about
Modeling infectious disease dynamics in the complex landscape of global healthMind the Scales: Harnessing Spatial Big Data for Infectious Disease Surveillance and InferenceThe shifting demographic landscape of influenzaWhen individual behaviour matters: homogeneous and network models in epidemiologyBig Data for Infectious Disease Surveillance and Modeling.Data-Driven Models of Foot-and-Mouth Disease Dynamics: A Review.Mathematical models to characterize early epidemic growth: A reviewAssessing the use of antiviral treatment to control influenza.The shifting demographic landscape of pandemic influenza.Inferring population-level contact heterogeneity from common epidemic dataExploring community structure in biological networks with random graphs.Social, spatial, and temporal organization in a complex insect society.A comparative analysis of influenza vaccination programsExploring biological network structure with clustered random networks.Statistical inference to advance network models in epidemiology.Detecting signals of seasonal influenza severity through age dynamicsHost contact and shedding patterns clarify variation in pathogen exposure and transmission in threatened tortoise Gopherus agassizii: implications for disease modelling and management.Using heterogeneity in the population structure of U.S. swine farms to compare transmission models for porcine epidemic diarrhoeaMixed methods pilot study of sharing behaviors among waterpipe smokers of rural Lao PDR: implications for infectious disease transmission.The dynamic nature of contact networks in infectious disease epidemiology.Unraveling the disease consequences and mechanisms of modular structure in animal social networks.Early sub-exponential epidemic growth: Simple models, nonlinear incidence rates, and additional mechanisms: Reply to comments on "Mathematical models to characterize early epidemic growth: A review".Six challenges in measuring contact networks for use in modelling.Nine challenges in incorporating the dynamics of behaviour in infectious diseases models.Contact, Travel, and Transmission: The Impact of Winter Holidays on Influenza Dynamics in the United States.Eight challenges for network epidemic models.The impact of past epidemics on future disease dynamics.Increasing herd immunity with influenza revaccination.Disease implications of animal social network structure: a synthesis across social systems.Deploying digital health data to optimize influenza surveillance at national and local scales.Network frailty and the geometry of herd immunity.Epidemiological investigation of tattoo-like skin lesions among bottlenose dolphins in Shark Bay, Australia.The reachability of contagion in temporal contact networks: how disease latency can exploit the rhythm of human behavior.Inferring social structure and its drivers from refuge use in the desert tortoise, a relatively solitary speciesDisease dynamics during wildlife translocations: disruptions to the host population and potential consequences for transmission in desert tortoise contact networksComparative Assessment of Some Target Detection Algorithms for Hyperspectral ImagesFast Community Detection for Dynamic Complex NetworksAnt colonies maintain social homeostasis in the face of decreased densityA multi-species repository of social networksGlobal estimates of mammalian viral diversity accounting for host sharing
P50
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P50
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