Bruggeman F J, van Heeswijk W C, Boogerd F C, Westerhoff H V
Department of Molecular Cell Physiology, Biocentrum, Faculty of Biology, Free University, Amsterdam, The Netherlands.
Biol Chem. 2000 Sep-Oct;381(9-10):965-72. doi: 10.1515/BC.2000.119.
Biochemistry and molecular biology have been focusing on the structural, catalytic, and regulatory properties of individual macromolecules from the perspective of clarifying the mechanisms of metabolism and gene expression. Complete genomes of 'primitive' living organisms seem to be substantially larger than necessary for metabolism and gene expression alone. This is in line with the findings of silent phenotypes for supposedly important genes, apparent redundancy of functions, and variegated networks of signal transduction and transcription factors. Here we propose that evolutionary optimization has been much more intensive than to lead to the bare minima necessary for autonomous life. Much more complex organisms prevail. Much of this complexity arises in the nonlinear interactions between cellular macromolecules and in subtle differences between paralogs (isoenzymes). The complexity can only be understood when analyzed quantitatively, for which quantitative experimentation is needed in living systems that are as simple and manipulatable as possible, yet complex in the above sense. We illustrate this for the glutamine synthetase cascade in Escherichia coli. By reviewing recent molecular findings, we show that this cascade is much more complex than necessary for simple regulation of ammonia assimilation. Simulations suggest that the function of this complexity may lie in quasi-intelligent behavior, including conditioning and learning.
生物化学和分子生物学一直从阐明新陈代谢和基因表达机制的角度,专注于单个大分子的结构、催化和调节特性。“原始”生物体的完整基因组似乎比仅用于新陈代谢和基因表达所需的要大得多。这与对于所谓重要基因的沉默表型、功能的明显冗余以及信号转导和转录因子的多样化网络的研究结果一致。在此,我们提出进化优化比导致自主生命所需的最低限度要强烈得多。更为复杂的生物体占主导地位。这种复杂性很大程度上源于细胞大分子之间的非线性相互作用以及旁系同源物(同工酶)之间的细微差异。只有通过定量分析才能理解这种复杂性,为此需要在尽可能简单且可操纵但在上述意义上又很复杂的生命系统中进行定量实验。我们以大肠杆菌中的谷氨酰胺合成酶级联反应为例进行说明。通过回顾最近的分子研究结果,我们表明该级联反应比简单调节氨同化所需的要复杂得多。模拟表明这种复杂性的功能可能在于准智能行为,包括条件作用和学习。