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Generalized Ensemble Methods For De Novo Structure Prediction

机译:De Novo结构预测的广义集成方法

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Current methods for predicting protein structure depend on two interrelated components: (ⅰ) an energy function that should have a low value near the correct structure and (ⅱ) a method for searching through different conformations of the polypeptide chain. Identification of the most efficient search methods is essential if we are to be able to apply such methods broadly and with confidence. In addition, efficient search methods provide a rigorous test of existing energy functions, which are generally knowledge-based and contain different terms added together with arbitrary weights. Here, we test different search methods with one of the most accurate and predictive energy functions, namely Rosetta the knowledge-based force-field from Baker's group [Simons K, Kooperberg C, Huang E, Baker D (1997) J Mo/Bio/268:209-225]. We use an implementation of a generalized ensemble search method to scale relevant parts of the energy function. This method, known as hamiltonian Replica Exchange Monte Carlo, outperforms the original Monte Carlo Simulated Annealing used in the Rosetta package in terms of sampling low-energy states. It also outperforms another widely used generalized ensemble search method known as Temperature Replica Exchange Monte Carlo. Our results reveal clear deficiencies in the low-resolution Rosetta energy function in that the lowest energy structures are not necessarily the most native-like. By using a set of nonnative low-energy structures found by our extensive sampling, we discovered that the long-range and short-range backbone hydrogen-bonding energy terms of the Rosetta energy discriminate between the non-native and native-like structures significantly better than the low-resolution score used in Rosetta.
机译:当前预测蛋白质结构的方法取决于两个相互关联的成分:(ⅰ)在正确结构附近应具有较低值的能量函数,以及(ⅱ)搜索多肽链不同构象的方法。要使我们能够广泛而有信心地应用这些方法,最有效的搜索方法的识别至关重要。另外,有效的搜索方法对现有的能量函数进行了严格的测试,这些能量函数通常基于知识,并且包含不同的术语以及任意的权重。在这里,我们使用最准确且可预测的能量函数之一测试不同的搜索方法,即Rosetta来自贝克小组的基于知识的力场[Simons K,Kooperberg C,Huang E,Baker D(1997)J Mo / Bio / 268:209-225]。我们使用广义集成搜索方法的实现来缩放能量函数的相关部分。这种方法被称为汉密尔顿副本交换蒙特卡洛(Hamiltonian Replica Exchange Monte Carlo),在采样低能态方面优于Rosetta软件包中使用的原始蒙特卡罗模拟退火。它也胜过另一种广泛使用的广义集合搜索方法,称为“温度副本交换蒙特卡洛”。我们的结果揭示了低分辨率Rosetta能量函数的明显缺陷,因为最低的能量结构不一定是最自然的结构。通过使用我们广泛采样中发现的一组非本征低能结构,我们发现Rosetta能量的长程和短程主链氢键能项可以更好地区分非本构和类似本构的结构比Rosetta中使用的低分辨率得分高。

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