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Joint nonparametric alignment for analyzing spatial gene expression patterns in Drosophila imaginal discs

机译:联合非参数比对分析果蝇假想盘中的空间基因表达模式

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To compare spatial patterns of gene expression, one must analyze a large number of images as current methods are only able to measure a small number of genes at a time. Bringing images of corresponding tissues into alignment is a critical first step in making a meaningful comparative analysis of these spatial patterns. Significant image noise and variability in the shapes make it hard to pick a canonical shape model. In this paper, we address these problems by combining segmentation and unsupervised shape learning algorithms. We first segment images to acquire structures of interest, then jointly align the shapes of these acquired structures using an unsupervised nonparametric maximum likelihood algorithm along the lines of 'congealing' (E. G. Miller et al., 2000), while simultaneously learning the underlying shape model and associated transformations. The learned transformations are applied to corresponding images to bring them into alignment in one step. We demonstrate the results for images of various classes of Drosophila imaginal discs and discuss the methodology used for a quantitative analysis of spatial gene expression patterns.
机译:为了比较基因表达的空间模式,必须分析大量图像,因为当前方法只能一次测量少量基因。使相应组织的图像对齐是对这些空间模式进行有意义的比较分析的关键的第一步。显着的图像噪声和形状的可变性使得很难选择规范的形状模型。在本文中,我们通过结合分割和无监督的形状学习算法来解决这些问题。我们首先对图像进行分割以获取感兴趣的结构,然后使用无监督的非参数最大似然算法沿着“凝结”的路线(EG Miller等,2000)联合对齐这些获取的结构的形状,同时学习基础的形状模型以及相关的转换。将学习到的变换应用于相应的图像,以便一步一步将它们对齐。我们证明了果蝇的虚像光盘的各种类别的图像的结果,并讨论了用于空间基因表达模式的定量分析的方法。

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