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Investigating sea urchin densities critical to macroalgal control on degraded coral reefs

Published online by Cambridge University Press:  13 January 2021

Jan-Claas Dajka*
Affiliation:
Lancaster Environment Centre, Lancaster University, Lancaster, UK Helmholtz Institute for Functional Marine Biodiversity, Oldenburg, Germany
Victoria Beasley
Affiliation:
Global Vision International, Curieuse Island, Seychelles
Gilberte Gendron
Affiliation:
Seychelles National Parks Authority, Victoria, Seychelles
Nicholas AJ Graham
Affiliation:
Lancaster Environment Centre, Lancaster University, Lancaster, UK
*
Author for correspondence: Jan-Claas Dajka, Email: [email protected]
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Summary

There is an assumption that tropical sea urchins are macroalgal grazers with the ability to control macroalgal expansion on degraded coral reefs. We surveyed abundances of Echinothrix calamaris, an urchin species common in the western Indian Ocean on 21 reefs of the inner Seychelles and predicted their density using habitat predictors in a modelling approach. Urchin densities were greatest on patch reef habitat types and declined with increasing macroalgal cover. Next, we experimentally investigated the macroalgae-urchin relationship by penning two sea urchin densities on macroalgal fields. Over six weeks, the highest density treatment (4.44 urchins m−2) cleared 13% of macroalgal cover. This moderate impact leads us to conclude that controlling macroalgal expansion is not likely to be one of the main functions of E. calamaris in the inner Seychelles given the current densities we found in our surveys (mean: 0.02 urchins m−2, maximum: 0.16 urchins m−2).

Type
Report
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
© The Author(s), 2021. Published by Cambridge University Press on behalf of Foundation for Environmental Conservation

Introduction

Tropical coral reefs are changing under recent anthropogenic pressures such as overfishing, near-shore pollution, and climate change (Norström et al. Reference Norström, Nyström, Jouffray, Folke, Raham, Moberg, Olsson and Williams2016). There are cases where overfished coral reefs do not recover from acute disturbances, such as thermally induced mass bleaching, and undergo a regime shift to dominance of benthic states alternative to coral, such as of macroalgae (Graham et al. Reference Graham, Jennings, MacNeil, Mouillot and Wilson2015). One of the key ecological controls of macroalgal expansion is herbivory (Bellwood et al. Reference Bellwood, Hughes, Folke and Nyström2004), and sea urchins are widely assumed to perform that function (McClanahan Reference McClanahan1992, Carpenter & Edmunds Reference Carpenter and Edmund2006). However, the dominant species of sea urchin varies among locations, and whether this macroalgae-controlling role is true for all species of sea urchin is uncertain.

Our knowledge regarding the role of sea urchins on degraded coral reefs is limited in geographical extent (Caribbean: Carpenter & Edmunds Reference Carpenter and Edmund2006, Kenya: McClanahan & Shafir Reference McClanahan and Shafir1990, Western Australia: Johansson, Bellwood & Depczynski Reference Johansson, Bellwood and Depczynski2010, Great Barrier Reef: Young & Bellwood Reference Young and Bellwood2011) and is based on very few species (McClanahan Reference McClanahan1992, Young & Bellwood Reference Young and Bellwood2011). Especially prevalent in this literature is a single Caribbean species, Diadema antillarum (Maciá, Robinson & Nalevanko Reference Maciá, Robinson and Nalevanko2007, Hughes et al. Reference Hughes, Graham, Jackson, Mumby and Steneck2010). D. antillarum became the main controllers of macroalgal cover in the Caribbean in the early 1980s with mean densities of 7.7 urchins m−2 (Hughes Reference Hughes1994). The urchins’ macroalgae-controlling role was assumed to be critical on overfished Caribbean reefs. However, the macroalgae-controlling impact of D. antillarum was virtually erased following mass die-off from disease (Hughes et al. Reference Hughes, Graham, Jackson, Mumby and Steneck2010). More recent recovery of D. antillarum populations in the Caribbean has been correlated with some returns in coral cover in the region (Carpenter & Edmunds Reference Carpenter and Edmund2006). In a large-scale model, some urchin species (Caribbean: D. antillarum, Tripneustes ventricosus, Tripneustes esculentes; Western Indian Ocean: Echinometra mathaei) have been suggested to be especially important for controlling algae in heavily fished areas (McClanahan Reference McClanahan1992). While knowledge of the ecological dynamics associated with these urchin species is fairly extensive, the densities at which other urchin species in other geographic locations have notable macroalgae-controlling impact is poorly studied.

