This site requires Cookies enabled in your browser for login.
WaterNet Home
WaterNet
for
pour le
Canada
Menu
WaterNet
Home
GWFO
Home
Master
List
Data
Centre
Collections
X
Defaults
Select All
Websites
X
Global Water Futures Observatories (GWFO) Global Water Futures (GWF) Global Institute for Water Security (GIWS) International Network of Alpine Research Catchment Hydrology
Legacy Research Programs
X
Changing Cold Regions Network (CCRN) Drought Research Initiative (DRI) International Network of Alpine Research Catchment Hydrology (Legacy Site) Improving Processes & Parameterization for Prediction in Cold Regions Hydrology (IP3) The Mackenzie Global Energy and Water Cycle Experiment (GEWEX) Study (MAGS)
Legacy sites
Map
Utilities
X
Account Settings Metadata Editor Record List Alias List Editor
Data Centre
Data Type Editor
. . .
X
Clear
Select All
Advanced Search
Related items loading ...
Fetching Chart ...
Overview Research Site Status and Provenance Access and Downloads
Name of Research Project
Related Project
Part
GWF-NGS: Next Generation Solutions for Healthy Water Resources
Dataset Title
DNA and RNA zooplankton metabarcoding to assess the efficacy of different oil spill clean-up techniques in a boreal lake
Additional Information
https://doi.org/10.20383/101.0313 GeoNetwork record: www.gwfnet.net/geonetwork/srv/eng/catalog.search#/metadata/00a9cee2-e654-45c0-b743-c5d58762c061 Tracking ID under eDNA project: UofS-eDNA-dataset-metadata-8
Abstract
Emerging tools, namely metabarcoding, has promise for high-throughput and benchmarkable biomonitoring of freshwater zooplankton communities. Additionally, regulators require further information to select best practices for remediating freshwater ecosystems after oil spills. DNA and RNA metabarcoding, or present and active zooplankton, respectively, was applied to compare with traditional morphological identification of freshwater zooplankton in experimental boreal shoreline enclosures. DNA and RNA metabarcoding was also applied in the context of assessing response of the zooplankton community exposed to simulated spills of diluted bitumen (dilbit), with experimental remediation practices of enhanced monitored natural recovery and shoreline cleaner application. Zooplankton samples were collected via pump on day -3 and 11 and 38 days after the simulated dilbit spill. The zooplankton samples were co-extracted for DNA and RNA and were PCR amplified targeting the mitochondrial Cytochrome c Oxidase subunit I gene (CO1) region, with amplicon sequencing following. This dataset includes the demultiplexed sequencing output, the feature table with species-level taxonomic annotation, and the sample metadata used for hypothesis testing.
Purpose
The project provides metabarcoding data of multiple communities during a period of diluted bitumen exposure and subsequent remediation treatments in lake mesocosms. This project will use next generation techniques to understand the changes of lower trophic organisms (eg. phytoplankton, zooplankton) under variable remediation efforts following a simulated spill of diluted bitumen.
Plain Language Summary
Following a simulated spill of diluted bitumen in a lake mesocosm, clean-up methods were implemented to assess the efficiency of different approaches. Zooplankton tissue and water samples were taken pre-exposure and two time points after exposure to assess the effects the various clean-up methods may have on lower trophic communities. Overall, this study will be used to help aid in ecological risk assessment of a crude petroleum spill and what the best approach is to clean-up the contaminated site.
Citations
Ankley, P., Xie, Y., Black, T., DeBofsky, A., Perry, M., Paterson, M., Hanson, M., Higgins, S., Giesy, J., Palace, V. (2020). DNA and RNA zooplankton metabarcoding to assess the efficacy of different oil spill clean-up techniques in a boreal lake [Dataset]. Federated Research Data Repository. https://doi.org/10.20383/101.0313 Ankley, P. J., Xie, Y., Black, T. A., DeBofsky, A., Perry, M., Paterson, M. J., Hanson, M., Higgins, S., Giesy, J. P., Palace, V. (2020). Using zooplankton metabarcoding to assess the efficacy of different techniques to clean-up an oil-spill in a boreal lake. Aquatic Toxicology 236: 105847. https://doi.org/10.1016/j.aquatox.2021.105847
Temporal Extent
Begin Date
End Date
2019-06-18
2019-07-30
Research Site Description (if needed)
International Institute for Sustainable Development – Experimental Lakes Area, Ontario, Canada
Research Site Location
Map Not Available
Display
View on Global Map
Dataset Version
1
Dataset Creation Date
2020-12-11
Status of data collection/production
○ Planned
○ In Progress
○ Abandoned
◉ Complete
Dataset Completion or Abandonment Date
2020-12-11
Data Update Frequency
○ Continually
○ Daily
○ Weekly
○ Biweekly
○ Monthly
○ Anually
○ As needed
○ Irregular
◉ None planned
○ Unknown
Primary Source of Data
◻ Unknown/Unspecified
◻ Census
▣ Field collected samples
▣ Field experiment
◻ Field observation
◻ Field survey
◻ Human biological samples
◻ Lab experiment
◻ Model simulation
◻ Previously collected
◻ Qualitative (from observations or interviews)
◻ Social survey
◻ Traditional knowledge
◻ Other Source of Data (Please specify in field below)
Data Lineage (if applicable). Please include versions (e.g., input and forcing data, models, and coupling modules; instrument measurements; surveys; sample collections; etc.)
