Title of article :
Patient-Specific Computational Models of Coronary Arteries Using Monoplane X-Ray Angiograms
Author/Authors :
Zifan, Ali School of Medicine - University of California - San Diego, USA , Liatsis, Panos Department of Electrical Engineering - The Petroleum Institute - Abu Dhabi, UAE
Abstract :
Coronary artery disease (CAD) is the most common type of heart disease in western countries. Early detection and diagnosis of
CAD is quintessential to preventing mortality and subsequent complications. We believe hemodynamic data derived from patientspecific computational models could facilitate more accurate prediction of the risk of atherosclerosis.We introduce a semiautomated
method to build 3D patient-specific coronary vessel models from 2D monoplane angiogram images. The main contribution of the
method is a robust segmentation approach using dynamic programming combined with iterative 3D reconstruction to build 3D
mesh models of the coronary vessels. Results indicate the accuracy and robustness of the proposed pipeline. In conclusion, patientspecific modelling of coronary vessels is of vital importance for developing accurate computational flow models and studying
the hemodynamic effects of the presence of plaques on the arterial walls, resulting in lumen stenoses, as well as variations in the
angulations of the coronary arteries.
Keywords :
Patient-Specific , X-Ray , Coronary , CAD
Journal title :
Computational and Mathematical Methods in Medicine