Moxley Joel F, Jewett Michael C, Antoniewicz Maciek R, Villas-Boas Silas G, Alper Hal, Wheeler Robert T, Tong Lily, Hinnebusch Alan G, Ideker Trey, Nielsen Jens, Stephanopoulos Gregory
Department of Chemical Engineering, Massachusetts Institute of Technology, Cambridge, MA 02139, USA.
Proc Natl Acad Sci U S A. 2009 Apr 21;106(16):6477-82. doi: 10.1073/pnas.0811091106. Epub 2009 Apr 3.
Genome sequencing dramatically increased our ability to understand cellular response to perturbation. Integrating system-wide measurements such as gene expression with networks of protein-protein interactions and transcription factor binding revealed critical insights into cellular behavior. However, the potential of systems biology approaches is limited by difficulties in integrating metabolic measurements across the functional levels of the cell despite their being most closely linked to cellular phenotype. To address this limitation, we developed a model-based approach to correlate mRNA and metabolic flux data that combines information from both interaction network models and flux determination models. We started by quantifying 5,764 mRNAs, 54 metabolites, and 83 experimental (13)C-based reaction fluxes in continuous cultures of yeast under stress in the absence or presence of global regulator Gcn4p. Although mRNA expression alone did not directly predict metabolic response, this correlation improved through incorporating a network-based model of amino acid biosynthesis (from r = 0.07 to 0.80 for mRNA-flux agreement). The model provides evidence of general biological principles: rewiring of metabolic flux (i.e., use of different reaction pathways) by transcriptional regulation and metabolite interaction density (i.e., level of pairwise metabolite-protein interactions) as a key biosynthetic control determinant. Furthermore, this model predicted flux rewiring in studies of follow-on transcriptional regulators that were experimentally validated with additional (13)C-based flux measurements. As a first step in linking metabolic control and genetic regulatory networks, this model underscores the importance of integrating diverse data types in large-scale cellular models. We anticipate that an integrated approach focusing on metabolic measurements will facilitate construction of more realistic models of cellular regulation for understanding diseases and constructing strains for industrial applications.
基因组测序极大地提高了我们理解细胞对扰动反应的能力。将全系统测量(如基因表达)与蛋白质-蛋白质相互作用网络和转录因子结合网络相结合,揭示了对细胞行为的关键见解。然而,尽管代谢测量与细胞表型联系最为紧密,但系统生物学方法的潜力受到跨细胞功能水平整合代谢测量困难的限制。为了解决这一限制,我们开发了一种基于模型的方法来关联mRNA和代谢通量数据,该方法结合了来自相互作用网络模型和通量测定模型的信息。我们首先在不存在或存在全局调节因子Gcn4p的情况下,对处于应激状态的酵母连续培养物中的5764种mRNA、54种代谢物和83种基于实验(13)C的反应通量进行了量化。尽管单独的mRNA表达并不能直接预测代谢反应,但通过纳入基于网络的氨基酸生物合成模型,这种相关性得到了改善(mRNA-通量一致性从r = 0.07提高到0.80)。该模型提供了一般生物学原理的证据:通过转录调控和代谢物相互作用密度(即成对代谢物-蛋白质相互作用的水平)对代谢通量进行重新布线,作为关键的生物合成控制决定因素。此外,该模型在后续转录调节因子的研究中预测了通量重新布线,并通过额外的基于(13)C的通量测量进行了实验验证。作为连接代谢控制和遗传调控网络的第一步,该模型强调了在大规模细胞模型中整合多种数据类型的重要性。我们预计,专注于代谢测量的综合方法将有助于构建更现实的细胞调节模型,以理解疾病并构建用于工业应用的菌株。