DocumentCode :
18519
Title :
DREAM: Diabetic Retinopathy Analysis Using Machine Learning
Author :
Roychowdhury, Sohini ; Koozekanani, Dara ; Parhi, Keshab
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Minnesota, Minneapolis, MN, USA
Volume :
18
Issue :
5
fYear :
2014
fDate :
Sept. 2014
Firstpage :
1717
Lastpage :
1728
Abstract :
This paper presents a computer-aided screening system (DREAM) that analyzes fundus images with varying illumination and fields of view, and generates a severity grade for diabetic retinopathy (DR) using machine learning. Classifiers such as the Gaussian Mixture model (GMM), k-nearest neighbor (kNN), support vector machine (SVM), and AdaBoost are analyzed for classifying retinopathy lesions from nonlesions. GMM and kNN classifiers are found to be the best classifiers for bright and red lesion classification, respectively. A main contribution of this paper is the reduction in the number of features used for lesion classification by feature ranking using Adaboost where 30 top features are selected out of 78. A novel two-step hierarchical classification approach is proposed where the nonlesions or false positives are rejected in the first step. In the second step, the bright lesions are classified as hard exudates and cotton wool spots, and the red lesions are classified as hemorrhages and micro-aneurysms. This lesion classification problem deals with unbalanced datasets and SVM or combination classifiers derived from SVM using the Dempster-Shafer theory are found to incur more classification error than the GMM and kNN classifiers due to the data imbalance. The DR severity grading system is tested on 1200 images from the publicly available MESSIDOR dataset. The DREAM system achieves 100% sensitivity, 53.16% specificity, and 0.904 AUC, compared to the best reported 96% sensitivity, 51% specificity, and 0.875 AUC, for classifying images as with or without DR. The feature reduction further reduces the average computation time for DR severity per image from 59.54 to 3.46 s.
Keywords :
Gaussian processes; biomedical optical imaging; diseases; eye; feature extraction; feature selection; haemodynamics; image classification; inference mechanisms; learning (artificial intelligence); medical disorders; medical image processing; mixture models; sorting; support vector machines; uncertainty handling; vision defects; AdaBoost classifier; DR severity grading system; DREAM; Dempster-Shafer theory; GMM classifier; Gaussian mixture model classifier; SVM classifier; SVM combination classifiers; average computation time reduction; bright lesion classification; classification error; computer-aided screening system; cotton wool spot classification; diabetic retinopathy analysis; diabetic retinopathy severity grade generation; false positive; feature number reduction; feature ranking; feature selection; field of view variation; fundus image analysis; hard exudate classification; hemorrhage classification; illumination variation; k-nearest neighbor classifier; kNN classifier; machine learning; microaneurysm classification; nonlesion classification; publicly available MESSIDOR dataset; red lesion classification; retinopathy lesion classification; support vector machine classifier; time 3.46 s; time 59.54 s; two-step hierarchical classification approach; unbalanced dataset effect; Diabetes; Feature extraction; Hemorrhaging; Image segmentation; Lesions; Retinopathy; Support vector machines; Bright lesions; classification; diabetic retinopathy (DR); fundus image processing; red lesions; segmentation; severity grade;
fLanguage :
English
Journal_Title :
Biomedical and Health Informatics, IEEE Journal of
Publisher :
ieee
ISSN :
2168-2194
Type :
jour
DOI :
10.1109/JBHI.2013.2294635
Filename :
6680633
Link To Document :
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