Center for BioInformatics and Computational Biology, Dept. of Computer Science and the University of Maryland Institute of Advanced Computer Studies (UMIACS), University of Maryland, College Park, MD, 20742, USA.
Department of Biochemistry and Molecular Biomedicine, Faculty of Biology, Universitat de Barcelona and Institut de Biomedicina de la Universitat de Barcelona (IBUB), Barcelona, Spain.
Sci Rep. 2019 Nov 28;9(1):17760. doi: 10.1038/s41598-019-54221-y.
Altered metabolism is a hallmark of cancer, but little is still known about its regulation. In this study, we measure transcriptomic, proteomic, phospho-proteomic and fluxomics data in a breast cancer cell-line (MCF7) across three different growth conditions. Integrating these multiomics data within a genome scale human metabolic model in combination with machine learning, we systematically chart the different layers of metabolic regulation in breast cancer cells, predicting which enzymes and pathways are regulated at which level. We distinguish between two types of reactions, directly and indirectly regulated. Directly-regulated reactions include those whose flux is regulated by transcriptomic alterations (890) or via proteomic or phospho-proteomics alterations (140) in the enzymes catalyzing them. We term the reactions that currently lack evidence for direct regulation as (putative) indirectly regulated (~930). Many metabolic pathways are predicted to be regulated at different levels, and those may change at different media conditions. Remarkably, we find that the flux of predicted indirectly regulated reactions is strongly coupled to the flux of the predicted directly regulated ones, uncovering a tiered hierarchical organization of breast cancer cell metabolism. Furthermore, the predicted indirectly regulated reactions are predominantly reversible. Taken together, this architecture may facilitate rapid and efficient metabolic reprogramming in response to the varying environmental conditions incurred by the tumor cells. The approach presented lays a conceptual and computational basis for mapping metabolic regulation in additional cancers.
代谢改变是癌症的一个标志,但目前对于其调控机制仍知之甚少。在这项研究中,我们在三种不同的生长条件下测量了乳腺癌细胞系(MCF7)的转录组、蛋白质组、磷酸化蛋白质组和通量组数据。我们将这些多组学数据整合到一个基因组规模的人类代谢模型中,并结合机器学习,系统地绘制了乳腺癌细胞代谢调控的不同层次,预测哪些酶和途径在哪个水平受到调控。我们区分了两种类型的反应,即直接调控和间接调控。直接调控的反应包括那些其通量受转录组改变(890)或酶催化的蛋白质组或磷酸化蛋白质组改变(140)调节的反应。我们将目前缺乏直接调控证据的反应称为(推定的)间接调控(~930)。许多代谢途径被预测在不同的水平上受到调控,并且这些途径可能在不同的培养基条件下发生变化。值得注意的是,我们发现预测的间接调控反应的通量与预测的直接调控反应的通量强烈耦合,揭示了乳腺癌细胞代谢的分层等级组织。此外,预测的间接调控反应主要是可逆的。总之,这种结构可能有助于肿瘤细胞快速有效地响应不断变化的环境条件进行代谢重编程。所提出的方法为在其他癌症中映射代谢调控奠定了概念和计算基础。