Publication | Closed Access
Hidden Markov models of biological primary sequence information.
456
Citations
17
References
1994
Year
Molecular BiologyGenomicsSequence AlignmentGene RecognitionSequence MotifHidden Markov ModelBiostatisticsProteomicsSequence AnalysisFunctional GenomicsBioinformaticsProtein BioinformaticsMultiple AlignmentsBiologyProtein FamiliesNatural SciencesComputational BiologySystems BiologyMedicineHidden Markov Models
Hidden Markov model (HMM) techniques are used to model families of biological sequences. A smooth and convergent algorithm is introduced to iteratively adapt the transition and emission parameters of the models from the examples in a given family. The HMM approach is applied to three protein families: globins, immunoglobulins, and kinases. In all cases, the models derived capture the important statistical characteristics of the family and can be used for a number of tasks, including multiple alignments, motif detection, and classification. For K sequences of average length N, this approach yields an effective multiple-alignment algorithm which requires O(KN2) operations, linear in the number of sequences.
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