Rapid Assessment of Phytoplankton Assemblages Using Next Generation

Rapid Assessment of Phytoplankton Assemblages Using Next Generation

bioRxiv preprint doi: https://doi.org/10.1101/2019.12.11.873034; this version posted December 12, 2019. The copyright holder for this preprint (which was not certified by peer review) is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under aCC-BY-NC-ND 4.0 International license. 1 Rapid assessment of phytoplankton assemblages using Next Generation 2 Sequencing – Barcode of Life database: a widely applicable toolkit to monitor 3 biodiversity and harmful algal blooms (HABs) 4 Natalia V. Ivanova1*¶, L. Cynthia Watson2¶, Jérôme Comte2#a, Kyrylo Bessonov1#b, Arusyak 5 Abrahamyan1, Timothy W. Davis4, George S. Bullerjahn4, Susan B. Watson2#c 6 1 Canadian Centre for DNA Barcoding, Centre for Biodiversity Genomics, University of Guelph, 7 Guelph, ON, Canada 8 2 Watershed Hydrology and Ecology Research Division, Water Science and Technology, 9 Environment and Climate Change Canada, Burlington, ON, Canada 10 4 Department of Biological Sciences, Bowling Green State University, Bowling Green, OH, USA 11 #a Current Address: Institut national de la recherche scientifique, Centre - Eau Terre 12 Environnement, Québec, QC, Canada 13 #b Current Address: National Microbiology Laboratory, Public Health Agency of Canada, 14 Guelph, ON, Canada 15 #c Biology Department, University of Waterloo, Waterloo ON, Canada 16 ¶These authors contributed equally to this work. 17 *Corresponding author: 18 E-mail: [email protected] (NVI) 1 bioRxiv preprint doi: https://doi.org/10.1101/2019.12.11.873034; this version posted December 12, 2019. The copyright holder for this preprint (which was not certified by peer review) is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under aCC-BY-NC-ND 4.0 International license. 19 Abstract 20 Harmful algal blooms have important implications for the health, functioning and services of aquatic 21 ecosystems. Our ability to detect and monitor these events is often challenged by the lack of rapid and 22 cost-effective methods to identify bloom-forming organisms and their potential for toxin production, 23 Here, we developed and applied a combination of DNA barcoding and Next Generation Sequencing 24 (NGS) for the rapid assessment of phytoplankton community composition with focus on two important 25 indicators of ecosystem health: toxigenic bloom-forming cyanobacteria and impaired planktonic 26 biodiversity. To develop this molecular toolset for identification of cyanobacterial and algal species 27 present in HABs (Harmful Algal Blooms), hereafter called HAB-ID, we optimized NGS protocols, 28 applied a newly developed bioinformatics pipeline and constructed a BOLD (Barcode of Life Data 29 System) 16S reference database from cultures of 203 cyanobacterial and algal strains representing 101 30 species with particular focus on bloom and toxin producing taxa. Using the new reference database of 16S 31 rDNA sequences and constructed mock communities of mixed strains for protocol validation we 32 developed new NGS primer set which can recover 16S from both cyanobacteria and eukaryotic algal 33 chloroplasts. We also developed DNA extraction protocols for cultured algal strains and environmental 34 samples, which match commercial kit performance and offer a cost-efficient solution for large scale 35 ecological assessments of harmful blooms while giving benefits of reproducibility and increased 36 accessibility. Our bioinformatics pipeline was designed to handle low taxonomic resolution for 37 problematic genera of cyanobacteria such as the Anabaena-Aphanizomenon-Dolichospermum species 38 complex, two clusters of Anabaena (I and II), Planktothrix and Microcystis. This newly developed HAB- 39 ID toolset was further validated by applying it to assess cyanobacterial and algal composition in field 40 samples from waterbodies with recurrent HABs events. 41 2 bioRxiv preprint doi: https://doi.org/10.1101/2019.12.11.873034; this version posted December 12, 2019. The copyright holder for this preprint (which was not certified by peer review) is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under aCC-BY-NC-ND 4.0 International license. 