Reef fish diversity components as indicators of cumulative effects in a highly impacted fringe reef

Reef fish diversity components as indicators of cumulative effects in a highly impacted fringe reef

Ecological Indicators 10 (2010) 766–772 Contents lists available at ScienceDirect Ecological Indicators journal homepage: www.elsevier.com/locate/ec...

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Ecological Indicators 10 (2010) 766–772

Contents lists available at ScienceDirect

Ecological Indicators journal homepage: www.elsevier.com/locate/ecolind

Case study

Reef fish diversity components as indicators of cumulative effects in a highly impacted fringe reef Gaspar Gonza´lez-Sanso´n *, Consuelo Aguilar Center of Marine Research, 16th Street No. 114, Playa, Ciudad de La Habana, Cuba

A R T I C L E I N F O

A B S T R A C T

Article history: Received 18 April 2009 Received in revised form 19 November 2009 Accepted 23 November 2009

The main goal of our research was to determine which indicators describing cumulative stress might better explain the differences observed in diversity components of reef fish assemblages off Havana City, Cuba. A total of 35,078 individuals of 119 species were counted in 480 stationary point censuses. Counts were distributed among three zones with different levels of pollution and four habitats with different wave stress. Four indexes of diversity components (S, H0 , J0 and PIE) were calculated and correlative analyses performed to explore the best indicators of cumulative effects explaining observed variation. High correlation was found between all diversity components and two indexes of cumulative effects (ICE) built after distinct criteria. In the first case, pollution and wave action were combined following an interactive model. In the second case, an empirical ICE was obtained by totaling the abundance indicators of three groups of organisms, namely sponges, sabellid polychaetes and filamentous algae. ß 2009 Elsevier Ltd. All rights reserved.

Keywords: Reef fish assemblages Diversity Cumulative effects

1. Introduction There is an increasing worldwide concern about the degradation of coral reef communities. However, our knowledge about the susceptibility to disturbance of most common reef fish species and the diverse communities they form is far from complete (Feary et al., 2007). Several natural and anthropogenic factors acting simultaneously produce cumulative effects on fish assemblages. One way of measuring these effects is analyzing changes in diversity components (Aguilar et al., 2004). The selection of appropriated measures of diversity continues to be controversial in spite of exhaustive periodical reviews (Hill, 1973; Peet, 1975; Washington, 1984; Ghent, 1991; Magurran, 2004; Lamb et al., 2009). Regardless of strong criticism, Shannon index of total diversity and Pielou’s evenness index J0 (=H0 /H0 max) continue to be two of the most popular indexes (Gotelli and Graves, 1996), and have been repeatedly used in reef fish assemblage studies (Chabanet et al., 1997; Rooker et al., 1997; Friedlander et al., 2003; Aguilar et al., 2004; Brokovich et al., 2006; Harborne et al., 2006; Me´ndez et al., 2006; Walter and Haynes, 2006; Mallela et al., 2007). Based on an exhaustive review of the topic, Gotelli and Graves (1996) suggest abandoning the idea of incorporating both evenness and species richness into a single index (e.g. Shannon index), and instead recommend the use of rarefaction for

* Corresponding author. E-mail address: [email protected] (G. Gonza´lez-Sanso´n). 1470-160X/$ – see front matter ß 2009 Elsevier Ltd. All rights reserved. doi:10.1016/j.ecolind.2009.11.009

