Development of a Mobile Application for at-Home Analysis of Retinal Fundus Images
- URL: http://arxiv.org/abs/2509.16814v2
- Date: Wed, 01 Oct 2025 20:37:01 GMT
- Title: Development of a Mobile Application for at-Home Analysis of Retinal Fundus Images
- Authors: Mattea Reid, Zuhairah Zainal, Khaing Zin Than, Danielle Chan, Jonathan Chan,
- Abstract summary: The purpose of this platform is to observe for a change in these metrics over time, offering early insights into potential ocular diseases.<n> Metrics analysed include vessel tortuosity, as well as signs of glaucoma, retinopathy and macular edema.<n>Information from the DeepSeeNet glaucoma detection model, as well as tortuosity calculations, is additionally incorporated to ultimately present a retinal fundus image monitoring platform.
- Score: 0.9052688603211582
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Machine learning is gaining significant attention as a diagnostic tool in medical imaging, particularly in the analysis of retinal fundus images. However, this approach is not yet clinically applicable, as it still depends on human validation from a professional. Therefore, we present the design for a mobile application that monitors metrics related to retinal fundus images correlating to age-related conditions. The purpose of this platform is to observe for a change in these metrics over time, offering early insights into potential ocular diseases without explicitly delivering diagnostics. Metrics analysed include vessel tortuosity, as well as signs of glaucoma, retinopathy and macular edema. To evaluate retinopathy grade and risk of macular edema, a model was trained on the Messidor dataset and compared to a similar model trained on the MAPLES-DR dataset. Information from the DeepSeeNet glaucoma detection model, as well as tortuosity calculations, is additionally incorporated to ultimately present a retinal fundus image monitoring platform. As a result, the mobile application permits monitoring of trends or changes in ocular metrics correlated to age-related conditions with regularly uploaded photographs.
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