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Clinical Trial Summary

Retinal images can reflect both fundus and systemic conditions (diabetes and cardiovascular disease) and firstly to be used for medical artificial intelligence (AI) algorithm training due to its advantages of clinical significance and easy to obtain. Here, the investigators developed a single network model that can mine the characteristics among multiple fundus diseases, which was trained by plenty of fundus images with one or several disease labels (if they have) in each of them. The model performance was compared with those of both native and international ophthalmologists. The model was further tested by datasets with different camera types and validated by three external datasets prospectively collected from the clinical sites where the model would be applied.


Clinical Trial Description

n/a


Study Design


Related Conditions & MeSH terms


NCT number NCT04213430
Study type Observational
Source Sun Yat-sen University
Contact Haotian Lin, PhD
Phone 13802793086
Email gddlht@aliyun.com
Status Recruiting
Phase
Start date January 2014
Completion date May 2020

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