Journal article

Towards development of functional climate-driven early warning systems for climate-sensitive infectious diseases: Statistical models and recommendations

S Haque, K Mengersen, I Barr, L Wang, W Yang, S Vardoulakis, H Bambrick, W Hu

Environmental Research | Published : 2024

Open access

Abstract

Climate, weather and environmental change have significantly influenced patterns of infectious disease transmission, necessitating the development of early warning systems to anticipate potential impacts and respond in a timely and effective way. Statistical modelling plays a pivotal role in understanding the intricate relationships between climatic factors and infectious disease transmission. For example, time series regression modelling and spatial cluster analysis have been employed to identify risk factors and predict spatial and temporal patterns of infectious diseases. Recently advanced spatio-temporal models and machine learning offer an increasingly robust framework for modelling unc..

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University of Melbourne Researchers