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Med."],"abstract":"<jats:title>Abstract<\/jats:title>\n          <jats:p>Glaucoma, a leading cause of blindness, requires accurate early detection. We present an AI-based Glaucoma Screening (AI-GS) network comprising six lightweight deep learning models (total size: 110 MB) that analyze fundus images to identify early structural signs such as optic disc cupping, hemorrhages, and nerve fiber layer defects. The segmentation of the optic cup and disc closely matches that of expert ophthalmologists. AI-GS achieved a sensitivity of 0.9352 (95% CI 0.9277\u20130.9435) at 95% specificity. In real-world testing, sensitivity dropped to 0.5652 (95% CI 0.5218\u20130.6058) at ~0.9376 specificity (95% CI 0.9174\u20130.9562) for the standalone binary glaucoma classification model, whereas the full AI-GS network maintained higher sensitivity (0.8053, 95% CI 0.7704\u20130.8382) with good specificity (0.9112, 95% CI 0.8887\u20130.9356). 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