BACKGROUND: Planktonic bacteria are recognized as important drivers of biogeochemical processes in all aquatic ecosystems, however, the taxa that make up these communities are poorly known. The aim of this study was to investigate bacterial communities in aquatic ecosystems at Ilha Grande, Rio de Janeiro, Brazil, a preserved insular environment of the Atlantic rain forest and how they correlate with a salinity gradient going from terrestrial aquatic habitats to the coastal Atlantic Ocean. METHODOLOGY/PRINCIPAL FINDINGS: We analyzed chemical and microbiological parameters of water samples and constructed 16S rRNA gene libraries of free living bacteria obtained at three marine (two coastal and one offshore) and three freshwater (water spring, river, and mangrove) environments. A total of 836 sequences were analyzed by MOTHUR, yielding 269 freshwater and 219 marine operational taxonomic units (OTUs) grouped at 97% stringency. Richness and diversity indexes indicated that freshwater environments were the most diverse, especially the water spring. The main bacterial group in freshwater environments was Betaproteobacteria (43.5%), whereas Cyanobacteria (30.5%), Alphaproteobacteria (25.5%), and Gammaproteobacteria (26.3%) dominated the marine ones. Venn diagram showed no overlap between marine and freshwater OTUs at 97% stringency. LIBSHUFF statistics and PCA analysis revealed marked differences between the freshwater and marine libraries suggesting the importance of salinity as a driver of community composition in this habitat. The phylogenetic analysis of marine and freshwater libraries showed that the differences in community composition are consistent. CONCLUSIONS/SIGNIFICANCE: Our data supports the notion that a divergent evolutionary scenario is driving community composition in the studied habitats. This work also improves the comprehension of microbial community dynamics in tropical waters and how they are structured in relation to physicochemical parameters. Furthermore, this paper reveals for the first time the pristine bacterioplankton communities in a tropical island at the South Atlantic Ocean.
BACKGROUND: Planktonic bacteria are recognized as important drivers of biogeochemical processes in all aquatic ecosystems, however, the taxa that make up these communities are poorly known. The aim of this study was to investigate bacterial communities in aquatic ecosystems at Ilha Grande, Rio de Janeiro, Brazil, a preserved insular environment of the Atlantic rain forest and how they correlate with a salinity gradient going from terrestrial aquatic habitats to the coastal Atlantic Ocean. METHODOLOGY/PRINCIPAL FINDINGS: We analyzed chemical and microbiological parameters of water samples and constructed 16S rRNA gene libraries of free living bacteria obtained at three marine (two coastal and one offshore) and three freshwater (water spring, river, and mangrove) environments. A total of 836 sequences were analyzed by MOTHUR, yielding 269 freshwater and 219 marine operational taxonomic units (OTUs) grouped at 97% stringency. Richness and diversity indexes indicated that freshwater environments were the most diverse, especially the water spring. The main bacterial group in freshwater environments was Betaproteobacteria (43.5%), whereas Cyanobacteria (30.5%), Alphaproteobacteria (25.5%), and Gammaproteobacteria (26.3%) dominated the marine ones. Venn diagram showed no overlap between marine and freshwater OTUs at 97% stringency. LIBSHUFF statistics and PCA analysis revealed marked differences between the freshwater and marine libraries suggesting the importance of salinity as a driver of community composition in this habitat. The phylogenetic analysis of marine and freshwater libraries showed that the differences in community composition are consistent. CONCLUSIONS/SIGNIFICANCE: Our data supports the notion that a divergent evolutionary scenario is driving community composition in the studied habitats. This work also improves the comprehension of microbial community dynamics in tropical waters and how they are structured in relation to physicochemical parameters. Furthermore, this paper reveals for the first time the pristine bacterioplankton communities in a tropical island at the South Atlantic Ocean.
Microorganisms have large population sizes and show long-distance dispersal, high
reproductive rates and remarkable genetic diversity, suggesting that they can cross
environmental boundaries, including salinity, more frequently than multicellular
organisms [1].
These particularities support the Baas-Becking hypothesis formulated in 1934, summed
up as follows: “Everything is everywhere, but the environment selects”
(revised by Hooper et al.
