Diabetic Retinopathy Clinical Trial
Official title:
Artificial Intelligence for the Detection of Central Retinal Disease and Non-mydriatic Glaucoma in the Context of Patients With Diabetes Mellitus in Primary Care: A Prospective Study Comparing the Diagnostic Capacity of an AI Algorithm
NCT number | NCT04132401 |
Other study ID # | P18/109 |
Secondary ID | |
Status | Completed |
Phase | N/A |
First received | |
Last updated | |
Start date | May 1, 2021 |
Est. completion date | September 26, 2023 |
Verified date | August 2022 |
Source | Fundacio d'Investigacio en Atencio Primaria Jordi Gol i Gurina |
Contact | n/a |
Is FDA regulated | No |
Health authority | |
Study type | Interventional |
Background: Diabetic retinopathy (DR) is one of the most important causes of blindness worldwide, especially in developed countries. In diabetic patients, periodic examination of the back of the eye using a nonmydriatic camera has been widely demonstrated to be an effective system to control and prevent the onset of DR. Convolutional neural networks have been used to detect DR, achieving very high sensitivities and specificities. Hypothesis It is possible to develop algorithms based on artificial intelligence that can demonstrate equal or superior performance and that constitute an alternative to the current screening of RD and other ophthalmic pathologies in diabetic patients. Objectives: - Development of an artificial intelligence system for the detection of signs of retinal pathology and other ophthalmic pathologies in diabetic patients. - Scientific validation of the system to be used as a screening system in primary care. Methods: This project will consist of carrying out two studies simultaneously: 1. Development of an algorithm with artificial intelligence to detect signs of DR, other pathologies of the central retina and glaucoma in patients with diabetes. 2. Carrying out a prospective study that will make it possible to compare the diagnostic capacity of the algorithms with that of the family medicine specialists who read the background images. The reference will be double-blind reading by ophthalmologists who specialize in retina. Cession of the images began at the end of 2018. The development of the AI algorithm is calculated to last about 3 to 4 months. Inclusion of patients in the cohort will start in early 2019 and is expected to last 3 to 4 months. Preliminary results are expected to be published by the end of 2019. The study will allow the development of an algorithm based on AI that can demonstrate an equal or superior performance, and that constitutes a complement or an alternative, to the current screening of DR in diabetic patients
Status | Completed |
Enrollment | 100 |
Est. completion date | September 26, 2023 |
Est. primary completion date | March 31, 2022 |
Accepts healthy volunteers | No |
Gender | All |
Age group | N/A and older |
Eligibility | Inclusion Criteria: - Clinical diagnosis of type I or type II diabetes mellitus - Fundus photograph taken as part of the screening for diabetic retinopathy Exclusion Criteria: - patients with glaucoma under treatment - patients with advanced dementia who do not collaborate in taking photographs - patients with significant deafness who cannot follow the instructions for taking photographs - patients with mobility problems (wheelchairs, important kyphosis) or tremor who cannot take photographs - patients with pathologies that interfere with the quality of images such as cataracts, nystagmus, corneal leucoma or corneal transplants. |
Country | Name | City | State |
---|---|---|---|
Spain | CAP Bages | Manresa | Barcelona |
Lead Sponsor | Collaborator |
---|---|
Fundacio d'Investigacio en Atencio Primaria Jordi Gol i Gurina | Department of Health, Generalitat de Catalunya, Institut Català de la Salut, OPTretina |
Spain,
Abramoff MD, Lavin PT, Birch M, Shah N, Folk JC. Pivotal trial of an autonomous AI-based diagnostic system for detection of diabetic retinopathy in primary care offices. NPJ Digit Med. 2018 Aug 28;1:39. doi: 10.1038/s41746-018-0040-6. eCollection 2018. — View Citation
Abramoff MD, Lou Y, Erginay A, Clarida W, Amelon R, Folk JC, Niemeijer M. Improved Automated Detection of Diabetic Retinopathy on a Publicly Available Dataset Through Integration of Deep Learning. Invest Ophthalmol Vis Sci. 2016 Oct 1;57(13):5200-5206. do — View Citation
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Dankwa-Mullan I, Rivo M, Sepulveda M, Park Y, Snowdon J, Rhee K. Transforming Diabetes Care Through Artificial Intelligence: The Future Is Here. Popul Health Manag. 2019 Jun;22(3):229-242. doi: 10.1089/pop.2018.0129. Epub 2018 Oct 2. — View Citation
Gomez-Ulla F, Fernandez MI, Gonzalez F, Rey P, Rodriguez M, Rodriguez-Cid MJ, Casanueva FF, Tome MA, Garcia-Tobio J, Gude F. Digital retinal images and teleophthalmology for detecting and grading diabetic retinopathy. Diabetes Care. 2002 Aug;25(8):1384-9. — View Citation
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Sanchez Gonzalez S, Calvo Lozano J, Sanchez Gonzalez J, Pedregal Gonzalez M, Cornejo Castillo M, Molina Fernandez E, Barral FJ, Perez Espinosa JR. [Assessment of the use of retinography as a screening method for the early diagnosis of chronic glaucoma in — View Citation
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Type | Measure | Description | Time frame | Safety issue |
---|---|---|---|---|
Primary | Sensitivity of the algorithm | True positive rate of the algorithm | 1 year | |
Primary | Specificity of the algorithm | True negative rate of the algorithm | 1 year | |
Primary | Accuracy of the algorithm | Ratio of number of correct predictions to the total number of input samples | 1 year | |
Primary | Area under the receiver operating characteristic curve of the algorithm | Diagnostic ability of the algorithm | 1 year |
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