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Antonie van Leeuwenhoek 81: 487–507, 2002. © 2002 Kluwer Academic Publishers. Printed in the Netherlands. 487 Characterizing man-made and natural modifications of microbial diversity and activity in coastal ecosystems Hans W. Paerl1,∗ , Julianne Dyble1 , Luke Twomey1 , James L. Pinckney2 , Joshua Nelson3 & Lee Kerkhof3 1 Institute of Marine Sciences, University of North Carolina at Chapel Hill, 3431 Arendell Street, Morehead City, NC 28557, USA; 2 Department of Oceanography, Texas A & M University, College Station, TX 77843-3146, USA; 3 Institute of Marine and Coastal Sciences, Rutgers University, New Brunswick, NJ 08901-8521, USA (∗ Author for correspondence; E-mail: [email protected]) Key words: Bacteria, climate change, eutrophication, microbial consortia, nutrient cycling, phytoplankton, pollution, water quality Abstract The impacts of growing coastal pollution and habitat alteration accompanying human encroachment are of great concern at the microbial level, where much of the ocean’s primary production and biogeochemical cycling takes place. Coastal ecosystems are also under the influence of natural perturbations such as major storms and flooding. Distinguishing the impacts of natural and human stressors is essential for understanding environmentally-induced change in microbial diversity and function. The objective of this paper is to discuss the applications and merits of recently developed molecular, ecophysiological and analytical indicators and their utility in examining anthropogenic and climatic impacts on the structure and function of coastal microbial communities. The nitrogen-limited Neuse River Estuary and Pamlico Sound, North Carolina are used as examples of ecosystems experiencing both anthropogenic (i.e., accelerating eutrophication) and climatic stress (increasing frequencies of tropical storms and hurricanes). Additional examples are derived from a coastal monitoring site (LEO) on the Atlantic coast of New Jersey and Galveston Bay, on the Gulf of Mexico. In order to assess structure, function, and trophic state of these and other coastal ecosystems, molecular (DNA and RNA-based) characterizations of the microbial taxa involved in carbon, nitrogen and other nutrient transformations can be combined with diagnostic pigment-based indicators of primary producer groups. Application of these methods can reveal process-level microbial community responses to environmental variability over a range of scales. Experimental approaches combined with strategic monitoring utilizing these methods will facilitate: (a) understanding organismal and community responses to environmental change, and (b) synthesizing these responses in the context of ecosystem models that integrate physical, chemical and biotic variability with environmental controls. Introduction We have entered a new millennium with the notable distinction that more than 70% of the world’s human population resides within 100 km of the coast (Vitousek et al. 1997). Understanding man-induced ecological change and the subsequent impacts on biodiversity, coastal water quality, habitat and fisheries resources are major research and management challenges worldwide. Deterioration of coastal ecosystems appears to be accelerating, but there is a paucity of knowledge on how complex aquatic communities are being altered in structure and function. To further complicate matters, anthropogenic stresses are often accompanied by large-scale climatic perturbations, possibly signaling a period of climatic change (Gray et al. 1996; Landsea et al. 1998; Goldenberg et al. 2001). During Fall 1999, Hurricanes Dennis, Floyd and Irene inundated the eastern seaboard of the USA. Coastal North Carolina received up to 1 m of rainfall, causing a 200–500 year flood in the watershed of the Pamlico Sound, the US’s 2nd largest estuarine system. Sediment and nutrient-laden floodwaters displaced over 80% of the Sound’s volume, depressed salinity by 70%, and accounted for half the annual nitrogen (N) load to this N-sensitive system 488 Figure 1. Top frame: SeaWiFS satellite image (23 Sept. 1999) of brown sediment-laden waters from Hurricane Floyd discharge entering the Pamlico Sound system, coastal North Carolina, USA (figure from Paerl et al. 2001). The location of the monitoring station from which data for salinity (middle frame) and chlorophyll a (lower frame) are presented before and after the fall 1999 hurricanes is shown (x). Middle frame: Salinity (in practical salinity units or PSU) at 0.5m depth at reference station "x" in the western Pamlico Sound. Landfall of the 1999 hurricanes is shown by arrows and the initial letter of each hurricane (D=Dennis, F=Floyd, I=Irene). Lower frame: Chlorophyll a, an indicator of phytoplankton biomass, in near surface waters of station “x”. Values are presented as µg Chlorophyll a per liter. (Figure 1) (Paerl et al. 2000, 2001). Ecological effects included hypoxic (<4 mg O2 L−1 ) bottom waters, a 3fold increase in suspended microalgal (phytoplankton) biomass (Figure 1), altered fish distributions, reduced catches, and an increase in fish disease. Predicted elevated hurricane activity may promote long-term biogeochemical and trophic change in this and other coastal fisheries nursery habitats. Distinguishing and integrating the impacts of natural from man-made stressors is difficult but essential to understanding and managing coastal biotic resources. Because bacteria and microalgae have fast growth rates and dominate marine primary production and nutrient cycling, they are direct, sensitive indicators of ecosystem status and change. A change in supply rates of nutrients and other pollutants (i.e., heavy metals, synthetic organics), sediment loads, hydrology and optical quality of impacted waters frequently translates into altered microbial community structure and function (Figure 2). Changes in microbial populations often emerge well before signs appear in larger, higher ranked consumers. For example, specific algal taxa, including harmful (toxic, hypoxia-generating) species are excellent indicators of ecological change (i.e., eutrophication) in response to perturbations. As such, microbial indicators of coastal ecosystem health are useful for coastal process-related research and management. Here, we discuss how complex interactive microbial producer, nutrient cycling and consumer assemblages, or consortia, respond and adapt to environmental perturbations. Using microbial indicators as tools, we will investigate how anthropogenic stressors interact with natural forcing features to determine the diversity, distribution, and activities of consortia in estuarine and coastal ecosystems experiencing increasing nutrient loading and climatic perturbations. We stress that the case studies presented below are limited by available background knowledge, advancement, applicability and comprehensiveness of techniques and approaches. However, we are encouraged by the improved knowledge of ecosystem dynamics they have thus far provided. Included are the: (1) the Neuse River Estuary, and downstream Pamlico Sound, North Carolina, (2) a nearshore mid-Atlantic intensive monitoring location, LEO, located off the coast of New Jersey, and (3) Galveston Bay, Texas, located on the northern Gulf of Mexico (Figure 3). 