Title
Automatic Segmentation of the Left Ventricle and Computation of Diagnostic Parameters Using Regiongrowing and a Statistical Model
Abstract
The manual se-mentation and analysis of high-resolution multi-slice cardiac CT datasets is both labor intensive and time consuming. Therefore it is necessary to supply the cardiologist with powerful software tools to segment the mvocardium and compute the relevant diagnostic parameters. In this work we present an semi-automatic cardiac segmentation approach with minimal user interaction. It is based on a combination of an adaptive slice-based regiongrowing and a modified Active Shape Model (ASM). Starting with a single manual click point in the ascending aorta, the aorta. the left atrium and the left ventricle act segmented with the slice-based adaptive regiongrowing. The approximate position of the aortic and mitral valve as well as the principal axes of the left ventricle (LV) are determined. To prevent the regiongrowing from draining into neighboring anatomical structures via CT artifacts, we implemented a draining control by examining a cubic region around the currently processed voxel. Additionally, we use moment-based parameters to integrate simple anatomical knowledge into the re-ion-rowing process. Using the results of the preceding regiongrowing process, a ventricle-centric and normalized coordinate system is established which is used to adapt a previously trained ASM to the image, using an iterative multi-resolution approach. After fitting the ASM to the image, we can use the generated model-points to create an exact surface model of the left ventricular myocardium for visualization and for computing the diagnostically relevant parameters, like the ventricular blood volume and the myocardial wall thickness.
Year
DOI
Venue
2005
10.1117/12.595071
PROCEEDINGS OF THE SOCIETY OF PHOTO-OPTICAL INSTRUMENTATION ENGINEERS (SPIE)
Keywords
Field
DocType
segmentation,cardiovascular,deformable models
Voxel,Biomedical engineering,Coordinate system,Active shape model,Computer vision,Segmentation,Visualization,Ventricle,Artificial intelligence,Engineering,Mitral valve,Ascending aorta
Conference
Volume
ISSN
Citations 
5747
0277-786X
12
PageRank 
References 
Authors
1.29
8
5
Name
Order
Citations
PageRank
Dominik Fritz1446.93
Daniel Rinck2686.57
Roland Unterhinninghofen3217.85
Rüdiger Dillmann443343.19
Michael Scheuering534523.76