Methodological challenges of deep learning in optical coherence tomography for retinal diseases: A review

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Abstract

Artificial intelligence (AI)-based automated classification and segmentation of optical coherence tomography (OCT) features have become increasingly popular. However, its 3-dimensional volumetric nature has made developing an algorithm that generalizes across all patient populations and OCT devices challenging. Several recent studies have reported high diagnostic performances of AI models; however, significant methodological challenges still exist in applying these models in real-world clinical practice. Lack of large-image datasets from multiple OCT devices, nonstandardized imaging or post-processing protocols between devices, limited graphics processing unit capabilities for exploiting 3-dimensional features, and inconsistency in the reporting metrics are major hurdles in enabling AI for OCT analyses. We discuss these issues and present possible solutions.

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Yanagihara, R. T., Lee, C. S., Ting, D. S. W., & Lee, A. Y. (2020). Methodological challenges of deep learning in optical coherence tomography for retinal diseases: A review. Translational Vision Science and Technology. Association for Research in Vision and Ophthalmology Inc. https://doi.org/10.1167/tvst.9.2.11

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