期刊文献+

Modeling stochastic noise in gene regulatory systems 被引量:2

Modeling stochastic noise in gene regulatory systems
原文传递
导出
摘要 The Master equation is considered the gold standard for modeling the stochastic mechanisms of gene regulation in molecular detail, but it is too complex to solve exactly in most cases, so approximation and simulation methods are essential. However, there is still a lack of consensus about the best way to carry these out. To help clarify the situation, we review Master equation models of gene regulation, theoretical approximations based on an expansion method due to N.G. van Kampen and R. Kubo, and simulation algorithms due to D.T. Gillespie and P. Langevin. Expansion of the Master equation shows that for systems with a single stable steady-state, the stochastic model reduces to a deterministic model in a first-order approximation. Additional theory, also due to van Kampen, describes the asymptotic behavior of multistable systems. To support and illustrate the theory and provide further insight into the complex behavior of multistable systems, we perform a detailed simulation study comparing the various approximation and simulation methods applied to synthetic gene regulatory systems with various qualitative characteristics. The simulation studies show that for large stochastic systems with a single steady-state, deterministic models are quite accurate, since the probability distribution of the solution has a single peak tracking the deterministic trajectory whose variance is inversely proportional to the system size. In multistable stochastic systems, large fluctuations can cause individual trajectories to escape from the domain of attraction of one steady-state and be attracted to another, so the system eventually reaches a multimodal probability distribution in which all stable steady- states are represented proportional to their relative stability. However, since the escape time scales exponentially with system size, this process can take a very long time in large systems. The Master equation is considered the gold standard for modeling the stochastic mechanisms of gene regulation in molecular detail, but it is too complex to solve exactly in most cases, so approximation and simulation methods are essential. However, there is still a lack of consensus about the best way to carry these out. To help clarify the situation, we review Master equation models of gene regulation, theoretical approximations based on an expansion method due to N.G. van Kampen and R. Kubo, and simulation algorithms due to D.T. Gillespie and P. Langevin. Expansion of the Master equation shows that for systems with a single stable steady-state, the stochastic model reduces to a deterministic model in a first-order approximation. Additional theory, also due to van Kampen, describes the asymptotic behavior of multistable systems. To support and illustrate the theory and provide further insight into the complex behavior of multistable systems, we perform a detailed simulation study comparing the various approximation and simulation methods applied to synthetic gene regulatory systems with various qualitative characteristics. The simulation studies show that for large stochastic systems with a single steady-state, deterministic models are quite accurate, since the probability distribution of the solution has a single peak tracking the deterministic trajectory whose variance is inversely proportional to the system size. In multistable stochastic systems, large fluctuations can cause individual trajectories to escape from the domain of attraction of one steady-state and be attracted to another, so the system eventually reaches a multimodal probability distribution in which all stable steady- states are represented proportional to their relative stability. However, since the escape time scales exponentially with system size, this process can take a very long time in large systems.
出处 《Frontiers of Electrical and Electronic Engineering in China》 2014年第1期1-29,共29页 中国电气与电子工程前沿(英文版)
关键词 gene regulation stochastic modeling SIMULATION Master equation Gillespie algorithm Langevin equation gene regulation stochastic modeling simulation Master equation Gillespie algorithm Langevin equation
  • 相关文献

参考文献63

  • 1Swain, P. S., Elowitz, M. B. and Siggia, E. D. (2002) Intrinsic and extrinsic contributions to stochasticity in gene expression. Proc. Natl. Acad. Sci. U.S.A., 99, 12795-12800.
  • 2Paulsson, J. (2004) Summing up the noise in gene networks. Nature, 427, 415418.
  • 3Elowitz, M. B., Levine, A. L, Siggia, E, D. and Swain, P. S. (2002) Stochastic gene expression in a single cell. Sci. Signal., 297, 1183.
  • 4Ozbudak, E. M., Thattai, M., Kurtser, I., Grossman, A. D. and van Oudenaarden, A. (2002) Regulation of noise in the expression of a single gene. Nat. Genet., 31, 69-73.
  • 5Blake, W. J.,Kaem, M., Cantor, C. R. and Collins, J. J. (2003) Noise in eukaryotic gene expression. Nature, 422, 633-637.
  • 6Rao, C. V., Wolf, D. M. and Arkin, A. P. (2002) Control, exploitationand tolerance of intracellular noise. Nature, 420, 231-237.
  • 7Kaern, M., Elston, T. C., Blake, W. J. and Collins, J. J. (2005) Stochasticity in gene expression: from theories to phenotypes. Nat. Rev. Genet., 6, 451464.
  • 8Raj, A. and van Oudenaarden, A. (2008) Nature, nurture, or chance: stochastic gene expression and its consequences. Cell, 135, 21(226.
  • 9Munsky, B., Neuert, G. and van Oudenaarden, A. (2012) Using gene expression noise to understand gene regulation. Science, 336, 183 187.
  • 10Hager, G. L., McNally, J. G. and Misteli, T. (2009) Transcription dynamics. Mol. Cell, 35, 741-753.

同被引文献5

引证文献2

二级引证文献2

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部