Ihekwaba Adaoha E C, Sedwards Sean
INRIA Rennes-Bretagne Atlantique Campus Universitaire de Beaulieu, Rennes Cedex, France.
BMC Syst Biol. 2011 Dec 22;5:203. doi: 10.1186/1752-0509-5-203.
Constructing predictive dynamic models of interacting signalling networks remains one of the great challenges facing systems biology. While detailed dynamical data exists about individual pathways, the task of combining such data without further lengthy experimentation is highly nontrivial. The communicating links between pathways, implicitly assumed to be unimportant and thus excluded, are precisely what become important in the larger system and must be reinstated. To maintain the delicate phase relationships between signals, signalling networks demand accurate dynamical parameters, but parameters optimised in isolation and under varying conditions are unlikely to remain optimal when combined. The computational burden of estimating parameters increases exponentially with increasing system size, so it is crucial to find precise and efficient ways of measuring the behaviour of systems, in order to re-use existing work.
Motivated by the above, we present a new frequency domain-based systematic analysis technique that attempts to address the challenge of network assembly by defining a rigorous means to quantify the behaviour of stochastic systems. As our focus we construct a novel coupled oscillatory model of p53, NF-kB and the mammalian cell cycle, based on recent experimentally verified mathematical models. Informed by online databases of protein networks and interactions, we distilled their key elements into simplified models containing the most significant parts. Having coupled these systems, we constructed stochastic models for use in our frequency domain analysis. We used our new technique to investigate the crosstalk between the components of our model and measure the efficacy of certain network-based heuristic measures.
We find that the interactions between the networks we study are highly complex and not intuitive: (i) points of maximum perturbation do not necessarily correspond to points of maximum proximity to influence; (ii) increased coupling strength does not necessarily increase perturbation; (iii) different perturbations do not necessarily sum and (iv) overall, susceptibility to perturbation is amplitude and frequency dependent and cannot easily be predicted by heuristic measures.Our methodology is particularly relevant for oscillatory systems, though not limited to these, and is most revealing when applied to the results of stochastic simulation. The technique is able to characterise precisely the distance in behaviour between different models, different systems and different parts within the same system. It can also measure the difference between different simulation algorithms used on the same system and can be used to inform the choice of dynamic parameters. By measuring crosstalk between subsystems it can also indicate mechanisms by which such systems may be controlled in experiments and therapeutics. We have thus found our technique of frequency domain analysis to be a valuable benchmark systems-biological tool.
构建相互作用信号网络的预测动态模型仍然是系统生物学面临的重大挑战之一。虽然存在关于单个信号通路的详细动态数据,但在不进行进一步冗长实验的情况下组合这些数据的任务非常复杂。信号通路之间的通信链接,在之前被隐含地认为不重要而被排除在外,而在更大的系统中这些链接恰恰变得至关重要,必须予以恢复。为了维持信号之间微妙的相位关系,信号网络需要精确的动态参数,但在孤立且不同条件下优化的参数在组合时不太可能保持最优。随着系统规模的增加,估计参数的计算负担呈指数增长,因此找到精确且高效的方法来测量系统行为以复用现有工作至关重要。
基于上述原因,我们提出了一种新的基于频域的系统分析技术,该技术试图通过定义一种严格的方法来量化随机系统的行为,以应对网络组装的挑战。作为我们的重点,我们基于最近经过实验验证的数学模型,构建了一个关于p53、NF-κB和哺乳动物细胞周期的新型耦合振荡模型。依据蛋白质网络和相互作用的在线数据库,我们将其关键要素提炼成包含最重要部分的简化模型。在耦合这些系统后,我们构建了用于频域分析的随机模型。我们使用新技术研究模型组件之间的串扰,并测量某些基于网络的启发式度量的功效。
我们发现我们所研究的网络之间的相互作用高度复杂且不直观:(i)最大扰动点不一定对应最接近影响的点;(ii)耦合强度增加不一定会增加扰动;(iii)不同的扰动不一定相加;(iv)总体而言,对扰动的敏感性取决于幅度和频率,并且不容易通过启发式度量来预测。我们的方法对于振荡系统特别相关,尽管不限于这些系统,并且在应用于随机模拟结果时最具启发性。该技术能够精确表征不同模型、不同系统以及同一系统内不同部分之间行为的差异。它还可以测量在同一系统上使用的不同模拟算法之间的差异,并可用于指导动态参数的选择。通过测量子系统之间的串扰,它还可以指出在实验和治疗中控制此类系统的机制。因此,我们发现我们的频域分析技术是一种有价值的基准系统生物学工具。