Improving Disease Risk Estimation in Small Areas by Accounting for Spatiotemporal Local Discontinuities
By: G. Santafé, A. Adin, M. D. Ugarte
Potential Business Impact:
Finds disease hotspots for better health plans.
This work proposes a two-step method to enhance disease risk estimation in small areas by integrating spatiotemporal cluster detection within a Bayesian hierarchical spatiotemporal model. First, we introduce an efficient scan-statistic-based clustering algorithm that employs a greedy search within the scan window, enabling flexible cluster detection across large spatial domains. We then integrate these detected clusters into a Bayesian spatiotemporal model to estimate relative risks, explicitly accounting for identified risk discontinuities. We apply this methodology to large-scale cancer mortality data at the municipality level across continental Spain. Our results show our method offers superior cluster detection accuracy compared to SaTScan. Furthermore, integrating cluster information into a Bayesian spatiotemporal model significantly improves model fit and risk estimate performance, as evidenced by better DIC, WAIC, and logarithmic scores than SaTScan-based or standard BYM2 models. This methodology provides a powerful tool for epidemiological analysis, offering a more precise identification of high- and low-risk areas and enhancing the accuracy of risk estimation models.
Similar Papers
Discovering Spatial Patterns of Readmission Risk Using a Bayesian Competing Risks Model with Spatially Varying Coefficients
Applications
Finds disease hotspots using patient location.
Bayesian spatio-temporal modelling for infectious disease outbreak detection
Methodology
Finds disease outbreaks faster in different places.
Bayesian spatio-temporal weighted regression for integrating missing and misaligned environmental data
Methodology
Improves air pollution maps from messy data.