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Improving Data Fitting of a Signal Transduction Model by Global Sensitivity Analysis

机译:通过全局灵敏度分析改善信号传导模型的数据拟合

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Based on a simplified model of the (TNF-驴 mediated) I驴B驴-NF-驴B signal transduction pathway, global sensitivity analysis has been performed to identify those parameters that exert significant control on the system outputs. The permutation operation in Morris method is modified to work for log-uniform sampling parameters. The identified sensitive parameters are then estimated using multivariable search such that the output of the model matches experimental data representing the nuclear concentration of NF-驴B. Such parameter tuning leads to much better agreement between the model and the experimental time series relative to those previously published. This shows the importance of global sensitivity analysis in Systems Biology models.
机译:基于(TNF-驴介导的)I驴B驴-NF-驴B信号转导途径的简化模型,进行了全局敏感性分析,以识别对系统输出产生重要控制的那些参数。修改了Morris方法中的置换操作,以处理对数均匀采样参数。然后,使用多变量搜索估算识别出的敏感参数,以使模型的输出与代表NF-驴B的核浓度的实验数据相匹配。相对于先前发布的参数,此类参数调整可导致模型与实验时间序列之间更好的一致性。这表明在系统生物学模型中进行全局敏感性分析的重要性。

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