YgLK/ocular-disease-classification
Multiclass classification of eye diseases based on eye fundus images using CNNs
This project helps ophthalmologists and optometrists quickly screen for common eye diseases. It takes a fundus image of a patient's eye and classifies it as 'Normal,' 'Cataract,' or 'Myopia,' providing a rapid initial assessment. It is designed for eye care professionals or medical technicians who need to analyze eye scans efficiently.
Use this if you are an ophthalmologist or optometrist looking for an automated tool to assist in the preliminary screening of fundus images for cataracts and myopia.
Not ideal if you require a diagnostic tool for a broader range of complex ocular conditions beyond cataracts and myopia.
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Last pushed
Dec 31, 2025
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