Submitted:
09 March 2026
Posted:
09 March 2026
You are already at the latest version
Abstract

Keywords:
1. Introduction: What Is Oculomics?
2. Why the Eye? The Biological Rationale
2.1. The Eye as an Extension of the Brain: Shared Origins and Architecture
2.2. A Unique Diagnostic Window: Clarity and Accessibility
2.3. The Oculomics Proposition: From Correlation to Causation
3. Key Technologies and Biomarkers
3.1. Retinal Imaging as a Quantitative Platform
3.2. Emerging Imaging-Derived Biomarkers
3.3. Ocular Fluidomics: Molecular Readouts of Systemic Health
4. Cardiovascular and Metabolic Health
4.1. Retinal Microvasculature and Hypertensive Vascular Remodeling
4.2. Diabetes and Neurovascular Metabolic Dysfunction
4.3. Retinal Ischemic Signatures and Cumulative Vascular Injury
4.4. Cardiovascular Risk Prediction and Event Stratification
4.5. Metabolic Syndrome, Systemic Inflammation, and Clinical Translation
5. Neurodegenerative and Neurological Disease
5.1. Alzheimer’s Disease and Related Dementias
5.2. Parkinson’s Disease and Disorders of Dopaminergic Signaling
5.3. Multiple Sclerosis and Inflammatory Demyelinating Disease
5.4. Psychiatric and Neurodevelopmental Disorders
5.5. Integrative Perspective and Translational Implications
6. Emerging Frontiers: Bone, Kidney, and Environmental Health
6.1. Retinal Biomarkers and Skeletal Health
6.2. Oculomics in Chronic Kidney Disease
6.3. Oculomics and Exposomics: Linking Environment to Systemic Biology
6.4. Implications for Precision Environmental and Systemic Medicine
7. The Role of Artificial Intelligence
7.1. From Human-Defined Features to Data-Driven Representation Learning
7.2. Predictive Modeling and Disease Risk Stratification
7.3. Multimodal Integration and Systems-Level Inference
7.4. Explainability, Robustness, and Clinical Trust
7.5. Translation, Ethics, and Future Directions
8. The “Healthcare from the Eye” Framework
9. Challenges and Limitations
10. Take-Home Message
10.1. Future Directions
- Longitudinal & Diverse Data: Moving beyond cross-sectional associations requires large-scale, prospective cohorts with repeated ocular measurements linked to hard systemic outcomes. Prioritizing diversity in these datasets is essential to ensure equitable model performance and generalizability.
- Explainable & Actionable AI: The next generation of AI models must prioritize interpretability, clearly linking predictions to biologically plausible retinal features to build clinical trust. Furthermore, AI outputs need to be integrated into electronic health records as actionable risk scores with clear referral pathways.
- Expanded Biomarker Discovery: Research must move beyond the retina to fully characterize the systemic signal in anterior segment imaging (e.g., corneal confocal microscopy) and in the molecular profiles of tears and aqueous humor.
- Clinical Trial Integration: Ocular biomarkers should be incorporated as secondary or exploratory endpoints in systemic disease trials to validate their utility for monitoring therapeutic response and disease progression.
- Ethical and Policy Frameworks: Establishing robust governance for data privacy, consent for secondary use, and guidelines for managing incidental findings is non-negotiable for responsible deployment.
11. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
- Jafari N, Golnik K, Shahriari M, Karimzadeh P, Jabbehdari S. Ophthalmologic findings in patients with neuro-metabolic disorders. J Ophthalmic Vis Res. 2018;13(1):34-38. [CrossRef]
- Wagner SK, Fu DJ, Faes L, et al. Insights into systemic disease through retinal imaging-based oculomics. Transl Vis Sci Technol. 2020;9(2):6. [CrossRef]
- Zhu Z, Wang Y, Qi Z, et al. Oculomics: Current concepts and evidence. Prog Retin Eye Res. 2025;106:101350. [CrossRef]
- Honavar SG. Oculomics—the eyes talk a great deal. Indian J Ophthalmol. 2022;70(3):713. [CrossRef]
- Patterson EJ, Bounds AD, Wagner SK, et al. Oculomics: A crusade against the four horsemen of chronic disease. Ophthalmol Ther. 2024;13(6):1427-1451. [CrossRef]
- Wu JH, Liu TYA. Application of deep learning to retinal-image-based oculomics for evaluation of systemic health: A review. J Clin Med. 2022;12(1):152. [CrossRef]
- Wang J, Wang YX, Zeng D, et al. Artificial intelligence-enhanced retinal imaging as a biomarker for systemic diseases. Theranostics. 2025;15(8):3223-3233. [CrossRef]
- Yao J, Hong ASY, Fukutsu K, Ting DSW. Artificial intelligence oculomics for systemic health and longevity medicine: 2025 and beyond. Curr Opin Ophthalmol. 2025. [CrossRef]
- Merriott DJ, Parikh D, Najac MJ, et al. Optical coherence tomography and optical coherence tomography angiography in systemic disease. Taiwan J Ophthalmol. 2025;15(3):364-377. [CrossRef]
- Bair H. From risk markers to treatable traits in retinal oculomics. Exp Eye Res. 2025. [CrossRef]
- Suh A, Hampel G, Vinjamuri A, et al. Oculomics analysis in multiple sclerosis: Current ophthalmic clinical and imaging biomarkers. Eye (Lond). 2024;38(14):2701-2710. [CrossRef]
- Weinreb RN, Keane PA, Cooley A, et al. A framework for healthcare from the eye: Oculomics as a powerful window to systemic health. Ophthalmology. 2026. [CrossRef]
- Morales-Luque C, Carrillo-Franco L, López-González MV, et al. Mapping the neurophysiological link between voice and autonomic function: A scoping review. Biology (Basel). 2025;14(10):1382. [CrossRef]
- Lepri G, Hughes M, Allanore Y, et al. The role of skin ultrasound in systemic sclerosis: Looking below the surface to understand disease evolution. Lancet Rheumatol. 2023;5(7):e422-e425. [CrossRef]
- Khera R, Oikonomou EK, Nadkarni GN, et al. Transforming cardiovascular care with artificial intelligence: From discovery to practice. J Am Coll Cardiol. 2024;84(1):97-114. [CrossRef]
- Salvadori M, Rosso G. Update on the gut microbiome in health and diseases. World J Methodol. 2024;14(1):89196. [CrossRef]
- Hadoux X, Hui F, Lim JKH, et al. Non-invasive in vivo hyperspectral imaging of the retina for potential biomarker use in Alzheimer disease. Nat Commun. 2019;10:4227. [CrossRef]
- Cheung CY, Chan VTT, Mok VC, Chen C, Wong TY. Potential retinal biomarkers for dementia: What is new? Curr Opin Neurol. 2019;32(1):82-91. [CrossRef]
- London A, Benhar I, Schwartz M. The retina as a window to the brain—from eye research to CNS disorders. Nat Rev Neurol. 2013;9(1):44-53. [CrossRef]
- Schmidt-Erfurth U, Sadeghipour A, Gerendas BS, Waldstein SM, Bogunović H. Artificial intelligence in retina. Prog Retin Eye Res. 2018;67:1-29. [CrossRef]
- Suh A, Ong J, Kamran SA, et al. Retina oculomics in neurodegenerative disease. Ann Biomed Eng. 2023;51(12):2708-2721. [CrossRef]
- Arnould L, Meriaudeau F, Guenancia C, et al. Using artificial intelligence to analyse the retinal vascular network: The future of cardiovascular risk assessment based on oculomics? Ophthalmol Ther. 2023;12(2):657-674. [CrossRef]
- Heavner W, Pevny L. Eye development and retinogenesis. Cold Spring Harb Perspect Biol. 2012;4(12):a008391. [CrossRef]
- Maurissen TL, Pavlou G, Bichsel C, et al. Microphysiological neurovascular barriers to model the inner retinal microvasculature. J Pers Med. 2022;12(2):148. [CrossRef]
- Carelli V, La Morgia C, Ross-Cisneros FN, Sadun AA. Optic neuropathies: The tip of the neurodegeneration iceberg. Hum Mol Genet. 2017;26(R2):R139-R150. [CrossRef]
- Bouma BE, de Boer JF, Huang D, et al. Optical coherence tomography. Nat Rev Methods Primers. 2022;2:79. [CrossRef]
