A weighted non-connectivity penalty for detection and inference of irregularly shaped clusters.
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2017
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Resumo
Methods for the detection and inference of irregularly shaped geographic
clusters with count data are important tools in disease surveillance and epidemiology.
Recently, several methods were developed which combine Kulldorff’s Spatial Scan
Statistic with some penalty function to control the excessive freedom of shape of spatial
clusters. Different penalty functions were conceived based on the cluster geometric shape
or on the adjacency structure and non-connectivity of the cluster associated graph.
Those penalty function were also implemented using the framework of multi-objective
optimization methods. In particular, the non-connectivity penalty was shown to be very
effective in cluster detection. Basically, the non-connectivity penalty function relies on
the adjacency structure of the cluster’s associated graph but it does not take into account
the population distribution within the cluster. Here we introduce a modification of the
non-connectivity penalty function, introducing weights in the components of the penalty
function according to the cluster population distribution. Our methods is able to identify
multiple clusters in the study area. We show through numerical simulations that our
weighted non-connectivity penalty function outperforms the original non-connectivity
function in terms of power of detection, sensitivity and positive predictive value, also
being computationally fast. Both single-objective and multi-objective versions of the
algorithm are implemented and compared.
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Spatial scan statistic, Irregular clusters, Multi-objective algorithms, Compactness Function
Citação
DUARTE, A. R. et al. A weighted non-connectivity penalty for detection and inference of irregularly shaped clusters. Revista Brasileira de Biometria, v. 35, p. 160-173, n. 2017. Disponível em: <http://www.biometria.ufla.br/index.php/BBJ/article/view/124>. Acesso em: 16 jan. 2018.