1Frontier Research Academy for Young Researchers, Kyushu Institute of Technology, Kitakyushu, Fukuoka, Japan.
2Department of Bioscience and Bioinformatics, Kyushu Institute of Technology, Iizuka, Fukuoka Japan.
NPJ Syst Biol Appl. 2019 Apr 12;5:14. doi: 10.1038/s41540-019-0091-6. eCollection 2019.
The complex ammonium transport and assimilation network of involves the ammonium transporter AmtB, the regulatory proteins GlnK and GlnB, and the central N-assimilating enzymes together with their highly complex interactions. The engineering and modelling of such a complex network seem impossible because functioning depends critically on a gamut of data known at patchy accuracy. We developed a way out of this predicament, which employs: (i) a constrained optimization-based technology for the simultaneous fitting of models to heterogeneous experimental data sets gathered through diverse experimental set-ups, (ii) a 'rubber band method' to deal with different degrees of uncertainty, both in experimentally determined or estimated parameter values and in measured transient or steady-state variables (training data sets), (iii) integration of human expertise to decide on accuracies of both parameters and variables, (iv) massive computation employing a fast algorithm and a supercomputer, (v) an objective way of quantifying the plausibility of models, which makes it possible to decide which model is the best and how much better that model is than the others. We applied the new technology to the ammonium transport and assimilation network, integrating recent and older data of various accuracies, from different expert laboratories. The kinetic model objectively ranked best, has s AmtB as an active transporter of ammonia to be assimilated with GlnK minimizing the futile cycling that is an inevitable consequence of intracellular ammonium accumulation. It is 130 times better than a model with facilitated passive transport of ammonia.
涉及到复杂的氨转运和同化网络,包括氨转运蛋白 AmtB、调节蛋白 GlnK 和 GlnB 以及中央 N 同化酶,以及它们之间高度复杂的相互作用。由于功能严重依赖于一系列数据,这些数据的准确性参差不齐,因此对这样一个复杂网络进行工程和建模似乎是不可能的。我们开发了一种摆脱这种困境的方法,该方法采用:(i)一种基于约束优化的技术,用于同时拟合通过不同实验设置收集的异构实验数据集的模型,(ii)一种“橡胶带方法”来处理实验确定或估计的参数值以及测量的瞬态或稳态变量(训练数据集)中存在的不同程度的不确定性,(iii)整合人类专业知识来确定参数和变量的准确性,(iv)使用快速算法和超级计算机进行大规模计算,(v)一种客观的模型可信度量化方法,该方法可用于确定哪个模型是最好的,以及该模型比其他模型好多少。我们将新技术应用于氨转运和同化网络,整合了来自不同专家实验室的各种精度的最新和较旧数据。客观排名最好的动力学模型表明,AmtB 作为一种主动转运蛋白,将氨转运到细胞内,从而最大限度地减少了由于细胞内氨积累而不可避免的无效循环。它比具有促进性被动氨转运的模型好 130 倍。