Virtual NBI image synthesis using stable diffusion for enhanced recognition of early gastric cancer: a technical validation study
Changda Lei, Xiuji Kan, Yifan Ouyang, Yutong Mei, Yunbo Guo, Kaicheng Hong, Junbo Li, Bilin Wang, Rui Li

TL;DR
This study uses stable diffusion to convert white light endoscopy images into virtual NBI images, improving early gastric cancer detection accuracy for endoscopists.
Contribution
A novel method for generating virtual NBI images using stable diffusion to enhance early gastric cancer diagnosis.
Findings
Virtual NBI images improved diagnostic accuracy compared to white light endoscopy images.
Junior endoscopists showed increased accuracy when using virtual NBI images.
Virtual NBI images achieved higher area concordance and whole-lesion diagnosis rates than white light endoscopy.
Abstract
Narrow band imaging (NBI) can assist endoscopists in detecting early gastric cancer (EGC) more easily, but its widespread use is hindered by economic cost and technical property rights. We aim to realize the conversion of white light endoscopy (WLE) images into virtual narrow band imaging (Vir–NBI) images using stable diffusion. Endoscopic images were retrospectively collected from 325 patients who underwent endoscopic submucosal dissection (ESD). A total of 273 NBI images from 218 patients were used to fine-tune stable diffusion, which then converted 111 WLE images from 107 patients into Vir–NBI images. Endoscopists assessed the images and evaluated their effectiveness in diagnosing EGC and depicting lesion margins in the form of WLE, NBI, and Vir–NBI image pairs. Compared with WLE images, Vir-NBI images have better quality. The accuracy of junior endoscopists in diagnosing EGC by…
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Taxonomy
TopicsGastric Cancer Management and Outcomes · Colorectal Cancer Screening and Detection · Radiomics and Machine Learning in Medical Imaging
