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Three-dimensional Bayesian image analysis and confocal microscopy

机译:三维贝叶斯图像分析和共聚焦显微镜

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摘要

We report methods for tackling a challenging three-dimensional (3D) deconvolution problem arising in confocal microscopy. We fit a marked point process model for the set of cells in the sample using Bayesian methods; this produces automatic or semi-automatic segmentations showing the shape, size, orientation and spatial arrangement of objects in a sample. Importantly, the methods also provide measures of uncertainty about size and shape attributes. The 3D problem is considerably more demanding computationally than the two-dimensional analogue considered in Al-Awadhi et al. [2] due to the much larger data set and higher-dimensional descriptors for objects in the image. In using Markov chain Monte Carlo simulation to draw samples from the posterior distribution, substantial computing effort can be consumed simply in reaching the main area of support of the posterior distribution. For more effective use of computation time, we use morphological techniques to help construct an initial typical image under the posterior distribution.
机译:我们报告的方法来解决在共聚焦显微镜中产生的具有挑战性的三维(3D)解卷积问题。我们使用贝叶斯方法为样本中的单元格拟合标记点过程模型;这将产生自动或半自动分割,显示出样本中物体的形状,大小,方向和空间排列。重要的是,这些方法还提供了有关尺寸和形状属性不确定性的度量。 3D问题比Al-Awadhi等人所考虑的二维模拟要严格得多。 [2]由于图像中的对象具有更大的数据集和更高维度的描述符。在使用马尔可夫链蒙特卡罗模拟法从后验分布中提取样本时,仅在达到后验分布的主要支持区域时,便会消耗大量的计算工作量。为了更有效地利用计算时间,我们使用形态学技术来帮助构造后验分布下的初始典型图像。

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