489 Figure 2. Conceptual diagram, showing the interactions between nutrient (emphasizing nitrogen, the limiting nutrient in coastal waters) loading, physical forcing features (i.e., irradiance, mixing and transport), phytoplankton productivity and community structure, bacterial community composition and activity, and higher trophic level consumers (i.e., grazers, fish). These factors impact and modulate ecosystem responses to chronic and acute environmental perturbations. The region inside the dashed box indicates ecosystem-level interactions. The lines and arrows depict major fluxes and directions of nutrient and organic matter transfer in the ecosystem. Specifically, we have demonstrated those interactions mediating hypoxia (low oxygen conditions), a major and often detrimental ecosystem-level response to nutrient-enhanced primary production, or eutrophication. Case study #1 – The Neuse River/Pamlico Sound System The Pamlico Sound (PS) and its sub-estuaries form the US’s largest lagoonal ecosystem and is an important mid-Atlantic and Southeast fisheries nursery (Figures 1 and 3). The Neuse River Estuary (NRE) is a key tributary of the PS and is downstream of rapidly expanding agricultural (hog, poultry and rowcrop operations), urban (Raleigh-Durham-Research Triangle) and industrial activities in North Carolina coastal watersheds. As is true for most estuarine and coastal waters, nitrogen (N) is the nutrient controlling primary production in the NRE and PS (Paerl 1983; Boyer et al. 1994; Paerl et al. 1995, 1998, 2001). Growing non-point N discharge associated with agricultural and urban expansion has led to accelerating primary production, or eutrophication, accompanied by nuisance algal blooms, hypoxia, toxicity and food web alterations in this system (Copeland & Gray 1991; Paerl et al. 1995, 1998). The amounts, ratios and modes (episodic vs. chronic) of nutrient loading play important roles in structuring phytoplankton communities (Harrington 1999; Pinckney et al. 2001). Diffuse, non-point sources contribute approximately 80% of externally-supplied, or ‘new’ N to the system, with wastewater and industrial effluent point sources contributing the rest. Among ‘new’ N inputs to the NRE, atmospheric deposition of N (AD-N) from fossil fuel combustion (NOx ) and agricultural emissions (NH3 ) accounts for approximately 30% (Whitall & Paerl 2001). Direct AD-N to the estuary surface contributes additional N. The percent ‘new’ N input attributable to AD-N may be even greater further downstream in the PS, since most land-based N sources are ‘stripped’ during transit through the N-limited estuaries to the Sound. The recent growth of intensive animal operations in eastern North Carolina (from <1 million hogs in the late 1980s to >11 million in the late 1990s) has led to a precipitous rise in N-rich animal waste, which is stored in open liquid waste lagoons and is applied to land. This form of ‘waste management’ causes 490 Figure 3. Locations of the three US coastal case study sites that are discussed. These include the LEO long-term environmental monitoring site off the Atlantic coast of New Jersey, the Pamlico Sound system in coastal North Carolina, and Galveston Bay, Texas, an estuary on the northern coast of the Gulf of Mexico. ammonia volatilization, which is suspected of being a large local and regional atmospheric N emission source. A multi-decadal record of AD-N (wet deposition) at a National Acid Deposition Program (NADP) site in Sampson County, eastern North Carolina (NC 35) reveals a three-fold rise in AD-NH4 relative to AD-NOx (Paerl and Whitall 1999). AD-N and surface N runoff have increased in this region. The changing amounts and input ratios of biologically-available forms of N may affect both phytoplankton and bacterioplankton species compositional responses (Pinckney et al. 2002), which has potential trophodynamic and biogeochemical ramifications. Case study #2 – The Long Term Ecosystem Observatory (LEO-15) The Mid Atlantic Bight (MAB) National Undersea Research Center has established a Long-Term Ecosystem Observatory site (LEO-15) on the continental shelf, off the New Jersey Coast (Figure 3). LEO-15 is centered on a sand ridge in 15 m of water approximately 20 km offshore from the Rutgers University Marine Field Station. These sand ridges are found throughout much of the continental shelf of the US east coast (McBride & Moslow 1991) and include both sandy and finer grain sediments. Additionally, the LEO-15 study area is near one of the most pristine estuarine systems in the northeast US and is part of an observational network able to provide the realtime data necessary for understanding how oscillations in the physical environment drive both the chemical environment and biological activity within the MAB. The LEO-15 site is very dynamic. Major physical changes include the warming of waters during the springtime, which is correlated with increased phytoplankton activity. Phytoplankton biomass levels remain low throughout fall and winter. During spring and summer there are episodic phytoplankton blooms dominated by diatoms. MAB also experiences episodic upwelling events. Off the coast of New Jersey, southwesterly winds result in the upwelling of offshore bottom waters into well-lit surface layers (Hicks & Miller 1980). Upwelling is observable in satellite imagery, and can last for days to weeks, long enough to result in phytoplankton blooms and subsequent organic matter accumulation. Additionally, these upwelling events stimulate recurring hypoxia offshore of many of the estuaries/inlets of NJ (Pearce et al. 1985; 491 (Santschi 1995). Although Galveston Bay is one of the most industrialized estuaries in the