An Examination of Five Spatial Disease Clustering Methodologies for the Identification of Childhood Cancer Clusters in Alberta, Canada
Overview
Authors
Affiliations
Cluster detection is an important part of spatial epidemiology because it may help suggest potential factors associated with disease and thus, guide further investigation of the nature of diseases. Many different methods have been proposed to test for disease clusters. In this paper, we study five popular methods for detecting spatial clusters. These methods are Besag-Newell (BN), circular spatial scan statistic (CSS), flexible spatial scan statistic (FSS), Tango's maximized excess events test (MEET), and Bayesian disease mapping (BYM). We study these five different methods by analyzing a data set of malignant cancer diagnoses in children in the province of Alberta, Canada during 1983-2004. Our results show that the potential clusters are located in the south-central part of the province. Although, all methods performed very well to detect clusters, the BN and MEET methods identified local as well as general clusters.
An C, Shen L, Sun M, Sun Y, Fan S, Zhao C Front Public Health. 2023; 10:1009854.
PMID: 36777766 PMC: 9911661. DOI: 10.3389/fpubh.2022.1009854.
Guideline and Implementation of Osteosarcoma Nursing Care for Children and Adolescents.
Gao Q, Yao Y, Xu Q Appl Bionics Biomech. 2022; 2022:2021162.
PMID: 36267672 PMC: 9578899. DOI: 10.1155/2022/2021162.
Clustering of non-leukemia childhood cancer in Colombia: a nationwide study.
Manrique-Hernandez E, Rojas Diaz M, Rodriguez-Villamizar L F1000Res. 2021; 10:86.
PMID: 34249334 PMC: 8261763. DOI: 10.12688/f1000research.27766.2.
Konstantinoudis G, Schuhmacher D, Ammann R, Diesch T, Kuehni C, Spycher B Int J Health Geogr. 2020; 19(1):15.
PMID: 32303231 PMC: 7165384. DOI: 10.1186/s12942-020-00211-7.
Space-time clustering of childhood leukemia in Colombia: a nationwide study.
Rodriguez-Villamizar L, Rojas Diaz M, Acuna Merchan L, Moreno-Corzo F, Ramirez-Barbosa P BMC Cancer. 2020; 20(1):48.
PMID: 31959128 PMC: 6971926. DOI: 10.1186/s12885-020-6531-2.