4.6 Article

Discovering Ecological Relationships in Flowing Freshwater Ecosystems

Journal

FRONTIERS IN ECOLOGY AND EVOLUTION
Volume 9, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fevo.2021.782554

Keywords

biodiversity; causal discovery; causal relationships; Fast Causal Inference; rivers; IBI; ICI; Ohio

Categories

Funding

  1. Netherlands Organisation for Scientific Research (NWO) [617.001.451]

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Understanding ecological responses to environmental changes is crucial for conserving biodiversity. Experimental studies are standard to identify cause-effect relationships, but deriving these relationships from observational data is challenging due to potential confounding influences. A new causal discovery algorithm can reveal ecological networks in rivers and streams, providing insights into the causes of reductions in fish and invertebrate community integrity.
Knowledge of ecological responses to changes in the environment is vital to design appropriate measures for conserving biodiversity. Experimental studies are the standard to identify ecological cause-effect relationships, but their results do not necessarily translate to field situations. Deriving ecological cause-effect relationships from observational field data is, however, challenging due to potential confounding influences of unmeasured variables. Here, we present a causal discovery algorithm designed to reveal ecological relationships in rivers and streams from observational data. Our algorithm (a) takes into account the spatial structure of the river network, (b) reveals the complete network of ecological relationships, and (c) shows the directions of these relationships. We apply our algorithm to data collected in the US state of Ohio to better understand causes of reductions in fish and invertebrate community integrity. We found that nitrogen is a key variable underlying fish and invertebrate community integrity in Ohio, likely negatively impacting both. We also found that fish and community integrity are each linked to one physical habitat quality variable. Our algorithm further revealed a split between physical habitat quality and water quality variables, indicating that causal relations between these groups of variables are likely absent. Our approach is able to reveal networks of ecological relationships in rivers and streams based on observational data, without the need to formulate a priori hypotheses. This is an asset particularly for diagnostic assessments of the ecological state and potential causes of biodiversity impairment in rivers and streams.

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