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Dive into the research topics where Faviel F. Gonzalez-Galarza is active.

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Featured researches published by Faviel F. Gonzalez-Galarza.


Nucleic Acids Research | 2011

Allele frequency net: a database and online repository for immune gene frequencies in worldwide populations

Faviel F. Gonzalez-Galarza; Stephen E. Christmas; Derek Middleton; Andrew R. Jones

The allele frequency net database (http://www.allelefrequencies.net) is an online repository that contains information on the frequencies of immune genes and their corresponding alleles in different populations. The extensive variability observed in genes and alleles related to the immune system response and its significance in transplantation, disease association studies and diversity in populations led to the development of this electronic resource. At present, the system contains data from 1133 populations in 608 813 individuals on the frequency of genes from different polymorphic regions such as human leukocyte antigens, killer-cell immunoglobulin-like receptors, major histocompatibility complex Class I chain-related genes and a number of cytokine gene polymorphisms. The project was designed to create a central source for the storage of frequency data and provide individuals with a set of bioinformatics tools to analyze the occurrence of these variants in worldwide populations. The resource has been used in a wide variety of contexts, including clinical applications (histocompatibility, immunology, epidemiology and pharmacogenetics) and population genetics. Demographic information, frequency data and searching tools can be freely accessed through the website.


Nucleic Acids Research | 2015

Allele frequency net 2015 update: new features for HLA epitopes, KIR and disease and HLA adverse drug reaction associations

Faviel F. Gonzalez-Galarza; Louise Yc Takeshita; Eduardo Jose Melos dos Santos; Felicity Kempson; Maria Helena Thomaz Maia; Andréa Luciana Soares da Silva; André Silva; Gurpreet S. Ghattaoraya; Ana Alfirevic; Andrew R. Jones; Derek Middleton

It has been 12 years since the Allele Frequency Net Database (AFND; http://www.allelefrequencies.net) was first launched, providing the scientific community with an online repository for the storage of immune gene frequencies in different populations across the world. There have been a significant number of improvements from the first version, making AFND a primary resource for many clinical and scientific areas including histocompatibility, immunogenetics, pharmacogenetics and anthropology studies, among many others. The most widely used part of AFND stores population frequency data (alleles, genes or haplotypes) related to human leukocyte antigens (HLA), killer-cell immunoglobulin-like receptors (KIR), major histocompatibility complex class I chain-related genes (MIC) and a number of cytokine gene polymorphisms. AFND now contains >1400 populations from more than 10 million healthy individuals. Here, we report how the main features of AFND have been updated to include a new section on ‘HLA epitope’ frequencies in populations, a new section capturing the results of studies identifying HLA associations with adverse drug reactions (ADRs) and one for the examination of infectious and autoimmune diseases associated with KIR polymorphisms—thus extending AFND to serve a new user base in these growing areas of research. New criteria on data quality have also been included.


Molecular & Cellular Proteomics | 2013

The mzQuantML data standard for mass spectrometry-based quantitative studies in proteomics

Mathias Walzer; Da Qi; Gerhard Mayer; Julian Uszkoreit; Martin Eisenacher; Timo Sachsenberg; Faviel F. Gonzalez-Galarza; Jun Fan; Conrad Bessant; Eric W. Deutsch; Florian Reisinger; Juan Antonio Vizcaíno; J. Alberto Medina-Aunon; Juan Pablo Albar; Oliver Kohlbacher; Andrew R. Jones

The range of heterogeneous approaches available for quantifying protein abundance via mass spectrometry (MS)1 leads to considerable challenges in modeling, archiving, exchanging, or submitting experimental data sets as supplemental material to journals. To date, there has been no widely accepted format for capturing the evidence trail of how quantitative analysis has been performed by software, for transferring data between software packages, or for submitting to public databases. In the context of the Proteomics Standards Initiative, we have developed the mzQuantML data standard. The standard can represent quantitative data about regions in two-dimensional retention time versus mass/charge space (called features), peptides, and proteins and protein groups (where there is ambiguity regarding peptide-to-protein inference), and it offers limited support for small molecule (metabolomic) data. The format has structures for representing replicate MS runs, grouping of replicates (for example, as study variables), and capturing the parameters used by software packages to arrive at these values. The format has the capability to reference other standards such as mzML and mzIdentML, and thus the evidence trail for the MS workflow as a whole can now be described. Several software implementations are available, and we encourage other bioinformatics groups to use mzQuantML as an input, internal, or output format for quantitative software and for structuring local repositories. All project resources are available in the public domain from the HUPO Proteomics Standards Initiative http://www.psidev.info/mzquantml.


