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A Large-Scale Assessment of Exact Model Reduction in the BioModels Repository

机译:在BioModels存储库中对精确模型简化进行大规模评估

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Chemical reaction networks are a popular formalism for modeling biological processes which supports both a deterministic and a stochastic interpretation based on ordinary differential equations and continuous-time Markov chains, respectively. In most cases, these models do not enjoy analytical solution, thus typically requiring expensive computational methods based on numerical solvers or stochastic simulations. Exact model reduction techniques can be used as an aid to lower the analysis cost by providing reduced networks that preserve the dynamics of interest to the modeler. We hereby consider a family of techniques for both deterministic and stochastic networks which are based on equivalence relations over the species in the network, leading to a coarse graining which provides the exact aggregate time-course evolution for each equivalence class. We present a large-scale empirical assessment on the BioModels repository by measuring their compression capability over 667 models. Through a number of selected case studies, we also show their ability in yielding physically interpretable reductions that can reveal dynamical patterns of the bio-molecular processes under consideration.
机译:化学反应网络是一种流行的形式化生物学过程建模方法,它支持分别基于常微分方程和连续时间马尔可夫链的确定性和随机性解释。在大多数情况下,这些模型不具有解析性,因此通常需要基于数值求解器或随机模拟的昂贵计算方法。精确的模型简化技术可通过提供简化的网络来保持建模人员感兴趣的动态,从而帮助降低分析成本。我们在此考虑一整套基于确定性网络和随机性网络的等价关系技术,它们基于网络中物种的等价关系,从而导致了粗糙的粗化,为每个等价类提供了精确的总时程演化。我们通过测量667个模型的压缩能力,对BioModels储存库进行了大规模的经验评估。通过一些选定的案例研究,我们还显示了它们产生物理上可解释的还原的能​​力,这些还原可揭示所考虑的生物分子过程的动力学模式。

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