Title
Diagnosis of retinal health in digital fundus images using continuous wavelet transform (CWT) and entropies.
Abstract
Vision is paramount to humans to lead an active personal and professional life. The prevalence of ocular diseases is rising, and diseases such as glaucoma, Diabetic Retinopathy (DR) and Age-related Macular Degeneration (AMD) are the leading causes of blindness in developed countries. Identifying these diseases in mass screening programmes is time-consuming, labor-intensive and the diagnosis can be subjective. The use of an automated computer aided diagnosis system will reduce the time taken for analysis and will also reduce the inter-observer subjective variabilities in image interpretation. In this work, we propose one such system for the automatic classification of normal from abnormal (DR, AMD, glaucoma) images. We had a total of 404 normal and 1082 abnormal fundus images in our database. As the first step, 2D-Continuous Wavelet Transform (CWT) decomposition on the fundus images of two classes was performed. Subsequently, energy features and various entropies namely Yager, Renyi, Kapoor, Shannon, and Fuzzy were extracted from the decomposed images. Then, adaptive synthetic sampling approach was applied to balance the normal and abnormal datasets. Next, the extracted features were ranked according to the significances using Particle Swarm Optimization (PSO). Thereupon, the ranked and selected features were used to train the random forest classifier using stratified 10-fold cross validation. Overall, the proposed system presented a performance rate of 92.48%, and a sensitivity and specificity of 89.37% and 95.58% respectively using 15 features. This novel system shows promise in detecting abnormal fundus images, and hence, could be a valuable adjunct eye health screening tool that could be employed in polyclinics, and thereby reduce the workload of specialists at hospitals. Display Omitted Classification of normal and abnormal (AMD, DR and glaucoma) using fundus images.Energy and entropy features are extracted from 2D- CWT coefficients.Implemented ADASYN to synthetically generate images for normal class.Obtained an accuracy of 92.48%, sensitivity of 89.37% and specificity of 95.58%.
Year
DOI
Venue
2017
10.1016/j.compbiomed.2017.03.008
Comp. in Bio. and Med.
Keywords
Field
DocType
Age-related macular degeneration,Continuous wavelet transform,Diabetic retinopathy,Fundus,Glaucoma
Diabetic retinopathy,Computer vision,Glaucoma,Pattern recognition,Computer science,Computer-aided diagnosis,Fundus (eye),Continuous wavelet transform,Artificial intelligence,Random forest,Cross-validation,Wavelet transform
Journal
Volume
Issue
ISSN
84
C
0010-4825
Citations 
PageRank 
References 
7
0.43
32
Authors
12
Name
Order
Citations
PageRank
Joel E. W. Koh126619.06
Rajendra Acharya U24666296.34
Yuki Hagiwara364129.34
U. Raghavendra41138.06
Jen Hong Tan527512.93
S Vinitha Sree640518.30
Sulatha V. Bhandary727113.76
A. Krishna Rao8914.46
Sobha Sivaprasad9723.17
Kuang Chua Chua102019.36
Augustinus Laude1122111.99
Louis Tong121658.22