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Machine learning for metagenomics: methods and tools

Authors
  • Soueidan, Hayssam
  • Nikolski, Macha
Type
Published Article
Journal
Metagenomics
Publisher
De Gruyter Open
Publication Date
May 31, 2016
Volume
1
Issue
1
Pages
1–19
Identifiers
DOI: 10.1515/metgen-2016-0001
Source
De Gruyter
Keywords
License
Green

Abstract

Owing to the complexity and variability of metagenomic studies, modern machine learning approaches have seen increased usage to answer a variety of question encompassing the full range of metagenomic NGS data analysis.We review here the contribution of machine learning techniques for the field of metagenomics, by presenting known successful approaches in a unified framework. This review focuses on five important metagenomic problems:OTU-clustering, binning, taxonomic proffiing and assignment, comparative metagenomics and gene prediction. For each of these problems, we identify the most prominent methods, summarize the machine learning approaches used and put them into perspective of similar methods.We conclude our review looking further ahead at the challenge posed by the analysis of interactions within microbial communities and different environments, in a field one could call “integrative metagenomics”.

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