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Recruiting NCT06550908

NCT06550908 Training Physicians to Differentiate the Paris Classification Using Artificial Colon Polyp Images

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Clinical Trial Summary
NCT ID NCT06550908
Status Recruiting
Phase
Sponsor Wuerzburg University Hospital
Condition Colonic Polyp
Study Type INTERVENTIONAL
Enrollment 70 participants
Start Date 2025-04-15
Primary Completion 2025-08-31

Trial Parameters

Condition Colonic Polyp
Sponsor Wuerzburg University Hospital
Study Type INTERVENTIONAL
Phase N/A
Enrollment 70
Sex ALL
Min Age 18 Years
Max Age N/A
Start Date 2025-04-15
Completion 2025-08-31
Interventions
Lutetia Training Plattform - real imagesLutetia Training Plattform - artifical images

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Brief Summary

Training in endoscopy is essential for the early detection of precursors of colorectal cancer. Up to now, this training has been carried out with image collections of findings and in practice when working on patients. The investigators want to use artificial intelligence (AI) to better train doctors to recognise these precursors. By using generative AI, the investigators were able to create realistic images that comply with data protection regulations and whose content can be predefined. Parts of the image can also be regenerated so that it is possible to create different precancerous stages in the same place in the image. In this study the investigators want to train physicians using real images or artificial images in order to compare which version helps classify polyps better.

Eligibility Criteria

Inclusion Criteria: * Physicians with or without experience in colonoscopy

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