Shaevitz Joshua W, Block Steven M, Schnitzer Mark J
Departments of Physics, Biological Sciences, and Applied Physics, Stanford University, Stanford, CA 94305-5020, USA.
Biophys J. 2005 Oct;89(4):2277-85. doi: 10.1529/biophysj.105.064295. Epub 2005 Jul 22.
Fluctuations in biochemical processes can provide insights into the underlying kinetics beyond what can be gleaned from studies of average rates alone. Historically, analysis of fluctuating transmembrane currents supplied information about ion channel conductance states and lifetimes before single-channel recording techniques emerged. More recently, fluctuation analysis has helped to define mechanochemical pathways and coupling ratios for the motor protein kinesin as well as to probe the contributions of static and dynamic disorder to the kinetics of single enzymes. As growing numbers of assays are developed for enzymatic or folding behaviors of single macromolecules, the range of applications for fluctuation analysis increases. To evaluate specific biochemical models against experimental data, one needs to predict analytically the distribution of times required for completion of each reaction pathway. Unfortunately, using traditional methods, such calculations can be challenging for pathways of even modest complexity. Here, we derive an exact expression for the distribution of completion times for an arbitrary pathway with a finite number of states, using a recursive method to solve algebraically for the appropriate moment-generating function. To facilitate comparisons with experiments on processive motor proteins, we develop a theoretical formalism for the randomness parameter, a dimensionless measure of the variance in motor output. We derive the randomness for motors that take steps of variable sizes or that move on heterogeneous substrates, and then discuss possible applications to enzymes such as RNA polymerase, which transcribes varying DNA sequences, and to myosin V and cytoplasmic dynein, which may advance by variable increments.
生化过程中的波动能够提供关于潜在动力学的见解,这些见解是仅从平均速率研究中无法获得的。历史上,在单通道记录技术出现之前,对波动的跨膜电流进行分析可提供有关离子通道电导状态和寿命的信息。最近,波动分析有助于确定驱动蛋白的机械化学途径和耦合比,并探究静态和动态无序对单酶动力学的贡献。随着针对单个大分子的酶促或折叠行为开发出越来越多的检测方法,波动分析的应用范围也在扩大。为了根据实验数据评估特定的生化模型,需要解析预测完成每个反应途径所需时间的分布。不幸的是,使用传统方法,对于即使是中等复杂度的途径,此类计算也可能具有挑战性。在此,我们使用递归方法代数求解适当的矩生成函数,得出具有有限数量状态的任意途径完成时间分布的精确表达式。为便于与进行性驱动蛋白的实验进行比较,我们为随机性参数开发了一种理论形式,它是驱动蛋白输出方差的无量纲度量。我们推导了步长可变或在异质底物上移动的驱动蛋白的随机性,然后讨论了其在诸如转录不同DNA序列的RNA聚合酶等酶以及可能以可变增量前进的肌球蛋白V和细胞质动力蛋白上的可能应用。