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Finding Teams in Graphs and Its Application to Spatial Gene Cluster Discovery

机译:在图表中寻找团队及其在空间基因群集发现中的应用

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Analysis of the Diversity and Dynamics of Genomes", Bielefeld University, Bielefeld, Germany Gene clusters are sets of genes in a genome with associated functionality. Often, they exhibit close proximity to each other on the chromosome which can be beneficial for their common regulation. A popular strategy for finding gene clusters is to exploit the close proximity by identifying sets of genes that are consistently close to each other on their respective chromosomal sequences across several related species. Yet, even more than gene proximity on linear DNA sequences, the spatial conformation of chromosomes may provide a pivotal indicator for common regulation and/or associated function of sets of genes. We present the first gene cluster model capable of handling spatial data. Our model extends a popular computational model for gene cluster prediction, called S-teams, from sequences to general graphs. In doing so, δ-teams are single-linkage clusters of a set of shared vertices between two or more undirected weighted graphs such that the largest link in the cluster does not exceed a given threshold 5 in any input graph. We apply our model to human and mouse data to find spatial gene clusters, i.e., gene sets with functional associations that exhibit close neighborhood in the spatial conformation of the chromosome across species.
机译:基因组的多样性和动态分析“,Bielefeld大学,Bielefeld,Bielefeld,德国基因集群是在基因组中具有相关功能的基因组。通常,它们在染色体上彼此靠近邻近,这对其共同调节有益。用于寻找基因簇的流行策略是通过识别彼此跨越几种相关物种的各自的染色体序列彼此彼此彼此彼此彼此的基因进行紧密接近。然而,甚至超过基因邻近线性DNA序列,空间构象染色体可以为基因组的共同调节和/或相关功能提供枢转指示符。我们介绍了能够处理空间数据的第一个基因集群模型。我们的模型扩展了基因集群预测的流行计算模型,称为S-Team,从序列到一般图。这样做,Δ团队是TW之间的一组共享顶点的单连锁集群o或更多向的加权图,使得簇中的最大链路在任何输入图中不超过给定阈值5。我们将模型应用于人和小鼠数据以查找空间基因集群,即基因集,具有功能关联的功能关联,其在跨种类的染色体的空间构象中表现出亲密的邻域。

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