Regularized spatial and spatio-temporal cluster detection
Document Type
Article
Publication Date
6-1-2022
Abstract
Spatial and spatio-temporal cluster detection are important tools in public health and many other areas of application. Cluster detection can be approached as a multiple testing problem, typically using a space and time scan statistic. We recast the spatial and spatio-temporal cluster detection problem in a high-dimensional data analytical framework with Poisson or quasi-Poisson regression with the Lasso penalty. We adopt a fast and computationally-efficient method using a novel sparse matrix representation of the effects of potential clusters. The number of clusters and tuning parameters are selected based on (quasi-)information criteria. We evaluate the performance of our proposed method including the false positive detection rate and power using a simulation study. Application of the method is illustrated using breast cancer incidence data from three prefectures in Japan.
Publication Source (Journal or Book title)
Spatial and Spatio-temporal Epidemiology
Recommended Citation
Kamenetsky, M., Lee, J., Zhu, J., & Gangnon, R. (2022). Regularized spatial and spatio-temporal cluster detection. Spatial and Spatio-temporal Epidemiology, 41 https://doi.org/10.1016/j.sste.2021.100462