Using the GPU and Multi-core CPU to Generate a 3D Oviduct through Feature Extraction from Histology Slides

Infinity Pub Date : 2010-09-30 DOI:10.1109/PDMC-HIBI.2010.19
M. Burkitt, D. Walker, D. Romano, A. Fazeli
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Abstract

Extracting information about the structure of biological tissue from static image data is a complex task which requires a series of computationally intensive operations. Here we present how the power of multi-core CPUs and massively parallel GPUs have been utilised to extract information about the shape, size and path followed by the mammalian oviduct, called the fallopian tube in humans, from histology images, to create a realistic 3D virtual organ for use in predictive computational models. Histology images from a mouse oviduct were processed, using a combination of GPU and multi-core CPU techniques, to identify the individual cross-sections and determine the 3D path that the tube follows through the tissue. This information was then related back to the histology images, linking the 2D cross-sections with their corresponding 3D position along the oviduct. Measurements were then taken from the images and used to computationally generate a series of linear 2D spline cross-sections for the length of the oviduct, which were bound to the 3D path of the tube using a novel particle system based technique that provides smooth resolution of self intersections and crossovers from adjacent sections. This results in a unique 3D model of the oviduct, which is based on measurements of histology slides and therefore grounded in reality. The GPU is used for the processor intensive operations of image processing and particle physics based simulations, significantly reducing the time required to generate a complete model. A set of models created using this technique is being used to investigate the influence that the 3D structure of the oviductal environment has on sperm transport and navigation.
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利用GPU和多核CPU对组织学切片进行特征提取,生成三维输卵管
从静态图像数据中提取生物组织结构信息是一项复杂的任务,需要进行一系列计算密集型的操作。在这里,我们展示了如何利用多核cpu和大规模并行gpu的能力,从组织学图像中提取有关哺乳动物输卵管(人类称为输卵管)的形状,大小和路径的信息,以创建用于预测计算模型的逼真3D虚拟器官。使用GPU和多核CPU技术对小鼠输卵管的组织学图像进行处理,以识别单个横截面并确定输卵管穿过组织的3D路径。然后将这些信息与组织学图像联系起来,将2D横截面与其沿输卵管的相应3D位置联系起来。然后从图像中进行测量,并用于计算生成一系列关于输卵管长度的线性二维样条横截面,这些横截面使用基于新型粒子系统的技术绑定到管道的3D路径上,该技术提供了自相交和相邻截面交叉的平滑分辨率。这就产生了一个独特的输卵管3D模型,它是基于组织学切片的测量结果,因此是基于现实的。GPU用于图像处理和基于粒子物理的模拟的处理器密集型操作,大大减少了生成完整模型所需的时间。使用这种技术创建的一组模型被用来研究输卵管环境的3D结构对精子运输和导航的影响。
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来源期刊
CiteScore
2.30
自引率
0.00%
发文量
26
审稿时长
10 weeks
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