Literature DB >> 19421312

Fishery-independent data reveal negative effect of human population density on Caribbean predatory fish communities.

Christopher D Stallings1.   

Abstract

BACKGROUND: Understanding the current status of predatory fish communities, and the effects fishing has on them, is vitally important information for management. However, data are often insufficient at region-wide scales to assess the effects of extraction in coral reef ecosystems of developing nations. METHODOLOGY/PRINCIPAL
FINDINGS: Here, I overcome this difficulty by using a publicly accessible, fisheries-independent database to provide a broad scale, comprehensive analysis of human impacts on predatory reef fish communities across the greater Caribbean region. Specifically, this study analyzed presence and diversity of predatory reef fishes over a gradient of human population density. Across the region, as human population density increases, presence of large-bodied fishes declines, and fish communities become dominated by a few smaller-bodied species.
CONCLUSIONS/SIGNIFICANCE: Complete disappearance of several large-bodied fishes indicates ecological and local extinctions have occurred in some densely populated areas. These findings fill a fundamentally important gap in our knowledge of the ecosystem effects of artisanal fisheries in developing nations, and provide support for multiple approaches to data collection where they are commonly unavailable.

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Year:  2009        PMID: 19421312      PMCID: PMC2672166          DOI: 10.1371/journal.pone.0005333

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


Introduction

It is well documented that humans have greatly altered predatory fish communities worldwide, especially through industrialized commercial and recreational fisheries [1]–[8]. These studies have based their conclusions on extensive databases of fisheries-dependent data (i.e., landings statistics), primarily from developed nations. However, fisheries statistics are commonly unavailable in developing nations where artisanal (subsistence or small-scale commercial) fisheries exist [9]–[11]. Despite the problem of insufficient data, it remains imperative to assess region-wide effects of extraction on predatory fish populations and to indicate whether indirect effects of human activities exist in the communities to which they belong (e.g., dominance shifts) in order to implement management and conservation strategies geared towards ecosystem-based approaches [12]. Artisanal fisheries supply food for millions of people in developing nations, and are the primary source of resource exploitation on coral reef systems [13]. Fishing on Caribbean reefs occurred long before the arrival of European settlers, but has returned increasingly diminished yields over the last 200 years as human populations have escalated in the region [14]–[16]. Similar to industrial and recreational counterparts in developed nations, artisanal fishing tends to target large-bodied, top trophic-level fishes, so greater numbers of fishermen per unit area should result in increased removal of larger species [17]–[20]. Indeed, populations of large-bodied fishes have become notoriously impoverished at some Caribbean locations with high densities of human populations (e.g., Jamaica) [21], [22]. However, because fisheries data are generally unavailable or incomplete across the Caribbean, researchers have relied on either survey data from studies conducted on relatively small spatial scales or anecdotal and historical information. Therefore, the prevalence of these patterns and their potential indirect effects across the region remain unknown. To address these issues on a larger scale, I used a publicly accessible, fisheries-independent database [23] to provide the first broad scale, quantitative analysis of the structure of predatory reef-fish communities across the greater Caribbean region (Fig. 1). The database consisted of over 38,000 presence/absence surveys conducted across 22 insular and continental nations (Table 1) by citizen scientists (i.e., trained volunteer SCUBA divers), a technique that has been used extensively by terrestrial ecologists (e.g., Breeding Bird Survey), but largely ignored by their marine colleagues. These community efforts can cover large geographic scales and produce sample sizes several order of magnitude greater than traditional efforts by either individual or small teams of scientists [24], effectively filling data gaps where fisheries-dependent data are currently unavailable. I also examined potential mechanisms, including factors that are both independent of and related to anthropogenic influences (Table 2), that may have affected the structure of these fish communities.
Figure 1

Map of Caribbean locations from which predator presence data were gathered.

The data were from all locations in which at least 10 volunteer diver surveys were conducted between 1994 and 2008. The locations of the two uninhabited islands are italicized: IM (Isla de Mona); NI (Navassa Island).

Table 1

Twenty-two nations from which REEF survey data were collected, including information of human population densities and sample sizes.

Country/regionHPDCodeSurvey locationsTotal surveys
Belize12BZ72304
Bahamas21BA159457
Turks and Caicos47TC103136
Mexican Caribbean53MC55057
Honduras62HD42124
Cuba102CU3567
Leeward IslandsLI81819
--- Anguilla12913
--- Netherlands Antilles* 131600
--- St. Kitts149285
--- Antigua15527
--- Dominica91894
British Virgin Islands147BV32196
Cayman Islands168CI44499
Dominican Republic183DR4515
Jamaica248JA5384
US Virgin Islands308UV32347
Windward IslandsWI82635
--- Martinique359163
--- St. Lucia269181
--- St. Vincent & The Grenadines 3021929
--- Barbados647173
--- Grenada260189
Puerto Rico430PR71076
TOTAL = 38116

Netherlands Antilles (St Martin, Saba, St Eustatius).

