Parametric k-best alignment
Abstract
Optimal sequence alignments depend heavily on alignment scoring parameters. Given input sequences, {\em parametric alignment} is the well-studied problem that asks for all possible optimal alignment summaries as parameters vary, as well as the {\em optimality region} of alignment scoring parameters which yield each optimal alignment. But biologically correct alignments might be {\em suboptimal} for all parameter choices. Thus we extend parametric alignment to {\em parametric -best alignment}, which asks for all possible -tuples of -best alignment summaries , as well as the {\em -best optimality region} of scoring parameters which make the top summaries. By exploiting the integer-structure of alignment summaries, we show that, astonishingly, the complexity of parametric -best alignment is only polynomial in . Thus parametric -best alignment is tractable, and can be applied at the whole-genome scale like parametric alignment.
Cite
@article{arxiv.0809.1473,
title = {Parametric k-best alignment},
author = {Peter Huggins and Ruriko Yoshida},
journal= {arXiv preprint arXiv:0809.1473},
year = {2008}
}
Comments
1 figure and 2 tables