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Local decoding of sequences and alignment-free comparison. | LitMetric

Local decoding of sequences and alignment-free comparison.

J Comput Biol

Institut de Mathématiques de Luminy, UMR 6206, Campus de Luminay, Case 907, 13288 Marseille, France.

Published: October 2006

AI Article Synopsis

  • Subword composition is important for sequence analysis, and this study introduces "local decoding of order N," which offers benefits over traditional subword methods while preserving environmental context.
  • An algorithm is proposed for computing this local decoding efficiently, with linear complexity in terms of time and memory, regardless of the order N.
  • The paper evaluates a basic dissimilarity measure derived from local decoding and subword composition by comparing their accuracy against a reference alignment-based distance and another alignment-free method across various datasets.

Article Abstract

Subword composition plays an important role in a lot of analyses of sequences. Here we define and study the "local decoding of order N of sequences," an alternative that avoids some drawbacks of "subwords of length N" approaches while keeping informations about environments of length N in the sequences ("decoding" is taken here in the sense of hidden Markov modeling, i.e., associating some state to all positions of the sequence). We present an algorithm for computing the local decoding of order N of a given set of sequences. Its complexity is linear in the total length of the set (whatever the order N) both in time and memory space. In order to show a use of local decoding, we propose a very basic dissimilarity measure between sequences which can be computed both from local decoding of order N and composition in subwords of length N. The accuracies of these two dissimilarities are evaluated, over several datasets, by computing their linear correlations with a reference alignment-based distance. These accuracies are also compared to the one obtained from another recent alignment-free comparison.

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Source
http://dx.doi.org/10.1089/cmb.2006.13.1465DOI Listing

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