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Trial Title:
Miss Rate of Gastric Neoplasms Under Computer-aided Endoscopy
NCT ID:
NCT06495645
Condition:
Gastric Neoplasm
Artificial Intelligence
Conditions: Official terms:
Neoplasms
Stomach Neoplasms
Conditions: Keywords:
Gastric Neoplasm
Artificial intelligence
Miss rate
Study type:
Interventional
Study phase:
N/A
Overall status:
Not yet recruiting
Study design:
Allocation:
Randomized
Intervention model:
Crossover Assignment
Primary purpose:
Treatment
Masking:
None (Open Label)
Intervention:
Intervention type:
Device
Intervention name:
AI-assisted upper gastrointestinal endoscopy
Description:
AI-assisted upper gastrointestinal endoscopy
Arm group label:
AI-HD group
Arm group label:
HD-AI group
Summary:
This prospective randomized trial compares AI-assisted upper gastrointestinal endoscopy
with high definition upper gastrointestinal endoscopy in term of missed rate of gastric
neoplasm. The investigators hypothesize the miss rate of high definition upper
gastrointestinal endoscopy is higher than AI-assisted upper gastrointestinal endoscopy.
Detailed description:
Patients will be randomly assigned to begin with AI-assisted upper gastrointestinal
endoscopy follow immediately by high definition (HD) upper gastrointestinal endoscopy
(AI-HD group); or start with HD upper gastrointestinal endoscopy follow immediately by
AI-assisted upper gastrointestinal endoscopy (HD-AI group). The random allocation
sequence is generated by a computer-generated random numerical series, with 1
representing the AI-HD group and 0 representing the HD-AI group. Randomization is
conducted in blocks of four at a 1:1 ratio stratified by indications
(screening/surveillance vs others), endoscopist's experience (experienced versus less
experienced) and mode of sedation (unsedated vs sedated). Experienced endoscopist is
defined as qualified endoscopists with more than 7 years experience in upper endoscopy,
whereas less experienced endoscopists include fellows and trainees. A research assistant,
not directly involved in this study, maintained all randomization codes which are
contained within individual opaque envelopes. Upon obtaining patient consent, the
envelope will be opened to reveal the assigned examination sequence. Patients remain
blinded to their group allocation throughout the study, but the performing endoscopist is
aware of the assigned allocation.
Participating endoscopists will receive training on the interpretation of real-time AI
detection system as well as detection of dysplasia under HD endoscopy before performing
study. All patients will fast for at least 6 hours before the procedure. All examinations
will be performed with HD endoscopes (ELUXEO 7000 video system, Fujifilm Co, Tokyo,
Japan) under white light. The artificial intelligence assisted gastric dysplasia
localization system uses a graphical user interface for real-time display of lesion
detection with bounding boxes (Fujifilm Co, Tokyo, Japan).
Each eligible patient will undergo a same-day tandem upper gastrointestinal endoscopy
performed by the same endoscopist to evaluate the miss rate of gastric neoplasm. Patients
first receive either AI-assisted or HD upper gastrointestinal endoscopy under white light
endoscopy, immediately followed by cross-over to other procedure. Endoscopists will be
assisted by a research assistant (RS), who activates or deactivates the lesion detection
function of AI system between the two examinations. Both first and second examinations
are conducted in accordance with the systematic gastric screening protocol, and only the
gastric cavity was rescanned during the second observation. The minimal inspection time
of the stomach should be 3 minute for the both examination.
Biopsies of all targeted lesions will be taken at the end of each examination.
Endoscopists are instructed to biopsy lesions meeting the following criteria in HD
examinations: color differences, loss of vascularity, slight elevation or depression,
nodularity, thickening, abnormal convergence or flattening of folds, irregular margins,
irregular discoloration, or irregular surface. During AI-assisted examinations, targeted
lesions are defined as focal lesions marked in localization boxes. Endoscopists are
instructed to biopsy areas stably marked with localization boxes that persisted for 5
seconds by the AI system.
Criteria for eligibility:
Criteria:
Inclusion Criteria:
- Patients aged 40 or older
- Scheduled for elective upper endoscopy
Exclusion Criteria:
- Pregnant women,
- Inability to provide written informed consent
- Prior gastrectomy, and
- Patients deemed unsuitable or high-risk for endoscopy with severe comorbid illnesses
Gender:
All
Minimum age:
40 Years
Maximum age:
N/A
Healthy volunteers:
No
Locations:
Facility:
Name:
Queen Mary Hospital, the University of Hong Kong
Address:
City:
Hong Kong
Country:
Hong Kong
Start date:
September 1, 2024
Completion date:
December 31, 2026
Lead sponsor:
Agency:
The University of Hong Kong
Agency class:
Other
Source:
The University of Hong Kong
Record processing date:
ClinicalTrials.gov processed this data on November 12, 2024
Source: ClinicalTrials.gov page:
https://clinicaltrials.gov/ct2/show/NCT06495645