St Vincent & Grenadines (includes Bequia & Mustique).

Table 2

Pearson's correlations (r) between explanatory variables and the axes from the NMS ordination.

VariableAxis 1Axis 2
HPD (people/land km2)0.72−0.01
HPReef (people/reef km2)0.090.05
GDP (PPP/capita)−0.18−0.08
Tourist (mean/year)−0.230.11
Latitude−0.64−0.07

Map of Caribbean locations from which predator presence data were gathered.

The data were from all locations in which at least 10 volunteer diver surveys were conducted between 1994 and 2008. The locations of the two uninhabited islands are italicized: IM (Isla de Mona); NI (Navassa Island). Netherlands Antilles (St Martin, Saba, St Eustatius). St Vincent & Grenadines (includes Bequia & Mustique).

Results

A non-metric multidimensional scaling (NMS) ordination of 20 predatory taxa converged on a stable, 2-dimensional solution (final stress = 16.53, final instability = 0.00048, iterations = 74) (Fig. 2). The first axis accounted for the majority of variation in the NMS (r = 0.67), was strongly correlated with human population density (r = 0.72) and slightly less so with latitude (r = −0.64; Table 2). The structure of the ordination was driven by strong associations of sharks (Carcharhinidae), jacks (Carangidae), and large species of groupers (Serranidae) and snappers (Lutjanidae) with regions of low human population density (high latitude). The pattern was also driven by moderate associations of trumpetfish (Aulostomidae) and smaller species of groupers and snappers with regions of high human population density (low latitude; Fig. 2). The second axis accounted for less variation (r = 0.15) and was driven by regional differences in which particular taxa of large or small predators predominated.
Figure 2

NMS ordination of regions in predatory fish space (20 taxa).

Regional centroids are displayed: BA (Bahamas); TC (Turks and Caicos); CU (Cuba); CI (Cayman Islands); JA (Jamaica); MC (Mexican Caribbean); BZ (Belize); HD (Honduras); DR (Dominican Republic), PR (Puerto Rico); UV (US Virgin Islands); BV (British Virgin Islands); LI (Leeward Islands); WI (Windward Islands). The axis 1 scores for the two uninhabited islands are italicized: IM (Isla de Mona); NI (Navassa Island). Along axis 1, latitude increases towards the left and human population density increases towards the right. Taxa locations are represented with coded fish displays: a (Mycteroperca bonaci); b (Epinephelus striatus); c (M. tigris); d (M. venenosa); e (E. guttatus); f (E. adscensionis); g (Cephalopholis cruentata); h (C. fulva); I (Lutjanus cyanopterus); j (L. jocu); k (L. analis); l (L. griseus); m (Ocyurus chrysurus); n (L. apodus); o (L. synagris); p (L. mahogoni); q (Aulostomus maculatus); r (Caranx spp.); s (Carcharhinus spp.); t (Sphyraena barracuda). Fish displays are scaled according to maximum attainable sizes of each taxa.

NMS ordination of regions in predatory fish space (20 taxa).

