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首页> 外文期刊>The Journal of Chemical Physics >Reducing experimental variability in variance-based sensitivity analysis of biochemical reaction systems
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Reducing experimental variability in variance-based sensitivity analysis of biochemical reaction systems

机译:减少生化反应系统基于方差的敏感性分析中的实验变异性

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Sensitivity analysis is a valuable task for assessing the effects of biological variability on cellular behavior. Available techniques require knowledge of nominal parameter values, which cannot be determined accurately due to experimental uncertainty typical to problems of systems biology. As a consequence, the practical use of existing sensitivity analysis techniques may be seriously hampered by the effects of unpredictable experimental variability. To address this problem, we propose here a probabilistic approach to sensitivity analysis of biochemical reaction systems that explicitly models experimental variability and effectively reduces the impact of this type of uncertainty on the results. The proposed approach employs a recently introduced variance-based method to sensitivity analysis of biochemical reaction systems [Zhang, J. Chem. Phys. 134, 094101 (2009)] and leads to a technique that can be effectively used to accommodate appreciable levels of experimental variability. We discuss three numerical techniques for evaluating the sensitivity indices associated with the new method, which include Monte Carlo estimation, derivative approximation, and dimensionality reduction based on orthonormal Hermite approximation. By employing a computational model of the epidermal growth factor receptor signaling pathway, we demonstrate that the proposed technique can greatly reduce the effect of experimental variability on variance-based sensitivity analysis results. We expect that, in cases of appreciable experimental variability, the new method can lead to substantial improvements over existing sensitivity analysis techniques.
机译:敏感性分析是评估生物变异性对细胞行为影响的一项重要任务。可用的技术需要标称参数值的知识,由于系统生物学问题通常存在实验不确定性,因此无法准确确定标称参数值。结果,不可预测的实验可变性的影响可能严重阻碍了现有灵敏度分析技术的实际使用。为了解决这个问题,我们在这里提出一种对生化反应系统进行敏感性分析的概率方法,该方法可以对实验变异性进行显式建模,并有效地减少此类不确定性对结果的影响。所提出的方法采用了最近引入的基于方差的方法来对生化反应系统进行敏感性分析[Zhang,J. Chem。物理134,094101(2009)]提出的技术可以有效地适应实验变量的可观水平。我们讨论了三种评估与新方法相关的灵敏度指标的数值技术,包括蒙特卡洛估计,导数逼近和基于正交Hermite逼近的降维。通过采用表皮生长因子受体信号传导途径的计算模型,我们证明了所提出的技术可以大大减少基于方差敏感性分析结果的实验​​变异性的影响。我们期望,在明显的实验可变性的情况下,新方法可以导致对现有灵敏度分析技术的实质性改进。

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