The macroalgae-controlling role of sea urchins may be useful to coral reef management interventions, yet few studies have attempted to actively utilize urchin grazing in a focused area. Whether urchins can be used to effectively control algal expansion or even clear algal patches and thereby aid coral recovery is yet to be determined. Maciá et al. (Reference Maciá, Robinson and Nalevanko2007) conducted experiments transplanting urchins to high algal density areas. While the urchins were recorded to graze on algae, they rapidly vacated the area. The potential for urchin transplanting to focus urchin grazing thus remains understudied.

We investigate the role of the short-spined sea urchin (Echinothrix calamaris) as potential macroalgal herbivores in the inner Seychelles. First, we conducted field surveys of urchin densities and modelled the habitat predictors of urchin abundance. Second, we experimentally relocated varying densities of E. calamaris into standardized pens located on dense, continuous fields of macroalgae to focus their grazing impact.

Material and methods

Study organism and site

The short-spined sea urchin E. calamaris is a common urchin species in the western Indian Ocean and in our study area, the inner Seychelles (McClanahan & Sharif Reference McClanahan and Shafir1990). The inner Seychelles (4°30’S, 55°30’E) are granitic islands with well-developed carbonate fringing reefs that have been increasingly fragmented by large-scale disturbances. In particular, two major coral-bleaching events caused by thermal anomalies (in 1998: ~ 90% coral loss [Goreau et al. Reference Goreau, McClanahan, Hayes and Strong2000]; and 2016: ~ 70% coral loss [Wilson et al. Reference Wilson, Robinson, Chong-Seng, Robinson and Graham2019]) have led to habitat fragmentation of coral reefs and regime shifts to macroalgae-dominated habitat (average macroalgae cover of 42%) on many reefs in the Seychelles (Graham et al. Reference Graham, Jennings, MacNeil, Mouillot and Wilson2015).

Ecological surveys

We surveyed 21 sites of the inner Seychelles in April 2017 that were randomly selected for a long-term monitoring program that started in 1994 (Jennings, Grandcourt & Polunin Reference Jennings, Grandcourt and Polunin1995, Fig. S1). Sites were independent, separated by at least a kilometre, and stratified among three habityat types: continuous, well-developed fringing reef with limestone framework (carbonate); continuous reef with granitic base (granite); or fragmented reef (patch). Eight replicate circular areas (7 m radius), 15 m apart, were surveyed along the reef slope base (3–9 m). Cover of macroalgae and corals was estimated visually, and structural complexity was estimated on a 5-point scale, both of which strongly correlate with a range of other methods for capturing benthic cover and structural complexity of coral reefs (Wilson, Graham & Polunin Reference Wilson, Graham and Polunin2007). We counted E. calamaris within each replicate area, along with the abundances and size (total length) of 134 diurnally active, non-cryptic, reef-associated fish species. Fish size estimation was calibrated to be estimating and confirming the lengths of pre-sized plastic pipes at the start of each sampling day (Graham et al. Reference Graham, Wilson, Jennings, Polunin, Robinson, Bijoux and Daw2007). Large mobile fish in the cylinder were recorded first, followed by a systematic search for smaller site-attached fish. We converted estimated fish lengths from the resulting dataset into biomass using published length-weight relationships (Letourneur, Kulbicki & Labrosse Reference Letourneur, Kulbicki and Labrosse1998, Froese & Pauly Reference Froese and Pauly2011) and assigned recorded species to feeding groups based on their diet and feeding behaviour (Wilson et al. Reference Wilson, Dolman, Cheal, Emslie, Pratchett and Sweatman2008).

