Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Antonio Fabregat is active.

Publication


Featured researches published by Antonio Fabregat.


Nucleic Acids Research | 2012

The Proteomics Identifications (PRIDE) database and associated tools: status in 2013

Juan Antonio Vizcaíno; Richard G. Côté; Attila Csordas; Jose Ángel Dianes; Antonio Fabregat; Joseph M. Foster; Johannes Griss; Emanuele Alpi; Melih Birim; Javier Contell; Gavin O’Kelly; Andreas Schoenegger; David Ovelleiro; Yasset Perez-Riverol; Florian Reisinger; Daniel Ríos; Rui Wang; Henning Hermjakob

The PRoteomics IDEntifications (PRIDE, http://www.ebi.ac.uk/pride) database at the European Bioinformatics Institute is one of the most prominent data repositories of mass spectrometry (MS)-based proteomics data. Here, we summarize recent developments in the PRIDE database and related tools. First, we provide up-to-date statistics in data content, splitting the figures by groups of organisms and species, including peptide and protein identifications, and post-translational modifications. We then describe the tools that are part of the PRIDE submission pipeline, especially the recently developed PRIDE Converter 2 (new submission tool) and PRIDE Inspector (visualization and analysis tool). We also give an update about the integration of PRIDE with other MS proteomics resources in the context of the ProteomeXchange consortium. Finally, we briefly review the quality control efforts that are ongoing at present and outline our future plans.


Nucleic Acids Research | 2014

The Reactome pathway knowledgebase

Antonio Fabregat; Konstantinos Sidiropoulos; Phani Garapati; Marc Gillespie; Kerstin Hausmann; Robin Haw; Bijay Jassal; Steven Jupe; Florian Korninger; Sheldon J. McKay; Lisa Matthews; Bruce May; Marija Milacic; Karen Rothfels; Veronica Shamovsky; Marissa Webber; Joel Weiser; Mark A. Williams; Guanming Wu; Lincoln Stein; Henning Hermjakob; Peter D'Eustachio

The Reactome Knowledgebase (www.reactome.org) provides molecular details of signal transduction, transport, DNA replication, metabolism and other cellular processes as an ordered network of molecular transformations—an extended version of a classic metabolic map, in a single consistent data model. Reactome functions both as an archive of biological processes and as a tool for discovering unexpected functional relationships in data such as gene expression pattern surveys or somatic mutation catalogues from tumour cells. Over the last two years we redeveloped major components of the Reactome web interface to improve usability, responsiveness and data visualization. A new pathway diagram viewer provides a faster, clearer interface and smooth zooming from the entire reaction network to the details of individual reactions. Tool performance for analysis of user datasets has been substantially improved, now generating detailed results for genome-wide expression datasets within seconds. The analysis module can now be accessed through a RESTFul interface, facilitating its inclusion in third party applications. A new overview module allows the visualization of analysis results on a genome-wide Reactome pathway hierarchy using a single screen page. The search interface now provides auto-completion as well as a faceted search to narrow result lists efficiently.


Nature Biotechnology | 2012

PRIDE Inspector: a tool to visualize and validate MS proteomics data

Rui Wang; Antonio Fabregat; Daniel Ríos; David Ovelleiro; Joseph M. Foster; Richard G. Côté; Johannes Griss; Attila Csordas; Yasset Perez-Riverol; Florian Reisinger; Henning Hermjakob; Lennart Martens; Juan Antonio Vizcaíno

This work was supported by the Wellcome Trust (grant number WT085949MA) and EMBL core funding. R.G.C. is supported by EU FP7 grant SLING (grant number 226073). J.A.V. is supported by the EU FP7 grants LipidomicNet (grant number 202272) and ProteomeXchange (grant number 260558). A.F. was partially supported by the Spanish network COMBIOMED (RD07/0067/0006, ISCIII-FIS). L.M. would like to acknowledge support from the EU FP7 PRIME-XS grant (grant number 262067).


