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BEST: A Novel Computational Approach for Comparing Gene Expression Patterns From Early Stages of Drosophila melanogaster Development

机译:最佳:一种比较果蝇早期发育阶段的基因表达模式的新颖计算方法

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Embryonic gene expression patterns are an indispensable part of modern developmental biology. Currently, investigators must visually inspect numerous images containing embryonic expression patterns to identify spatially similar patterns for inferring potential genetic interactions. The lack of a computational approach to identify pattern similarities is an impediment to advancement in developmental biology research because of the rapidly increasing amount of available embryonic gene expression data. Therefore, we have developed computational approaches to automate the comparison of gene expression patterns contained in images of early stage Drosophila melanogaster embryos (prior to the beginning of germ-band elongation); similarities and differences in gene expression patterns in these early stages have extensive developmental effects. Here we describe a basic expression search tool (BEST) to retrieve best matching expression patterns for a given query expression pattern and a computational device for gene interaction inference using gene expression pattern images and information on the associated genotypes and probes. Analysis of a prototype collection of Drosophila gene expression pattern images is presented to demonstrate the utility of these methods in identifying biologically meaningful matches and inferring gene interactions by direct image content analysis. In particular, the use of BEST searches for gene expression patterns is akin to that of BLAST searches for finding similar sequences. These computational developmental biology methodologies are likely to make the great wealth of embryonic gene expression pattern data easily accessible and to accelerate the discovery of developmental networks.
机译:胚胎基因表达模式是现代发育生物学必不可少的部分。当前,研究人员必须目视检查包含胚胎表达模式的大量图像,以识别空间相似的模式以推断潜在的遗传相互作用。由于可用胚胎基因表达数据的数量迅速增加,缺乏识别模式相似性的计算方法成为发展生物学研究进展的一个障碍。因此,我们已经开发出计算方法来自动化黑腹果蝇早期胚胎(在种带伸长开始之前)的图像中包含的基因表达模式的比较。在这些早期阶段,基因表达模式的异同具有广泛的发展影响。在这里,我们描述了一种基本的表达搜索工具(BEST),用于检索给定查询表达模式的最佳匹配表达模式,以及使用基因表达模式图像以及有关基因型和探针的信息进行基因相互作用推断的计算设备。果蝇基因表达模式图像的原型集合的分析是为了证明这些方法在鉴定生物学上有意义的匹配并通过直接图像内容分析推断基因相互作用中的效用。特别是,使用BEST搜索来寻找基因表达模式类似于使用BLAST搜索来寻找相似序列。这些计算发展生物学方法论很可能使大量丰富的胚胎基因表达模式数据易于获得,并加速发现发展网络。

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