Data

A smoothed map of standardised incidence rates of BFV disease in north Queensland, using kriging and a semi-variogram model

Queensland University of Technology
Adjunct Professor Shilu Tong (Associated with) Distinguished Professor Kerrie Mengersen (Associated with) Dr Sue Naish (Associated with) Professor Wenbiao Hu (Associated with)
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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=http://figshare.com/articles/_Panel_A_showing_a_smoothed_map_of_standardised_incidence_rates_of_BFV_disease_using_kriging_and_panel_B_showing_a_semi_variogram_model_/395208&rft.title=A smoothed map of standardised incidence rates of BFV disease in north Queensland, using kriging and a semi-variogram model&rft.identifier=10378.3/8085/1018.16114&rft.publisher=Queensland University of Technology&rft.description=Barmah Forest virus (BFV) disease is a common and wide-spread mosquito-borne disease in Australia. This study investigated the spatio-temporal patterns of BFV disease in Queensland, Australia using geographical information system (GIS) tools and geostatistical analysis. We calculated the incidence rates and standardised incidence rates of BFV disease. Moran's I statistic was used to assess the spatial autocorrelation of BFV incidences. Spatial dynamics of BFV disease was examined using semi-variogram analysis. Interpolation techniques were applied to visualise and display the spatial distribution of BFV disease in statistical local areas (SLAs) throughout Queensland. Mapping of BFV disease by SLAs reveals the presence of substantial spatio-temporal variation over time. Statistically significant differences in BFV incidence rates were identified among age groups (χ2 = 7587, df = 7327,p&rft.creator=Anonymous&rft.date=1970&rft.coverage=153.552920,-9.929730 137.994575,-9.929730 137.994575,-29.178588 153.552920,-29.178588 153.552920,-9.929730&rft_rights=© 2011, Naish et al&rft_rights=Creative Commons Attribution 3.0 http://creativecommons.org/licenses/by/4.0/&rft_subject=bfv&rft_subject=kriging&rft_subject=smoothed&rft_subject=Barmah Forest virus&rft_subject=standardised&rft_subject=spatio-temporal&rft_subject=disease&rft_subject=semi-variogram&rft_subject=mosquito-bourne&rft_subject=rates&rft_subject=incidence&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/4.0/

© 2011, Naish et al

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Contact Information

Postal Address:
Distinguished Professor Kerrie Mengersen
Ph: +61 7 3138 2063
Fax: +61 7 3138 2310

k.mengersen@qut.edu.au

Full description

Barmah Forest virus (BFV) disease is a common and wide-spread mosquito-borne disease in Australia. This study investigated the spatio-temporal patterns of BFV disease in Queensland, Australia using geographical information system (GIS) tools and geostatistical analysis.

We calculated the incidence rates and standardised incidence rates of BFV disease. Moran's I statistic was used to assess the spatial autocorrelation of BFV incidences. Spatial dynamics of BFV disease was examined using semi-variogram analysis. Interpolation techniques were applied to visualise and display the spatial distribution of BFV disease in statistical local areas (SLAs) throughout Queensland. Mapping of BFV disease by SLAs reveals the presence of substantial spatio-temporal variation over time. Statistically significant differences in BFV incidence rates were identified among age groups (χ2 = 7587, df = 7327,p<0.01). There was a significant positive spatial autocorrelation of BFV incidence for all four periods, with the Moran's I statistic ranging from 0.1506 to 0.2901 (p<0.01). Semi-variogram analysis and smoothed maps created from interpolation techniques indicate that the pattern of spatial autocorrelation was not homogeneous across the state.

Panel A showing a smoothed map of standardised incidence rates of BFV disease using kriging and panel B showing a semi-variogram model.

 

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153.55292,-9.92973 137.99458,-9.92973 137.99458,-29.17859 153.55292,-29.17859 153.55292,-9.92973

145.7737475,-19.554159

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Identifiers
  • Local : 10378.3/8085/1018.16114