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Conditional random fields for tubulin-microtubule segmentation in cryo-electron tomography

机译:低温电子层析成像中微管蛋白-微管分割的条件随机场

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Cryo-electron tomography allows 3D observation of biological specimens in their native and hydrated state at high spatial resolution (4-5 nanometers). Traditionally cryo-tomograms have very low signal-to-noise ratios and conventional image segmentation methods are limited yet. In this paper, we formulate the segmentation problem of both small tubulin aggregates and microtubules against the background as a two class labeling problem in the Conditional Random Field framework. In our approach, we exploit image patches to take into account spatial contexts and to improve robustness to noise. Because of the contrast anisotropy in the specimen thickness direction, each 2D section of the 3D tomogram is segmented separately with an optional update of reference patches. This method is evaluated on synthetic data and on cryo-electron tomograms of in vitro microtubules.
机译:低温电子断层扫描技术可以以高空间分辨率(4-5纳米)对天然和水合状态的生物样本进行3D观察。传统的冷冻断层图具有非常低的信噪比,并且传统的图像分割方法仍然受到限制。在本文中,我们将有条件的小微管蛋白聚集体和微管的分割问题公式化为条件随机场框架中的两类标记问题。在我们的方法中,我们利用图像补丁来考虑空间环境并提高对噪声的鲁棒性。由于样品厚度方向上的对比度各向异性,因此3D断层图的每个2D截面都可以通过可选的参考斑块更新进行单独分割。根据合成数据和体外微管的冷冻电子断层图评估该方法。

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