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Evaluating diagnostic content of AI-generated chest radiography: A multi-center visual Turing test.

Youho MyongDan YoonByeong Soo KimYoung Gyun KimYongsik SimSuji LeeJiyoung YoonMinwoo ChoSungwan Kim
Published in: PloS one (2023)
Radiologists effectively classified chest pathologies with synthesized radiographs, suggesting that the images contained adequate clinical information. Furthermore, GAN augmentation enhanced CNN performance, providing a bypass to overcome data imbalance in medical AI training. CNN based methods rely on the amount and quality of training data; the present study showed that GAN augmentation could effectively augment training data for medical AI.
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