the estimation of species richness (S), and Monte Carlo simulation procedures for Hurlbert’s (1971) probability of interspecific encounter (PIE) estimation as an evenness measure. This approach has been used recently for marine assemblages by Feary et al. (2007) and Godı´nez-Domı´nguez et al. (2009). Marine fish assemblages and habitats off Havana City have been investigated in some detail (Gonza´lez-Dı´az et al., 2003; Aguilar et al., 2004, 2007, 2008). No attempt has been made, however, to investigate the correlation of diversity components with benthic communities’ indicators and/or human impact indicators. Using the same data gathered in 2000 by Aguilar et al. (2004) in the subtidal zone off Havana City, a new analysis was made with three basic objectives: (1) to calculate several indexes of diversity components of fish assemblages (namely H0 , J0 , S and PIE) across a range of disturbance regimes in a highly impacted reef region; (2) to perform correlative analyses of index values with variables describing benthic communities; (3) to determine which indicator describing cumulative stress may better explain the differences observed in diversity components. 2. Materials and methods The study area is located in the subtidal zone off Havana City (Fig. 1), where a fringing reef develops mainly in the 12–15 m deep terrace, located 200–300 m offshore. The bottom between the shore and the reef front is an almost bare rocky plain, which near the coast presents a fringe containing large quantities of the sea urchin Echinometra lucunter (Linnaeus, 1758). Since the impact of

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Fig. 1. Study area with sampling zones. Bar graphs show density of sponges (black), gorgonians (dark gray) and corals (light gray) in each bottom type (e: Echinometra; p: rocky plain; t: terrace).

pollution coming from the city varies notably along the coast from the Havana harbor entrance (most polluted area) towards the southwest, the reef was divided into three different zones according to assumed levels of land-based pollution (Fig. 1). Zone 1 is strongly impacted by the heavily polluted waters coming from Havana harbor; zone 2 has an intermediate level of pollution coming from non-point, small sources along the coast and the discharge of the polluted Almendares river; zone 3 can be considered almost free of significant pollution impacts from land. More details and the rationale for this division can be found in

Aguilar et al. (2004, 2007). Detailed quantitative information on several benthic assemblages of algae and invertebrates for each zone has been published by Gonza´lez-Dı´az et al. (2003). Stationary visual censuses (Bohnsack and Bannerot, 1986) were conducted in 15 sites along the coast (six sites in zone 1, four sites in zone 2 and five sites in zone 3). We used a radius of 5 m due to lower visibility in some sites. Four censuses were realized in each of four habitat types (Echinometra fringe, rocky plain, terrace edge and terrace base) at each site. This sampling schedule was repeated twice (February and June 2000). February data can be considered

Fig. 2. Diagram of a typical bottom profile in the study area showing sampling zones and habitat types: Echinometra (Ec), Rocky plain (Pl), Terrace edge (Te) and Terrace base (Tb). Gradients of main stress sources are shown.

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representative of dry season conditions, and June data of rainy season conditions. We considered each combination of zone, habitat and date a sample. Site data inside each zone were pooled, with stationary counts the sampling units. Sample sizes were therefore 24 for zone 1, 16 for zone 2 and 20 for zone 3. Three main factors influence fish assemblages in the study area (Fig. 2). Overfishing is an important human impact affecting all zones and habitats to the same degree. Wave action is a natural source of habitat heterogeneity, which decreases with depth. Pollution is very high near Havana harbor, decreasing towards the southwest. Wave action and pollution can be combined in two ways to produce two different indicators of cumulative effect (Fig. 3). In both cases we define a rank-based index of cumulative effect (ICE). In the first case, ICE values (ranks) result from simply adding the levels of both sources. We call this approach additive. In the second case, we consider an interaction between wave effect and pollution, the first ‘‘washing’’ shallower sites and decreasing pollution effects. We call this approach interactive. A third approach for ICE was obtained using data on benthic assemblages, which can be considered good indicators of organic pollution, the main type of pollution in the study area. We used published quantitative data (Gonza´lez-Dı´az et al., 2003) on sponge colonies density, percent of sabellid polychaetes coverage and percentage of filamentous algae (Cladophora and Herposiphonia) to build an index by simply adding the values of the three variables. We transformed the values obtained into ranks to make a fear comparison with the two models described earlier. We call this third approach empirical (Fig. 3). Four different indexes were used to measure diversity components. The total number of species (S) and probability of interspecific encounter (PIE; Hurlbert, 1971) with their empirical 95% confidence intervals were calculated in rarified samples standardized to 280 individuals using the EcoSim software (Gotelli and Entsminger, 2001). Shannon index of diversity P (H0 =  pi ln pi) and Pielou’s eveness index (J0 = H0 /ln S) were calculated for total samples (zone  habitat  season) using Excel

