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Automatic Grading of Nuclear Cataracts from Slit-Lamp Lens Images Using Group Sparsity Regression

Yanwu Xu1, Xinting Gao1, Stephen Lin2, Damon Wing Kee Wong1, Jiang Liu1, Dong Xu3, Ching Yu Cheng4, Carol Y. Cheung4, and Tien Yin Wong4

1Institute for Infocomm Research, Agency for Science, Technology and Research, Singapore

2Microsoft Research Asia, P.R. China

3School of Computer Engineering, Nanyang Technological University, Singapore

4Singapore Eye Research Institute, Singapore

Abstract. Cataracts, which result from lens opacification, are the leading cause of blindness worldwide. Current methods for determining the severity of cataracts are based on manual assessments that may be weakened by subjectivity. In this work, we propose a system to automatically grade the severity of nuclear cataracts from slit-lamp images. We introduce a new feature for cataract grading together with a group sparsity-based constraint for linear regression, which performs feature selection, parameter selection and regression model training simultaneously. In experiments on a large database of 5378 images, our system outperforms the state-of-the-art by yielding with respect to clinical grading a mean absolute error () of 0.336, a 69.0% exact integral agreement ratio (R0), a 85.2% decimal grading error  0.5 (Re0.5), and a 98.9% decimal grading error  1.0 (Re1.0). Through a more objective grading of cataracts using our proposed system, there is potential for better clinical management of the disease.

LNCS 8150, p. 468 ff.

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