[2]). Although
this seems logical and plausible, the clustering test performed in
silico by Lozupone and Knight [3] using annotated sequences from
202 globally distributed natural environments demonstrates that salinity is the
major barrier to microbial communities, showing a strong environment-specific
evolution between freshwater and marine bacteria.Until the late 1980's, fresh and saltwater planktonic bacteria were thought to
be ecologically similar, despite minor differences such as some biotic interactions
within the food web and sodium requirement. Salt-dependence in marine bacteria was
not considered a fundamental ecological difference and species distribution and
their physiology were thought to be similar to freshwater bacteria [4].Since molecular methods started to be applied to the study of uncultivated microbial
communities [5],
[6], knowledge
of microbial ecology in aquatic systems has been significantly increased [7]–[11]. The first
difference seen in bacterial community composition in fresh and marine water was the
dominance of β-Proteobacteria in the former, in contrast to the
dominance of α- and γ- subdivisions of Proteobacteria in
the latter [12]–[14]. Most bacterial sequences
retrieved from freshwater environments were neither affiliated with known bacterial
species nor with soil and marine relatives but clustered in a habitat-specific
manner, leading to the conclusion that these were typical freshwater bacteria.
Interestingly, this bacterial cluster presented a cosmopolitan distribution,
including habitats located in different climatic zones [15].Estuarinewaters are dynamic environments due to the mixing of sediments, marine and
freshwater, resulting in salinity and nutrient gradients. Shifts in physical,
chemical, and microbiological properties between freshwater and adjacent coastal
marine environments occur in short periods of time, driven by tides and freshwater
flow, creating an intense abiotic pressure that influences the composition of
bacterioplankton communities [16]. The presence and abundance of typical freshwater and
marine bacterial taxa are closely related with these gradients and also with growth
rates, viral lysis, predation, and retention times [17]–[20]. Long-term adaptability to
different salinity conditions is also indicated by the ability of some organisms to
occur in both marine and freshwater habitats [21]. In spite of a number of
published studies of large estuaries and in silico comparisons
between freshwater and seawater bacterioplankton, very few concerned South American
tropical habitats.The Atlantic rain forest, a species diversity hotspot [22]–[23], represents a substantial
contribution of organic and inorganic material to the coastal waters of the
Southwest Atlantic Ocean. Bacteria and fungi from Atlantic forest habitats have been
analyzed mainly by culture-dependent methods [24]–[27]. By means of 16S rRNA gene
libraries, it has been estimated that millions of new bacterial species exist in the
Atlantic rain forest soil and phyllosphere [28]–[29]. As most of the Brazilian
population lives in the coast, Atlantic forest habitats are greatly impacted by
human activities. The Atlantic rain forest extends along the Brazilian coast from
Rio Grande do Norte to Rio Grande do Sul states and has been reduced to less than
8% of its range [30]. The forest has a well-defined dry winter and rainy
summers with high precipitation levels, with a mean annual rainfall of 1368 mm [31] that greatly
increases river transport. This dynamic hydrology sustains a great biodiversity of
flora and fauna which characterizes the Atlantic forest as a diversity hotspot [22]–[23].One of the few protected areas of the Atlantic rain forest is Ilha Grande island in
Rio de Janeiro state, Brazil (Figure
1). Ilha Grande has some coastal marine and freshwater sites that may be
considered as undisturbed. Based on the construction and analyses of 16S rRNA gene
libraries, we compared bacterioplankton diversity in six representative habitats of
Ilha Grande's aquatic ecosystems in the context of a salinity gradient. Here we
present results that corroborate the idea of divergent evolution and the lack of
transitions between marine and freshwater bacterial communities.
Figure 1
Map of the studied site and the six sampled locations.
The six analysed sites, three freshwater and three marine, are shown in Figure 1: FWS - a water spring
(23°10′57.00″S/44°14′55.19″W); FWR - Parnaioca
river (23°11′21.33″S/44°15′11.08″W); SWP -
Parnaioca beach (23°11′24.77″S/44°15′15.07″W),
just where Parnaioca river flows into; FWM - a mangrove
(23°10′26.98″S/44°17′08.49″W) which, at the time
of sampling, had the communication to the sea closed by a sand barrier; SWA -
Aventureiros beach
(23°11′24.53″S/44°18′58.06″W); SWM - two milles
west from Ilha Grande island near Meros island
(23°12′53.67″S/44°21′55.03″W). Water samples
(5.8 Liters) were collected at 1 m depth (except for the water spring) on
September 7, 2007 for DNA extraction and for abiotic and microbiological
characterization (100 mL). Samples were kept on ice until processed in the
laboratory.