2003. Association between diversity indexes, benthic variables and cumulative effect values (ICE) was assessed using Spearman’s rank correlation coefficient (rs). Analyses were made using STATISTICA 6.0. 3. Results A total of 35,078 individuals of 119 species were counted in 480 stationary point censuses (Table 1). Species abundances were strongly uneven, with only 30 species forming more than 90% of total individuals counted. The most abundant species were: the bluehead Thalassoma bifasciatum, a small-sized and territorial species feeding on small invertebrates; the bicolor damselfish Stegastes partitus, a small-sized highly territorial omnivore; the ocean surgeonfish Acanthurus bahianus, a medium-sized wandering herbivore and the slippery dick Halichoeres bivittatus, a smallsized and territorial species feeding on small gastropods. These species can be considered dominant in the studied assemblage and they accounted for more than 55% of all individuals censused. In general terms, the fish assemblage was strongly dominated by small- or medium-sized species of low trophic level (mostly herbivores, omnivores and small invertebrate feeders). Larger species were notoriously absent and no individuals of commercial Table 1 Total number (N) and percentage representation of species totaling 90 percent of all individual counted. Maximum total length (Lmax) observed is also given for each species. Family ordering follows Nelson (2006). Family

Species

Lmax (cm)

Main food

Holocentridae

Holocentrus adscencionis Myripristis jacobus

357 179

1.0 0.5

28 17

SC SF&C

Serranidae Malacanthidae Carangidae

Cephalophoplis fulva Malacanthus plumieri Caranx ruber

826 318 543

2.4 0.9 1.5

25 40 20

SF&C SF&I SF&C

Lutjanidae

Lutjanus synagris Ocyurus chrysurus

315 246

0.9 0.7

26 30

SF&C SI

Haemulidae

Haemulon flavolineatum Haemulon plumieri

498 625

1.4 1.8

20 25

M&D M&D

Mullidae

Mulloidichthys martinicus

271

0.8

30

SI

Chaetodontidae

Chaetodon capistratus Chaetodon striatus

576 132

1.6 0.4

17 15

SI SI

Pomacentridae

Abudefduf saxatilis Chromis cyanea Chromis multilineata Stegastes leucostictus Stegastes partitus

581 943 942 249 5274

1.7 2.7 2.7 0.7 15.0

15 10 14 10 9

O P P O O

Labridae

Bodianus rufus Clepticus parrae Halichoeres bivittatus Halichoeres garnoti Thalassoma bifasciatum

261 469 2167 485 8768

0.7 1.3 6.2 1.4 25.0

14 26 15 18 12

SI P SG SG SI

Scaridae

Sparisoma aurofrenatum Sparisoma chrysopterum

616 110

1.8 0.3

31 29

H H

Labrisomidae Chaenopsidae

Malacoctenus triangulatus Emblemaria pandionis

122 317

0.3 0.9

7 5

SI P

Acanthuridae

Acanthurus bahianus Acanthurus chirurgus Acanthurus coeruleus

3738 527 1020

10.7 1.5 2.9

19 21 25

H H H

Tetraodontidae

Canthigaster rostrata

139

0.4

11

O

31614 3464 35078

90.1 9.9 100.0

Sub total Rest (89 spp.) Total

Fig. 3. Graphical representation of three approaches for ranking cumulative effects.

N

%

C = crustaceans; D = decapods; H = plants (herbivores); I = invertebrates; SC = small crustaceans; SF = small fish; SG = small gastropods; SI = small invertebrates; M = mollusks; O = plants and animals (omnivores); P = plankton.

