2022
DOI: 10.1016/j.ecolmodel.2022.110054
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Informing Surveillance through the Characterization of Outbreak Potential of Chronic Wasting Disease in White-Tailed Deer

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Cited by 5 publications
(4 citation statements)
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“…While agencies may already be searching for CWD in areas contiguous to core infections, the CWD Prediction Web App may be particularly helpful in illuminating counties vulnerable to CWD in non-obvious places. In noncontiguous counties predicted by the CWD Prediction Web App to be CWD-positive, we suggest using the CWD Prediction Web App in conjunction with other models that pinpoint conditions for in situ outbreaks 7 , 51 , 52 for surveillance planning. In addition to the error reductions recommended above, we recommend that future ML models better characterize the spread of disease across the landscape by incorporating geographical proximity data or information from diffusion models 53 which we did not do.…”
Section: Discussionmentioning
confidence: 99%
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“…While agencies may already be searching for CWD in areas contiguous to core infections, the CWD Prediction Web App may be particularly helpful in illuminating counties vulnerable to CWD in non-obvious places. In noncontiguous counties predicted by the CWD Prediction Web App to be CWD-positive, we suggest using the CWD Prediction Web App in conjunction with other models that pinpoint conditions for in situ outbreaks 7 , 51 , 52 for surveillance planning. In addition to the error reductions recommended above, we recommend that future ML models better characterize the spread of disease across the landscape by incorporating geographical proximity data or information from diffusion models 53 which we did not do.…”
Section: Discussionmentioning
confidence: 99%
“…Such programs focus on identifying locations most likely to harbor CWD and provide the best opportunity to manage the disease while prevalence is low 5 ; however, these programs constitute an enormous monetary and human resource cost to agencies 6 . Accordingly, post hoc evaluation of existing surveillance data has focused on pinpointing variables in association with the emergence and spread of CWD to further inform the next year of surveillance 7 .…”
Section: Introductionmentioning
confidence: 99%
“…For the analyses of landscapes in a continuous‐time framework (vs. a patch occupancy framework in discrete time), ecological diffusion models have also been used to estimate the spread of pathogens at large spatial scales (e.g., Hefley et al, 2017; Wu, 2008). These models can use detection/non‐detection data from surveillance programs to estimate the effects of covariates on pathogen growth and spread, and have been used to forecast disease occurrence dynamics, and to develop targeted surveillance programs (e.g., by identifying the leading edge of pathogen invasion; Hanley et al, 2022).…”
Section: Frequently Identified Disease Management Objectivesmentioning
confidence: 99%
“…Chronic wasting disease is difficult to eliminate from wild populations since the amount of infectious prions in the environment increases with the number of infectious animals (Gross & Miller, 2001 ; Manjerovic et al., 2014 ). Therefore, management tends to be less effective the longer the disease has progressed, and adequate data on underlying factors are important for implementing effective management (Hanley et al., 2022 ).…”
Section: Introductionmentioning
confidence: 99%