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Systematic model reduction captures the dynamics of extrinsic noise in biochemical subnetworks

机译:系统模型减少捕获生物化学子网中外本噪声的动态

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We consider the general problem of describing the dynamics of subnetworks of larger biochemical reaction networks, e.g., protein interaction networks involving complex formation and dissociation reactions. We propose the use of model reduction strategies to understand the "extrinsic" sources of stochasticity arising from the rest of the network. Our approaches are based on subnetwork dynamical equations derived by projection methods and path integrals. The results provide a principled derivation of different components of the extrinsic noise that is observed experimentally in cellular biochemical reactions, over and above the intrinsic noise from the stochasticity of biochemical events in the subnetwork. We explore several intermediate approximations to assess systematically the relative importance of different extrinsic noise components, including initial transients, long-time plateaus, temporal correlations, multiplicative noise terms, and nonlinear noise propagation. The best approximations achieve excellent accuracy in quantitative tests on a simple protein network and on the epidermal growth factor receptor signaling network. Published under license by AIP Publishing.
机译:我们考虑描述较大生物化学反应网络的子网动态的一般性问题,例如涉及复合形成和解离反应的蛋白质相互作用网络。我们建议使用模型减少策略来了解从其余网络引起的“外在”的随机性源。我们的方法基于由投影方法和路径积分导出的子网动态方程。结果提供了在来自子网中生化事件的随机性的细胞生化反应中实验观察到的外在噪声的不同组分的原因推导。我们探讨了多种中间近似,以系统地评估不同外本噪声分量的相对重要性,包括初始瞬变,长时间平稳,时间相关,乘法噪声术语和非线性噪声传播。最佳近似在简单蛋白质网络和表皮生长因子受体信号网络上实现了优异的定量测试精度。通过AIP发布在许可证下发布。

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