Robert Bossy
Institut national de la recherche agronomique
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Publication
Featured researches published by Robert Bossy.
Nature Biotechnology | 2005
Stéphane Chaillou; Marie-Christine Champomier-Vergès; Monique Cornet; Anne-Marie Crutz-Le Coq; Anne-Marie Dudez; Véronique Martin; Sophie Beaufils; Emmanuelle Darbon-Rongère; Robert Bossy; Valentin Loux; Monique Zagorec
Lactobacillus sakei is a psychrotrophic lactic acid bacterium found naturally on fresh meat and fish. This microorganism is widely used in the manufacture of fermented meats and has biotechnological potential in biopreservation and food safety. We have explored the 1,884,661-base-pair (bp) circular chromosome of strain 23K encoding 1,883 predicted genes. Genome sequencing revealed a specialized metabolic repertoire, including purine nucleoside scavenging that may contribute to an ability to successfully compete on raw meat products. Many genes appear responsible for robustness during the rigors of food processing – particularly resilience against changing redox and oxygen levels. Genes potentially responsible for biofilm formation and cellular aggregation that may assist the organism to colonize meat surfaces were also identified. This genome project is an initial step for investigating new biotechnological approaches to meat and fish processing and for exploring fundamental aspects of bacterial adaptation to these specific environments.
Nature Biotechnology | 2007
Eric Duchaud; Mekki Boussaha; Valentin Loux; Jean-François Bernardet; Christian Michel; Brigitte Kerouault; Stanislas Mondot; Pierre Nicolas; Robert Bossy; Christophe Caron; Philippe Bessières; Jean-François Gibrat; Stéphane Claverol; Fabien Dumetz; Michel Le Hénaff; Abdenour Benmansour
We report here the complete genome sequence of the virulent strain JIP02/86 (ATCC 49511) of Flavobacterium psychrophilum, a widely distributed pathogen of wild and cultured salmonid fish. The genome consists of a 2,861,988–base pair (bp) circular chromosome with 2,432 predicted protein-coding genes. Among these predicted proteins, stress response mediators, gliding motility proteins, adhesins and many putative secreted proteases are probably involved in colonization, invasion and destruction of the host tissues. The genome sequence provides the basis for explaining the relationships of the pathogen to the host and opens new perspectives for the development of more efficient disease control strategies. It also allows for a better understanding of the physiology and evolution of a significant representative of the family Flavobacteriaceae, whose members are associated with an interesting diversity of lifestyles and habitats.
Nucleic Acids Research | 2006
K. Bryson; Valentin Loux; Robert Bossy; Pierre Nicolas; Stephane Chaillou; M. Van De Guchte; S. Penaud; Emmanuelle Maguin; M. Hoebeke; Philippe Bessières; Jean-François Gibrat
We have implemented a genome annotation system for prokaryotes called AGMIAL. Our approach embodies a number of key principles. First, expert manual annotators are seen as a critical component of the overall system; user interfaces were cyclically refined to satisfy their needs. Second, the overall process should be orchestrated in terms of a global annotation strategy; this facilitates coordination between a team of annotators and automatic data analysis. Third, the annotation strategy should allow progressive and incremental annotation from a time when only a few draft contigs are available, to when a final finished assembly is produced. The overall architecture employed is modular and extensible, being based on the W3 standard Web services framework. Specialized modules interact with two independent core modules that are used to annotate, respectively, genomic and protein sequences. AGMIAL is currently being used by several INRA laboratories to analyze genomes of bacteria relevant to the food-processing industry, and is distributed under an open source license.
Proceedings of the 4th BioNLP Shared Task Workshop | 2016
Louise Deléger; Robert Bossy; Estelle Chaix; Mouhamadou Ba; Arnaud Ferré; Philippe Bessières; Claire Nédellec
This paper presents the Bacteria Biotope task of the BioNLP Shared Task 2016, which follows the previous 2013 and 2011 editions. The task focuses on the extraction of the locations (biotopes and geographical places) of bacteria from PubMe abstracts and the characterization of bacteria and their associated habitats with respect to reference knowledge sources (NCBI taxonomy, OntoBiotope ontology). The task is motivated by the importance of the knowledge on bacteria habitats for fundamental research and applications in microbiology. The paper describes the different proposed subtasks, the corpus characteristics, the challenge organization, and the evaluation metrics. We also provide an analysis of the results obtained by participants.
knowledge acquisition, modeling and management | 2010
Claire Nédellec; Wiktoria Golik; Sophie Aubin; Robert Bossy
This paper presents a tool, TyDI, and methods experimented in the building of a termino-ontology, i.e. a lexicalized ontology aimed at fine-grained indexation for semantic search applications. TyDI provides facilities for knowledge engineers and domain experts to efficiently collaborate to validate, organize and conceptualize corpus extracted terms. A use case on biotechnology patent search demonstrates TyDIs potential.
