Publication | Open Access
Four key challenges in infectious disease modelling using data from multiple sources
86
Citations
37
References
2014
Year
Epidemiological DynamicDisease OutbreakInfectious DiseaseComputational EpidemiologyCovid-19Infectious Disease ModellingPreventive MedicinePublic Health-related Decision-makingPublic HealthKey ChallengesStatisticsPredictive AnalyticsDisease SurveillancePublic Health PolicyEpidemiologyVaccinationInfluenza ModellingInfectious Disease ModelingEpidemic IntelligencePathogenesisComplex ModelsStatistical InferenceMultiple SourcesMedicine
Public health-related decision-making on policies aimed at controlling epidemics is increasingly evidence-based, exploiting multiple sources of data. Policy makers rely on complex models that are required to be robust, realistically approximating epidemics and consistent with all relevant data. Meeting these requirements in a statistically rigorous and defendable manner poses a number of challenging problems. How to weight evidence from different datasets and handle dependence between them, efficiently estimate and critically assess complex models are key challenges that we expound in this paper, using examples from influenza modelling.
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