In this article we propose a novel hurdle negative binomial (HNB) regression combined with a distributed lag nonlinear model (DLNM) to model weather factors’ impact on heat related illness (HRI) in Singapore. AIC criterion is adopted to help select proper combination of weather variables and check their lagged effect as well as nonlinear effect. The process of model selection and validation is demonstrated. It is observed that the predicted occurrence rate is close to the observed one. The proposed combined model can be used to predict HRI cases for mitigating HRI occurrences and provide inputs for related public health policy considering climate change impact.
CITATION STYLE
Xu, H.-Y., Fu, X., Lim, C. L., Ma, S., Lim, T. K., Tambyah, P. A., … Lee, L. K. H. (2018). Weather Impact on Heat-Related Illness in a Tropical City State, Singapore. Atmospheric and Climate Sciences, 08(01), 97–110. https://doi.org/10.4236/acs.2018.81007
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