4.5 Article

Species distribution models for invasive Eurasian watermilfoil highlight the importance of data quality and limitations of discrimination accuracy metrics

Journal

ECOLOGY AND EVOLUTION
Volume 11, Issue 18, Pages 12567-12582

Publisher

WILEY
DOI: 10.1002/ece3.8002

Keywords

abundance-suitability relationship; discrimination accuracy; functional accuracy; invasion risk; pseudoabsences; random forest; spatial autocovariate; water temperature

Funding

  1. Minnesota Environment and Natural Resources Trust Fund

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The availability of uniformly collected presence, absence, and abundance data remains a key challenge in species distribution modeling, especially for invasive species. Water temperature and maximum lake depth were found to be significant predictors for invasion risk and abundance of Eurasian watermilfoil, highlighting the importance of high-quality data for accurate modeling. Different modeling approaches showed variations in functional and discrimination accuracy, underscoring the need for systematic monitoring programs to improve model evaluation and prediction accuracy.
Aim Availability of uniformly collected presence, absence, and abundance data remains a key challenge in species distribution modeling (SDM). For invasive species, abundance and impacts are highly variable across landscapes, and quality occurrence and abundance data are critical for predicting locations at high risk for invasion and impacts, respectively. We leverage a large aquatic vegetation dataset comprising point-level survey data that includes information on the invasive plant Myriophyllum spicatum (Eurasian watermilfoil) to: (a) develop SDMs to predict invasion and impact from environmental variables based on presence-absence, presence-only, and abundance data, and (b) compare evaluation metrics based on functional and discrimination accuracy for presence-absence and presence-only SDMs. Location Minnesota, USA. Methods Eurasian watermilfoil presence-absence and abundance information were gathered from 468 surveyed lakes, and 801 unsurveyed lakes were leveraged as pseudoabsences for presence-only models. A Random Forest algorithm was used to model the distribution and abundance of Eurasian watermilfoil as a function of lake-specific predictors, both with and without a spatial autocovariate. Occurrence-based SDMs were evaluated using conventional discrimination accuracy metrics and functional accuracy metrics assessing correlation between predicted suitability and observed abundance. Results Water temperature degree days and maximum lake depth were two leading predictors influencing both invasion risk and abundance, but they were relatively less important for predicting abundance than other water quality measures. Road density was a strong predictor of Eurasian watermilfoil invasion risk but not abundance. Model evaluations highlighted significant differences: Presence-absence models had high functional accuracy despite low discrimination accuracy, whereas presence-only models showed the opposite pattern. Main conclusion Complementing presence-absence data with abundance information offers a richer understanding of invasive Eurasian watermilfoil's ecological niche and enables evaluation of the model's functional accuracy. Conventional discrimination accuracy measures were misleading when models were developed using pseudoabsences. We thus caution against the overuse of presence-only models and suggest directing more effort toward systematic monitoring programs that yield high-quality data.

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