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Defining Biological Networks for Noise Buffering and Signaling Sensitivity Using Approximate Bayesian Computation

机译:使用近似贝叶斯计算定义用于噪声缓冲和信令灵敏度的生物网络

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摘要

Reliable information processing in cells requires high sensitivity to changes in the input signal but low sensitivity to random fluctuations in the transmitted signal. There are often many alternative biological circuits qualifying for this biological function. Distinguishing theses biological models and finding the most suitable one are essential, as such model ranking, by experimental evidence, will help to judge the support of the working hypotheses forming each model. Here, we employ the approximate Bayesian computation (ABC) method based on sequential Monte Carlo (SMC) to search for biological circuits that can maintain signaling sensitivity while minimizing noise propagation, focusing on cases where the noise is characterized by rapid fluctuations. By systematically analyzing three-component circuits, we rank these biological circuits and identify three-basic-biological-motif buffering noise while maintaining sensitivity to long-term changes in input signals. We discuss in detail a particular implementation in control of nutrient homeostasis in yeast. The principal component analysis of the posterior provides insight into the nature of the reaction between nodes.
机译:细胞中可靠的信息处理需要高灵敏度,对输入信号的变化但对传输信号中的随机波动的敏感性低。这种生物学功能通常有许多替代的生物电路。区分生物模型和寻找最合适的方法是必不可少的,因为通过实验证据,可以帮助判断形成每个模型的工作假设的支持。这里,我们采用基于顺序蒙特卡罗(SMC)的近似贝叶斯计算(ABC)方法,以搜索能够维持信令灵敏度的生物电路,同时最小化噪声传播,专注于噪声的特征在于快速波动。通过系统地分析三个组件电路,我们对这些生物电路进行排名并识别三个基本的生物学 - 主题缓冲噪声,同时保持对输入信号的长期变化的敏感性。我们详细讨论了在酵母中控制营养稳态的特定实施。后部的主要成分分析提供了对节点之间反应性质的洞察力。

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