Abstract

Coronary artery disease is caused primarily by vessel narrowing. Extraction of the coronary artery area from images is the preferred procedure for diagnosing coronary diseases. In this study, a U-Net-based network architecture, 3D Dense-U-Net, was adopted to perform fully automatic segmentation of the coronary artery. The network was applied to 474 coronary computed tomography (CT) angiography scans performed at Wanfang Hospital, Taiwan. Of these, 10% were used for testing. The CT scans were divided into patches of 16 original high-resolution slices. The slices were overlapped between patches to take advantage of surrounding imaging information. However, an imbalance between the foreground and background presents a challenge in smaller-object segmentation such as with coronary arteries. The network was optimized and achieved a promising result when the focal loss concept was adopted. To evaluate the accuracy of the automatic segmentation approach, the dice similarity coefficient (DSC) was calculated, and an existing clinical tool was used. The subjective ratings of three experienced radiologists were used to compare the two ratings. The results show that the proposed approach can achieve a DSC of 0.9691, which is significantly higher than other studies using a deep learning approach. In the main trunk, the results of automatic segmentation agree with those of the clinical tool; they were significantly better in some small branches. In our study, automatic segmentation tool shows high-performance detection in coronary lumen vessels, thereby providing potential power in assisting clinical diagnosis.

Highlights

  • Coronary artery disease is caused primarily by vessel narrowing

  • To validate the performance of this approach, the test data were evaluated using intersection over union (IoU) and dice similarity coefficient (DSC), but the results were compared with the clinical tool; subjective ratings of their performances were provided by three experienced radiologists

  • Images were reconstructed to a mean voxel size of 0.32 × 0.32 × 0.7 m­ m3, and the margins of two major coronary arteries [the left coronary artery (LCA) and the right coronary artery (RCA)] and all their branches were manually annotated by consensus between three radiology technologists and approved by another radiologist experienced in cardiovascular imaging

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Summary

Introduction

Coronary artery disease is caused primarily by vessel narrowing. Extraction of the coronary artery area from images is the preferred procedure for diagnosing coronary diseases. A U-Net-based network architecture, 3D Dense-U-Net, was adopted to perform fully automatic segmentation of the coronary artery. Diagnosing coronary artery diseases depends primarily on computed tomography (CT) images, and a high-quality fully automatic segmentation approach for defining the coronary arteries is essential. A deep CNN network architecture, U-Net[7], has shown promising results in automatic segmentation for a variety of medical a­ pplications[8,9,10,11,12,13,14]. The focus of this study was to perform high-quality fully automatic artery segmentation in a deep learning approach that can be used clinically. To validate the performance of this approach, the test data were evaluated using intersection over union (IoU) and DSC, but the results were compared with the clinical tool; subjective ratings of their performances were provided by three experienced radiologists

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