Omics A Journal of Integrative Biology | 2012

A critical appraisal of techniques, software packages, and standards for quantitative proteomic analysis.

Faviel F. Gonzalez-Galarza; Craig Lawless; Simon J. Hubbard; Jun Fan; Conrad Bessant; Henning Hermjakob; Andrew R. Jones

New methods for performing quantitative proteome analyses based on differential labeling protocols or label-free techniques are reported in the literature on an almost monthly basis. In parallel, a correspondingly vast number of software tools for the analysis of quantitative proteomics data has also been described in the literature and produced by private companies. In this article we focus on the review of some of the most popular techniques in the field and present a critical appraisal of several software packages available to process and analyze the data produced. We also describe the importance of community standards to support the wide range of software, which may assist researchers in the analysis of data using different platforms and protocols. It is intended that this review will serve bench scientists both as a useful reference and a guide to the selection and use of different pipelines to perform quantitative proteomics data analysis. We have produced a web-based tool ( http://www.proteosuite.org/?q=other_resources ) to help researchers find appropriate software for their local instrumentation, available file formats, and quantitative methodology.


Genome Medicine | 2012

In silico analysis of HLA associations with drug-induced liver injury: use of a HLA-genotyped DNA archive from healthy volunteers

Ana Alfirevic; Faviel F. Gonzalez-Galarza; Catherine C. Bell; Klara Martinsson; Vivien Platt; Giovanna Bretland; Jane Evely; Maike Lichtenfels; Karin Cederbrant; Neil French; Dean J. Naisbitt; B. Kevin Park; Andrew R. Jones; Munir Pirmohamed

BackgroundDrug-induced liver injury (DILI) is one of the most common adverse reactions leading to product withdrawal post-marketing. Recently, genome-wide association studies have identified a number of human leukocyte antigen (HLA) alleles associated with DILI; however, the cellular and chemical mechanisms are not fully understood.MethodsTo study these mechanisms, we established an HLA-typed cell archive from 400 healthy volunteers. In addition, we utilized HLA genotype data from more than four million individuals from publicly accessible repositories such as the Allele Frequency Net Database, Major Histocompatibility Complex Database and Immune Epitope Database to study the HLA alleles associated with DILI. We utilized novel in silico strategies to examine HLA haplotype relationships among the alleles associated with DILI by using bioinformatics tools such as NetMHCpan, PyPop, GraphViz, PHYLIP and TreeView.ResultsWe demonstrated that many of the alleles that have been associated with liver injury induced by structurally diverse drugs (flucloxacillin, co-amoxiclav, ximelagatran, lapatinib, lumiracoxib) reside on common HLA haplotypes, which were present in populations of diverse ethnicity.ConclusionsOur bioinformatic analysis indicates that there may be a connection between the different HLA alleles associated with DILI caused by therapeutically and structurally different drugs, possibly through peptide binding of one of the HLA alleles that defines the causal haplotype. Further functional work, together with next-generation sequencing techniques, will be needed to define the causal alleles associated with DILI.


