一种识别蛋白质结构域家族最具代表性序列的序列数据挖掘协议

V. S. Gowri, K. Shameer, C. C. S. Reddy, P. Shingate, R. Sowdhamini
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引用次数: 2

摘要

蛋白质结构域是紧凑的、进化上保守的蛋白质单位,可用于全基因组测序项目中实现的大量基因产物的功能关联。同源性是由序列相似性推断出来的,通常是功能注释从已有结构域家族转移到基因产物的原因。序列分析协议由用于同源性搜索的家族参考序列指导,以减少此类大规模数据挖掘过程中的计算时间。由于蛋白质结构域家族具有多样性,因此使用定义良好、可重复的生物信息学协议从蛋白质结构域家族中确定一个最佳代表性序列成员是一项重要任务。我们报告了一种新的生物信息学协议,可用于从蛋白质结构域家族中识别最佳代表性序列(BRS)。该方法基于三种不同序列搜索程序实现的“覆盖率分析”得分,并对报告最佳代表性序列所获得的趋势进行评估。当使用隐马尔可夫模型进行搜索时,brp的最高平均覆盖率为66%。此外,在大型序列数据库中搜索时,选择特定于序列搜索方法的BRS是至关重要的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Sequence Data Mining Protocol to Identify Best Representative Sequence for Protein Domain Families
Protein domains are the compact, evolutionarily conserved units of proteins that can be utilized for function association of the large number of gene products realised from whole genome sequencing projects. Homology, inferred by sequence similarity, is usually a reason for transfer of function annotation from pre-existing domain families to gene products. Sequence analysis protocols are directed by the reference sequence of families used for homology searches to reduce computational time in such large-scale data mining processes. As protein domain families are diverse in nature, it is an important task to identify a single best representative sequence member from a protein domain family using a well-defined, reproducible bioinformatics protocol. We report a new bioinformatics protocol that can be used to identify best representative sequence (BRS) from protein domain families. The method is based on “coverage analysis” score implemented using three different sequence search programs and the trends obtained in reporting best representative sequence are assessed. The highest average coverage for BRPs was 66% when searched using Hidden Markov Models. Further, it is crucial to select BRS specific for a sequence search method when searching in large sequence databases.
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