将相互作用组与疾病联系起来:基于网络的乳腺癌转移性复发分析

M. Garcia, Olivier Stahl, P. Finetti, D. Birnbaum, F. Bertucci, Ghislain Bidaut
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引用次数: 11

摘要

分子生物学中高通量基因表达谱技术(DNA微阵列)的引入及其在临床中的预期应用已经允许设计与特定临床条件或特定临床环境中患者结果相关的预测特征。然而,已经表明,这种签名容易出现几个问题:(i)它们非常不稳定,并且与选择进行培训的患者集有关;(ii)数据拓扑结构在数据维度方面存在问题(样本太少,变量太多);(三)诸如癌症之类的疾病是由目前的分析方法无法轻易检测到的微妙的调控不当引起的。为了找到一个可用于多个数据集的预测特征,在多个基因表达数据集(共整合了2,464个乳腺癌肿瘤)上设计了一种大规模蛋白质-蛋白质相互作用数据(人类相互作用组)的叠加策略,以找到相互作用组(子网络)中预测乳腺癌转移性复发的判别区域。这种相互作用组-转录组集成(ITI)方法被应用于几个乳腺癌DNA微阵列数据集,并允许提取由119个子网络组成的特征。所有的子网都存储在一个关系数据库中,并与Gene Ontology和NCBI EntrezGene注释数据库相连接进行分析。对注释的探索表明,这组子网络反映了与癌症相关的几个生物学过程,是建立基于网络的特征来预测乳腺癌转移性复发的一个很好的候选者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Linking Interactome to Disease: A Network-Based Analysis of Metastatic Relapse in Breast Cancer
The introduction of high-throughput gene expression profiling technologies (DNA microarrays) in molecular biology and their expected applications to the clinic have allowed the design of predictive signatures linked to a particular clinical condition or patient outcome in a given clinical setting. However, it has been shown that such signatures are prone to several problems: (i) they are heavily unstable and linked to the set of patients chosen for training; (ii) data topology is problematic with regard to the data dimensionality (too many variables for too few samples); (iii) diseases such as cancer are provoked by subtle misregulations which cannot be readily detected by current analysis methods. To find a predictive signature generalizable for multiple datasets, a strategy of superimposition of a large scale of proteinprotein interaction data (human interactome) was devised over several gene expression datasets (a total of 2,464 breast cancer tumors were integrated), to find discriminative regions in the interactome (subnetworks) predicting metastatic relapse in breast cancer. This method, Interactome-Transcriptome Integration (ITI), was applied to several breast cancer DNA microarray datasets and allowed the extraction of a signature constituted by 119 subnetworks. All subnetworks have been stored in a relational database and linked to Gene Ontology and NCBI EntrezGene annotation databases for analysis. Exploration of annotations has shown that this set of subnetworks reflects several biological processes linked to cancer and is a good candidate for establishing a network-based signature for prediction of metastatic relapse in breast cancer.
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