负自调节基因表达随机延迟的噪声抑制

Madeline Smith, Abhyudai Singh
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引用次数: 2

摘要

我们考虑了一个具有时滞的自调节遗传回路的机械随机模型。更具体地说,一种蛋白质是在其相应基因的随机爆发中表达的。合成的蛋白质最初是无活性的,并在一段时间延迟后变得有活性。而不是考虑确定性延迟,这项工作的一个关键方面是纳入随机时间延迟,其中延迟是一个独立的和同分布的随机变量。活性蛋白抑制其自身的生产,形成负反馈循环。我们的分析表明,对于指数分布的时延,随着平均时延的增加,蛋白质水平的噪声降低到泊松极限。有趣的是,对于一个伽马分布时滞,基于负反馈强度的对比噪声行为出现了。在低反馈强度下,随着平均延迟的增加,蛋白质噪声水平单调地降低到泊松极限。在中等反馈强度下,随着平均延迟的增加,噪声水平先增加,达到最大值,然后降低到泊松极限。最后,在强反馈条件下,蛋白质噪声水平随着平均延迟的增加而单调增加。对于每种情况,我们提供了蛋白质均值和噪声水平的近似解析公式,并通过执行精确的蒙特卡罗模拟来验证这些结果。总之,我们的研究结果揭示了一个反直觉的特征,即在负反馈电路中包含随机延迟可以在缓冲蛋白质水平的有害波动中发挥有益作用。
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Noise suppression by stochastic delays in negatively autoregulated gene expression
We consider a mechanistic stochastic model of an autoregulatory genetic circuit with time delays. More specifically, a protein is expressed in random bursts from its corresponding gene. The synthesized protein is initially inactive and becomes active after a time delay. Rather than considering a deterministic delay, a key aspect of this work is to incorporate stochastic time delays, where the delay is an independent and identically distributed random variable. The active protein inhibits its own production creating a negative feedback loop. Our analysis reveals that for an exponentially-distributed time delay, the noise in protein levels decreases to the Poisson limit with increasing mean time delay. Interestingly, for a gamma-distributed time delay contrasting noise behaviors emerge based on the negative feedback strength. At low feedback strengths the protein noise levels monotonically decrease to the Poisson limit with increasing average delay. At intermediate feedback strengths, the noise levels first increase to reach a maximum, and then decrease back to the Poisson limit with increasing average delay. Finally, with strong feedback the protein noise levels monotonically increase with increasing average delay. For each of these scenarios we provide approximate analytical formulas for the protein mean and noise levels, and validate these results by performing exact Monte Carlo simulations. In conclusion, our results uncover a counter-intuitive feature where inclusion of stochastic delays in a negative feedback circuit can play a beneficial role in buffering deleterious fluctuations in the level of a protein.
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