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细菌趋化信号通路的空间扩展随机模型。

A spatially extended stochastic model of the bacterial chemotaxis signalling pathway.

作者信息

Shimizu Thomas S, Aksenov Sergej V, Bray Dennis

机构信息

Department of Zoology, University of Cambridge, UK.

出版信息

J Mol Biol. 2003 May 30;329(2):291-309. doi: 10.1016/s0022-2836(03)00437-6.

Abstract

We have combined two distinct but related stochastic approaches to model the Escherichia coli chemotaxis pathway. Reactions involving cytosolic components of the pathway were assumed to obey the laws of conventional stochastic chemical kinetics, while the clustered membrane receptors were represented in two-dimensional arrays similar to the Ising model. Receptors were assumed to flip between an active and an inactive state with probabilities dependent upon three energy inputs: ligand binding, methylation level due to adaptation, and the activity of neighbouring receptors. Examination of models with different lattice size and geometry showed that the sensitivity to stimuli increases with lattice size and the nearest-neighbour coupling strength up to a critical point, but this amplification was also accompanied by a proportional increase in steady-state noise. Multiple methylation of receptors resulted in diminished signal-to-noise ratio, but showed improved stability to variation in the coupling strength and increased gain. Under the best conditions the simulated output of a coupled lattice of receptors closely matched the time-course and amplitude found experimentally in living bacteria. The model also has some of the properties of a cellular automaton and shows an unexpected emergence of spatial patterns of methylation within the receptor lattice.

摘要

我们结合了两种不同但相关的随机方法来模拟大肠杆菌趋化途径。假定涉及该途径胞质成分的反应遵循传统随机化学动力学定律,而聚集的膜受体则以类似于伊辛模型的二维阵列表示。假定受体在活性状态和非活性状态之间翻转,其概率取决于三种能量输入:配体结合、适应导致的甲基化水平以及相邻受体的活性。对具有不同晶格大小和几何形状的模型进行研究表明,对刺激的敏感性随着晶格大小和最近邻耦合强度增加至临界点而增强,但这种放大也伴随着稳态噪声的成比例增加。受体的多次甲基化导致信噪比降低,但对耦合强度变化的稳定性提高且增益增加。在最佳条件下,受体耦合晶格的模拟输出与在活细菌中实验发现的时间进程和幅度紧密匹配。该模型还具有细胞自动机的一些特性,并显示出受体晶格内甲基化空间模式的意外出现。

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