Chemical and microbiological parameters
Chemical data were determined in triplicates by standard oceanographic methods.
Temperature, salinity, and pH were determined at the moment of sample collection
using a field thermometer, a hand-held refractometer (Leica) and pH strips.
Ammonia was measured by the indophenol method [32], nitrite by diazotation
[33]
and nitrate by reduction in a Cd-Cu column followed by diazotation [33]. Total
phosphorus was evaluated by acid digestion to phosphate and silicate by reaction
with molibdate [33].Bacterial abundance was determined by flow cytometry [34] and bacterial production
by 3H-leucine incorporation [35]–[37]. Specific
production (SP) is an index calculated as the ratio Microbial Production versus
Microbial Abundance [38] that allows comparisons of secondary productivity
between environments with differences in prokaryotic counts.
DNA extraction
The water samples were filtered through 0.2 µm Sterivex filters (Millipore,
Bedford, MA, USA) after filtration through 3.0 µm to separate free-living
microbes from larger organisms and particles. Total cellular nucleic acids were
isolated by cell lysis with proteinase K and SDS, followed by phenol-chloroform
extraction [39]. DNA integrity was checked on a 1% (w/v)
agarose gel that was subsequently stained with Syber Green (FMC Bioproducts,
Rockland, ME, USA) and the gel image was digitalized with Storm Image Scanner
(GE Healthcare, Little Chalfont, UK).
Bacterial 16S rRNA gene library construction
PCR was performed in 50 µl reaction mixtures (2.5 mM MgCl2, 0.2
mM deoxynucleoside triphosphates, 1 ng of each
primer.µl−1, 2.5 U of High Fidelity
Taq DNA polymerase [Promega], 1× PCR buffer
and 200 ng of each environmental DNA sample, using the universal bacterial
primers 27BF (5′-AGAGTTTGATCCTGGCTCAG-3′) [40] and 907RAB
(5′-TTTGAGTTT
MCTTAACTGCC-3′) [41]. PCR amplification began
with a 5 min denaturing step at 94°C; this was followed by 25 cycles of
94°C for 90 seconds, 50°C for 90 seconds, and 72°C for 2 min. The
final cycle was an extension at 72°C for 5 min. PCR products were
concentrated and purified with a GFx PCR DNA and Gel Band Purification Kit (GE
Healthcare) after electrophoresis on a 1% (w/v) agarose gel. PCR products
were cloned into the pGEM-T cloning vector (Promega) and used to transform
competent E. coli DH10B cells. Positive colonies for the
blue-white colony screen used for this vector were picked and frozen at
−70°C. Six 16S rRNA gene libraries were constructed from different
environmental DNA samples.
Sequence analyses and taxa identification
Approximately 192 clones from each clone library were submitted to sequence
analysis. Plasmidial DNA from each clone (400 ng) was prepared and
PCR-sequencing reactions with primer 27BF were carried out using the DYEnamic ET
terminator cycle-sequencing kit (GE Healthcare). Partial 16S rRNA sequences were
obtained by capillary electrophoresis on a MegaBace1000 DNA analysis system (GE
Healthcare). Chromatograms were transformed into Fasta format with Phred
software [42]
and sequences with less than 300 bp and chimeras were removed prior to further
analysis using MOTHUR. A total of 831 valid sequences with approximately 642 bp
were compared with sequences in the Ribosomal Database Project II [43]. Sequences
were also analyzed by BLAST [44] searches in GenBank database (http://www.ncbi.nlm.nih.gov) and were aligned with
representative bacterial sequences obtained from the public databases using
ClustalX software [45]. The partial 16S rRNA gene sequences generated in
this study have been deposited in GenBank under accession numbers
FJ717864-FJ718690. All submissions conform to the “Minimum information
standards” recommended by the Genomic Standards Consortium [46].
