Department of Mechanical and Aerospace Engineering, University of California, San Diego, La Jolla, California 92093, USA.
J Chem Phys. 2010 Oct 28;133(16):165101. doi: 10.1063/1.3496996.
Deterministic models of biochemical processes at the subcellular level might become inadequate when a cascade of chemical reactions is induced by a few molecules. Inherent randomness of such phenomena calls for the use of stochastic simulations. However, being computationally intensive, such simulations become infeasible for large and complex reaction networks. To improve their computational efficiency in handling these networks, we present a hybrid approach, in which slow reactions and fluxes are handled through exact stochastic simulation and their fast counterparts are treated partially deterministically through chemical Langevin equation. The classification of reactions as fast or slow is accompanied by the assumption that in the time-scale of fast reactions, slow reactions do not occur and hence do not affect the probability of the state. Our new approach also handles reactions with complex rate expressions such as Michaelis-Menten kinetics. Fluxes which cannot be modeled explicitly through reactions, such as flux of Ca(2+) from endoplasmic reticulum to the cytosol through inositol 1,4,5-trisphosphate receptor channels, are handled deterministically. The proposed hybrid algorithm is used to model the regulation of the dynamics of cytosolic calcium ions in mouse macrophage RAW 264.7 cells. At relatively large number of molecules, the response characteristics obtained with the stochastic and deterministic simulations coincide, which validates our approach in the limit of large numbers. At low doses, the response characteristics of some key chemical species, such as levels of cytosolic calcium, predicted with stochastic simulations, differ quantitatively from their deterministic counterparts. These observations are ubiquitous throughout dose response, sensitivity, and gene-knockdown response analyses. While the relative differences between the peak-heights of the cytosolic [Ca(2+)] time-courses obtained from stochastic (mean of 16 realizations) and deterministic simulations are merely 1%-4% for most perturbations, it is specially sensitive to levels of G(βγ) (relative difference as large as 90% at very low G(βγ)).
当一系列化学反应被少数分子诱导时,亚细胞水平的生化过程的确定性模型可能会变得不充分。这种现象的固有随机性要求使用随机模拟。然而,由于计算量很大,对于大型和复杂的反应网络,这种模拟变得不可行。为了提高处理这些网络的计算效率,我们提出了一种混合方法,其中通过精确的随机模拟处理缓慢的反应和通量,并且通过化学 Langevin 方程部分确定性地处理它们的快速对应物。将反应分类为快速或缓慢伴随着这样的假设,即在快速反应的时间尺度内,缓慢反应不会发生,因此不会影响状态的概率。我们的新方法还处理具有复杂速率表达式的反应,如米氏动力学。无法通过反应明确建模的通量,例如通过肌醇 1,4,5-三磷酸受体通道从内质网到细胞质的 Ca(2+)通量,通过确定性方法处理。所提出的混合算法用于模拟小鼠巨噬细胞 RAW 264.7 细胞中细胞质钙离子动力学的调节。在相对大量的分子中,随机和确定性模拟获得的响应特征相吻合,这在大量的极限中验证了我们的方法。在低剂量下,一些关键化学物质的响应特征,如细胞质钙水平,用随机模拟预测的,在数量上与它们的确定性对应物不同。这些观察结果在整个剂量反应、敏感性和基因敲除反应分析中都是普遍存在的。虽然来自随机(16 次实现的平均值)和确定性模拟的细胞质[Ca(2+)]时间过程的峰值高度之间的相对差异对于大多数扰动仅为 1%-4%,但它对 G(βγ)的水平特别敏感(在非常低的 G(βγ)下,相对差异高达 90%)。