Santafé Rodrigo, GuzmánAdin Urtasun, AritzLee, DuncanUgarte Martínez, María Dolores2025-01-232025-01-232021-02-17Santafé, G., Adin, A., Lee, D., Ugarte, M.D. (2021) Dealing with risk discontinuities to estimate cancer mortality risks when the number of small areas is large. Statistical methods in medical research an international review journal, 30(1), 6-21. https://doi.org/10.1177/09622802209465020962-280210.1177/0962280220946502https://academica-e.unavarra.es/handle/2454/53058Many statistical models have been developed during the last years to smooth risks in disease mapping. However, most of these modeling approaches do not take possible local discontinuities into consideration or if they do, they are computationally prohibitive or simply do not work when the number of small areas is large. In this paper, we propose a two-step method to deal with discontinuities and to smooth noisy risks in small areas. In a first stage, a novel density-based clustering algorithm is used. In contrast to previous proposals, this algorithm is able to automatically detect the number of spatial clusters, thus providing a single cluster structure. In the second stage, a Bayesian hierarchical spatial model that takes the cluster configuration into account is fitted, which accounts for the discontinuities in disease risk. To evaluate the performance of this new procedure in comparison to previous proposals, a simulation study has been conducted. Results show competitive risk estimates at a much better computational cost. The new methodology is used to analyze stomach cancer mortality data in Spanish municipalities.application/pdfeng© 2020 by SAGE Publications. The Author(s).ClusteringDisease mappingINLASmall areasSmoothingSpanish municipalitiesStomach cancerDealing with risk discontinuities to estimate cancer mortality risks when the number of small areas is largeinfo:eu-repo/semantics/article2025-01-23info:eu-repo/semantics/openAccess