Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

An effective and comprehensible method to detect and evaluate retinal damage due to diabetes complications

View through CrossRef
The leading cause of vision loss globally is diabetic retinopathy. Researchers are making great efforts to automatically detect and diagnose correctly diabetic retinopathy. Diabetic retinopathy includes five stages: no diabetic retinopathy, mild diabetic retinopathy, moderate diabetic retinopathy, severe diabetic retinopathy and proliferative diabetic retinopathy. Recent studies have offered several multi-tasking deep learning models to detect and assess the level of diabetic retinopathy. However, the explanation for the assessment of disease severity of these models is limited, and only stops at showing lesions through images. These studies have not explained on what basis the appraisal of disease severity is based. In this article, we present a system for assessing and interpreting the five stages of diabetic retinopathy. The proposed system is built from internal models including a deep learning model that detects lesions and an explanatory model that assesses disease stage. The deep learning model that detects lesions uses the Mask R-CNN deep learning network to specify the location and shape of the lesion and classify the lesion types. This model is a combination of two networks: one used to detect hemorrhagic and exudative lesions, and one used to detect vascular lesions like aneurysm and proliferation. The explanatory model appraises disease severity based on the severity of each type of lesion and the association between types. The severity of the disease will be decided by the model based on the number of lesions, the density and the area of the lesions. The experimental results on real-world datasets show that our proposed method achieves high accuracy of assessing five stages of diabetic retinopathy comparable to existing state-of-the-art methods and is capable of explaining the causes of disease severity.
Title: An effective and comprehensible method to detect and evaluate retinal damage due to diabetes complications
Description:
The leading cause of vision loss globally is diabetic retinopathy.
Researchers are making great efforts to automatically detect and diagnose correctly diabetic retinopathy.
Diabetic retinopathy includes five stages: no diabetic retinopathy, mild diabetic retinopathy, moderate diabetic retinopathy, severe diabetic retinopathy and proliferative diabetic retinopathy.
Recent studies have offered several multi-tasking deep learning models to detect and assess the level of diabetic retinopathy.
However, the explanation for the assessment of disease severity of these models is limited, and only stops at showing lesions through images.
These studies have not explained on what basis the appraisal of disease severity is based.
In this article, we present a system for assessing and interpreting the five stages of diabetic retinopathy.
The proposed system is built from internal models including a deep learning model that detects lesions and an explanatory model that assesses disease stage.
The deep learning model that detects lesions uses the Mask R-CNN deep learning network to specify the location and shape of the lesion and classify the lesion types.
This model is a combination of two networks: one used to detect hemorrhagic and exudative lesions, and one used to detect vascular lesions like aneurysm and proliferation.
The explanatory model appraises disease severity based on the severity of each type of lesion and the association between types.
The severity of the disease will be decided by the model based on the number of lesions, the density and the area of the lesions.
The experimental results on real-world datasets show that our proposed method achieves high accuracy of assessing five stages of diabetic retinopathy comparable to existing state-of-the-art methods and is capable of explaining the causes of disease severity.

Related Results

Retinal Oximetry
Retinal Oximetry
Abstract.Purpose:Malfunction of retinal blood flow or oxygenation is believed to be involved in various diseases. Among them are retinal vessel occlusions, diabetic retinopathy and...
Retinal oximetry in patients with ischaemic retinal diseases
Retinal oximetry in patients with ischaemic retinal diseases
AbstractThe retinal oximeter is a new tool for non‐invasive measurement of retinal oxygen saturation in humans. Several studies have investigated the associations between retinal o...
Undiagnosed Diabetes in Acute Coronary Syndrome: A Silent Threat in Pakistan
Undiagnosed Diabetes in Acute Coronary Syndrome: A Silent Threat in Pakistan
Diabetes mellitus (DM) has emerged as one of the most pressing public health challenges globally, and Pakistan stands among the countries most severely affected. With rising urbani...
e0392 Relationship between retinal vasculopathy and coronary artery disease
e0392 Relationship between retinal vasculopathy and coronary artery disease
Background and objective Studies showed that atherosclerosis is a systemic disease. Parameters representing peripheral artery atherosclerosis, such as decreased a...
Composing the puzzle: a case of acute unilateral vision loss
Composing the puzzle: a case of acute unilateral vision loss
A 75‐year‐old Caucasian male, with a medical history of hypertension, diabetes, and dyslipidemia, presented to the emergency department with sudden complete vision loss in his left...
PENURUNAN KADAR GULA DARAH DAN RESIKO ULKUS PADA PENDERITA DIABETES MELLITUS DENGAN SENAM KAKI DIABETES
PENURUNAN KADAR GULA DARAH DAN RESIKO ULKUS PADA PENDERITA DIABETES MELLITUS DENGAN SENAM KAKI DIABETES
ABSTRAKDiabetes mellitus adalah suatu penyakit dengan peningkatan glukosa darah di atas normal. Indonesia merupakan negara menempati urutan ke 7 dengan penderita diabetes mellitus ...
Effect of Diabetes Online Community Engagement on Health Indicators: Cross-Sectional Study (Preprint)
Effect of Diabetes Online Community Engagement on Health Indicators: Cross-Sectional Study (Preprint)
BACKGROUND Successful diabetes management requires ongoing lifelong self-care and can require that individuals with diabetes become experts in translating c...
A direct method for imaging gradient levels of retinal hypoxia in a model of retinopathy of prematurity (ROP)
A direct method for imaging gradient levels of retinal hypoxia in a model of retinopathy of prematurity (ROP)
Abstract Background: Retinal hypoxia may contribute to the development of preretinal neovascularization in patients with retinopathy of prematurity (ROP). Ciliary bodies co...

Back to Top