IEEE/ACM Trans Comput Biol Bioinform. 2018 Jan-Feb;15(1):218-230. doi: 10.1109/TCBB.2016.2602873. Epub 2016 Aug 25.
In systems biology, network models are often used to study interactions among cellular components, a salient aim being to develop drugs and therapeutic mechanisms to change the dynamical behavior of the network to avoid undesirable phenotypes. Owing to limited knowledge, model uncertainty is commonplace and network dynamics can be updated in different ways, thereby giving multiple dynamic trajectories, that is, dynamics uncertainty. In this manuscript, we propose an experimental design method that can effectively reduce the dynamics uncertainty and improve performance in an interaction-based network. Both dynamics uncertainty and experimental error are quantified with respect to the modeling objective, herein, therapeutic intervention. The aim of experimental design is to select among a set of candidate experiments the experiment whose outcome, when applied to the network model, maximally reduces the dynamics uncertainty pertinent to the intervention objective.
在系统生物学中,网络模型通常用于研究细胞成分之间的相互作用,一个显著的目标是开发药物和治疗机制来改变网络的动态行为,以避免不良表型。由于知识有限,模型不确定性是很常见的,并且网络动态可以以不同的方式更新,从而产生多个动态轨迹,即动态不确定性。在本文中,我们提出了一种实验设计方法,可以有效地减少基于相互作用的网络中的动态不确定性并提高性能。动力学不确定性和实验误差都相对于建模目标(在此为治疗干预)进行量化。实验设计的目的是在一组候选实验中选择一个实验,当将该实验应用于网络模型时,该实验的结果最大程度地降低了与干预目标相关的动力学不确定性。