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Automatic Graph-Based Modeling of Brain Microvessels Captured With Two-Photon Microscopy

机译:基于双光子显微镜捕获的脑微血管的基于图的自动建模

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Graph models of cerebral vasculature derived from two-photon microscopy have shown to be relevant to study brain microphysiology. Automatic graphing of these microvessels remain problematic due to the vascular network complexity and two-photon sensitivity limitations with depth. In this paper, we propose a fully automatic processing pipeline to address this issue. The modeling scheme consists of a fully-convolution neural network to segment microvessels, a three-dimensional surface model generator, and a geometry contraction algorithm to produce graphical models with a single connected component. Based on a quantitative assessment using NetMets metrics, at a tolerance of 60 mu m, false negative and false positive geometric error 19 rates are 3.8% and 4.2%, respectively, whereas false nega- 20 tive and false positive topological error rates are 6.1% and 4.5%, respectively. Our qualitative evaluation confirms the efficiency of our scheme in generating useful and accurate graphical models.
机译:来自双光子显微镜的脑血管系统图模型已显示与研究脑微生理学有关。由于血管网络的复杂性和深度对两光子灵敏度的限制,这些微血管的自动绘图仍然存在问题。在本文中,我们提出了一个全自动处理管道来解决此问题。该建模方案包括一个用于对微血管进行分段的全卷积神经网络,一个三维表面模型生成器以及一个几何收缩算法,用于生成具有单个连接组件的图形模型。基于NetMets指标的定量评估,在60微米的容差下,假阴性和假阳性几何错误率分别为3.8%和4.2%,而假阴性和假阳性拓扑错误率分别为6.1%和6.1%。和4.5%。我们的定性评估证实了我们的方案在生成有用且准确的图形模型方面的效率。

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