AI-powered three-category Helicobacter pylori diagnosis via magnetic controlled capsule endoscopy: a multicenter validation of a vision-language model
Xi Sun, Jing Liu, Lili Wu, Xiao Chen, Xiaona Ma, Fei Teng, Ting Zhang, Hui Su, Xin Fan, Jiaxin Li, Shiping Xu, Peng Jin, Hongmei Jiao

TL;DR
A new AI model called MC-CLIP improves Helicobacter pylori diagnosis using capsule endoscopy, outperforming human experts in accuracy and reliability.
Contribution
MC-CLIP is a vision-language model that enables fully automated three-category H. pylori diagnosis with high accuracy and sensitivity.
Findings
MC-CLIP achieved 89.6% accuracy in internal validation and 86.6% in external validation for H. pylori diagnosis.
The model outperformed senior and junior endoscopists in detecting current and past H. pylori infections.
MC-CLIP showed high specificity and excelled at identifying subtle mucosal changes after eradication therapy.
Abstract
Accurate classification of Helicobacter pylori (H. pylori) infection status is critical for gastric cancer risk stratification. Current methods based on traditional convolutional neural networks (CNNs) are limited by their reliance on fragmented single-image analysis and operator-dependent selection variability, impairing diagnostic reliability. To overcome these limitations, we developed MC-CLIP, a vision-language foundation model for the fully automated, three-categorical diagnosis of H. pylori infection using magnetically controlled capsule endoscopy (MCCE). The model was first pretrained on a large-scale dataset of 2,427,475 MCCE image-text pairs derived from 123,543 examinations. It was subsequently fine-tuned on 40,695 expertly annotated images from 864 patients. MC-CLIP autonomously selects 30 representative images per case for end-to-end classification. Its performance was…
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Taxonomy
TopicsHelicobacter pylori-related gastroenterology studies · Gastrointestinal Bleeding Diagnosis and Treatment · Gastric Cancer Management and Outcomes