Biodiversity and phylogenetic analyses
Re-sampling and adjustment of the total number of sequence reads to identical
sequencing depth was done before analysis [47]. Sequences were clustered
as OTUs at an overlap identity cutoff of 97% or 80% by MOTHUR
software [48]. Richness and diversity statistics including the
nonparametric richness estimators ACE, Chao1 and the Shannon diversity index
were calculated. The diversity of OTUs and community overlap were also examined
using rarefaction analysis and Venn diagrams. Phylogenetic trees were
constructed for marine and freshwater libraries with reference sequences from
GenBank by the neighbor-joining algorithm based on distances calculated by the
Kimura-2 method. This analysis was performed with the MEGA4 program [49] and
bootstrap analysis with 1000 replications was used. Tree topology and
distribution of hits along the tree were uploaded to the UniFrac computational
platform [3], [50]. UniFrac is a beta diversity metric analysis that
quantifies community similarity based on phylogenetic relatedness. In order to
visualize distribution patterns of bacterial communities we used the UniFrac
metric to perform PCA highlighted by significance. Libraries were sub-sampled
randomly to test the consistency of the results.
Statistical comparison between 16S rRNA libraries
In an attempt to determine the differences between clone libraries, we applied
LIBSHUFF statistics [51] that uses Monte Carlo methods to generate homologous
and heterologous coverage curves. Sequences were randomly shuffled 999 times
between samples prior to the distance between the curves being calculated using
the Cramér-von Mise statistic test. The DNADIST program of the PHYLIP
package, using the Jukes-Cantor model for nucleotide substitution was used to
generate the distance matrix analyzed by LIBSHUFF.
Results
Abiotic and microbiological parameters
Abiotic and microbiological parameters from each sampling site are shown in Table 1. Temperatures varied
from 22 to 28°C. The low salinity found at Parnaioca beach (SWP) is
explained by the input of freshwater from Parnaioca River to this site. In the
same way, salinity in the mangrove (FWM) was typical of a freshwater environment
due to strong rainfall that fell a few days before sampling which increased
river input and blocked the communication of the mangrove with the sea by a sand
barrier. For further analysis, the water spring, river and mangrove habitats
were considered as freshwater environments, and Parnaioca, Aventureiros beach
and Meros Island as marine environments. All are representative samples of the
dynamic environmental conditions which characterize the Atlantic rain forest.
Analysis of nitrogenated compounds showed the highest ammonia concentration at
the mangrove site, FWM, while nitrate was the main compound in Parnaioca river,
FWP. Nitrite concentrations ranged between 0.33 and 0.54 µM and silicate
concentrations reached high values in the mangrove. Freshwater samples were more
acidic than marine ones, with pH values ranging from 5.5 to 6.5 (Table 1).
Sal, salinity;T, temperature;TP, total phosphorous;NH3, ammonia;NO2
−, nitrite;NO3
−, nitrate;SiO2, silicon;MA, microbial abundance;MP, microbial production; andSP, specific production.FWS – Parnaioca freshwater spring;
FWP – Parnaioca river; FWM
– mangrove; SWP – Parnaioca beach;
SWA – Aventureiros beach; SWM
– seawater near Meros island.Prokaryotic counts were in the range of 106 cells per mL, being most
abundant in the mangrove. Bacterial production values, which mean the
heterotrophic activity, varied from 0.26 to 3.44 µg
C.L−1.h−1. Although the highest
heterotrophic activity was found in the mangrove, the bacterial production
versus bacterial counts ratio (specific productivity - SP) was higher in the
river. Marine samples presented SP values varying from 2.88 to 3.54 ag
C.cell−1h−1 (Table 1).
Clone library coverage, richness and diversity
The number of OTUs from each site as well as richness and diversity indexes
calculated by MOTHUR [48] are shown in Table 2. The coverage of each library was
calculated using the abundance-based coverage estimator (ACE). We also grouped
freshwater (FWS, FWR, FWM) and marine sites (SWP, SWA, SWM) to perform these
calculations. In order to account for uneven sampling efforts, the same number
of sequences was randomly selected from each sample. The Parnaioca water spring,
FWS, library had higher richness based on ACE, Chao1 and H′. Parnaioca
river, the mangrove and Meros island libraries had the lowest richness values,
but the H′ values were not far from the other libraries. Although no major
differences among marine samples were found, SWP was the richest sample.
