
Detecting disease outbreaks using local spatiotemporal methods.
A real-time surveillance method is developed with emphasis on rapid and accurate detection of emerging outbreaks. We develop a model with relatively weak assumptions regarding the latent processes generating the observed data, ensuring a robust prediction of the spatiotemporal incidence surface. Estimation occurs via a local linear fitting combined with day-of-week effects, where spatial smoothing is handled by a novel distance metric that adjusts for population density. Detection of emerging outbreaks is carried out via residual analysis. Both daily residuals and AR model-based detrended residuals are used for detecting abnormalities in the data given that either a large daily residual or an increasing temporal trend in the residuals signals a potential outbreak, with the threshold for statistical significance determined using a resampling approach.
Duke Scholars
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Related Subject Headings
- Statistics & Probability
- Risk Factors
- Risk Assessment
- Proportional Hazards Models
- Population Surveillance
- Incidence
- Humans
- Disease Outbreaks
- Data Interpretation, Statistical
- Animals
Citation

Published In
DOI
EISSN
ISSN
Publication Date
Volume
Issue
Start / End Page
Related Subject Headings
- Statistics & Probability
- Risk Factors
- Risk Assessment
- Proportional Hazards Models
- Population Surveillance
- Incidence
- Humans
- Disease Outbreaks
- Data Interpretation, Statistical
- Animals