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Thermodynamic modeling of transcription: sensitivity analysis differentiates biological mechanism from mathematical model-induced effects

机译:转录的热力学建模:敏感性分析将生物学机制与数学模型诱导的效应区分开

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Background Quantitative models of gene expression generate parameter values that can shed light on biological features such as transcription factor activity, cooperativity, and local effects of repressors. An important element in such investigations is sensitivity analysis, which determines how strongly a model's output reacts to variations in parameter values. Parameters of low sensitivity may not be accurately estimated, leading to unwarranted conclusions. Low sensitivity may reflect the nature of the biological data, or it may be a result of the model structure. Here, we focus on the analysis of thermodynamic models, which have been used extensively to analyze gene transcription. Extracted parameter values have been interpreted biologically, but until now little attention has been given to parameter sensitivity in this context. Results We apply local and global sensitivity analyses to two recent transcriptional models to determine the sensitivity of individual parameters. We show that in one case, values for repressor efficiencies are very sensitive, while values for protein cooperativities are not, and provide insights on why these differential sensitivities stem from both biological effects and the structure of the applied models. In a second case, we demonstrate that parameters that were thought to prove the system's dependence on activator-activator cooperativity are relatively insensitive. We show that there are numerous parameter sets that do not satisfy the relationships proferred as the optimal solutions, indicating that structural differences between the two types of transcriptional enhancers analyzed may not be as simple as altered activator cooperativity. Conclusions Our results emphasize the need for sensitivity analysis to examine model construction and forms of biological data used for modeling transcriptional processes, in order to determine the significance of estimated parameter values for thermodynamic models. Knowledge of parameter sensitivities can provide the necessary context to determine how modeling results should be interpreted in biological systems.
机译:背景基因表达的定量模型产生的参数值可以阐明生物学特征,例如转录因子活性,协同作用和阻遏物的局部作用。此类分析中的一个重要元素是灵敏度分析,它可以确定模型输出对参数值变化的反应程度。低灵敏度的参数可能无法准确估算,从而得出无根据的结论。低灵敏度可能反映了生物学数据的性质,也可能是模型结构的结果。在这里,我们专注于热力学模型的分析,该模型已广泛用于分析基因转录。提取的参数值已通过生物学方式进行了解释,但到目前为止,在这种情况下,对参数敏感性的关注很少。结果我们将局部和全局敏感性分析应用于两个最近的转录模型,以确定各个参数的敏感性。我们表明,在一种情况下,阻遏物效率的值非常敏感,而蛋白质协同作用的值却不敏感,并提供了关于为什么这些差异敏感性源于生物学效应和应用模型结构的见解。在第二种情况下,我们证明了证明系统对活化剂-活化剂协同作用的依赖性的参数相对不敏感。我们显示,有许多参数集不满足作为最佳解决方案提供的关系,这表明所分析的两种类型的转录增强子之间的结构差异可能不像改变的激活剂协同作用那么简单。结论我们的结果强调需要进行敏感性分析,以检查模型构建和用于转录过程建模的生物学数据形式,以确定热力学模型的估计参数值的重要性。参数敏感性的知识可以提供必要的上下文,以确定应该如何在生物系统中解释建模结果。

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