Andrea Gazzo
Université libre de Bruxelles
Network
Latest external collaboration on country level. Dive into details by clicking on the dots.
Publication
Featured researches published by Andrea Gazzo.
Nucleic Acids Research | 2016
Andrea Gazzo; Dorien Daneels; Elisa Cilia; Maryse Bonduelle; Marc Abramowicz; Sonia Van Dooren; Guillaume Smits; Tom Lenaerts
DIDA (DIgenic diseases DAtabase) is a novel database that provides for the first time detailed information on genes and associated genetic variants involved in digenic diseases, the simplest form of oligogenic inheritance. The database is accessible via http://dida.ibsquare.be and currently includes 213 digenic combinations involved in 44 different digenic diseases. These combinations are composed of 364 distinct variants, which are distributed over 136 distinct genes. The web interface provides browsing and search functionalities, as well as documentation and help pages, general database statistics and references to the original publications from which the data have been collected. The possibility to submit novel digenic data to DIDA is also provided. Creating this new repository was essential as current databases do not allow one to retrieve detailed records regarding digenic combinations. Genes, variants, diseases and digenic combinations in DIDA are annotated with manually curated information and information mined from other online resources. Next to providing a unique resource for the development of new analysis methods, DIDA gives clinical and molecular geneticists a tool to find the most comprehensive information on the digenic nature of their diseases of interest.
european conference on computational biology | 2016
Daniele Raimondi; Andrea Gazzo; Marianne Rooman; Tom Lenaerts; Wim F. Vranken
MOTIVATION There are now many predictors capable of identifying the likely phenotypic effects of single nucleotide variants (SNVs) or short in-frame Insertions or Deletions (INDELs) on the increasing amount of genome sequence data. Most of these predictors focus on SNVs and use a combination of features related to sequence conservation, biophysical, and/or structural properties to link the observed variant to either neutral or disease phenotype. Despite notable successes, the mapping between genetic variants and their phenotypic effects is riddled with levels of complexity that are not yet fully understood and that are often not taken into account in the predictions, despite their promise of significantly improving the prediction of deleterious mutants. RESULTS We present DEOGEN, a novel variant effect predictor that can handle both missense SNVs and in-frame INDELs. By integrating information from different biological scales and mimicking the complex mixture of effects that lead from the variant to the phenotype, we obtain significant improvements in the variant-effect prediction results. Next to the typical variant-oriented features based on the evolutionary conservation of the mutated positions, we added a collection of protein-oriented features that are based on functional aspects of the gene affected. We cross-validated DEOGEN on 36 825 polymorphisms, 20 821 deleterious SNVs, and 1038 INDELs from SwissProt. The multilevel contextualization of each (variant, protein) pair in DEOGEN provides a 10% improvement of MCC with respect to current state-of-the-art tools. AVAILABILITY AND IMPLEMENTATION The software and the data presented here is publicly available at http://ibsquare.be/deogen CONTACT : [email protected] SUPPLEMENTARY INFORMATION Supplementary data are available at Bioinformatics online.
Nucleic Acids Research | 2017
Daniele Raimondi; Ibrahim Tanyalcin; Julien Ferté; Andrea Gazzo; Gabriele Orlando; Tom Lenaerts; Marianne Rooman; Wim F. Vranken
Abstract High-throughput sequencing methods are generating enormous amounts of genomic data, giving unprecedented insights into human genetic variation and its relation to disease. An individual human genome contains millions of Single Nucleotide Variants: to discriminate the deleterious from the benign ones, a variety of methods have been developed that predict whether a protein-coding variant likely affects the carrier individuals health. We present such a method, DEOGEN2, which incorporates heterogeneous information about the molecular effects of the variants, the domains involved, the relevance of the gene and the interactions in which it participates. This extensive contextual information is non-linearly mapped into one single deleteriousness score for each variant. Since for the non-expert user it is sometimes still difficult to assess what this score means, how it relates to the encoded protein, and where it originates from, we developed an interactive online framework (http://deogen2.mutaframe.com/) to better present the DEOGEN2 deleteriousness predictions of all possible variants in all human proteins. The prediction is visualized so both expert and non-expert users can gain insights into the meaning, protein context and origins of each prediction.
Nucleic Acids Research | 2017
Víctor López-Ferrando; Andrea Gazzo; Xavier de la Cruz; Modesto Orozco; Josep Lluís Gelpí
Abstract We present here a full update of the PMut predictor, active since 2005 and with a large acceptance in the field of predicting Mendelian pathological mutations. PMut internal engine has been renewed, and converted into a fully featured standalone training and prediction engine that not only powers PMut web portal, but that can generate custom predictors with alternative training sets or validation schemas. PMut Web portal allows the user to perform pathology predictions, to access a complete repository of pre-calculated predictions, and to generate and validate new predictors. The default predictor performs with good quality scores (MCC values of 0.61 on 10-fold cross validation, and 0.42 on a blind test with SwissVar 2016 mutations). The PMut portal is freely accessible at http://mmb.irbbarcelona.org/PMut. A complete help and tutorial is available at http://mmb.irbbarcelona.org/PMut/help.
intelligent systems in molecular biology | 2017
Daniele Raimondi; Ibrahim Tanyalcin; Julien Ferté; Andrea Gazzo; Gabriele Orlando; Tom Lenaerts; Marianne Rooman; Wim F. Vranken
intelligent systems in molecular biology | 2017
Andrea Gazzo; Daniele Raimondi; Dorien Daneels; Yves Moreau; Guillaume Smits; Sonia Van Dooren; Tom Lenaerts
Proceedings of the Genomics on Rare Disease Conference | 2017
Guillaume Smits; Andrea Gazzo; Dorien Daneels; Daniele Raimondi; Sofia Papadimitriou; Yves Moreau; Sonia Van Dooren; Tom Lenaerts
european conference on computational biology | 2016
Tom Lenaerts; Andrea Gazzo; Dorien Daneels; Elisa Cilia; Maryse Bonduelle; Marc Abramowicz; Sonia Van Dooren; Guillaume Smits
european conference on computational biology | 2016
Sofia Papadimitriou; Andrea Gazzo; Guillaume Smits; Ann Nowé; Tom Lenaerts
european conference on computational biology | 2016
Andrea Gazzo; Daniele Raimondi; Dorien Daneels; Guillaume Smits; Sonia Van Dooren; Tom Lenaerts