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Enhanced Multimodal Diagnosis of Glaucoma Using Deep Convolutional Networks

Summary: We propose a method that incorporates both state-of-the-art deep learning-based image extraction features as well as standard metrics used in clinical practice to provide accurate Glaucoma detection irrespective of imaging and clinical conditions. Embeddings extracted by a ResNet-50 model on a fundus image as well as numerical features indicative of Glaucoma (CDR, cup eccentricity, and disk eccentricity) are concatenated to provide a comprehensive diagnosis. cover

Authors: Sauman Das, Arnav Jain, Audhav Durai, Sameer Gabbita, Aditya Vasantharao, Vishal Kotha

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