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Geometric combinatorics and computational molecular biology: Branching polytopes for RNA sequences

Abstract:
Questions in computational molecular biology generate various discrete optimization problems, such as DNA sequence alignment and RNA secondary structure prediction. However, the optimal solutions are fundamentally dependent on the parameters used in the objective functions. The goal of a parametric analysis is to elucidate such dependencies, especially as they pertain to the accuracy and robustness of the optimal solutions. Techniques from geometric combinatorics, including polytopes and their normal fans, have been used previously to give parametric analyses of simple models for DNA sequence alignment and RNA branching configurations. Here, we present a new computational framework, and proof-of-principle results, which give the first complete parametric analysis of the branching portion of the nearest neighbor thermodynamic model for secondary structure prediction for real RNA sequences.
Publication status:
Published
Peer review status:
Peer reviewed

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Institution:
University of Oxford
Division:
MPLS
Department:
Mathematical Institute
Role:
Author

Contributors

Role:
Editor
Role:
Editor
Role:
Editor


Publisher:
American Mathematical Society
Host title:
Algebraic and Geometric Methods in Applied Discrete Mathematics
Volume:
2017
Series:
Contemporary Mathematics
Publication date:
2017-04-30
ISBN:
9781470423216


Keywords:
Pubs id:
pubs:632238
UUID:
uuid:569331e3-f3db-42c8-a933-5ff5b9dd9c6b
Local pid:
pubs:632238
Source identifiers:
632238
Deposit date:
2016-07-06

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