Finding needles (or ants) in haystacks: predicting locations of invasive organisms to inform eradication and containment

To eradicate or effectively contain a biological invasion, all or most reproductive individuals of the invasion must be found and destroyed. To help find individual invading organisms, predictions of probable locations can be made with statistical models. We estimated spread dynamics based on time-s...

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Veröffentlicht in:Ecological applications 2010-07, Vol.20 (5), p.1217-1227
Hauptverfasser: Schmidt, Daniel, Spring, Daniel, Nally, Ralph Mac, Thomson, James R, Brook, Barry W, Cacho, Oscar, McKenzie, Michael
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container_end_page 1227
container_issue 5
container_start_page 1217
container_title Ecological applications
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creator Schmidt, Daniel
Spring, Daniel
Nally, Ralph Mac
Thomson, James R
Brook, Barry W
Cacho, Oscar
McKenzie, Michael
description To eradicate or effectively contain a biological invasion, all or most reproductive individuals of the invasion must be found and destroyed. To help find individual invading organisms, predictions of probable locations can be made with statistical models. We estimated spread dynamics based on time-series data and then used model-derived predictions of probable locations of individuals. We considered one of the largest data sets available for an eradication program: the campaign to eradicate the red imported fire ant ( Solenopsis invicta ) from around Brisbane, Australia. After estimating within-site growth (local growth) and inter-site dispersal (saltatory spread) of fire ant nests, we modeled probabilities of fire ant presence for >600 000 1-ha sites, including uncertainties about fire ant population and spatial dynamics. Such a high level of spatial detail is required to assist surveillance efforts but is difficult to incorporate into common modeling methods because of high computational costs. More than twice as many fire ant nests would have been found in 2008 using predictions made with our method rather than those made with the method currently used in the study region. Our method is suited to considering invasions in which a large area is occupied by the invader at low density. Improved predictions of such invasions can dramatically reduce the area that needs to be searched to find the majority of individuals, assisting containment efforts and potentially making eradication a realistic goal for many invasions previously thought to be ineradicable.
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source Jstor Complete Legacy; MEDLINE; Wiley Online Library Journals Frontfile Complete
subjects Animal nesting
Animals
Ants
Australia
Bayesian models
Biological invasions
Ecological invasion
Fire ants
Formicidae
Habitats
Infestation
Insect nests
Invasive species
Likelihood Functions
Modeling
Models, Biological
Parametric models
Population Dynamics
Queensland
red imported fire ant
Solenopsis invicta
spread models
surveillance
title Finding needles (or ants) in haystacks: predicting locations of invasive organisms to inform eradication and containment
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