DocumentCode
3602998
Title
Automatic Feature Learning to Grade Nuclear Cataracts Based on Deep Learning
Author
Xinting Gao ; Lin, Stephen ; Tien Yin Wong
Author_Institution
Inst. for Infocomm Res., Agency for Sci., Technol. & Res., Singapore, Singapore
Volume
62
Issue
11
fYear
2015
Firstpage
2693
Lastpage
2701
Abstract
Goal: Cataracts are a clouding of the lens and the leading cause of blindness worldwide. Assessing the presence and severity of cataracts is essential for diagnosis and progression monitoring, as well as to facilitate clinical research and management of the disease. Methods: Existing automatic methods for cataract grading utilize a predefined set of image features that may provide an incomplete, redundant, or even noisy representation. In this study, we propose a system to automatically learn features for grading the severity of nuclear cataracts from slit-lamp images. Local filters are first acquired through clustering of image patches from lenses within the same grading class. The learned filters are fed into a convolutional neural network, followed by a set of recursive neural networks, to further extract higher order features. With these features, support vector regression is applied to determine the cataract grade. Results: The proposed system is validated on a large population-based dataset of 5378 images, where it outperforms the state of the art by yielding with respect to clinical grading a mean absolute error (ε) of 0.304, a 70.7% exact integral agreement ratio (R0), an 88.4% decimal grading error ≤0.5 (Re0.5), and a 99.0% decimal grading error ≤1.0 (Re1.0). Significance: The proposed method is useful for assisting and improving clinical management of the disease in the context of large-population screening and has the potential to be applied to other eye diseases.
Keywords
biomedical optical imaging; diseases; eye; image denoising; image representation; learning (artificial intelligence); medical image processing; regression analysis; support vector machines; vision defects; automatic feature learning; clinical grading; clinical management; clouding; decimal grading error; deep learning; diagnosis monitoring; eye diseases; image patch clustering; integral agreement ratio; large-population screening; lens; local filters; mean absolute error; noisy representation; nuclear cataracts; population-based dataset; progression monitoring; slit-lamp imaging; Feature extraction; Image color analysis; Lenses; Neural networks; Standards; Training; Visualization; Automatic Feature Learning; Automatic feature learning; Cataract Grading; Deep Learning; cataract grading; deep learning;
fLanguage
English
Journal_Title
Biomedical Engineering, IEEE Transactions on
Publisher
ieee
ISSN
0018-9294
Type
jour
DOI
10.1109/TBME.2015.2444389
Filename
7122265
Link To Document