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, Liste des publications, présentations et posters Publications

P. Picard, C. *. , D. S. Brunker, K. Berthier, K. Roumagnac et al., Exploiting genetic information to trace plant virus dispersal in landscapes, Annual Review of Phytopathology, vol.55, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01608765

C. Picard, L. Rimbaud, P. Hendrikx, S. Soubeyrand, E. Jacquot et al., PESO: a modelling framework to help improve management strategies for epidemics -application to sharka, EPPO Bulletin, vol.47, issue.2, pp.231-236, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01605857

A. Picard, C. Soubeyrand, S. Jacquot, E. Thébaud, and G. , Analyzing the influence of landscape aggregation on disease spread to improve management strategies, revision (Phytopathology)

V. En-préparation-picheny, C. Picard, and G. Thébaud, Impact of input warping on the Bayesian optimisation of the management of a plant disease using a complex epidemiological model

C. Picard, V. Picheny, F. Bonnot, S. Soubeyrand, and G. Thébaud, In silico optimization of a strategy for landscape-wide plant disease management

C. Picard, V. Picheny, S. Soubeyrand, and G. Thébaud, Optimization of the spatio-temporal deployment of resistant cultivars and disease control options

C. Picard, S. Dallot, E. Jacquot, G. Thébaud, and S. Soubeyrand, Accounting for uninfected hosts in transmission tree reconstruction, Communications orales

C. Picard, S. Soubeyrand, E. Jacquot, and G. Thébaud, Optimisation in silico de la gestion d'une épidémie chez les plantes à l'échelle du paysage, 2018.

C. Picard, S. Soubeyrand, E. Jacquot, and G. Thébaud, In silico optimisation of sharka management, 2018.

C. Picard, S. Soubeyrand, E. Jacquot, and G. Thébaud, Optimisation in silico de la gestion d'une maladie des plantes à l'échelle du paysage, pp.17-2017

C. Picard, S. Soubeyrand, E. Jacquot, and G. Thébaud, Optimisation in silico de la gestion d'une épidémie chez les plantes à l'échelle du paysage, Journées scientifiques et doctorales de l'ANSES, pp.25-2017

C. Picard, S. Soubeyrand, E. Jacquot, and G. Thébaud, In silico optimisation of plant disease management at the landscape scale. Séminaire ITK, 2017.

C. Picard, S. Soubeyrand, E. Jacquot, and G. Thébaud, In silico optimisation of plant disease management at the landscape scale. Séminaire BGPI, 2017.

C. Picard, S. Soubeyrand, E. Jacquot, and G. Thébaud, Optimisation in silico de la gestion d'une maladie des plantes à l'échelle du paysage, pp.22-2017

C. Picard, S. Soubeyrand, E. Jacquot, and G. Thébaud, Influence of landscape characteristics on the optimal control of a plant virus, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01606604

F. Aussois, , 2017.

C. Picard, S. Soubeyrand, E. Jacquot, and G. Thébaud, Influence des caractéristiques paysagères sur la dispersion et la gestion d'une épidémie chez les plantes, 2016.

C. Picard, S. Soubeyrand, E. Jacquot, and G. Thébaud, Influence of landscape characteristics on plant disease control. 8 ème journée des doctorants SPE, pp.29-30

C. Picard, S. Soubeyrand, E. Jacquot, and G. Thébaud, Impact du paysage sur la gestion d'une épidémie chez les plantes. Séminaire BGPI, pp.23-2016

C. Picard, S. Soubeyrand, E. Jacquot, and G. Thébaud, Influence des caractéristiques paysagères sur la dispersion et la gestion d'une épidémie chez les plantes, 2016.

C. Picard, S. Soubeyrand, E. Jacquot, and G. Thébaud, Optimisation in silico de la gestion spatialisée d'une épidémie chez les plantes, pp.27-2016