- Ong CJT, Wong MYZ, Cheong KX, Zhao J, Teo KYC, Tan TE. Optical coherence tomography angiography in retinal vascular disorders. Diagnostics (Basel). 2023;13(9):1620. [CrossRef]
- Engelmann J, Moukaddem D, Gago L, et al. Applicability of oculomics for individual risk prediction: Repeatability and robustness of retinal fractal dimension using DART and AutoMorph. Invest Ophthalmol Vis Sci. 2024;65(6):10. [CrossRef]
- Fotovat-Ahmadi N, Siddiqui O, Ong J, et al. The ocular surface tear film as a biomarker for systemic health. Ocul Surf. 2025;37:283-300. [CrossRef]
- Cheng H, Sarnat JA, Walker DI, et al. Oculomics meets exposomics: A roadmap for applying multi-modal ocular biomarkers in precision environmental health research. Exposome. 2025;5(1):osaf013. [CrossRef]
- Ma Y, Wu Y, Hu L, et al. Photoreceptor layer thinning is an early biomarker for type 2 diabetes. Eye (Lond). 2025. [CrossRef]
- Vaughan M, Tay N, Kalitzeos A, et al. Changes in waveguiding cone photoreceptors and color vision in diabetes mellitus. Invest Ophthalmol Vis Sci. 2024;65(14):28. [CrossRef]
- Silverstein SM, Keane BP, Corlett PR. Oculomics in schizophrenia research. Schizophr Bull. 2021;47(3):577-579. [CrossRef]
- Choi JY, Han E, Yoo TK. Application of ChatGPT-4 to oculomics: A cost-effective osteoporosis risk assessment model. EPMA J. 2024;15(4):659-676. [CrossRef]
- Liu S, Zhang O, Wang H, et al. Association between age-related macular degeneration and osteoporosis in the US. Sci Rep. 2025;15:29045. [CrossRef]
- Yeung L, Wu IW, Sun CC, et al. Early retinal microvascular abnormalities in chronic kidney disease. Microcirculation. 2019;26(7):e12555. [CrossRef]
- Drakopoulos M, Nadel A, Bains HK, et al. Quantitative OCT angiography and systemic conditions. Surv Ophthalmol. 2026;71(2):423-455. [CrossRef]
- Amini P, Okeme JO. Tear fluid as a matrix for biomonitoring environmental exposures. Curr Environ Health Rep. 2024;11(3):340-355. [CrossRef]
- Hao R, Zhang M, Zhao L, et al. Impact of air pollution on the ocular surface and tear cytokine levels. Front Med (Lausanne). 2022;9:909330. [CrossRef]
- Jing D, Jiang X, Zhou P, et al. Air pollution-related ocular signs and inflammatory cytokines. Sci Rep. 2022;12:18359. [CrossRef]
- Chen X, Rao J, Zheng Z, et al. Integrated tear proteome and metabolome reveal inflammatory pathways in dry eye syndrome. J Proteome Res. 2019;18(5):2321-2330. [CrossRef]
- Brunmair J, Bileck A, Schmidl D, et al. Metabolic phenotyping of tear fluid in type 2 diabetes. EPMA J. 2022;13(1):107-123. [CrossRef]
- Battistini R, Di Geronimo N, Porru E, et al. Multi-pollutant exposure and ocular surface health: The Bike-Eye study. Int J Environ Res Public Health. 2025;22(12):1818. [CrossRef]
- Lai Y. A comparison of traditional machine learning and deep learning in image recognition. J Phys Conf Ser. 2019;1314:012148. [CrossRef]
- Beyeler MJ, Trofimova O, Bontempi D, et al. Comparing retinal image characteristics with deep learning features for disease prediction. medRxiv. 2024. [CrossRef]
- Cleland C, Taylor E. Artificial intelligence and oculomics: Improving global health. Eye News. 2025.
- An S, Teo K, McConnell MV, et al. AI explainability in oculomics. Prog Retin Eye Res. 2025;106:101352. [CrossRef]
- An S, Squirrell D. Validation of neuron activation patterns for artificial intelligence models in oculomics. Sci Rep. 2024;14:20940. [CrossRef]
- Khan NC, Perera C, Dow ER, et al. Predicting systemic health features from retinal fundus images using transfer learning AI models. Diagnostics (Basel). 2022;12(7):1714. [CrossRef]
- Ranchod TM. Systemic retinal biomarkers. Curr Opin Ophthalmol. 2021;32(5):439-444. [CrossRef]
- Grzybowski A, Jin K, Zhou J, et al. Retina fundus photograph-based AI algorithms in medicine: A systematic review. Ophthalmol Ther. 2024;13(8):2125-2149. [CrossRef]
- Chew EY, Burns SA, Abraham AG, et al. Standardization and clinical applications of retinal imaging biomarkers for cardiovascular disease. Nat Rev Cardiol. 2025;22(1):47-63. [CrossRef]
- Denniston AK, Kale AU, Lee WH, Mollan SP, Keane PA. Building trust in real-world data: Lessons from INSIGHT, the UK’s health data research hub for eye health and oculomics. Curr Opin Ophthalmol. 2022;33(5):399-406. [CrossRef]




Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2026 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).