Gulf of Mexico, trace metal concentrations in the sediments, water column, and biota are similar to those in more pristine bays elsewhere (Morse et al. 1993). The shallow bay waters are susceptible to rapid changes in water turbidity caused by the resuspension of silty sediments following moderate wind events that blow across the Bay. The increased turbidity reduces the amount of light available for phytoplankton photosynthesis while simultaneously increasing the nutrient concentrations in the water column (Warnken 1998). Figure 4. Diagrammatic representation of the ChemTax approach for determining the contributions of phytoplankton functional groups to chlorophyll a-based total phytoplankton biomass. For a detailed description of this approach, see Mackey et al. (1996). Glenn et al. 1996), demonstrating the importance of microbial remineralization. Case study #3 – Galveston Bay, Gulf of Mexico Galveston Bay, the second largest estuary in the Gulf of Mexico, encompasses 1554 km2 of water surrounded by 526 km2 of marshland (Figures 3 and 4). The bay is shallow (∼2 m) and receives freshwater inputs from the Trinity (83%) and San Jacinto (8%) Rivers. These rivers deliver dissolved organic matter (DOM, 5–8 mg C l−1 ) and suspended particulate organic matter (POM, 4–200 mg l−1 ) to the Bay (Benoit et al. 1994; Guo & Santschi 1997). The tidal range in the bay averages 40 cm, is primarily diurnal, and fosters the long hydraulic residence time of the estuary (40– 88 days) (Santschi 1995). Winds are more important than tides for circulation in Galveston Bay. Phytoplankton dominate primary production in Galveston Bay. The most common algal functional groups are diatoms, cyanobacteria, chrysophytes, and cryptophytes (Sheridan et al. 1988; Örnólfsdóttir et al. pers. comm.). Dinoflagellates, chlorophytes, and euglenoids are occasionally abundant, but on an annual basis are minor components in the phytoplankton community. Seasonal cycling of nutrients in Galveston Bay has been described in Santschi (1995) and Twilley et al. (1999). Nutrient inputs from the Trinity River extend well into Trinity Bay, especially during spring periods of high river discharge. Nitrate concentrations are inversely correlated with salinity and benthic regeneration of P leads to a P maximum in late summer Molecular approaches to monitoring biological change in aquatic systems Standard approaches for the identification of biogeochemically- and ecologically-important taxa, such as selective culture methods, require knowledge of their ecological niches; such information is not easily determined. As a consequence, only a small portion (<1%) of microorganisms from the environment are believed to be cultivatable using routine techniques (Head et al. 1997; Suzuki et al. 1997). However, molecular characterization techniques obviate the need for culture-based analyses. These techniques characterize a mixture of complex biomolecules in order to discern the members of the microbial commmunity (both eukaryotic and prokaryotic). For our purposes, ‘molecular approaches’ will be defined as any procedure that tracks a specific cellular constituent which can differentiate the various ‘players within the microbial community. These biomarkers can include lipids, proteins, and nucleic acids. Due to space limitations, not all biomarkers will be considered here. However, a number of excellent reviews exist for many of the biogeochemical processes discussed. Diagnostic photopigments Microalgal biomass may be estimated by photopigment content. To this end, chlorophyll a (Chl a), which is common to all microalgae and higher plants, has been used for many years. It is easily and sensitively measured by spectrophotometry and/or fluorometry. There are, however, substantial differences in cellular Chl a content among and within microalgal and higher plant taxa, depending on the interaction of nutrients, light, temperature and seasonality, 492 as well as physiology of different species. A limitation of Chl a-based techniques is their inability to distinguish major microalgal functional groups. To circumvent this problem, high-performance liquid chromatography (HPLC), coupled to photodiode array spectrophotometry (PDAS), can be used to characterize and quantify phytoplankton community composition based on diagnostic photopigments, including diverse chlorophylls, carotenoids and phycobilins. Distinct spectral absorbance characteristics make photopigments useful and sensitive indicators of phytoplankton functional groups (Gieskes & Kraay 1986; Wright et al. 1991; Millie et al. 1993; Jeffrey et al. 1997). Useful photopigments include Chl b and lutein (chlorophytes), zeaxanthin, myxoxanthophyll, echinenone (cyanobacteria), fucoxanthin (diatoms), peridinin (dinoflagellates) and alloxanthin (cryptomonads) (Van Heukelem et al. 1994; Pinckney et al. 1996). Specific phycobilins, including phycoerythrin and phycocyanin, have been used to characterize cyanobacteria. HPLC-PDAS is now routinely used by researchers and water quality agencies in diverse aquatic ecosystems. Statistical procedures (ChemTax; Mackey et al. 1996) can be applied to partition the total pool of Chl a (total community biomass) into the major algal groups, allowing calculation of the relative and absolute contribution of each algal group (Mackey et al. 1996; Pinckney et al. 1998, 2000; Figure 4). HPLC measurements of phytoplankton community structure also provide ground truthing, calibration and verification for aircraft and satellite-based imagery of distributions in relation to environmental perturbations. An example of the utility of HPLC-ChemTax derived determinations of phytoplankton functional groups on the community-level is provided for Galveston Bay. Since May 1999, a biweekly sampling program has been monitoring water quality parameters, including nutrients and phytoplankton dynamics, in Galveston and Trinity Bays (Pinckney et al. in prep., Figure 5). Ten nutrient addition bioassays conducted during 1999 and 2000 indicated that the phytoplankton community is consistently N limited. Evidence of P or Si limitation was not detected. The picoplankton (< 2 µm), nanoplankton (2–20 µm), and microplankton (20–200 µm) fractions constituted 18, 50 and 32% of the total community biomass, respectively. All major algal groups are represented in these size ranges, nanoplankton being most diverse. Diatom blooms of large species (Rhizosolenia, Coscinodiscus) occurred during the summer. These successional patterns are distinguishable