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Embracing Environmental Genomics and Machine Learning for Routine Biomonitoring

Journal

TRENDS IN MICROBIOLOGY
Volume 27, Issue 5, Pages 387-397

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.tim.2018.10.012

Keywords

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Funding

  1. Swiss Network for International Studies
  2. Swiss National Science Foundation [31003A_179125]
  3. European Cross-Border Cooperation Program (Interreg France-Switzerland 2014-2020, SYNAQUA project)
  4. IKERBASQUE The Basque Foundation for Science
  5. Deutsche Forschungsgemeinschaft (DFG) [STO414/15-1]
  6. European Union [CA15219]

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Genomics is fast becoming a routine tool in medical diagnostics and cutting-edge biotechnologies. Yet, its use for environmental biomonitoring is still considered a futuristic ideal. Until now, environmental genomics was mainly used as a replacement of the burdensome morphological identification, to screen known morphologically distinguishable bioindicator taxa. While prokaryotic and eukaryotic microbial diversity is of key importance in ecosystem functioning, its implementation in biomonitoring programs is still largely unappreciated, mainly because of difficulties in identifying microbes and limited knowledge of their ecological functions. Here, we argue that the combination of massive environmental genomics microbial data with machine learning algorithms can be extremely powerful for biomonitoring programs and pave the way to fill important gaps in our understanding of microbial ecology.

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