Cox Chris D, McCollum James M, Austin Derek W, Allen Michael S, Dar Roy D, Simpson Michael L
Department of Civil and Environmental Engineering, University of Tennessee, Knoxville, Tennessee 37996, USA.
Chaos. 2006 Jun;16(2):026102. doi: 10.1063/1.2204354.
Recent advances in single cell methods have spurred progress in quantifying and analyzing stochastic fluctuations, or noise, in genetic networks. Many of these studies have focused on identifying the sources of noise and quantifying its magnitude, and at the same time, paying less attention to the frequency content of the noise. We have developed a frequency domain approach to extract the information contained in the frequency content of the noise. In this article we review our work in this area and extend it to explicitly consider sources of extrinsic and intrinsic noise. First we review applications of the frequency domain approach to several simple circuits, including a constitutively expressed gene, a gene regulated by transitions in its operator state, and a negatively autoregulated gene. We then review our recent experimental study, in which time-lapse microscopy was used to measure noise in the expression of green fluorescent protein in individual cells. The results demonstrate how changes in rate constants within the gene circuit are reflected in the spectral content of the noise in a manner consistent with the predictions derived through frequency domain analysis. The experimental results confirm our earlier theoretical prediction that negative autoregulation not only reduces the magnitude of the noise but shifts its content out to higher frequency. Finally, we develop a frequency domain model of gene expression that explicitly accounts for extrinsic noise at the transcriptional and translational levels. We apply the model to interpret a shift in the autocorrelation function of green fluorescent protein induced by perturbations of the translational process as a shift in the frequency spectrum of extrinsic noise and a decrease in its weighting relative to intrinsic noise.
单细胞方法的最新进展推动了在量化和分析遗传网络中的随机波动或噪声方面的进展。许多此类研究都集中在识别噪声源并量化其大小,与此同时,对噪声的频率成分关注较少。我们开发了一种频域方法来提取噪声频率成分中包含的信息。在本文中,我们回顾了我们在该领域的工作,并将其扩展到明确考虑外在和内在噪声的来源。首先,我们回顾了频域方法在几个简单电路中的应用,包括一个组成型表达的基因、一个由其操纵子状态转变调控的基因以及一个负自调控基因。然后,我们回顾了我们最近的实验研究,其中使用延时显微镜来测量单个细胞中绿色荧光蛋白表达的噪声。结果表明,基因电路中速率常数的变化如何以与通过频域分析得出的预测一致的方式反映在噪声的频谱内容中。实验结果证实了我们早期的理论预测,即负自调控不仅会降低噪声的大小,还会将其内容转移到更高频率。最后,我们开发了一个基因表达的频域模型,该模型明确考虑了转录和翻译水平上的外在噪声。我们应用该模型将翻译过程扰动引起的绿色荧光蛋白自相关函数的变化解释为外在噪声频谱的变化以及其相对于内在噪声权重的降低。