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利用多尺度图扩散在交互网络环境中检测复发性基因突变。

Detecting recurrent gene mutation in interaction network context using multi-scale graph diffusion.

机构信息

Delft Bioinformatics Lab, Delft University of Technology, Delft, The Netherlands.

出版信息

BMC Bioinformatics. 2013 Jan 23;14:29. doi: 10.1186/1471-2105-14-29.

DOI:10.1186/1471-2105-14-29
PMID:23343428
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC3626877/
Abstract

BACKGROUND

Delineating the molecular drivers of cancer, i.e. determining cancer genes and the pathways which they deregulate, is an important challenge in cancer research. In this study, we aim to identify pathways of frequently mutated genes by exploiting their network neighborhood encoded in the protein-protein interaction network. To this end, we introduce a multi-scale diffusion kernel and apply it to a large collection of murine retroviral insertional mutagenesis data. The diffusion strength plays the role of scale parameter, determining the size of the network neighborhood that is taken into account. As a result, in addition to detecting genes with frequent mutations in their genomic vicinity, we find genes that harbor frequent mutations in their interaction network context.

RESULTS

We identify densely connected components of known and putatively novel cancer genes and demonstrate that they are strongly enriched for cancer related pathways across the diffusion scales. Moreover, the mutations in the clusters exhibit a significant pattern of mutual exclusion, supporting the conjecture that such genes are functionally linked. Using multi-scale diffusion kernel, various infrequently mutated genes are found to harbor significant numbers of mutations in their interaction network neighborhood. Many of them are well-known cancer genes.

CONCLUSIONS

The results demonstrate the importance of defining recurrent mutations while taking into account the interaction network context. Importantly, the putative cancer genes and networks detected in this study are found to be significant at different diffusion scales, confirming the necessity of a multi-scale analysis.

摘要

背景

阐明癌症的分子驱动因素,即确定癌症基因及其失调的途径,是癌症研究中的一个重要挑战。在这项研究中,我们旨在通过利用蛋白质-蛋白质相互作用网络中编码的网络邻域来识别频繁突变基因的途径。为此,我们引入了一种多尺度扩散核,并将其应用于大量的鼠类逆转录病毒插入诱变数据。扩散强度起着尺度参数的作用,决定了所考虑的网络邻域的大小。因此,除了检测基因组附近频繁突变的基因外,我们还发现了在其相互作用网络背景中频繁突变的基因。

结果

我们确定了已知和推定的新癌症基因的密集连接组件,并证明它们在整个扩散尺度上强烈富集了癌症相关途径。此外,簇中的突变表现出明显的相互排斥模式,支持了这些基因在功能上相互关联的假设。使用多尺度扩散核,在相互作用网络邻域中发现了许多突变频率较低的基因。其中许多是众所周知的癌症基因。

结论

研究结果表明,在考虑相互作用网络背景的同时定义反复突变的重要性。重要的是,在这项研究中检测到的假定癌症基因和网络在不同的扩散尺度上被发现具有显著意义,证实了多尺度分析的必要性。

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