Abstract

BackgroundOligonucleotide design is known as a time-consuming work in bioinformatics. In order to accelerate and be efficient the oligonucleotide design process, one of widely used approach is the prescreening unreliable regions using a hashing (or seeding) algorithm. Since the seeding algorithm is originally proposed to increase sensitivity for local alignment, the specificity should be considered as well as the sensitivity for the oligonucleotide design problem. However, a measure of evaluating the seeds regarding how adequate and efficient they are in the oligo design is not yet proposed. Here, we propose novel measures of evaluating the seeding algorithms based on the discriminability and the efficiency.ResultsTo evaluate the proposed measures, we examine five seeding algorithms in oligonucleotide design. We carried out a series of experiments to compare the seeding algorithms. As the result, the spaced seed is recorded as the most efficient discriminative seed for oligo design. The performance of transition-constrained seed is slightly lower than the spaced seed. Because BLAT seeding algorithm and Vector seeding algorithm give poor scores in specificity and efficiency, we conclude that these algorithms are not adequate to design oligos.Consequently, we recommend spaced seeds or transition-constrained seeds with 15~18 weight in order to design oligos with the length of 50 mer. The empirical experiments in real biological data reveal that the recommended seeds show consequently good performance. We also propose a software package which enables the users to get the adequate seeds under their own experimental conditions.ConclusionOur study is valuable to the two points. One is that our study can be applied to the oligo design programs in order to improve the performance by suggesting the experiment-specific seeds. The other is that our study is useful to improve the performance of the mapping assembly in the field of Next-Generation Sequencing. Our proposed measures are originally designed to be used for oligo design but we expect that our study will be helpful to the other genomic tasks.

Highlights

  • Oligonucleotide design is known as a time-consuming work in bioinformatics

  • One is that our study can be applied to the oligo design programs in order to improve the performance by suggesting the experiment-specific seeds

  • The other is that our study is useful to improve the performance of the mapping assembly in the field of Next-Generation Sequencing

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Summary

Introduction

In order to accelerate and be efficient the oligonucleotide design process, one of widely used approach is the prescreening unreliable regions using a hashing (or seeding) algorithm. A measure of evaluating the seeds regarding how adequate and efficient they are in the oligo design is not yet proposed. Many heuristic algorithms have been applied to this problem as a filter to remove unreliable regions before checking the cross-hybridization. They are clustered into three major categories: multiple alignments [1], suffix tree [2], and hashing algorithm using seeds (shortly seeding algorithm) [3,4]. The seeding algorithm is the most widely used algorithm because of the fast search speed with allowing some mismatches

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