Fully automated segmentation of coronary lumen based on the directional minimal path and image fusion

Liu Liu, Yukao Yao, Ning Sun, G. Han
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引用次数: 1

Abstract

The segmentation of coronary lumen is a challenging but important task in clinical application of cardiac computed tomography (CTA). In this paper, a new method is proposed to segment the coronary lumen in a fully automatic manner. This method is based on the directional minimal path and the level-set segmentation in the 2D fused image. The directional minimal path is first used automatically to track the coronary centerlines of the main branches, which provides the center location of the coronary lumen. Then, based on the coronary centerline, the cross-sectional planes are calculated in the 3D CTA images. In order to increase the successful rate of the lumen segmentation, the gray-filtered and vesselness-enhanced images are calculated respectively in the cross-sectional planes and the 3D stacking of the cross-sectional planes. And, the two enhanced images are fused to generate the fused image. Finally, the level-set algorithm is used to segment the coronary lumen in the cross-sectional planes of the fused image. The proposed method is validated by segmenting the lumen of the three main coronary branches. The DICE (Dice coefficients) are 83.2% (RCA), 81.7% (LAD) and 83.5% (LCX), respectively.
基于定向最小路径和图像融合的冠状动脉腔全自动分割
冠状动脉腔的分割是心脏计算机断层扫描(CTA)临床应用中一项具有挑战性但又十分重要的任务。本文提出了一种全自动分割冠状动脉腔的新方法。该方法基于二维融合图像的定向最小路径和水平集分割。首先使用定向最小路径自动跟踪主要分支的冠状动脉中心线,从而提供冠状动脉管腔的中心位置。然后,基于冠状动脉中心线,计算三维CTA图像的横切面;为了提高管腔分割的成功率,分别在横截面上对灰度滤波后的图像和血管度增强后的图像进行计算,并对横截面的三维叠加进行计算。将两幅增强图像进行融合,生成融合图像。最后,利用水平集算法在融合图像的横切面上分割出冠状动脉腔。通过分割三个主要冠状动脉分支的管腔,验证了所提出的方法。DICE (DICE系数)分别为83.2% (RCA)、81.7% (LAD)和83.5% (LCX)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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