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Published July 2003 | public
Journal Article

Picking Alignments from (Steiner) Trees

Abstract

The application of Needleman–Wunsch alignment techniques to biological sequences is complicated by two serious problems when the sequences are long: the running time, which scales as the product of the lengths of sequences, and the difficulty in obtaining suitable parameters that produce meaningful alignments. The running time problem is often corrected by reducing the search space, using techniques such as banding, or chaining of high-scoring pairs. The parameter problem is more difficult to fix, partly because the probabilistic model, which Needleman–Wunsch is equivalent to, does not capture a key feature of biological sequence alignments, namely the alternation of conserved blocks and seemingly unrelated nonconserved segments. We present a solution to the problem of designing efficient search spaces for pair hidden Markov models that align biological sequences by taking advantage of their associated features. Our approach leads to an optimization problem, for which we obtain a 2-approximation algorithm, and that is based on the construction of Manhattan networks, which are close relatives of Steiner trees. We describe the underlying theory and show how our methods can be applied to alignment of DNA sequences in practice, succesfully reducing the Viterbi algorithm search space of alignment PHMMs by three orders of magnitude.

Additional Information

© 2003 Mary Ann Liebert, Inc. M.A. was partially supported by STINT, the Swedish Foundation for International Cooperation in Research and Higher Education, and the Center for Pure and Applied Mathematics at U.C. Berkeley. Thanks to Nick Bray for helping with some of the implementation of SLIM and to Simon Cawley for helpful discussions and suggestions.

Additional details

Created:
August 19, 2023
Modified:
October 24, 2023