Image Turing test and its applications on synthetic chest radiographs by using the progressive growing generative adversarial network

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作者
Miso Jang
Hyun-jin Bae
Minjee Kim
Seo Young Park
A-yeon Son
Se Jin Choi
Jooae Choe
Hye Young Choi
Hye Jeon Hwang
Han Na Noh
Joon Beom Seo
Sang Min Lee
Namkug Kim
机构
[1] University of Ulsan College of Medicine,Department of Medicine
[2] Asan Medical Center,Department of Biomedical Engineering, Asan Medical Institute of Convergence Science and Technology
[3] Asan Medical Center,Department of Statistics and Data Science
[4] University of Ulsan College of Medicine,Department of Radiology and Research Institute of Radiology
[5] Promedius Inc.,Department of Health Screening and Promotion Center
[6] Korea National Open University,Department of Convergence Medicine
[7] University of Ulsan College of Medicine and Asan Medical Center,undefined
[8] Asan Medical Center,undefined
[9] University of Ulsan College of Medicine,undefined
[10] Asan Medical Center,undefined
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摘要
The generative adversarial network (GAN) is a promising deep learning method for generating images. We evaluated the generation of highly realistic and high-resolution chest radiographs (CXRs) using progressive growing GAN (PGGAN). We trained two PGGAN models using normal and abnormal CXRs, solely relying on normal CXRs to demonstrate the quality of synthetic CXRs that were 1000 × 1000 pixels in size. Image Turing tests were evaluated by six radiologists in a binary fashion using two independent validation sets to judge the authenticity of each CXR, with a mean accuracy of 67.42% and 69.92% for the first and second trials, respectively. Inter-reader agreements were poor for the first (κ = 0.10) and second (κ = 0.14) Turing tests. Additionally, a convolutional neural network (CNN) was used to classify normal or abnormal CXR using only real images and/or synthetic images mixed datasets. The accuracy of the CNN model trained using a mixed dataset of synthetic and real data was 93.3%, compared to 91.0% for the model built using only the real data. PGGAN was able to generate CXRs that were identical to real CXRs, and this showed promise to overcome imbalances between classes in CNN training.
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