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Featured researches published by Franck Giacomoni.


Frontiers in Plant Science | 2012

TriAnnot: A Versatile and High Performance Pipeline for the Automated Annotation of Plant Genomes

Philippe Leroy; Nicolas Guilhot; Hiroaki Sakai; Aurélien Bernard; Frédéric Choulet; Sébastien Theil; Sébastien Reboux; Naoki Amano; Timothée Flutre; Céline Pelegrin; Hajime Ohyanagi; Michael Seidel; Franck Giacomoni; Mathieu Reichstadt; Michael Alaux; Emmanuelle Gicquello; Fabrice Legeai; Lorenzo Cerutti; Hisataka Numa; Tsuyoshi Tanaka; Klaus F. X. Mayer; Takeshi Itoh; Hadi Quesneville; Catherine Feuillet

In support of the international effort to obtain a reference sequence of the bread wheat genome and to provide plant communities dealing with large and complex genomes with a versatile, easy-to-use online automated tool for annotation, we have developed the TriAnnot pipeline. Its modular architecture allows for the annotation and masking of transposable elements, the structural, and functional annotation of protein-coding genes with an evidence-based quality indexing, and the identification of conserved non-coding sequences and molecular markers. The TriAnnot pipeline is parallelized on a 712 CPU computing cluster that can run a 1-Gb sequence annotation in less than 5 days. It is accessible through a web interface for small scale analyses or through a server for large scale annotations. The performance of TriAnnot was evaluated in terms of sensitivity, specificity, and general fitness using curated reference sequence sets from rice and wheat. In less than 8 h, TriAnnot was able to predict more than 83% of the 3,748 CDS from rice chromosome 1 with a fitness of 67.4%. On a set of 12 reference Mb-sized contigs from wheat chromosome 3B, TriAnnot predicted and annotated 93.3% of the genes among which 54% were perfectly identified in accordance with the reference annotation. It also allowed the curation of 12 genes based on new biological evidences, increasing the percentage of perfect gene prediction to 63%. TriAnnot systematically showed a higher fitness than other annotation pipelines that are not improved for wheat. As it is easily adaptable to the annotation of other plant genomes, TriAnnot should become a useful resource for the annotation of large and complex genomes in the future.


The International Journal of Biochemistry & Cell Biology | 2017

Create, run, share, publish, and reference your LC-MS, FIA-MS, GC-MS, and NMR data analysis workflows with the Workflow4Metabolomics 3.0 Galaxy online infrastructure for metabolomics

Yann Guitton; Marie Tremblay-Franco; Gildas Le Corguillé; Jean-François Martin; Mélanie Pétéra; Pierrick Roger-Mele; Alexis Delabrière; Sophie Goulitquer; Misharl Monsoor; Christophe Duperier; Cécile Canlet; Rémi Servien; Patrick Tardivel; Christophe Caron; Franck Giacomoni; Etienne A. Thévenot

Metabolomics is a key approach in modern functional genomics and systems biology. Due to the complexity of metabolomics data, the variety of experimental designs, and the multiplicity of bioinformatics tools, providing experimenters with a simple and efficient resource to conduct comprehensive and rigorous analysis of their data is of utmost importance. In 2014, we launched the Workflow4Metabolomics (W4M; http://workflow4metabolomics.org) online infrastructure for metabolomics built on the Galaxy environment, which offers user-friendly features to build and run data analysis workflows including preprocessing, statistical analysis, and annotation steps. Here we present the new W4M 3.0 release, which contains twice as many tools as the first version, and provides two features which are, to our knowledge, unique among online resources. First, data from the four major metabolomics technologies (i.e., LC-MS, FIA-MS, GC-MS, and NMR) can be analyzed on a single platform. By using three studies in human physiology, alga evolution, and animal toxicology, we demonstrate how the 40 available tools can be easily combined to address biological issues. Second, the full analysis (including the workflow, the parameter values, the input data and output results) can be referenced with a permanent digital object identifier (DOI). Publication of data analyses is of major importance for robust and reproducible science. Furthermore, the publicly shared workflows are of high-value for e-learning and training. The Workflow4Metabolomics 3.0 e-infrastructure thus not only offers a unique online environment for analysis of data from the main metabolomics technologies, but it is also the first reference repository for metabolomics workflows.


