3.8 Editorial Material

Addressing inter-device variations in optical coherence tomography angiography: will image-to-image translation systems help?

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Publisher

BMC
DOI: 10.1186/s40942-023-00491-8

Keywords

Optical coherence tomography angiography; Artificial Intelligence; Generative Adversarial Network; Denoising Diffusion Probabilistic Model; Unsupervised machine learning; Deep learning

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Optical coherence tomography angiography (OCTA) provides non-invasive visual and quantitative data on retinal microvasculature. However, there are considerable inter-device differences in OCTA data due to variations in technical specifications. Unsupervised deep image-to-image translation techniques, such as Cycle-GANs and DDPMs, can address this issue.
Background Optical coherence tomography angiography (OCTA) is an innovative technology providing visual and quantitative data on retinal microvasculature in a non-invasive manner. Main body Due to variations in the technical specifications of different OCTA devices, there are significant inter-device differences in OCTA data, which can limit their comparability and generalizability. These variations can also result in a domain shift problem that may interfere with applicability of machine learning models on data obtained from different OCTA machines. One possible approach to address this issue may be unsupervised deep image-to-image translation leveraging systems such as Cycle-Consistent Generative Adversarial Networks (Cycle-GANs) and Denoising Diffusion Probabilistic Models (DDPMs). Through training on unpaired images from different device domains, Cycle-GANs and DDPMs may enable cross-domain translation of images. They have been successfully applied in various medical imaging tasks, including segmentation, denoising, and cross-modality image-to-image translation. In this commentary, we briefly describe how Cycle-GANs and DDPMs operate, and review the recent experiments with these models on medical and ocular imaging data. We then discuss the benefits of applying such techniques for inter-device translation of OCTA data and the potential challenges ahead. Conclusion Retinal imaging technologies and deep learning-based domain adaptation techniques are rapidly evolving. We suggest exploring the potential of image-to-image translation methods in improving the comparability of OCTA data from different centers or devices. This may facilitate more efficient analysis of heterogeneous data and broader applicability of machine learning models trained on limited datasets in this field.

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