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Binary Pattern Dictionary Learning for Gene Expression Representation in Drosophila Imaginal Discs

机译:二进制图案字典学习果蝇的基因表达式表示

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We present an image processing pipeline which accepts a large number of images, containing spatial expression information for thousands of genes in Drosophila imaginal discs. We assume that the gene activations are binary and can be expressed as a union of a small set of non-overlapping spatial patterns, yielding a compact representartion of the spatial activation of each gene. This lends itself well to further automatic analysis, with the hope of discovering new biological relationships. Traditionally, the images were labeled manually, which was very time consuming. The key part of our work is a binary pattern dictionary learning algorithm, that takes a set of binary images and determines a set of patterns, which can be used to represent the input images with a small error. We also describe the preprocessing phase, where input images are segmented to recover the activation images and spatially aligned to a common reference. We compare binary pattern dictionary learning to existing alternative methods on synthetic data and also show results of the algorithm on real microscopy images of the Drosophila imaginal discs.
机译:我们介绍了一种图像处理管道,其接受大量图像,其在果蝇成像盘中的数千个基因中包含空间表达信息。我们假设基因激活是二进制的并且可以表示为一小组非重叠空间模式的联合,产生每种基因的空间激活的紧凑率。这对进一步的自动分析提供了很好的影响,希望发现新的生物关系。传统上,图像手动标记,这非常耗时。我们的作品的关键部分是二进制图案字典学习算法,它采用一组二进制图像并确定一组模式,其可用于表示具有小错误的输入图像。我们还描述了预处理阶段,其中分段输入图像以恢复激活图像并空间对齐与公共参考。我们将二进制模式字典学习比较为合成数据的现有替代方法,并且还显示了果蝇的真实显微镜图像算法的结果。

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