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本文引用的文献

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A review of the application of machine learning in water quality evaluation.机器学习在水质评价中的应用综述。
Eco Environ Health. 2022 Jul 8;1(2):107-116. doi: 10.1016/j.eehl.2022.06.001. eCollection 2022 Jun.
2
Spatio-temporal connectivity of the aquatic microbiome associated with cyanobacterial blooms along a Great Lake riverine-lacustrine continuum.沿大湖河川-湖泊连续体与蓝藻水华相关的水生微生物群落的时空连通性。
Front Microbiol. 2023 Feb 9;14:1073753. doi: 10.3389/fmicb.2023.1073753. eCollection 2023.
3
Remote sensing of cyanobacterial blooms in inland waters: present knowledge and future challenges.内陆水域蓝藻水华的遥感监测:现状与未来挑战。
Sci Bull (Beijing). 2019 Oct 30;64(20):1540-1556. doi: 10.1016/j.scib.2019.07.002. Epub 2019 Jul 2.
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New horizons in developing cell lysis methods: A review.细胞裂解方法开发的新视野:综述
Biotechnol Bioeng. 2022 Nov;119(11):3007-3021. doi: 10.1002/bit.28198. Epub 2022 Aug 5.
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Cyanotoxin-encoding genes as powerful predictors of cyanotoxin production during harmful cyanobacterial blooms in an inland freshwater lake: Evaluating a novel early-warning system.编码蓝藻毒素的基因是内陆淡水湖中有害蓝藻水华期间蓝藻毒素产生的有力预测因子:评估一种新的预警系统。
Sci Total Environ. 2022 Jul 15;830:154568. doi: 10.1016/j.scitotenv.2022.154568. Epub 2022 Mar 14.
6
Comparing microscopy and DNA metabarcoding techniques for identifying cyanobacteria assemblages across hundreds of lakes.比较显微镜检查和 DNA 代谢组学技术在识别数百个湖泊中的蓝藻群落。
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Bacterial cell wall material properties determine E. coli resistance to sonolysis.细菌细胞壁的材料特性决定了大肠杆菌对声致降解的抗性。
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蓝藻水华监测:淡水生态系统的分子方法与技术

Cyanobacterial Algal Bloom Monitoring: Molecular Methods and Technologies for Freshwater Ecosystems.

作者信息

Saleem Faizan, Jiang Jennifer L, Atrache Rachelle, Paschos Athanasios, Edge Thomas A, Schellhorn Herb E

机构信息

Department of Biology, McMaster University, Hamilton, ON L8S 4L8, Canada.

出版信息

Microorganisms. 2023 Mar 27;11(4):851. doi: 10.3390/microorganisms11040851.

DOI:10.3390/microorganisms11040851
PMID:37110273
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC10144707/
Abstract

Cyanobacteria (blue-green algae) can accumulate to form harmful algal blooms (HABs) on the surface of freshwater ecosystems under eutrophic conditions. Extensive HAB events can threaten local wildlife, public health, and the utilization of recreational waters. For the detection/quantification of cyanobacteria and cyanotoxins, both the United States Environmental Protection Agency (USEPA) and Health Canada increasingly indicate that molecular methods can be useful. However, each molecular detection method has specific advantages and limitations for monitoring HABs in recreational water ecosystems. Rapidly developing modern technologies, including satellite imaging, biosensors, and machine learning/artificial intelligence, can be integrated with standard/conventional methods to overcome the limitations associated with traditional cyanobacterial detection methodology. We examine advances in cyanobacterial cell lysis methodology and conventional/modern molecular detection methods, including imaging techniques, polymerase chain reaction (PCR)/DNA sequencing, enzyme-linked immunosorbent assays (ELISA), mass spectrometry, remote sensing, and machine learning/AI-based prediction models. This review focuses specifically on methodologies likely to be employed for recreational water ecosystems, especially in the Great Lakes region of North America.

摘要

蓝藻(蓝绿藻)在富营养化条件下能够在淡水生态系统表面聚集形成有害藻华(HABs)。大规模的藻华事件会威胁当地野生动物、公众健康以及娱乐用水的使用。对于蓝藻和蓝藻毒素的检测/定量,美国环境保护局(USEPA)和加拿大卫生部都越来越多地表明分子方法可能会很有用。然而,每种分子检测方法在监测娱乐用水生态系统中的藻华时都有其特定的优点和局限性。包括卫星成像、生物传感器以及机器学习/人工智能在内的快速发展的现代技术,可以与标准/传统方法相结合,以克服与传统蓝藻检测方法相关的局限性。我们研究了蓝藻细胞裂解方法以及传统/现代分子检测方法的进展,包括成像技术、聚合酶链反应(PCR)/DNA测序、酶联免疫吸附测定(ELISA)、质谱分析、遥感以及基于机器学习/人工智能的预测模型。本综述特别关注可能用于娱乐用水生态系统的方法,尤其是在北美五大湖地区。