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首页> 外文期刊>Microcirculation: The official journal of the Microcirculatory Society >Flow visualization tools for image analysis of capillary networks.
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Flow visualization tools for image analysis of capillary networks.

机译:用于毛细管网络图像分析的流量可视化工具。

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Objective: Video recordings of red blood cell (RBC) flow through capillary networks contain a considerable amount of information pertaining to oxygen transport through the microcirculation. Image analysis of these video recordings has been widely used to determine RBC dynamics (velocity, lineal density and supply rate) and oxygenation (Brunner et al., 2000; Ellis et al., 1990, 1992; Ellsworth et al., 1987; Klyscz et al., 1997; Pries 1988). However, not all capillaries in a given field of view are suitable for image analysis. Typically, capillary segments that are relatively straight and in sharp focus, and exhibit flow of individual RBCs that are well separated by plasma gaps, are good candidates for analysis. We have developed several image processing tools to aid in the selection of such capillaries for analysis and to obtain quick overviews of RBC flow through the microcirculation. Methods: Burgess et al. (Microcirc. 2:75, 1995) and Burkell et al. (Annals Biomed. Eng. 24:1, 1996; J. Vasc. Res. 35:2,1998) have previously introduced mean and variance images to aid in the selection of capillaries for analysis. We have extended their concept and developed similar two dimensional visualization techniques for studies of RBC flow through capillary networks. Results: Five new methods of processing video data were developed. The minimum image highlights all capillaries containing RBCs in a given field of view. The maximum image identifies capillaries that exhibit high lineal density or stopped flow. The range image represents the difference between the maximum and minimum light intensity values that occur at a given pixel over a given time period, and helps to identify capillary segments that are in good focus and are perfused by RBCs and plasma. The difference image represents the cumulative sum of the square of differences in intensity values between consecutive frames and gives an indication of the frequency of passage of RBCs separated by plasma gaps. The transition image represents the number of times the intensity at a given pixel crosses a predefined threshold and indicates the number of RBCs (or trains of RBCs) that passes a given location during the observation period. Conclusions: The above flow visualization techniques are valuable tools to aid in the study of image focus, network geometry, RBC flow paths and dynamics, that can then be used in identifying capillaries for subsequent (separate) detailed analysis to provide quantitative information about RBC flow. Microcirculation (2004) 11, 39-54. doi:10.1080/10739680490266171
机译:目的:通过毛细血管网的红细胞(RBC)流动的视频记录包含大量与氧气通过微循环运输有关的信息。这些录像的图像分析已广泛用于确定RBC动态(速度,线密度和供给速率)和氧合(Brunner等,2000; Ellis等,1990,1992; Ellsworth等,1987; Klyscz)。等人,1997; Pries 1988)。但是,并非给定视野中的所有毛细管都适合图像分析。通常,相对笔直且焦点清晰的毛细管段,表现出被血浆间隙充分分隔的单个RBC的流动,是进行分析的良好候选对象。我们已经开发了几种图像处理工具,以帮助选择此类毛细管进行分析,并获得通过微循环的RBC流量的快速概览。方法:Burgess等。 (Microcirc.2:75,1995)和Burkell等。 (Annals Biomed。Eng。24:1,1996; J. Vasc。Res。35:2,1998)以前已经引入均值和方差图像,以帮助选择用于分析的毛细管。我们扩展了它们的概念并开发了类似的二维可视化技术,用于研究RBC流经毛细管网络的过程。结果:开发了五种处理视频数据的新方法。最小图像突出显示了给定视野中所有包含RBC的毛细管。最大图像可识别出具有高线密度或流动停止的毛细管。范围图像表示在给定时间段内在给定像素处出现的最大和最小光强度值之间的差异,并有助于识别聚焦良好且被RBC和血浆灌注的毛细管段。差异图像表示连续帧之间强度值差异平方的累加和,并表示由等离子间隙分隔的RBC的通过频率。过渡图像表示给定像素的强度超过预定义阈值的次数,并指示在观察期间通过给定位置的RBC(或RBC列)的数量。结论:以上流动可视化技术是有助于研究图像聚焦,网络几何,RBC流动路径和动力学的有价值的工具,然后可用于识别毛细血管以进行后续(单独)详细分析,以提供有关RBC流动的定量信息。微循环(2004)11,39-54。 doi:10.1080 / 10739680490266171

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