Engelhardt Benjamin, Kschischo Maik, Fröhlich Holger
Rheinische Friedrich-Wilhelms-Universität Bonn, Algorithmic Bioinformatics, Bonn, Germany
DFG Research Training Group 1873, Rheinische Friedrich-Wilhelms-Universität Bonn, Germany.
J R Soc Interface. 2017 Jun;14(131). doi: 10.1098/rsif.2017.0332.
Ordinary differential equations (ODEs) are a popular approach to quantitatively model molecular networks based on biological knowledge. However, such knowledge is typically restricted. Wrongly modelled biological mechanisms as well as relevant external influence factors that are not included into the model are likely to manifest in major discrepancies between model predictions and experimental data. Finding the exact reasons for such observed discrepancies can be quite challenging in practice. In order to address this issue, we suggest a Bayesian approach to estimate hidden influences in ODE-based models. The method can distinguish between exogenous and endogenous hidden influences. Thus, we can detect wrongly specified as well as missed molecular interactions in the model. We demonstrate the performance of our Bayesian dynamic elastic-net with several ordinary differential equation models from the literature, such as human JAK-STAT signalling, information processing at the erythropoietin receptor, isomerization of liquid -Pinene, G protein cycling in yeast and UV-B triggered signalling in plants. Moreover, we investigate a set of commonly known network motifs and a gene-regulatory network. Altogether our method supports the modeller in an algorithmic manner to identify possible sources of errors in ODE-based models on the basis of experimental data.
常微分方程(ODEs)是一种基于生物学知识对分子网络进行定量建模的常用方法。然而,此类知识通常具有局限性。错误建模的生物学机制以及未纳入模型的相关外部影响因素,很可能表现为模型预测与实验数据之间的重大差异。在实践中,找出此类观测差异的确切原因可能颇具挑战性。为解决这一问题,我们提出一种贝叶斯方法,用于估计基于ODE的模型中的隐藏影响因素。该方法能够区分外生和内生隐藏影响因素。因此,我们可以检测模型中错误指定以及遗漏的分子相互作用。我们用文献中的几个常微分方程模型展示了我们的贝叶斯动态弹性网络的性能,如人类JAK-STAT信号传导、促红细胞生成素受体处的信息处理、液体蒎烯的异构化、酵母中的G蛋白循环以及植物中UV-B触发的信号传导。此外,我们研究了一组常见的网络基序和一个基因调控网络。总之,我们的方法以算法方式支持建模者根据实验数据识别基于ODE的模型中可能的误差来源。