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RETFound: Training robust medical imaging-based diagnostic models via self-supervised learning

RETFound: Training robust medical imaging-based diagnostic models via self-supervised learning

Laurentino Biccas Neto1; Caio Regattieri2

DOI: 10.5935/0004-2749.eRes102023

The study "RETFound: Training robust medical imaging-based diagnostic models via self-supervised learning" represents a significant advancement in artificial intelligence (AI) applications in the field of ophthalmology. Introduction of the RETFound model is a key innovation, which uses a unique self-supervised learning approach to train robust models for analyzing ophthalmic images.

Adaptability to various ophthalmic tasks is one of the remarkable features of RETFound, which ranges from diagnosis of eye diseases to prediction of systemic diseases via ocular biomarkers (Oculomics). The flexibility of foundational models such as RETFound indicates that these models could become essential building blocks for the rapid development of solutions across various areas of ophthalmology. Currently, AI algorithms require abundant expert-classified data for training and validation, which significantly limit the progress of AI.

The concept of transfer learning can address this bottleneck by emphasizing the importance of leveraging prior knowledge regarding diverse datasets such as ImageNet. This strategic approach accelerates the development of ophthalmic models and allows efficient adaptation to new medical contexts, especially when specialized datasets are limited.

The study emphasizes the interpretability of the model, which offers a transparent view of the areas that contribute to specific decisions. This feature enhances individual confidence in the results and facilitates clinical and regulatory acceptance, which are crucial for the successful implementation of AI models in ophthalmic clinical settings.

The potential impact of RETFound extends beyond traditional diagnosis and indicates advancements in ophthalmic research and development. Accelerating model training could drive the discovery of new biomarkers, a deeper understanding of image patterns, and early identification of indicators of systemic diseases via ophthalmic assessments.

The self-supervised feature of RETFound has significant advantages because it allows continuous model evolution as new data are incorporated. This could be particularly crucial for ophthalmology, where subtle changes in a patient's condition could have significant implications for the detection and monitoring of early disease.

In summary, the study demonstrates that foundational models, exemplified by RETFound, can positively transform the application of AI in ophthalmology. These models offer an efficient, flexible, and interpretable approach for the development of advanced medical diagnostic solutions, which may promote improvements in ophthalmic care.

 

Article reference of the review: Zhou Y, Chia MA, Wagner SK, Ayhan MS, Williamson DJ, Struyven RR, et al. A foundation model for generalizable disease detection from retinal images. Nature. 2023;622:156-163.


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