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Fig. 4. Mean abundance (standard error) of four most abundant species. Labels formed by sampling zone number and season (R = rainy; D = dry).

species of groupers, snappers, grunts and jacks were observed along the study. Barracuda, big rays and sharks were also absent in our censuses. Habitat preferences were evident in the two most abundant species (Fig. 4). Bluehead was by far most abundant on the terrace edge, with the subsequent preferred habitat the terrace base. In both cases, abundance of this species was much lower at the highly impacted zone 1. In the terrace base abundance was also low at the medium impacted zone 2. No differences are apparent between sampling dates. Bicolor damselfish was even more segregated among habitats, and was very abundant at both terrace locations. Strong fluctuations in abundance are apparent between sampling dates for this species, but this does not mask the much lower abundance at zone 1 in both habitats. The third species by its total abundance, ocean surgeonfish, did not show any clear trend by habitat, zone or date of sampling. Finally, slippery dick was more abundant in zone 1 for all habitats. This species showed an abundance pattern that can be considered almost contrary to those of bluehead and bicolor damselfish. Values of S and PIE varied among areas inside each habitat in a similar but complex fashion (Fig. 5). In Echinometra fringe and rocky plain habitats, lowest values were found in area 2, while values in areas 1 and 3 were very similar. In both terrace habitats, however, a clear trend was evident in which values decreased from most impacted zone 1 to least impacted zone 3. PIE values showed a very high correlation with H0 (rs = 0.949, p < 0.001, n = 24) and with J0 (rs = 0.928, p < 0.001, n = 24). S values were also highly correlated with H0 (rs = 0.909, p < 0.001, n = 24) and in less degree with J0 (rs = 0.730, p < 0.001, n = 24). In most cases, diversity measures showed significant correlations with sponge density, polychaete coverage and proportion of filamentous algae (Table 2). Only J0 was not correlated with sponge density. All diversity indexes were also correlated with rank values predicted by interactive and empirical indicators of cumulative

effect (ICE). No correlation was found in any case with the additive approach predicted values. The contribution of the four most abundant species to diversity indexes was assessed using rank correlation between the proportion of each species and each diversity index (Table 3). All diversity indexes showed a very high negative rank correlation with the proportion of bluehead (the most abundant species) in samples (Fig. 6). This was not the case for the second most abundant species, bicolor damselfish, for which no correlation was found. Ocean surgeonfish proportion was weakly and negatively correlated with S and H0 but not with PIE and J0 . Finally, slippery dick proportion in samples was weakly correlated with all indexes. 4. Discussion Other authors have also used an index-based approach to quantify cumulative effects. Ugland et al. (2008) used a simple indicator of pollution effect by averaging the relative abundance of five polychaete species. Hale and Heltsche (2008) showed that an index based in several benthic indicators strongly discriminated stations in their study. A critical question about our results, however, is related to the reliability of the variables we used to build our indicator of cumulative effect. We summarize below evidence in scientific literature supporting our selection. An increase of sponge biomass with organic pollution and high sediment load is well documented (Chalker et al., 1985; Rogers, 1990; Wilkinson and Cheshire, 1990; Aerst and van Soest, 1997; Ward-Paige et al., 2005; Costa et al., 2008). Sponges are filter feeders that primarily consume ultraplankton. As Ru¨tzler (2004) asserts, land runoff and organic pollution in moderate concentration may benefit sponges by providing nutrients for bacteria. Sponges and corals respond to nutrient and sediment increase in very different ways, with coral biomass decreasing in reefs stressed by pollution and siltation (Aerst and van Soest, 1997; Nughes and

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Fig. 5. Estimated values of the probability of interspecific encounter (PIE) and species number (S) in samples rarefied to 280 individuals (95% confidence intervals). Labels formed by sampling zone number and season (R = rainy; D = dry).

