The aim of this diagnostic accuracy study is to evaluate the application of artificial intelligence on the diagnosis of Helicobacter pylori infection and premalignant gastric lesions based on upper endoscopic images. We use techniques of artificial intelligence to analyze the correlation between endoscopic images and urea breath test results/histopathological results.
This study had invited patients to undergo urea breath test, upper gastrointestinal endoscopy, and histology examination. The study will collect their tests results, upper gastrointestinal endoscopy images, and histopathological results. Artificial intelligence techniques will be used to analyze the correlation between endoscopic images and urea breath test results/histopathological results. We aim to establish a telemedicine system to assist clinicians in diagnosing Helicobacter pylori infection and detecting premalignant gastric lesion using upper endoscopic images. The system will be implemented as a telemedicine service system in the rural areas, for example Matsu Islands. The baseline histological predictions will be linked to the newly incident gastric cancer.
Study Type
OBSERVATIONAL
Enrollment
2,000
Yi-Chia Lee
Taipei, Taiwan
RECRUITINGSensitivity to detect premalignant gastric lesions
Outcomes include the atrophic gastritis, intestinal metaplasia, and Helicobacter pylori infection
Time frame: Up to 5 years
Specificity to exclude premalignant gastric conditions
Outcomes include the atrophic gastritis, intestinal metaplasia, and Helicobacter pylori infection
Time frame: Up to 5 years
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