Regional centroids are displayed: BA (Bahamas); TC (Turks and Caicos); CU (Cuba); CI (Cayman Islands); JA (Jamaica); MC (Mexican Caribbean); BZ (Belize); HD (Honduras); DR (Dominican Republic), PR (Puerto Rico); UV (US Virgin Islands); BV (British Virgin Islands); LI (Leeward Islands); WI (Windward Islands). The axis 1 scores for the two uninhabited islands are italicized: IM (Isla de Mona); NI (Navassa Island). Along axis 1, latitude increases towards the left and human population density increases towards the right. Taxa locations are represented with coded fish displays: a (Mycteroperca bonaci); b (Epinephelus striatus); c (M. tigris); d (M. venenosa); e (E. guttatus); f (E. adscensionis); g (Cephalopholis cruentata); h (C. fulva); I (Lutjanus cyanopterus); j (L. jocu); k (L. analis); l (L. griseus); m (Ocyurus chrysurus); n (L. apodus); o (L. synagris); p (L. mahogoni); q (Aulostomus maculatus); r (Caranx spp.); s (Carcharhinus spp.); t (Sphyraena barracuda). Fish displays are scaled according to maximum attainable sizes of each taxa. Because human population density and latitude were the primary factors related to the structure of the NMS ordination along the first axis, a multiple regression was used to investigate their independent effects. Although human population densities tend to decrease towards higher latitudes in the Caribbean region (r = −0.57), collinearity was low (variance inflation factor = 1.469); therefore the analysis was deemed robust. Both human population density (p<0.00001) and latitude (p = 0.0121) were related to the NMS scores after accounting for the effects of each. However, analysis of the standardized regression coefficients (1 standard deviation) revealed stronger evidence for a significant effect of human population density on NMS scores compared to latitude (i.e., lower p-values), and that the effect of the former (coefstandardized = 0.4583) was over twice as strong as the latter (coefstandardized = −0.2126). Mean and median sighting frequencies of predators decreased 2.2–4.0% (r = 0.19, p<0.0001) and 4.1–7.1% (r = 0.37, p<0.0001), respectively, per incremental increase of 100 humans per km2. The predator communities exhibited lower richness (r = 0.20, p<0.0001) and Simpson's diversity (r = 0.41, p<0.0001) with increasing density of humans. At the taxon level, 15 of the 20 predators included in the analyses were sighted less frequently with increasing human population density (Table 3). The remaining five predatory taxa were sighted either evenly or at increasing frequencies with increasing human population density, and included the smallest species of grouper (graysby, Cephalopholis cruentata and coney, C. fulva) and snapper (mahogany snapper, Lutjanus mahogoni and lane snapper, L. synagris), as well as the relatively unfished trumpetfish (Aulostomus maculatus).
Table 3

Regression statistics of predatory reef-fish presence across a gradient of human population density.

FamilyTaxaCommon nameTLmax (cm)InterceptSECoefSE t-Value p-Value C
Aulostomidae Aulostomus maculatus trumpetfish1000.48270.03060.00050.00023.0890.0027*
Carangidae Caranx spp.jacksa 69b 0.76900.0242−0.00030.0001−2.3740.0199
Carcharhinidae Carcharhinus spp.requiem sharksa 300b 0.08870.0142−0.00020.0001−4.1520.0001*
Lutjanidae Lutjanus cyanopterus cubera snappera 1600.06720.0095−0.00020.0000−5.572<0.0001*
L. jocu dog snappera 1280.09750.0142−0.00010.0001−2.1310.0361
L. analis mutton snappera 940.16590.0198−0.00020.0001−1.7700.0805
L. griseus gray snapper890.15510.0165−0.00020.0001−2.5680.0120
Ocyurus chrysurus yellowtail snapper860.76020.0272−0.00040.0001−2.9800.0038*
L. apodus schoolmaster670.60910.0338−0.00060.0002−3.6060.0005*
L. synagris lane snapper600.05090.01260.00020.00013.0150.0034*
L. mahogoni mahogany snapper480.34450.03040.00030.00021.9920.0497
Serranidae Mycteroperca bonaci black groupera 1480.18100.0190−0.00060.0001−6.858<0.0001*
Epinephelus striatus Nassau groupera 1220.46070.0321−0.00130.0002−9.206<0.0001*
M. tigris tiger groupera 1010.31120.0251−0.00090.0001−7.882<0.0001*
M. venenosa yellowfin groupera 1000.03580.0042−0.00010.0000−4.753<0.0001*
E. guttatus red hinda 760.00900.0015−0.00010.0000−3.7780.0003*
E. adscensionis rock hinda 610.08730.0138−0.00010.0001−1.3660.1756
Cephalopholis cruentata graysby430.47050.03050.00040.00022.5100.0140
C. fulva coney410.46320.03850.00040.00021.8730.0646
Sphyraenidae Sphyraena barracuda barracuda2000.46160.0278−0.00060.0001−4.447<0.0001*

Regression coefficient and intercept values computed from untransformed data; test statistics computed from arcsine(ˆ0.5) transformed data (Zar 1999).

Size data for sharks and jacks are from Caribbean reef shark (Carcharhinus perezii) and bar jack (Caranx ruber), respectively, which were the most common family representatives.

Significant test after correction for multiple comparisons using sequential Bonferroni noted (*).

Note: Barbados was removed from the regressions since its high HPD (642people/km2) was approximately 50% greater than the second highest nation (i.e., outlier), and therefore quantitatively exaggerated the effect of HPD; trends were qualitatively unaffected.

