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F. Calimeri, A. Marzullo, M. Caracciolo, and C. Stamile, BioHIPI: Biomedical Hadoop Image Processing Interface, The Third International Conference on Machine Learning, p.2017
DOI : 10.1145/1327452.1327492

C. Stamile, G. Kocevar, F. Cotton, F. Maes, D. Sappey-marinier et al., These authors contributed equally to this work Peer Reviewed Conference Abstracts 1 Non-Negative Matrix Factorization for White-Matter Fiber-Bundles Longitudinal Analysis, 2016.

. Sappey-marinier, Classification of Multiple Sclerosis Clinical Forms Using DTI Fiber-Bundles Information

D. Rousseau and . Sappey-marinier, Detection of Longitudinal DTI Changes in Multiple Sclerosis Patients Based on Sensitive WM Fiber Modeling, ISMRM

. Sappey-marinier, Multiple Sclerosis Clinical Classification Based on DTI Fiber Analysis, ISMRM

D. Rousseau and . Sappey-marinier, Détection des changements longitudinaux rapides chez les patients SEP par une modélisation des faisceaux de substance blanche

. Sappey-marinier, Classification des différentes formes cliniques de Sclérose en Plaques basée sur l'Analyse des Faisceaux de Substance Blanche

G. Kocevar, C. Stamile, F. Cotton, F. Durand-dubief, and D. Sappey-marinier, Characterization of Multiple Sclerosis Forms Through Fiber-Bundle Profile Analysis, ARSEP, 2017.

. Sappey-marinier, Graph-Theory Based Classification of Multiple Sclerosis Clinical Courses, ARSEP MRI Workshop
URL : https://hal.archives-ouvertes.fr/hal-01492694

D. Pezzolla, C. Stamile, F. Durand-dubief, D. Sappey-marinier, and F. Calimeri, An Automatic Algorithm for MRI Anonymization Based on Face Features Detection, 2016.

G. Kocevar, C. Stamile, S. Hannoun, F. Cotton, F. Durand-dubief et al., Characterization of Brain Structural Connectivity in Different Clinical Forms of Multiple Sclerosis Patients, ARSEP, 2016.

. Sappey-marinier, Classification of Multiple Sclerosis Clinical Forms Using Structural Connectome, ESMRMB
URL : https://hal.archives-ouvertes.fr/hal-01494809

G. Kocevar, C. Stamile, S. Hannoun, F. Cotton, F. Durand-dubief et al., Characterization of DTI Brain Connectivity in Different Clinical Forms of Multiple Sclerosis Patients Based on Graph Theory, ISMRM, 2015.

G. Kocevar, C. Stamile, S. Hannoun, F. Durand-dubief, F. Cotton et al., Le Myo-Inositol, un marqueur métabolique de l'évolution rapide des lésions de Sclérose en Plaques, SFRMBM, 2015.

G. Kocevar, F. Durand-dubief, C. Stamile, S. Hannoun, F. Cotton et al., Analyse de la connectivité structurelle cérébrale par la théorie des graphes : une nouvelle caractérisation des formes cliniques de sclérose en plaques, 2017.

I. Suprano, C. Delon-martin, G. Kocevar, C. Stamile, S. Hannoun et al., Réorganisation Topologique des Réseaux Fonctionnels dans Deux Profils d'Enfants à Haut Potentiel Intellectuel, SFRMBM, 2017.

G. Kocevar, C. Stamile, F. Cotton, F. Durand-dubief, and D. Sappey-marinier, Characterization of multiple sclerosis forms through fiber-bundle profile analysis, 2017.

. Sappey-marinier, Differential Hemispheric Brain Network Reorganization Claudio STAMILE

. Mots-clés, Analyse longitudinale; Imagerie par tenseur de diffusion; Imagerie par résonance magnétique; Sclérose en plaques; Extraction des faisceaux de SB; Factorisation de matrices non-négatives