Software Analysis on Polyp Histology Prediction Clinical Trial
Official title:
Artificial Intelligence Based Colorectal Polyp Histology Prediction by Using Narrow-band Imaging Magnifying Colonoscopy
Verified date | June 2020 |
Source | Petz Aladar County Teaching Hospital |
Contact | n/a |
Is FDA regulated | No |
Health authority | |
Study type | Observational |
Background We are developing artificial intelligence based polyp histology prediction (AIPHP)
method to automatically classify Narrow Band Imaging (NBI) magnifying colonoscopy images to
predict the non-neoplastic or neoplastic histology of polyps.
Aim Our aim was to analyse the accuracy of AIPHP and NICE classification based histology
predictions and also to compare the results of the two methods.
Methods We examined colorectal polyps obtained from colonoscopy patients who had polypectomy
or endoscopic mucosectomy. Polyps detected by white light colonoscopy were observed then by
using NBI at the optical maximum magnificent (60x). The obtained and stored NBI magnifying
images were analysed by NICE classification and by AIPHP method parallelly. Pathology
examinations were performed blinded to the NICE and AIPHP diagnosis, as well. Our AIPHP
software is based on a machine learning method. This program measures five geometrical and
colour features on the endoscopic image.
Status | Completed |
Enrollment | 373 |
Est. completion date | May 31, 2020 |
Est. primary completion date | May 31, 2020 |
Accepts healthy volunteers | No |
Gender | All |
Age group | 18 Years to 90 Years |
Eligibility |
Inclusion Criteria: - endoscopic diagnosis of colorectal polyp Exclusion Criteria: - colonoscopy result without polyps or IBD diagnosis |
Country | Name | City | State |
---|---|---|---|
n/a |
Lead Sponsor | Collaborator |
---|---|
Petz Aladar County Teaching Hospital |
Type | Measure | Description | Time frame | Safety issue |
---|---|---|---|---|
Primary | Software accuracy of polyp histology prediction | Artificial intelligence software diagnosis in comparison with the polyp histology | 2014-2020 |