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Semi-automated extraction of canine left ventricular purkinje fiber network

机译:犬左室浦肯野纤维网络的半自动提取

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The purkinje fiber network (PFN) is a very important conduction system in the endocardial surface of the ventricle, whose structure is crucial in ventricular physiopathology. Traditional medical imaging methods, such as magnetic resonance imaging (MRI) or computed tomography (CT), however, fail to reveal the detailed PFN information. An alternative is to model PFN as idealized self-similar fractal tree. Recently, a LLE-based method is proposed for the construction of the purkinje system in the canine left ventricle (LV), where curvilinear PFN structures are first detected from 2D image and then mapped to 3D surface. This method, however, adopts a simple local thresholding method to extract the curvilinear PFN structure, and thus many interactions are required to obtain the satisfactory detection result. In this work, we propose a semi-automated method for extracting both the location and the width information from the dissection image of the endocardial surface of the canine left ventricle, which is more feasible and adaptive for curvilinear PFN structure extraction.
机译:浦肯野纤维网络(PFN)是心室心内膜表面非常重要的传导系统,其结构在心室生理病理学中至关重要。但是,传统的医学成像方法(例如磁共振成像(MRI)或计算机断层扫描(CT))无法显示详细的PFN信息。另一种方法是将PFN建模为理想化的自相似分形树。最近,提出了一种基于LLE的方法在犬左心室(LV)中构建Purkinje系统,该方法首先从2D图像中检测出曲线的PFN结构,然后将其映射到3D表面。然而,该方法采用简单的局部阈值方法来提取曲线PFN结构,因此需要许多相互作用才能获得令人满意的检测结果。在这项工作中,我们提出了一种半自动方法,该方法可以从犬左心室心内膜表面的解剖图像中提取位置和宽度信息,这对于曲线PFN结构提取更加可行和适应。

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