Tang Moxun
Department of Mathematics, Michigan State University, East Lansing, Michigan 48824, USA.
J Math Biol. 2010 Jan;60(1):27-58. doi: 10.1007/s00285-009-0258-7. Epub 2009 Mar 10.
The recent in vivo RNA detection technique has allowed real-time monitoring of gene transcription in individual living cells, revealing that genes can be transcribed randomly in a bursting fashion that short periods of rapid production of multiple transcripts are interspersed with relatively long periods of no production. In this work, we utilize the three state model to study how environmental signals and the intrinsic cellular contexts are combined to regulate stochastic gene transcription. We introduce a system of three master equations to model the stochastic occurrence of transcriptional bursting. As this system cannot be solved analytically, we introduce a linear operator, called the master operator. It is of significant mathematical interests of its own and transforms the mean frequency of transcriptional bursting mu(t) and the second moment mu2(t) into the unique solutions of the respective operator equations. Following this novel approach, we have found the exact forms of mu(t) and the variance sigma2(t). Our analysis shows that the three state transition process produces less noisy transcription than a single Poisson process does, and more transition steps average out rather than propagate fluctuations of transcripts among individual cells. The noise strength phi(t) = sigma2(t)/mu(t) displays highly non-trivial dynamics during the first two to three transcription cycles. It declines steeply from the beginning until reaching the absolute minimum value, and then bounces back suddenly to a flat level close to the steady-state. Our numerical simulations further demonstrate that the cellular signals that produce the least noisy population at steady-state may not generate the least noisy population in a finite time, and suggest that measurements at steady-state may not necessarily capture most essential features of transcription noise.
最近的体内RNA检测技术能够对单个活细胞中的基因转录进行实时监测,结果表明基因可以以爆发式随机转录,即多个转录本的快速产生的短周期与相对较长的无转录周期相互穿插。在这项工作中,我们利用三态模型来研究环境信号和细胞内的固有环境如何共同调节随机基因转录。我们引入了一个由三个主方程组成的系统来模拟转录爆发的随机发生。由于这个系统无法通过解析求解,我们引入了一个线性算子,称为主算子。它本身具有重要的数学意义,并将转录爆发的平均频率μ(t)和二阶矩μ₂(t)转化为各自算子方程的唯一解。按照这种新方法,我们得到了μ(t)和方差σ₂(t)的精确形式。我们的分析表明,三态转变过程产生的转录噪声比单个泊松过程少,并且更多的转变步骤会平均掉而不是在单个细胞之间传播转录本的波动。噪声强度φ(t)=σ₂(t)/μ(t)在前两到三个转录周期中表现出非常复杂的动态。它从一开始就急剧下降,直到达到绝对最小值,然后突然反弹到接近稳态的平稳水平。我们的数值模拟进一步表明,在稳态下产生噪声最小群体的细胞信号在有限时间内可能不会产生噪声最小的群体,并表明在稳态下的测量不一定能捕捉到转录噪声的最基本特征。