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A novel cooperative approach for cardiac PET image segmentation

机译:一种新颖的心脏PET图像分割合作方法

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摘要

The main objective of this work is to develop a cooperative segmentation method for the mouse myocardium PET images based on deformable models with topological constraints and statistical analysis of the regions where the deformation contours are initialized. Two moving curves, one from inside of the left ventricle and one from the outside of the heart will be deformed to track heart boundaries. More precisely, topology constraints are incorporated to the energy functional governing the evolution of the contours to avoid any collision while allowing them to compete against each other until stabilization. First, we locate the heart, which is the region of interest (ROI) for our study, using level sets with high internal energy initialized from the extremities of the image. It is followed by a Bayesian classification and the application of the mean shift clustering algorithm to locate the center of the left ventricle region. This is where a second contour (interior contour) is initialized. The coupled contours allow to detect the correct myocardial boundaries and compute a number of useful quantities such as the ejection-fraction of the left ventricle and the myocardium wall thickness. The model was applied successfully to the automatic segmentation of the PET images of a mouse myocardium as measured by the Sherbrooke LabPET scanner.
机译:这项工作的主要目的是基于具有拓扑约束的可变形模型以及对变形轮廓初始化区域的统计分析,开发一种用于小鼠心肌PET图像的协作分割方法。两条运动曲线将变形以跟踪心脏边界,其中一条运动从左心室内部,另一条运动从心脏外部。更准确地说,将拓扑约束合并到控制轮廓演变的能量功能中,以避免任何碰撞,同时允许它们相互竞争直到稳定。首先,我们使用从图像末端初始化的具有高内部能量的水平集来定位心脏,这是我们研究的目标区域(ROI)。其次是贝叶斯分类和均值漂移聚类算法在左心室区域中心的定位。在此初始化第二轮廓(内部轮廓)。耦合的轮廓允许检测正确的心肌边界并计算许多有用的量,例如左心室的射血分数和心肌壁厚度。该模型已成功应用于通过Sherbrooke LabPET扫描仪测量的小鼠心肌PET图像的自动分割。

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