Title of article :
Predicting infectious disease outbreak risk via migratory waterfowl vectors
Author/Authors :
Jacob J. Oleson&Christopher K. Wikle، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Abstract :
The spread of an emerging infectious disease is a major public health threat. Given the uncertainties
associated with vector-borne diseases, in terms of vector dynamics and disease transmission, it is critical to
develop statistical models that address how and when such an infectious disease could spread throughout
a region such as the USA. This paper considers a spatio-temporal statistical model for how an infectious
disease could be carried into the USA by migratory waterfowl vectors during their seasonal migration
and, ultimately, the risk of transmission of such a disease to domestic fowl. Modeling spatio-temporal data
of this type is inherently difficult given the uncertainty associated with observations, complexity of the
dynamics, high dimensionality of the underlying process, and the presence of excessive zeros. In particular,
the spatio-temporal dynamics of the waterfowl migration are developed by way of a two-tiered functional
temporal and spatial dimension reduction procedure that captures spatial and seasonal trends, as well as
regional dynamics. Furthermore, the model relates the migration to a population of poultry farms that
are known to be susceptible to such diseases, and is one of the possible avenues toward transmission to
domestic poultry and humans. The result is a predictive distribution of those counties containing poultry
farms that are at the greatest risk of having the infectious disease infiltrate their flocks assuming that the
migratory population was infected. The model naturally fits into the hierarchical Bayesian framework.
Keywords :
Spatiotemporal , Avian Flu , Functional , Hierarchical , Markov chain Monte Carlo , Bayesian , risk
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS