Paper
11 March 2011 Machine learning based vesselness measurement for coronary artery segmentation in cardiac CT volumes
Yefeng Zheng, Maciej Loziczonek, Bogdan Georgescu, S. Kevin Zhou, Fernando Vega-Higuera, Dorin Comaniciu
Author Affiliations +
Proceedings Volume 7962, Medical Imaging 2011: Image Processing; 79621K (2011) https://doi.org/10.1117/12.877233
Event: SPIE Medical Imaging, 2011, Lake Buena Vista (Orlando), Florida, United States
Abstract
Automatic coronary centerline extraction and lumen segmentation facilitate the diagnosis of coronary artery disease (CAD), which is a leading cause of death in developed countries. Various coronary centerline extraction methods have been proposed and most of them are based on shortest path computation given one or two end points on the artery. The major variation of the shortest path based approaches is in the different vesselness measurements used for the path cost. An empirically designed measurement (e.g., the widely used Hessian vesselness) is by no means optimal in the use of image context information. In this paper, a machine learning based vesselness is proposed by exploiting the rich domain specific knowledge embedded in an expert-annotated dataset. For each voxel, we extract a set of geometric and image features. The probabilistic boosting tree (PBT) is then used to train a classifier, which assigns a high score to voxels inside the artery and a low score to those outside. The detection score can be treated as a vesselness measurement in the computation of the shortest path. Since the detection score measures the probability of a voxel to be inside the vessel lumen, it can also be used for the coronary lumen segmentation. To speed up the computation, we perform classification only for voxels around the heart surface, which is achieved by automatically segmenting the whole heart from the 3D volume in a preprocessing step. An efficient voxel-wise classification strategy is used to further improve the speed. Experiments demonstrate that the proposed learning based vesselness outperforms the conventional Hessian vesselness in both speed and accuracy. On average, it only takes approximately 2.3 seconds to process a large volume with a typical size of 512x512x200 voxels.
© (2011) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Yefeng Zheng, Maciej Loziczonek, Bogdan Georgescu, S. Kevin Zhou, Fernando Vega-Higuera, and Dorin Comaniciu "Machine learning based vesselness measurement for coronary artery segmentation in cardiac CT volumes", Proc. SPIE 7962, Medical Imaging 2011: Image Processing, 79621K (11 March 2011); https://doi.org/10.1117/12.877233
Lens.org Logo
CITATIONS
Cited by 40 scholarly publications and 4 patents.
Advertisement
Advertisement
RIGHTS & PERMISSIONS
Get copyright permission  Get copyright permission on Copyright Marketplace
KEYWORDS
Arteries

Heart

Machine learning

Image segmentation

Feature extraction

Computed tomography

Computer aided design

Back to Top