1. Description of methods used for collection/generation of data: Zooplankton samples were collected from boreal lake mesocosms exposed to a simulated diluted bitumen spill and additional remediation practices. Remediation practices consisted of enhanced monitored natural recovery and shoreline cleaner application, with samples being collected day -3, day 11 and day 38 post-spill. All samples were collected following strict quality control methods, including decontaminated equipment, one-use items, and tools specific to treatment. Samples were immediately placed in LifeGuard Soil Preservation Solution Qiagen Inc., Mississauga, ON) on ice prior to being transferred to a -80C freezer for long-term storage. 16s amplicon sequencing Total genomic DNA and RNA was extracted from zooplankton samples using the AllPrep DNA/RNA Mini Kit (Qiagen Inc., Mississauga, ON). Concentrations were measured and checked for quality using Qubit 4 Fluorometer and NanoDrop Spectrophotometers, respectively (Thermo Fisher Scientific, USA). Complementary DNA (cDNA) was synthesized using SuperScript IV Reverse Transcriptase (Invitrogen, CA, USA) along with ezDNase to remove residual DNA. The COI gene was amplified using primers specified by Leray et al. 2013, with the forward primer (mICOIintF) (GGWACWGGWTGAACWGTWTAYCCYCC) and the reverse primer (jgHCO2198R) (TAAACTTCAGGGTGACCAAAAAATCA). Samples were dual indexed to increase throughput of sequencing (Fadrosh et al., 2014). Samples were amplified with a 50 ?L PCR reaction including Platinum Taq Hot Start II High-Fidelity DNA Polymerase (Invitrogen, USA) using a SimpliAmp thermal cycler (ThermoFisher Scientific) under the following conditions: initial denaturation at 98?C for 30s, followed by 25 cycles of 98?C for 30s, 58?C for 30s, and 72?C for 30s, with a final extension at 72?C for 10 min. PCR products were assessed for size and specificity using electrophoresis on a 1.2% w/v agarose gel and purified using the Qiagen QIAquick PCR Purification Kit (Qiagen Inc.). All purified products were quantified with the Qubit dsDNA HS assay kit and concentrations were adjusted to 1 ng/ ?L with molecular-grade water. Purified products were pooled, and libraries were constructed using the NEBNext? DNA Library Prep Master Mix Set for Illumina? (New England BioLabs Inc., Whitby, ON). Libraries were quantified prior to sequencing using the NEBNext? Library Quant Kit for Illumina?. Sequencing was performed on an Illumina? MiSeq instrument (Illumina, San Diego, CA) using a 2x300 base pair kit. 2. Methods for processing the data: Sequences were trimmed, cleaned, and demultiplexed using a combination of USEARCH v11 (Edgar 2016) and fastq-multx ( https://github.com/brwnj/fastq-multx ). Paired-end sequences were merged with USEARCH v11 (Edgar 2016). Merged reads were then filtered for high quality (ee > 1.0) and greater length (300 bp). Primer binding regions were then removed from the merged sequence, with 17 nucleotides stripped left and 20 nucleotides stripped right Chimeric sequences were subsequently removed using unoise3, and ZOTUs (zero-radius OTUs) were compared to the BOLD database, an in-house curated database, and the NCBI database for taxonomic annotation. Statistical analyses were performed in R (R Core Team, 2013). All samples specified were collapsed down to unique Time, Nucleic Acid, and Enclosure for further data analysis (See Data Specific Information For: UofS-eDNA-sample-annotation-8.xlsx and variable list: TimeNucleicAcidEnclosure). 3. Instrument- or software-specific information needed to interpret the data: User defined. These are fastq files. They can be analyzed in QIIME2 or R. 4. Standards and calibration information, if appropriate: 5. Environmental/experimental conditions: Zooplankton samples were collected from the boreal lake mesocosms (Lake 260) located at the IISD-ELA. The samples were collected on June 18th, July 2nd, and July 29th using a pump and 53 micrometer filter mesh, with 20 Liters of water being pumped per sample. 6. Describe any quality-assurance procedures performed on the data: Quality was visualized with fastqc. USEARCH was used to trim low-quality bases out of the dataset prior to demultiplexing and merge reads after demultiplexing. unoise3 then filters and denoises the merged sequences. unoise3 also removes chimeras from the data.
Terms of Use
Creative Commons Attribution 4.0 International (CC BY 4.0) https://creativecommons.org/licenses/by/4.0/
Does the data have access restrictions?
▣ No restriction (data is currently open to public)
◻ Limited (data is currently under embargo until publication)
◻ Limited (data involves intellectual property issues related to local or traditional knowledge)
◻ Limited (release of data may cause harm to the environment or to the public)
◻ Limited (pre-existing data has been used and is subject to access restrictions)
◻ Limited (data involves human subjects)
◻ Limited (data is supported by industry partnerships)
◻ Limited (data is supported by government partnerships)
Download Links and Instructions
The data can be downloaded here: https://doi.org/10.20383/101.0313
Total Size of all Dataset Files (GB)
0.21
File formats and online databases
◻ Link to online database or web services (e.g., WISKI, ECCC)
▣ Archive files (.zip, .rar, .7z, .tar, .tgz, .tar.gz, etc.)
◻ CSV files (.csv - comma or tab separated value files)
▣ Excel document files (.xlsx, .xls)
◻ Image files (e.g., .tiff, .jpeg, .png, .gif, etc.)
◻ NetCDF files (.netcdf, .nc)
◻ Text files (.txt)
◻ Word document files (.docx, .doc)
◻ Other (Please specify in field below)
© 2026 - WaterNet Version 2026-06-01
Global Water Futures Observatories
Powered by
G W F Net
T-2020-12-15-e1CVe1G4hVgke2zFGCIs6FUvA Dataset 1.2