Predicting ecological regime shift under climate change: New modelling techniques and potential of molecular-based approaches

Ecological regime shift is the rapid transition from one stable community structure to another, often ecologically inferior, stable community. Such regime shifts are especially common in shallow marine communities, such as the transition of kelp forests to algal turfs that harbour far lower biodiver...

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Main Author: Richard STAFFORD, V. Anne SMITH, Dirk HUSMEIER, Thomas GRIMA, Barbara-ann GUINN
Format: Article
Language:English
Published: Oxford University Press 2013-06-01
Series:Current Zoology
Subjects:
Online Access:http://www.currentzoology.org/paperdetail.asp?id=12250
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spelling doaj-abb5f100cbfa43fbabcdcde6c816d3412020-11-24T21:31:43ZengOxford University PressCurrent Zoology1674-55072013-06-01593403417Predicting ecological regime shift under climate change: New modelling techniques and potential of molecular-based approachesRichard STAFFORD, V. Anne SMITH, Dirk HUSMEIER, Thomas GRIMA, Barbara-ann GUINNEcological regime shift is the rapid transition from one stable community structure to another, often ecologically inferior, stable community. Such regime shifts are especially common in shallow marine communities, such as the transition of kelp forests to algal turfs that harbour far lower biodiversity. Stable regimes in communities are a result of balanced interactions between species, and predicting new regimes therefore requires an evaluation of new species interactions, as well as the resilience of the ‘stable’ position. While computational optimisation techniques can predict new potential regimes, predicting the most likely community state of the various options produced is currently educated guess work. In this study we integrate a stable regime optimisation approach with a Bayesian network used to infer prior knowledge of the likely stress of climate change (or, in practice, any other disturbance) on each component species of a representative rocky shore community model. Combining the results, by calculating the product of the match between resilient computational predictions and the posterior probabilities of the Bayesian network, gives a refined set of model predictors, and demonstrates the use of the process in determining community changes, as might occur through processes such as climate change. To inform Bayesian priors, we conduct a review of molecular approaches applied to the analysis of the transcriptome of rocky shore organisms, and show how such an approach could be linked to measureable stress variables in the field. Hence species-specific microarrays could be designed as biomarkers of in situ stress, and used to inform predictive modelling approaches such as those described here [Current Zoology 59 (3): 403–417, 2013].http://www.currentzoology.org/paperdetail.asp?id=12250Regime shiftPhase shiftAlternative stable stateIntertidalFood webResilience
collection DOAJ
language English
format Article
sources DOAJ
author Richard STAFFORD, V. Anne SMITH, Dirk HUSMEIER, Thomas GRIMA, Barbara-ann GUINN
spellingShingle Richard STAFFORD, V. Anne SMITH, Dirk HUSMEIER, Thomas GRIMA, Barbara-ann GUINN
Predicting ecological regime shift under climate change: New modelling techniques and potential of molecular-based approaches
Current Zoology
Regime shift
Phase shift
Alternative stable state
Intertidal
Food web
Resilience
author_facet Richard STAFFORD, V. Anne SMITH, Dirk HUSMEIER, Thomas GRIMA, Barbara-ann GUINN
author_sort Richard STAFFORD, V. Anne SMITH, Dirk HUSMEIER, Thomas GRIMA, Barbara-ann GUINN
title Predicting ecological regime shift under climate change: New modelling techniques and potential of molecular-based approaches
title_short Predicting ecological regime shift under climate change: New modelling techniques and potential of molecular-based approaches
title_full Predicting ecological regime shift under climate change: New modelling techniques and potential of molecular-based approaches
title_fullStr Predicting ecological regime shift under climate change: New modelling techniques and potential of molecular-based approaches
title_full_unstemmed Predicting ecological regime shift under climate change: New modelling techniques and potential of molecular-based approaches
title_sort predicting ecological regime shift under climate change: new modelling techniques and potential of molecular-based approaches
publisher Oxford University Press
series Current Zoology
issn 1674-5507
publishDate 2013-06-01
description Ecological regime shift is the rapid transition from one stable community structure to another, often ecologically inferior, stable community. Such regime shifts are especially common in shallow marine communities, such as the transition of kelp forests to algal turfs that harbour far lower biodiversity. Stable regimes in communities are a result of balanced interactions between species, and predicting new regimes therefore requires an evaluation of new species interactions, as well as the resilience of the ‘stable’ position. While computational optimisation techniques can predict new potential regimes, predicting the most likely community state of the various options produced is currently educated guess work. In this study we integrate a stable regime optimisation approach with a Bayesian network used to infer prior knowledge of the likely stress of climate change (or, in practice, any other disturbance) on each component species of a representative rocky shore community model. Combining the results, by calculating the product of the match between resilient computational predictions and the posterior probabilities of the Bayesian network, gives a refined set of model predictors, and demonstrates the use of the process in determining community changes, as might occur through processes such as climate change. To inform Bayesian priors, we conduct a review of molecular approaches applied to the analysis of the transcriptome of rocky shore organisms, and show how such an approach could be linked to measureable stress variables in the field. Hence species-specific microarrays could be designed as biomarkers of in situ stress, and used to inform predictive modelling approaches such as those described here [Current Zoology 59 (3): 403–417, 2013].
topic Regime shift
Phase shift
Alternative stable state
Intertidal
Food web
Resilience
url http://www.currentzoology.org/paperdetail.asp?id=12250
work_keys_str_mv AT richardstaffordvannesmithdirkhusmeierthomasgrimabarbaraannguinn predictingecologicalregimeshiftunderclimatechangenewmodellingtechniquesandpotentialofmolecularbasedapproaches
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