Tomioka Ryota, Kimura Hidenori, J Kobayashi Tetsuya, Aihara Kazuyuki
Department of Mathematical Engineering and Information Physics, School of Engineering, The University of Tokyo, 7-3-1 Hongo, Bunkyo-ku, Tokyo 113-8656, Japan.
J Theor Biol. 2004 Aug 21;229(4):501-21. doi: 10.1016/j.jtbi.2004.04.034.
Stochasticity is an intrinsic property of genetic regulatory networks due to the low copy numbers of the major molecular species, such as, DNA, mRNA, and regulatory proteins. Therefore, investigation of the mechanisms that reduce the stochastic noise is essential in understanding the reproducible behaviors of real organisms and is also a key to design synthetic genetic regulatory networks that can reliably work. We use an analytical and systematic method, the linear noise approximation of the chemical master equation along with the decoupling of a stoichiometric matrix. In the analysis of fluctuations of multiple molecular species, the covariance is an important measure of noise. However, usually the representation of a covariance matrix in the natural coordinate system, i.e. the copy numbers of the molecular species, is intractably complicated because reactions change copy numbers of more than one molecular species simultaneously. Decoupling of a stoichiometric matrix, which is a transformation of variables, significantly simplifies the representation of a covariance matrix and elucidates the mechanisms behind the observed fluctuations in the copy numbers. We apply our method to three types of fundamental genetic regulatory networks, that is, a single-gene autoregulatory network, a two-gene autoregulatory network, and a mutually repressive network. We have found that there are multiple noise components differently originating. Each noise component produces fluctuation in the characteristic direction. The resulting fluctuations in the copy numbers of the molecular species are the sum of these fluctuations. In the examples, the limitation of the negative feedback in noise reduction and the trade-off of fluctuations in multiple molecular species are clearly explained. The analytical representations show the full parameter dependence. Additionally, the validity of our method is tested by stochastic simulations.
由于主要分子种类(如DNA、mRNA和调节蛋白)的拷贝数较低,随机性是基因调控网络的固有属性。因此,研究降低随机噪声的机制对于理解真实生物体的可重复行为至关重要,也是设计能够可靠工作的合成基因调控网络的关键。我们使用一种分析性的系统方法,即化学主方程的线性噪声近似以及化学计量矩阵的解耦。在分析多种分子种类的涨落时,协方差是噪声的一个重要度量。然而,通常协方差矩阵在自然坐标系(即分子种类的拷贝数)中的表示极其复杂,因为反应会同时改变不止一种分子种类的拷贝数。化学计量矩阵的解耦,即一种变量变换,显著简化了协方差矩阵的表示,并阐明了观察到的拷贝数涨落背后的机制。我们将我们的方法应用于三种基本的基因调控网络类型,即单基因自调控网络、双基因自调控网络和相互抑制网络。我们发现存在多种不同来源的噪声成分。每个噪声成分在特征方向上产生涨落。分子种类拷贝数的最终涨落是这些涨落的总和。在这些例子中,清楚地解释了负反馈在降低噪声方面的局限性以及多种分子种类涨落之间的权衡。解析表达式显示了对所有参数的依赖性。此外,我们方法的有效性通过随机模拟进行了检验。