Abstract
Optical coherence tomography angiography (OCTA) requires high transverse sampling density for visualizing retinal and choroidal capillaries. Low transverse sampling causes digital resolution degradation, such as the angiograms in wide-field OCTA. In this paper, we propose to address this problem using deep learning. We conducted extensive experiments on converting the centrally cropped 3 × 3 mm 2 field of view (FOV) of the 8 × 8 mm 2 foveal OCTA images (a sampling density of 22.9 µ m) to the native 3 × 3 mm 2 en face OCTA images (a sampling density of 12.2 µ m). We employed a cycle-consistent adversarial network architecture in this conversion. The quantitative analysis using the perceptual similarity measures shows the generated OCTA images are closer to the native 3 × 3 mm 2 scans. Besides, the results show the proposed method could also enhance the signal-to-noise ratio. We further applied our method to enhance diseased cases and calculate vascular biomarkers, which demonstrates its generalization performance and clinical perspective.
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CITATION STYLE
Zhou, T., Yang, J., Zhou, K., Fang, L., Hu, Y., Cheng, J., … Liu, J. (2020). Digital resolution enhancement in low transverse sampling optical coherence tomography angiography using deep learning. OSA Continuum, 3(6), 1664. https://doi.org/10.1364/osac.393325
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