Regression coefficient and intercept values computed from untransformed data; test statistics computed from arcsine(ˆ0.5) transformed data (Zar 1999). Size data for sharks and jacks are from Caribbean reef shark (Carcharhinus perezii) and bar jack (Caranx ruber), respectively, which were the most common family representatives. Significant test after correction for multiple comparisons using sequential Bonferroni noted (*). Note: Barbados was removed from the regressions since its high HPD (642people/km2) was approximately 50% greater than the second highest nation (i.e., outlier), and therefore quantitatively exaggerated the effect of HPD; trends were qualitatively unaffected. NMS ordinations within both the grouper (final stress = 11.18, final instability = 0.00045, iterations = 59) and snapper (final stress = 11.21, final instability = 0.00045, iterations = 59) families each converged on stable, 3-dimensional solutions. The first axes of both ordinations accounted for the majority of variation (grouper r = 0.55; snapper r = 0.59) and were strongly correlated with human population density (grouper r = 0.75; snapper r = 0.57). Linear regressions within both families indicated strong decreases in maximum sizes of the species associations with regions along an index from low to high human population densities (Fig. 3).
Figure 3

Maximum lengths of serranids and lutjanids as a function of human population density.

Taxon codes are in caption to Figure 2. Regression statistics (n = 8 species each): (A) serranid maximum published lengths (r = 0.78, p = 0.004); (B) lutjanid maximum published lengths (r = 0.78, p = 0.003). NMS scores are from the axis that accounted for the most variation in the data. Axis variation explained and correlation with human population density: (A) serranid ordination (axis r = 0.55, r with axis = 0.75); (B) lutjanid ordination (axis r = 0.46, r with axis = 0.50).

Maximum lengths of serranids and lutjanids as a function of human population density.

Taxon codes are in caption to Figure 2. Regression statistics (n = 8 species each): (A) serranid maximum published lengths (r = 0.78, p = 0.004); (B) lutjanid maximum published lengths (r = 0.78, p = 0.003). NMS scores are from the axis that accounted for the most variation in the data. Axis variation explained and correlation with human population density: (A) serranid ordination (axis r = 0.55, r with axis = 0.75); (B) lutjanid ordination (axis r = 0.46, r with axis = 0.50).