Interestingly, the comparison between marine and freshwater libraries showed
that, at 97% similarity level, bacterial richness and diversity of fresh
and seawater communities are similar.
Table 2
Species richness estimates and diversity of 16S rRNA gene sequences
as determined by MOTHUR software.
FRESHWATER
SEAWATER
FW
FWS
FWP
FWM
SW
SWP
SWA
SWM
aOTUs
269
89
56
58
219
90
63
57
bACE
2457
1024
184
101
762
233
187
296
Chao1
1018
564
130
85
543
220
134
252
cH′
5.33
4.43
3.72
3.83
5.07
4.42
3.90
3.69
Number of unique OTUs defined by using the furthest neighbor
algorithm in MOTHUR at 97% similarity.
Abundance based coverage estimator (ACE).
Shannon-weaver index of diversity (H′).
FWS – Parnaioca freshwater spring;
FWP – Parnaioca river; FWM
– mangrove; SWP – Parnaioca beach;
SWA – Aventureiros beach; SWM
– seawater near Meros island. FW and
SW were calculated by merging the respective
libraries.
Number of unique OTUs defined by using the furthest neighbor
algorithm in MOTHUR at 97% similarity.Abundance based coverage estimator (ACE).Shannon-weaver index of diversity (H′).FWS – Parnaioca freshwater spring;
FWP – Parnaioca river; FWM
– mangrove; SWP – Parnaioca beach;
SWA – Aventureiros beach; SWM
– seawater near Meros island. FW and
SW were calculated by merging the respective
libraries.All rarefaction curves at a high cutoff phylogeny resolution (97%) show
that the diversity is very high and the total coverage of bacterial richness was
not achieved. A decline in the rate of OTU detection at 80% cutoff
indicates that the most dominant bacterial phyla have been detected for
freshwater and marine samples. Rarefaction analysis at this cut-off revealed
that freshwater environments were more diverse than marine ones, as well as at
97% cutoff (Figure
2). Additionally, Venn diagram shows that no OTUs are shared between
fresh and marine water samples at species level (97%) indicating that the
bacterial communities are completely different in these two kinds of
environment.
Figure 2
Rarefaction analysis of 16S rDNA clone libraries from Ilha Grande
using a distance level of 80% (A, B and E) and 97% (C, D
and F).
In A and B or C and D each freshwater or marine water libraries are
plotted, respectively. In E and F the three samples of seawater and the
three samples of the freshwater were joined. FWS – Parnaioca
freshwater spring; FWP – Parnaioca river; FWM – mangrove;
SWP – Parnaioca beach; SWA – Aventureiros beach; SWM –
seawater near Meros island.
Rarefaction analysis of 16S rDNA clone libraries from Ilha Grande
using a distance level of 80% (A, B and E) and 97% (C, D
and F).
In A and B or C and D each freshwater or marine water libraries are
plotted, respectively. In E and F the three samples of seawater and the
three samples of the freshwater were joined. FWS – Parnaioca
freshwater spring; FWP – Parnaioca river; FWM – mangrove;
SWP – Parnaioca beach; SWA – Aventureiros beach; SWM –
seawater near Meros island.
Bacterial Groups
In order to reveal bacterial phyla composition in such diverse communities,
sequences from each library were classified with the RPD classifier tool
(http://rdp.cme.msu.edu/classifier). Marine samples showed a
higher abundance of Cyanobacteria,
Alphaproteobacteria while freshwater samples were dominated
by Betaproteobacteria (Figure 3).
Gammaproteobacteria were found mainly in the river (FWP)
and Meros island (SWM) sites. A minor proportion of
Deltaproteobacteria was observed in the FWP and mangrove
(FWM) libraries. Actinobacteria were seen only in the river and
mangrove environments, being more abundant in the latter one.
Bacteroidetes were present in all the sites, except at the
water spring. The newly described group OD1 was only found at the water spring
and mangrove sites. A greater percentage of unclassified sequences were found in
marine samples. Freshwater samples were richer at the phylum level than marine
ones, with nine and four phyla represented, respectively.
