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Inference of complex biological networks: distinguishability issues and optimization-based solutions

机译:复杂生物网络的推论:可分辨性问题和基于优化的解决方案

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Background The inference of biological networks from high-throughput data has received huge attention during the last decade and can be considered an important problem class in systems biology. However, it has been recognized that reliable network inference remains an unsolved problem. Most authors have identified lack of data and deficiencies in the inference algorithms as the main reasons for this situation. Results We claim that another major difficulty for solving these inference problems is the frequent lack of uniqueness of many of these networks, especially when prior assumptions have not been taken properly into account. Our contributions aid the distinguishability analysis of chemical reaction network (CRN) models with mass action dynamics. The novel methods are based on linear programming (LP), therefore they allow the efficient analysis of CRNs containing several hundred complexes and reactions. Using these new tools and also previously published ones to obtain the network structure of biological systems from the literature, we find that, often, a unique topology cannot be determined, even if the structure of the corresponding mathematical model is assumed to be known and all dynamical variables are measurable. In other words, certain mechanisms may remain undetected (or they are falsely detected) while the inferred model is fully consistent with the measured data. It is also shown that sparsity enforcing approaches for determining 'true' reaction structures are generally not enough without additional prior information. Conclusions The inference of biological networks can be an extremely challenging problem even in the utopian case of perfect experimental information. Unfortunately, the practical situation is often more complex than that, since the measurements are typically incomplete, noisy and sometimes dynamically not rich enough, introducing further obstacles to the structure/parameter estimation process. In this paper, we show how the structural uniqueness and identifiability of the models can be guaranteed by carefully adding extra constraints, and that these important properties can be checked through appropriate computation methods.
机译:背景技术在过去十年中,从高通量数据推断生物网络受到了极大关注,可以认为是系统生物学中的重要问题类别。然而,已经认识到,可靠的网络推断仍然是未解决的问题。大多数作者已将推理算法中的数据不足和缺陷确定为造成这种情况的主要原因。结果我们声称,解决这些推理问题的另一个主要困难是许多此类网络经常缺乏唯一性,尤其是当先前的假设没有得到适当考虑时。我们的贡献有助于通过质量作用动力学对化学反应网络(CRN)模型进行可分辨性分析。新颖的方法基于线性规划(LP),因此它们允许对包含数百种配合物和反应的CRN进行有效分析。使用这些新工具以及以前发布的工具从文献中获取生物系统的网络结构,我们发现,即使假定相应数学模型的结构是已知的,但通常无法确定唯一的拓扑动态变量是可测量的。换句话说,在推断的模型与测量数据完全一致的同时,某些机制可能仍然未被检测到(或者被错误地检测到)。还表明,如果没有其他先验信息,用于确定“真实”反应结构的稀疏实施方法通常是不够的。结论即使在理想的实验信息的乌托邦情况下,生物网络的推理也可能是一个极具挑战性的问题。不幸的是,实际情况通常比这更复杂,因为测量通常不完整,嘈杂,有时动态不够丰富,给结构/参数估计过程带来了更多障碍。在本文中,我们展示了如何通过谨慎添加额外约束来保证模型的结构唯一性和可识别性,以及可以通过适当的计算方法来检查这些重要属性。

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