The effects of ordered-series-of-motifs anchoring and sub-class modeling on the generation of HMMs representing highly divergent protein sequences

Mcclure MA, Kowalski J

Department of Biological Sciences, UNLV, Las Vegas, NV 89129, USA.

Pac Symp Biocomput. 1999;:162-70.


Abstract

Hidden Markov Models (HMMs) provide a flexible method for representing protein sequence data. Highly divergent data require a more complex approach to HMM generation than previously demonstrated. We describe a strategy of motif anchoring and sub-class modeling that aids in the construction of more informative HMMs as determined by a new algorithm called a stability measure.


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