Literature DB >> 30014577

Supervised machine learning outperforms taxonomy-based environmental DNA metabarcoding applied to biomonitoring.

Tristan Cordier1, Dominik Forster2, Yoann Dufresne1,3, Catarina I M Martins4, Thorsten Stoeck2, Jan Pawlowski1,5.   

Abstract

Biodiversity monitoring is the standard for environmental impact assessment of anthropogenic activities. Several recent studies showed that high-throughput amplicon sequencing of environmental DNA (eDNA metabarcoding) could overcome many limitations of the traditional morphotaxonomy-based bioassessment. Recently, we demonstrated that supervised machine learning (SML) can be used to predict accurate biotic indices values from eDNA metabarcoding data, regardless of the taxonomic affiliation of the sequences. However, it is unknown to which extent the accuracy of such models depends on taxonomic resolution of molecular markers or how SML compares with metabarcoding approaches targeting well-established bioindicator species. In this study, we address these issues by training predictive models upon five different ribosomal bacterial and eukaryotic markers and measuring their performance to assess the environmental impact of marine aquaculture on independent data sets. Our results show that all tested markers are yielding accurate predictive models and that they all outperform the assessment relying solely on taxonomically assigned sequences. Remarkably, we did not find any significant difference in the performance of the models built using universal eukaryotic or prokaryotic markers. Using any molecular marker with a taxonomic range broad enough to comprise different potential bioindicator taxa, SML approach can overcome the limits of taxonomy-based eDNA bioassessment.
© 2018 John Wiley & Sons Ltd.

Keywords:  biomonitoring; biotic indices; environmental DNA; predictive models; supervised machine learning

Mesh:

Substances:

Year:  2018        PMID: 30014577     DOI: 10.1111/1755-0998.12926

Source DB:  PubMed          Journal:  Mol Ecol Resour        ISSN: 1755-098X            Impact factor:   7.090


  9 in total

1.  Deep learning and computer vision will transform entomology.

Authors:  Toke T Høye; Johanna Ärje; Kim Bjerge; Oskar L P Hansen; Alexandros Iosifidis; Florian Leese; Hjalte M R Mann; Kristian Meissner; Claus Melvad; Jenni Raitoharju
Journal:  Proc Natl Acad Sci U S A       Date:  2021-01-12       Impact factor: 11.205

2.  A demonstration of unsupervised machine learning in species delimitation.

Authors:  Shahan Derkarabetian; Stephanie Castillo; Peter K Koo; Sergey Ovchinnikov; Marshal Hedin
Journal:  Mol Phylogenet Evol       Date:  2019-07-16       Impact factor: 4.286

3.  Metabarcoding quantifies differences in accumulation of ballast water borne biodiversity among three port systems in the United States.

Authors:  John A Darling; John Martinson; Katrina M Pagenkopp Lohan; Katharine J Carney; Erik Pilgrim; Aabir Banerji; Kimberly K Holzer; Gregory M Ruiz
Journal:  Sci Total Environ       Date:  2020-08-03       Impact factor: 7.963

4.  Uncovering bacterial and functional diversity in macroinvertebrate mitochondrial-metagenomic datasets by differential centrifugation.

Authors:  Jan-Niklas Macher; Arjen Speksnijder; Le Qin Choo; Berry van der Hoorn; Willem Renema
Journal:  Sci Rep       Date:  2019-07-16       Impact factor: 4.379

Review 5.  Environmental DNA and RNA as Records of Human Exposome, Including Biotic/Abiotic Exposures and Its Implications in the Assessment of the Role of Environment in Chronic Diseases.

Authors:  Indu Shekhar Thakur; Deodutta Roy
Journal:  Int J Mol Sci       Date:  2020-07-10       Impact factor: 5.923

Review 6.  Interfacing Machine Learning and Microbial Omics: A Promising Means to Address Environmental Challenges.

Authors:  James M W R McElhinney; Mary Krystelle Catacutan; Aurelie Mawart; Ayesha Hasan; Jorge Dias
Journal:  Front Microbiol       Date:  2022-04-25       Impact factor: 6.064

7.  Environmental DNA metabarcoding reveals comparable responses to agricultural stressors on different trophic levels of a freshwater community.

Authors:  Kevin K Beentjes; S Henrik Barmentlo; Ellen Cieraad; Menno Schilthuizen; Berry B van der Hoorn; Arjen G C L Speksnijder; Krijn B Trimbos
Journal:  Mol Ecol       Date:  2022-01-06       Impact factor: 6.622

8.  Comparison of morphological, DNA barcoding, and metabarcoding characterizations of freshwater nematode communities.

Authors:  Janina Schenk; Nils Kleinbölting; Walter Traunspurger
Journal:  Ecol Evol       Date:  2020-02-15       Impact factor: 2.912

9.  Analysis of 13,312 benthic invertebrate samples from German streams reveals minor deviations in ecological status class between abundance and presence/absence data.

Authors:  Dominik Buchner; Arne J Beermann; Alex Laini; Peter Rolauffs; Simon Vitecek; Daniel Hering; Florian Leese
Journal:  PLoS One       Date:  2019-12-23       Impact factor: 3.240

  9 in total

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