Institute for Advanced Computer Science, University of Maryland , College Park, Maryland 20742, United States.
J Phys Chem B. 2013 Oct 17;117(41):12360-74. doi: 10.1021/jp4050594. Epub 2013 Oct 7.
Weak and ultraweak protein-protein association play a role in molecular recognition and can drive spontaneous self-assembly and aggregation. Such interactions are difficult to detect experimentally, and are a challenge to the force field and sampling technique. A method is proposed to identify low-population protein-protein binding modes in aqueous solution. The method is designed to identify preferential first-encounter complexes from which the final complex(es) at equilibrium evolve. A continuum model is used to represent the effects of the solvent, which accounts for short- and long-range effects of water exclusion and for liquid-structure forces at protein/liquid interfaces. These effects control the behavior of proteins in close proximity and are optimized on the basis of binding enthalpy data and simulations. An algorithm is described to construct a biasing function for self-adaptive configurational-bias Monte Carlo of a set of interacting proteins. The function allows mixing large and local changes in the spatial distribution of proteins, thereby enhancing sampling of relevant microstates. The method is applied to three binary systems. Generalization to multiprotein complexes is discussed.
弱相互作用和超弱相互作用的蛋白质-蛋白质缔合在分子识别中起作用,并能驱动自发的自组装和聚集。这些相互作用很难在实验中检测到,这对力场和采样技术来说是一个挑战。提出了一种在水溶液中识别低丰度蛋白质-蛋白质结合模式的方法。该方法旨在从优先首次遭遇复合物中识别最终平衡复合物的演变。连续模型用于表示溶剂的影响,该模型考虑了水排斥的短程和长程效应以及蛋白质/液相界面处的液体结构力。这些效应控制了近距离处蛋白质的行为,并根据结合焓数据和模拟进行了优化。描述了一种算法,用于构建一组相互作用的蛋白质的自适应构象偏差蒙特卡罗模拟的偏置函数。该函数允许在蛋白质空间分布中混合大的和局部的变化,从而增强相关微观状态的采样。该方法应用于三个二元系统。讨论了推广到多蛋白复合物的问题。