A deep learning model for segmentation of geographic atrophy to study its long-term natural history
Bart Liefers, Johanna M. Colijn, Cristina Gonz\'alez-Gonzalo, Timo, Verzijden, Paul Mitchell, Carel B. Hoyng, Bram van Ginneken, Caroline C.W., Klaver, Clara I. S\'anchez

TL;DR
This study develops a deep learning model for automatic segmentation of geographic atrophy in fundus images, enabling analysis of its growth rate and structural biomarkers to better understand disease progression.
Contribution
A novel ensemble deep learning model for automatic GA segmentation in fundus images, validated against expert annotations and applied to study GA growth dynamics.
Findings
Model achieved Dice coefficient of 0.72 on test data.
Eight structural biomarkers significantly associated with GA growth rate.
GA area growth is quadratic up to 12 mm², then stabilizes.
Abstract
Purpose: To develop and validate a deep learning model for automatic segmentation of geographic atrophy (GA) in color fundus images (CFIs) and its application to study growth rate of GA. Participants: 409 CFIs of 238 eyes with GA from the Rotterdam Study (RS) and the Blue Mountain Eye Study (BMES) for model development, and 5,379 CFIs of 625 eyes from the Age-Related Eye Disease Study (AREDS) for analysis of GA growth rate. Methods: A deep learning model based on an ensemble of encoder-decoder architectures was implemented and optimized for the segmentation of GA in CFIs. Four experienced graders delineated GA in CFIs from RS and BMES. These manual delineations were used to evaluate the segmentation model using 5-fold cross-validation. The model was further applied to CFIs from the AREDS to study the growth rate of GA. Linear regression analysis was used to study associations between…
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Taxonomy
MethodsGenetic Algorithms · Linear Regression
