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Identification of biomarkers in breast cancer metastasis by integrating protein-protein interaction network and gene expression data

机译:整合蛋白质-蛋白质相互作用网络和基因表达数据鉴定乳腺癌转移中的生物标志物

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Identification of biomarkers for breast cancer metastasis is a well studied problem. Recently, several large-scale studies used gene expression data to identify markers related to metastatic process. However, it was shown that these gene expression based markers often have low reproducibility across different data sets, for a number of reasons. These include small sample sizes compared to the number of genes, gene expression variations between individuals that do not contribute to the metastasis process, and the limitation for microarray technology being unable to detect changes beyond transcriptional level. Here a graph-theoretical approach based on the topology of protein-protein interaction (PPI) networks is proposed for biomarker discovery. The idea is to identify a set of genes that give connectivity to differentially expressed (DE) genes in a PPI network, based on the key observation that biomarkers may provide functional linkage to DE genes in PPI networks. Our approach is applied to two breast cancer microarray datasets for biomarker discovery. Those biomarkers have a significant number of known cancer susceptibility genes among them and are significantly enriched in biological processes and pathways that are involved in carcinogenic process. Furthermore, markers selected by our method have a higher stability across the two datasets than in the previous studies. Therefore, the approach described in this study is a new way to identify novel biomarkers for cancer metastasis and can potentially improve the understanding of carcinogenesis dynamics.
机译:乳腺癌转移的生物标志物的鉴定是一个研究充分的问题。最近,一些大规模的研究使用基因表达数据来鉴定与转移过程有关的标志物。然而,由于多种原因,表明这些基于基因表达的标志物在不同数据集之间通常具有低再现性。这些包括与基因数量相比较小的样本量,个体之间基因表达的变化,这些基因表达对转移过程无贡献,以及微阵列技术的局限性无法检测到超出转录水平的变化。在这里,提出了一种基于蛋白质-蛋白质相互作用(PPI)网络拓扑的图论方法来进行生物标记物发现。这个想法是基于对生物标记物可能提供与PPI网络中DE基因功能连接的关键观察结果,确定一组基因,这些基因与PPI网络中的差异表达(DE)基因具有连通性。我们的方法被应用于两个乳腺癌微阵列数据集的生物标志物发现。这些生物标记中有许多已知的癌症易感基因,并且在致癌过程中涉及的生物学过程和途径中显着丰富。此外,通过我们的方法选择的标记在两个数据集中具有比以前的研究更高的稳定性。因此,本研究中描述的方法是鉴定癌症转移的新生物标志物的一种新方法,并且可以潜在地增进对致癌动力学的理解。

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