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关联人类心力衰竭中的基因表达与功能网络数据。

Linking gene expression and functional network data in human heart failure.

作者信息

Camargo Anyela, Azuaje Francisco

机构信息

School of Computing and Mathematics, University of Ulster at Jordanstown, Newtownabbey, Northern Ireland, United Kingdom.

出版信息

PLoS One. 2007 Dec 19;2(12):e1347. doi: 10.1371/journal.pone.0001347.

Abstract

BACKGROUND

Gene expression profiling and the analysis of protein-protein interaction (PPI) networks may support the identification of disease bio-markers and potential drug targets. Thus, a step forward in the development of systems approaches to medicine is the integrative analysis of these data sources in specific pathological conditions. We report such an integrative bioinformatics analysis in human heart failure (HF). A global PPI network in HF was assembled, which by itself represents a useful compendium of the current status of human HF-relevant interactions. This provided the basis for the analysis of interaction connectivity patterns in relation to a HF gene expression data set.

RESULTS

Relationships between the significance of the differentiation of gene expression and connectivity degrees in the PPI network were established. In addition, relationships between gene co-expression and PPI network connectivity were analysed. Highly-connected proteins are not necessarily encoded by genes significantly differentially expressed. Genes that are not significantly differentially expressed may encode proteins that exhibit diverse network connectivity patterns. Furthermore, genes that were not defined as significantly differentially expressed may encode proteins with many interacting partners. Genes encoding network hubs may exhibit weak co-expression with the genes encoding their interacting protein partners. We also found that hubs and superhubs display a significant diversity of co-expression patterns in comparison to peripheral nodes. Gene Ontology (GO) analysis established that highly-connected proteins are likely to be engaged in higher level GO biological process terms, while low-connectivity proteins tend to be engaged in more specific disease-related processes.

CONCLUSION

This investigation supports the hypothesis that the integrative analysis of differential gene expression and PPI network analysis may facilitate a better understanding of functional roles and the identification of potential drug targets in human heart failure.

摘要

背景

基因表达谱分析以及蛋白质-蛋白质相互作用(PPI)网络分析有助于识别疾病生物标志物和潜在药物靶点。因此,医学系统方法发展的一个进步是在特定病理条件下对这些数据源进行综合分析。我们报告了一项针对人类心力衰竭(HF)的综合生物信息学分析。构建了HF中的全局PPI网络,其本身代表了与人类HF相关相互作用现状的有用汇总。这为分析与HF基因表达数据集相关的相互作用连接模式提供了基础。

结果

建立了基因表达差异的显著性与PPI网络中连接度之间的关系。此外,分析了基因共表达与PPI网络连接性之间的关系。高度连接的蛋白质不一定由显著差异表达的基因编码。未显著差异表达的基因可能编码表现出不同网络连接模式的蛋白质。此外,未被定义为显著差异表达的基因可能编码具有许多相互作用伙伴的蛋白质。编码网络枢纽的基因可能与其相互作用蛋白伙伴的编码基因共表达较弱。我们还发现,与外围节点相比,枢纽和超级枢纽表现出显著多样的共表达模式。基因本体(GO)分析表明,高度连接的蛋白质可能参与更高层次的GO生物学过程术语,而低连接性蛋白质往往参与更具体的疾病相关过程。

结论

本研究支持这样的假设,即差异基因表达和PPI网络分析的综合分析可能有助于更好地理解人类心力衰竭中的功能作用并识别潜在药物靶点。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/70ef/2147076/88d6d475a9cd/pone.0001347.g001.jpg

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