42 Introduction 43 Outbreaks of harmful algal blooms (HABs) dominated by toxigenic and nuisance cyanobacteria are 44 increasingly reported at the global scale [1–5] with adverse effects on the health, resilience of aquatic 45 food-webs and many negative socioeconomic impacts, such as decreased water quality, recreation, 46 businesses and property values [6–8]. Under high nutrient concentration dominance of cyanobacteria is 47 associated with reduction of phytoplankton biomass resulting in lower zooplankton community diversity 48 affecting aquatic food-webs [9–11]. HABs have garnered significant national and international attention, 49 yet their management remains a major problem, as these events and their associated risks are difficult to 50 identify and predict in a timely fashion. Expedient detection and accurate identification of toxigenic and 51 bloom-forming species are essential to assess the potential risks associated with a bloom development, to 52 identify the main sources of HABs taxa and to evaluate the main factors that drive their spatial and 53 temporal dynamics. This information is fundamental to any effective management plan developed to 54 predict, manage, and reduce HAB frequency, severity, and toxicity. 55 Traditionally, cyanobacteria and eukaryotic microalgae have been classified and identified by 56 microscopic analysis of key morphological/cellular characteristics such as pigmentation, cell arrangement 57 and size (unicell/filament/trichome/colony), specialised cells (heterocytes/akinetes/zygospores), gas 58 vacuoles and sheath, cell wall, flagella, plastid number and arrangement, division planes etc. [12–15]. 59 However, many of these diagnostic characters (e.g. size, colonial configuration, gas vacuoles, specialised 60 cells) vary under different environmental conditions and can be lost during cultivation [16,17]. Komárek 61 & Anagnostidis [15] note that up to 50% of strains in culture collections do not correspond to diagnostic 62 characters of the taxa to which they were initially assigned. Because of these issues with traditional 63 identification methods, cyanobacterial systematics have been undergoing widespread revision using a 64 polyphasic approach, combining molecular analysis of 16S rRNA gene and other markers [18] with 65 biochemical and other traits [19]. 16S rDNA is commonly used to identify algae and cyanobacteria and 66 has been applied in DNA barcoding of harmful cyanobacteria [20], phylogenetic evaluation of 3 bioRxiv preprint doi: https://doi.org/10.1101/2019.12.11.873034; this version posted December 12, 2019. The copyright holder for this preprint (which was not certified by peer review) is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under aCC-BY-NC-ND 4.0 International license. 67 heterocytous cyanobacteria [21], and accessing symbiotic cyanobacteria community in ascidians [22]. 68 The DNA barcoding utilizes sequence diversity in short standardized gene regions for species 69 identification and discovery [23] and although the use of DNA barcodes for species identification has 70 been increasing, there are still no comprehensive reference libraries for freshwater phytoplankton, 71 especially for toxin-producing species. As a fundamental part of this project outcome, we developed a 72 curated reference database with focus on bloom-and toxin producers, generated for cyanobacterial 16S 73 and algal 16S chloroplast rDNA. This database was derived from culture collections and hosted in 74 Barcode of Life Data System (BOLD) [24], an analytical workbench and depository for DNA barcodes 75 linking voucher specimen information (collection data and digital images) with sequence data , including 76 laboratory audit trail and sequence trace files. 77 Given the socioeconomic importance of HABs, a rapid method for community-wide 78 phytoplankton assessment offers an important tool to detect and monitor for bloom-forming and toxigenic 79 taxa and serve as an effective early warning system for the development of potentially harmful blooms. 80 Molecular techniques such as quantitative PCR (qPCR) have been used for the rapid detection of 81 toxigenic and bloom-forming cyanobacterial and algal species [25–28], but this technique is limited to a 82 few species at a time. NGS offers an alternative and potentially more powerful metagenomic approach to 83 rapidly and accurately identify multiple species from a mixed sample. This approach has been used 84 successfully in previous studies to assess environmental samples for eubacterial, cyanobacterial and 85 phytoplankton composition [28,29] and diatom species assemblages [30], and for evaluating 86 methodological biases in mock communities [31–33]. Yet, all studies to date have been conducted alone 87 with their own sets of primers and experimental conditions, moreover, there is still no standardized and 88 comprehensive database of cyanobacterial and phytoplankton sequences which is urgently needed. 89 Here we report the results of a multi-year study designed to develop a HAB-ID toolset for rapid 90 assessment algal and cyanobacterial diversity with focus on two important indicators of ecosystem health: 91 toxigenic bloom-forming cyanobacteria and impaired planktonic biodiversity

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