Deckard Anastasia, Sauro Herbert M
Keck Graduate Institute, 535 Watson Drive, Claremont, CA 91711, USA.
Chembiochem. 2004 Oct 4;5(10):1423-31. doi: 10.1002/cbic.200400178.
Due to the variety and importance of roles performed by signalling networks, understanding their function and evolution is of great interest. Signalling networks allow organisms to process and react to changes in their internal and external environment. Current estimates suggest that two to three percent of all genomes code for proteins involved in signalling networks. The study of signalling networks is hindered by the complexities of the networks and difficulties in ascribing function to form. For example, a very complex dense network might comprise eighty or more densely connected proteins. In the majority of cases there is very little understanding of how these networks process signals. Unlike in electronics, where there is a broad practical and theoretical understanding of how to construct devices that can process almost any kind of signal, in biological signalling networks there is no equivalent theory. Part of the problem stems from the fact that in most cases it is unknown what particular signal processing circuits would look like in a biological form. This paper describes the evolutionary methods used to generate networks with particular signal- and computational-processing capabilities. The techniques involved are described, and the approach is illustrated by evolving computational circuits such as multiplication, radicals and logarithmic functions. The experiments also illustrate the evolution of modularity within biochemical reaction networks.
由于信号网络所执行的功能多样且重要,了解其功能和进化备受关注。信号网络使生物体能够处理内部和外部环境的变化并做出反应。目前的估计表明,所有基因组中2%至3%的基因编码参与信号网络的蛋白质。信号网络的复杂性以及将功能归因于形式的困难阻碍了对其的研究。例如,一个非常复杂的密集网络可能包含八十个或更多紧密连接的蛋白质。在大多数情况下,人们对这些网络如何处理信号知之甚少。与电子学不同,在电子学中,对于如何构建能够处理几乎任何类型信号的设备有广泛的实践和理论理解,而在生物信号网络中却没有类似的理论。部分问题源于这样一个事实,即在大多数情况下,尚不清楚特定的信号处理电路在生物学形式中会是什么样子。本文描述了用于生成具有特定信号和计算处理能力的网络的进化方法。介绍了所涉及的技术,并通过进化诸如乘法、根式和对数函数等计算电路来说明该方法。实验还展示了生化反应网络中模块化的进化。