Showing results 5981 to 6000 on 7052 in total
Vincent Miele, Franck Picard, S. Dray
Etienne Rajon, Samuel Venner, F. Menu
B. Ozenne, Fabien Subtil, L. Ostergaard, Delphine Maucort-Boulch
Stéphanie Jacquet, Karine Huber, Hélène Guis, Marie-Laure Setier-Rio, Maria Goffredo, Xavier Allène, Ignace Rakotoarivony, Christine Chevillon, Jérémy Bouyer, Thierry Baldet, Thomas Balenghien, Claire Garros
Infectious diseases account for one fourth of human deaths worldwide. With pathogen collections of ever-increasing sizes, it becomes possible in theory to reconstruct past epidemic events on continental or worldwide scales and to gain actionable insights into the driving forces of pathogen dispersal and evolution. Current population genetics methods excel at this task, however their computational cost hampers their application on massive (n > 1,000) genomic datasets. Here we introduce a novel approach, ancestral state interpolation (AncSI), to reconstruct epidemics through space and time in a computationally efficient fashion. AncSI infers past information (including location, resistance or transmission success) relative to all isolates in the study population in a given time period. By computing series of fine-grained time period, AncSI allows for the visualization of epidemic dispersal in the form of video files. We reconstruct the epidemic progression across Eurasia and Africa of two deadly bacterial pathogens, namely the Mycobacterium tuberculosis Beijing family (n = 4,000 isolates with an evolution on the millenial scale) and the Salmonella Typhi H58 clone (n = 2,000 isolates with an evolution on the decade scale). In both cases, AncSI-inferred epidemic dynamics exhibited a near-perfect match with the conclusions of previous studies based on hypothesis-driven population genetics analyses. Furthermore, AncSI results highlighted previously unreported features of the epidemics such as a Korean (rather than Chinese) emergence of M.tuberculosis Beijing. Our results indicate that an accurate reconstruction of past epidemics can be obtained efficiently from genomic datasets, potentially leading to novel discoveries by leveraging the fast growing collections of pathogen genomes.
L. Say, J.-M. Gaillard, D. Pontier
Orianne Tournayre, Maxime Galan, Jean-Baptiste Pons, Maxime Leuchtmann, Dominique Pontier, Nathalie Charbonnel
A. Oriol-Cotterill, D.W. Macdonald, M. Valeix, S. Ekwanga, L.G. Frank
Sabine Peres, Mario Jolicoeur
R. Dubruille, G.A. Orsi, L. Delabaere, E. Cortier, P. Couble, Gabriel Marais, B. Loppin
Raphaëlle Dubruille, Guillermo A Orsi, Lætitia Delabaere, Elisabeth Cortier, Pierre Couble, Gabriel Marais, Benjamin Loppin
Tatiana Giraud, Guislaine Refrégier, Mickaël Le Gac, Damien M. de Vienne, Michael E Hood
Morgane Tidière, Elodie Portanier, Stéphanie Jacquet, Steven Goodman, Gildas Monnier, Gregory Beuneux, Jean‐françois Desmet, Cécile Kaerle, Guillaume Queney, Michel Barataud, Dominique Pontier
Morgane Tidière, Elodie Portanier, Stéphanie Jacquet, Steven Goodman, Gildas Monnier, Gregory Beuneux, Jean‐françois Desmet, Cécile Kaerle, Guillaume Queney, Michel Barataud, Dominique Pontier
M. Bergeron, O. Dauwalder, M. Gouy, A.-M. Freydiere, M. Bes, H. Meugnier, Y. Benito, J. Etienne, G. Lina, F. Vandenesch, S. Boisset
Marie Bergeron, Olivier Dauwalder, Manolo Gouy, Anne-Marie Freydiere, Michèle Bes, Hélène Meugnier, Yvonne Benito, Jérôme Etienne, Gérard Lina, François Vandenesch, Sandrine Boisset
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Cécile Gotteland, Yannick Chaval, Isabelle Villena, Maxime Galan, Régine Geers, Laurence Voutquenne-Nazabadioko, Marie-Lazarine Poulle, Nathalie Charbonnel, Emmanuelle Gilot-Fromont
Osnat Malka, Diego Santos-Garcia, Ester Feldmesser, Elad Sharon, Renate Krause-Sakate, Hélène Delatte, Sharon van Brunschot, Mitulkumar Patel, Paul Visendi, Habibu Mugerwa, Susan Seal, John Colvin, Shai Morin