Stefan Melanie I, Bartol Thomas M, Sejnowski Terrence J, Kennedy Mary B
Division of Biology and Biological Engineering, California Institute of Technology, Pasadena, California, United States of America.
Salk Institute for Biological Studies, La Jolla, California, United States of America.
PLoS Comput Biol. 2014 Sep 25;10(9):e1003844. doi: 10.1371/journal.pcbi.1003844. eCollection 2014 Sep.
Multi-state modeling of biomolecules refers to a series of techniques used to represent and compute the behavior of biological molecules or complexes that can adopt a large number of possible functional states. Biological signaling systems often rely on complexes of biological macromolecules that can undergo several functionally significant modifications that are mutually compatible. Thus, they can exist in a very large number of functionally different states. Modeling such multi-state systems poses two problems: the problem of how to describe and specify a multi-state system (the "specification problem") and the problem of how to use a computer to simulate the progress of the system over time (the "computation problem"). To address the specification problem, modelers have in recent years moved away from explicit specification of all possible states and towards rule-based formalisms that allow for implicit model specification, including the κ-calculus, BioNetGen, the Allosteric Network Compiler, and others. To tackle the computation problem, they have turned to particle-based methods that have in many cases proved more computationally efficient than population-based methods based on ordinary differential equations, partial differential equations, or the Gillespie stochastic simulation algorithm. Given current computing technology, particle-based methods are sometimes the only possible option. Particle-based simulators fall into two further categories: nonspatial simulators, such as StochSim, DYNSTOC, RuleMonkey, and the Network-Free Stochastic Simulator (NFSim), and spatial simulators, including Meredys, SRSim, and MCell. Modelers can thus choose from a variety of tools, the best choice depending on the particular problem. Development of faster and more powerful methods is ongoing, promising the ability to simulate ever more complex signaling processes in the future.
生物分子的多状态建模是指一系列用于表示和计算生物分子或复合物行为的技术,这些生物分子或复合物可以呈现大量可能的功能状态。生物信号系统通常依赖于生物大分子复合物,这些复合物可以经历几种功能上重要且相互兼容的修饰。因此,它们可以以大量功能不同的状态存在。对这种多状态系统进行建模存在两个问题:如何描述和指定一个多状态系统(“规范问题”)以及如何使用计算机模拟系统随时间的进展(“计算问题”)。为了解决规范问题,近年来建模者已不再明确指定所有可能的状态,而是转向基于规则的形式主义,这种形式主义允许隐式模型规范,包括κ演算、BioNetGen、变构网络编译器等。为了解决计算问题,他们转向了基于粒子的方法,在许多情况下,这种方法已被证明比基于常微分方程、偏微分方程或 Gillespie 随机模拟算法的基于群体的方法在计算上更有效。鉴于当前的计算技术,基于粒子的方法有时是唯一可能的选择。基于粒子的模拟器又分为两类:非空间模拟器,如 StochSim、DYNSTOC、RuleMonkey 和无网络随机模拟器(NFSim),以及空间模拟器,包括 Meredys、SRSim 和 MCell。因此建模者可以从各种工具中进行选择,最佳选择取决于具体问题。更快、更强大方法的开发正在进行中,有望在未来能够模拟更复杂的信号传导过程。