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MUFOLD-DB: a processed protein structure database for protein structure prediction and analysis

机译:MUFOLD-DB:处理后的蛋白质结构数据库,用于蛋白质结构预测和分析

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Background Protein structure data in Protein Data Bank (PDB) are widely used in studies of protein function and evolution and in protein structure prediction. However, there are two main barriers in large-scale usage of PDB data: 1) PDB data are highly redundant in terms of sequence and structure similarity; and 2) many PDB files have issues due to inconsistency of data and standards as well as missing residues, so that automated retrieval and analysis are often difficult. Description To address these issues, we have created MUFOLD-DB http://mufold.org/mufolddb.php , a web-based database, to collect and process the weekly PDB files thereby providing users with non-redundant, cleaned and partially-predicted structure data. For each of the non-redundant sequences, we annotate the SCOP domain classification and predict structures of missing regions by loop modelling. In addition, evolutional information, secondary structure, disorder region, and processed three-dimensional structure are computed and visualized to help users better understand the protein. Conclusions MUFOLD-DB integrates processed PDB sequence and structure data and multiple computational results, provides a friendly interface for users to retrieve, browse and download these data, and offers several useful functionalities to facilitate users' data operation.
机译:背景技术蛋白质数据库(PDB)中的蛋白质结构数据已广泛用于蛋白质功能和进化研究以及蛋白质结构预测中。但是,大规模使用PDB数据存在两个主要障碍:1)PDB数据在序列和结构相似性方面具有很高的冗余度; 2)许多PDB文件由于数据和标准不一致以及遗留残渣而出现问题,因此自动检索和分析通常很困难。描述为了解决这些问题,我们创建了MUFOLD-DB http://mufold.org/mufolddb.php(基于Web的数据库)来收集和处理每周的PDB文件,从而为用户提供了非冗余,已清理和部分删除的文件,预测的结构数据。对于每个非冗余序列,我们注释SCOP域分类并通过循环建模预测缺失区域的结构。此外,进化信息,二级结构,无序区域和已处理的三维结构也经过计算和可视化,以帮助用户更好地了解蛋白质。结论MUFOLD-DB集成了已处理的PDB序列和结构数据以及多种计算结果,为用户提供了一个友好的界面来检索,浏览和下载这些数据,并提供了一些有用的功能来促进用户的数据操作。

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