and quantifiable by HPLC-ChemTax. The measurement of growth rates of natural phytoplankton populations in estuaries and coastal waters is difficult but fundamental to our understanding of primary productivity and algal bloom dynamics. The problem has been in determining the contribution of phytoplankton to the total pool of particulate organic carbon (POC), a value that is required for calculations of in situ growth rate based on measurements of photosynthetic rates (Redalje & Laws 1981). Development of the photopigment radiolabeling method by Redalje & Laws (1981) is a significant step towards the direct determination of specific growth rates of phytoplankton. The method relies on quantifying the rate of photopigment synthesis using 14 C incubation techniques. When phytoplankton are exposed to 14 C (as NaH14 CO ), 14 C passes through the Calvin– 3 Benson cycle and into a pool of low molecular weight compounds used for photopigment synthesis. Under conditions of balanced growth, the rate of 14 C incorporation into photopigment equals the rate of C incorporation into total cell biomass (i.e., the C-specific growth rate). The calculation of µ (d−1 ) is based on ∗ ln(1 − 1.05( RI ∗ )) µ= t In this equation, 1.05 is the 14 C isotope discrimination factor, R∗ (disintegrations per minute (dpm) µg C−1 ) is the C-specific activity of chl a, I∗ (dpm µg C−1 ) is the C-specific activity of the incubation water and t (days) is the duration of the incubation (Redalje 1993). More common methods of growth rate measurements based on the assimilation index require accurate determinations of the C:Chl ratio, respiration rates, and grazing rates (Cullen 1990; Cloern et al. 1995). Quantification of the C:Chl ratio is especially difficult for natural phytoplankton samples because of problems in measuring POC (Banse 1977; Cloern et al. 1995; Geider et al. 1997). The photopigment radiolabeling method provides an alternative approach that is insensitive to grazer impacts, respiration rates, and C:Chl ratios (Redalje 1993). Detailed descriptions and validation of the photopigment radiolabeling method are provided in Redalje & Laws (1981), Redalje (1993), Riemann et al. (1993) and Goericke & Welschmeyer (1993a,b). HPLC combined with photopigment radiolabeling can be used to determine growth rates of phytoplankton functional groups in natural mixed assemblages (Goericke & Welschmeyer 1993a,b; Redalje 1993). 493 Figure 5. Spatiotemporal contour plots of the relative abundance of the major phytoplankton groups in Galveston Bay, Texas as determined by HPLC photopigments data analyzed with ChemTax. The location of the sampling transect is shown by the dashed line on the inset map, with the mouth of the bay defined as 0 km and the upper end of the transect at 50 km. In 1999 and 2000, Texas experienced a prolonged drought, with little freshwater input into Galveston Bay. This was followed by a near-record rainfall period (from September 2000 to March 2001). Cyanobacterial abundance was highest during the drought period and blooms of cryptophytes and diatoms occurred during the wet period. Galveston Bay also experienced a red-tide bloom (the dinoflagellate Karenia brevis) in September 2000. Characterization of microbial target genes from DNA and RNA Currently, the simplest way to identify bacteria is by PCR amplification of target genes and traditional cloning and sequencing. This approach is now routinely used by a number of laboratories for 16S rRNA gene characterization (Head et al. 1997; Suzuki et al. 1997). A similar approach using functional genes encoding for enzymes directly involved in transformation processes has also been employed to study natural microbial assemblages. Target genes involved in denitrification (nosZ) (Scala & Kerkhof 1998), nitrification (amoA) (Hastings et al. 1998), nitrogen fixation (nifH) (Kirshstein et al. 1991), sulfur cycling (dsrA) (Karkhoffschweizer et al. 1995; Wagner et al. 1998), and methane oxidation (pmoA) (Mcdonald & Murrell 1997) have been successfully utilized to identify microbial populations. Numerous modifications and variations of these molecular techniques have been used to suit specific needs for identifying and characterizing environmental impacts on microbial community structure and function. Assessing phytoplankton community responses to N loading dynamics The availability of nitrogen (N) has been identified as the key factor controlling estuarine and coastal productivity, trophic state and resultant water quality. Both the total amount and composition of ‘new’ N entering coastal waters are important determinants of microbial community responses to N enrichment 494 (Stolte et al. 1994; Collos 1994; Pinckney et al. 2001). To determine possible ecological impacts of shifting amounts and sources of ‘new’ N, we have experimentally determined phytoplankton community responses to different forms of N under varying irradiance levels. Bioassays of water samples from the Neuse R. estuary were amended with equimolar (10 µM) amounts of N in different forms (ammonium-only, nitrate-only, urea-only, and combined ammonium, nitrate, and urea), then either incubated at ambient (100%) irradiance or shaded to 10% of ambient irradiance. HPLCbased diagnostic photopigment analyses (ChemTax) were used to characterize the relative abundance of major phytoplankton groups. Results showed that different forms of N caused community shifts at both 100% and 10% of ambient irradiance, reflecting the range of natural light conditions in the estuary (Harrington 1999; Figure 6). Additional bioassays were designed to test the effect of varying the supply of dissolved inorganic and dissolved organic N. Neuse River estuary water was saturated with potentially growth limiting nutrients (P, Si, Fe, trace metals and vitamins) and treatments were designed to assess the effect of adding different N types. The treatments were set-up using the following combination of nutrients: all nutrients + ammonium, nitrate and urea; all + ammonium; all + nitrate; all + urea; and all without N. These results confirm previous studies showing that phytoplankton and their microbial consorts may exhibit species-specific growth responses to different N concentrations (Stolte et al. 1994; Collos 1994) and thus community composition is influenced by supply rates of specific dissolved nitrogen compounds (e.g. NO3 − , NH4 + , dissolved organic N) (Figure 7). Changes in N:P supply ratios can also affect microbial community structure and function (Smith 