Department of Biological Sciences and Lane Center for Computational Biology, Carnegie Mellon University, 654 Mellon Institute, 4400 Fifth Avenue., Pittsburgh, PA, USA.
Sci Rep. 2011;1:97. doi: 10.1038/srep00097. Epub 2011 Sep 20.
Molecular crowding is a critical feature distinguishing intracellular environments from idealized solution-based environments and is essential to understanding numerous biochemical reactions, from protein folding to signal transduction. Many biochemical reactions are dramatically altered by crowding, yet it is extremely difficult to predict how crowding will quantitatively affect any particular reaction systems. We previously developed a novel stochastic off-lattice model to efficiently simulate binding reactions across wide parameter ranges in various crowded conditions. We now show that a polynomial regression model can incorporate several interrelated parameters influencing chemistry under crowded conditions. The unified model of binding equilibria accurately reproduces the results of particle simulations over a broad range of variation of six physical parameters that collectively yield a complicated, non-linear crowding effect. The work represents an important step toward the long-term goal of computationally tractable predictive models of reaction chemistry in the cellular environment.
分子拥挤是区分细胞内环境与理想化溶液环境的关键特征,对于理解从蛋白质折叠到信号转导的众多生化反应至关重要。许多生化反应受到拥挤的显著影响,但很难预测拥挤将如何定量影响任何特定的反应系统。我们之前开发了一种新的随机非格模型,可在各种拥挤条件下有效地模拟宽参数范围内的结合反应。我们现在表明,多项式回归模型可以包含几个相互关联的参数,这些参数影响拥挤条件下的化学。结合平衡的统一模型准确地再现了粒子模拟的结果,涵盖了六个物理参数的广泛变化范围,这些参数共同产生了复杂的非线性拥挤效应。这项工作是朝着在细胞环境中计算反应化学可预测模型的长期目标迈出的重要一步。