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AV-Net: deep learning for fully automated artery-vein classification in optical coherence tomography angiography

Minhaj Nur Alam, David Le, Taeyoon Son, Jennifer I. Lim, Xincheng Yao

2020Biomedical Optics Express72 citationsDOIOpen Access PDF

Abstract

This study is to demonstrate deep learning for automated artery-vein (AV) classification in optical coherence tomography angiography (OCTA). The AV-Net, a fully convolutional network (FCN) based on modified U-shaped CNN architecture, incorporates enface OCT and OCTA to differentiate arteries and veins. For the multi-modal training process, the enface OCT works as a near infrared fundus image to provide vessel intensity profiles, and the OCTA contains blood flow strength and vessel geometry features. A transfer learning process is also integrated to compensate for the limitation of available dataset size of OCTA, which is a relatively new imaging modality. By providing an average accuracy of 86.75%, the AV-Net promises a fully automated platform to foster clinical deployment of differential AV analysis in OCTA.

Topics & Concepts

Optical coherence tomographyComputer scienceArtificial intelligenceAngiographyFundus (uterus)Optical coherence tomography angiographyDeep learningConvolutional neural networkMedicineRadiologyBiomedical engineeringRetinal Imaging and AnalysisOptical Coherence Tomography ApplicationsCoronary Interventions and Diagnostics
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