about
Seasonal transmission potential and activity peaks of the new influenza A(H1N1): a Monte Carlo likelihood analysis based on human mobilityA comparative analysis of Chikungunya and Zika transmissionCharacterising two-pathogen competition in spatially structured environmentsRisk of MERS importation and onward transmission: a systematic review and analysis of cases reported to WHO.Metapopulation epidemic models with heterogeneous mixing and travel behaviour.Estimate of Novel Influenza A/H1N1 cases in Mexico at the early stage of the pandemic with a spatially structured epidemic model.Modeling the critical care demand and antibiotics resources needed during the Fall 2009 wave of influenza A(H1N1) pandemic.Human mobility networks, travel restrictions, and the global spread of 2009 H1N1 pandemicReal-time numerical forecast of global epidemic spreading: case study of 2009 A/H1N1pdm.Age-specific contacts and travel patterns in the spatial spread of 2009 H1N1 influenza pandemic.The representativeness of a European multi-center network for influenza-like-illness participatory surveillanceHost mobility drives pathogen competition in spatially structured populations.Evaluating the feasibility and participants' representativeness of an online nationwide surveillance system for influenza in FrancePredicting epidemic risk from past temporal contact data.Recalibrating disease parameters for increasing realism in modeling epidemics in closed settings.Human mobility networks and persistence of rapidly mutating pathogens.Quantifying spatiotemporal heterogeneity of MERS-CoV transmission in the Middle East region: A combined modelling approach.Heterogeneous length of stay of hosts' movements and spatial epidemic spread.Human mobility and time spent at destination: impact on spatial epidemic spreading.The impact of regular school closure on seasonal influenza epidemics: a data-driven spatial transmission model for Belgium.Epidemic Threshold in Continuous-Time Evolving Networks.Improving early epidemiological assessment of emerging Aedes-transmitted epidemics using historical data.Real-Time Assessment of the International Spreading Risk Associated with the 2014 West African Ebola OutbreakMechanisms for European Bat Lyssavirus subtype 1 persistence in non-synanthropic bats: insights from a modeling studyAnalytical Computation of the Epidemic Threshold on Temporal NetworksInfection propagator approach to compute epidemic thresholds on temporal networks: impact of immunity and of limited temporal resolutionHost contact dynamics shapes richness and dominance of pathogen strainsShifting patterns of seasonal influenza epidemicsMechanisms for lyssavirus persistence in non-synanthropic bats in Europe: insights from a modeling studyPreparedness and vulnerability of African countries against introductions of 2019-nCoVPreparedness and vulnerability of African countries against importations of COVID-19: a modelling studyNovel coronavirus (2019-nCoV) early-stage importation risk to Europe, January 2020Interplay between competitive and cooperative interactions in a three-player pathogen systemHost contact dynamics shapes richness and dominance of pathogen strains
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P50
description
researcher
@en
name
Chiara Poletto
@en
Chiara Poletto
@es
type
label
Chiara Poletto
@en
Chiara Poletto
@es
prefLabel
Chiara Poletto
@en
Chiara Poletto
@es
P1960
n--hn-cAAAAJ
P31
P496
0000-0002-4051-1716