Local weighting schemes for protein multiple sequence alignment

Jaap Heringa
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引用次数: 49

Abstract

This paper describes three weighting schemes for improving the accuracy of progressive multiple sequence alignment methods: (1) global profile pre-processing, to capture for each sequence information about other sequences in a profile before the actual multiple alignment takes place; (2) local pre-processing; which incorporates a new protocol to only use non-overlapping local sequence regions to construct the pre-processed profiles; and (3) local–global alignment, a weighting scheme based on the double dynamic programming (DDP) technique to softly bias global alignment to local sequence motifs. The first two schemes allow the compilation of residue-specific multiple alignment reliability indices, which can be used in an iterative fashion. The schemes have been implemented with associated iterative modes in the PRALINE multiple sequence alignment method, and have been evaluated using the BAliBASE benchmark alignment database. These tests indicate that PRALINE is a toolbox able to build alignments with very high quality. We found that local profile pre-processing raises the alignment quality by 5.5% compared to PRALINE alignments generated under default conditions. Iteration enhances the quality by a further percentage point. The implications of multiple alignment scoring functions and iteration in relation to alignment quality and benchmarking are discussed.

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蛋白质多序列比对的局部加权方法
为了提高渐进式多序列比对方法的精度,本文提出了三种加权方案:(1)全局剖面预处理,在实际进行多序列比对之前,为每个序列捕获剖面中其他序列的信息;(2)局部预处理;该算法引入了一种新的协议,只使用不重叠的局部序列区域来构建预处理后的轮廓;(3)局部-全局对齐,这是一种基于双动态规划(DDP)技术的加权方案,可使全局对齐对局部序列基元进行软偏置。前两种方案允许编制残差特定的多重对准可靠性指标,这些指标可以以迭代方式使用。在PRALINE多序列比对方法中,采用相关迭代模式对方案进行了实现,并利用BAliBASE基准比对数据库对方案进行了评价。这些测试表明PRALINE是一个工具箱,能够以非常高的质量构建校准。我们发现,与默认条件下生成的PRALINE对齐相比,本地配置文件预处理将对齐质量提高了5.5%。迭代将质量进一步提高了一个百分点。讨论了多对齐评分函数和迭代对对齐质量和基准的影响。
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Instructions to authors Author Index Keyword Index Volume contents New molecular surface-based 3D-QSAR method using Kohonen neural network and 3-way PLS
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