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G. Ramstein, M. Bernadet, A. Kangoud, and D. , Barba Chromosome : A Rule-Based Image Analysis System For Chromosome classification, 14th Conference IEEE, pp.926-927, 1992.

D. Barba, X. Qiu, and G. , Ramstein Image restoration for chromosome classification with band information, 9th Inter. Conf. on Digital Signal Processing, pp.186-202, 1991.

M. Raffy, G. Ramstein, and F. , Becker Fractal analysis of a relief and its remotely sensed image, Second Image Symposium. Int. Electronic Image Week, pp.391-392, 1986.

H. T. Nguyen, G. Ramstein, P. Leray, and Y. , Jacques Differential study of the cytokine network in the immune system by the evolutionary algorithm based on the bayesian network, Conférences internationales avec comité de sélection et actes à diffusion proceedings of the 2nd Asian Conference on Intelligent Information and Database Systems (ACIIDS), Doctoral Colloquium, 2010.

A. Nolwenn-le-meur, R. Bihouee, G. Teusan, and . Ramstein, Jean Leger MADTools : management tool for the mining of microarray data. 'Details on MADSCAN, a tool for processing chip data, in Cambridge Healthtech Institute's ?Microarray Data Analysis Baltimore, pp.21-23, 2003.

G. Ramstein, P. Bakowski, and Y. , Nadreau VHDLP: specification and evaluation of performance constraints for design tuning. Forum on Design Languages, 1999.

G. Ramstein and P. , Bakowski A front end VHDL environment for By-Default Specification, Simulation and Synthesis of Array Processors Architectures. VHDL-Forum for CAD in Europe, pp.17-20, 1994.

M. Bernadet, H. Benali, and G. , Ramstein Three multiagent architectures for medical image processing, Congres EXPERSYS, vol.92, 1992.

J. Lorec, G. Ramstein, and Y. , Jacques Extraction et identification d'entités complexes à partir de textes biomédicaux, CEPADUES éditions, Revue des Nouvelles Technologies de l'Information RNTI-E-6, pp.223-228, 2006.

J. Mikolajczak, G. Ramstein, and Y. , Jacques Détection de faibles homologies de proteines par machines à vecteurs de support, RNTI Classification et fouille de données, publication RNTI-C-1, Cépadues-édition, 11èmes Rencontres de la Société Francophone de Classification, pp.89-100, 2004.

J. Mikolajczak, G. Ramstein, and Y. , Jacques Caractérisation de signatures complexes dans des familles de protéines distantes, éditeur CEPADUES-EDITIONS, publication RNTI, pp.317-328, 2004.

H. Delalin, J. Léger, and G. , Ramstein Analyse de l'expression de gènes à partir de puces à ADN, Journées Francophones d'Extraction et de Gestion des Connaissances, pp.421-421, 2002.

G. Ramstein, P. Bunelle, and Y. Jacques, Algorithmes pour l'analyse de séquences biologiques, pp.141-147, 2001.

M. Bernadet, G. Ramstein, and H. , Benali Massage: un générateur de systèmes multi-agents distribués

D. Barba, X. Qiu, and G. , Ramstein La classification automatique des chromosomes par analyse d'images, pp.545-549, 1991.

D. Barba, X. Qiu, and G. , Ramstein Performances comparées de méthodes de classification de chromosomes, pp.1090-1093, 1991.

H. T. Nguyen, G. Ramstein, P. Leray, and Y. , Jacques Reconstruction de réseaux de régulations génétiques par l'approche évolutionnaire sur les réseaux Bayésiens, Conférences et ateliers nationaux avec comité de sélection et actes à diffusion proceedings of MODGRAPH, Journées Ouvertes en Biologie, Informatique et Mathématiques (JOBIM), 2009.

N. Beaume, G. Ramstein, and Y. , Jacques Searching for remote homologs : a combined approach based on SVM and experts, 7èmes Journées Ouvertes Biologie Informatique Mathématiques (JOBIM), pp.5-7, 2006.

N. Beaume, J. Mikolajczak, G. Ramstein, and Y. , Jacques Recherche de nouveaux membres de la superfamille des cytokines par Séparateurs à Vastes Marges, 6ème Journées Ouvertes Biologie Informatique Mathématiques (JOBIM), pp.6-8, 2005.

J. Mikolajczak, G. Ramstein, and Y. , Jacques Classification de protéines distantes par motifs hiérarchiques, 5èmes Journées Ouvertes Biologie Informatique Mathématiques (JOBIM), pp.28-30, 2004.

G. Ramstein, M. Bernadet, A. Kangoud, and D. , Barba A knowledge-based system for chromosome classification, Congres de Cytométrie en Image, pp.2-4, 1992.

G. Ramstein and M. , Raffy Interprétation morphologique de structures Application à la reconnaissance du couvert forestier par télédétection aéroportée, Machines et Réseaux Intelligents, 1987.

G. Ramstein and M. Raffy, Caractérisation multispectrale de la structure spatiale des scènes télédétectées. Signatures Spectrales d'Objets en Télédétection, Quatrième Colloque Intern, 1988.

G. Rapports and O. Ramstein, Deforges Conception et Validation d'une Architecture Matérielle de Traitement en vue d'une Application de Tri Postal, Contrat SRTP, 1994.

N. Beaume, thèse co-encadrée avec Yannick Jacques de l'équipe INSERM U463, Une approche multicritère pour la recherche d'homologues distants, 2008.

P. Collet, thèse co-encadrée avec Dominique Barba de l'IRCCyN, Méthodes de conception d'une architecture optimisée de traitement pour des applications d'images, 1997.

O. Deforges, thèse co-encadrée avec Dominique Barba de l'IRCCyN, Segmentation robuste d'images de documents par une approche multirésolution. Conception et validation d'une architecture parallèle dédiée, 1995.

. Jean-luc, Panier Classification automatique de chromosomes par réseau neuromimétique, DEA, septembre, 1993.

P. Bunelle, Mémoire d'ingénieur CNAM, en collaboration avec Yannick Jacques de l'équipe Inserm U463, Application biologique et Data-mining : Recherche de motifs conservés dans une famille de protéines : les récepteurs de cytokine, 2001.

. Responsabilité-de-la-plate-forme-bio-informatique-de, plate-forme de bio-informatique de Nantes est une composante de l'Institut fédératif de recherche thérapeutique de Nantes (IFR 26 -Inserm/MESR/Université) Elle a pour mission de concevoir et de développer des outils innovants en recherche bio-informatique, ainsi que de proposer un ensemble de services pour l'analyse bio-informatique. L'activité de recherche a

@. Gdr-tdsi, Architecture pour le Signal et l, Image, vol.6, 1998.

@. Prc-gdr, Architectures nouvelles de Machines: Architectures spécialisées pour la reconnaissance de formes et le traitement du signal, 1997.

A. Et-programmation, P. Département, and E. Polytech, Nantes Audience : Bac+3 Volume horaire annuel : TD (24 h), TP (36 h) Notions abordées : Bases de la programmation en PASCAL Complexité algorithmique Récursivité Structure de Données, 1990.

A. Numérique-département and E. Polytech, Nantes Audience : Bac+3 Volume horaire annuel : Cours (2 h), TD (12 h), TP (16 h) Notions abordées : Résolution de systèmes linéaires Interpolation et intégration numérique Equations différentielles, racines d'une équation