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Dive into the research topics where Daniele Peluso is active.

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Featured researches published by Daniele Peluso.


Nucleic Acids Research | 2010

MINT, the molecular interaction database: 2012 update

Luana Licata; Leonardo Briganti; Daniele Peluso; Livia Perfetto; Marta Iannuccelli; Eugenia Galeota; Francesca Sacco; Anita Palma; Aurelio Pio Nardozza; Elena Santonico; Luisa Castagnoli; Gianni Cesareni

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.


Nucleic Acids Research | 2014

The MIntAct project—IntAct as a common curation platform for 11 molecular interaction databases

Sandra Orchard; Mais G. Ammari; Bruno Aranda; L Breuza; Leonardo Briganti; Fiona Broackes-Carter; Nancy H. Campbell; Gayatri Chavali; Carol Chen; Noemi del-Toro; Margaret Duesbury; Marine Dumousseau; Eugenia Galeota; Ursula Hinz; Marta Iannuccelli; Sruthi Jagannathan; Rafael C. Jimenez; Jyoti Khadake; Astrid Lagreid; Luana Licata; Ruth C. Lovering; Birgit Meldal; Anna N. Melidoni; Mila Milagros; Daniele Peluso; Livia Perfetto; Pablo Porras; Arathi Raghunath; Sylvie Ricard-Blum; Bernd Roechert

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).


Nucleic Acids Research | 2009

VirusMINT: a viral protein interaction database

Andrew Chatr-aryamontri; Arnaud Ceol; Daniele Peluso; Aurelio Pio Nardozza; Simona Panni; Francesca Sacco; Michele Tinti; Alex Smolyar; Luisa Castagnoli; Marc Vidal; Michael E. Cusick; Gianni Cesareni

Understanding the consequences on host physiology induced by viral infection requires complete understanding of the perturbations caused by virus proteins on the cellular protein interaction network. The VirusMINT database (http://mint.bio.uniroma2.it/virusmint/) aims at collecting all protein interactions between viral and human proteins reported in the literature. VirusMINT currently stores over 5000 interactions involving more than 490 unique viral proteins from more than 110 different viral strains. The whole data set can be easily queried through the search pages and the results can be displayed with a graphical viewer. The curation effort has focused on manuscripts reporting interactions between human proteins and proteins encoded by some of the most medically relevant viruses: papilloma viruses, human immunodeficiency virus 1, Epstein–Barr virus, hepatitis B virus, hepatitis C virus, herpes viruses and Simian virus 40.


Nucleic Acids Research | 2016

SIGNOR: a database of causal relationships between biological entities

Livia Perfetto; Leonardo Briganti; Alberto Calderone; Andrea Cerquone Perpetuini; Marta Iannuccelli; Francesca Langone; Luana Licata; Milica Marinkovic; Anna Mattioni; Theodora Pavlidou; Daniele Peluso; Lucia Lisa Petrilli; Stefano Pirrò; Daniela Posca; Elena Santonico; Alessandra Silvestri; Filomena Spada; Luisa Castagnoli; Gianni Cesareni

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.


Nucleic Acids Research | 2007

SH3-Hunter: discovery of SH3 domain interaction sites in proteins

Enrico Ferraro; Daniele Peluso; Allegra Via; Gabriele Ausiello; Manuela Helmer-Citterich

SH3-Hunter (http://cbm.bio.uniroma2.it/SH3-Hunter/) is a web server for the recognition of putative SH3 domain interaction sites on protein sequences. Given an input query consisting of one or more protein sequences, the server identifies peptides containing poly-proline binding motifs and associates them to a list of SH3 domains, in order to compose peptide–domain pairs. The server can accept a list of peptides and allows users to upload an input file in a proper format. An accurate selection of SH3 domains is available and users can also submit their own SH3 domain sequence. SH3-Hunter evaluates which peptide–domain pair represents a possible interaction pair and produces as output a list of significant interaction sites for each query protein. Each proposed interaction site is associated to a propensity score and sensitivity and precision levels for the prediction. The server prediction capability is based on a neural network model integrating high-throughput pep-spot data with structural information extracted from known SH3-peptide complexes.


Nucleic Acids Research | 2005

pdbFun: mass selection and fast comparison of annotated PDB residues.

