Diagnostic Quality Assessment of Fundus Photographs: Hierarchical Deep Learning with Clinically Significant Explanations
Shanmukh Reddy Manne, Jose-Alain Sahel, Jay Chhablani, Kiran Kumar, Vupparaboinab, and Soumya Jana

TL;DR
This paper introduces a hierarchical deep learning approach for automated assessment of fundus photograph quality, aiming to improve diagnostic accuracy and efficiency in retinal disease screening, especially in teleophthalmology.
Contribution
The authors propose a novel hierarchical deep learning model that classifies fundus images into quality categories and provides visual explanations, outperforming existing methods on a public dataset.
Findings
Achieved 89.44% accuracy on EyeQ dataset
Provided Grad-CAM visual explanations aligned with expert intuition
Enhanced efficiency in teleophthalmology workflows
Abstract
Fundus photography (FP) remains the primary imaging modality in screening various retinal diseases including age-related macular degeneration, diabetic retinopathy and glaucoma. FP allows the clinician to examine the ocular fundus structures such as the macula, the optic disc (OD) and retinal vessels, whose visibility and clarity in an FP image remain central to ensuring diagnostic accuracy, and hence determine the diagnostic quality (DQ). Images with low DQ, resulting from eye movement, improper illumination and other possible causes, should obviously be recaptured. However, the technician, often unfamiliar with DQ criteria, initiates recapture only based on expert feedback. The process potentially engages the imaging device multiple times for single subject, and wastes the time and effort of the ophthalmologist, the technician and the subject. The burden could be prohibitive in case…
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Taxonomy
TopicsRetinal Imaging and Analysis · Retinal and Optic Conditions · Retinal Diseases and Treatments
