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Computational Cellular Dynamics Based on the Chemical Master Equation: A Challenge for Understanding Complexity 被引量:2

Computational Cellular Dynamics Based on the Chemical Master Equation: A Challenge for Understanding Complexity
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摘要 Modern molecular biology has always been a great source of inspiration for computational science. Half a century ago, the challenge from understanding macromolecular dynamics has led the way for computations to be part of the tool set to study molecular biology. Twenty-five years ago, the demand from genome science has inspired an entire generation of computer scientists with an interest in discrete mathematics to join the field that is now called bioinformatics. In this paper, we shall lay out a new mathematical theory for dynamics of biochemical reaction systems in a small volume (i.e., mesoscopic) in terms of a stochastic, discrete-state continuous-time formulation, called the chemical master equation (CME). Similar to the wavefnnction in quantum mechanics, the dynamically changing probability landscape associated with the state space provides a fundamental characterization of the biochemical reaction system. The stochastic trajectories of the dynamics are best known through the simulations using the Gillespie algorithm. In contrast to the Metropolis algorithm, this Monte Carlo sampling technique does not follow a process with detailed balance. We shall show several examples how CMEs are used to model cellular biochemical systems. We shall also illustrate the computational challenges involved: multiscale phenomena, the interplay between stochasticity and nonlinearity, and how macroscopic determinism arises from mesoscopic dynamics. We point out recent advances in computing solutions to the CME, including exact solution of the steady state landscape and stochastic differential equations that offer alternatives to the Gilespie algorithm. We argue that the CME is an ideal system from which one can learn to understand “complex behavior” and complexity theory, and from which important biological insight can be gained. Modern molecular biology has always been a great source of inspiration for computational science. Half a century ago, the challenge from understanding macromolecular dynamics has led the way for computations to be part of the tool set to study molecular biology. Twenty-five years ago, the demand from genome science has inspired an entire generation of computer scientists with an interest in discrete mathematics to join the field that is now called bioinformatics. In this paper, we shall lay out a new mathematical theory for dynamics of biochemical reaction systems in a small volume (i.e., mesoscopic) in terms of a stochastic, discrete-state continuous-time formulation, called the chemical master equation (CME). Similar to the wavefnnction in quantum mechanics, the dynamically changing probability landscape associated with the state space provides a fundamental characterization of the biochemical reaction system. The stochastic trajectories of the dynamics are best known through the simulations using the Gillespie algorithm. In contrast to the Metropolis algorithm, this Monte Carlo sampling technique does not follow a process with detailed balance. We shall show several examples how CMEs are used to model cellular biochemical systems. We shall also illustrate the computational challenges involved: multiscale phenomena, the interplay between stochasticity and nonlinearity, and how macroscopic determinism arises from mesoscopic dynamics. We point out recent advances in computing solutions to the CME, including exact solution of the steady state landscape and stochastic differential equations that offer alternatives to the Gilespie algorithm. We argue that the CME is an ideal system from which one can learn to understand “complex behavior” and complexity theory, and from which important biological insight can be gained.
作者 梁杰 钱纮
出处 《Journal of Computer Science & Technology》 SCIE EI CSCD 2010年第1期154-168,共15页 计算机科学技术学报(英文版)
基金 supported by US NIH under Grant Nos. GM079804, GM081682, GM086145, GM068610 NSF of USA under GrantNos. DBI-0646035 and DMS-0800257 ‘985’ Phase II Grant of Shanghai Jiao Tong University under Grant No. T226208001
关键词 biochemical networks cellular signaling EPIGENETICS master equation nonlinear reactions stochastic modeling biochemical networks, cellular signaling, epigenetics, master equation, nonlinear reactions, stochastic modeling
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参考文献76

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  • 1E.M. Sevick,R. Prabhakar,Stephen R. Williams,Debra J. Searles.Fluctuation Theorems[J].Annual Review of Physical Chemistry.2008
  • 2J. Goutsias,G. Jenkinson.Markovian dynamics on complex reaction networks[J].Physics Reports.2013(2)
  • 3Debashish Chowdhury.Stochastic mechano-chemical kinetics of molecular motors: A multidisciplinary enterprise from a physicist’s perspective[J].Physics Reports.2013(1)
  • 4Ge Hao,Qian Hong.Non-equilibrium phase transition in mesoscopic biochemical systems: from stochastic to nonlinear dynamics and beyond[J].Journal of the Royal Society Interface.2011(54)
  • 5Field Cady,Hong Qian.Open-system thermodynamic analysis of DNA polymerase fidelity[J].Physical Biology.2009(3)
  • 6Rapha?l Chetrite,Krzysztof Gawe?dzki.Fluctuation Relations for Diffusion Processes[J].Communications in Mathematical Physics.2008(2)
  • 7Hong Qian.Reducing Intrinsic Biochemical Noise in Cells and Its Thermodynamic Limit[J].Journal of Molecular Biology.2006(3)
  • 8L.M. Martyushev,V.D. Seleznev.Maximum entropy production principle in physics, chemistry and biology[J].Physics Reports.2005(1)
  • 9Qian Min,Wang Zheng-dong.The Entropy Production of Diffusion Processes on Manifolds and Its Circulation Decompositions[J].Communications in Mathematical Physics.1999(2)
  • 10P.Ao.Emerging of Stochastic Dynamical Equalities and Steady State Thermodynamics from Darwinian Dynamics[J].Communications in Theoretical Physics,2008,49(5):1073-1090. 被引量:11

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