Discussion

The analyses presented here suggest human population density is strongly, negatively related to both richness and total presence (a surrogate of abundance) of predatory reef fishes in the Caribbean. Large predatory species were rare or absent in locations of high human population density, where smaller predators have become dominant, indicating the potential of indirect effects through competitive release. Although correlatives with both human activities and latitude may have had an influence on the structure of predatory communities, fishing was likely the most important mechanism driving the documented patterns. Human population density and latitude were both correlated with the ordination of all taxa, but close examination of the data allow the relative effects of each predictor to be disentangled. In addition to compelling results from multiple regression analyses (see Results), further evidence reinforces that human population density was the dominant signal. First, although all taxa included in the analysis are naturally distributed across all locations in the study region, most fishes, particularly the larger-bodied ones, were rare or completely absent in surveys conducted in areas of high human population density. These patterns were evident in both the compressed, multivariate space (i.e., all large-bodied predators grouped on the left/negative side of axis 1, Fig. 2) and in the presence data of individual taxa (Table 3). In addition, historical data further illustrate that large groupers, snappers, and sharks were once abundant throughout the Caribbean, including reefs located in the Greater and Lesser Antilles where several of the species examined here are now ecologically or locally extinct [15], [25], [26]. Second, comparisons between inhabited and uninhabited islands within otherwise densely populated regions highlight potential human induced effects [27], [28]. For example, Isla de Mona and Navassa Island are uninhabited, relatively isolated nature reserves near the densely populated islands of Puerto Rico and Jamaica, respectively (Fig. 1). Although both islands have historically been fished and have experienced other anthropogenic effects, the intensity of such effects on these relatively remote locations is likely lower compared to nearby inhabited islands. Indeed, the similarities between the predator communities at these locales and other locations of low human density can be detected in both the ordinated space (i.e., italicized locations IM and NI further to the left on axis 1 than centroids of neighboring PR and JA, respectively, Fig. 2) and the presence/absence data for each taxon. Sighting frequencies of large-bodied predators, such as sharks, jacks, barracuda, and large groupers and snappers, were two to three times higher on reefs adjacent to the uninhabited islands relative to nearby inhabited ones (Text S1, Table S1). The more extensive presence of these predators within regions where they are otherwise rare or completely absent indicates that anthropogenic effects, not latitudinal gradients, limit the presence of these large-bodied fishes. The relationship between human population density and ecological communities has been investigated far more extensively in terrestrial systems than marine ones [29]. However, several recent studies from the Line Islands [20], [30], [31] and the Hawaiian Islands [27], [32] have found higher abundances and biomass of large predatory fishes in locations of low human population densities compared to those that are densely populated. Similar results were found in the current study, with large predators becoming increasingly rare or locally extinct with increasing human population densities. Human activities can negatively affect populations and communities of coral reef fishes directly through harvesting and indirectly through habitat loss [32]. Worldwide degradation of coral reefs has been well documented [33]–[35], and although the effects of global climate change (and associated effects of bleaching, acidification, and disease) are thought to be the major drivers, local effects related to human population density (e.g., destructive fishing, pollution) exacerbate the destruction to coral habitats [36]–[41]. Decreased coral cover can result in declines to the abundance, biomass, and diversity of coral reef fishes [42]–[46], but most evidence is for small fishes occupying lower trophic levels, while that for predatory fishes is less clear. For example, Wormald [47] found varying relationships (positive and negative) of coral volume on two snappers (schoolmaster and lane snapper, respectively) while Graham et al. [43] was unable to detect a relationship between coral loss and fishes larger than 20 cm. Using meta-analysis, Paddack et al. [45] suggested declines in Caribbean fishes from several trophic groups were due to loss of coral, but were unable to detect a significant effect of habitat degradation on piscivores. Separating the effects of habitat loss from those of fishing have proven difficult since they commonly co-occur [48], but Williams et al. [32] was able to do so and concluded fishing to be the dominant factor affecting Hawaiian fish communities. The effects of fishing generally precede other stressors [49] and typically have the strongest human induced consequences on predatory marine fishes [18], [40], [50]. Although multiple and interactive local effects related to increasing human population density cannot be ignored, fishing is the most parsimonious mechanism driving the loss of predatory fishes in the Caribbean. Artisanal fishing is the predominant source of resource extraction on coral reefs in the Caribbean [51]. Although commonly considered to be relatively benign compared to industrialized fisheries, increasing evidence from around the world suggests otherwise. Even at relatively low fishing intensities, artisanal fishing has been shown to strongly reduce populations and biomass of targeted species on coral reefs in the Indo-Pacific [52]–[54], eastern Pacific [55], and the Caribbean [18]. Fishermen tend to target and directly reduce populations of large-bodied fishes that are typically longer lived, mature more slowly than smaller ones, and often form spawning aggregations, all of which increase their vulnerability to overfishing [56]–[60]. Fishing can also have indirect effects on predatory fish communities. For example, removal of large-bodied predators may have allowed smaller ones to increase in abundance due to release from competition or predation [30], [61], [62]. Indeed, the relatively unfished trumpetfish, and the two smallest species of both grouper (i.e., graysby and coney) and snapper (i.e., lane and mahogany snappers) were found to increase in presence with decreasing presence of large predators (Table 3, Figs. 2 and 3). Although the temporal trends were not significant, it is notable that only graysby, lane snapper, and mahogany snapper exhibited increasing presence across the 15-year period of surveys (Text S2, Tables S2 and S3). Latitude was the second strongest correlative with the structure of predatory fish communities (Table 2). Most studies that have addressed latitudinal patterns of fish communities in the western Atlantic have done so across biogeographic provinces [63], [64], while few have been confined to the greater Caribbean and none have focused solely on predators in the region. Temperature and productivity can each vary greatly over large spatial scales and both have been linked to species richness gradients in the Atlantic [65] and Indo-Pacific [66]. However, neither annual temperature [67] nor productivity [68] varies greatly across the relatively warm, oligotrophic waters of the current study; their roles in affecting the structure of reef fish communities in the Caribbean, including that of the predatory fishes examined here, has therefore remained elusive. In a study that included various habitats including coral reefs, Bouchon-Navaro et al. [69] found latitude to explain a small but significant amount of the variance (8.4%) on the structure of fish assemblages across the Antilles, with increasing species richness towards lower latitudes. The authors suggested the patterns may have been attributable to the types and area of available habitat, but also acknowledged that it is difficult to attribute mechanism to latitudinal gradients of fishes in the Caribbean given our current knowledge. Following island biogeography theory [70], Sandin et al. [71] found fish richness on Caribbean reefs from insular nations to increase with both island area and decreasing isolation. Although distance between islands in the Caribbean tends to increase towards lower latitudes (r = between 0.40 and 0.65, depending on metric of isolation), richness was not correlated with latitude per se (r = −0.08; S.A. Sandin, unpublished data). Therefore the mechanisms behind the latitude signal in the current study are not very clear, but may have been due to a combination of gradients in both isolation and area of reefs confounded by the effects of human population density in a general north-south orientation. The remaining three factors explained far less variance in the structure of predatory fish communities. The lack of a strong signal from the tourism data (i.e., the number of visitors) was somewhat surprising, since increased number of tourists should theoretically have had effects similar to those of increased number of residents. However, a recent study from the Bahamas indicated that residents account for the vast majority of seafood consumed (88%) compared to tourists, with the former preferring fishes (especially grouper and snapper) and the latter preferring conch and lobster (unpublished data, L. Talaue-McManus). Chronic demand for seafood from residents (particularly fishes) may supersede the effects from visitors. Predicting the ecological consequences of changes to the structure of predator communities is difficult [72], [73]. Different sized predatory fishes may perform various functional roles and can have drastically different effects on the diversity and abundance of prey species [74], [75]. Furthermore, loss of functional roles can lead to decreased ecological stability [76] and ecosystems can become both less resilient to catastrophic phenomena such as cyclones [39] and less resistant to invasions by exotic species [77]. The recent invasion of Indo-Pacific lionfishes (Pterois volitans and P. miles) in the Caribbean may have been facilitated by overfishing large predators capable controlling their rapid spread and population explosion [78] and is alarming considering the strong predatory effects lionfish can have on native fishes [79]. Management of human impacts on entire functional groups may therefore be more important than targeting specific taxa [80], but tests of functional redundancy among predatory marine fishes is sorely needed [81]. In addition, incorporating the effects of environmental variation [82], multiple human stressors [83], and linkages in interaction webs [84], [85] with socioeconomic factors that lead to overfishing [86] may improve management and conservation in coral reef systems. On a global scale, 37% of human populations are within 100 km of a coastline [87]. As human populations continue to increase, the associated negative effects on coastal ecosystems are not likely to be easily resolved. Continued efforts at broad spatial scales are necessary to better understand individual and interactive effects of anthropogenic activities on marine ecosystems [19], [39], [88], [89]. If we are to overcome the challenges of collecting data in developing nations and on a region-wide scale, these studies will require multiple disciplinary approaches [90] including publicly available survey data collected by citizen scientists and other community volunteers.