Nucleic Acids Research | 2013

Library of Apicomplexan Metabolic Pathways: a manually curated database for metabolic pathways of apicomplexan parasites

Achchuthan Shanmugasundram; Faviel F. Gonzalez-Galarza; Jonathan M. Wastling; Olga Vasieva; Andrew R. Jones

The Library of Apicomplexan Metabolic Pathways (LAMP, http://www.llamp.net) is a web database that provides near complete mapping from genes to the central metabolic functions for some of the prominent intracellular parasites of the phylum Apicomplexa. This phylum includes the causative agents of malaria, toxoplasmosis and theileriosis—diseases with a huge economic and social impact. A number of apicomplexan genomes have been sequenced, but the accurate annotation of gene function remains challenging. We have adopted an approach called metabolic reconstruction, in which genes are systematically assigned to functions within pathways/networks for Toxoplasma gondii, Neospora caninum, Cryptosporidium and Theileria species, and Babesia bovis. Several functions missing from pathways have been identified, where the corresponding gene for an essential process appears to be absent from the current genome annotation. For each species, LAMP contains interactive diagrams of each pathway, hyperlinked to external resources and annotated with detailed information, including the sources of evidence used. We have also developed a section to highlight the overall metabolic capabilities of each species, such as the ability to synthesize or the dependence on the host for a particular metabolite. We expect this new database will become a valuable resource for fundamental and applied research on the Apicomplexa.


International Journal of Immunogenetics | 2012

Strategies to work with HLA data in human populations for histocompatibility, clinical transplantation, epidemiology and population genetics: HLA‐NET methodological recommendations

Alicia Sanchez-Mazas; B. Vidan-Jeras; Jose Manuel Nunes; Gottfried Fischer; Ann-Margaret Little; U Bekmane; Stéphane Buhler; S Buus; Frans H.J. Claas; A. Dormoy; Valerie Dubois; E. Eglite; Jean-François Eliaou; Faviel F. Gonzalez-Galarza; Z. Grubic; M. Ivanova; Benedicte A. Lie; D. Ligeiro; M. L. Lokki; B. Martins da Silva; J Martorell; Denisa Mendonça; Derek Middleton; D. Papioannou Voniatis; C. Papasteriades; Francesca Poli; Maria Eugenia Riccio; M. Spyropoulou Vlachou; Genc Sulcebe; Susan Tonks

HLA‐NET (a European COST Action) aims at networking researchers working in bone marrow transplantation, epidemiology and population genetics to improve the molecular characterization of the HLA genetic diversity of human populations, with an expected strong impact on both public health and fundamental research. Such improvements involve finding consensual strategies to characterize human populations and samples and report HLA molecular typings and ambiguities; proposing user‐friendly access to databases and computer tools and defining minimal requirements related to ethical aspects. The overall outcome is the provision of population genetic characterizations and comparisons in a standard way by all interested laboratories. This article reports the recommendations of four working groups (WG1‐4) of the HLA‐NET network at the mid‐term of its activities. WG1 (Population definitions and sampling strategies for population genetics’ analyses) recommends avoiding outdated racial classifications and population names (e.g. ‘Caucasian’) and using instead geographic and/or cultural (e.g. linguistic) criteria to describe human populations (e.g. ‘pan‐European’). A standard ‘HLA‐NET POPULATION DATA QUESTIONNAIRE’ has been finalized and is available for the whole HLA community. WG2 (HLA typing standards for population genetics analyses) recommends retaining maximal information when reporting HLA typing results. Rather than using the National Marrow Donor Program coding system, all ambiguities should be provided by listing all allele pairs required to explain each genotype, according to the formats proposed in ‘HLA‐NET GUIDELINES FOR REPORTING HLA TYPINGS’. The group also suggests taking into account a preliminary list of alleles defined by polymorphisms outside the peptide‐binding sites that may affect population genetic statistics because of significant frequencies. WG3 (Bioinformatic strategies for HLA population data storage and analysis) recommends the use of programs capable of dealing with ambiguous data, such as the ‘gene[rate]’ computer tools to estimate frequencies, test for Hardy–Weinberg equilibrium and selective neutrality on data containing any number and kind of ambiguities. WG4 (Ethical issues) proposes to adopt thorough general principles for any HLA population study to ensure that it conforms to (inter)national legislation or recommendations/guidelines. All HLA‐NET guidelines and tools are available through its website http://hla‐net.eu.