1985, 1990). Inherent physiological differences between taxonomic groups mean that changes in N and P loading may affect competition between harmful and non-harmful phytoplankton taxa, associated microflora and grazers, and higher trophic levels. For example, if the phytoplankton community is dominated by species that were not effectively consumed, then the efficiency of trophic transfer of the nutrients associated with the phytoplankton biomass would be reduced. Consequently, there would be potentially less nutrient transfer to higher order commercially-valuable shellfish and finfish species. The episodicity, timing, and rates of flushing and vertical mixing may also impact phytoplankton community responses (Pinckney et al. 1999, 2001). Meso- Figure 6. Neuse River Estuary phytoplankton functional group responses (using HPLC data processed via ChemTax) to various forms of nitrogen (ammonium, nitrate and urea) and different light levels, using in situ bioassays (from Harrington 1999). Nitrogen additions were equimolar (10 µM N). Identical additions were incubated at 100 and 10% of ambient irradiance and temperature conditions during May 1998. The pie graphs represent the fractions of chlorophyll a attributable to major phytoplankton functional groups. cosm bioassays showed that under mixed conditions there was higher productivity, particulate C:N ratios, and chlorophyte, diatom, and cyanobacteria biomass. In contrast, the static (unmixed) mesocosms promoted higher community growth rates and cryptomonad biomass. Total community biomass (Chl a) was similar for both treatments. The absence of mixing may enhance sedimentation of non-flagellated species, reducing competitive interactions between cryptomonads and other species. Adding high nitrate concentrations to the mixed mesocosms promoted an overall increase in phytoplankton biomass. The bacterial taxa involved in N transformations (i.e. nitrification, denitrification, and nitrogen (N2 ) fixation) are also impacted by natural and man-made perturbations. Nitrification, the oxidation of ammonium to nitrate, is carried out by gram-negative, oblig- 495 Figure 7. Cell counts of the major phytoplankton species from Neuse River Bioassays conducted on 18 June 2001. Bioassays were conducted using the methods of Twomey & Thompson (2001). During this period, the NRE was potentially N limited (significant difference between control and treatment with all nutrients, significant difference between all-N and all). There was a major change in the relative proportion of cells in the ammonium addition treatments versus the treatments in which nitrate, urea or all N types were added. ate aerobic chemolithotrophs (Voytek & Ward 1995). Denitrification, the reductive respiration of nitrate or nitrite to N2 or N2 O, is carried out by a diverse group of bacteria under anaerobic conditions (Zumft 1997). N2 fixation, the reduction of N2 gas to ammonia, is performed solely by prokaryotes under both aerobic (largely cyanobacteria) and anaerobic (bacteria and cyanobacteria) conditions. As N inputs are altered, so are the relative activities and interactions of these microbial groups. Activities of populations mediating these N cycling steps are closely linked to carbon and oxygen availability. Denitrification and N2 fixation occur under hypoxic/anoxic conditions, which are promoted by organic carbon loading resulting from eutrophication. Studies on the Baltic Sea, Chesapeake Bay and other periodically stratified estuarine and coastal waters sus- ceptible to hypoxia, suggest a feedback interaction between N enhanced eutrophication, hypoxia and its controls on N cycling and availability within affected ecosystems (Boynton et al. 1995) (Figure 8). Increases in hypoxia resulting from eutrophication may enhance denitrification, thereby increasing the rate of N loss (as atmospheric N2 ) from the system (i.e. negative feedback or net loss of N). This is particularly important when high rates of external N loading (as NO3 − ) flux over hypoxic bottom waters. However, hypoxia will also decrease nitrification, because the volume of oxic water available to nitrifiers decreases. Since nitrification of sediment-released NH4 + can be closely coupled to denitrification, the shift to increasing hypoxia accompanying eutrophication will reduce coupled denitrification and hence N loss as N2 , leading to more N (as NH4 + ) remaining in the system, 496 Figure 8. Conceptual diagram, showing potential impacts of changes in phytoplankton composition and biomass on estuarine carbon flux, sediment oxygen demand and nutrient cycling. If increased nitrogen (ammonium, nitrate, organic N) loading leads to selective stimulation of phytoplankton that are not effectively grazed and utilized in the food web, these cells will form a relatively large proportion of sedimented organic matter, thereby increasing sediment oxygen demand (SOD), hypoxia and anoxia, and affecting denitrification potentials. In contrast, readily-grazed phytoplankton will tend to be exported out of the estuary (by invertebrates and fish), thereby confining organic matter cycling to the water column and adjacent coastal waters. When extensive hypoxia prevails in the water column, ammonium diffusing from the sediments cannot be effectively nitrified and subsequently denitrified. This reduces potential N loss from the ecosystem via denitrification, representing a positive feedback (i.e., from the ecosystem perspective, N is retained to further exacerbate eutrophication). In contrast, if water column hypoxia is moderate and anoxic conditions are largely confined to the sediments, nitrification of ammonium fluxing from the sediments coupled to denitrification is high, thus enhancing N loss from the system via denitrification (negative feedback). potentially exacerbating eutrophication (i.e., positive feedback). This has ramifications for microbial community preference for certain forms of N, as well as N budgets of impacted systems. Application to hypoxia and anoxia To demonstrate the feasibility of using a molecular approach to fingerprint microbial communities under shifting oxygen regimes, time series samples were analyzed from microbial biomass samples collected from the water column in the LEO study area during 1994–1997 (Nelson et al. in preparation). To charac- terize the bacterial populations, a rapid fingerprinting technique utilizing fluorescent end labeling of PCR product (target genes) and screening by terminal restriction fragment length polymorphism has been used (TRFLP; Avaniss-Aghajani et al. 1994; Liu et al. 1997; Phelps et al. 1998; Kerkhof et al. 2000). The various target genes in the amplification are sorted by restriction analysis on an automated fluorescent sequencer. A software package is used to automatically detect and size the labeled restriction fragments and display the data as a series of peaks, with each peak representing a different target gene in the original mixture. 