HCCVIVDec 13, 2022

Visual Analytics for Early Detection of Retinal Diseases

arXiv:2212.10566v1h-index: 41
Originality Synthesis-oriented
AI Analysis

This work addresses the problem of early detection of retinal diseases for ophthalmologists and researchers, though it appears incremental as it builds on existing visual analytics approaches.

The paper tackles the challenge of identifying small, localized substructural changes in the retina during early stages of retinal diseases using OCT imaging, resulting in significantly reduced time and effort for data analysis and leading to new discoveries in biomedical research.

Advances in optical coherence tomography (OCT) have enabled noninvasive imaging of substructures of the human retina with high spatial resolution. OCT examinations are now a standard procedure in clinics and an integral part of ophthalmic research. The interpretation of the OCT helps ophthalmologists understand the impact of various retinal and systemic diseases on the structure of the retina in a way not previously possible. In the early stages of retinal diseases, however, the identification and analysis of small and localized substructural changes in the retina remains a challenge. We present an overview of novel visual analytics approaches for the interactive exploration of early retinal changes in single and multiple patients, the comparison of the changes with normative data, and automated quantification and measurement of diagnosis-relevant information. We developed these approaches in close collaboration with ophthalmology researchers and industry experts from a leading OCT device manufacturer. As a result, they not only significantly reduced the time and effort required for OCT data analysis, especially in the context of cross-sectional studies, but have also led to several new discoveries published in biomedical journals.

Foundations

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