Prediction of Alzheimer's Disease Risk Factors from Retinal Images via Deep Learning: Development and Validation of Biologically Relevant Morphological Associations in the UK Biobank

arXiv cs.CV / 5/4/2026

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Key Points

  • The study investigates whether colored fundus photography (CFP) can be used with deep learning to predict 12 Alzheimer’s disease (AD) risk factors associated with lifestyle, metabolic, and systemic domains.
  • Deep learning models were trained on 62,876 UK Biobank retinal images from 44,501 participants to predict both categorical and continuous AD-related factors, achieving AUROC up to 0.948 for categorical outcomes and R² up to 0.762 for continuous outcomes.
  • Model interpretation using saliency and CAM-Score showed that the model consistently focused on biologically meaningful retinal regions, especially the optic nerve head and retinal vasculature, aligning with retinal morphometry-based findings.
  • Several saliency-derived scores differed significantly between incident-AD cases and matched controls, suggesting CFP may capture structural retinal correlates that overlap with preclinical AD-related changes.
  • While the approach is not diagnostic, the authors conclude that DL-derived retinal representations could reveal biologically relevant, risk-associated structural alterations linked to AD vulnerability pathways.

Abstract

The systemic, metabolic, lifestyle factors have established associations with Alzheimer's Disease (AD) through epidemiologic and AD-specific biomarker studies. Whether colored fundus photography (CFP) contains retinal structural signatures corresponding to these AD-related risk domains remains unclear. To determine whether deep learning (DL) models can predict 12 AD-related risk factors from CFP and to characterize the retinal structures underlying these predictions, thereby assessing whether CFP reflects pathways to AD vulnerability. Using UK Biobank CFPs, DL models were trained using 62,876 images from 44,501 unique participants to predict 12 factors linked to AD incidence: 6 categorical (sex, smoking, sleeplessness, economic status, alcohol use, depression) and 6 continuous (age, age at completing education, BMI, systolic, diastolic blood pressure, HbA1c). Model performance, model saliency, and saliency-derived scores (CAM-Score) were evaluated and compared to retinal morphometry. The scores were also compared between incident-AD cases (average 8.55 years before onset) and matched controls. Performance of DL ranged from AUROC= 0.5654-0.9480 for categorical and R2=-0.0291-0.7620 for continuous factors, outperforming most of the morphometry-machine learning models. Saliency-based score consistently highlighted biologically meaningful regions, particularly the optic nerve head and retinal vasculature. It also aligned with present morphometric variations. Several saliency-based scores differed significantly between incident AD and matched controls, suggesting potential overlap between retinal correlates of risk factors and preclinical AD-associated changes. CFP encodes retinal signatures linked to AD risk factors. Although not diagnostic, DL-derived retinal representations may uncover biologically meaningful risk-related structural changes mirroring the potential AD vulnerability.

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