10 results on '"Peluso D"'
Search Results
2. 3dLOGO: a web server for the identification, analysis and use of conserved protein substructures
- Author
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Via, A., primary, Peluso, D., additional, Gherardini, P. F., additional, de Rinaldis, E., additional, Colombo, T., additional, Ausiello, G., additional, and Helmer-Citterich, M., additional
- Published
- 2007
- Full Text
- View/download PDF
3. SH3-Hunter: discovery of SH3 domain interaction sites in proteins
- Author
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Ferraro, E., primary, Peluso, D., additional, Via, A., additional, Ausiello, G., additional, and Helmer-Citterich, M., additional
- Published
- 2007
- Full Text
- View/download PDF
4. pdbFun: mass selection and fast comparison of annotated PDB residues
- Author
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Ausiello, G., primary, Zanzoni, A., additional, Peluso, D., additional, Via, A., additional, and Helmer-Citterich, M., additional
- Published
- 2005
- Full Text
- View/download PDF
5. SIGNOR 2.0, the SIGnaling Network Open Resource 2.0: 2019 update.
- Author
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Licata L, Lo Surdo P, Iannuccelli M, Palma A, Micarelli E, Perfetto L, Peluso D, Calderone A, Castagnoli L, and Cesareni G
- Subjects
- Animals, Humans, Protein Interaction Maps, Databases, Factual, Signal Transduction, Software
- Abstract
The SIGnaling Network Open Resource 2.0 (SIGNOR 2.0) is a public repository that stores signaling information as binary causal relationships between biological entities. The captured information is represented graphically as a signed directed graph. Each signaling relationship is associated to an effect (up/down-regulation) and to the mechanism (e.g. binding, phosphorylation, transcriptional activation, etc.) causing the up/down-regulation of the target entity. Since its first release, SIGNOR has undergone a significant content increase and the number of annotated causal interactions have almost doubled. SIGNOR 2.0 now stores almost 23 000 manually-annotated causal relationships between proteins and other biologically relevant entities: chemicals, phenotypes, complexes, etc. We describe here significant changes in curation policy and a new confidence score, which is assigned to each interaction. We have also improved the compliance to the FAIR data principles by providing (i) SIGNOR stable identifiers, (ii) programmatic access through REST APIs, (iii) bioschemas and (iv) downloadable data in standard-compliant formats, such as PSI-MI CausalTAB and GMT. The data are freely accessible and downloadable at https://signor.uniroma2.it/., (© The Author(s) 2019. Published by Oxford University Press on behalf of Nucleic Acids Research.)
- Published
- 2020
- Full Text
- View/download PDF
6. DISNOR: a disease network open resource.
- Author
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Lo Surdo P, Calderone A, Iannuccelli M, Licata L, Peluso D, Castagnoli L, Cesareni G, and Perfetto L
- Subjects
- Data Curation, Gene Regulatory Networks, Genetic Association Studies, Humans, Internet, Mutation, Polymorphism, Single Nucleotide, Search Engine, Signal Transduction genetics, Software, User-Computer Interface, Databases, Genetic, Disease genetics
- Abstract
DISNOR is a new resource that aims at exploiting the explosion of data on the identification of disease-associated genes to assemble inferred disease pathways. This may help dissecting the signaling events whose disruption causes the pathological phenotypes and may contribute to build a platform for precision medicine. To this end we combine the gene-disease association (GDA) data annotated in the DisGeNET resource with a new curation effort aimed at populating the SIGNOR database with causal interactions related to disease genes with the highest possible coverage. DISNOR can be freely accessed at http://DISNOR.uniroma2.it/ where >3700 disease-networks, linking ∼2600 disease genes, can be explored. For each disease curated in DisGeNET, DISNOR links disease genes by manually annotated causal relationships and offers an intuitive visualization of the inferred 'patho-pathways' at different complexity levels. User-defined gene lists are also accepted in the query pipeline. In addition, for each list of query genes-either annotated in DisGeNET or user-defined-DISNOR performs a gene set enrichment analysis on KEGG-defined pathways or on the lists of proteins associated with the inferred disease pathways. This function offers additional information on disease-associated cellular pathways and disease similarity., (© The Author(s) 2017. Published by Oxford University Press on behalf of Nucleic Acids Research.)
