Opticare AI makes a low-cost, AI-powered portable fundus camera that generates comprehensive health reports in minutes, painlessly, without operator assistance.
Find your RetinalAge™, plus a health score for your heart, metabolism, cognition and more in seconds with one look into our AI-powered camera.
Healthcare professionals: come see how our affordable system can attract new patients.
Opticare AI makes a low-cost, AI-powered portable fundus camera that generates comprehensive health reports in minutes, painlessly, without operator assistance. We use a deep learning algorithm trained on millions of labeled retinal images to predict overall health.
The Opticare AI-powered portable eye camera generates comprehensive health reports painlessly in minutes. Find your RetinalAge™, plus a health score for your heart, metabolism, cognition and more with a quick photo.
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