Prospective Multicenter Study of Artificial Intelligence-assisted Quality Evaluation System for Colonoscopy
- Conditions
- Quality Evaluation System for Colonoscopy
- Registration Number
- NCT04610177
- Lead Sponsor
- Renmin Hospital of Wuhan University
- Brief Summary
The quality control index based on artificial intelligence is put forward to monitor the quality of enteroscopy. And we will verify the correlation between the detection rate of adenomas and the percentage of endoscopic overspeed mirrors, the number of times of no-return/successful return, the real-time Bowel preparation provided by EndoAngel. What's more, it is expected that the standard range of quality control index for standard operation of colonoscopy can be proposed according to the detection rate of adenomas.
- Detailed Description
Colonoscopy is a key technique for detection and diagnosis of Lower Gastrointestinal Diseases. High-quality endoscopy leads to better outcomes, However, the skill level of different endoscopists is quite different. The rate of missed diagnosis of colorectal ADENOMAS was 22%, the rate of missed diagnosis ranged from 7.4% to 52.5% . A series of studies showed that 12.1% of patients did not have cancer during colonoscopy but were diagnosed with colorectal cancer (post-colonoscopy Colorectal Cancer, PCCRC) within 5 years, of which 71%-86% could be attributed to the negligence of the endoscopist 6, seven. Therefore, it is very important to improve the quality of routine endoscopic examination while expanding the endoscopic technique.
The quality control index of colonoscope can reflect the operation level of endoscopy doctors, and it is a very important tool to ensure the quality of colonoscope. The examination and feedback of the quality control data of the endoscopist can effectively improve the detection rate of lesions and guarantee the high level of endoscopic quality. It is the key to guarantee the quality of enteroscopy to put forward the quality control index which can reflect the quality of endoscopist operation. Barclay proposed in 2006 that there was a significant correlation between colonoscopy withdrawal time and the rate of Adenomas in patients, and their findings were published in the The New England Journal of Medicine, with an impact factor of 70.67. Then, there were 367 papers on the study of the speed of enteroscopy withdrawal. Aslinia made a retrospective analysis of the correlation between the incidence of blindness reached by enteroscopy and the prognosis of patients, and proposed the incidence of blindness reached as a quality control index for enteroscopy. Other quality control indicators, such as bowel cleanliness and polyp detection rate, have been published in international well-known journals and included in the guidelines to regulate the quality of daily work of endoscopic physicians, which has great clinical significance.
However, despite the above-mentioned quality control indicators, the existing endoscopic quality control indicators are seriously inadequate. According to a multicenter clinical study, current quality control indicators only reflect about 40% of the difference in lesion detection levels between endoscopic physicians. The existence of this phenomenon indicated that more quality control indexes are needed to fully reflect the quality of endoscopic procedures. As a quality control index reflecting intestinal preparation, intestinal cleanliness is a fatal defect with strong subjectivity and poor consistency among observers, therefore, the existing colonoscopy need more comprehensive, objective quality control indicators to reflect the level of endoscopic doctors, so as to ensure the quality of colonoscopy.
In the past decade, artificial intelligence (AI) has made remarkable progress in the medical field. Andre Esteva used a deep neural network (DNN) to classify skin cancer with expert-level accuracy. In the field of digestive endoscopy, the project team in the early is made a huge breakthrough. In 2018, the artificial intelligence gastroscopy blind spot monitoring model developed by the project team significantly reduced the endoscopy blind spot in randomized controlled clinical trials, the findings were published in the journal Gut with an impact factor of 17.94. In 2019, the team's artificial intelligence model for evaluating gut cleanliness, published in the journal gastrogastrotestinal endoscopy with an impact factor of 7.23, showed better picture accuracy than that of the endoscopist in the human computer competition. In the same year, the project developed a model for colonoscopy speed monitoring based on Hasche perception algorithm and a model for colonoscopy slide mirror monitoring based on image classification, and conducted randomized controlled clinical trials, the model significantly improved The ability of colonoscopists to detect lesions, The study was published in The Lancet Gastroenterology 18 with an impact factor of 12.87.
