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A Novel Approach to Decoy Set Generation: Designing a Physical Energy Function Having Local Minima with Native Structure Characteristics

机译:诱饵集生成的新方法:设计具有局部最小值并具有固有结构特征的物理能量函数

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摘要

We suggest a new approach to the generation of candidate structures (decoys) for ab initio prediction of protein structures. Our method is based on random sampling of conformation space and subsequent local energy minimization. At the core of this approach lies the design of a novel type of energy function. This energy function has local minima with native structure characteristics and wide basins of attraction. The current work presents our motivation for deriving such an energy function and also tests the derived energy function.Our approach is novel in that it takes advantage of the inherently rough energy landscape of proteins, which is generally considered a major obstacle for protein structure prediction. When local minima have wide basins of attraction, the protein’s conformation space can be greatly reduced by the convergence of large regions of the space into single points, namely the local minima corresponding to these funnels. We have implemented this concept by an iterative process. The potential is first used to generate decoy sets and then we study these sets of decoys to guide further development of the potential. A key feature of our potential is the use of cooperative multi-body interactions that mimic the role of the entropic and solvent contributions to the free energy.The validity and value of our approach is demonstrated by applying it to 14 diverse, small proteins. We show that, for these proteins, the size of conformation space is considerably reduced by the new energy function. In fact, the reduction is so substantial as to allow efficient conformational sampling. As a result we are able to find a significant number of near-native conformations in random searches performed with limited computational resources.
机译:我们建议一种从头开始预测蛋白质结构的候选结构(诱饵)的新方法。我们的方法基于构象空间的随机采样和随后的局部能量最小化。这种方法的核心是新型能量函数的设计。该能量函数具有局部最小值,具有局部结构特征和宽广的吸引力盆地。当前的工作展示了我们推导这种能量函数的动机,并且还测试了推导的能量函数。我们的方法是新颖的,因为它利用了蛋白质固有的粗糙能量格局,这通常被认为是预测蛋白质结构的主要障碍。当局部极小区域具有宽泛的吸引盆时,可以通过将空间的大部分区域汇聚成单个点(即与这些漏斗相对应的局部极小区域)来大大减小蛋白质的构象空间。我们通过迭代过程实现了这一概念。势首先用于生成诱饵集,然后我们研究这些诱饵集以指导势的进一步发展。我们潜力的一个关键特征是使用协同多体相互作用来模拟熵和溶剂对自由能的作用。通过将其应用于14种不同的小蛋白质,证明了我们方法的有效性和价值。我们表明,对于这些蛋白质,构象空间的大小被新的能量功能大大降低了。实际上,这种减少是如此之大以至于可以进行有效的构象采样。结果,在有限的计算资源下进行的随机搜索中,我们能够找到大量的接近自然构象。

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