首页> 外文会议>2011 8th IEEE International Symposium on Biomedical Imaging: From Nano to Macro >Automated extraction of blood vessel networks from 3D microscopy image stacks via multi-scale principal curve tracing
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Automated extraction of blood vessel networks from 3D microscopy image stacks via multi-scale principal curve tracing

机译:通过多尺度主曲线跟踪从3D显微镜图像堆栈中自动提取血管网络

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Blood vessel segmentation, that is, extraction of the center lines and corresponding local cylinder radii are important for the study of vascular diseases, and in the brain also important for the modeling and understanding of relationships between hemodynamics and electrical neural activity. Several image processing methods have been proposed for vessel extraction in many domains including those that explore the use of pattern recognition techniques, model-based approaches, tracking based approaches, artificial based approaches, neural network based approaches, and miscellaneous tube-like object detection approaches. In this paper, we propose a ridge tracing approach based on recently developed principal curve (PC) projection and tracing algorithms for the extraction of vasculature networks in the brain from 3D microscopy image stacks. Results on mice brain imagery obtained for the purpose of studying hemodynamic effects on neural activity are promising.
机译:血管分割,即中线的提取和相应的局部圆柱半径,对于研究血管疾病很重要,在大脑中对于建模和理解血液动力学与神经电活动之间的关系也很重要。在许多领域中已经提出了几种用于血管提取的图像处理方法,包括探索模式识别技术,基于模型的方法,基于跟踪的方法,基于人工的方法,基于神经网络的方法以及各种管状物体检测方法的使用。 。在本文中,我们提出了一种基于最近开发的主曲线(PC)投影和跟踪算法的岭跟踪方法,用于从3D显微镜图像堆栈中提取大脑中的脉管系统网络。为了研究血液动力学对神经活动的影响而获得的小鼠大脑图像的结果是有希望的。

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