Materials and Methods

Survey Data

Predator presence/absence data from locations across the greater Caribbean region (Fig. 1) were queried using the Reef Environmental Education Foundation's (REEF) online database (World Wide Web electronic publication; www.reef.org, date of download: 20 August 2008). The data included coral reef habitats located in 22 continental and insular nations and consisted of 38,116 surveys conducted between 1994 and 2008 (Text S3, Table S4). Within each of the 22 nations, I chose survey locations with a minimum of 10 surveys (Table 1; 86 total locations). The data were collected by trained volunteer SCUBA divers using the Roving Diver Technique (RDT) where divers swim freely around a survey site and record all species that can be positively identified [91]. The RDT was specifically designed for volunteer data and is effective at rapid assessment of both fish distribution and abundance [92]. The analysis included all predators (trophic level≥4) [93] that met two fundamental criteria: 1) previously documented natural distributions for each of the 22 nations [93]–[96], and 2) only data for conspicuous species because the data were collected by volunteer divers. Although cryptic species (e.g., moray eels, Muraenidae; lizardfishes, Synodontidae) were recorded by the divers, the accuracy of the RDT at estimating their presence was unclear, so those data were not included. Twenty taxa of predatory fishes met the above criteria and included eight species of grouper (Family Serranidae), eight species of snapper (Lutjanidae), one species each of trumpetfish (Aulostomidae) and barracuda (Sphyraenidae), and both jacks (Carangidae) and requiem sharks (Carcharhinidae) summarized at the family levels (Table 3). The 20 taxa ranged in maximum attainable total lengths from 40 cm to over 300 cm. The average depth of each survey was recorded by REEF participants in 10 feet (3.05 meter) increments. Across all surveys included in the analyses here, the majority of dives (82%) were made at depths between 10–30 m, with decreasing proportions made at shallower (<10 m; 12%) and deeper (30–45 m; 7%) depths. Importantly, all surveys were conducted within the natural depth ranges of the 20 predatory taxa [93]–[96].

