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Graph-Based Community Detection for Decoy Selection in Template-Free Protein Structure Prediction

机译:基于图的社区检测用于无模板蛋白质结构预测中的诱饵选择

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摘要

Significant efforts in wet and dry laboratories are devoted to resolving molecular structures. In particular, computational methods can now compute thousands of tertiary structures that populate the structure space of a protein molecule of interest. These advances are now allowing us to turn our attention to analysis methodologies that are able to organize the computed structures in order to highlight functionally relevant structural states. In this paper, we propose a methodology that leverages community detection methods, designed originally to detect communities in social networks, to organize computationally probed protein structure spaces. We report a principled comparison of such methods along several metrics on proteins of diverse folds and lengths. We present a rigorous evaluation in the context of decoy selection in template-free protein structure prediction. The results make the case that network-based community detection methods warrant further investigation to advance analysis of protein structure spaces for automated selection of functionally relevant structures.
机译:湿实验室和干实验室的重大工作都致力于解决分子结构。特别是,计算方法现在可以计算成千上万的三级结构,这些结构构成了目标蛋白质分子的结构空间。这些进展现在使我们能够将注意力转移到能够组织计算结构以突出功能相关结构状态的分析方法上。在本文中,我们提出了一种利用社区检测方法的方法,该方法最初旨在检测社交网络中的社区,以组织经过计算的蛋白质结构空间。我们报告了这种方法的原理性比较,以及对不同倍数和长度的蛋白质的几种度量。在无模板的蛋白质结构预测中,我们在诱饵选择的背景下进行了严格的评估。结果表明,基于网络的社区检测方法值得进一步研究,以进一步分析蛋白质结构空间,以自动选择功能相关的结构。

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