Biophysics Program, University of Wisconsin, Madison, Wisconsin, USA.
Proteins. 2010 Nov 15;78(15):3156-65. doi: 10.1002/prot.22811.
We present a computationally efficient method for flexible refinement of docking predictions that reflects observed motions within a protein's structural class. Using structural homologs, we derive deformation models that capture likely motions. The models or "replicates" typically align along a rigid core, with a handful of flexible loops, linkers and tails. A few replicates can generate a much larger number of conformers, by exchanging each flexible region independently of the others. In this way, 10 replicates of a protein having 6 flexible regions can be used to generate a million conformations of a molecule. While this has obvious advantages in terms of sampling, the cost of assessing energies at every conformer is prohibitive, particularly when both molecules are flexible. Our approach addresses this combinatorial explosion, using key assumptions to compress the sampling by many orders of magnitude. ReplicOpter can perform hierarchical clustering from a list of rigid docking predictions and find nearby structures to any promising cluster representatives. These predicted complexes can then be refined and rescored. ReplicOpter's scoring function includes a Lennard-Jones potential softened using the Anderson-Chandler-Weeks decomposition, a desolvation term derived from the Atomic Contact Energy function, Coulombic electrostatics, hydrogen bonding, and terms to model pi-pi and pi-cation interactions. ReplicOpter has performed well on several recent CAPRI systems. We are presently benchmarking ReplicOpter on the complete docking benchmark set to fully establish its utility in refining rigid docking predictions and identifying near-native solutions.
我们提出了一种计算效率高的方法,可以灵活地改进对接预测,反映蛋白质结构类别内的观察到的运动。我们使用结构同源物来得出可以捕捉到可能的运动的变形模型。这些模型或“副本”通常沿着刚性核心对齐,带有少量灵活的环、接头和尾部。通过独立交换每个柔性区域,可以由少数几个副本生成更多数量的构象。通过这种方式,一个具有 6 个柔性区域的蛋白质的 10 个副本可以用于生成分子的 100 万个构象。虽然这种方法在采样方面具有明显的优势,但评估每个构象的能量的成本是不可行的,尤其是当两个分子都是灵活的时。我们的方法解决了这种组合爆炸问题,使用关键假设将采样压缩了许多数量级。ReplicOpter 可以从一组刚性对接预测列表中执行层次聚类,并找到任何有希望的聚类代表的附近结构。然后可以对这些预测的复合物进行细化和重新评分。ReplicOpter 的评分函数包括使用 Anderson-Chandler-Weeks 分解软化的 Lennard-Jones 势能、源自原子接触能量函数的去溶剂化项、库仑静电学、氢键以及模拟 pi-pi 和 pi-cation 相互作用的项。ReplicOpter 在最近的几个 CAPRI 系统中表现良好。我们目前正在对完整的对接基准集对 ReplicOpter 进行基准测试,以充分确定其在改进刚性对接预测和识别近天然解决方案方面的实用性。