Abstract

Endoscopic differential diagnoses of gastric mucosal lesions (benign gastric ulcer, early gastric cancer [EGC], and advanced gastric cancer) remain challenging. We aimed to develop and validate convolutional neural network-based artificial intelligence (AI) models: lesion detection, differential diagnosis (AI-DDx), and invasion depth (AI-ID; pT1a vs pT1b among EGC) models. This study included 1366 consecutive patients with gastric mucosal lesions from 2 referral centers inKorea. One representative endoscopic image from each patient was used. Histologic diagnoses were set asthe criterion standard. Performance of the AI-DDx (training/internal/external validation set, 1009/112/245) and AI-ID (training/internal/external validation set, 620/68/155) was compared with visual diagnoses by independent endoscopists (stratified by novice [<1 year of experience], intermediate [2-3 years of experience], and expert [>5 years of experience]) and EUS results, respectively. The AI-DDx showed good diagnostic performance for both internal (area under the receiver operating characteristic curve [AUROC]= .86) and external validation (AUROC= .86). The performance of the AI-DDx was better than that of novice (AUROC= .82, P= .01) and intermediate endoscopists (AUROC= .84, P= .02) but was comparable with experts (AUROC= .89, P= .12) in the external validation set. The AI-ID showed a fair performance in both internal (AUROC= .78) and external validation sets (AUROC= .73), which were significantly better than EUS results performed by experts (internal validation, AUROC= .62; external validation, AUROC= .56; both P< .001). The AI-DDx was comparable with experts and outperformed novice and intermediate endoscopists for the differential diagnosis of gastric mucosal lesions. The AI-ID performed better than EUS for evaluation of invasion depth.

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