2024
DOI: 10.1002/ima.23187
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RetNet30: A Novel Stacked Convolution Neural Network Model for Automated Retinal Disease Diagnosis

Krishnakumar Subramaniam,
Archana Naganathan

Abstract: Automated diagnosis of retinal diseases holds significant promise in enhancing healthcare efficiency and patient outcomes. However, existing methods often lack the accuracy and efficiency required for timely disease detection. To address this gap, we introduce RetNet30, a novel stacked convolutional neural network (CNN) designed to revolutionize automated retinal disease diagnosis. RetNet30 combines a custom‐built 30‐layer CNN with a fine‐tuned Inception V3 model, integrating these sub‐models through logistic … Show more

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