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Clinical Trial Summary

This prospective multicenter study will evaluate the efficacy of a real-time artificial intelligence system for detecting multiple ocular fundus lesions by ultra-widefield fundus imaging in real-world settings.


Clinical Trial Description

The ocular fundus can show signs of both ocular diseases (e.g., lattice degeneration, retinal detachment and glaucoma) and systemic diseases (e.g., hypertension, diabetes and leukemia). The routine fundus examination is conducive for early detection of these diseases. However, manual conducting fundus examination needs an experienced retina ophthalmologist, and is time-consuming and labor-intensive, which is difficult for its routine implementation on large scale. This study will develop an artificial intelligence system integrating with ultra-widefield fundus imaging to automatically screen for multiple ocular fundus lesions in real time and evaluate its performance in different real-world settings. The efficacy of the system will compare to the final diagnoses of each participant made by experienced ophthalmologists. ;


Study Design


Related Conditions & MeSH terms


NCT number NCT04859634
Study type Observational
Source Sun Yat-sen University
Contact Haotian Lin, MD, PhD
Phone 8613802793086
Email haot.lin@hotmail.com
Status Recruiting
Phase
Start date November 1, 2020
Completion date December 25, 2022

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