A Bayesian framework for assessing extinction risk based on ordinal categories of population condition and projected landscape change

Biological Conservation
By: , and 

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Abstract

Many at-risk species lack standardized surveys across their range or quantitative data capable of detecting demographic trends. As a result, extinction risk assessments often rely on ordinal categories of risk based on explicit criteria or expert elicitation. This study demonstrates a Bayesian approach to assessing extinction risk based on this common data structure, using three freshwater mussel species being considered for listing under the US Endangered Species Act. The probability that a population is classified under each risk category was modeled as a function of projected landscape change using ordered probit regression, assuming observed categories reflect a latent, continuous probability of persistence. All three species were more likely than not (mean probability >0.5) to be classified as extirpated or low condition throughout their range based on effects of urban development and hydrologic alteration. Spatial variation in estimates revealed strongholds and high-risk areas relevant to conservation decision making. Projected change in probabilities of each risk category based on multiple land-use and climate models was generally small relative to high baseline risk resulting from past landscape changes. Assessing extinction risk based on probabilities of ordinal condition as a function of landscape patterns may provide a flexible and robust approach for many at-risk taxa by adjusting species' demographic criteria to match relative risk categories, following standardized criteria, or using expert elicitation for data-deficient species. This approach provides decision makers with a useful measure of uncertainty around ordinal classifications and provides a framework for estimating future risk based on projections of anthropogenic stressors.

    Study Area

    Publication type Article
    Publication Subtype Journal Article
    Title A Bayesian framework for assessing extinction risk based on ordinal categories of population condition and projected landscape change
    Series title Biological Conservation
    DOI 10.1016/j.biocon.2020.108866
    Volume 253
    Year Published 2020
    Language English
    Publisher Elsevier
    Contributing office(s) Leetown Science Center, Patuxent Wildlife Research Center
    Description 108866, 10 p.
    Country United States
    State Alabama, Georgia, Kentucky, North Carolina, South Carolina, Tennessee
    Other Geospatial Tennessee Basin
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