Figure 3
Distribution of sequences in bacterial phyla classified by the
Classifier tool at RDP Database.
Clones from freshwater libraries are shown in A and from seawater are
shown in B. FWS – Parnaioca freshwater spring; FWP –
Parnaioca river; FWM – mangrove; SWP – Parnaioca beach; SWA
– Aventureiros beach; SWM – seawater near Meros island.
Distribution of sequences in bacterial phyla classified by the
Classifier tool at RDP Database.
Clones from freshwater libraries are shown in A and from seawater are
shown in B. FWS – Parnaioca freshwater spring; FWP –
Parnaioca river; FWM – mangrove; SWP – Parnaioca beach; SWA
– Aventureiros beach; SWM – seawater near Meros island.
Phylogenetic Analysis
The phylogenetic tree allowed us to recognize the bacterial phylotypes that
compose the groups listed above (Figure 4). The tree shows that most of our sequences were affiliated
to environmentaluncultured bacterial species. In freshwater samples,
Betaproteobacteria sequences were affiliated to uncultured
bacteria from lakes, freshwater ponds, aquifers, rivers, and subsurface
freshwater. A great number of sequences from the river site were closely related
to Acidovorax sp. The Acinetobacter was the
most represented group among Gammaproteobacteria. Members of
Bacteroidetes were not found in the water spring while they
occurred in high percentage in the mangrove and river sites. Among all
freshwater sequences, only two mangrove clones fell into the
Alphaproteobacteria clade, being related to
Rhodobacteriaceae retrieved from a Taiwan mangrove and
river sediments, and two other OTUs fell into the
Deltaproteobacteria group. At the mangrove,
Actinobacteria were mainly represented by
Microbacteriaceae. Additionally, in the mangrove and river
libraries we found members of the recently proposed OD1 group, affiliated with a
eutrophic lake bacterium. The Cyanobacteria found in the
mangrove were related to marine species, different from those of the water
spring site which were more related to drinking water system bacteria.
Figure 4
Phylogenetic tree of bacterial clones obtained in the freshwater or
seawater locations.
Reference sequences from GenBank (in bold). OTUs were
defined by using a distance level of 3% by using the furthest
neighbor algorithm in MOTHUR. One access number from each OTU is
displayed. The tree topology is based on neighbor joining and bootstrap
analysis was performed with 1000 replications. Bootstrap value >50
and representative OTUs are shown. More detailed trees can be found in
Figures S1 and S2.
Phylogenetic tree of bacterial clones obtained in the freshwater or
seawater locations.
Reference sequences from GenBank (in bold). OTUs were
defined by using a distance level of 3% by using the furthest
neighbor algorithm in MOTHUR. One access number from each OTU is
displayed. The tree topology is based on neighbor joining and bootstrap
analysis was performed with 1000 replications. Bootstrap value >50
and representative OTUs are shown. More detailed trees can be found in
Figures S1 and S2.Phylogenetic analysis of the marine libraries revealed that
Cyanobacteria were well represented by
Prochlorococcus and Synecchococus, which
is expected for coastal marine samples. Sequences from marine samples were
mainly represented by Alphaproteobacteria. In this group, a
representative clade with OTUs related to uncultured bacteria from Chesapeake
Bay (USA), Mallorca Island (Spain), and Guanabara Bay (Brazil) and other clades
with OTUs related to genera commonly found in marine waters, like
Roseobacter and Ruegeria, were observed.
The distribution of OTUs within Gammaproteobacteria followed
this pattern, with a representative clade formed by uncultured bacteria from
marine samples and by Neptuniibacter and
Oceanospirillum species and another clade related to
Alteromonas.
Library Comparison
The comparison by LIBSHUFF statistics revealed that bacterial community
composition differed significantly between marine and freshwater sampling sites.
We obtained p<0.0001 for the comparisons of each marine library to each
freshwater ones and also for the comparison of all marine sequences against all
freshwater ones. Nevertheless, freshwater libraries were different among
themselves whereas marine libraries were statistically similar
(p = 0.0003 for the comparison between Parnaioca and
Aventureiros, p = 0.0004 for Parnaioca and Meros, and
p = 0.1718 for Aventureiros and Meros).Through a scatter plot of the first two principal coordinates by the UniFrac
analysis (Figure 5), PC1 and
PC2 explained 9.5% and 7.4% of the data variation, respectively.