497 Figure 9. Oxygen profiles in the LEO-15 study area (A) and overlay of two TRFLP fingerprints of microbial populations (B) from 9/96 and 10/96. The arrows indicate the low and high oxygen samples collected (A) and the specific 16S rRNA target genes unique to the low oxygen condition (red profile in B) from coastal microbial communities. The oxygen data were kindly provided by R. Sherrell, C. Reimers and S. Boehme. Recently, we have shown that highly reproducible fingerprints can be obtained from complex samples (Kerkhof et al. 2000; Scala & Kerkhof 2000). Additionally, it is possible to rapidly identify specific target genes using TRFLP analysis of clonal libraries to minimize the time necessary to identify specific target gene clones (Kerkhof et al. 2000; Scala & Kerkhof 2000). An example of the TRFLP approach coupled to chemical and biological measurements that have been made at this site is shown in Figure 9. Panel A contains bottom water oxygen profiles at LEO demonstrating transient hypoxic conditions in summertime. A comparison of microbial communities from low oxygen and high oxygen samples taken 1 month apart at one offshore station (A3) is shown in panel B. This study has facilitated identifying specific 16S rRNA target genes associated with hypoxic waters at LEO-15. Although a single TRFLP analysis will not be able to resolve all possible target genes in an amplification, this technology represents a significant improvement 498 in sample processing time. The crux of the TRFLP technique is judicious selection of restriction enzymes. Furthermore, we are not bound to a single enzyme for the analysis. The simplest way to increase resolution is to perform additional diagnostic digests. N, S or C cycling. Nevertheless, these PCR approaches to study mRNA should gain wide use since they generally require small sample size and can be incorporated in routine field monitoring. Abundance and activity measurements of bacteria Harmful algal taxa as indicators of estuarine and coastal eutrophication Determining the number of a particular bacterium present within a sample, when only the 16S rDNA sequence from that microorganism is known, can be a daunting task. A number of methods are in use to monitor changes in abundance of specific microorganisms present in natural samples, including specific hybridization to rRNA or rDNA (DeLong 1992; Gordon & Giovannoni 1996) or in situ hybridization with fluorescently labelled oligonucleotide probes (for review see Amann et al. 1995). An alternative method involves a modification of the most probable number (MPN) method to assess changes in abundance of specific bacteria in space and time. In classical MPN, serial dilutions of samples are grown on selective media to ascertain the numbers of a bacterium present in the original sample. Recently, replacement of this growth step with PCR detection has been implemented (Degrange & Bardin 1995). This modification circumvents the need for culturing and has detection limits in the 10–100 cell range. The only requirement is a vigorous extraction method and species-specific primers for PCR amplification. Finally, application of real-time quantitative PCR for rapid quantitation of microbes in aquatic or sediment samples using various target genes is now feasible (Suzuki et al. 2000; Bowers et al. 2000; Gruntzig et al. 2001). Bacterial activity can be determined using mRNA approaches. For example, one way to ascertain whether bacteria capable of denitrification are actually active under particular environmental conditions involves determining if a functional gene (i.e., nosZ) is being transcribed (Kerkhof in prep.). Additional wellstudied functional target genes are Rubisco (RUBP carboxylase) and nitrogenase. There is evidence from both pure cultures and environmental samples that rbcL mRNA levels correlate with CO2 fixation rates (Pichard et al. 1996; Paul 2000). Additionally, nitrogenase transcription has been shown to coincide with nitrogenase activity (Wyman 1996). However, there is little information on how levels of gene expression (mRNA transcription) correlate with the biogeochemical rates associated with other target genes involved in Overall, the effects of changes in nutrient loading on microbial community dynamics remain poorly characterized. This aspect of environmental control of biodiversity warrants further attention however, since it may be a key link between nutrient enrichment and trophic changes, including harmful algal bloom formation. Cyanobacteria, cryptophytes, dinoflagellates and other algal groups have exploited anthropogenic nutrient enrichment of estuarine and coastal waters. (Fogg 1969; Paerl 1988a; Sellner 1997). Certain species in these groups are particularly problematic since they can produce toxins, disrupt food webs and cause hypoxia and anoxia. Nutrient fluxes and trophodynamics may also be altered by the presence of harmful taxa (Porter & Orcutt 1980; Paerl 1988a). Molecular techniques can be utilized for characterizing harmful algal bloom (HAB) taxa, as shown for cyanobacteria (Zehr & Paerl 1998). Briefly, DNA is extracted from water or sediment samples. It is then isolated, purified, and PCR amplified using specific primers for genes of interest. The nucleic acid sequences for these genes are determined and compared with a database of previously identified genetic sequences. The sequences are compared in a phylogenetic tree, which is used to visualize the degree of similarity between organisms based on genetic data. All prokaryotes, including cyanobacteria, contain the 16S rRNA gene, making it useful for comparing both N2 fixing and non N2 fixing cyanobacteria (Figure 10). Diazotrophs (N2 fixers) have the nifH gene, which encodes one of the subunits of the nitrogenase enzyme complex that is necessary for N2 fixation (Paerl & Zehr 2000). NifH is highly conserved among diazotrophs, but still maintains enough diversity to be useful in differentiating genera. The high degree of genetic similarity among heterocystous cyanobacteria, for example, is evident in the close clustering of these genera in nifH phylogenetic trees while still being able to identify individual species (Figure 11). Many diazotrophs can be identified in this manner, regardless of whether they are actively fixing N2 . 