Srinivasan Shyam, Cluett William R, Mahadevan Radhakrishnan
Department of Chemical Engineering and Applied Chemistry, University of Toronto, Toronto, ON, Canada.
Institute of Biomaterials and Biomedical Engineering, University of Toronto, Toronto, ON, Canada.
Biotechnol J. 2015 Sep;10(9):1345-59. doi: 10.1002/biot.201400522.
Constraint-based modeling of biological networks (metabolism, transcription and signal transduction), although used successfully in many applications, suffer from specific limitations such as the lack of representation of metabolite concentrations and enzymatic regulation, which are necessary for a complete physiologically relevant model. Kinetic models conversely overcome these shortcomings and enable dynamic analysis of biological systems for enhanced in silico hypothesis generation. Nonetheless, kinetic models also have limitations for modeling at genome-scales chiefly due to: (i) model non-linearity; (ii) computational tractability; (iii) parameter identifiability; (iv) estimability; and (v) uncertainty. In order to support further development of kinetic models as viable alternatives to constraint-based models, this review presents a brief description of the existing obstacles towards building genome-scale kinetic models. Specific kinetic modeling frameworks capable of overcoming these obstacles are covered in this review. The tractability and physiological feasibility of these models are discussed with the objective of using available in vivo experimental observations to define the model parameter space. Among the different methods discussed, Monte Carlo kinetic models of metabolism stand out as potentially tractable methods to model genome scale networks while also addressing in vivo parameter uncertainty.
基于约束的生物网络(代谢、转录和信号转导)建模尽管在许多应用中取得了成功,但仍存在一些特定的局限性,例如缺乏代谢物浓度和酶调节的表示,而这些对于一个完整的生理相关模型来说是必不可少的。相反,动力学模型克服了这些缺点,并能够对生物系统进行动态分析,以增强计算机模拟假设的生成。然而,动力学模型在基因组规模建模方面也存在局限性,主要原因包括:(i)模型非线性;(ii)计算易处理性;(iii)参数可识别性;(iv)可估计性;以及(v)不确定性。为了支持动力学模型作为基于约束模型的可行替代方案的进一步发展,本综述简要描述了构建基因组规模动力学模型所面临的现有障碍。本综述涵盖了能够克服这些障碍的特定动力学建模框架。讨论了这些模型的易处理性和生理可行性,目的是利用现有的体内实验观察来定义模型参数空间。在讨论的不同方法中,代谢的蒙特卡罗动力学模型脱颖而出,它是一种潜在的易处理方法,可用于对基因组规模网络进行建模,同时还能解决体内参数的不确定性。