Gabriele Ausiello; Andreas Zanzoni; Daniele Peluso; Allegra Via; Manuela Helmer-Citterich

pdbFun () is a web server for structural and functional analysis of proteins at the residue level. pdbFun gives fast access to the whole Protein Data Bank (PDB) organized as a database of annotated residues. The available data (features) range from solvent exposure to ligand binding ability, location in a protein cavity, secondary structure, residue type, sequence functional pattern, protein domain and catalytic activity. Users can select any residue subset (even including any number of PDB structures) by combining the available features. Selections can be used as probe and target in multiple structure comparison searches. For example a search could involve, as a query, all solvent-exposed, hydrophylic residues that are not in alpha-helices and are involved in nucleotide binding. Possible examples of targets are represented by another selection, a single structure or a dataset composed of many structures. The output is a list of aligned structural matches offered in tabular and also graphical format.


BMC Bioinformatics | 2007

Local comparison of protein structures highlights cases of convergent evolution in analogous functional sites

Gabriele Ausiello; Daniele Peluso; Allegra Via; Manuela Helmer-Citterich

BackgroundWe performed an exhaustive search for local structural similarities in an ensemble of non-redundant protein functional sites. With the purpose of finding new examples of convergent evolution, we selected only those matching sites composed of structural regions whose residue order is inverted in the relative protein sequences.ResultsA novel case of local analogy was detected between members of the ABC transporter and of the HprK/P families in their ATP binding site. This case cannot be derived by events of circular permutation since the residues of one of the region pairs are located in reverse order in the sequence of the two protein families. One of the analogous binding sites, the one identified in HprK/P, is known to also bind pyrophosphate, which is used as preferred energy source in its kinase and phosphorylase activity.ConclusionThe discovery of this striking molecular similarity, also associated to a functional similarity, may help in suggesting new experiments aimed at a deeper understanding of members of the ABC transporter family known to be involved in many serious human diseases.


Amino Acids | 2010

Enriching the viral–host interactomes with interactions mediated by SH3 domains

Martina Carducci; Luana Licata; Daniele Peluso; Luisa Castagnoli; Gianni Cesareni

Protein–protein interactions play an essential role in the regulation of most cellular processes. The process of viral infection is no exception and many viral pathogenic strategies involve targeting and perturbing host–protein interactions. The characterization of the host protein subnetworks disturbed by invading viruses is a major goal of viral research and may contribute to reveal fundamental biological mechanisms and to identify new therapeutic strategies. To assist in this approach, we have developed a database, VirusMINT, which stores in a structured format most of the published interactions between viral and host proteome. Although SH3 are the most ubiquitous and abundant class of protein binding modules, VirusMINT contains only a few interactions mediated by this domain class. To overcome this limitation, we have applied the whole interactome scanning experiment approach to identify interactions between 15 human SH3 domains and viral proline-rich peptides of two oncogenic viruses, human papillomavirus type 16 and human adenovirus A type 12. This approach identifies 114 new potential interactions between the human SH3 domains and proline-rich regions of the two viral proteomes.


Nucleic Acids Research | 2007

3dLOGO: a web server for the identification, analysis and use of conserved protein substructures

Allegra Via; Daniele Peluso; Pier Federico Gherardini; Emanuele de Rinaldis; Teresa Colombo; Gabriele Ausiello; Manuela Helmer-Citterich

3dLOGO is a web server for the identification and analysis of conserved protein 3D substructures. Given a set of residues in a PDB (Protein Data Bank) chain, the server detects the matching substructure(s) in a set of user-provided protein structures, generates a multiple structure alignment centered on the input substructures and highlights other residues whose structural conservation becomes evident after the defined superposition. Conserved residues are proposed to the user for highlighting functional areas, deriving refined structural motifs or building sequence patterns. Residue structural conservation can be visualized through an expressly designed Java application, 3dProLogo, which is a 3D implementation of a sequence logo. The 3dLOGO server, with related documentation, is available at http://3dlogo.uniroma2.it/


Nucleic Acids Research | 2018

DISNOR: a disease network open resource

Prisca Lo Surdo; Alberto Calderone; Marta Iannuccelli; Luana Licata; Daniele Peluso; Luisa Castagnoli; Gianni Cesareni; Livia Perfetto

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.

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Gianni Cesareni

University of Rome Tor Vergata

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Luana Licata

University of Rome Tor Vergata

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Luisa Castagnoli

University of Rome Tor Vergata

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Allegra Via

Sapienza University of Rome

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Gabriele Ausiello

University of Rome Tor Vergata

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Livia Perfetto

University of Rome Tor Vergata

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Marta Iannuccelli

University of Rome Tor Vergata

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Leonardo Briganti

University of Rome Tor Vergata

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Alberto Calderone

University of Rome Tor Vergata

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