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Revisiting amino acid substitution matrices for identifying distantly related proteins

机译:重新审视氨基酸替代矩阵以鉴定远距离相关的蛋白质

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摘要

>Motivation: Although many amino acid substitution matrices have been developed, it has not been well understood which is the best for similarity searches, especially for remote homology detection. Therefore, we collected information related to existing matrices, condensed it and derived a novel matrix that can detect more remote homology than ever.>Results: Using principal component analysis with existing matrices and benchmarks, we developed a novel matrix, which we designate as MIQS. The detection performance of MIQS is validated and compared with that of existing general purpose matrices using SSEARCH with optimized gap penalties for each matrix. Results show that MIQS is able to detect more remote homology than the existing matrices on an independent dataset. In addition, the performance of our developed matrix was superior to that of CS-BLAST, which was a novel similarity search method with no amino acid matrix. We also evaluated the alignment quality of matrices and methods, which revealed that MIQS shows higher alignment sensitivity than that with the existing matrix series and CS-BLAST. Fundamentally, these results are expected to constitute good proof of the availability and/or importance of amino acid matrices in sequence analysis. Moreover, with our developed matrix, sophisticated similarity search methods such as sequence–profile and profile–profile comparison methods can be improved further.>Availability and implementation: Newly developed matrices and datasets used for this study are available at .>Contact: >Supplementary information: are available at Bioinformatics online
机译:>动机:尽管已经开发了许多氨基酸取代矩阵,但人们尚未很好地了解这对于相似性搜索(尤其是远程同源性检测)而言是最佳的。因此,我们收集了与现有矩阵有关的信息,将其压缩并导出了一个新颖的矩阵,该矩阵可以比以往任何时候检测到更多的远程同源性。 ,我们将其指定为MIQS。使用SSEARCH对MIQS的检测性能进行了验证,并将其与现有通用矩阵的检测性能进行了比较,并对每个矩阵优化了间隙罚分。结果表明,MIQS能够比独立数据集中的现有矩阵检测到更多的远程同源性。此外,我们开发的矩阵的性能优于CS-BLAST,后者是一种没有氨基酸矩阵的新型相似性搜索方法。我们还评估了矩阵和方法的对齐质量,这表明MIQS显示出比现有矩阵系列和CS-BLAST更高的对齐灵敏度。从根本上讲,这些结果有望构成序列分析中氨基酸矩阵的可用性和/或重要性的良好证明。此外,借助我们开发的矩阵,可以进一步改善复杂的相似性搜索方法,例如序列-谱和谱-谱比较方法。>可用性和实现:可在以下位置获得用于本研究的最新开发的矩阵和数据集: 。>联系方式: >补充信息:可从在线生物信息学获得

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