| Literature DB >> 35228664 |
David Villegas-Ríos1,2, David M P Jacoby3, Johann Mourier4.
Abstract
Despite our critical dependence on aquatic wildlife, we lack a complete understanding of the drivers of population stability and structure for most fish species. Social network analysis has been increasingly used to investigate animal societies as it explicitly links individual decision-making to population-level processes and demography. While the study of social structure is of great ecological interest, it is also potentially important for species of economic value or of conservation concern. To date however, there has been little focus on how social processes are likely to influence the conservation of fish populations. Here we identify applications for how a social network approach can help address broad fish conservation themes such as population structure, biological invasions or fisheries management. We discuss the burgeoning opportunities offered and challenges still faced by current technologies to integrate social network approaches within fish conservation.Entities:
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Year: 2022 PMID: 35228664 PMCID: PMC8885690 DOI: 10.1038/s42003-022-03138-w
Source DB: PubMed Journal: Commun Biol ISSN: 2399-3642
Fig. 1The social lives of fish.
Examples of fish species of conservation concern that may benefit from the use of social network analysis such as (from left to right) spawning marbled groupers (Epinephelus polyphekadion), schooling scalloped hammerhead sharks (Sphyrna lewini), or Atlantic salmon (Salmo salar). Photo credits: marbled grouper by T. Vignaud, scalloped hammerhead sharks by S.J. Pierce and Atlantic salmon by A. Rikardsen. All photos published with permissions from authors.
Fig. 2Wild studies of fish social networks.
a Several studies have investigated the social networks of fish in the wild in the last two decades of which ~68% focused on species of conservation or commercial interest (“Conservation”). The remainder focused on model species or species of least conservation concern (“Other”). The percentage of studies related to species of conservation concern varied between b fish groups, c environments, and d methodology used. Data for this figure were obtained from an extensive search in SCOPUS and by consulting the reference list of the most relevant reviews on the topic.
Fig. 3Available technologies to track social interactions in wild aquatic ecosystems.
There are a number of technologies currently available to investigate the social structure of fish depending on the habitat (e.g., marine vs. freshwater, coastal vs. oceanic, shallow vs. deep waters). The social networks constructed based on those technologies can help us understand many aspects of fish conservation. All technologies have their advantages and disadvantages but importantly, all only capture a proportion of the underlying population-level social network.
Benefits of social network analysis for fish conservation.
| Conservation theme | Social mechanisms that can be addressed with social networks | Conservation outcome |
|---|---|---|
| Population structure | • Aggregation behavior. • Assortative group formation (e.g., sexual segregation). • Fission–fusion behavior. • Trait-based dispersal. | • Avoid or acknowledge biased population estimates due to biased sampling. • Detect human perturbations affecting disproportionally one segment of the population. • Clearer definition of effective population size. |
| Spatial management and connectivity | • Spatially determined social interactions. | • More effective design of aquatic protected areas. • Identification of key habitats or spots where animals socialize (e.g., cleaning stations, mating grounds, feeding aggregations). • More accurate estimates of effective population (social + spatial) connectivity. • Identifying the habitat or environmental conditions that promote sociality. |
| Aquatic bio-invasions | • Integration of invasive species into native social structures. • Competition between native and invasive species. • Identify traits that favor social integration. | • Optimize strategies to manage fish bio-invasions (e.g., targeted eradications). |
| Fish disease management | • Identify hubs of infection. • Identify individuals that act as vectors or super spreaders of diseases or parasites. | • Monitor spread of diseases on both wild and semi-wild settings. • Develop and optimize strategies to manage fish diseases (e.g., targeted eradications, targeted vaccination). |
| Re-introductions | • Integration of reintroduced individuals into natural social structures. • Competition between reintroduced individuals and natural populations. • Identify traits that favor social integration. | • Detect why stocked individuals may not succeed in integrating with natural populations. • Improving housing and transport conditions. |
| Aquaculture and husbandry | • Alteration of behavior due to captivity conditions. • Competition for food. | • Improve welfare conditions. • Increase productivity of farmed animals. • Improved feeding efficiency. |
| Eco-tourism | • Tourism-driven alteration of fish social structure (aggregation or repulsion). | • Responsive eco-tourism management. • Alteration of provisioning regime/methods. |
| Fisheries | • Aggregation behavior. • Correlations between social position and fitness. • Changes in social structure due to fishing activities. • Changes in social structure due to fishing regulatory measures (MPAs, size limits). | • Integration of sociality into stock assessment models. • Predict fisheries-induced selection on social behavior. • Understand the capacity to restore social structure through different management actions. |
Conservation themes that might benefit from adopting a social network approach, indicating some of the potential mechanisms through which social behavior may affect each conservation theme, and the conservation outcomes.
Fig. 4Fishing effects on fish social structure.
Through correlations between life-history, behavior, physiology, and social traits, fishing can range from a non-selective to b highly selective on social network position, with direct effects on the topology of the resulting network and the demography of the populations. Social rewiring dynamics after fishing will determine if and when the social network can reach an equilibrium state. Red nodes and solid red edges represent individuals, and their associations, removed by the fishery. Red dashed edges represent newly created associations after the fishing event. Blue nodes represent non-harvested individuals.