DocumentCode :
3129478
Title :
Data Mining Cancer Registries: Retrospective Surveillance of Small Area Time Trends in Cancer Incidence Using BaySTDetect
Author :
Li, Guangquan ; Richardson, Sylvia ; Fortunato, Lea ; Ahmed, Ismaïl ; Hansell, Anna ; Toledano, Mireille ; Best, Nicky
Author_Institution :
Dept. of Epidemiology & Biostat., Imperial Coll. London, London, UK
fYear :
2011
fDate :
11-11 Dec. 2011
Firstpage :
885
Lastpage :
890
Abstract :
Space-time modelling of small area data is often used in epidemiology for mapping temporal trends in chronic disease rates. For rare diseases such as cancers, data are sparse, and a Bayesian hierarchical modelling approach is typically adopted in order to smooth the raw disease rates. Although there may be a general temporal trend which affect all areas similarly, abrupt changes may also occur in particular areas due to, for example, emergence of localized risk factor(s) or impact of a new health or screening policy. Detection of areas with "unusual\´\´ temporal patterns is therefore important to flag-up areas warranting further investigations. In this paper, we present a novel area of application of a recently proposed detection method, Bays Detect, for short time series of small area data. Placed within the Bayesian model choice framework, Bays Detect detects unusual time trends based on comparison of two competing space-time models. The first model is a straightforward multiplicative decomposition of the area effect and the temporal effect, assuming one single temporal pattern across the whole study region. The second model estimates a local time trend, independently for each area. An area-specific model indicator is introduced to select which model offers a better description of the local data. Classification of an area local time trend as ``unusual\´\´ or not is based on the posterior mean of this model indicator, which represents the probability that the common trend model is appropriate for that area. An important feature of the method is that the classification rule can be fine-tuned to control the false detection rate (FDR). Based on previous simulation results, we present some further insights of the model specification in relation to the detection performance in practice. Bays Detect is then applied to data on several different cancers collected by the Thames Cancer Registry in South East England to illustrate its potential in retrospective surveillance.
Keywords :
Bayes methods; cancer; data mining; health care; pattern classification; surveillance; time series; BaySTDetect; Bayesian hierarchical modelling approach; Bayesian model choice framework; South East England; Thames Cancer Registry; area effect; area-specific model indicator; cancer incidence; cancer registries; chronic disease rate; classification rule; data mining; epidemiology; false detection rate; health policy; localized risk factor; retrospective surveillance; screening policy; space-time data modelling; temporal effect; time series; Adaptation models; Bayesian methods; Cancer; Data models; Diseases; Sensitivity; Surveillance; Bayesian spatio-temporal analysis; FDR; detection; disease surveillance;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Data Mining Workshops (ICDMW), 2011 IEEE 11th International Conference on
Conference_Location :
Vancouver, BC
Print_ISBN :
978-1-4673-0005-6
Type :
conf
DOI :
10.1109/ICDMW.2011.59
Filename :
6137474
Link To Document :
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