Estimating the accuracy of multiple alignments and its use in parameter advising

  • Authors:
  • Dan F. DeBlasio;Travis J. Wheeler;John D. Kececioglu

  • Affiliations:
  • Department of Computer Science, The University of Arizona;Howard Hughes Medical Institute;Department of Computer Science, The University of Arizona

  • Venue:
  • RECOMB'12 Proceedings of the 16th Annual international conference on Research in Computational Molecular Biology
  • Year:
  • 2012

Quantified Score

Hi-index 0.00

Visualization

Abstract

We develop a novel and general approach to estimating the accuracy of protein multiple sequence alignments without knowledge of a reference alignment, and use our approach to address a new problem that we call parameter advising. For protein alignments, we consider twelve independent features that contribute to a quality alignment. An accuracy estimator is learned that is a polynomial function of these features; its coefficients are determined by minimizing its error with respect to true accuracy using mathematical optimization. We evaluate this approach by applying it to the task of parameter advising: the problem of choosing alignment scoring parameters from a collection of parameter values to maximize the accuracy of a computed alignment. Our estimator, which we call Facet (for "feature-based accuracy estimator"), yields a parameter advisor that on the hardest benchmarks provides more than a 20% improvement in accuracy over the best default parameter choice, and outperforms the best prior approaches to selecting good alignments for parameter advising.