Based on the above-mentioned rich foundation of early work, as well as the current great demand in the field of quality control of enteroscopy, we intend to validate the artificial intelligence-based enteroscopy exit velocity, bowel cleanliness, and enteroscopy slide model developed by the project team through a multi-center clinical study, to evaluate the feasibility and accuracy of doctor's operation quality as a quality control index.
Recruitment & Eligibility
- Status
- UNKNOWN
- Sex
- All
- Target Recruitment
- 5813
- Male or female aged 50-80(inclusive) ;
- Ability to read, understand and sign an informed consent form;
- The researchers believed that the subjects were able to understand the flow of the clinical study and were willing and able to complete all the procedures and follow-up interviews to accompany the study.
Participants who meet any of the following criteria will be excluded from the study
- Drug or alcohol abuse or psychological disorders in the last 5 years;
- Pregnant or lactating women;
- Patients with known Polyp Syndrome;
- Patients with known Inflammatory Bowel Disease;
- Patients with known Intestinal stricture or mass tumor;
- Patients with known colonic obstruction or perforation;
- Patients with a previous history of colorectal surgery;
- Patients with a previous history of Anaphylaxis to antispasmodic agents;
- Blood coagulation disorders or oral anticoagulants and other reasons can not be biopsy and polypectomy;
- High-risk diseases or other special conditions considered unsuitable for participants in clinical trials.
Study & Design
- Study Type
- OBSERVATIONAL
- Study Design
- Not specified
- Primary Outcome Measures
Name Time Method Percentage of enteroscopy exit velocity overdrive 2020.12.2 Percentage of enteroscopy exit velocity overdrive
The adenoma detection rate(ADR) 2020.12.2 ADR was calcilated by dividing the tatal number of patients being detected adenomas by the number of colinoscopies.
- Secondary Outcome Measures
Name Time Method PDR of different size 2020.12.2 It was calculated by dividing the number of patients with polyps that large (≥10mm), small(6-9 mm) and diminutive(≤5 mm) by the number of patients undergoing colonoscopy.
MAP of different location 2020.12.2 It was calculated by dividing the number of adenomas detected in the rectum, sigmoid colon, descending colon, transverse colon, ascending colon, ileocecal region ect. by the total number patients undergoing colonoscopy.
The polyp detection rate(PDR) 2020.12.2 PDR was calcilated by dividing the tatal number of patients being detected polyps by the number of colinoscopies.
The mean number of adenomas per patient(MAP) 2020.12.2 MAP was calculated by dividing the total number of adenomas by the number of colonoscopies.
MAP of different size 2020.12.2 It was calculated by dividing the number of adenomas that large (≥10mm), small(6-9 mm) and diminutive(≤5 mm) by the number of patients undergoing colonoscopy.
Cecal intubation rate 2020.12.2 It was calculated by dividing the number of colonoscopies that get to the ileocecal region by the total number of colonoscopies.
The advanced adenoma detection rate 2020.12.2 The advanced adenoma detection rate was calcilated by dividing the tatal number of patients being detected advanced adenomas by the number of colinoscopies.
MNP of different size 2020.12.2 It was calculated by dividing the number of polyps that large (≥10mm), small(6-9 mm) and diminutive(≤5 mm) by the number of patients undergoing colonoscopy.
ADR of different size 2020.12.2 It was calculated by dividing the number of patients with adenomas that large (≥10mm), small(6-9 mm) and diminutive(≤5 mm) by the number of patients undergoing colonoscopy.
ADR of different location 2020.12.2 It was calculated by dividing the number of patients with adenomas detected in the rectum, sigmoid colon, descending colon, transverse colon, ascending colon, ileocecal region ect. by the total number patients undergoing colonoscopy.
Cleanliness assessment of different intestinal segment in the artificial intelligence system 2020.12.2 The artificial intelligence evaluates the Boston Bowel Preparation score of the ascending colon, transverse colon,and descending colon in real-time, and calculates the proportion of 1Score.
Trial Locations
- Locations (1)
Renmin Hospital of Wuhan University
🇨🇳Wuhan, Hubei, China