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Dernière mise à jour : Mai 2018

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Sall

Moussa Sall - Photo

Moussa SALL
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Topic: Modelling the conditions of distribution/transmission of zoonoses led by recently invasive rodents in rural areas of Northern Senegal
Thesis supervisor: J.M. Dembele
CBGP supervisor : J. Le Fur
University of origin: Univ. Gaston Berger, St-Louis, Senegal
Funding: CEA-MITIC, Univ. Gaston Berger
Dates: March 30th, 2018 – January 31st, 2021

University Gaston Berger's Computer lab, in cooperation with the BIOPASS lab (IRD/ ISRA/UCAD/Cirad) in Dakar and CBGP have been held to implement a project funded by CETIC (African Centre of Excellence in Information and Communication Technologies) entitled: « Mathematical modelling and scientific computing in epidemiology: case study of vector and non-vector transmissions ». This project aims to exploit the contribution of new approaches in mathematical and computer simulation in order to answer questions of integrated understanding of processes ("end-to-end modelling" approach) as they are asked in "OneHealth" dynamics.

In this project, our PhD thesis has a main role. It is led by Pr J.M. Dembele from UGB and supervised by Dr J. Le Fur from IRD. It is based on implementing a model that integrates knowledge linked to field results. Designing the model will based partially on operating the SimMasto platform (Le Fur et al., 2017), which is dedicated to dynamic modelling of knowledge on the bioecology of small rodents and their parasites.