Journal of Proteomics | 2015

Assessment of protein modifications in liver of rats under chronic treatment with paracetamol (acetaminophen) using two complementary mass spectrometry-based metabolomic approaches

Carole Mast; Bernard Lyan; Charlotte Joly; Delphine Centeno; Franck Giacomoni; Jean-François Martin; Laurent Mosoni; Dominique Dardevet; Estelle Pujos-Guillot; Isabelle Papet

UNLABELLED Liver protein can be altered under paracetamol (APAP) treatment. APAP-protein adducts and other protein modifications (oxidation/nitration, expression) play a role in hepatotoxicity induced by acute overdoses, but it is unknown whether liver protein modifications occur during long-term treatment with non-toxic doses of APAP. We quantified APAP-protein adducts and assessed other protein modifications in the liver from rats under chronic (17 days) treatment with two APAP doses (0.5% or 1% of APAP in the diet w/w). A targeted metabolomic method was validated and used to quantify APAP-protein adducts as APAP-cysteine adducts following proteolytic hydrolysis. The limit of detection was found to be 7ng APAP-cysteine/mL hydrolysate i.e. an APAP-Cys to tyrosine ratio of 0.016‰. Other protein modifications were assessed on the same protein hydrolysate by untargeted metabolomics including a new strategy to process the data and identify discriminant molecules. These two complementary mass spectrometry (MS)-based metabolic approaches enabled the assessment of a wide range of protein modifications induced by chronic treatment with APAP. BIOLOGICAL SIGNIFICANCE APAP-protein adducts were detected even in the absence of glutathione depletion and hepatotoxicity, i.e. in the 0.5% APAP group, and increased by 218% in the 1% APAP group compared to the 0.5% APAP group. At the same time, the untargeted metabolomic method revealed a decrease in the binding of cysteine, cysteinyl-glycine and GSH to thiol groups of protein cysteine residues, an increase in the oxidation of tryptophan and proline residues and a modification in protein expression. This wide range of modifications in liver proteins occurred in rats under chronic treatment with APAP that did not induce hepatotoxicity.


F1000Research | 2017

The future of metabolomics in ELIXIR

Merlijn van Rijswijk; Charlie Beirnaert; Christophe Caron; Marta Cascante; Victoria Dominguez; Warwick B. Dunn; Timothy M. D. Ebbels; Franck Giacomoni; Alejandra Gonzalez-Beltran; Thomas Hankemeier; Kenneth Haug; Jose L. Izquierdo-Garcia; Rafael C. Jimenez; Fabien Jourdan; Namrata Kale; Maria I. Klapa; Oliver Kohlbacher; Kairi Koort; Kim Kultima; Gildas Le Corguillé; Pablo Moreno; Nicholas K. Moschonas; Steffen Neumann; Claire O’Donovan; Martin Reczko; Philippe Rocca-Serra; Antonio Rosato; Reza M. Salek; Susanna-Assunta Sansone; Venkata P. Satagopam

Metabolomics, the youngest of the major omics technologies, is supported by an active community of researchers and infrastructure developers across Europe. To coordinate and focus efforts around infrastructure building for metabolomics within Europe, a workshop on the “Future of metabolomics in ELIXIR” was organised at Frankfurt Airport in Germany. This one-day strategic workshop involved representatives of ELIXIR Nodes, members of the PhenoMeNal consortium developing an e-infrastructure that supports workflow-based metabolomics analysis pipelines, and experts from the international metabolomics community. The workshop established metabolite identification as the critical area, where a maximal impact of computational metabolomics and data management on other fields could be achieved. In particular, the existing four ELIXIR Use Cases, where the metabolomics community - both industry and academia - would benefit most, and which could be exhaustively mapped onto the current five ELIXIR Platforms were discussed. This opinion article is a call for support for a new ELIXIR metabolomics Use Case, which aligns with and complements the existing and planned ELIXIR Platforms and Use Cases.


