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首页> 外文期刊>Journal of Mathematical Biology >Identification of feedback loops embedded in cellular circuits by investigating non-causal impulse response components
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Identification of feedback loops embedded in cellular circuits by investigating non-causal impulse response components

机译:通过研究非因果冲激响应分量来识别嵌入在蜂窝电路中的反馈回路

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Feedback circuits are crucial dynamic motifs which occur in many biomolecular regulatory networks. They play a pivotal role in the regulation and control of many important cellular processes such as gene transcription, signal transduction, and metabolism. In this study, we develop a novel computationally efficient method to identify feedback loops embedded in intracellular networks, which uses only time-series experimental data and requires no knowledge of the network structure. In the proposed approach, a non-parametric system identification technique, as well as a spectral factor analysis, is applied to derive a graphical criterion based on non-causal components of the system's impulse response. The appearance of non-causal components in the impulse response sequences arising from stochastic output perturbations is shown to imply the presence of underlying feedback connections within a linear network. In order to extend the approach to nonlinear networks, we linearize the intracellular networks about an equilibrium point, and then choose the magnitude of the output perturbations sufficiently small so that the resulting time-series responses remain close to the chosen equilibrium point. In this way, the impulse response sequences of the linearized system can be used to determine the presence or absence of feedback loops in the corresponding nonlinear network. The proposed method utilizes the time profile data from intracellular perturbation experiments and only requires the perturbability of output nodes. Most importantly, the method does not require any a priori knowledge of the system structure. For these reasons, the proposed approach is very well suited to identifying feedback loops in large-scale biomolecular networks. The effectiveness of the proposed method is illustrated via two examples: a synthetic network model with a negative feedback loop and a nonlinear caspase function model of apoptosis with a positive feedback loop.
机译:反馈电路是在许多生物分子调节网络中出现的重要动态主题。它们在许多重要的细胞过程如基因转录,信号转导和代谢的调控中起着关键作用。在这项研究中,我们开发了一种新颖的计算有效方法来识别嵌入到细胞内网络中的反馈环,该方法仅使用时序实验数据,而无需了解网络结构。在提出的方法中,采用非参数系统识别技术以及频谱因子分析,以基于系统脉冲响应的非因果成分得出图形标准。脉冲响应序列中由随机输出扰动引起的非因果成分的出现表明线性网络中存在潜在的反馈连接。为了将方法扩展到非线性网络,我们将细胞内网络在平衡点附近线性化,然后选择足够小的输出扰动幅度,以使所得的时间序列响应保持在选定的平衡点附近。这样,线性化系统的脉冲响应序列可用于确定相应非线性网络中是否存在反馈回路。所提出的方法利用了来自细胞内扰动实验的时间分布数据,并且仅需要输出节点的扰动。最重要的是,该方法不需要任何系统结构的先验知识。由于这些原因,所提出的方法非常适合于识别大规模生物分子网络中的反馈回路。通过两个例子说明了所提方法的有效性:带有负反馈回路的合成网络模型和带有正反馈回路的细胞凋亡的非线性胱天蛋白酶功能模型。

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