| Literature DB >> 30832286 |
Clare I M Adams1, Michael Knapp2, Neil J Gemmell3, Gert-Jan Jeunen4, Michael Bunce5, Miles D Lamare6, Helen R Taylor7.
Abstract
Population genetic data underpin many studies of behavioral, ecological, and evolutionary processes in wild populations and contribute to effective conservation management. However, collecting genetic samples can be challenging when working with endangered, invasive, or cryptic species. Environmental DNA (eDNA) offers a way to sample genetic material non-invasively without requiring visual observation. While eDNA has been trialed extensively as a biodiversity and biosecurity monitoring tool with a strong taxonomic focus, it has yet to be fully explored as a means for obtaining population genetic information. Here, we review current research that employs eDNA approaches for the study of populations. We outline challenges facing eDNA-based population genetic methodologies, and suggest avenues of research for future developments. We advocate that with further optimizations, this emergent field holds great potential as part of the population genetics toolkit.Entities:
Keywords: biodiversity; conservation; eDNA; genetics; mitochondrial DNA; mtDNA; populations; sampling methodology
Mesh:
Substances:
Year: 2019 PMID: 30832286 PMCID: PMC6470983 DOI: 10.3390/genes10030192
Source DB: PubMed Journal: Genes (Basel) ISSN: 2073-4425 Impact factor: 4.096
Figure 1Possible avenues of analyzing environmental DNA (eDNA) for population information. After eDNA is shed into the water column by target organisms of interest, collected, and extracted, multiple analyses can be used to obtain population data. These analyses have diverse applications, highlighted in the top yellow row, but each technique also presents its own challenges, highlighted in the bottom yellow row.
Potential challenges facing environmental DNA population genetic research with suggestions for tools to help mitigate some of the challenges. While previous research has applied a number of these tools to these challenges (as cited), research still remains to be done to fully address how each tool can help mitigate each challenge, and to identify advantages and drawbacks of each. Note that not all tools and techniques apply to all challenges.
| Challenges | |||||||
|---|---|---|---|---|---|---|---|
| Abundance | Allelic Drop-Out | Bioinformatic Challenges | Identifying Individuals | Long-Term Datasets | Obtaining Nuclear Markers | ||
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| Reduce spatial and temporal variance, especially for difficult-to-sample areas. Standardized deployment may help detect abundance changes in regular intervals [ | Document individual presence repeated through time [ | Precise, standardized capture across time and space [ | |||
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| Baited capture may reduce PCR amplification needed, reflecting true abundance ratios better. [ | Targeted capture of specific allelic variation [ | Identification of specific SNPs in a population. | Capture of specific allelic variation across time. | Target of nuDNA, especially SNP markers [ | ||
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| Absolute quantification of target molecules [ | Sensitively amplify different allelic variation, could reduce drop-out [ | Provides absolute quantification of specific molecule abundance [ | Perhaps amplify and quantify single-cell eDNA. | Sensitively quantify changes in target molecules over time. | Amplify and quantify nuclear marker loci. | |
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| Increase temporal resolution [ | Increase temporal resolution of expressed alleles. | Identify allele-specific expression at the population level [ | Detection of live individuals [ | Examine expressed gene changes within a population or community [ | Increased temporal resolution of nuclear genetic variation [ | |
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| Could increase detection chance of low copy number alleles [ | Could increase chance of detecting genetic diversity in replicates, perhaps allows for stricter filtering. | Could increase confidence in detection of individuals, especially if using single-cell techniques. | More robust datasets may show change throughout time at a finer scale. | Increased probability of detecting rare alleles. | ||
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| Capture of long reads or mtDNA genomes, see which alleles are linked [ | Longer reads may help compile individuals’ mtGenomes [ | Links SNPs to form genomic or mtDNA haplotypes. | May see recombination patterns through time. | Increased genomic coverage [ | ||
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| Approximation of unique individuals per sample assuming different genomes. | May have some allelic dropout if depth of sequencing is low [ | Identification of individuals allows for information to be analyzed with traditional population-genetics methodology. | Identify individuals based on cell genome [ | Identify changes in individual presence. | Target of nuDNA, perhaps even able to aid in sequencing of whole genome [ | |
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| Alleles of multiple species identified in the same sample with same primer [ | Possibility to identify multiple individuals of multiple species if individuals can be sorted. | Multiple species targeted for community composition snapshots [ | Possibility to target nuclear markers in multiple species in the same sample. | |||