Data

Summary of the number of events in the grid cells for all the non-zero cell counts at various spatial scales for the Humberside dataset

Queensland University of Technology
Mengersen, Kerrie ; Kang, Su Yun ; McGree, James
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ctx_ver=Z39.88-2004&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Adc&rfr_id=info%3Asid%2FANDS&rft_id=info:doi10.4225/09/5885a243b32cb&rft.title=Summary of the number of events in the grid cells for all the non-zero cell counts at various spatial scales for the Humberside dataset&rft.identifier=10.4225/09/5885a243b32cb&rft.publisher=Queensland University of Technology&rft.description=The dataset was gathered to investigate the impact of changes in spatial scale on model outcome for a set of spatial structures and to evaluate the performance of various Bayesian spatial smoothness priors for spatial dependence, namely an intrinsic Gaussian Markov random field (IGMRF), a second-order random walk (RW2D) on a lattice, and a Gaussian field with Matérn correlation function.The current dataset draws upon the Humberside case study to complete the investigation. The Humberside case study portrays natural phenomena to investigate the impact of spatial scales and spatial smoothing on modelling outcomes to complement a simulation study. The data contained 62 cases of childhood leukaemia and lymphoma diagnosed in the North Humberside region of England between 1974 and 1986, and 141 controls selected at random from the birth register for the same period. Spatial location of each individual's home address (actually, the centroid for the postal code) was given in the dataset. The dataset had a polygonal observation window; for the analysis, we created a 72.1 km×60.8 km rectangular window to enclose all events.The dataset presents a summary of the number of events in the grid cells for all the non-zero cell counts at various spatial scales for the Humberside case study.&rft.creator=Mengersen, Kerrie &rft.creator=Kang, Su Yun &rft.creator=McGree, James &rft.date=2016&rft.edition=1&rft.coverage=153.025013,-27.476409&rft_rights=© 2013 Kang et al.&rft_rights=Creative Commons Attribution 3.0 http://creativecommons.org/licenses/by/3.0/au/&rft_subject=Cells &rft_subject=Scales &rft_subject=Spatial &rft_subject=Counts &rft_subject=Grid &rft_subject=Non-zero&rft_subject=Humberside &rft.type=dataset&rft.language=English Access the data

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Open Licence view details
CC-BY

Creative Commons Attribution 3.0
http://creativecommons.org/licenses/by/3.0/au/

© 2013 Kang et al.

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Contact Information

Postal Address:
Su Yun Kang

s7.kang@qut.edu.au

Full description

The dataset was gathered to investigate the impact of changes in spatial scale on model outcome for a set of spatial structures and to evaluate the performance of various Bayesian spatial smoothness priors for spatial dependence, namely an intrinsic Gaussian Markov random field (IGMRF), a second-order random walk (RW2D) on a lattice, and a Gaussian field with Matérn correlation function.The current dataset draws upon the Humberside case study to complete the investigation.

The Humberside case study portrays natural phenomena to investigate the impact of spatial scales and spatial smoothing on modelling outcomes to complement a simulation study. The data contained 62 cases of childhood leukaemia and lymphoma diagnosed in the North Humberside region of England between 1974 and 1986, and 141 controls selected at random from the birth register for the same period. Spatial location of each individual's home address (actually, the centroid for the postal code) was given in the dataset. The dataset had a polygonal observation window; for the analysis, we created a 72.1 km×60.8 km rectangular window to enclose all events.

The dataset presents a summary of the number of events in the grid cells for all the non-zero cell counts at various spatial scales for the Humberside case study.

Data time period: 2013 to 30 09 2013

This dataset is part of a larger collection

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153.02501,-27.47641

153.025013,-27.476409

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