The randomly constructed sub-libraries were grouped according to the original
libraries. Marine libraries were separated from freshwater ones in the plot by
PC1. The three marine libraries grouped together showing a high similarity with
each other, whereas freshwater samples were dispersed in the plot and seem to be
different among them. Additionally, the mangrove FWM clustered between
freshwater and marine samples along the PC1 axis, which divides saline and other
freshwater environments. This result corroborates the LIBSHUFF analysis, wherein
only marine libraries reached high p values.
Figure 5
Match between bacterial communities in freshwater and seawater
samples.
Principal coordinates plots (PCA) were generated using the pair wise
unweighted UniFrac distances. Freshwater in open symbols: FWS
(△) – water spring; FWP (○) –
Parnaioca river, FWM (□) - mangrove. Marine samples in filled
symbols: SWP (•) – Parnaioca beach, SWA (▪) –
Aventureiros beach, SWM (▴) – Meros island.
Match between bacterial communities in freshwater and seawater
samples.
Principal coordinates plots (PCA) were generated using the pair wise
unweighted UniFrac distances. Freshwater in open symbols: FWS
(△) – water spring; FWP (○) –
Parnaioca river, FWM (□) - mangrove. Marine samples in filled
symbols: SWP (•) – Parnaioca beach, SWA (▪) –
Aventureiros beach, SWM (▴) – Meros island.
Discussion
In this work we investigated for the first time the bacterioplankton diversity in the
tropical island, Ilha Grande. This environment suffers very low anthropogenic impact
and is located in the Brazilian coast at the South Atlantic Ocean. The differences
found in community composition add new knowledge to planktonic bacteria distribution
in freshwater and coastal marine ecosystems.Many abiotic parameters, such as nutrient concentration and organic matter, are
thought to influence the composition of natural bacterioplankton communities [52]–[53]. In the same
manner, autochthonous biological activity can modify water chemical features [54]. In this study,
nutrient concentrations in marine samples were similar to Sepetiba Bay values but
lower than in the highly eutrophic Guanabara Bay [55], [39]. Both are economically
important water bodies which lie geographically close to Ilha Grande. In the
mangrove environment, high bacterial production contrasts with low specific
productivity. A possible explanation is that many marine cells that entered into the
mangrove are not active anymore because of the change in salinity. In opposition,
the river community, that reached higher specific productivity values, seems to be a
well-adapted community, which probably has a large supply of oxygen available for
aerobic metabolism. In estuaries, shifts in bacterioplankton community composition
along salinity gradients are related to residence and community doubling times [16], [18]. Specific
productivity and bacterial abundance estimates allow microbial communities to be
compared and can be used to measure the metabolic status of the planktonic microbes
[38]. A
particular estuarine community is formed in intermediate salinities when average
metabolic status and, consequently, the doubling times are shorter than residence
times. Although specific productivity values for Parnaioca river and all marine
samples are around one order of magnitude higher when compared to a previous study
in Guanabara bay, an urban, pollution impacted Brazilian bay [56], there is no water residence
time as the river water flows directly into the sea without a transition area,
causing an abrupt change in salinity, and giving no time for the development of
local bacterial species. The consequence is a complete shift in community
composition when Parnaioca river and Parnaioca beach are compared, despite the close
proximity (50 m) of these two sites.Typical marine clades, such as Cyanobacteria and the
Alpha and Gamma subdivisions of
Proteobacteria were more represented in marine coastal and
open-sea samples, not just in our data but also in the literature [16], [57]. However, in
contrast to previous studies that found a low relative abundance of phototrophic
Cyanobacteria compared to heterotrophic bacteria [58]–[59], members of
Synechococcus and Prochlorococcus were one of
the most abundant groups in Ilha Grande marine samples.The most abundant group in water spring, river, and mangrove sites were the
Betaproteobacteria, a typical freshwater clade [12] that was not
recorded in marine samples. Recovery of 16S rRNA gene clones affiliated to
Betaproteobacteria is common in libraries constructed from
coastal samples, but few to no Betaproteobacteria have been
reported by open ocean surveys [16], [57], [60]–[62]. These findings lead to the idea that bacterioplankton
represented by these lineages have a probable freshwater origin and are adapted to
