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Reduced detection rate of artificial intelligence in images obtained from untrained endoscope models and improvement using domain adaptation algorithmopen access

Authors
Park, JunseokHwang, YoungbaeKim, Hyun GunLee, Joon SeongKim, Jin-OhLee, Tae HeeJeon, Seong RanHong, Su JinKo, Bong MinKim, Seokmin
Issue Date
Nov-2022
Publisher
Frontiers Media S.A.
Keywords
endoscopes; artificial intelligence; deep learning; generative adversarial network; domain adaptation algorithm
Citation
Frontiers in Medicine, v.9
Journal Title
Frontiers in Medicine
Volume
9
URI
https://scholarworks.bwise.kr/sch/handle/2021.sw.sch/22101
DOI
10.3389/fmed.2022.1036974
ISSN
2296-858X
Abstract
A training dataset that is limited to a specific endoscope model can overfit artificial intelligence (AI) to its unique image characteristics. The performance of the AI may degrade in images of different endoscope model. The domain adaptation algorithm, i.e., the cycle-consistent adversarial network (cycleGAN), can transform the image characteristics into AI-friendly styles. We attempted to confirm the performance degradation of AIs in images of various endoscope models and aimed to improve them using cycleGAN transformation. Two AI models were developed from data of esophagogastroduodenoscopies collected retrospectively over 5 years: one for identifying the endoscope models, Olympus CV-260SL, CV-290 (Olympus, Tokyo, Japan), and PENTAX EPK-i (PENTAX Medical, Tokyo, Japan), and the other for recognizing the esophagogastric junction (EGJ). The AIs were trained using 45,683 standardized images from 1,498 cases and validated on 624 separate cases. Between the two endoscope manufacturers, there was a difference in image characteristics that could be distinguished without error by AI. The accuracy of the AI in recognizing gastroesophageal junction was >0.979 in the same endoscope-examined validation dataset as the training dataset. However, they deteriorated in datasets from different endoscopes. Cycle-consistent adversarial network can successfully convert image characteristics to ameliorate the AI performance. The improvements were statistically significant and greater in datasets from different endoscope manufacturers [original -> AI-trained style, increased area under the receiver operating characteristic (ROC) curve, P-value: CV-260SL -> CV-290, 0.0056, P = 0.0106; CV-260SL -> EPK-i, 0.0182, P = 0.0158; CV-290 -> CV-260SL, 0.0134, P < 0.0001; CV-290 -> EPK-i, 0.0299, P = 0.0001; EPK-i -> CV-260SL, 0.0215, P = 0.0024; and EPK-i -> CV-290, 0.0616, P < 0.0001]. In conclusion, cycleGAN can transform the diverse image characteristics of endoscope models into an AI-trained style to improve the detection performance of AI.
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