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Fragment-free approach to protein folding using conditional neural fields

机译:使用条件神经场的无片段蛋白质折叠方法

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摘要

>Motivation: One of the major bottlenecks with ab initio protein folding is an effective conformation sampling algorithm that can generate native-like conformations quickly. The popular fragment assembly method generates conformations by restricting the local conformations of a protein to short structural fragments in the PDB. This method may limit conformations to a subspace to which the native fold does not belong because (i) a protein with really new fold may contain some structural fragments not in the PDB and (ii) the discrete nature of fragments may prevent them from building a native-like fold. Previously we have developed a conditional random fields (CRF) method for fragment-free protein folding that can sample conformations in a continuous space and demonstrated that this CRF method compares favorably to the popular fragment assembly method. However, the CRF method is still limited by its capability of generating conformations compatible with a sequence.>Results: We present a new fragment-free approach to protein folding using a recently invented probabilistic graphical model conditional neural fields (CNF). This new CNF method is much more powerful than CRF in modeling the sophisticated protein sequence-structure relationship and thus, enables us to generate native-like conformations more easily. We show that when coupled with a simple energy function and replica exchange Monte Carlo simulation, our CNF method can generate decoys much better than CRF on a variety of test proteins including the CASP8 free-modeling targets. In particular, our CNF method can predict a correct fold for T0496_D1, one of the two CASP8 targets with truly new fold. Our predicted model for T0496 is significantly better than all the CASP8 models.>Contact:
机译:>动机:从头算蛋白质折叠的主要瓶颈之一是有效的构象采样算法,该算法可以快速生成类似天然的构象。流行的片段组装方法通过将蛋白质的局部构象限制为PDB中的短结构片段来生成构象。这种方法可能会将构象限制在天然折叠不属于的子空间中,因为(i)具有真正新折叠的蛋白质可能包含PDB中不存在的某些结构片段,并且(ii)片段的离散性质可能会阻止它们构建一个天然的褶皱。以前,我们已经开发出了一种用于无片段蛋白折叠的条件随机场(CRF)方法,该方法可以在连续空间中采样构象,并证明该CRF方法与流行的片段组装方法相比具有优势。但是,CRF方法仍然受其生成与序列兼容的构象的能力的限制。>结果:我们使用最近发明的概率图形模型条件神经场,提出了一种新的无片段蛋白折叠方法。 CNF)。这种新的CNF方法在建模复杂的蛋白质序列-结构关系方面比CRF强大得多,因此使我们能够更轻松地生成类似天然的构象。我们表明,当与简单的能量函数和副本交换蒙特卡洛模拟结合使用时,我们的CNF方法在包括CASP8自由建模靶在内的多种测试蛋白上可以产生比CRF更好的诱饵。特别是,我们的CNF方法可以预测T0496_D1的正确折叠,T0496_D1是具有真正新折叠的两个CASP8目标之一。我们对T0496的预测模型明显优于所有CASP8模型。>联系方式:

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