Mean Number of Polyps Per Colonoscopy for Colonoscopists and Colonoscopists + ADS Clinical Trial
Official title:
Validating the Performance of Artificial Intelligence in Identifying Polyps in Real-world Colonoscopy
NCT number | NCT03761771 |
Other study ID # | AI-1 |
Secondary ID | |
Status | Completed |
Phase | |
First received | |
Last updated | |
Start date | November 1, 2018 |
Est. completion date | December 10, 2018 |
Verified date | December 2018 |
Source | Changhai Hospital |
Contact | n/a |
Is FDA regulated | No |
Health authority | |
Study type | Observational |
Recently, artificial intelligence (AI) assisted image recognition has made remarkable breakthroughs in various medical fields with the developing of deep learning and conventional neural networks (CNNs). However, all current AI assisted-diagnosis systems (ADSs) were established and validated on endoscopic images or selected videos, while its actual assisted-diagnosis performance in real-world colonoscopy is up to now unknown. Therefore, we validated the performance of an ADS in real-world colonoscopy, which is based on deep learning algorithm and CNNs, trained and tested in multicenter datasets of 20 endoscopy centers.
Status | Completed |
Enrollment | 209 |
Est. completion date | December 10, 2018 |
Est. primary completion date | December 10, 2018 |
Accepts healthy volunteers | No |
Gender | All |
Age group | 18 Years to 75 Years |
Eligibility |
Inclusion Criteria: - patients receiving screening colonoscopy - patients receiving surveillance colonoscopy - patients receiving diagnostic colonoscopy Exclusion Criteria: - patients with declined consent - patients with poor bowel preparation - patients with failed cecal intubation - patients with colonic resection - patients with inflammatory bowel diseases - patients with polyposis |
Country | Name | City | State |
---|---|---|---|
China | Changhai Hospital | Shanghai | |
China | Changhai Hospital, Second Military Medical University | Shanghai |
Lead Sponsor | Collaborator |
---|---|
Zhaoshen Li |
China,
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Urban G, Tripathi P, Alkayali T, Mittal M, Jalali F, Karnes W, Baldi P. Deep Learning Localizes and Identifies Polyps in Real Time With 96% Accuracy in Screening Colonoscopy. Gastroenterology. 2018 Oct;155(4):1069-1078.e8. doi: 10.1053/j.gastro.2018.06.03 — View Citation
Wang Z, Meng Q, Wang S, Li Z, Bai Y, Wang D. Deep learning-based endoscopic image recognition for detection of early gastric cancer: a Chinese perspective. Gastrointest Endosc. 2018 Jul;88(1):198-199. doi: 10.1016/j.gie.2018.01.029. — View Citation
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Type | Measure | Description | Time frame | Safety issue |
---|---|---|---|---|
Primary | sensitivity of the ADS in identifying polyps | Polyps that were only reported by colonoscopists were considered to be missed by the ADS (polyps were reported by the colonoscopists and the ADS did not identify the location of polyps until colonoscopists unfolded and pictured the polyps.) | 1 hour | |
Secondary | false positves of the ADS per colonoscopy withdrawal | when the system identified and confirmed any lesion in the images with no polyps or cancers appearing, the results were judged to be false-positive. | 1 hour |