about
Moving interdisciplinary science forward: integrating participatory modelling with mathematical modelling of zoonotic disease in AfricaDurable resistance to crop pathogens: an epidemiological framework to predict risk under uncertaintySpatial, seasonal and climatic predictive models of Rift Valley fever disease across Africa.Integrative modelling for One Health: pattern, process and participation.Challenges in developing methods for quantifying the effects of weather and climate on water-associated diseases: A systematic reviewCan insecticide-treated netting provide protection for Equids from Culicoides biting midges in the United Kingdom?Where are the horses? With the sheep or cows? Uncertain host location, vector-feeding preferences and the risk of African horse sickness transmission in Great Britain.The accuracy of the National Equine Database in relation to vector-borne disease risk modelling of horses in Great Britain.The evolution of plant pathogens in response to host resistance: factors affecting the gain from deployment of qualitative and quantitative resistance.A comparison of weather variables linked to infectious disease patterns using laboratory addresses and patient residence addresses.Environmental limits of Rift Valley fever revealed using ecoepidemiological mechanistic modelsEstimating human-to-human transmissibility of hepatitis A virus in an outbreak at an elementary school in China, 2011Public involvement in research about environmental change and health: A case studyImpacts of environmental and socio-economic factors on emergence and epidemic potential of Ebola in AfricaAuthor Correction: Impacts of environmental and socio-economic factors on emergence and epidemic potential of Ebola in AfricaNew methodologies for the estimation of population vulnerability to diseases: a case study of Lassa fever and Ebola in Nigeria and Sierra Leone
P50
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P50
description
researcher
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wetenschapper
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հետազոտող
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Gianni Lo Iacono
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Gianni Lo Iacono
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Gianni Lo Iacono
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Gianni Lo Iacono
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Gianni Lo Iacono
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Gianni Lo Iacono
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Gianni Lo Iacono
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Gianni Lo Iacono
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Gianni Lo Iacono
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Gianni Lo Iacono
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Gianni Lo Iacono
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Gianni Lo Iacono
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0000-0002-6150-2843