Imam Saheed, Schäuble Sascha, Brooks Aaron N, Baliga Nitin S, Price Nathan D
Institute for Systems Biology Seattle, WA, USA.
Institute for Systems Biology Seattle, WA, USA ; Jena University Language and Information Engineering Lab, Friedrich-Schiller-University Jena Jena, Germany.
Front Microbiol. 2015 May 5;6:409. doi: 10.3389/fmicb.2015.00409. eCollection 2015.
Microbes are diverse and extremely versatile organisms that play vital roles in all ecological niches. Understanding and harnessing microbial systems will be key to the sustainability of our planet. One approach to improving our knowledge of microbial processes is through data-driven and mechanism-informed computational modeling. Individual models of biological networks (such as metabolism, transcription, and signaling) have played pivotal roles in driving microbial research through the years. These networks, however, are highly interconnected and function in concert-a fact that has led to the development of a variety of approaches aimed at simulating the integrated functions of two or more network types. Though the task of integrating these different models is fraught with new challenges, the large amounts of high-throughput data sets being generated, and algorithms being developed, means that the time is at hand for concerted efforts to build integrated regulatory-metabolic networks in a data-driven fashion. In this perspective, we review current approaches for constructing integrated regulatory-metabolic models and outline new strategies for future development of these network models for any microbial system.
微生物是多样且极其多功能的生物体,在所有生态位中都发挥着至关重要的作用。理解和利用微生物系统将是我们星球可持续发展的关键。提高我们对微生物过程认识的一种方法是通过数据驱动和机制导向的计算建模。多年来,生物网络(如代谢、转录和信号传导)的个体模型在推动微生物研究方面发挥了关键作用。然而,这些网络高度互联且协同运作——这一事实促使人们开发了各种旨在模拟两种或更多网络类型综合功能的方法。尽管整合这些不同模型的任务充满了新挑战,但大量正在生成的高通量数据集以及正在开发的算法意味着,以数据驱动的方式构建综合调控 - 代谢网络的协同努力时机已到。从这个角度出发,我们回顾了构建综合调控 - 代谢模型的当前方法,并概述了这些网络模型未来针对任何微生物系统发展的新策略。