TY - EJOU AU - Huang, Xueying AU - Yang, Chun AU - Zheng, Jie AU - Woodard, Pamela K. AU - Tang, Dalin TI - Automated Segmentation of Atherosclerotic Plaque Using Bayes Classifier for Multi-Contrast In Vivo and Ex Vivo MR Images T2 - The International Conference on Computational \& Experimental Engineering and Sciences PY - 2007 VL - 1 IS - 1 SN - 1933-2815 AB - Atherosclerotic plaques may rupture without warning and cause acute cardiovascular syndromes such as heart attack and stroke. Accurate identification of plaque components will improve the accuracy and reliability of computational models. In this article, we present a segmentation method using a cluster analysis technique to quantify and classify plaque components from magnetic resonance images (MRI). 3D in vivo and ex vivo multi-contrast (T1-, proton density-, and T2-weighted) MR Images were acquired from a patient of cardiovascular disease. Normal distribution Bayes classifier was performed on ex vivo and in vivo MR Images respectively. The resulting segmentation obtained from cluster analysis showed very good agreement with histological data. 3D visualization of the plaque was presented. Combination of in vivo and ex vivo MRI data enabled us to quantify the shrinkage between the ex vivo plaque sample and its in vivo state. For this patient, the average shrinkage is 9.14% at cross section and 33.33% in axial direction. This information is essential to determining proper initial stress/strain conditions for computational plaque models. KW - DO - 10.3970/icces.2007.001.029