coastal marine environments and could be representative of bacterioplanckton
phylotypes that transit between freshwater and marine habitats [63]. However, the present data
clearly do not support this proposal, since no Betaproteobacteria
was retrieved from our marine libraries.The Gammaproteobacteria and Bacteroidetes clades
were well represented in both saline and freshwater environments. This might be a
consequence of the presence of closely related marine phylotypes of common
freshwater taxa [59]. In fact, the bacterial phylotypes belonging to these two
clades encompass distantly related organisms in freshwater and marine samples, as
seen in the phylogenetic trees, indicating an evolutionary separation between these
marine and freshwater lineages [1]. In the marine sites, several
Gammaproteobacteria and Bacteroidetes related
OTUs were affiliated to sequences from marine habitats of different geographic
areas, indicating that these are worldwide distributed bacteria.Our data show a strong spatial heterogeneity of bacterial community composition in
Ilha Grande. Most libraries, except when the three marine libraries are compared
among themselves, are statistically different to each other. This most likely
reflects the remarkable abiotic differences of these environments, especially
salinity. This was also observed by Vieira et al [56] in Guanabara Bay, but contrasts
to the results found for Chesapeake Bay (USA), where only temporal variation was
significant [64]. The
water spring is an interesting case, as it is highly different from the other
environments, including other freshwater habitats. This may be explained by a strong
influence of soil, plant-associated and underground water bacterial communities.As seen by Lozupone [3], our data showed a clear separation between freshwater and
marine libraries. The PC1 axis represented the saline barrier which segregates
marine and freshwater bacterial communities. In fact, salinity is pointed out as the
major environmental determinant of aquatic microbial community composition, rather
than extremes of temperature, pH, or other physical and chemical factors by the
global pattern of the bacterial diversity [3]. Recently, deep evolutionary
divergence between marine and freshwater SAR11 lineages was seen not only by means
of 16S phylogenetic constructions and Unifrac analysis, but also by Fragment
Recruitment Analysis using metagenomic libraries from environments of different
salinities [65].
Although our marine samples clustered together in the PCA analysis, freshwater ones
were dispersed in the plot, showing a higher heterogeneity among these environments.
Interestingly, mangrove communities cluster along the PC1 axis, between saline and
other freshwater environments. This could be a result of the recent changes in
salinity due to a sand barrier formation and the intense rainfall that brought a
large input of freshwater to this habitat. The dispersion seen among the freshwater
environments has been observed in other studies [3], [65] and is probably the result of
complex interactions between biotic and abiotic factors, not only salinity, which
ultimately shape communities in natural habitats.Community composition changes across salinity gradients probably lead to changes in
expression patterns that can modify the way in which organisms interact with each
other and with the environment. In fact, seasonal changes in bacterial gene
expression patterns across the salinity gradient in the Columbia river was recently
observed by microarrays [66].In summary, our results support the notion of ecologically defined bacterial species
and processes and increase our knowledge about the relationships between bacterial
diversity and environmental parameters in a tropical region.Phylogenetic tree of bacterial clones obtained in the freshwater
locations. Reference sequences from GenBank (in
bold). OTUs were defined by using a distance level of 3% by
using the furthest neighbor algorithm in MOTHUR. The tree topology is based
on neighbor joining and bootstrap analysis was performed with 1000
replications. Bootstrap value <50 and singletons are not shown. FWS
(△) – Parnaioca freshwater spring; FWP (○)
– Parnaioca river; FWM (□) – mangrove.(TIF)Click here for additional data file.Phylogenetic tree of bacterial clones obtained in seawater
locations. Reference sequences from GenBank (in
bold). OTUs were defined by using a distance level of 3% by
using the furthest neighbor algorithm in MOTHUR. The tree topology is based
on neighbor joining and bootstrap analysis was performed with 1000
replications. Bootstrap value <50 and singletons are not shown. SWP
(•) – Parnaioca beach; SWA (▪) – Aventureiros beach;
SWM (▴) – seawater near Meros island.(TIF)Click here for additional data file.
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