A Novel Hybrid Machine Learning Model for Auto-Classification of Retinal Diseases

06/17/2018
by   C. -H. Huck Yang, et al.
0

Automatic clinical diagnosis of retinal diseases has emerged as a promising approach to facilitate discovery in areas with limited access to specialists. We propose a novel visual-assisted diagnosis hybrid model based on the support vector machine (SVM) and deep neural networks (DNNs). The model incorporates complementary strengths of DNNs and SVM. Furthermore, we present a new clinical retina label collection for ophthalmology incorporating 32 retina diseases classes. Using EyeNet, our model achieves 89.73 model performance is comparable to the professional ophthalmologists.

READ FULL TEXT
research
08/16/2018

Auto-Classification of Retinal Diseases in the Limit of Sparse Data Using a Two-Streams Machine Learning Model

Automatic clinical diagnosis of retinal diseases has emerged as a promis...
research
02/11/2010

Automatic diagnosis of retinal diseases from color retinal images

Teleophthalmology holds a great potential to improve the quality, access...
research
03/19/2020

Accuracy of MRI Classification Algorithms in a Tertiary Memory Center Clinical Routine Cohort

BACKGROUND:Automated volumetry software (AVS) has recently become widely...
research
04/09/2022

Lupus nephritis diagnosis using enhanced moth flame algorithm with support vector machines

Systemic lupus erythematosus is a chronic autoimmune disease that affect...
research
12/27/2018

Low-Cost Device Prototype for Automatic Medical Diagnosis Using Deep Learning Methods

This paper introduces a novel low-cost device prototype for the automati...
research
02/11/2019

Synthesizing New Retinal Symptom Images by Multiple Generative Models

Age-Related Macular Degeneration (AMD) is an asymptomatic retinal diseas...
research
04/21/2020

A Mathematical Programming approach to Binary Supervised Classification with Label Noise

In this paper we propose novel methodologies to construct Support Vector...

Please sign up or login with your details

Forgot password? Click here to reset