Gladilin Evgeny
Division of Theoretical Bioinformatics, German Cancer Research Center, Berliner Str. 41, 69120 Heidelberg, Germany.
BioQuant and IPMB, University Heidelberg, Im Neuenheimer Feld 267, 69120 Heidelberg, Germany.
PLoS One. 2017 Jan 31;12(1):e0170953. doi: 10.1371/journal.pone.0170953. eCollection 2017.
Malignant transformation is known to involve substantial rearrangement of the molecular genetic landscape of the cell. A common approach to analysis of these alterations is a reductionist one and consists of finding a compact set of differentially expressed genes or associated signaling pathways. However, due to intrinsic tumor heterogeneity and tissue specificity, biomarkers defined by a small number of genes/pathways exhibit substantial variability. As an alternative to compact differential signatures, global features of genetic cell machinery are conceivable. Global network descriptors suggested in previous works are, however, known to potentially be biased by overrepresentation of interactions between frequently studied genes-proteins. Here, we construct a cellular network of 74538 directional and differential gene expression weighted protein-protein and gene regulatory interactions, and perform graph-theoretical analysis of global human interactome using a novel, degree-independent feature-the normalized total communicability (NTC). We apply this framework to assess differences in total information flow between different cancer (BRCA/COAD/GBM) and non-cancer interactomes. Our experimental results reveal that different cancer interactomes are characterized by significant enhancement of long-range NTC, which arises from circulation of information flow within robustly organized gene subnetworks. Although enhancement of NTC emerges in different cancer types from different genomic profiles, we identified a subset of 90 common genes that are related to elevated NTC in all studied tumors. Our ontological analysis shows that these genes are associated with enhanced cell division, DNA replication, stress response, and other cellular functions and processes typically upregulated in cancer. We conclude that enhancement of long-range NTC manifested in the correlated activity of genes whose tight coordination is required for survival and proliferation of all tumor cells, and, thus, can be seen as a graph-theoretical equivalent to some hallmarks of cancer. The computational framework for differential network analysis presented herein is of potential interest for a wide range of network perturbation problems given by single or multiple gene-protein activation-inhibition.
已知恶性转化涉及细胞分子遗传格局的大量重排。分析这些改变的常用方法是还原论方法,包括找到一组紧凑的差异表达基因或相关信号通路。然而,由于内在的肿瘤异质性和组织特异性,由少数基因/通路定义的生物标志物表现出很大的变异性。作为紧凑差异特征的替代方法,可以设想遗传细胞机制的全局特征。然而,先前工作中提出的全局网络描述符可能会因频繁研究的基因-蛋白质之间相互作用的过度表征而产生偏差。在这里,我们构建了一个由74538个定向和差异基因表达加权的蛋白质-蛋白质和基因调控相互作用组成的细胞网络,并使用一种新颖的、与度无关的特征——归一化总可达性(NTC)对全球人类相互作用组进行图论分析。我们应用这个框架来评估不同癌症(BRCA/COAD/GBM)和非癌症相互作用组之间总信息流的差异。我们的实验结果表明,不同的癌症相互作用组的特征是远程NTC显著增强,这是由信息在稳健组织的基因子网络内循环产生的。尽管不同癌症类型的NTC增强源于不同的基因组图谱,但我们确定了一个由90个共同基因组成的子集,这些基因与所有研究肿瘤中升高的NTC相关。我们的本体分析表明,这些基因与增强的细胞分裂、DNA复制、应激反应以及癌症中通常上调的其他细胞功能和过程相关。我们得出结论,远程NTC的增强表现为基因的相关活性,这些基因的紧密协调是所有肿瘤细胞存活和增殖所必需的,因此,可以被视为癌症某些特征的图论等效物。本文提出的差异网络分析计算框架对于由单个或多个基因-蛋白质激活-抑制给出的广泛网络扰动问题具有潜在的意义。