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首页> 外文期刊>Journal of Bioinformatics and Computational Biology >In search of the protein native state with a probabilistic sampling approach
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In search of the protein native state with a probabilistic sampling approach

机译:用概率抽样方法寻找蛋白质的天然状态

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The three-dimensional structure of a protein is a key determinant of its biological function. Given the cost and time required to acquire this structure through experimental means, computational models are necessary to complement wet-lab efforts. Many computational techniques exist for navigating the high-dimensional protein conformational search space, which is explored for low-energy conformations that comprise a protein's native states. This work proposes two strategies to enhance the sampling of conformations near the native state. An enhanced fragment library with greater structural diversity is used to expand the search space in the context of fragment-based assembly. To manage the increased complexity of the search space, only a representative subset of the sampled conformations is retained to further guide the search towards the native state. Our results make the case that these two strategies greatly enhance the sampling of the conformational space near the native state. A detailed comparative analysis shows that our approach performs as well as state-of-the-art ab initio structure prediction protocols.
机译:蛋白质的三维结构是其生物学功能的关键决定因素。给定通过实验手段获得该结构所需的成本和时间,因此必须有计算模型来补充湿实验室的工作。存在许多用于导航高维蛋白质构象搜索空间的计算技术,已针对包含蛋白质天然状态的低能量构象进行了探索。这项工作提出了两种策略来增强自然状态附近构象的采样。具有更大结构多样性的增强片段库用于在基于片段的程序集的上下文中扩展搜索空间。为了管理搜索空间的增加的复杂性,仅保留采样构象的代表性子集,以进一步将搜索引导到原始状态。我们的结果表明,这两种策略极大地增强了原始状态附近构象空间的采样。详细的比较分析表明,我们的方法与最新的从头算结构预测协议一样执行。

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