Dynamics of microcystins and saxitoxin in the Indian River Lagoon, Florida

被引:24
作者
Laureano-Rosario, Abdiel E. [1 ]
McFarland, Malcolm [1 ]
Bradshaw II, David J. [1 ]
Metz, Jackie [1 ]
Brewton, Rachel A. [1 ]
Pitts, Tara [1 ]
Perricone, Carlie [1 ]
Schreiber, Stephanie [1 ]
Stockley, Nicole [1 ]
Wang, Guojun [1 ]
Guzman, Esther A. [1 ]
Lapointe, Brian E. [1 ]
Wright, Amy E. [1 ]
Jacoby, Charles A. [2 ]
Twardowski, Michael S. [1 ]
机构
[1] Florida Atlantic Univ, Harbor Branch, Oceanog Inst, 5600 US 1 N, Ft Pierce, FL 34946 USA
[2] St Johns River Water Management Dist, POB 1429, Palatka, FL 32178 USA
关键词
Toxin biosynthetic genes; Microcystis sp; Pyrodinium sp; Coastal lagoon ecosystem; Metabarcoding; Urban water quality; HARMFUL ALGAL BLOOMS; ST LUCIE ESTUARY; BAHAMENSE VAR. COMPRESSUM; PYRODINIUM-BAHAMENSE; WATER-QUALITY; AUREOUMBRA-LAGUNENSIS; CLIMATIC INFLUENCES; NUTRIENT POLLUTION; COASTAL WATERS; UNITED-STATES;
D O I
10.1016/j.hal.2021.102012
中图分类号
Q17 [水生生物学];
学科分类号
071004 ;
摘要
Harmful algal blooms that can produce toxins are common in the Indian River Lagoon (IRL), which covers -250 km of Florida's east coast. The current study assessed the dynamics of microcystins and saxitoxin in six segments of the IRL: Banana River Lagoon (BRL), Mosquito Lagoon (ML), Northern IRL (NIRL), Central IRL (CIRL), Southern IRL (SIRL), and the St. Lucie Estuary (SLE). Surface water samples (n = 40) collected during the 2018 wet and 2019 dry season were analyzed to determine associations between toxins and temperature, salinity, pH, oxygen saturation, concentrations of dissolved nutrients and chlorophyll-a, presence of biosynthetic genes for toxins, relative abundance of planktonic species, and composition of the microbial community. The potential toxicity of samples was assessed using multiple mammalian cell lines. Enzyme-Linked Immunosorbent Assays were used to determine concentrations of microcystins and saxitoxin. Overall, the microcystins concentration ranged between 0.01-85.70 mu g/L, and saxitoxin concentrations ranged between 0.01-2.43 mu g/L across the IRL. Microcystins concentrations were 65% below the limit of quantification (0.05 mu g/L), and saxitoxin concentrations were 85% below the limit of detection (0.02 mu g/L). Microcystins concentrations were higher in the SLE, while saxitoxin was elevated in the NIRL and BRL. Cytotoxicity related to the presence of microcystins was seen in the SLE during the wet season. No significant patterns between cytotoxicity and saxitoxin were identified. Dissolved nutrients were identified as the most highly related parameters, explaining 53% of microcystin and 47% of saxitoxin variability. Multivariate models suggested cyanobacteria, flagellates, ciliates, and diatoms as the subset of microorganisms whose abundances were maximally correlated with saxitoxin and microcystins concentrations. Lastly, biosynthetic genes for microcystins were detected in the SLE and for saxitoxin in the BRL and NIRL. These results highlight the synergistic roles environmental and biological parameters play in influencing the dynamics of toxin production by harmful algae in the IRL.
引用
收藏
页数:15
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