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JCSS
2007

The most probable annotation problem in HMMs and its application to bioinformatics

13 years 4 months ago
The most probable annotation problem in HMMs and its application to bioinformatics
Hidden Markov models (HMMs) are often used for biological sequence annotation. Each sequence feature is represented by a collection of states with the same label. In annotating a new sequence, we seek the sequence of labels that has highest probability. Computing this most probable annotation was shown NP-hard by Lyngsø and Pedersen [15]. We improve their result by showing that the problem is NP-hard for a specific HMM, and present efficient algorithms to compute the most probable on for a large class of HMMs, including abstractions of models previously used for transmembrane protein topology prediction and coding region detection. We also present a small experiment showing that the maximum probability annotation is more accurate than the labeling that results from simpler heuristics.
Brona Brejová, Daniel G. Brown 0001, Tom&aa
Added 15 Dec 2010
Updated 15 Dec 2010
Type Journal
Year 2007
Where JCSS
Authors Brona Brejová, Daniel G. Brown 0001, Tomás Vinar
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