Article ID Journal Published Year Pages File Type
434858 Theoretical Computer Science 2012 14 Pages PDF
Abstract

Haplotyping, also known as haplotype phase prediction, is the problem of predicting likely haplotypes based on genotype data. One fast haplotyping method is based on an evolutionary model in which a perfect phylogenetic tree is sought that explains the observed data. Unfortunately, when data entries are missing, which is often the case in laboratory data, the resulting formal problem , which stands for incomplete perfect phylogeny haplotyping, is NP-complete. Even radically simplified versions, such as the restriction to phylogenetic trees consisting of just two directed paths from a given root, are still NP-complete; but here, at least, a fixed-parameter algorithm is known. Such drastic and ad hoc simplifications turn out to be unnecessary to make tractable: we present the first theoretical analysis of a parameterized algorithm, which we develop in the course of the paper, that works for arbitrary instances of . This tractability result is optimal insofar as we prove to be NP-complete whenever any of the parameters we consider is not fixed, but part of the input.

Related Topics
Physical Sciences and Engineering Computer Science Computational Theory and Mathematics