Title :
Choosing the optimal hidden Markov model for secondary-structure prediction
Author :
Martin, Juliette ; Gibrat, Jean-François ; Rodolphe, François
Author_Institution :
French Nat. Inst. of Agric. Res., Jouy en Josas, France
Abstract :
Proteins are major constituents of living cells, forming many cellular components and most enzymes. So, knowledge of 3D protein structures is essential to understand biological mechanisms. Researchers often use neural networks to predict secondary structure in proteins, but the networks can be hard to interpret. This alternative method uses an optimal and interpretable hidden Markov model to classify protein residues. These HMM models account for the transitions observed in 3D structures and allow a predictive approach. We´ve developed a method for finding an optimal HMM to classify residues into secondary-structure classes. HMMs both provide a probabilistic framework for sequence treatment and produce interpretable models.
Keywords :
biology computing; hidden Markov models; pattern classification; proteins; 3D protein structures; biological mechanism; cellular components; hidden Markov model; protein residue classification; secondary-structure prediction; Agriculture; Amino acids; Biochemistry; Bioinformatics; Biological information theory; Coils; Genomics; Hidden Markov models; Neural networks; Protein engineering; HMM; hidden Markov models; model selection; protein; secondary structure prediction;
Journal_Title :
Intelligent Systems, IEEE
DOI :
10.1109/MIS.2005.102