Improving model construction of profile HMMs for remote homology detection through structural alignment |
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Authors: | Juliana S Bernardes Alberto MR Dávila Vítor S Costa Gerson Zaverucha |
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Affiliation: | 1.COPPE, Programa de Engenharia de Sistemas e Computa??o,Universidade Federal do Rio de Janeiro,Rio de Janeiro,Brazil;2.Instituto Oswaldo Cruz Fiocruz,Rio de Janeiro,Brazil;3.DCC-FCUP e LIACC,Universidade do Porto,Porto,Portugal |
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Abstract: | Background Remote homology detection is a challenging problem in Bioinformatics. Arguably, profile Hidden Markov Models (pHMMs) are one of the most successful approaches in addressing this important problem. pHMM packages present a relatively small computational cost, and perform particularly well at recognizing remote homologies. This raises the question of whether structural alignments could impact the performance of pHMMs trained from proteins in the Twilight Zone, as structural alignments are often more accurate than sequence alignments at identifying motifs and functional residues. Next, we assess the impact of using structural alignments in pHMM performance. |
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