Data Analysis

The predator presence/absence data had extremely low Whitaker's beta diversity (β = 0.1) and low values of the coefficient of variation for both taxa (CV = 87.6) and sample locations (CV = 22.8); therefore data transformation was not required. To investigate spatial patterns in the data, a matrix of sample locations by taxa presence was ordinated using non-metric multidimensional scaling (NMS) [97], [98]. NMS can investigate potential drivers influencing the final structure of the ordination by examining correlations between the main dataset (i.e., predator presence) and variables in a second matrix. Therefore a second matrix was constructed that included four variables related to human influences as well as latitude to account for biogeographic patterns that may have naturally existed across the 22 nations (Table 2). The four variables related to human influences included: 1) the size of human populations corrected for land area (the standard measure of human population density) [99], 2) human population size corrected for reef area [99], [100], 3) per capita gross domestic product [101], and 4) average tourist arrivals per year [102]. The ordinations of sample locations in species space were presented graphically, with overlays of the environmental data from the second matrix. The presentation was simplified by displaying national centroids and by grouping nations from the Lesser Antilles into ‘Windward’ (i.e., Barbados, Grenada, Martinique, St. Lucia, St. Vincent and the Grenadines) and ‘Leeward’ (i.e., Anguilla, Antigua, Dominica, Netherlands Antilles, St. Kitts) islands. The resulting ordination displayed 14 regions across the greater Caribbean region. All NMS ordinations were conducted in PC-ORD 5.14 using the ‘Autopilot Mode’ with Sorensen distance measure and random starting configurations [103]. In addition to the ordination, linear regressions were conducted between human population densities and several metrics of the predator presence data per sample location: 1) mean and median presence across all taxa, 2) richness (S, the total number of species), and 3) Simpson's diversity (D = 1−Σ (pi 2). Groupers and snappers are among the most speciose families of predatory reef fishes in the Caribbean, with a range of maximum total lengths for the species included here from <0.5 m to >1.5 m. Therefore, additional NMS ordinations were conducted on both families to investigate their within family associations with the survey locations relative to the maximum sizes of each species. The first axes of both ordinations were strongly correlated with human population densities. The NMS scores therefore served as an index of human population density in multivariate space for both ordinations. The relationship between how sizes of the associated species changed across the index of human population densities was analyzed using linear regression of the NMS scores versus the maximum attainable lengths of each species. Comparisons between uninhabited and densely populated islands. (0.03 MB DOC) Click here for additional data file. Temporal trends in predator presence. (0.03 MB DOC) Click here for additional data file. Comparisons between different levels of REEF surveyor experience. (0.04 MB DOC) Click here for additional data file. Comparisons of average sighting frequencies between both Jamaica-Navassa and Puerto Rico-Mona island pairs. (0.05 MB DOC) Click here for additional data file. Regression statistics of the presence of predatory reef fishes across time (1994–2008) by human population density interaction. (0.05 MB DOC) Click here for additional data file. Regression statistics of the presence of predatory reef fishes across time (1994–2008). (0.05 MB DOC) Click here for additional data file. Tests of whether sighting frequency differed between novice and expert surveyors. (0.05 MB DOC) Click here for additional data file.
  37 in total

Review 1.  Historical overfishing and the recent collapse of coastal ecosystems.

Authors:  J B Jackson; M X Kirby; W H Berger; K A Bjorndal; L W Botsford; B J Bourque; R H Bradbury; R Cooke; J Erlandson; J A Estes; T P Hughes; S Kidwell; C B Lange; H S Lenihan; J M Pandolfi; C H Peterson; R S Steneck; M J Tegner; R R Warner
Journal:  Science       Date:  2001-07-27       Impact factor: 47.728

2.  Long-term region-wide declines in Caribbean corals.

Authors:  Toby A Gardner; Isabelle M Côté; Jennifer A Gill; Alastair Grant; Andrew R Watkinson
Journal:  Science       Date:  2003-07-17       Impact factor: 47.728

3.  Ecology. Are U.S. coral reefs on the slippery slope to slime?

Authors:  J M Pandolfi; J B C Jackson; N Baron; R H Bradbury; H M Guzman; T P Hughes; C V Kappel; F Micheli; J C Ogden; H P Possingham; E Sala
Journal:  Science       Date:  2005-03-18       Impact factor: 47.728

4.  Extinction, survival or recovery of large predatory fishes.

Authors:  Ransom A Myers; Boris Worm
Journal:  Philos Trans R Soc Lond B Biol Sci       Date:  2005-01-29       Impact factor: 6.237

5.  Global patterns of predator diversity in the open oceans.

Authors:  Boris Worm; Marcel Sandow; Andreas Oschlies; Heike K Lotze; Ransom A Myers
Journal:  Science       Date:  2005-07-28       Impact factor: 47.728

6.  Impacts of biodiversity loss on ocean ecosystem services.

Authors:  Boris Worm; Edward B Barbier; Nicola Beaumont; J Emmett Duffy; Carl Folke; Benjamin S Halpern; Jeremy B C Jackson; Heike K Lotze; Fiorenza Micheli; Stephen R Palumbi; Enric Sala; Kimberley A Selkoe; John J Stachowicz; Reg Watson
Journal:  Science       Date:  2006-11-03       Impact factor: 47.728

7.  A clear human footprint in the coral reefs of the Caribbean.

Authors:  Camilo Mora
Journal:  Proc Biol Sci       Date:  2008-04-07       Impact factor: 5.349

