Anand09-in/Ocular_Disease_Recognition
Ocular Disease Recognition using Deep Learning
This system helps ophthalmologists and optometrists automate the initial screening for various eye diseases. It takes fundus images of a patient's eyes and identifies conditions like Diabetes, Glaucoma, Cataracts, and Myopia. This project is for eye care professionals who want to streamline the diagnostic process using AI.
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Use this if you are an ophthalmologist or optometrist looking for an automated tool to quickly categorize fundus images for common ocular diseases.
Not ideal if you need to diagnose rare eye conditions not covered by the listed diseases or require a system that incorporates patient history beyond imagery.
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Last pushed
Jul 27, 2023
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