PurposeTo investigate the suitability of multi-scale spatial information in 30o visual fields (VF), computed from a Convolutional Neural Network (CNN) classifier, for early-glaucoma vs. control discrimination.MethodTwo data sets of VFs acquired with the OCTOPUS 101 G1 program and the Humphrey Field Analyzer 24-2 pattern were subdivided into control and early-glaucomatous groups, and converted into a new image using a novel voronoi representation to train a custom-designed CNN so to discriminate between control and early-glaucomatous eyes. Saliency maps that highlight what regions of the VF are contributing maximally to the classification decision were computed to provide classification justification. Model fitting was cross-validated and av...
PURPOSE:To evaluate ways to improve the generalizability of a deep learning algorithm for identifyin...
Abstract Glaucoma, after cataracts, is the second leading cause of worldwide vision loss. An ophthal...
Deep learning based on computer vision and machine learning is an emerging technology in both the me...
PurposeTo investigate the suitability of multi-scale spatial information in 30o visual fields (VF), ...
ObjectiveTo assess the accuracy of probabilistic deep learning models to discriminate normal eyes an...
ObjectiveTo assess the accuracy of probabilistic deep learning models to discriminate normal eyes an...
PURPOSE:To build a deep learning model to diagnose glaucoma using fundus photography. DESIGN:Cross s...
ObjectiveTo assess the accuracy of probabilistic deep learning models to discriminate normal eyes an...
Glaucoma is an eye disease that causes damage to the optic nerve due to increased pressure in the ey...
Abstract Background To develop a deep neural network able to differentiate glaucoma from non-glaucom...
ObjectiveTo assess the accuracy of probabilistic deep learning models to discriminate normal eyes an...
Automated glaucoma detection using deep learning may increase the diagnostic rate of glaucoma to pre...
ObjectiveTo assess the accuracy of probabilistic deep learning models to discriminate normal eyes an...
PURPOSE: To assess the use of deep learning (DL) for computer-assisted glaucoma identification, and ...
Purpose: Glaucoma is one of the preeminent causes of incurable visual disability and blindness acros...
PURPOSE:To evaluate ways to improve the generalizability of a deep learning algorithm for identifyin...
Abstract Glaucoma, after cataracts, is the second leading cause of worldwide vision loss. An ophthal...
Deep learning based on computer vision and machine learning is an emerging technology in both the me...
PurposeTo investigate the suitability of multi-scale spatial information in 30o visual fields (VF), ...
ObjectiveTo assess the accuracy of probabilistic deep learning models to discriminate normal eyes an...
ObjectiveTo assess the accuracy of probabilistic deep learning models to discriminate normal eyes an...
PURPOSE:To build a deep learning model to diagnose glaucoma using fundus photography. DESIGN:Cross s...
ObjectiveTo assess the accuracy of probabilistic deep learning models to discriminate normal eyes an...
Glaucoma is an eye disease that causes damage to the optic nerve due to increased pressure in the ey...
Abstract Background To develop a deep neural network able to differentiate glaucoma from non-glaucom...
ObjectiveTo assess the accuracy of probabilistic deep learning models to discriminate normal eyes an...
Automated glaucoma detection using deep learning may increase the diagnostic rate of glaucoma to pre...
ObjectiveTo assess the accuracy of probabilistic deep learning models to discriminate normal eyes an...
PURPOSE: To assess the use of deep learning (DL) for computer-assisted glaucoma identification, and ...
Purpose: Glaucoma is one of the preeminent causes of incurable visual disability and blindness acros...
PURPOSE:To evaluate ways to improve the generalizability of a deep learning algorithm for identifyin...
Abstract Glaucoma, after cataracts, is the second leading cause of worldwide vision loss. An ophthal...
Deep learning based on computer vision and machine learning is an emerging technology in both the me...