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Automation of Hessian-Based Tubularity Measure Response Function in 3D Biomedical Images

机译:基于Hessian的3D生物医学图像中管状度测量响应函数的自动化

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摘要

The blood vessels and nerve trees consist of tubular objects interconnected into a complex tree- or web-like structure that has a range of structural scale 5 μm diameter capillaries to 3 cm aorta. This large-scale range presents two major problems; one is just making the measurements, and the other is the exponential increase of component numbers with decreasing scale. With the remarkable increase in the volume imaged by, and resolution of, modern day 3D imagers, it is almost impossible to make manual tracking of the complex multiscale parameters from those large image data sets. In addition, the manual tracking is quite subjective and unreliable. We propose a solution for automation of an adaptive nonsupervised system for tracking tubular objects based on multiscale framework and use of Hessian-based object shape detector incorporating National Library of Medicine Insight Segmentation and Registration Toolkit (ITK) image processing libraries.
机译:血管和神经树由相互连接成复杂的树状或网状结构的管状物体组成,该结构的结构尺度范围是直径5μm的毛细管至3cm的主动脉。这种大范围存在两个主要问题。一种只是进行测量,另一种是组件数量随规模减小而呈指数增加。随着现代3D成像器成像量的增加和分辨率的显着提高,几乎不可能从那些大型图像数据集中手动跟踪复杂的多尺度参数。此外,手动跟踪非常主观且不可靠。我们提出了一种基于多尺度框架并结合基于国家医学分析和注册工具包(ITK)图像处理库的基于Hessian的对象形状检测器来跟踪管状对象的自适应非监督系统的自动化解决方案。

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