Abstract:
Understanding the evolution of an epidemic is essential to implement timely and efficient preventive measures. The availability of epidemiological data at a fine spatio-temporal scale is both novel and highly useful in this regard. Indeed, having geocoded data at the case level opens the door to analyze the spread of the
disease on an individual basis, allowing the detection of specific outbreaks or, in
general, of some interactions between cases that are not observable if aggregated
data are used. Point processes are the natural tool to perform such analyses. We
analyze a spatio-temporal point pattern of Coronavirus disease 2019 (COVID-19)
cases detected in Valencia (Spain) during the first 11 months (February 2020 to
January 2021) of the pandemic. In particular, we propose a mechanistic spatiotemporal model for the first-order intensity function of the point process. This
model includes separate estimates of the overall temporal and spatial intensities
of the model and a spatio-temporal interaction term. For the latter, while similar
studies have considered different forms of this term solely based on the physical
distances between the events, we have also incorporated mobility data t...