Endoscopy 2023; 55(04): 313-319
DOI: 10.1055/a-1966-0661
Original article

Evaluation of a real-time computer-aided polyp detection system during screening colonoscopy: AI-DETECT study

1   Wolfson Unit for Endoscopy, St Mark’s Hospital, London, United Kingdom
,
Ana Wilson
1   Wolfson Unit for Endoscopy, St Mark’s Hospital, London, United Kingdom
,
1   Wolfson Unit for Endoscopy, St Mark’s Hospital, London, United Kingdom
,
Adam Humphries
1   Wolfson Unit for Endoscopy, St Mark’s Hospital, London, United Kingdom
,
Kevin Monahan
1   Wolfson Unit for Endoscopy, St Mark’s Hospital, London, United Kingdom
,
Noriko Suzuki
1   Wolfson Unit for Endoscopy, St Mark’s Hospital, London, United Kingdom
,
1   Wolfson Unit for Endoscopy, St Mark’s Hospital, London, United Kingdom
,
Margaret Vance
1   Wolfson Unit for Endoscopy, St Mark’s Hospital, London, United Kingdom
,
Paul Bassett
2   Statsconsultancy Ltd, Amersham, United Kingdom
,
Kowshika Thiruvilangam
1   Wolfson Unit for Endoscopy, St Mark’s Hospital, London, United Kingdom
,
Angad Dhillon
3   Queen Elizabeth Hospital, Lewisham and Greenwich NHS Trust, London, United Kingdom
,
Brian P. Saunders
1   Wolfson Unit for Endoscopy, St Mark’s Hospital, London, United Kingdom
› Author Affiliations

Abstract

Background Polyp detection and resection during colonoscopy significantly reduce long-term colorectal cancer risk. Computer-aided detection (CADe) may increase polyp identification but has undergone limited clinical evaluation. Our aim was to assess the effectiveness of CADe at colonoscopy within a bowel cancer screening program (BCSP).

Methods This prospective, randomized controlled trial involved all eight screening-accredited colonoscopists at an English National Health Service (NHS) BCSP center (February 2020 to December 2021). Patients were randomized to CADe or standard colonoscopy. Patients meeting NHS criteria for bowel cancer screening were included. The primary outcome of interest was polyp detection rate (PDR).

Results 658 patients were invited and 44 were excluded. A total of 614 patients were randomized to CADe (n = 308) or standard colonoscopy (n = 306); 35 cases were excluded from the per-protocol analysis due to poor bowel preparation (n = 10), an incomplete procedure (n = 24), or a data issue (n = 1). Endocuff Vision was frequently used and evenly distributed (71.7 % CADe and 69.2 % standard). On intention-to-treat (ITT) analysis, there was a borderline significant difference in PDR (85.7 % vs. 79.7 %; P = 0.05) but no significant difference in adenoma detection rate (ADR; 71.4 % vs. 65.0 %; P = 0.09) for CADe vs. standard groups, respectively. On per-protocol analysis, no significant difference was observed in these rates. There was no significant difference in procedure times.

Conclusions In high-performing colonoscopists in a BCSP who routinely used Endocuff Vision, CADe improved PDR but not ADR. CADe appeared to have limited benefit in a BCSP setting where procedures are performed by experienced colonoscopists.

Supplementary material



Publication History

Received: 18 May 2022

Accepted after revision: 16 September 2022

Article published online:
12 December 2022

© 2022. Thieme. All rights reserved.

Georg Thieme Verlag KG
Rüdigerstraße 14, 70469 Stuttgart, Germany

 
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