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

Hosein Nouri, Reza Nasri, Seyed-Hossein Abtahi
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Abstract

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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解决光学相干断层成像血管造影设备间的差异:图像到图像的转换系统会有帮助吗?
背景:光学相干断层血管造影(OCTA)是一种创新的技术,以无创的方式提供视网膜微血管的视觉和定量数据。主体:由于不同OCTA设备的技术规格不同,OCTA数据在设备间存在较大差异,限制了数据的可比性和通用性。这些变化还可能导致域移位问题,这可能会干扰机器学习模型对从不同OCTA机器获得的数据的适用性。解决这一问题的一种可能方法是利用循环一致生成对抗网络(cycle - gan)和去噪扩散概率模型(ddpm)等系统进行无监督深度图像到图像的翻译。通过对来自不同设备域的未配对图像进行训练,cycle - gan和ddpm可以实现图像的跨域翻译。它们已经成功地应用于各种医学成像任务,包括分割、去噪和跨模态图像到图像的翻译。在这篇评论中,我们简要描述了cycle - gan和ddpm是如何工作的,并回顾了这些模型在医学和眼成像数据上的最新实验。然后,我们讨论了将这些技术应用于OCTA数据的设备间转换的好处以及未来的潜在挑战。结论:视网膜成像技术和基于深度学习的领域适应技术正在快速发展。我们建议探索图像到图像翻译方法的潜力,以提高来自不同中心或设备的OCTA数据的可比性。这可能有助于更有效地分析异构数据,以及在该领域有限数据集上训练的机器学习模型的更广泛适用性。
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来源期刊
CiteScore
3.50
自引率
4.30%
发文量
81
审稿时长
19 weeks
期刊介绍: International Journal of Retina and Vitreous focuses on the ophthalmic subspecialty of vitreoretinal disorders. The journal presents original articles on new approaches to diagnosis, outcomes of clinical trials, innovations in pharmacological therapy and surgical techniques, as well as basic science advances that impact clinical practice. Topical areas include, but are not limited to: -Imaging of the retina, choroid and vitreous -Innovations in optical coherence tomography (OCT) -Small-gauge vitrectomy, retinal detachment, chromovitrectomy -Electroretinography (ERG), microperimetry, other functional tests -Intraocular tumors -Retinal pharmacotherapy & drug delivery -Diabetic retinopathy & other vascular diseases -Age-related macular degeneration (AMD) & other macular entities
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