Frontiers in Molecular Biosciences | 2016

A Computational Solution to Automatically Map Metabolite Libraries in the Context of Genome Scale Metabolic Networks

Benjamin Merlet; Nils Paulhe; Florence Vinson; Clément Frainay; Maxime Chazalviel; Nathalie Poupin; Yoann Gloaguen; Franck Giacomoni; Fabien Jourdan

This article describes a generic programmatic method for mapping chemical compound libraries on organism-specific metabolic networks from various databases (KEGG, BioCyc) and flat file formats (SBML and Matlab files). We show how this pipeline was successfully applied to decipher the coverage of chemical libraries set up by two metabolomics facilities MetaboHub (French National infrastructure for metabolomics and fluxomics) and Glasgow Polyomics (GP) on the metabolic networks available in the MetExplore web server. The present generic protocol is designed to formalize and reduce the volume of information transfer between the library and the network database. Matching of metabolites between libraries and metabolic networks is based on InChIs or InChIKeys and therefore requires that these identifiers are specified in both libraries and networks. In addition to providing covering statistics, this pipeline also allows the visualization of mapping results in the context of metabolic networks. In order to achieve this goal, we tackled issues on programmatic interaction between two servers, improvement of metabolite annotation in metabolic networks and automatic loading of a mapping in genome scale metabolic network analysis tool MetExplore. It is important to note that this mapping can also be performed on a single or a selection of organisms of interest and is thus not limited to large facilities.


Metabolomics | 2015

Can we trust untargeted metabolomics? Results of the metabo-ring initiative, a large-scale, multi-instrument inter-laboratory study

Jean-Charles Martin; Mathieu Maillot; Gerard Mazerolles; Alexandre Verdu; Bernard Lyan; Carole Migné; Catherine Defoort; Cécile Canlet; Christophe Junot; Claude Guillou; Claudine Manach; Daniel Jacob; Delphine Bouveresse; Estelle Paris; Estelle Pujos-Guillot; Fabien Jourdan; Franck Giacomoni; Frédérique Courant; Gaëlle Favé; Gwénaëlle Le Gall; Hubert Chassaigne; Jean-Claude Tabet; Jean-François Martin; Jean-Philippe Antignac; Laetitia Shintu; Marianne Defernez; Mark Philo; Marie-Cécile Alexandre Gouaubau; Marie Josephe Amiot-Carlin; Mathilde Bossis


JOBIM 2015 (16. édition des Journées Ouvertes en Biologie, Informatique et Mathématiques ) | 2015

Workflow4Metabolomics: A collaborative research infrastructure for computational metabolomics

Mélanie Pétéra; Gildas Le Corguillé; Marion Landi; Misharl Monsoor; Marie Tremblay Franco; Christophe Duperier; Jean-François Martin; Daniel Jacob; Yann Guitton; Marie Lefebvre; Estelle Pujos-Guillot; Franck Giacomoni; Etienne A. Thévenot; Christophe Caron


Molecular Nutrition & Food Research | 2018

Nutrimetabolomics: An Integrative Action for Metabolomic Analyses in Human Nutritional Studies

Marynka Ulaszewska; Christoph H. Weinert; Alessia Trimigno; Reto Portmann; Cristina Andres Lacueva; René Badertscher; Lorraine Brennan; Carl Brunius; Achim Bub; Francesco Capozzi; Marta Cialiè Rosso; Chiara Cordero; Hannelore Daniel; Stéphanie Durand; Bjoern Egert; Paola G. Ferrario; Edith J. M. Feskens; Pietro Franceschi; Mar Garcia-Aloy; Franck Giacomoni; Pieter Giesbertz; Raúl González-Domínguez; Kati Hanhineva; Lieselot Hemeryck; Joachim Kopka; Sabine E. Kulling; Rafael Llorach; Claudine Manach; Fulvio Mattivi; Carole Migné


SMMAP 2017 (Spectrométrie de Masse, Métabolomique et Analyse Protéomique) | 2017

Untargeted metabolomic approach by GC-QTOF : From low to high resolution

Carole Migné; Nils Paulhe; Yann Guitton; Franck Giacomoni; Mélanie Pétéra; Stéphanie Durand; Estelle Pujos-Guillot


MetaboMeeting | 2017

Metabolomics resources in interoperability and Open-Science

Pablo Rodriguez-Mier; Dorrain Low Yanwen; Claudine Manach; Estelle Pujos-Guillot; Franck Giacomoni

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Estelle Pujos-Guillot

Institut national de la recherche agronomique

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Claudine Manach

Institut national de la recherche agronomique

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Carole Migné

Institut national de la recherche agronomique

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Fabien Jourdan

Institut national de la recherche agronomique

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Bernard Lyan

Institut national de la recherche agronomique

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Cécile Canlet

Institut national de la recherche agronomique

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Daniel Jacob

Institut national de la recherche agronomique

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Delphine Bouveresse

Institut national de la recherche agronomique

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Frédérique Courant

Institut national de la recherche agronomique

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Gaëlle Favé

Institut national de la recherche agronomique

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