Experimental sea urchin penning

The second part of our study was conducted from January to March 2018 on the degraded reefs of Anse Papaie (4.28°S, 55.73°E), Curieuse Island, one of the 21 sites surveyed in the first part of the study (Fig. S1). We chose the bay because it is a marine park, minimizing disturbance to our experiment and because it is almost universally covered by continuous macroalgal fields. Canopy and overstorey are primarily made up of Sargassum spp and some Turbinaria spp, while the understorey is primarily Lobophora spp and Dictyota spp. Sargassum in particular often shows strong seasonality, mainly driven by temperature changes and nutrient limitation (McCourt Reference McCourt1984), and in the inner Seychelles this appears to be tied to the prevailing seasonal winds and currents (Bijoux Reference Bijoux2013). Sargassum appears to senesce during the peak of the cloudier season (May to October) and regrow (likely from leftover holdfasts) during the predominantly clear-sky season (December to March; Bijoux Reference Bijoux2013), leading to our choice of experimental timing (January to March).

In early January 2018, we built 13 individual experimental pens (2.25 m² area, each fenced with chicken wire and built with open top) on continuous macroalgal fields that grew on relatively flat surfaces to ensure the fences were flush with the sea floor. We stocked five pens each with 10 E. calamaris (4.44 urchins m-2), five pens with 4 E. calamaris (1.78 urchins m-2), and three pens without urchins as controls. These stocking densities were the logistically highest attainable given the surrounding natural urchin abundances, and balanced between natural densities in Seychelles, and the very high densities of urchins once seen in the Caribbean (Hughes et al. Reference Hughes, Graham, Jackson, Mumby and Steneck2010). The pens were dispersed randomly within the same macroalgal field, although we kept a minimum distance of 1 m between each treatment pen and 5 m between control and treatment pens. On 28 January (0 days), we took HD-photographs of each pen from above before placing the urchins into the pens. We repeated the process on 18 February (21 days) and 11 March (42 days). On day 42 we removed the pens. We compared the photographs using CPCe software (Kohler & Gill Reference Kohler and Gill2006) to estimate change in macroalgal cover over time. The mean cover of macroalgae prior to sea urchins being introduced in pens was 79.3 % (± 4.7 % [95% confidence interval]) for control pens, 80.4 % (± 7.5 %) for 4 urchin pens, and 92.4 % (± 4.2 %) for 10 urchin pens. These initial differences were induced by natural variation and random placement; they were not by design.

We fitted a zero-inflated negative binomial regression (with a presence-absence ‘zero’ component, and a ‘count’ component with true zeros removed) to assess habitat predictors of urchin densities from the surveys, and a generalized linear mixed model to analyse the urchin penning experiment. A detailed desciption of our statistical analyses can be found in the supplementary material.

Results

Benthic predictors of sea urchin abundance

Our model’s zero component indicated a strong positive correlation of patch reef type with sea urchin abundance, as well as weak positive correlation of the macroalgae-structural complexity interaction and structural complexity (Fig. 1 A). Macroalgae displayed a strong negative correlation on urchin abundance in the zero component. The count component of our model showed a strong positive correlation for patch reef type, and a weak positive correlation for macroalgae (Fig. 1 B), and a weak negative correlation of structural complexity with urchin abundance. The macroalgae-structural-complexity interaction displayed a strong negative correlation with urchin abundance in the count-component of our model. The sizes of the confidence intervals (thin lines) weaken the inferences that can be drawn from the trends.

Fig. 1. Effect size estimates of predictor coefficients in zero model with standard error (thick lines) and 95% confidence intervals (thin lines); zero-model component: positive coefficient estimates predict urchin absences (0) and negative coefficient estimates predict urchin presence (1), stronger negative values indicate stronger positive effect on urchin abundance (A); count-model component: negative coefficient estimates predict lower urchin abundance, positive coefficients predict higher abundance (B).

The predictor trends resulting from the count component of our model predict a steady decline in urchin abundance with increasing macroalgal cover (Fig. 2 A). Our model predicted ~ 3 urchins per replicate (0.019 urchins m−2) when macroalgae were absent, but ~ 2 urchins (0.013 urchins m−2) when macroalgal cover extended to 5%. Further interpretation of this trend was not warranted due to large standard errors resulting from few occurrences of macroalgal cover values above 5%. Our model suggested that no urchins were found in replicates with >90% algal cover, while over 20 replicates were found where there were urchins present. The predictor trend of structural complexity predicted a slight increase of urchin abundances with increasing structural complexity (Fig. 2 B). In replicates with structural complexity of 2, the model trend predicted abundances of ~ 2.5 urchins (0.02 urchins m−2) that increased to ~ 3 urchins (0.02 urchins m−2) at a structural complexity of 4. Continuous reefs of granitic or carbonate base predicted abundances of ~ 1.5 urchins (0.01 urchins m−2) while fragmented patch habitats predicted abundances of ~ 6.5 urchins (0.04 urchins m−2, Fig. 2 C). With increasing structural complexity, macroalgae correlated with a more severe decrease of urchin abundances (Fig. 2 D). As macroalgal cover increases from 0% to 7.5% per replicate, urchin abundances decreased with structural complexity.

