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Evaluate the Effects of An AI System on Colonoscopy Quality of Novice Endoscopists

Not Applicable
Completed
Conditions
Artificial Intelligence
Gastrointestinal Disease
Colonoscopy
Deep Learning
Interventions
Device: artificial intelligence assistance system
Registration Number
NCT05323279
Lead Sponsor
Renmin Hospital of Wuhan University
Brief Summary

In this study, the AI-assisted system EndoAngel has the functions of reminding the ileocecal junction, withdrawal time, withdrawal speed, sliding lens, polyps in the field of vision, etc. These functions can assist novice endoscopists in performing colonoscopy and improve the quality.

Detailed Description

Colonoscopy is a crucial technique for detecting and diagnosing lower digestive tract lesions. The demand for endoscopy is high in China, and endoscopy is in short supply. However, a colonoscopy is a complex technical procedure that requires training and experience for maximal accuracy and safety. The ability of different endoscopists varies greatly. Novice endoscopists generally have difficulty and high risk in entering colonoscopy, requiring experts' assistance. To some extent, this wastes the novice's productivity. If investigators can arrange the working mode of experts entering and novices withdrawing endoscopy, the clinical efficiency and resource utilization rate can be significantly improved. However, investigators must consider the poor examination ability of novice endoscopists. It is reported that the detection rate of adenoma in colonoscopy performed by endoscopists with different seniority is 7.4% \~ 52.5%. If the examination ability of novice endoscopists can be improved, this concern can be eliminated.

Deep learning algorithms have been continuously developed and increasingly mature in recent years. They have been gradually applied to the medical field. Computer vision is a science that studies how to make machines to "see". Through deep learning, camera and computer can replace human eyes to carry out machine vision such as target recognition, tracking and measurement. Interdisciplinary cooperation in medical imaging and computer vision is also one of the research hotspots in recent years. At present, it is mainly applied to the automatic identification and detection of lesions and quality control and has achieved good results.

Investigator's preliminary experiments have shown that deep learning has high accuracy in endoscopic quality monitoring, which can effectively regulate doctors' operations, reduce blind spots and improve the quality of endoscopic examination. At the same time, it can also monitor the doctor's withdrawal time in real-time and improve the detection rate of adenoma. In the previous work of investigator's research group, investigators have successfully developed deep learning-based colonoscopy withdraw speed monitoring and intestinal cleanliness assessment and verified the effectiveness of the AI-assisted system EndoAngel in improving the quality of gastroscopy and colonoscopy in clinical trials.

Based on the above rich foundation of preliminary work and the massive demand for improving the colonoscopy ability of novices. By comparing the performance of novices and novices with EndoAngel assistance and experts in colonoscopy, investigators want to explore whether artificial intelligence can assist novices to reach the expert level in colonoscopy.

Recruitment & Eligibility

Status
COMPLETED
Sex
All
Target Recruitment
685
Inclusion Criteria
  1. Male or female ≥18 years old;
  2. Able to read, understand and sign an informed consent;
  3. The investigator believes that the subjects can understand the process of the clinical study, are willing and able to complete all study procedures and follow-up visits, and cooperate with the study procedures;
  4. Patients requiring colonoscopy.
Exclusion Criteria
  1. Have drug or alcohol abuse or mental disorder in the last 5 years;
  2. Pregnant or lactating women;
  3. Patients with known multiple polyp syndrome;
  4. patients with known inflammatory bowel disease;
  5. known intestinal stenosis or space-occupying tumor;
  6. known colon obstruction or perforation;
  7. patients with a history of colorectal surgery;
  8. Patients with a previous history of allergy to pre-used spasmolysis;
  9. Unable to perform biopsy and polyp removal due to coagulation disorders or oral anticoagulants;
  10. High-risk diseases or other special conditions that the investigator considers the subject unsuitable for participation in the clinical trial.

Study & Design

Study Type
INTERVENTIONAL
Study Design
PARALLEL
Arm && Interventions
GroupInterventionDescription
novices with AI-assisted systemartificial intelligence assistance systemThe novice doctors are assisted in colonoscopy with an artificial intelligence system that can indicate abnormal lesions and the speed of withdrawal in real-time, as well as feedback on the percentage of overspeed.
Primary Outcome Measures
NameTimeMethod
Missed diagnosis rate of adenomaA month

The number of newly detected adenoma in the second examination divided by the total number of adenoma detected in both examinations

Secondary Outcome Measures
NameTimeMethod
Average number of adenomas detected per patientA month

The numerator is the total number of adenomas detected by colonoscopy, and the denominator is the total number of patients undergoing colonoscopy.

Detection rate of adenomaA month

The numerator is the number of patients diagnosed with adenomas, and the denominator is the total number of patients undergoing colonoscopy.

The average number of large, small and micro polyps detectedA month

The numerator is the total number of large (≥10 mm), small (6-9 mm) and micro-small (≤5 mm) polyps detected by colonoscopy, and denominator is the total number of patients undergoing colonoscopy.

The detection rate of adenoma in different sitesA month

The numerator is the number of patients with adenomas detected in the rectum, sigmoid colon, descending colon, transverse colon, ascending colon, ileocecal region and other sites during colonoscopy, and the denominator is the total number of patients receiving colonoscopy.

The detection rate of large, small and micro adenomasA month

The numerator is the number of patients with large (≥10 mm), small (6-9 mm) and micro-small (≤5 mm) adenomas detected by colonoscopy, and the denominator is the total number of patients receiving colonoscopy.

Detection rate of advanced adenomaA month

The numerator is the number of patients diagnosed with advanced adenomas, and the denominator is the total number of patients undergoing colonoscopy. Advanced adenoma was defined as \> 10mm, villous adenoma, tubular villous adenoma, high-grade intraepithelial neoplasia, and carcinoma.

The average number of adenomas detected in different sitesA month

The numerator is the total number of adenomas detected in the rectum, sigmoid colon, descending colon, transverse colon, ascending colon, ileocecal region and other sites during colonoscopy, and the denominator is the total number of patients undergoing colonoscopy.

Polyp Detection RateA month

The numerator is the number of patients with polyps detected by colonoscopy, and the denominator is the total number of patients who underwent colonoscopy

The detection rate of large, small and micro polypsA month

The numerator is the number of patients with large (≥10 mm), small (6-9 mm) and micro-small (≤5 mm) polyps detected by colonoscopy, and the denominator is the total number of patients receiving colonoscopy.

The average number of large, small and micro adenomas detectedA month

The numerator is the total number of large (≥10 mm), small (6-9 mm) and micro-small (≤5 mm) adenomas detected by colonoscopy, and the denominator is the total number of patients undergoing colonoscopy.

Trial Locations

Locations (1)

Renmin Hospital of Wuhan University

🇨🇳

Wuhan, Hubei, China

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