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Uncertainty quantification propagation and characterization by Bayesian analysis combined with global sensitivity analysis applied to dynamical intracellular pathway models

机译:贝叶斯分析与全局敏感性分析相结合的不确定性定量传播和表征应用于动态细胞内途径模型

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摘要

MotivationDynamical models describing intracellular phenomena are increasing in size and complexity as more information is obtained from experiments. These models are often over-parameterized with respect to the quantitative data used for parameter estimation, resulting in uncertainty in the individual parameter estimates as well as in the predictions made from the model. Here we combine Bayesian analysis with global sensitivity analysis (GSA) in order to give better informed predictions; to point out weaker parts of the model that are important targets for further experiments, as well as to give guidance on parameters that are essential in distinguishing different qualitative output behaviours.
机译:动机随着从实验中获得更多信息,描述细胞内现象的动力学模型正在不断增加,其规模和复杂性也在不断增加。相对于用于参数估计的定量数据,这些模型经常被过度参数化,从而导致各个参数估计以及该模型所做的预测都存在不确定性。在这里,我们将贝叶斯分析与全局敏感性分析(GSA)结合起来,以便提供更明智的预测;指出模型中较弱的部分,这些部分是进行进一步实验的重要目标,并为区分不同定性输出行为必不可少的参数提供指导。

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