Institute for Bioengineering, The University of Edinburgh, Edinburgh, EH9 3BF, United Kingdom.
SynthSys - Centre for Synthetic and Systems Biology, The University of Edinburgh, Edinburgh, EH9 3BF, United Kingdom.
ACS Synth Biol. 2020 Nov 20;9(11):3134-3144. doi: 10.1021/acssynbio.0c00393. Epub 2020 Nov 5.
Modeling parts and circuits represents a significant roadblock to automating the Design-Build-Test-Learn cycle in synthetic biology. Once models are developed, discriminating among them requires informative data, computational resources, and skills that might not be readily available. The high cost entailed in model discrimination frequently leads to subjective choices on the selected structures and, in turn, to suboptimal models. Here, we outline frequentist and Bayesian approaches to model discrimination. We ranked three candidate models of a genetic toggle switch, which was adopted as a test case, according to the support from data. We show that, in each framework, efficient model discrimination can be achieved via optimally designed experiments. We offer a dynamical-systems interpretation of our optimization results and investigate their sensitivity to key parameters in the characterization of synthetic circuits. Our approach suggests that optimal experimental design is an effective strategy to discriminate between competing models of a gene regulatory network. Independent of the adopted framework, optimally designed perturbations exploit regions in the input space that maximally distinguish predictions from the competing models.
建模部分和电路代表了自动化合成生物学中的设计-构建-测试-学习循环的一个重大障碍。一旦开发了模型,就需要有信息丰富的数据、计算资源和技能来对其进行区分,而这些资源可能并不容易获得。模型区分的高成本经常导致对所选结构的主观选择,进而导致次优模型。在这里,我们概述了模型区分的频率论和贝叶斯方法。我们根据数据对遗传 toggle switch 的三个候选模型进行了排名,该模型被用作测试用例。我们表明,在每个框架中,通过最优设计的实验都可以实现有效的模型区分。我们对我们的优化结果进行了动力学系统解释,并研究了它们对合成电路特性中关键参数的敏感性。我们的方法表明,最优实验设计是区分基因调控网络竞争模型的有效策略。无论采用哪种框架,最优设计的扰动都利用了输入空间中的区域,这些区域最大程度地区分了来自竞争模型的预测。