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Computationally Efficient Modelling of Stochastic Spatio-Temporal Dynamics in Biomolecular Networks

机译:生物分子网络中随机时空动力学的计算有效建模

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Measurement techniques in biology are now able to provide data on the trajectories of multiple individual molecules simultaneously, motivating the development of techniques for the stochastic spatio-temporal modelling of biomolecular networks. However, standard approaches based on solving stochastic reaction-diffusion equations are computationally intractable for large-scale networks. We present a novel method for modeling stochastic and spatial dynamics in biomolecular networks using a simple form of the Langevin equation with noisy kinetic constants. Spatial heterogeneity in molecular interactions is decoupled into a set of compartments, where the distribution of molecules in each compartment is idealised as being uniform. The reactions in the network are then modelled by Langevin equations with correcting terms, that account for differences between spatially uniform and spatially non-uniform distributions, and that can be readily estimated from available experimental data. The accuracy and extreme computational efficiency of the approach is demonstrated on a model of the epidermal growth factor receptor network in the human mammary epithelial cell.
机译:生物学中的测量技术现在能够同时提供多个单个分子的轨迹数据,从而推动了生物分子网络随机时空建模技术的发展。然而,基于解决随机反应扩散方程的标准方法对于大规模网络而言在计算上是棘手的。我们提出了一种简单的方法,使用具有噪声动力学常数的兰格文方程的简单形式,对生物分子网络中的随机和空间动力学进行建模。分子相互作用中的空间异质性被分解为一组区室,其中每个区室中的分子分布被理想化为是均匀的。然后,通过带有校正项的Langevin方程对网络中的反应进行建模,该校正项解决了空间均匀分布和空间不均匀分布之间的差异,并且可以很容易地从可用的实验数据中进行估算。在人类乳腺上皮细胞中的表皮生长因子受体网络模型上证明了该方法的准确性和极高的计算效率。

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