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基于生成式对抗网络的渐进式生长生成的逼真胃镜图像的图像图灵测试。

An Image Turing Test on Realistic Gastroscopy Images Generated by Using the Progressive Growing of Generative Adversarial Networks.

机构信息

Biomedical Engineering Research Center, Asan Medical Center, Seoul, Republic of Korea.

Department of Gastroenterology, University of Ulsan College of Medicine, Asan Medical Center, Seoul, Republic of Korea.

出版信息

J Digit Imaging. 2023 Aug;36(4):1760-1769. doi: 10.1007/s10278-023-00803-2. Epub 2023 Mar 13.

Abstract

Generative adversarial networks (GAN) in medicine are valuable techniques for augmenting unbalanced rare data, anomaly detection, and avoiding patient privacy issues. However, there were limits to generating high-quality endoscopic images with various characteristics, such as peristalsis, viewpoints, light sources, and mucous patterns. This study used the progressive growing of GAN (PGGAN) within the normal distribution dataset to confirm the ability to generate high-quality gastrointestinal images and investigated what barriers PGGAN has to generate endoscopic images. We trained the PGGAN with 107,060 gastroscopy images from 4165 normal patients to generate highly realistic 512 pixel-sized images. For the evaluation, visual Turing tests were conducted on 100 real and 100 synthetic images to distinguish the authenticity of images by 19 endoscopists. The endoscopists were divided into three groups based on their years of clinical experience for subgroup analysis. The overall accuracy, sensitivity, and specificity of the 19 endoscopist groups were 61.3%, 70.3%, and 52.4%, respectively. The mean accuracy of the three endoscopist groups was 62.4 [Group I], 59.8 [Group II], and 59.1% [Group III], which was not considered a significant difference. There were no statistically significant differences in the location of the stomach. However, the real images with the anatomical landmark pylorus had higher detection sensitivity. The images generated by PGGAN showed highly realistic depictions that were difficult to distinguish, regardless of their expertise as endoscopists. However, it was necessary to establish GANs that could better represent the rugal folds and mucous membrane texture.

摘要

生成对抗网络(GAN)在医学领域是一种很有价值的技术,可以用于扩充不平衡的稀有数据、异常检测和避免患者隐私问题。然而,在生成具有不同特征(如蠕动、视点、光源和黏液模式)的高质量内窥镜图像方面仍存在局限性。本研究使用正态分布数据集内的渐进式增长生成对抗网络(PGGAN)来证实其生成高质量胃肠道图像的能力,并研究 PGGAN 在生成内窥镜图像方面存在的障碍。我们使用来自 4165 名正常患者的 107060 张胃镜图像对 PGGAN 进行训练,以生成高度逼真的 512 像素大小的图像。为了进行评估,对 100 张真实图像和 100 张合成图像进行了视觉图灵测试,由 19 名内窥镜医生来区分图像的真实性。根据他们的临床经验年限,将内窥镜医生分为三组进行亚组分析。19 组内窥镜医生的总体准确率、敏感度和特异度分别为 61.3%、70.3%和 52.4%。三组内窥镜医生的平均准确率分别为 62.4%(第 I 组)、59.8%(第 II 组)和 59.1%(第 III 组),差异无统计学意义。胃的不同部位之间没有统计学上的显著差异。然而,具有解剖学标志幽门的真实图像具有更高的检测敏感度。无论内窥镜医生的专业水平如何,PGGAN 生成的图像都具有高度逼真的描绘,难以区分。然而,有必要建立能够更好地表示皱襞和黏膜纹理的 GAN。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7802/10406771/742bb9f448a0/10278_2023_803_Fig1_HTML.jpg

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