In this pivotal trial, we aim to perform a prospective study to find the efficacy of iPredict-DR, an artificial intelligence (AI) based software tool on early diagnosis of Diabetic Retinopathy (DR) in the primary care and endocrinology clinics. DR is one of the leading causes of blindness in the United States and other developed countries. Every individual with diabetes is at risk of DR. It does not show any symptoms until the disease is progressed to advanced stages. If the disease is caught at an early stage, it can be prevented, managed, or treated effectively. Currently, screening for DR is done by the Ophthalmologists, which is limited to areas with limited availability. This is also time-consuming and expensive. All of these can be complemented by automated screening and set up the screening in the primary care clinics.
In this pivotal trial, we aim to perform a prospective study to find the efficacy of iPredict-DR, an artificial intelligence (AI) based software tool on early diagnosis of Diabetic Retinopathy (DR) in the primary care and endocrinology clinics. DR is one of the leading causes of blindness in the United States and other developed countries. Every individual with diabetes is at risk of DR. It does not show any symptoms until the disease is progressed to advanced stages. If the disease is caught at an early stage, it can be prevented, managed, or treated effectively. Currently, screening for DR is done by the Ophthalmologists, which is limited to areas with limited availability. This is also time-consuming and expensive. All of these can be complemented by automated screening and set up the screening in the primary care clinics. American Academy of Ophthalmology has suggested a 5-level DR disease severity scale (No DR, Mild DR, Moderate DR, Severe DR or Proliferative DR) based on the abnormalities in the retina such as microaneurysms, exudates, hemorrhages, intraretinal microvascular abnormalities (IRMA), and neovascularization. Automated screening for Diabetic Retinopathy has a potential to identify people at risk of developing sight-threatening disease and save millions of dollars in healthcare costs. To accomplish this, it is crucial to perform large scale population screening to identify the individuals with mild or early DR and better predict those at risk of developing late stage DR. A system that takes advantage of telemedicine with automated DR screening in reaching the mass populations in both urban and rural areas with the patient convenience is currently not widely available. Considering this urgent need, iHealthScreen has developed an automated software tool for DR screening which is based on artificial intelligence (AI) and make it widely available in both urban and remote/rural areas and for large-scale screening through a telemedicine platform, and thereby have the potential to prevent blindness in diabetic patients.
Study Type
OBSERVATIONAL
Enrollment
922
No intervention. Evaluate the automated DR screening software.
iHealthScreen Inc.
Richmond Hill, New York, United States
RECRUITINGmtmDR detected (Referable DR) OR mtmDR not detected (non-referable DR)
Sensitivity and specificity of identification of referable and non-referable DR for early diagnosis of DR using the iPredict-DR's AI-based DR screening software utilizing color fundus imaging. iPredict-DR can detect non-referable DR (normal retina or mild DR) and referable DR (moderate or severe DR including moderate non-proliferative, proliferative DR and diabetic macular edema) at a similar level of expert ophthalmologists. For this, the healthcare workers will be taking the disc and macula center 45-degree field view images using DRSPlus camera (from iCare Inc.). The output of AI model and ground truth (produced by graders from reading centers) will be compared for image level and subject level accuracy measurements. The worst eye will be considered to define a subject's referability or non-referability to an ophthalmologist. Using the ground truth/gold standard, the sensitivity, specificity, precision, recall, accuracy, F-measure, positive predictive value and negative predictive
Time frame: 1-year or 2-year
The accuracy of the iPredict-DR software developed by iHealthScreen system in early diagnosis of DR using color retinal photos vs. that of human expert graders
The accuracy of the iPredict-DR software developed by iHealthScreen system in early diagnosis of DR using color retinal photos vs. that of human expert graders for DR. Performance thresholds were defined at 80.0% for sensitivity and 80.0% for specificity
Time frame: 1-year or 2-year
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