Omics A Journal of Integrative Biology | 2012

A Software Toolkit and Interface for Performing Stable Isotope Labeling and Top3 Quantification Using Progenesis LC-MS

Da Qi; Philip Brownridge; Dong Xia; Katherine Mackay; Faviel F. Gonzalez-Galarza; Jenna Kenyani; Victoria M. Harman; Robert J. Beynon; Andrew R. Jones

Numerous software packages exist to provide support for quantifying peptides and proteins from mass spectrometry (MS) data. However, many support only a subset of experimental methods or instrument types, meaning that laboratories often have to use multiple software packages. The Progenesis LC-MS software package from Nonlinear Dynamics is a software solution for label-free quantitation. However, many laboratories using Progenesis also wish to employ stable isotope-based methods that are not natively supported in Progenesis. We have developed a Java programming interface that can use the output files produced by Progenesis, allowing the basic MS features quantified across replicates to be used in a range of different experimental methods. We have developed post-processing software (the Progenesis Post-Processor) to embed Progenesis in the analysis of stable isotope labeling data and top3 pseudo-absolute quantitation. We have also created export ability to the new data standard, mzQuantML, produced by the Proteomics Standards Initiative to facilitate the development and standardization process. The software is provided to users with a simple graphical user interface for accessing the different features. The underlying programming interface may also be used by Java developers to develop other routines for analyzing data produced by Progenesis.


International Journal of Immunogenetics | 2012

16th IHIW: Population Global Distribution of Killer Immunoglobulin-like Receptor (KIR) and Ligands

Jill A. Hollenbach; Danillo G. Augusto; Carmen Alaez; Ludmila Bubnova; Ingrid Faé; Gottfried F. Fischer; Faviel F. Gonzalez-Galarza; Clara Gorodezky; Lydia Karabon; Piotr Kusnierczyk; Janelle A. Noble; Olga Rickards; Chrissy h. Roberts; Marie Schaffer; Li Shi; Sofia Tavoularis; Elizabeth Trachtenberg; Y. Yao; Derek Middleton

In the last fifteen years, published reports have described KIR gene‐content frequency distributions in more than 120 populations worldwide. However, there have been limited studies examining these data in aggregate to detect overall patterns of variation at regional and global levels. Here, we present a summary of the collection of KIR gene‐content data for 105 worldwide populations collected as part of the 15th and 16th International Histocompatibility and Immunogenetics Workshops, and preliminary results for data analysis.


Molecular & Cellular Proteomics | 2014

Numerical Compression Schemes for Proteomics Mass Spectrometry Data

Johan Teleman; Andrew W. Dowsey; Faviel F. Gonzalez-Galarza; Simon Perkins; Brian Pratt; Hannes L. Röst; Lars Malmström; Johan Malmström; Andrew R. Jones; Eric W. Deutsch; Fredrik Levander

The open XML format mzML, used for representation of MS data, is pivotal for the development of platform-independent MS analysis software. Although conversion from vendor formats to mzML must take place on a platform on which the vendor libraries are available (i.e. Windows), once mzML files have been generated, they can be used on any platform. However, the mzML format has turned out to be less efficient than vendor formats. In many cases, the naïve mzML representation is fourfold or even up to 18-fold larger compared with the original vendor file. In disk I/O limited setups, a larger data file also leads to longer processing times, which is a problem given the data production rates of modern mass spectrometers. In an attempt to reduce this problem, we here present a family of numerical compression algorithms called MS-Numpress, intended for efficient compression of MS data. To facilitate ease of adoption, the algorithms target the binary data in the mzML standard, and support in main proteomics tools is already available. Using a test set of 10 representative MS data files we demonstrate typical file size decreases of 90% when combined with traditional compression, as well as read time decreases of up to 50%. It is envisaged that these improvements will be beneficial for data handling within the MS community.

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Gottfried Fischer

Medical University of Vienna

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Conrad Bessant

Queen Mary University of London

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Da Qi

University of Liverpool

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Jun Fan

Queen Mary University of London

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S Buus

University of Copenhagen

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