Abstract

BackgroundThe number of k-words shared between two sequences is a simple and effcient alignment-free sequence comparison method. This statistic, D2, has been used for the clustering of EST sequences. Sequence comparison based on D2 is extremely fast, its runtime is proportional to the size of the sequences under scrutiny, whereas alignment-based comparisons have a worst-case run time proportional to the square of the size. Recent studies have tackled the rigorous study of the statistical distribution of D2, and asymptotic regimes have been derived. The distribution of approximate k-word matches has also been studied.ResultsWe have computed the D2 optimal word size for various sequence lengths, and for both perfect and approximate word matches. Kolmogorov-Smirnov tests show D2 to have a compound Poisson distribution at the optimal word size for small sequence lengths (below 400 letters) and a normal distribution at the optimal word size for large sequence lengths (above 1600 letters). We find that the D2 statistic outperforms BLAST in the comparison of artificially evolved sequences, and performs similarly to other methods based on exact word matches. These results obtained with randomly generated sequences are also valid for sequences derived from human genomic DNA.ConclusionWe have characterized the distribution of the D2 statistic at optimal word sizes. We find that the best trade-off between computational efficiency and accuracy is obtained with exact word matches. Given that our numerical tests have not included sequence shuffling, transposition or splicing, the improvements over existing methods reported here underestimate that expected in real sequences. Because of the linear run time and of the known normal asymptotic behavior, D2-based methods are most appropriate for large genomic sequences.

Highlights

  • Introduction to Computational Biology Chapman andHall; 1995.15

  • Discontinuity can occur, for example, when spliced transcripts are matched to genomic sequences, when ESTs or cDNAs from different splice variants are compared or when genomic sequences are aligned that have undergone genome shuffling

  • We computed the optimal word size for various combinations of these parameters that influence the distribution of D2( t )

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Summary

Introduction

Introduction to Computational Biology Chapman andHall; 1995.15. Barbour A, Chryssaphinou O: Compound Poisson approximation: a user guide. The number of k-words shared between two sequences is a simple and effcient alignment-free sequence comparison method. This statistic, D2, has been used for the clustering of EST sequences. BLAST [1], FASTA [2] and other related algorithm are arguably the most popular programs for sequence comparison These algorithms rely on the local alignment of the sequences under scrutiny and assume conservation of contiguity between homologous segments. Other alignment-based algorithms that do not assume conservation of contiguity, such as BLAT [3] or SIM4 [4], can compute scores, percentage similarity, but do not assess statistical significance

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