EffUnet-SpaGen: An Efficient and Spatial Generative Approach to Glaucoma Detection



Krishna Adithya, Venkatesh, Williams, Bryan M ORCID: 0000-0001-5930-287X, Czanner, Silvester, Kavitha, Srinivasan, Friedman, David S, Willoughby, Colin E, Venkatesh, Rengaraj and Czanner, Gabriela
(2021) EffUnet-SpaGen: An Efficient and Spatial Generative Approach to Glaucoma Detection. Journal of Imaging, 7 (6). p. 92.

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Abstract

<jats:p>Current research in automated disease detection focuses on making algorithms “slimmer” reducing the need for large training datasets and accelerating recalibration for new data while achieving high accuracy. The development of slimmer models has become a hot research topic in medical imaging. In this work, we develop a two-phase model for glaucoma detection, identifying and exploiting a redundancy in fundus image data relating particularly to the geometry. We propose a novel algorithm for the cup and disc segmentation “EffUnet” with an efficient convolution block and combine this with an extended spatial generative approach for geometry modelling and classification, termed “SpaGen” We demonstrate the high accuracy achievable by EffUnet in detecting the optic disc and cup boundaries and show how our algorithm can be quickly trained with new data by recalibrating the EffUnet layer only. Our resulting glaucoma detection algorithm, “EffUnet-SpaGen”, is optimized to significantly reduce the computational burden while at the same time surpassing the current state-of-art in glaucoma detection algorithms with AUROC 0.997 and 0.969 in the benchmark online datasets ORIGA and DRISHTI, respectively. Our algorithm also allows deformed areas of the optic rim to be displayed and investigated, providing explainability, which is crucial to successful adoption and implementation in clinical settings.</jats:p>

Item Type: Article
Uncontrolled Keywords: glaucoma, diagnosis, generative model, machine learning, classification
Divisions: Faculty of Health and Life Sciences
Faculty of Health and Life Sciences > Clinical Directorate
Faculty of Health and Life Sciences > Institute of Life Courses and Medical Sciences
Depositing User: Symplectic Admin
Date Deposited: 06 Sep 2021 09:28
Last Modified: 17 Mar 2024 12:07
DOI: 10.3390/jimaging7060092
Related URLs:
URI: https://livrepository.liverpool.ac.uk/id/eprint/3136068