenting synthesized images outperforms every ratio of imbalanced real datasets. Our study shows the realistic retina images were successfully generated with insignificant differences between the real and synthesized images and shows great potential for practical applications.
Author(s)
Mingyu KimYou Na KimMiso JangJeongeun HwangHong-Kyu KimSang Chul YoonYoon Jeon KimNamkug Kim
Issued Date
2022
Type
Article
Keyword
ClassificationHuman beingsImage processingRetinaSignal-To-Noise Ratio
DOI
10.1038/s41598-022-20698-3
URI
https://oak.ulsan.ac.kr/handle/2021.oak/15109
Publisher
SCIENTIFIC REPORTS
Language
영어
ISSN
2045-2322
Citation Volume
12
Citation Number
1
Citation Start Page
1
Citation End Page
11
Appears in Collections:
Medicine > Nursing
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