Multi‐factor coral disease risk: a new product for early warning and management
Multi‐factor coral disease risk: a new product for early warning and management
Date
2024-03-24
Authors
Caldwell, Jamie M.
Liu, Gang
Geiger, Erick
Heron, Scott F.
Eakin, C. Mark
De La Cour, Jacqueline
Greene, Austin
Raymundo, Laurie J.
Dryden, Jen
Schlaff, Audrey
Stella, Jessica S.
Kindinger, Tye L.
Couch, Courtney S.
Fenner, Douglas
Hoot, Whitney
Manzello, Derek P.
Donahue, Megan J.
Liu, Gang
Geiger, Erick
Heron, Scott F.
Eakin, C. Mark
De La Cour, Jacqueline
Greene, Austin
Raymundo, Laurie J.
Dryden, Jen
Schlaff, Audrey
Stella, Jessica S.
Kindinger, Tye L.
Couch, Courtney S.
Fenner, Douglas
Hoot, Whitney
Manzello, Derek P.
Donahue, Megan J.
Linked Authors
Person
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Citable URI
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Date Created
Location
DOI
10.1002/eap.2961
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Keywords
Coral reefs
Disease
Ecological forecasting
Machine learning
Quantile regression forests
Disease
Ecological forecasting
Machine learning
Quantile regression forests
Abstract
Ecological forecasts are becoming increasingly valuable tools for conservation and management. However, there are few examples of near-real-time forecasting systems that account for the wide range of ecological complexities. We developed a new coral disease ecological forecasting system that explores a suite of ecological relationships and their uncertainty and investigates how forecast skill changes with shorter lead times. The Multi-Factor Coral Disease Risk product introduced here uses a combination of ecological and marine environmental conditions to predict the risk of white syndromes and growth anomalies across reefs in the central and western Pacific and along the east coast of Australia and is available through the US National Oceanic and Atmospheric Administration Coral Reef Watch program. This product produces weekly forecasts for a moving window of 6 months at a resolution of ~5 km based on quantile regression forests. The forecasts show superior skill at predicting disease risk on withheld survey data from 2012 to 2020 compared with predecessor forecast systems, with the biggest improvements shown for predicting disease risk at mid- to high-disease levels. Most of the prediction uncertainty arises from model uncertainty, so prediction accuracy and precision do not improve substantially with shorter lead times. This result arises because many predictor variables cannot be accurately forecasted, which is a common challenge across ecosystems. Weekly forecasts and scenarios can be explored through an online decision support tool and data explorer, co-developed with end-user groups to improve use and understanding of ecological forecasts. The models provide near-real-time disease risk assessments and allow users to refine predictions and assess intervention scenarios. This work advances the field of ecological forecasting with real-world complexities and, in doing so, better supports near-term decision making for coral reef ecosystem managers and stakeholders. Secondarily, we identify clear needs and provide recommendations to further enhance our ability to forecast coral disease risk.
Description
© The Author(s), 2024. This article is distributed under the terms of the Creative Commons Attribution License. The definitive version was published in Caldwell, J., Liu, G., Geiger, E., Heron, S., Eakin, C., De La Cour, J., Greene, A., Raymundo, L., Dryden, J., Schlaff, A., Stella, J., Kindinger, T., Couch, C., Fenner, D., Hoot, W., Manzello, D., & Donahue, M. (2024). Multi‐factor coral disease risk: a new product for early warning and management. Ecological Applications, e2961, https://doi.org/10.1002/eap.2961.
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Citation
Caldwell, J., Liu, G., Geiger, E., Heron, S., Eakin, C., De La Cour, J., Greene, A., Raymundo, L., Dryden, J., Schlaff, A., Stella, J., Kindinger, T., Couch, C., Fenner, D., Hoot, W., Manzello, D., & Donahue, M. (2024). Multi‐factor coral disease risk: a new product for early warning and management. Ecological Applications, e2961.