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

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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 [R.B. Lyngsø, C.N.S. Pedersen, The consensus string problem and the complexity of comparing hidden Markov models, J. Comput. System Sci. 65 (3) (2002) 545–569]. 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 annotation 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.

论文关键词:Hidden Markov models,NP-hardness,Sequence annotation,Computational biology,Gene finding

论文评审过程:Received 14 July 2006, Revised 25 September 2006, Available online 14 March 2007.

论文官网地址:https://doi.org/10.1016/j.jcss.2007.03.011