Literature DB >> 19197958

Inference based on kernel estimates of the relative risk function in geographical epidemiology.

Martin L Hazelton1, Tilman M Davies.   

Abstract

Kernel smoothing is a popular approach to estimating relative risk surfaces from data on the locations of cases and controls in geographical epidemiology. The interpretation of such surfaces is facilitated by plotting of tolerance contours which highlight areas where the risk is sufficiently high to reject the null hypothesis of unit relative risk. Previously it has been recommended that these tolerance intervals be calculated using Monte Carlo randomization tests. We examine a computationally cheap alternative whereby the tolerance intervals are derived from asymptotic theory. We also examine the performance of global tests of hetereogeneous risk employing statistics based on kernel risk surfaces, paying particular attention to the choice of smoothing parameters on test power. 2009 WILEY-VCH Verlag GmbH & Co. KGaA, Weinheim.

Mesh:

Year:  2009        PMID: 19197958     DOI: 10.1002/bimj.200810495

Source DB:  PubMed          Journal:  Biom J        ISSN: 0323-3847            Impact factor:   2.207


  9 in total

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5.  Nonparametric evaluation of dynamic disease risk: a spatio-temporal kernel approach.

Authors:  Zhijie Zhang; Dongmei Chen; Wenbao Liu; Jeffrey S Racine; SengHuat Ong; Yue Chen; Genming Zhao; Qingwu Jiang
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7.  Spatial Heterogeneity in Positional Errors: A Comparison of Two Residential Geocoding Efforts in the Agricultural Health Study.

Authors:  Jared A Fisher; Maya Spaur; Ian D Buller; Abigail R Flory; Laura E Beane Freeman; Jonathan N Hofmann; Michael Giangrande; Rena R Jones; Mary H Ward
Journal:  Int J Environ Res Public Health       Date:  2021-02-09       Impact factor: 3.390

8.  sparrpowR: a flexible R package to estimate statistical power to identify spatial clustering of two groups and its application.

Authors:  Ian D Buller; Derek W Brown; Rena R Jones; Mitchell J Machiela; Timothy A Myers
Journal:  Int J Health Geogr       Date:  2021-03-18       Impact factor: 3.918

9.  Monitoring of Pseudorabies in Wild Boar of Germany-A Spatiotemporal Analysis.

Authors:  Nicolai Denzin; Franz J Conraths; Thomas C Mettenleiter; Conrad M Freuling; Thomas Müller
Journal:  Pathogens       Date:  2020-04-10
  9 in total

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