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Deep learning-based optical coherence tomography angiography image construction using spatial vascular connectivity network

David Le, Taeyoon Son, Tae-Hoon Kim, Tobiloba Adejumo, Mansour Abtahi, Shaiban Ahmed, Alfa Rossi, Behrouz Ebrahimi, ALBERT DADZIE, Guangying Ma, Jennifer I. Lim, Xincheng Yao

2024Communications Engineering14 citationsDOIOpen Access PDF

Abstract

Abstract Optical coherence tomography angiography (OCTA) provides unrivaled capability for depth-resolved visualization of retinal vasculature at the microcapillary level resolution. For OCTA image construction, repeated OCT scans from one location are required to identify blood vessels with active blood flow. The requirement for multi-scan-volumetric OCT can reduce OCTA imaging speed, which will induce eye movements and limit the image field-of-view. In principle, the blood flow should also affect the reflectance brightness profile along the vessel direction in a single-scan-volumetric OCT. Here we report a spatial vascular connectivity network (SVC-Net) for deep learning OCTA construction from single-scan-volumetric OCT. We quantitatively determine the optimal number of neighboring B-scans as image input, we compare the effects of neighboring B-scans to single B-scan input models, and we explore different loss functions for optimization of SVC-Net. This approach can improve the clinical implementation of OCTA by improving transverse image resolution or increasing the field-of-view.

Topics & Concepts

Optical coherence tomography angiographyOptical coherence tomographyVascular networkArtificial intelligenceComputer scienceDeep learningAngiographyCoherence (philosophical gambling strategy)Computer visionRadiologyMedicinePhysicsAnatomyQuantum mechanicsRetinal Imaging and AnalysisOptical Coherence Tomography ApplicationsRetinal and Macular Surgery
Deep learning-based optical coherence tomography angiography image construction using spatial vascular connectivity network | Litcius