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Intelligent Topological Differential Gene Networks

机译:智能拓扑差异基因网络

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摘要

Microarray gene expression profiles are frequently explored to understand the causal factors associated with some disease. To date, most of the research being conducted is restricted upon comparison of expression values across more than one condition or the discovery of genes having altered interaction levels with neighbours across conditions. Therefore, differential expression (DE), gene correlation and co-expression have been intensively studied using microarray gene expression profiles. However, in the recent past the focus has been shifted towards conglomeration of differential expression and differential connectivity properties to gain a better insight of the problem, such as investigating the topological overlap (TO) of the network formed by DE genes using the generalized topological overlap measure (GTOM). In this work, we explore through the unweighted–TO networks which requires selection of a smart threshold to transform the GTOM structure into a differential network. The essence of our work lies in the generation of a series of GTOM threshold pairs across different conditions from which the best threshold pair for a network (across different conditions) is selected by comparing the cumulative effect of TO and p-value obtained from the series of threshold pairs.
机译:经常探索微阵列基因表达谱,以了解与某些疾病相关的因果因素。迄今为止,正在进行的大多数研究被限制在多个条件上的表达值或发现具有跨条件邻居的相互作用水平改变的基因的比较。因此,使用微阵列基因表达谱进行了鉴别表达(DE),基因相关和共同表达。然而,在最近的过去,焦点已经朝向差分表达和差分连接性能的集成,以获得问题的更好的识别,例如使用广义拓扑重叠来研究由DE基因形成的网络的拓扑重叠(至)测量(gtom)。在这项工作中,我们通过未加权到网络探索,需要选择智能阈值以将GTOM结构转换为差分网络。我们的作品的本质在于在不同条件下产生一系列GTOM阈值对,通过比较从系列中获得的累积效果和P值来选择网络的最佳阈值对(跨不同条件)的不同条件阈值对。

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