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Universally Sloppy Parameter Sensitivities in Systems Biology Models

机译:系统生物学模型中普遍草率的参数敏感性

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摘要

Quantitative computational models play an increasingly important role in modern biology. Such models typically involve many free parameters, and assigning their values is often a substantial obstacle to model development. Directly measuring in vivo biochemical parameters is difficult, and collectively fitting them to other experimental data often yields large parameter uncertainties. Nevertheless, in earlier work we showed in a growth-factor-signaling model that collective fitting could yield well-constrained predictions, even when it left individual parameters very poorly constrained. We also showed that the model had a “sloppy” spectrum of parameter sensitivities, with eigenvalues roughly evenly distributed over many decades. Here we use a collection of models from the literature to test whether such sloppy spectra are common in systems biology. Strikingly, we find that every model we examine has a sloppy spectrum of sensitivities. We also test several consequences of this sloppiness for building predictive models. In particular, sloppiness suggests that collective fits to even large amounts of ideal time-series data will often leave many parameters poorly constrained. Tests over our model collection are consistent with this suggestion. This difficulty with collective fits may seem to argue for direct parameter measurements, but sloppiness also implies that such measurements must be formidably precise and complete to usefully constrain many model predictions. We confirm this implication in our growth-factor-signaling model. Our results suggest that sloppy sensitivity spectra are universal in systems biology models. The prevalence of sloppiness highlights the power of collective fits and suggests that modelers should focus on predictions rather than on parameters.
机译:定量计算模型在现代生物学中起着越来越重要的作用。这样的模型通常包含许多自由参数,并且分配其值通常是模型开发的重大障碍。直接测量体内生化参数是困难的,并且将它们共同拟合到其他实验数据通常会产生很大的参数不确定性。但是,在较早的工作中,我们在增长因子信号模型中表明,即使拟合拟合的单个参数受约束程度很低,集体拟合也可以产生约束良好的预测。我们还表明,该模型具有参差不齐的参数敏感性谱,其特征值在几十年中大致均匀分布。在这里,我们使用来自文献的模型集合来测试这种草率光谱在系统生物学中是否常见。令人惊讶的是,我们发现我们检查的每个模型都具有草率的灵敏度范围。我们还测试了这种草率的几种后果,以建立预测模型。特别是,草率的做法表明,即使对大量理想时间序列数据进行集体拟合,通常也会使许多参数受到约束。在我们的模型集合上进行的测试与此建议一致。这种集体拟合的困难似乎可以直接用于参数测量,但草率也意味着此类测量必须非常精确且完整,才能有效地约束许多模型预测。我们在我们的增长因子信号模型中证实了这种含义。我们的结果表明,草率灵敏度谱在系统生物学模型中是通用的。草的流行突出了集体拟合的力量,并建议建模人员应将重点放在预测上而不是参数上。

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