Developing spatio-temporal prediction models for arbovirus activity in nothern Australia based on remotely sensed bioclimatic variables

Vector-borne diseases pose an ongoing threat to public and animal health in the north ofAustralia. A number of surveillance programs are in place to determine the extent of virus activityand control the risk, but these are labour- and cost intensive while producing data with largetemporal and spatia...

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Main Authors: Klingseisen, Bernhard, Corner, Robert, Stevenson, Mark
Other Authors: Barbara Hock
Format: Conference Paper
Published: Scion 2011
Subjects:
Online Access:http://hdl.handle.net/20.500.11937/30848
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author Klingseisen, Bernhard
Corner, Robert
Stevenson, Mark
author2 Barbara Hock
author_facet Barbara Hock
Klingseisen, Bernhard
Corner, Robert
Stevenson, Mark
author_sort Klingseisen, Bernhard
building Curtin Institutional Repository
collection Online Access
description Vector-borne diseases pose an ongoing threat to public and animal health in the north ofAustralia. A number of surveillance programs are in place to determine the extent of virus activityand control the risk, but these are labour- and cost intensive while producing data with largetemporal and spatial gaps. Using the example of Bluetongue virus, the aim of this study was toinvestigate the potential of remotely sensed variables to facilitate the development of area-widepredictive models that complement traditional surveillance activities.Bioclimatic variables were derived for the Northern Territory from MODIS and TRMM remotesensing data products covering a period of nine years. Spatial and temporal uncertainty in thesurveillance data required the annual aggregation of environmental variables on a pastoralproperty level. Generalized Additive Models (GAM) were developed based on variables such asNDVI and land surface temperature to produce annual prediction maps of virus activity. Externalvalidation showed that the model correctly predicted 75% of the results from cattle stations testedfor Bluetongue. Remaining uncertainty in the model can be mainly attributed to the spatio-temporalinconsistency of the available surveillance data.This case study has developed a cost-effective approach based on a set of robustenvironmental predictors that facilitate the generation of arbovirus prediction maps soon after thepeak of risk for infection. While this research focused on Bluetongue Virus, we see a large potentialto expand the method to other areas and viruses particularly in view of the increasing populationsin Northern Australia.
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institution Curtin University Malaysia
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publishDate 2011
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spelling curtin-20.500.11937-308482017-01-30T13:21:57Z Developing spatio-temporal prediction models for arbovirus activity in nothern Australia based on remotely sensed bioclimatic variables Klingseisen, Bernhard Corner, Robert Stevenson, Mark Barbara Hock Northern Australia arbovirus spatio-temporal - modelling epidemiology remote sensing Vector-borne diseases pose an ongoing threat to public and animal health in the north ofAustralia. A number of surveillance programs are in place to determine the extent of virus activityand control the risk, but these are labour- and cost intensive while producing data with largetemporal and spatial gaps. Using the example of Bluetongue virus, the aim of this study was toinvestigate the potential of remotely sensed variables to facilitate the development of area-widepredictive models that complement traditional surveillance activities.Bioclimatic variables were derived for the Northern Territory from MODIS and TRMM remotesensing data products covering a period of nine years. Spatial and temporal uncertainty in thesurveillance data required the annual aggregation of environmental variables on a pastoralproperty level. Generalized Additive Models (GAM) were developed based on variables such asNDVI and land surface temperature to produce annual prediction maps of virus activity. Externalvalidation showed that the model correctly predicted 75% of the results from cattle stations testedfor Bluetongue. Remaining uncertainty in the model can be mainly attributed to the spatio-temporalinconsistency of the available surveillance data.This case study has developed a cost-effective approach based on a set of robustenvironmental predictors that facilitate the generation of arbovirus prediction maps soon after thepeak of risk for infection. While this research focused on Bluetongue Virus, we see a large potentialto expand the method to other areas and viruses particularly in view of the increasing populationsin Northern Australia. 2011 Conference Paper http://hdl.handle.net/20.500.11937/30848 Scion fulltext
spellingShingle Northern Australia
arbovirus
spatio-temporal - modelling
epidemiology
remote sensing
Klingseisen, Bernhard
Corner, Robert
Stevenson, Mark
Developing spatio-temporal prediction models for arbovirus activity in nothern Australia based on remotely sensed bioclimatic variables
title Developing spatio-temporal prediction models for arbovirus activity in nothern Australia based on remotely sensed bioclimatic variables
title_full Developing spatio-temporal prediction models for arbovirus activity in nothern Australia based on remotely sensed bioclimatic variables
title_fullStr Developing spatio-temporal prediction models for arbovirus activity in nothern Australia based on remotely sensed bioclimatic variables
title_full_unstemmed Developing spatio-temporal prediction models for arbovirus activity in nothern Australia based on remotely sensed bioclimatic variables
title_short Developing spatio-temporal prediction models for arbovirus activity in nothern Australia based on remotely sensed bioclimatic variables
title_sort developing spatio-temporal prediction models for arbovirus activity in nothern australia based on remotely sensed bioclimatic variables
topic Northern Australia
arbovirus
spatio-temporal - modelling
epidemiology
remote sensing
url http://hdl.handle.net/20.500.11937/30848