Motivation: The widespread coiled-coil structural motif in proteins is known to mediate a variety of biological interactions. Recognizing a coiled-coil containing sequence and locating its coiled-coil domains are key steps towards the determination of the protein structure and function. Different tools are available for predicting coiled-coil domains in protein sequences, including those based on position-specific score matrices and machine learning methods. Results: In this article, we introduce a hidden Markov model (CCHMM_PROF) that exploits the information contained in multiple sequence alignments (profiles) to predict coiled-coil regions. The new method discriminates coiled-coil sequences with an accuracy of 97% and achieves a true positive rate of 79% with only 1% of false positives. Furthermore, when predicting the location of coiled-coil segments in protein sequences, the method reaches an accuracy of 80% at the residue level and a best per-segment and per-protein efficiency of 81% and 80%, respectively. The results indicate that CCHMM_PROF outperforms all the existing tools and can be adopted for large-scale genome annotation. Availability: The dataset is available at http://www.biocomp.unibo .it/∼lisa/coiled-coils. The predictor is freely available at http://gpcr .biocomp.unibo.it/cgi/predictors/cchmmprof/pred_cchmmprof.cgi.

CCHMM_PROF: a HMM-based coiled-coil predictor with evolutionary information / Bartoli L.; Fariselli P.; Krogh A.; Casadio R.. - In: BIOINFORMATICS. - ISSN 1367-4803. - STAMPA. - 25:(2009), pp. 2757-2763. [10.1093/bioinformatics/btp539]

CCHMM_PROF: a HMM-based coiled-coil predictor with evolutionary information

BARTOLI, LISA;FARISELLI, PIERO;CASADIO, RITA
2009

Abstract

Motivation: The widespread coiled-coil structural motif in proteins is known to mediate a variety of biological interactions. Recognizing a coiled-coil containing sequence and locating its coiled-coil domains are key steps towards the determination of the protein structure and function. Different tools are available for predicting coiled-coil domains in protein sequences, including those based on position-specific score matrices and machine learning methods. Results: In this article, we introduce a hidden Markov model (CCHMM_PROF) that exploits the information contained in multiple sequence alignments (profiles) to predict coiled-coil regions. The new method discriminates coiled-coil sequences with an accuracy of 97% and achieves a true positive rate of 79% with only 1% of false positives. Furthermore, when predicting the location of coiled-coil segments in protein sequences, the method reaches an accuracy of 80% at the residue level and a best per-segment and per-protein efficiency of 81% and 80%, respectively. The results indicate that CCHMM_PROF outperforms all the existing tools and can be adopted for large-scale genome annotation. Availability: The dataset is available at http://www.biocomp.unibo .it/∼lisa/coiled-coils. The predictor is freely available at http://gpcr .biocomp.unibo.it/cgi/predictors/cchmmprof/pred_cchmmprof.cgi.
2009
CCHMM_PROF: a HMM-based coiled-coil predictor with evolutionary information / Bartoli L.; Fariselli P.; Krogh A.; Casadio R.. - In: BIOINFORMATICS. - ISSN 1367-4803. - STAMPA. - 25:(2009), pp. 2757-2763. [10.1093/bioinformatics/btp539]
Bartoli L.; Fariselli P.; Krogh A.; Casadio R.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/79366
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