Papilledema is a syndrome of the retina in which retinal optic nerve is inflated by elevation of intracranial pressure. The papilledema abnormalities such as retinal nerve fiber layer (RNFL) opacification may lead to blindness. These abnormalities could be seen through capturing of retinal images by means of fundus camera. This paper presents a deep learning-based automated system that detects and grades the papilledema through U-Net and Dense-Net architectures. The proposed approach has two main stages. First, optic disc and its surrounding area in fundus retinal image are localized and cropped for input to Dense-Net which classifies the optic disc as papilledema or normal. Second, consists of preprocessing of Dense-Net classified papilled...
Differentiating pseudopapilledema and papilledema in children represents a significant diagnostic di...
Diabetes is a globally prevalent disease that can cause visible microvascular complications such as ...
This project aims to aid in the improvement of automated diagnosis of retinopathy via improving stru...
Objective: To evaluate the performance of a deep learning system (DLS) in classifying the severity o...
BACKGROUND: Nonophthalmologist physicians do not confidently perform direct ophthalmos-copy. The use...
Automatic grading of retinal blood vessels from fundus image can be a useful tool for diagnosis, pla...
Background Nonophthalmologist physicians do not confidently perform direct ophthalmoscopy. The use o...
Background: To date, deep learning-based detection of optic disc abnormalities in color fundus photo...
BACKGROUND: Nonophthalmologist physicians do not confidently perform direct ophthalmoscopy. The use...
Optic disc (OD) is a key structure in retinal images. It serves as an indicator to detect various di...
The study's objective is to evaluate the performance of a deep learning system (DLS) in classifying ...
International audienceThe World Health Organization estimates that 285 million people are visually i...
The recently validated BONSAI deep learning system (DLS) was able to distinguish papilledema from no...
The aim of this study was to assess the performance of artificial intelligence, using a deep learnin...
International audienceThe World Health Organization estimates that 285 million people are visually i...
Differentiating pseudopapilledema and papilledema in children represents a significant diagnostic di...
Diabetes is a globally prevalent disease that can cause visible microvascular complications such as ...
This project aims to aid in the improvement of automated diagnosis of retinopathy via improving stru...
Objective: To evaluate the performance of a deep learning system (DLS) in classifying the severity o...
BACKGROUND: Nonophthalmologist physicians do not confidently perform direct ophthalmos-copy. The use...
Automatic grading of retinal blood vessels from fundus image can be a useful tool for diagnosis, pla...
Background Nonophthalmologist physicians do not confidently perform direct ophthalmoscopy. The use o...
Background: To date, deep learning-based detection of optic disc abnormalities in color fundus photo...
BACKGROUND: Nonophthalmologist physicians do not confidently perform direct ophthalmoscopy. The use...
Optic disc (OD) is a key structure in retinal images. It serves as an indicator to detect various di...
The study's objective is to evaluate the performance of a deep learning system (DLS) in classifying ...
International audienceThe World Health Organization estimates that 285 million people are visually i...
The recently validated BONSAI deep learning system (DLS) was able to distinguish papilledema from no...
The aim of this study was to assess the performance of artificial intelligence, using a deep learnin...
International audienceThe World Health Organization estimates that 285 million people are visually i...
Differentiating pseudopapilledema and papilledema in children represents a significant diagnostic di...
Diabetes is a globally prevalent disease that can cause visible microvascular complications such as ...
This project aims to aid in the improvement of automated diagnosis of retinopathy via improving stru...