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Synthesis of diagnostic quality cancer pathology images by generative adversarial networks
Author(s) -
Levine Adrian B,
Peng Jason,
Farnell David,
Nursey Mitchell,
Wang Yiping,
Naso Julia R,
Ren Hezhen,
Farahani Hossein,
Chen Colin,
Chiu Derek,
Talhouk Aline,
Sheffield Brandon,
Riazy Maziar,
Ip Philip P,
ParraHerran Carlos,
Mills Anne,
Singh Naveena,
TessierCloutier Basile,
Salisbury Taylor,
Lee Jonathan,
Salcudean Tim,
Jones Steven JM,
Huntsman David G,
Gilks C Blake,
Yip Stephen,
Bashashati Ali
Publication year - 2020
Publication title -
the journal of pathology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.964
H-Index - 184
eISSN - 1096-9896
pISSN - 0022-3417
DOI - 10.1002/path.5509
Subject(s) - artificial intelligence , convolutional neural network , deep learning , computer science , medical physics , cancer , pathology , medicine , pattern recognition (psychology)
Deep learning-based computer vision methods have recently made remarkable breakthroughs in the analysis and classification of cancer pathology images. However, there has been relatively little investigation of the utility of deep neural networks to synthesize medical images. In this study, we evaluated the efficacy of generative adversarial networks to synthesize high-resolution pathology images of 10 histological types of cancer, including five cancer types from The Cancer Genome Atlas and the five major histological subtypes of ovarian carcinoma. The quality of these images was assessed using a comprehensive survey of board-certified pathologists (n = 9) and pathology trainees (n = 6). Our results show that the real and synthetic images are classified by histotype with comparable accuracies and the synthetic images are visually indistinguishable from real images. Furthermore, we trained deep convolutional neural networks to diagnose the different cancer types and determined that the synthetic images perform as well as additional real images when used to supplement a small training set. These findings have important applications in proficiency testing of medical practitioners and quality assurance in clinical laboratories. Furthermore, training of computer-aided diagnostic systems can benefit from synthetic images where labeled datasets are limited (e.g. rare cancers). We have created a publicly available website where clinicians and researchers can attempt questions from the image survey (http://gan.aimlab.ca/). © 2020 Pathological Society of Great Britain and Ireland. Published by John Wiley & Sons, Ltd.

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