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1.
Nucleic Acids Res ; 47(W1): W5-W10, 2019 07 02.
Article de Anglais | MEDLINE | ID: mdl-31062021

RÉSUMÉ

Here, we describe a web server that integrates structural alignments with the MAFFT multiple sequence alignment (MSA) tool. For this purpose, we have prepared a web-based Database of Aligned Structural Homologs (DASH), which provides structural alignments at the domain and chain levels for all proteins in the Protein Data Bank (PDB), and can be queried interactively or by a simple REST-like API. MAFFT-DASH integration can be invoked with a single flag on either the web (https://mafft.cbrc.jp/alignment/server/) or command-line versions of MAFFT. In our benchmarks using 878 cases from the BAliBase, HomFam, OXFam, Mattbench and SISYPHUS datasets, MAFFT-DASH showed 10-20% improvement over standard MAFFT for MSA problems with weak similarity, in terms of Sum-of-Pairs (SP), a measure of how well a program succeeds at aligning input sequences in comparison to a reference alignment. When MAFFT alignments were supplemented with homologous sequences, further improvement was observed. Potential applications of DASH beyond MSA enrichment include functional annotation through detection of remote homology and assembly of template libraries for homology modeling.


Sujet(s)
Séquence d'acides aminés/génétique , Protéines/génétique , Alignement de séquences/méthodes , Logiciel , Algorithmes , Bases de données de protéines , Humains , Analyse de séquence de protéine/méthodes , Analyse de séquence d'ARN , Similitude de séquences
2.
Bioinformatics ; 30(22): 3279-80, 2014 Nov 15.
Article de Anglais | MEDLINE | ID: mdl-25064566

RÉSUMÉ

MOTIVATION: Kotai Antibody Builder is a Web service for tertiary structural modeling of antibody variable regions. It consists of three main steps: hybrid template selection by sequence alignment and canonical rules, 3D rendering of alignments and CDR-H3 loop modeling. For the last step, in addition to rule-based heuristics used to build the initial model, a refinement option is available that uses fragment assembly followed by knowledge-based scoring. Using targets from the Second Antibody Modeling Assessment, we demonstrate that Kotai Antibody Builder generates models with an overall accuracy equal to that of the best-performing semi-automated predictors using expert knowledge. AVAILABILITY AND IMPLEMENTATION: Kotai Antibody Builder is available at http://kotaiab.org CONTACT: standley@ifrec.osaka-u.ac.jp.


Sujet(s)
Anticorps/composition chimique , Modèles moléculaires , Logiciel , Régions déterminant la complémentarité/composition chimique , Internet , Alignement de séquences , Similitude structurale de protéines
3.
Nucleic Acids Res ; 42(15): 10086-98, 2014 Sep.
Article de Anglais | MEDLINE | ID: mdl-25063293

RÉSUMÉ

Increasing awareness of the importance of protein-RNA interactions has motivated many approaches to predict residue-level RNA binding sites in proteins based on sequence or structural characteristics. Sequence-based predictors are usually high in sensitivity but low in specificity; conversely structure-based predictors tend to have high specificity, but lower sensitivity. Here we quantified the contribution of both sequence- and structure-based features as indicators of RNA-binding propensity using a machine-learning approach. In order to capture structural information for proteins without a known structure, we used homology modeling to extract the relevant structural features. Several novel and modified features enhanced the accuracy of residue-level RNA-binding propensity beyond what has been reported previously, including by meta-prediction servers. These features include: hidden Markov model-based evolutionary conservation, surface deformations based on the Laplacian norm formalism, and relative solvent accessibility partitioned into backbone and side chain contributions. We constructed a web server called aaRNA that implements the proposed method and demonstrate its use in identifying putative RNA binding sites.


Sujet(s)
Protéines de liaison à l'ARN/composition chimique , Algorithmes , Acides aminés/composition chimique , Intelligence artificielle , Sites de fixation , Modèles moléculaires , Liaison aux protéines , Structure secondaire des protéines , ARN/composition chimique , ARN/métabolisme , Protéines de liaison à l'ARN/métabolisme , Analyse de séquence de protéine , Logiciel , Similitude structurale de protéines
4.
BMC Bioinformatics ; 14: 26, 2013 Jan 21.
Article de Anglais | MEDLINE | ID: mdl-23331723

RÉSUMÉ

BACKGROUND: Identification of cis- and trans-acting factors regulating gene expression remains an important problem in biology. Bioinformatics analyses of regulatory regions are hampered by several difficulties. One is that binding sites for regulatory proteins are often not significantly over-represented in the set of DNA sequences of interest, because of high levels of false positive predictions, and because of positional restrictions on functional binding sites with regard to the transcription start site. RESULTS: We have developed a novel method for the detection of regulatory motifs based on their local over-representation in sets of regulatory regions. The method makes use of a Parzen window-based approach for scoring local enrichment, and during evaluation of significance it takes into account GC content of sequences. We show that the accuracy of our method compares favourably to that of other methods, and that our method is capable of detecting not only generally over-represented regulatory motifs, but also locally over-represented motifs that are often missed by standard motif detection approaches. Using a number of examples we illustrate the validity of our approach and suggest applications, such as the analysis of weaker binding sites. CONCLUSIONS: Our approach can be used to suggest testable hypotheses for wet-lab experiments. It has potential for future analyses, such as the prediction of weaker binding sites. An online application of our approach, called LocaMo Finder (Local Motif Finder), is available at http://sysimm.ifrec.osaka-u.ac.jp/tfbs/locamo/.


Sujet(s)
Régions promotrices (génétique) , Analyse de séquence d'ADN/méthodes , Facteurs de transcription/métabolisme , Composition en bases nucléiques , Sites de fixation , ADN/composition chimique , Régulation de l'expression des gènes , Motifs nucléotidiques , Récepteurs de type Toll/métabolisme
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