Proceedings of the 4th BioNLP Shared Task Workshop | 2016
Estelle Chaix; Bertrand Dubreucq; Abdelhak Fatihi; Dialekti Valsamou; Robert Bossy; Mouhamadou Ba; Louise Deléger; Pierre Zweigenbaum; Philippe Bessières; Loïc Lepiniec; Claire Nédellec
This paper presents the SeeDev Task of the BioNLP Shared Task 2016. The purpose of the SeeDev Task is the extraction from scientific articles of the descriptions of genetic and molecular mechanisms involved in seed development of the model plant, Arabidopsis thaliana. The SeeDev task consists in the extraction of many different event types that involve a wide range of entity types so that they accurately reflect the complexity of the biological mechanisms. The corpus is composed of paragraphs selected from the full-texts of relevant scientific articles. In this paper, we describe the organization of the SeeDev task, the corpus characteristics, and the metrics used for the evaluation of participant systems. We analyze and discuss the final results of the seven participant systems to the test. The best F-score is 0.432, which is similar to the scores achieved in similar tasks on molecular biology.
Database | 2016
Piotr Przybyła; Matthew Shardlow; Sophie Aubin; Robert Bossy; Richard Eckart de Castilho; Stelios Piperidis; John McNaught; Sophia Ananiadou
Text mining is a powerful technology for quickly distilling key information from vast quantities of biomedical literature. However, to harness this power the researcher must be well versed in the availability, suitability, adaptability, interoperability and comparative accuracy of current text mining resources. In this survey, we give an overview of the text mining resources that exist in the life sciences to help researchers, especially those employed in biocuration, to engage with text mining in their own work. We categorize the various resources under three sections: Content Discovery looks at where and how to find biomedical publications for text mining; Knowledge Encoding describes the formats used to represent the different levels of information associated with content that enable text mining, including those formats used to carry such information between processes; Tools and Services gives an overview of workflow management systems that can be used to rapidly configure and compare domain- and task-specific processes, via access to a wide range of pre-built tools. We also provide links to relevant repositories in each section to enable the reader to find resources relevant to their own area of interest. Throughout this work we give a special focus to resources that are interoperable—those that have the crucial ability to share information, enabling smooth integration and reusability.
metadata and semantics research | 2014
Claire Nédellec; Robert Bossy; Dialekti Valsamou; Marion Ranoux; Wiktoria Golik; Pierre Sourdille
Improvement of most animal and plant species of agronomical interest in the near future has become an international stake because of the increasing demand for feeding a growing world population and to mitigate the reduction of the industrial resources. The recent advent of genomic tools contributed to improve the discovery of linkage between molecular markers and genes that are involved in the control of traits of agronomical interest such as grain number or disease resistance. This information is mostly published as scientific papers but rarely available in databases. Here, we present a method aiming at automatically extract this information from the scientific literature and relying on a knowledge model of the target information and on the WheatPhenotype ontology that we developed for this purpose. The information extraction results were evaluated and integrated into the on-line semantic search engine AlvisIR WheatMarker.
Proceedings of the National Academy of Sciences of the United States of America | 2006
M. van de Guchte; S. Penaud; Christine Grimaldi; Valérie Barbe; K. Bryson; Pierre Nicolas; Catherine Robert; S. Oztas; Sophie Mangenot; Arnaud Couloux; Valentin Loux; Rozenn Dervyn; Robert Bossy; Alexander Bolotin; Jean-Michel Batto; Theresa L. Walunas; Jean-François Gibrat; Philippe Bessières; Jean Weissenbach; S D Ehrlich; Emmanuelle Maguin
meeting of the association for computational linguistics | 2011
Claire Nédellec; Robert Bossy; Jin-Dong Kim; Jung-Jae Kim; Tomoko Ohta; Sampo Pyysalo; Pierre Zweigenbaum