Screening Colonoscopy Clinical Trial
Official title:
Does AI-assisted Colonoscopy Improve Adenoma Detection in Screening Colonoscopy? A Multi-center Randomized Controlled
To date, there is a lack of large-scale randomized controlled study using AI assistance in the detection of polyps/adenoma in a screening population. The correlation of fecal occult blood test (FIT or FOBT) and the advantage of AI-assisted colonoscopy has not been investigated. There is also a lack of information of the benefit of AI-assisted colonoscopy in experienced colonoscopist versus trainee/resident.
Status | Recruiting |
Enrollment | 2994 |
Est. completion date | November 27, 2020 |
Est. primary completion date | November 27, 2020 |
Accepts healthy volunteers | Accepts Healthy Volunteers |
Gender | All |
Age group | 45 Years to 75 Years |
Eligibility |
Inclusion Criteria - Patients receiving colonoscopy screening - Patients aged 45-75 years - Both patients who have or have not done a FIT test and both FIT +ve and FIT -ve subjects Exclusion Criteria - Patients who have symptom(s) suggestive of colorectal diseases - Patients who have a history of inflammatory bowel disease, colorectal cancer or polyposis syndrome (anaemia, bloody stool, tenesmus and obstructive symptoms) - Patients who had colonoscopy or other investigation of colon and rectum in the past 10 years - Patients who had surgery for colorectal diseases - Patients who cannot tolerate bowel preparation or have suboptimal bowel preparations (Boston Bowel Preparation Scale) - Cannot reach caecum - Patients who are incompetent in giving informed consent |
Country | Name | City | State |
---|---|---|---|
Hong Kong | Prince of Wales Hospital | Hong Kong |
Lead Sponsor | Collaborator |
---|---|
Chinese University of Hong Kong |
Hong Kong,
Type | Measure | Description | Time frame | Safety issue |
---|---|---|---|---|
Primary | Per-patient ADR in each group | For the AI-Assisted group, it is defined as the number of patients with at least 1 adenoma identified in the colon divided by the total number of patients in the AI-Assisted group. | 12 months | |
Primary | Per-patient ADR in each group | For the Standard group, it is defined as the number of patients with at least 1 adenoma identified in the colon divided by the total number of patients in the Standard group. | 12 months |
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