8.  One-third of reef-building corals face elevated extinction risk from climate change and local impacts.

Authors:  Kent E Carpenter; Muhammad Abrar; Greta Aeby; Richard B Aronson; Stuart Banks; Andrew Bruckner; Angel Chiriboga; Jorge Cortés; J Charles Delbeek; Lyndon Devantier; Graham J Edgar; Alasdair J Edwards; Douglas Fenner; Héctor M Guzmán; Bert W Hoeksema; Gregor Hodgson; Ofri Johan; Wilfredo Y Licuanan; Suzanne R Livingstone; Edward R Lovell; Jennifer A Moore; David O Obura; Domingo Ochavillo; Beth A Polidoro; William F Precht; Miledel C Quibilan; Clarissa Reboton; Zoe T Richards; Alex D Rogers; Jonnell Sanciangco; Anne Sheppard; Charles Sheppard; Jennifer Smith; Simon Stuart; Emre Turak; John E N Veron; Carden Wallace; Ernesto Weil; Elizabeth Wood
Journal:  Science       Date:  2008-07-10       Impact factor: 47.728

9.  Indirect effects of an exploited predator on recruitment of coral-reef fishes.

Authors:  Christopher D Stallings
Journal:  Ecology       Date:  2008-08       Impact factor: 5.499

10.  Prospects for biodiversity.

Authors:  Martin Jenkins
Journal:  Science       Date:  2003-11-14       Impact factor: 47.728

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  33 in total

1.  Factors influencing success of marine protected areas in the Visayas, Philippines as related to increasing protected area coverage.

Authors:  Richard Pollnac; Tarsila Seara
Journal:  Environ Manage       Date:  2010-08-13       Impact factor: 3.266

2.  Marine reserves as linked social-ecological systems.

Authors:  Richard Pollnac; Patrick Christie; Joshua E Cinner; Tracey Dalton; Tim M Daw; Graham E Forrester; Nicholas A J Graham; Timothy R McClanahan
Journal:  Proc Natl Acad Sci U S A       Date:  2010-02-22       Impact factor: 11.205

3.  A global evaluation of coral reef management performance: are MPAs producing conservation and socio-economic improvements?

Authors:  Venetia Hargreaves-Allen; Susana Mourato; Eleanor Jane Milner-Gulland
Journal:  Environ Manage       Date:  2011-03-02       Impact factor: 3.266

4.  Changing patterns of microhabitat utilization by the threespot damselfish, Stegastes planifrons, on Caribbean reefs.

Authors:  William F Precht; Richard B Aronson; Ryan M Moody; Les Kaufman
Journal:  PLoS One       Date:  2010-05-26       Impact factor: 3.240

5.  Twenty years of change in benthic communities across the Belizean Barrier Reef.

Authors:  Catherine Alves; Abel Valdivia; Richard B Aronson; Nadia Bood; Karl D Castillo; Courtney Cox; Clare Fieseler; Zachary Locklear; Melanie McField; Laura Mudge; James Umbanhowar; John F Bruno
Journal:  PLoS One       Date:  2022-01-18       Impact factor: 3.240

6.  Population growth of Mexican free-tailed bats (Tadarida brasiliensis mexicana) predates human agricultural activity.

Authors:  Amy L Russell; Murray P Cox; Veronica A Brown; Gary F McCracken
Journal:  BMC Evol Biol       Date:  2011-04-01       Impact factor: 3.260

7.  Large-scale absence of sharks on reefs in the greater-Caribbean: a footprint of human pressures.

Authors:  Christine A Ward-Paige; Camilo Mora; Heike K Lotze; Christy Pattengill-Semmens; Loren McClenachan; Ery Arias-Castro; Ransom A Myers
Journal:  PLoS One       Date:  2010-08-05       Impact factor: 3.240

8.  Predator-induced demographic shifts in coral reef fish assemblages.

Authors:  Benjamin I Ruttenberg; Scott L Hamilton; Sheila M Walsh; Mary K Donovan; Alan Friedlander; Edward DeMartini; Enric Sala; Stuart A Sandin
Journal:  PLoS One       Date:  2011-06-16       Impact factor: 3.240

9.  Fossil dermal denticles reveal the preexploitation baseline of a Caribbean coral reef shark community.

Authors:  Erin M Dillon; Douglas J McCauley; Jorge Manuel Morales-Saldaña; Nicole D Leonard; Jian-Xin Zhao; Aaron O'Dea
Journal:  Proc Natl Acad Sci U S A       Date:  2021-07-20       Impact factor: 11.205

10.  Community change within a Caribbean coral reef Marine Protected Area following two decades of local management.

Authors:  Mae M Noble; Gregoor van Laake; Michael L Berumen; Christopher J Fulton
Journal:  PLoS One       Date:  2013-01-14       Impact factor: 3.240

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