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Detection of Colonic Polyps Via a Large Scale Artificial Intelligence (AI) System

Not Applicable
Completed
Conditions
Colonic Polyp
Interventions
Device: AI polyp detection system based on deep learning
Registration Number
NCT04693078
Lead Sponsor
Shaare Zedek Medical Center
Brief Summary

Colonoscopy is the gold standard for detection and removal of precancerous lesions, and has been amply shown to reduce mortality. However, the miss rate for polyps during colonoscopies is 22-28%, while 20-24% of the missed lesions are histologically confirmed precancerous adenomas. To address this shortcoming, the investigators propose a new polyp detection system based on deep learning, which can alert the operator in real-time to the presence and location of polyps during a colonoscopy. The investigators dub the system DEEP: (DEEP) DEtection of Elusive Polyps. The DEEP system was trained on 3,611 hours of colonoscopy videos derived from two sources, and was validated on a set comprising 1,393 hours of video, coming from a third, unrelated source. For the validation set, the ground truth labelling was provided by offline gastroenterologist annotators, who were able to watch the video in slow-motion and pause/rewind as required; two or three specialist annotators examined each video.

This is a prospective, non-blinded, non-randomized pilot study of patients undergoing elective screening and surveillance colonoscopies using DEEP.

The aim of the study is to:

Assess the:

1. Number of additional polyps detected by the DEEP system in real time colonoscopy.

2. Safety by prospective assessment of the rate of adverse events during the study period attributed or not to the use of the DEEP system.

3. Stability of the DEEP system by measuring the rate of false positives (False Alarms) per colonoscopies 4 And to examine its feasibility and usefulness of in clinical practice by assessing the colonoscopist user experience while using the DEEP system in a 5 point scale.

Detailed Description

Not available

Recruitment & Eligibility

Status
COMPLETED
Sex
All
Target Recruitment
100
Inclusion Criteria
  • Healthy subjects undergoing routine screening or surveillance colonoscopy in an ambulatory non urgent setting.
  • Able to understand the study protocol and sign inform consent.
Exclusion Criteria
  • Previous surgery involving the colon or rectum
  • Known diagnosis of colorectal cancer
  • Known history of inflammatory bowel disease
  • Known or suspected diagnosis of familial polyposis syndrome

Study & Design

Study Type
INTERVENTIONAL
Study Design
SINGLE_GROUP
Arm && Interventions
GroupInterventionDescription
Intervention ArmAI polyp detection system based on deep learningConsecutive patients undergoing screening or surveillance colonoscopy in whom a new polyp detection system based on deep learning will be used during the procedure.
Primary Outcome Measures
NameTimeMethod
The Rate of Adverse Events During the Study Attributed or Not to the Use of the DEEP SystemUntil discharge, assessed up to 7 days

Prospective assessment adverse events during the study. The following adverse event will be monitored: Perforation, bleeding, and cardiorespiratory adverse events during the procedure

Number of Additional Polyps Detected by the DEEP System in Real Time ColonoscopyThrough study completion, an average of 12 months

During the colonoscopy procedure, in real time when a polyp is found, the colonoscopist will rate the polyp as an elusive polyp detected by the system that might have been missed or a polyp that would have been detected with or without the system.

The outcome measure will be reported as the average of additional polyps detected per colonoscopy by the DEEP system

Secondary Outcome Measures
NameTimeMethod
Colonoscopist User Experience While Using the DEEP System in a 5 Point ScaleThrough study completion, an average of 12 months

At the end of the procedures the colonoscopist will be requires to answer the question "from a scale of 1-5 how useful did you find the system in this procedure?", where higher scores represent more usefulness. This measure will be reported as the average score form all 100 procedures.

Rate of False Positives (False Alarms) Per ColonoscopyThrough study completion, an average of 12 months

During the colonoscopy procedure, in real time after each polyp found by the DEEP system, the colonoscopist will rate the polyp as either a true polyp or a false positive detection or a "false alarm" this measure will be reported as the average of false positive detection per colonoscopy

Trial Locations

Locations (1)

Digestive Diseases Institute, Shaare Zedek Medical Center

🇮🇱

Jerusalem, Israel

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