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Domain-oriented functional analysis based on expression profiling

机译:基于表达式分析的面向领域的功能分析

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Background Co-regulation of genes may imply involvement in similar biological processes or related function. Many clusters of co-regulated genes have been identified using microarray experiments. In this study, we examined co-regulated gene families using large-scale cDNA microarray experiments on the human transcriptome. Results We present a simple model, which, for each probe pair, distills expression changes into binary digits and summarizes the expression of multiple members of a gene family as the Family Regulation Ratio. The set of Family Regulation Ratios for each protein family across multiple experiments is called a Family Regulation Profile. We analyzed these Family Regulation Profiles using Pearson Correlation Coefficients and derived a network diagram portraying relationships between the Family Regulation Profiles of gene families that are well represented on the microarrays. Our strategy was cross-validated with two randomly chosen data subsets and was proven to be a reliable approach. Conclusion This work will help us to understand and identify the functional relationships between gene families and the regulatory pathways in which each family is involved. Concepts presented here may be useful for objective clustering of protein functions and deriving a comprehensive protein interaction map. Functional genomic approaches such as this may also be applicable to the elucidation of complex genetic regulatory networks.
机译:背景基因的共调节可能暗示参与相似的生物学过程或相关功能。使用微阵列实验已经鉴定出许多共同调节的基因簇。在这项研究中,我们检查了人类转录组上使用大规模cDNA微阵列实验的共同调控的基因家族。结果我们提出了一个简单的模型,该模型将每个探针对的表达变化提炼为二进制数字,并将基因家族多个成员的表达总结为家族调节比。在多个实验中,每个蛋白质家族的家族调节比的集合称为家族调节谱。我们使用皮尔逊相关系数分析了这些家族调控图谱,并得出了描绘在微阵列上很好表示的基因家族的家族调控图谱之间关系的网络图。我们的策略通过两个随机选择的数据子集进行交叉验证,并且被证明是一种可靠的方法。结论这项工作将帮助我们理解和识别基因家族与每个家族参与的调控途径之间的功能关系。这里介绍的概念可能对蛋白质功能的客观聚类和得出全面的蛋白质相互作用图很有用。诸如此类的功能基因组方法也可能适用于阐明复杂的遗传调控网络。

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