Fig. 2. Model prediction trends of macroalgae (A), structural complexity (B), and patch reef type (C), and for the interaction of macroalgae *structural complexity (D) for the count component of the zero-inflated negative binomial model, panels show the fitted effect (line) and 95% confidence intervals (shaded bands) for each variable.

Experimental sea urchin penning

Macroalgal cover declined from day 0 to day 21 (Fig. 3, 13% reduction: Tukey pair-wise comparison z-∆10 = 3.074, p = 0.054, Supplementary Tables 1 & 2) and declined significantly from day 0 to day 42 in pens stocked with 10 E. calamaris (Fig. 3, 16% reduction: Tukey pair-wise comparison z-∆10 = 4.293, p < 0.001, Supplementary Tables 1 & 2). Pens stocked with 4 urchins as well as control pens displayed no notable differences in macroalgal cover over time (Fig. 3, Supplementary Tables 1 & 2).

Fig. 3. Macroalgal cover (in %) changes observed in three-week intervals inside the penned experimental plots for stocking densities of 10 & 4 Echinothrix calamaris, as well as controls; central line: mean, boxplot boundaries: interquartile range, outside dot: value is > 1.5 times and < 3 times the interquartile range beyond either end of the box, whiskers: ± standard error.

Discussion

In our penning experiment, E. calamaris was associated with some macroalgal reduction within six weeks. While the experimental densities (4.44 urchins m−2) required to achieve this reduction were far above mean and maximum densities observed in surveys across the inner Seychelles (mean: 0.02 urchins m−2, maximum: 0.16 urchins m−2), there are studies that have recorded even higher densities of sea urchins in the Caribbean between 1970 and 1983 (mean: 7.7 urchins m−2, maximum: >20 urchins m−2) before the die-off (Hughes et al. Reference Hughes, Graham, Jackson, Mumby and Steneck2010). A study that relocated Diadema antillarum achieved reductions in macroalgal cover by about 15% before the urchins left the un-penned area (Maciá, Robinson & Nalevanko Reference Maciá, Robinson and Nalevanko2007). When we relocated similar densities of E. calamaris into pens, we did not observe a significant reduction of macroalgal cover.

At lower densities, closer to those that we found naturally in the Seychelles, our model suggests that urchin abundance correlates positively with patch reefs and negatively with macroalgae. We also found a weak positive correlation of structural complexity with urchins, although the negative correlation with macroalgae appeared to outweigh the positive correlation with structural complexity, leading to a more drastic reduction of urchin abundances on complex reefs as macroalgal cover expanded. The relationship between urchins and structural complexity in the wider literature is multi-faceted, which might be why our results did not show clear patterns. Some studies report a positive relationship between urchins and structural complexity (Hereu et al. Reference Hereu, Zabala, Linares and Sala2004, Lee Reference Lee2006) while others, including a meta-analysis, report a negative relationship (Weil, Torres & Ashton Reference Weil, Torres and Ashton2005, Graham & Nash Reference Graham and Nash2013). These discrepancies could stem from behaviours such as substrate eroding and protection from predators, which vary among urchin species. Some urchins, such as the substrate-boring urchin E. mathaei, tend to use crevices for protection (Khamala Reference Khamala1971), while other species such as D. antillarum display gregarious behaviour in open areas (Graham & Nash Reference Graham and Nash2013). We observed both hiding in crevices and gregarious behaviour in open areas by E. calamaris during our study (JCD, personal observation).

