Literature DB >> 22452805

BaySTDetect: detecting unusual temporal patterns in small area data via Bayesian model choice.

Guangquan Li1, Nicky Best, Anna L Hansell, Ismaïl Ahmed, Sylvia Richardson.   

Abstract

Space-time modeling of small area data is often used in epidemiology for mapping chronic disease rates and by government statistical agencies for producing local estimates of, for example, unemployment or crime rates. Although there is typically a general temporal trend, which affects all areas similarly, abrupt changes may occur in a particular area, e.g. due to emergence of localized predictors/risk factor(s) or impact of a new policy. Detection of areas with "unusual" temporal patterns is therefore important as a screening tool for further investigations. In this paper, we propose BaySTDetect, a novel detection method for short-time series of small area data using Bayesian model choice between two competing space-time models. The first model is a multiplicative decomposition of the area effect and the temporal effect, assuming one common temporal pattern across the whole study region. The second model estimates the time trends independently for each area. For each area, the posterior probability of belonging to the common trend model is calculated, which is then used to classify the local time trend as unusual or not. Crucial to any detection method, we provide a Bayesian estimate of the false discovery rate (FDR). A comprehensive simulation study has demonstrated the consistent good performance of BaySTDetect in detecting various realistic departure patterns in addition to estimating well the FDR. The proposed method is applied retrospectively to mortality data on chronic obstructive pulmonary disease (COPD) in England and Wales between 1990 and 1997 (a) to test a hypothesis that a government policy increased the diagnosis of COPD and (b) to perform surveillance. While results showed no evidence supporting the hypothesis regarding the policy, an identified unusual district (Tower Hamlets in inner London) was later recognized to have higher than national rates of hospital readmission and mortality due to COPD by the National Health Service, which initiated various local enhanced services to tackle the problem. Our method would have led to an early detection of this local health issue.

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Year:  2012        PMID: 22452805     DOI: 10.1093/biostatistics/kxs005

Source DB:  PubMed          Journal:  Biostatistics        ISSN: 1465-4644            Impact factor:   5.899


  12 in total

1.  Spatio-temporal Bayesian model selection for disease mapping.

Authors:  R Carroll; A B Lawson; C Faes; R S Kirby; M Aregay; K Watjou
Journal:  Environmetrics       Date:  2016-09-28       Impact factor: 1.900

2.  Spatiotemporal multivariate mixture models for Bayesian model selection in disease mapping.

Authors:  A B Lawson; R Carroll; C Faes; R S Kirby; M Aregay; K Watjou
Journal:  Environmetrics       Date:  2017-09-25       Impact factor: 1.900

3.  Spatial Signal Detection Using Continuous Shrinkage Priors.

Authors:  An-Ting Jhuang; Montserrat Fuentes; Jacob L Jones; Giovanni Esteves; Chris M Fancher; Marschall Furman; Brian J Reich
Journal:  Technometrics       Date:  2019-03-22

4.  Temporally dependent accelerated failure time model for capturing the impact of events that alter survival in disease mapping.

Authors:  Rachel Carroll; Andrew B Lawson; Shanshan Zhao
Journal:  Biostatistics       Date:  2019-10-01       Impact factor: 5.899

5.  Quantifying the Spatial Inequality and Temporal Trends in Maternal Smoking Rates in Glasgow.

Authors:  Duncan Lee; Andrew Lawson
Journal:  Ann Appl Stat       Date:  2016-09-28       Impact factor: 2.083

6.  Bayesian spatiotemporal modelling for identifying unusual and unstable trends in mammography utilisation.

Authors:  Earl W Duncan; Nicole M White; Kerrie Mengersen
Journal:  BMJ Open       Date:  2016-05-26       Impact factor: 2.692

7.  Investigating trends in asthma and COPD through multiple data sources: A small area study.

Authors:  Areti Boulieri; Anna Hansell; Marta Blangiardo
Journal:  Spat Spatiotemporal Epidemiol       Date:  2016-06-11

8.  The challenge of opt-outs from NHS data: a small-area perspective.

Authors:  Frédéric B Piel; Brandon L Parkes; Hima Daby; Anna L Hansell; Paul Elliott
Journal:  J Public Health (Oxf)       Date:  2018-12-01       Impact factor: 2.341

9.  A Bayesian mixture modeling approach for public health surveillance.

Authors:  Areti Boulieri; James E Bennett; Marta Blangiardo
Journal:  Biostatistics       Date:  2020-07-01       Impact factor: 5.899

10.  Small-area methods for investigation of environment and health.

Authors:  Frédéric B Piel; Daniela Fecht; Susan Hodgson; Marta Blangiardo; M Toledano; A L Hansell; Paul Elliott
Journal:  Int J Epidemiol       Date:  2020-04-01       Impact factor: 7.196

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