Nucleic Acids Research | 2016

Gramene 2016: comparative plant genomics and pathway resources

Marcela K. Tello-Ruiz; Joshua C. Stein; Sharon Wei; Justin Preece; Andrew Olson; Sushma Naithani; Vindhya Amarasinghe; Palitha Dharmawardhana; Yinping Jiao; Joseph Mulvaney; Sunita Kumari; Kapeel Chougule; Justin Elser; Bo Wang; James Thomason; Daniel M. Bolser; Arnaud Kerhornou; Brandon Walts; Nuno A. Fonseca; Laura Huerta; Maria Keays; Y. Amy Tang; Helen Parkinson; Antonio Fabregat; Sheldon J. McKay; Joel Weiser; Peter D'Eustachio; Lincoln Stein; Robert Petryszak; Paul J. Kersey

Gramene (http://www.gramene.org) is an online resource for comparative functional genomics in crops and model plant species. Its two main frameworks are genomes (collaboration with Ensembl Plants) and pathways (The Plant Reactome and archival BioCyc databases). Since our last NAR update, the database website adopted a new Drupal management platform. The genomes section features 39 fully assembled reference genomes that are integrated using ontology-based annotation and comparative analyses, and accessed through both visual and programmatic interfaces. Additional community data, such as genetic variation, expression and methylation, are also mapped for a subset of genomes. The Plant Reactome pathway portal (http://plantreactome.gramene.org) provides a reference resource for analyzing plant metabolic and regulatory pathways. In addition to ∼200 curated rice reference pathways, the portal hosts gene homology-based pathway projections for 33 plant species. Both the genome and pathway browsers interface with the EMBL-EBIs Expression Atlas to enable the projection of baseline and differential expression data from curated expression studies in plants. Gramenes archive website (http://archive.gramene.org) continues to provide previously reported resources on comparative maps, markers and QTL. To further aid our users, we have also introduced a live monthly educational webinar series and a Gramene YouTube channel carrying video tutorials.


PLOS ONE | 2013

LipidHome: A Database of Theoretical Lipids Optimized for High Throughput Mass Spectrometry Lipidomics

Joseph M. Foster; Pablo Moreno; Antonio Fabregat; Henning Hermjakob; Christoph Steinbeck; Rolf Apweiler; Michael J. O. Wakelam; Juan Antonio Vizcaíno

Protein sequence databases are the pillar upon which modern proteomics is supported, representing a stable reference space of predicted and validated proteins. One example of such resources is UniProt, enriched with both expertly curated and automatic annotations. Taken largely for granted, similar mature resources such as UniProt are not available yet in some other “omics” fields, lipidomics being one of them. While having a seasoned community of wet lab scientists, lipidomics lies significantly behind proteomics in the adoption of data standards and other core bioinformatics concepts. This work aims to reduce the gap by developing an equivalent resource to UniProt called ‘LipidHome’, providing theoretically generated lipid molecules and useful metadata. Using the ‘FASTLipid’ Java library, a database was populated with theoretical lipids, generated from a set of community agreed upon chemical bounds. In parallel, a web application was developed to present the information and provide computational access via a web service. Designed specifically to accommodate high throughput mass spectrometry based approaches, lipids are organised into a hierarchy that reflects the variety in the structural resolution of lipid identifications. Additionally, cross-references to other lipid related resources and papers that cite specific lipids were used to annotate lipid records. The web application encompasses a browser for viewing lipid records and a ‘tools’ section where an MS1 search engine is currently implemented. LipidHome can be accessed at http://www.ebi.ac.uk/apweiler-srv/lipidhome.


