期刊论文详细信息
Evolutionary Bioinformatics
A Monte Carlo Method for Assessing the Quality of Duplication-Aware Alignment Algorithms
Valerio Freschi1 
关键词: duplications;    sequence alignment;    tandem repeat;    Monte Carlo simulation;    significance metrics;   
DOI  :  10.4137/EBO.S6662
学科分类:生物技术
来源: Sage Journals
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【 摘 要 】

The increasing availability of high throughput sequencing technologies poses several challenges concerning the analysis of genomic data. Within this context, duplication-aware sequence alignment taking into account complex mutation events is regarded as an important problem, particularly in light of recent evolutionary bioinformatics researches that highlighted the role of tandem duplications as one of the most important mutation events. Traditional sequence comparison algorithms do not take into account these events, resulting in poor alignments in terms of biological significance, mainly because of their assumption of statistical independence among contiguous residues. Several duplication-aware algorithms have been proposed in the last years which differ either for the type of duplications they consider or for the methods adopted to identify and compare them. However, there is no solution which clearly outperforms the others and no methods exist for assessing the reliability of the resulting alignments. This paper proposes a Monte Carlo method for assessing the quality of duplication-aware alignment algorithms and for driving the choice of the most appropriate alignment technique to be used in a specific context.

【 授权许可】

Unknown   

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