It is not clear whether the high densities of urchins we observed at lower macroalgal cover is due to grazing of macroalgae, or actively searching in open areas. Our combined experimental and observational evidence suggests the latter. In our penning experiment, only unnaturally high densities of urchins had an effect on algal densities (4.44 urchins m−2 vs 0.16 urchins m−2), and locally common macroalgal genera like Sargassum were not heavily grazed. As a whole, our findings align with the literature in that notable sea urchin grazing impacts on macroalgae appear to scale with local urchin densities (Carpenter & Edmunds Reference Carpenter and Edmund2006, Hughes et al. Reference Hughes, Graham, Jackson, Mumby and Steneck2010). E. calamaris could have a macroalgal controlling effect like its Caribbean relative, but this is only likely if mean densities that we recently observed in the Seychelles were to rise over 200-fold.

The penning technique as we used it is unlikely to lend itself as an effective method for controlling macroalgal expansion on degraded coral reefs. This is mainly because of the large number of urchins that need to be transported into the pens in order to achieve macroalgal reduction. The technique may be enhanced by including structural elements into the pens, given the partly positive relationship between structural complexity and urchins (Hereu et al. Reference Hereu, Zabala, Linares and Sala2004, Lee Reference Lee2006). A longer penning time at higher stocking densities (minimum of 4.44 urchins m-2) could also prove effective in clearing the entire pen of macroalgae.

It is notable that the penning experiments with stocking densities of four urchins commenced with an average of ~ 81% initial macroalgal cover, while pens with ten urchins commenced with ~ 92% (Fig. 3). This difference was induced by a combination of the random placement of treatments and is compounded by the low number of pens per treatment (n = 5); we believe that further replication would have rectified this irregularity. We therefore refrained from analysing our data across treatments and only compared each experimental week with the starting point of the same treatment. Macroalgal cover declined from day 21 (week 3) to day 42 (week 6) almost uniformly across all treatments, including controls. We propose that the onset of southeasterly winds in March (see methods) towards the end of our experiment may have increased wave energy to the extent that similar amounts of macroalgae got removed by increased wind force rather than by urchin feeding in week 6. However, we believe the strong decline in macroalgal cover in the first three weeks only occurring in the 10-urchin treatment indicates that higher densities of sea urchins had greater potential to reduce algal cover.

In conclusion, E. calamaris in the Seychelles do not appear to be controlling macroalgal expansion given the natural densities we found in our study. It is likely that a drastic elevation of species’ density on degraded coral reefs could make the controlling effect on macroalgae measurable. Our model suggests that E. calamaris are most likely to congregate on patch reefs, especially if these patch reefs feature structurally complex elements and are low in macroalgal cover. Future studies should investigate these habitats to narrow down the function of E. calamaris in the western Indian Ocean. Our study provides insights to the species’ function as macroalgal controllers that add to our knowledge of degraded coral reef dynamics.

Supplementary material

To view supplementary material for this article, please visit https://doi.org/10.1017/S037689292000051X

Acknowledgements

We thank Seychelles National Parks Authority for logistical support, and Anto Suzette, Andrew Jacques, Jerrick Jean-Baptiste, Derreck Louange, Morgan Purdy, Jimmy Lesperance, Allen Cedras, Michel Monthy, and Nathachia Pierre for field assistance. This work was supported through grants from the Royal Society, Stockholm Resilience Centre, and a Lancaster University Faculty of Science and Technology PhD studentship.

Conflict of interest

On behalf of all authors, the corresponding author states that there is no conflict of interest.

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Figure 0

Fig. 1. Effect size estimates of predictor coefficients in zero model with standard error (thick lines) and 95% confidence intervals (thin lines); zero-model component: positive coefficient estimates predict urchin absences (0) and negative coefficient estimates predict urchin presence (1), stronger negative values indicate stronger positive effect on urchin abundance (A); count-model component: negative coefficient estimates predict lower urchin abundance, positive coefficients predict higher abundance (B).

Figure 1

Fig. 2. Model prediction trends of macroalgae (A), structural complexity (B), and patch reef type (C), and for the interaction of macroalgae *structural complexity (D) for the count component of the zero-inflated negative binomial model, panels show the fitted effect (line) and 95% confidence intervals (shaded bands) for each variable.

Figure 2

Fig. 3. Macroalgal cover (in %) changes observed in three-week intervals inside the penned experimental plots for stocking densities of 10 & 4 Echinothrix calamaris, as well as controls; central line: mean, boxplot boundaries: interquartile range, outside dot: value is > 1.5 times and < 3 times the interquartile range beyond either end of the box, whiskers: ± standard error.

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