Nucleic Acids Research | 2017

Open Targets: a platform for therapeutic target identification and validation

Gautier Koscielny; Peter An; Denise R. Carvalho-Silva; Jennifer A. Cham; Luca Fumis; Rippa Gasparyan; Samiul Hasan; Nikiforos Karamanis; Michael Maguire; Eliseo Papa; Andrea Pierleoni; Miguel Pignatelli; Theo Platt; Francis Rowland; Priyanka Wankar; A. Patrícia Bento; Tony Burdett; Antonio Fabregat; Simon A. Forbes; Anna Gaulton; Cristina Yenyxe Gonzalez; Henning Hermjakob; Anne Hersey; Steven Jupe; Şenay Kafkas; Maria Keays; Catherine Leroy; Francisco-Javier Lopez; María Paula Magariños; James Malone

We have designed and developed a data integration and visualization platform that provides evidence about the association of known and potential drug targets with diseases. The platform is designed to support identification and prioritization of biological targets for follow-up. Each drug target is linked to a disease using integrated genome-wide data from a broad range of data sources. The platform provides either a target-centric workflow to identify diseases that may be associated with a specific target, or a disease-centric workflow to identify targets that may be associated with a specific disease. Users can easily transition between these target- and disease-centric workflows. The Open Targets Validation Platform is accessible at https://www.targetvalidation.org.


Proteomics | 2015

A visual review of the interactome of LRRK2: Using deep-curated molecular interaction data to represent biology

Pablo Porras; Margaret Duesbury; Antonio Fabregat; Marius Ueffing; Sandra Orchard; Christian Johannes Gloeckner; Henning Hermjakob

Molecular interaction databases are essential resources that enable access to a wealth of information on associations between proteins and other biomolecules. Network graphs generated from these data provide an understanding of the relationships between different proteins in the cell, and network analysis has become a widespread tool supporting –omics analysis. Meaningfully representing this information remains far from trivial and different databases strive to provide users with detailed records capturing the experimental details behind each piece of interaction evidence. A targeted curation approach is necessary to transfer published data generated by primarily low‐throughput techniques into interaction databases. In this review we present an example highlighting the value of both targeted curation and the subsequent effective visualization of detailed features of manually curated interaction information. We have curated interactions involving LRRK2, a protein of largely unknown function linked to familial forms of Parkinsons disease, and hosted the data in the IntAct database. This LRRK2‐specific dataset was then used to produce different visualization examples highlighting different aspects of the data: the level of confidence in the interaction based on orthogonal evidence, those interactions found under close‐to‐native conditions, and the enzyme–substrate relationships in different in vitro enzymatic assays. Finally, pathway annotation taken from the Reactome database was overlaid on top of interaction networks to bring biological functional context to interaction maps.


Nucleic Acids Research | 2017

Plant Reactome: a resource for plant pathways and comparative analysis

Sushma Naithani; Justin Preece; Peter D'Eustachio; Parul Gupta; Vindhya Amarasinghe; Palitha Dharmawardhana; Guanming Wu; Antonio Fabregat; Justin Elser; Joel Weiser; Maria Keays; Alfonso Munoz-Pomer Fuentes; Robert Petryszak; Lincoln Stein; Doreen Ware; Pankaj Jaiswal

Plant Reactome (http://plantreactome.gramene.org/) is a free, open-source, curated plant pathway database portal, provided as part of the Gramene project. The database provides intuitive bioinformatics tools for the visualization, analysis and interpretation of pathway knowledge to support genome annotation, genome analysis, modeling, systems biology, basic research and education. Plant Reactome employs the structural framework of a plant cell to show metabolic, transport, genetic, developmental and signaling pathways. We manually curate molecular details of pathways in these domains for reference species Oryza sativa (rice) supported by published literature and annotation of well-characterized genes. Two hundred twenty-two rice pathways, 1025 reactions associated with 1173 proteins, 907 small molecules and 256 literature references have been curated to date. These reference annotations were used to project pathways for 62 model, crop and evolutionarily significant plant species based on gene homology. Database users can search and browse various components of the database, visualize curated baseline expression of pathway-associated genes provided by the Expression Atlas and upload and analyze their Omics datasets. The database also offers data access via Application Programming Interfaces (APIs) and in various standardized pathway formats, such as SBML and BioPAX.