499 Figure 10. Cyanobacterial phylogenetic tree based upon 16S rRNA sequences. This tree was constructed by the neighbor-joining method and bootstrap values >50% are given above or beside the corresponding nodes. Using nifH sequence analysis, the genetic potential for expansion of genetically diverse N2 -fixing and non-fixing cyanobacterial HAB species into eutrophying mesohaline and euhaline waters was identified along the length of the Neuse R. estuary (Affourtit et al. 2001; Dyble et al. in prep). NifH was also present throughout most of the year, even at times when cyanobacteria were not numerically dominant in the water column. Heterocystous cyanobacterial nifH sequences (Anabaena spp., Anabaenopsis sp.) were the most common, and their presence throughout the estuary indicates that cyanobacterial N2 fixers are present even at higher salinities and colder temperatures than usually required for bloom development (Affourtit et al. 2001, Dyble et al. in prep). This ge- netic potential for N2 fixation has been confirmed by microscopic observations and isolation of Anabaena spp. and Anabaenopsis spp. filaments in the oligo- and mesohaline segments of this estuary (Moisander et al. in press). Active N2 fixation associated with these taxa has also been detected in near-surface samples during mid-summer. Cyanobacteria are symptomatic of eutrophication in geographically-diverse, nutrient-enriched coastal rivers, estuaries, embayments, brackish coastal and pelagic seas (i.e., Baltic), and lagoonal estuaries (Peele-Harvey, Australia) (Horstmann 1975; Niemi 1979; Huber 1986). Historically, potentially toxic nuisance diazotrophic genera, including Anabaena, Aphanizomenon, Lyngbya, Nodularia and Oscillatoria 500 Figure 11. Cyanobacterial phylogenetic tree based upon nifH sequences. This tree was constructed by the neighbor-joining methods and bootstrap values >50% are given above or beside the corresponding nodes. have been confined to heavily-nutrified freshwater impoundments (Francis 1878; Fogg 1969; Paerl & Tucker 1995). However, regional and global expan- sion into more incipient eutrophying waters appears to be underway. Examples include the appearance, persistence and expansion of toxic (to wildlife, cattle, 501 domestic animals and humans) heterocystous, N2 fixing genera (Anabaena, Aphanizomenon, Nodularia) in brackish fjords in Norway and Sweden, estuaries and coastal embayments in South Africa, Australia and New Zealand, Brazil, Columbia, Canada and the US (e.g., L. Ponchartrain, LA; Florida Bay, FL; Albemarle-Pamlico Sound System, NC; Puget Sound, WA) (Carmichael 1997). These locations are experiencing increasing surface, groundwater and atmospheric loading of nutrients (Paerl 1997). Toxin and taste/odor producing N2 fixing taxa (Anabaena, Aphanizomenon, Nodularia, Cylindrospermopsis) are becoming increasingly prevalent and problematic in US and Canadian brackish and coastal aquaculture operations (Paerl & Tucker 1995; Carmichael 1997). The Baltic Sea exemplifies the impacts of longterm (several centuries) eutrophication on cyanobacterial bloom potentials (Ambio 1990). Incipient yet expanding invasions and outbreaks appear to be taking place in more-recently impacted systems. Nodularia sp. has recently been observed in Lake Michigan plankton (McGregor et al. 2001), possibly an indication of eutrophication in this large lake. Recently, Piehler et al. (in press) observed N2 -fixing Anabaena strains in previously cyanobacteria-free mesohaline (5–15 ppt salinity) segments of the eutrophying Neuse R. estuary. In a parallel laboratory study, Moisander et al. (2000) showed that 2 toxic Baltic Sea Nodularia strains (Sivonen et al. 1989) were capable of growth and bloom formation in Neuse R. Estuary water over a wide range of salinities (0–15 ppt) (Table 1). Recent work has shown that salinity does not necessarily represent a barrier to either the establishment or expansion of diverse diazotrophic cyanobacterial genera (Paerl 1990; Moisander et al. 2000). These examples are testimony that waters downstream of expanding urban and agricultural regions are increasingly prone to invasion by N2 fixing cyanobacterial bloom genera (Anabaena, Anabaenopsis, Aphanizomenon, Cylindrospermopsis, Lyngbya, Nodularia) (Paerl 1988; Sellner 1997). This trend is of concern, since these genera should enjoy a competitive growth advantage in chronically N-deficient waters, typical of many estuarine and coastal ecosystems. Smith (1983) showed a strong relationship between total N:P ratios <20 (by weight) and the development and periodic persistence of N2 fixing cyanobacterial bloom genera in lakes and reservoirs. This stoichiometric predictor of cyanobacterial dominance has received little scrutiny in coastal systems, which generally exhibit N:P ratios well below 20 and P sufficiency (Nixon 1986; D’Elia 1986; Paerl & Millie 1996). Some diazotrophic cyanobacteria can also thrive on combined N sources (both inorganic and organic) (Paerl 1988). This nutritional flexibility may enable such ‘cockroach’ taxa to take advantage of acute N loading events. Pulses of N-laden agricultural and urban runoff have increased markedly in coastal watersheds and may be key ‘drivers’ of eutrophication (Nixon 1995; Paerl 1997). In the N-limited Neuse R. estuary, cyanobacterial growth responses closely track (in time and space) such events (Pinckney et al. 1997). In particular, organic N- and ammonium-enriched conditions may favor cyanobacterial dominance in these waters (Pinckney et al. 1997). Phytoplankton growth in these waters is generally P and trace element sufficient. Thus, supply rates of these nutrients do not seem to play a dominant role in explaining the distribution and proliferation of N2 fixing cyanobacterial bloom taxa (Paerl 1990). Clearly, the freshwater-based approach that cyanobacterial bloom expansion can largely be controlled by reducing P loading (Vollenweider 1982) requires further evaluation with regard to estuarine and coastal waters experiencing bloom expansion. While these waters exhibit ‘favorable conditions’ for cyanobacterial expansion based on N:P ratios (Smith 1983), they do not appear to conform to this paradigm, as most estuarine and coastal waters currently supporting diazotrophic genera are N, rather than