Table 2 Spearman’s rank correlation coefficients (rs) and associated probabilities (p) for combinations of diversity components and environmental or stress indicator variables: S = number of species; PIE = probability of interspecific encounter; J0 = Pielou’s evenness index; H0 = Shannon’s diversity index; ICE = index of cumulative effect. Variables

Sponges Polychaetes Filamentous algae ICE additive ICE Interactive ICE empirical

S

J0

PIE

H0

rs

p

rs

p

rs

p

rs

p

0.68 0.59 0.40 0.02 0.44 0.63

<0.001 0.002 0.049 0.935 0.030 0.001

0.45 0.56 0.48 0.32 0.48 0.71

0.026 0.004 0.016 0.130 0.018 <0.001

0.31 0.53 0.42 0.13 0.44 0.51

0.142 0.008 0.043 0.554 0.033 0.010

0.62 0.60 0.46 0.21 0.48 0.68

0.001 0.002 0.024 0.318 0.018 <0.001

Table 3 Spearman’s rank correlation coefficients (rs) and associated probabilities (p) for combinations of diversity components and most abundant species: S = number of species; PIE = probability of interspecific encounter; J0 = Pielou’s evenness index; H0 = Shannon’s diversity index. Species

Thalassoma bifasciatum Stegastes partitus Acanthurus bahianus Halichoeres bivittatus

S

J0

PIE

H0

rs

p

rs

p

rs

p

rs

p

0.73 0.26 0.52 0.51

<0.001 0.225 0.009 0.010

0.88 0.08 0.28 0.58

<0.001 0.713 0.175 0.002

0.81 0.20 0.14 0.58

<0.001 0.348 0.522 0.003

0.87 0.11 0.44 0.52

<0.001 0.622 0.029 0.008

Roberts, 2003). Sponge cover was negatively correlated with hard coral cover in the Florida Keys (Maliao et al., 2008). Polychaetes have been considered good indicators of eutrophication by several authors (Crema et al., 1991; Mayer-Pinto and Junqueira, 2003; Ugland et al., 2008). Filtering abilities of sabellid polychaetes are very high (Licciano et al., 2005, 2007), giving this group a competitive advantage in environments impacted by sewage-

polluted and eutrophicated waters (Licciano et al., 2002). Increasing availability of inorganic nutrients is known to stimulate the abundance of ephemeral macroalgae, including those of genus Cladophora (Gordon and McComb, 1989; Lapointe et al., 2004; Kraufvelin et al., 2007; McClanahan et al., 2007; Mutchler et al., 2007; Karez et al., 2008). During a study carried out in the Swedish Skagerrak archipelago, Pihl et al. (1999) concluded that the

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the manuscript. We also thank divers Luis Sanchez and Armando Perez for their assistance in the field. Partial funding for this research was provided by a Canadian International Development Agency Tier 2 Grant to the Centro de Investigaciones Marinas, Cuba and the University of New Brunswick, Saint John, Canada.

References

Fig. 6. Relationship of probability of interspecific encounter (PIE, black circles in upper panel), species number (S, white circles in upper panel), Shannon’s diversity index (H0 , white circles in bottom panel) and Pielou’s eveness index (J0 , black circles in bottom panel) with numerical proportion of Thalassoma bifasciatium (P) in samples.

development of green algal mats (Cladophora and Enteromorpha) was most probably caused by a general elevation in nutrient levels. Several authors have identified wave action as a factor controlling settlement success and growth rates of some sessile organisms in reefs (Massel and Done, 1993; McClanahan et al., 2002). This supports our assumption of a decreasing wave impact from shallower to deeper habitats. In this case wave action can be considered a habitat heterogeneity-inducing factor. The correlation among diversity indexes and cumulative effects (ICE) can be explained by the response of the two most abundant wrasses (bluehead and slippery dick). The proportional abundance of bluehead decreased consistently at sites of higher stress, while that of slippery dick increased. These responses contribute to increased evenness at more stressed sites, decreasing the high dominance of bluehead and allowing other species to be present. A plausible explanation for this change in relative abundance is that slippery dick has a higher tolerance to stressor effects than bluehead, a hypothesis already advanced by Aguilar et al. (2004). Slippery dick appears to be more tolerant to siltation than other species of wrasses (Aliaume et al., 1990; Baelde, 1990; BouchonNavaro et al., 1992; Thomas and Logan, 1992). After McKenna (1997), small wrasses (especially Halichoeres bivittatus) dominated the assemblages at the impacted site in his study. Acknowledgements We acknowledge the contribution of two anonymous reviewers whose comments contributed significantly to the enhancement of

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