Early Detection Methods for Toxic Cyanobacteria Blooms
Abstract
:1. Introduction
2. Materials and Methods
3. Cyanotoxin Detection Methods
3.1. ELISA
3.2. Liquid Chromatography Mass Spectrometry
3.3. Polymerase Chain Reaction (PCR) Methods
3.4. Rapid Field Testing
3.5. Satellite Monitoring
3.6. Machine Learning Models
4. Comparison of Methods for Early Warning Systems
5. Conclusions and Future Directions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Guidance Value for Drinking Water | Source |
---|---|
3.7 µg/L | Institut National de Sante’ Publique du Québec 2005 cited by Carrière et al. [19] |
4 µg/L | California Environmental Protection Agency Office of Environmental Health Hazard Assessment [20] |
30 µg/L (short term drinking water value) | WHO 2020 [18] |
Methods | Cyanotoxins | Pros | Cons | Reference |
---|---|---|---|---|
LC-MS/MS (LOD 0.001 µg/L) | 12 MC congeners, NOD, ATX, and CYN | High sensitivity. | Lack of MC reference standards. | Hammoud et al. [24] |
High specificity. | Requires more advanced laboratory set-up. | |||
ELISA a (LOD 0.10 µg/L) | MCs | Possible to detect MC congeners not targeted by LCMS. | Matrix effects; Cross-reactivity of MCs; Possible overestimation due to degradation or transformation of products. | |
Relatively fast and easy. | ||||
PPIA a (LOD 0.25 µg/L) | MCs | Possible to detect MC congeners not targeted by LCMS. | Lacks sensitivity. | |
Relatively fast and easy. | Possible over or underestimation of MCs. | |||
qPCR b | MC, CYN, and STX | Samples with gene mcyE align with samples found to contain MCs in LCMS, ELISA, and PPIA. | Only used to confirm presence of cyanobacteria and genes. Not evaluated for use in monitoring programs. | |
Fluorometry a | Estimated chlorophyll-a associated with cyanobacteria | Cheaper and more easily accessible than methods such as LC-MS/MS. | Weak correlation with LC-MS/MS; Less accurate than direct measurements of cyanotoxins; Tended to overestimate risk to the public | Schürmann et al. [44] |
Microscopy | Looked for the presence of 11 potentially toxic cyanobacteria | Cheaper and more easily accessible than methods such as LC-MS/MS. | Less accurate than direct measurements of cyanotoxins. | |
Tended to overestimate risk to the public. | ||||
qPCR b | 16s, mcyE | Strong correlation between mcyE qPCR and LC-MS/MS. | 16S qPCR had a weak correlation with LC-MS/MS; Some samples with high MC levels had low mcyE copy numbers; No current guideline values for qPCR risk assessment. | |
ELISA a | MCs and ATX | Strong correlation with LC-MS/MS. | Overestimated MCs in comparison with LC-MS/MS. | |
LC-MS/MS a | MCs, ATX, CYN, | Assumed to be the “gold standard” for cyanotoxin detection. | More expensive. | |
Longer sample processing times. | ||||
Shotgun metagenomics b | Characterization of multiple cyanobacteria genera and gene abundance | Bloom vs. non-bloom samples could be differentiated by the abundance of various genes such as those for nitrogen and phosphorus metabolism. | Cyanotoxin genes not detected. | Saleem et al. [45] |
Not as effective as ELISA and qPCR for real-time toxigenic potential analysis. | ||||
qPCR b | 16S RNA, mycE, stxA | Relatively fast compared with shotgun sequencing; mcyE gene copies correlated with MC/NOD levels; Better for real-time toxigenic potential analysis than shotgun sequencing. | Purified DNA found fewer gene copies for cyanotoxins than crude DNA. Purified DNA may underrepresent cyanotoxin potential while crude DNA has more PCR inhibition. | |
Does not provide as much information on the cyanobacteria community present as shot-gun sequencing. | ||||
ELISA a | MCs/NODs | Relatively fast compared with shotgun sequencing. | Does not provide as much information on the cyanobacteria community present as shot-gun sequencing. | |
Better for real-time toxigenic potential analysis than shotgun sequencing. | ||||
LC-MS/MS a | MCs, NOD, CYN, ATX | Analysis of microbial mats possible. | Unable to determine an MC structure in one sample based on fragments. | Khomutovska et al. [46] |
More reliable than ELISA. | ||||
qPCR b | mcyA, mcyD, mcyE, mcyE/ndaF, sxtA, and anaC | Analysis of microbial mats possible. | Primers may not be universal for both planktonic and benthic mat cyanobacteria. | |
More information on the microbial community present. | ||||
ELISA a | MCs (LOD 0.5 ng/L), CYN (LOD 0.5 ng/L), ATX (LOD 0.4 ng/L) | Rapid, results in ~30 min. | ATX was found in six samples, but not by LC-MS/MS or qPCR. False positives. | |
Mass spectrometry multiple reaction monitoring (MS-MRM) a | MCs, STX, CYN | More sensitive than ELISA. | Same samples where MCs were detected by ELISA and mcyE genes were detected by qPCR were not positive for MCs by MS-MRM. | McKindles et al. [47] |
qPCR b | mcyE, stxA, and cyrA | Potential as a valuable early warning tool, especially in the summer. | Some samples which had MCs or CYN did not have detectable mcyE or cyr genes. | |
ELISA a | MCs | Lower sensitivity compared with HPLC methods. |
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Grant, L.; Botelho, D.; Rehman, A. Early Detection Methods for Toxic Cyanobacteria Blooms. Pathogens 2024, 13, 1047. https://doi.org/10.3390/pathogens13121047
Grant L, Botelho D, Rehman A. Early Detection Methods for Toxic Cyanobacteria Blooms. Pathogens. 2024; 13(12):1047. https://doi.org/10.3390/pathogens13121047
Chicago/Turabian StyleGrant, Lauren, Diane Botelho, and Attiq Rehman. 2024. "Early Detection Methods for Toxic Cyanobacteria Blooms" Pathogens 13, no. 12: 1047. https://doi.org/10.3390/pathogens13121047
APA StyleGrant, L., Botelho, D., & Rehman, A. (2024). Early Detection Methods for Toxic Cyanobacteria Blooms. Pathogens, 13(12), 1047. https://doi.org/10.3390/pathogens13121047