about
Connecting network properties of rapidly disseminating epizoonoticsThe Biosurveillance Analytics Resource Directory (BARD): Facilitating the Use of Epidemiological Models for Infectious Disease Surveillance.Estimating the reproduction number from the initial phase of the Spanish flu pandemic waves in Geneva, Switzerland.Mathematical modeling of the effectiveness of facemasks in reducing the spread of novel influenza A (H1N1).Ebola: mobility data.A network-patch methodology for adapting agent-based models for directly transmitted disease to mosquito-borne disease.Comparing dengue and chikungunya emergence and endemic transmission in A. aegypti and A. albopictusA spatial model of mosquito host-seeking behavior.Feedback-based, system-level properties of vertebrate-microbial interactions.Modelling vertical transmission in vector-borne diseases with applications to Rift Valley feverDisease properties, geography, and mitigation strategies in a simulation spread of rinderpest across the United States.Opinion: Mathematical models: a key tool for outbreak response.Optimizing human activity patterns using global sensitivity analysis.The Western Africa ebola virus disease epidemic exhibits both global exponential and local polynomial growth rates.Towards an early warning system for forecasting human west nile virus incidenceConstructing rigorous and broad biosurveillance networks for detecting emerging zoonotic outbreaks.Model parameters and outbreak control for SARS.Epidemic Forecasting is Messier Than Weather Forecasting: The Role of Human Behavior and Internet Data Streams in Epidemic Forecast.A mathematical model for the spread of west nile virus in migratory and resident birds.Two-sex mosquito model for the persistence of Wolbachia.An age-structured model of hiv infection that allows for variations in the production rate of viral particles and the death rate of productively infected cells.Modeling the impact of random screening and contact tracing in reducing the spread of HIV.Epidemic models with differential susceptibility and staged progression and their dynamics.Differential susceptibility and infectivity epidemic models.A New Age-Structured Multiscale Model of the Hepatitis C Virus Life-Cycle During Infection and Therapy With Direct-Acting Antiviral Agents.Towards an early warning system for forecasting human west nile virus incidence.Generating Bipartite Networks with a Prescribed Joint Degree Distribution.Comparing the effectiveness of different strains of Wolbachia for controlling chikungunya, dengue fever, and zikaReal-time forecasts of the COVID-19 epidemic in China from February 5th to February 24th, 2020New coronavirus outbreak: Framing questions for pandemic preventionShort-term Forecasts of the COVID-19 Epidemic in Guangdong and Zhejiang, China: February 13-23, 2020
P50
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P50
description
investigador
@es
researcher
@en
wetenschapper
@nl
name
James M Hyman
@en
James M Hyman
@nl
type
label
James M Hyman
@en
James M Hyman
@nl
prefLabel
James M Hyman
@en
James M Hyman
@nl
P31
P496
0000-0001-5247-5794