The march to harmonized imaging standards for retinal imaging
- PMID: 40360070
- PMCID: PMC12240699
- DOI: 10.1016/j.preteyeres.2025.101363
The march to harmonized imaging standards for retinal imaging
Abstract
The adoption of standardized imaging protocols in retinal imaging is critical to overcoming challenges posed by fragmented data formats across devices and manufacturers. The lack of standardization hinders clinical interoperability, collaborative research, and the development of artificial intelligence (AI) models that depend on large, high-quality datasets. The Digital Imaging and Communication in Medicine (DICOM) standard offers a robust solution for ensuring interoperability in medical imaging. Although DICOM is widely utilized in radiology and cardiology, its adoption in ophthalmology remains limited. Retinal imaging modalities such as optical coherence tomography (OCT), fundus photography, and OCT angiography (OCTA) have revolutionized retinal disease management but are constrained by proprietary and non-standardized formats. This review underscores the necessity for harmonized imaging standards in ophthalmology, detailing DICOM standards for retinal imaging including ophthalmic photography (OP), OCT, and OCTA, and their requisite metadata information. Additionally, the potential of DICOM standardization for advancing AI applications in ophthalmology is explored. A notable example is the Artificial Intelligence Ready and Equitable Atlas for Diabetes Insights (AI-READI) dataset, the first publicly available standards-compliant DICOM retinal imaging dataset. This dataset encompasses diverse retinal imaging modalities, including color fundus photography, infrared, autofluorescence, OCT, and OCTA. By leveraging multimodal retinal imaging, AI-READI provides a transformative resource for studying diabetes and its complications, setting a blueprint for future datasets aimed at harmonizing imaging formats and enabling AI-driven breakthroughs in ophthalmology. Our manuscript also addresses challenges in retinal imaging for diabetic patients, retinal imaging-based AI applications for studying diabetes, and potential advancements in retinal imaging standardization.
Keywords: Arterial intelligence; Artificial intelligence ready and equitable atlas for diabetes insights; DICOM; Data standardization; Diabetic retinopathy; Imaging; Interoperability.
Copyright © 2025 The Authors. Published by Elsevier Ltd.. All rights reserved.
Conflict of interest statement
Declaration of competing interest The authors declare the following financial interests/personal relationships which may be considered as potential competing interests: Cecilia S. Lee reports financial support was provided by National Institutes of Health. Aaron Y. Lee reports financial support was provided by National Institutes of Health. Cecilia S. Lee reports financial support was provided by Research to Prevent Blindness. Aaron Y. Lee reports financial support was provided by Research to Prevent Blindness. Cecilia S. Lee reports financial support was provided by Latham Vision Research Innovation Award. Aaron Y. Lee reports financial support was provided by Latham Vision Research Innovation Award. Cecilia S. Lee reports financial support was provided by Klorfine Family Endowed Chair. Aaron Y. Lee reports financial support was provided by C. Dan and Irene Hunter Endowed Professorship. Aaron Y. Lee reports a relationship with Genentech that includes: consulting or advisory. Aaron Y. Lee reports a relationship with Sanofi that includes: consulting or advisory. Aaron Y. Lee reports a relationship with Johnson and Johnson that includes: consulting or advisory. Aaron Y. Lee reports a relationship with Boehringer Ingelheim that includes: consulting or advisory. Aaron Y. Lee reports a relationship with Gyroscope that includes: consulting or advisory. Aaron Y. Lee reports a relationship with Santen that includes: funding grants. Aaron Y. Lee reports a relationship with Topcon that includes: funding grants. Aaron Y. Lee reports a relationship with Carl Zeiss Meditec that includes: funding grants. Aaron Y. Lee reports a relationship with Amazon that includes: funding grants. Aaron Y. Lee reports a relationship with Meta that includes: funding grants. Aaron Y. Lee reports a relationship with iCareWorld that includes: funding grants. Aaron Y. Lee reports a relationship with Optomed that includes: funding grants. Aaron Y. Lee reports a relationship with Heidelberg that includes: funding grants. Aaron. Y Lee reports a relationship with Microsoft that includes: funding grants. Aaron. Y Lee reports a relationship with Regeneron that includes: funding grants. If there are other authors, they declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.
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