Abstract

Coronary Artery Disease (CAD) is commonly diagnosed using X-ray angiography, in which images are taken as radio-opaque dye is flushed through the coronary vessels to visualize the severity of vessel narrowing, or stenosis. Cardiologists typically use visual estimation to approximate the percent diameter reduction of the stenosis, and this directs therapies like stent placement. A fully automatic method to segment the vessels would eliminate potential subjectivity and provide a quantitative and systematic measurement of diameter reduction. Here, we have designed a convolutional neural network, AngioNet, for vessel segmentation in X-ray angiography images. The main innovation in this network is the introduction of an Angiographic Processing Network (APN) which significantly improves segmentation performance on multiple network backbones, with the best performance using Deeplabv3+ (Dice score 0.864, pixel accuracy 0.983, sensitivity 0.918, specificity 0.987). The purpose of the APN is to create an end-to-end pipeline for image pre-processing and segmentation, learning the best possible pre-processing filters to improve segmentation. We have also demonstrated the interchangeability of our network in measuring vessel diameter with Quantitative Coronary Angiography. Our results indicate that AngioNet is a powerful tool for automatic angiographic vessel segmentation that could facilitate systematic anatomical assessment of coronary stenosis in the clinical workflow.

Highlights

  • Coronary Artery Disease (CAD) is commonly diagnosed using X-ray angiography, in which images are taken as radio-opaque dye is flushed through the coronary vessels to visualize the severity of vessel narrowing, or stenosis

  • CAD is most commonly diagnosed using X-ray angiography (XRA)[7], whereby a catheter is inserted into the patient and a sequence of X-ray images are taken as radio-opaque dye is flushed into the coronary arteries

  • We have developed a new convolutional neural networks (CNNs) for angiographic segmentation: AngioNet, which combines an Angiographic Processing Network (APN) with a semantic segmentation network

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Summary

Introduction

Coronary Artery Disease (CAD) is commonly diagnosed using X-ray angiography, in which images are taken as radio-opaque dye is flushed through the coronary vessels to visualize the severity of vessel narrowing, or stenosis. QCA is more quantitative than visual inspection alone, it requires substantial human input to identify the stenosis and to manually correct the vessel boundaries before calculating the stenosis percentage. This has led to QCA largely being used in the setting of clinical studies with limited impact on patient care. A fully automatic angiographic segmentation algorithm would speed up the process of determining stenosis severity, eliminate the need for subjective manual corrections, and potentially lead to broader utilization in clinical workflows.

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