P limited. This indicates that nutrient loading interacts with other environmental factors (mixing, turbulence, light, grazing, etc.) in the regulation of eutrophication. Bottom up – top down controls: interactive impacts of nutrient enrichment and consumers on microbial community structure and function Grazers can influence microbial community composition in several ways. Through selective grazing, which may be based on size, morphology, or prey chemical composition, grazers can cause differential mortality in their food resources. Grazers may also affect the microbial composition through release of dissolved inorganic nutrients. Most grazers release metabolic wastes in reduced form, thereby possibly changing relative availability of different forms of dissolved nutrients. For example, nitrate-based diatom blooms frequently ‘crash’ when nitrate is depleted, with subsequent blooms of nanoflagellates or picoplankton utilizing 502 Table 1. Salinity tolerance of bloom-forming cyanobacteria Genus Salinity limits for growth (PSU) Reference (N2 fixing) Anabaena aphanizomenoides Anabaena torulosa Anabaenopsis Aphanizomenon Cylindrospermopsis Nodularia 0–15 0–>14.6 0–>20 0–5 0–4 0>30 0–35 Moisander et al. in prep. Apte et al. 1987 Moisander et al. in press. Lehtimäki et al. 1997 Moisander et al. in prep. Lehtimäki et al. 1997 Apte et al. 1987 (non-N2 fixing) Microcystis Oscillatoria 0–2 0–>30 Paerl et al. 1984; Sellner 1997 Fogg 1969 ammonium or urea derived from grazers and bacteria. Anthropogenic nutrient inputs can interact with grazing to cause even greater changes in phytoplankton communities. For example, Riegman (1995) found that excessive nutrient inputs to European coastal waters favored growth of Phaeocystis, which formed blooms that persisted because they were not grazed by microzooplankton. These are complex, non-linear processes. Without detailed information on the composition of producer and consumer communities, and quantification of the fluxes between them, it will not be possible to predict changes in ecosystem function resulting from even small anthropogenic or natural perturbations. An example of how changes in nutrient supplies can interact with grazing on the ecosystem level is provided by the brown tide blooms that have plagued shallow estuaries around Long Island, New York for the past 15 years. In part, it appears that climatic factors (drought) led to a change in the relative proportions of inorganic and organic N supplied to this system (Laroche et al. 1997). This caused a shift from a mixed phytoplankton assemblage to one dominated by a single picoplankter, Aureococcus anophagefferens. Because overall availability of dissolved N was not increased, Chl a levels in these blooms have not been greatly elevated, but the change in phytoplankton species composition has proven deleterious. Aureococcus is not effectively grazed, and as such persists in the system. Since it is a smaller cell, light scattering is increased, resulting in a shallower photic zone (Cosper et al. 1987). Lack of sufficient light to the benthos has caused sharp declines in seagrasses and associated loss of shellfish habitat. Selective grazing by bacterivores includes preferences for motile bacterial prey (Gonzalez et al. 1993) and for larger, growing cells (Monger & Landrey 1992). This preference may also be reflected in the preference for picocyanobacteria over heterotrophic bacteria exhibited by many ciliates (Simek et al. 1995). Flagellates, ciliates, and rotifers appear to ingest both cyanobacteria and heterotrophic picoplankton, but at least some cyanobacteria are poorly digested and cannot serve as a sole food source (Weisse 1993). Different crustacean and ciliate genera can have varied impacts on bacterial communities (Simek et al. 1995). Clearly, grazing strongly interacts with nutrient enrichment and physical forcing features to determine the structure and function of autotrophic and heterotrophic microbial communities. Concluding remarks Human-vs climatically-induced alteration of microbial community structure and function (biodiversity), and its cascading impacts on ecosystem processes, has received a great deal of attention in both the general public and scientific sectors of our society. Despite the recognized importance of this problem, means of assessment and evaluation on ecosystem, regional and global scales remain elusive and are in a state of evolution. We have been hampered by a lack of: (1) appropriate tools for characterizing biotic community structure and function, and (2) integration of physical, chemical and biotic forcing features that determine the composition, expression and interaction of biotic components in response to environmental 503 change. Biochemical and molecular microbial characterization techniques have advanced to the point that they can be routinely applied as indicators of community structural and functional responses to a wide range of anthropogenic and natural environmental stressors. Photopigment-based methods can be coupled to aircraft or satellite-based remote sensing platforms. This will enable us to identify roles of microbial species in productivity, nutrient cycling, food web and water quality dynamics across ecosystem and regional scales. These approaches will prove particularly useful in the identification and characterization of harmful species, which may be transported or proliferate across such scales. Using this information, such species can be appropriately targeted for nutrient or other environmental controls. In this manner, molecular, physiological and analytical tools may be deployed for assessing community compositional and functional responses to single and combined stressors over a range of scales and levels of complexity stretching from controlled microcosms to meteorologically-driven ecosystems and regions. Acknowledgements We appreciate the technical assistance and input of M. Go, M. Harrington, B. Hendrickson, K. McFarlin, G. McManus, B. Peierls, V. Winkelmann and P. Wyrick. This work was supported by the National Science Foundation (DEB 9815495) an NSF Graduate Fellowship to J. Dyble, US Dept. of Agriculture NRI Project 00-35101-9981, U.S. EPA STAR Projects R82-5243-010 and R82867701, NOAA/North Carolina Sea Grant Program R/MER-43, and the North Carolina Dept. of Natural Resources and Community Development/UNC Water Resources Research Institute (Neuse River Estuary Monitoring and Modeling Project-ModMon). 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