- Published
- 2018
- Full Text
- View/download PDF
7. SIGNOR: a database of causal relationships between biological entities.
- Author
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Perfetto L, Briganti L, Calderone A, Cerquone Perpetuini A, Iannuccelli M, Langone F, Licata L, Marinkovic M, Mattioni A, Pavlidou T, Peluso D, Petrilli LL, Pirrò S, Posca D, Santonico E, Silvestri A, Spada F, Castagnoli L, and Cesareni G
- Subjects
- Humans, Internet, Intracellular Signaling Peptides and Proteins chemistry, Phosphoprotein Phosphatases chemistry, Phosphoprotein Phosphatases metabolism, Protein Kinases chemistry, Protein Kinases metabolism, Databases, Protein, Signal Transduction
- Abstract
Assembly of large biochemical networks can be achieved by confronting new cell-specific experimental data with an interaction subspace constrained by prior literature evidence. The SIGnaling Network Open Resource, SIGNOR (available on line at http://signor.uniroma2.it), was developed to support such a strategy by providing a scaffold of prior experimental evidence of causal relationships between biological entities. The core of SIGNOR is a collection of approximately 12,000 manually-annotated causal relationships between over 2800 human proteins participating in signal transduction. Other entities annotated in SIGNOR are complexes, chemicals, phenotypes and stimuli. The information captured in SIGNOR can be represented as a signed directed graph illustrating the activation/inactivation relationships between signalling entities. Each entry is associated to the post-translational modifications that cause the activation/inactivation of the target proteins. More than 4900 modified residues causing a change in protein concentration or activity have been curated and linked to the modifying enzymes (about 351 human kinases and 94 phosphatases). Additional modifications such as ubiquitinations, sumoylations, acetylations and their effect on the modified target proteins are also annotated. This wealth of structured information can support experimental approaches based on multi-parametric analysis of cell systems after physiological or pathological perturbations and to assemble large logic models., (© The Author(s) 2015. Published by Oxford University Press on behalf of Nucleic Acids Research.)
- Published
- 2016
- Full Text
- View/download PDF
8. The MIntAct project--IntAct as a common curation platform for 11 molecular interaction databases.
- Author
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Orchard S, Ammari M, Aranda B, Breuza L, Briganti L, Broackes-Carter F, Campbell NH, Chavali G, Chen C, del-Toro N, Duesbury M, Dumousseau M, Galeota E, Hinz U, Iannuccelli M, Jagannathan S, Jimenez R, Khadake J, Lagreid A, Licata L, Lovering RC, Meldal B, Melidoni AN, Milagros M, Peluso D, Perfetto L, Porras P, Raghunath A, Ricard-Blum S, Roechert B, Stutz A, Tognolli M, van Roey K, Cesareni G, and Hermjakob H
- Subjects
- Internet, Software, Databases, Protein, Protein Interaction Mapping
- Abstract
IntAct (freely available at http://www.ebi.ac.uk/intact) is an open-source, open data molecular interaction database populated by data either curated from the literature or from direct data depositions. IntAct has developed a sophisticated web-based curation tool, capable of supporting both IMEx- and MIMIx-level curation. This tool is now utilized by multiple additional curation teams, all of whom annotate data directly into the IntAct database. Members of the IntAct team supply appropriate levels of training, perform quality control on entries and take responsibility for long-term data maintenance. Recently, the MINT and IntAct databases decided to merge their separate efforts to make optimal use of limited developer resources and maximize the curation output. All data manually curated by the MINT curators have been moved into the IntAct database at EMBL-EBI and are merged with the existing IntAct dataset. Both IntAct and MINT are active contributors to the IMEx consortium (http://www.imexconsortium.org).
- Published
- 2014
- Full Text
- View/download PDF
9. MINT, the molecular interaction database: 2012 update.
- Author
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Licata L, Briganti L, Peluso D, Perfetto L, Iannuccelli M, Galeota E, Sacco F, Palma A, Nardozza AP, Santonico E, Castagnoli L, and Cesareni G
- Subjects
- Algorithms, Animals, Humans, Mice, Proteins chemistry, Proteins genetics, Rats, Databases, Protein, Protein Interaction Mapping
- Abstract
The Molecular INTeraction Database (MINT, http://mint.bio.uniroma2.it/mint/) is a public repository for protein-protein interactions (PPI) reported in peer-reviewed journals. The database grows steadily over the years and at September 2011 contains approximately 235,000 binary interactions captured from over 4750 publications. The web interface allows the users to search, visualize and download interactions data. MINT is one of the members of the International Molecular Exchange consortium (IMEx) and adopts the Molecular Interaction Ontology of the Proteomics Standard Initiative (PSI-MI) standards for curation and data exchange. MINT data are freely accessible and downloadable at http://mint.bio.uniroma2.it/mint/download.do. We report here the growth of the database, the major changes in curation policy and a new algorithm to assign a confidence to each interaction.
- Published
- 2012
- Full Text
- View/download PDF
10. MINT, the molecular interaction database: 2009 update.
- Author
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Ceol A, Chatr Aryamontri A, Licata L, Peluso D, Briganti L, Perfetto L, Castagnoli L, and Cesareni G
- Subjects
- Animals, Computational Biology trends, Databases, Protein, ErbB Receptors metabolism, Genome, Viral, Humans, Information Storage and Retrieval methods, Internet, Programming Languages, Protein Binding, Protein Structure, Tertiary, Software, Computational Biology methods, Databases, Genetic, Databases, Nucleic Acid, Protein Interaction Mapping
- Abstract
MINT (http://mint.bio.uniroma2.it/mint) is a public repository for molecular interactions reported in peer-reviewed journals. Since its last report, MINT has grown considerably in size and evolved in scope to meet the requirements of its users. The main changes include a more precise definition of the curation policy and the development of an enhanced and user-friendly interface to facilitate the analysis of the ever-growing interaction dataset. MINT has adopted the PSI-MI standards for the annotation and for the representation of molecular interactions and is a member of the IMEx consortium.
- Published
- 2010
- Full Text
- View/download PDF
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