BMC Bioinformatics | 2017

Reactome pathway analysis: a high-performance in-memory approach

Antonio Fabregat; Konstantinos Sidiropoulos; Guilherme Viteri; Oscar Forner; Pablo Marin-Garcia; Vicente Arnau; Peter D’Eustachio; Lincoln Stein; Henning Hermjakob

BackgroundReactome aims to provide bioinformatics tools for visualisation, interpretation and analysis of pathway knowledge to support basic research, genome analysis, modelling, systems biology and education. Pathway analysis methods have a broad range of applications in physiological and biomedical research; one of the main problems, from the analysis methods performance point of view, is the constantly increasing size of the data samples.ResultsHere, we present a new high-performance in-memory implementation of the well-established over-representation analysis method. To achieve the target, the over-representation analysis method is divided in four different steps and, for each of them, specific data structures are used to improve performance and minimise the memory footprint. The first step, finding out whether an identifier in the user’s sample corresponds to an entity in Reactome, is addressed using a radix tree as a lookup table. The second step, modelling the proteins, chemicals, their orthologous in other species and their composition in complexes and sets, is addressed with a graph. The third and fourth steps, that aggregate the results and calculate the statistics, are solved with a double-linked tree.ConclusionThrough the use of highly optimised, in-memory data structures and algorithms, Reactome has achieved a stable, high performance pathway analysis service, enabling the analysis of genome-wide datasets within seconds, allowing interactive exploration and analysis of high throughput data. The proposed pathway analysis approach is available in the Reactome production web site either via the AnalysisService for programmatic access or the user submission interface integrated into the PathwayBrowser. Reactome is an open data and open source project and all of its source code, including the one described here, is available in the AnalysisTools repository in the Reactome GitHub (https://github.com/reactome/).


Bioinformatics | 2017

Reactome enhanced pathway visualization

Konstantinos Sidiropoulos; Guilherme Viteri; Cristoffer Sevilla; Steve Jupe; Marissa Webber; Marija Orlic-Milacic; Bijay Jassal; Bruce May; Veronica Shamovsky; Corina Duenas; Karen Rothfels; Lisa Matthews; Heeyeon Song; Lincoln Stein; Robin Haw; Peter D’Eustachio; Peipei Ping; Henning Hermjakob; Antonio Fabregat

Motivation Reactome is a free, open‐source, open‐data, curated and peer‐reviewed knowledge base of biomolecular pathways. Pathways are arranged in a hierarchical structure that largely corresponds to the GO biological process hierarchy, allowing the user to navigate from high level concepts like immune system to detailed pathway diagrams showing biomolecular events like membrane transport or phosphorylation. Here, we present new developments in the Reactome visualization system that facilitate navigation through the pathway hierarchy and enable efficient reuse of Reactome visualizations for users’ own research presentations and publications. Results For the higher levels of the hierarchy, Reactome now provides scalable, interactive textbook‐style diagrams in SVG format, which are also freely downloadable and editable. Repeated diagram elements like ‘mitochondrion’ or ‘receptor’ are available as a library of graphic elements. Detailed lower‐level diagrams are now downloadable in editable PPTX format as sets of interconnected objects. Availability and implementation http://reactome.org Contact [email protected] or [email protected]

Collaboration


Dive into the Antonio Fabregat's collaboration.

Top Co-Authors

Avatar

Lincoln Stein

Ontario Institute for Cancer Research

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Konstantinos Sidiropoulos

European Bioinformatics Institute

View shared research outputs
Top Co-Authors

Avatar

Guilherme Viteri

European Bioinformatics Institute

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Maria Keays

European Bioinformatics Institute

View shared research outputs
Top Co-Authors

Avatar

Joel Weiser

Ontario Institute for Cancer Research

View shared research outputs
Top Co-Authors

Avatar

Florian Korninger

European Bioinformatics Institute

View shared research outputs
Top Co-Authors

Avatar

Joseph M. Foster

European Bioinformatics Institute

View shared research outputs
Researchain Logo
Decentralizing Knowledge