Clinical Research Directory
Browse clinical research sites, groups, and studies.
Autonomous Artificial Intelligence Versus AI Assisted Human Optical Diagnosis
Sponsor: Centre hospitalier de l'Université de Montréal (CHUM)
Summary
Computer-aided image-enhanced endoscopy can predict the nature of colorectal polyps with over 90% accuracy. This technology uses artificial intelligence (AI) to analyze video recordings of polyps, learning to make diagnoses in real-time. This means that doctors can get immediate predictions about small polyps during the procedure, reducing the need for separate pathology exams and saving costs, ultimately improving patient care. Human and AI interactions are complex and a framework to reap synergistic effects CADx systems when used by humans to harness optimal performance needs to be established. AI solutions in medicine are usually developed to be used as assistive devices, however, then they rely on humans to correct AI errors. Optical polyp diagnosis is a complex task. Non experts usually achieve diagnostic accuracy in 70-80%. CADx systems have a similar diagnostic accuracy when used autonomously. Clinical evaluation of CADx systems showed that CADx assisted OD performs equally to the operator performance when using non CADx assisted OD. To harness a benefit of clinical CADx implementation we would have to find a way that synergies between human and CADx come into play to eliminate cases in which CADx assisted and/ or human OD results in low diagnostic accuracy and also addresses the problem of serrated polyp recognition.
Official title: Autonomous Artificial Intelligence Versus AI Assisted Human Optical Diagnosis of Colorectal Polyps
Key Details
Gender
All
Age Range
45 Years - 80 Years
Study Type
INTERVENTIONAL
Enrollment
540
Start Date
2024-11-15
Completion Date
2024-11-15
Last Updated
2024-11-15
Healthy Volunteers
No
Conditions
Interventions
CADx (AI) system
The CADx system will be used to predict the histopathology of the polyp detected.
Locations (1)
Ghislaine Ahoua
Montreal, Quebec, Canada