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Supervised classification of human microbiota. | LitMetric

Supervised classification of human microbiota.

FEMS Microbiol Rev

Department of Computer Science, University of Colorado, Boulder, CO, USA.

Published: March 2011

AI Article Synopsis

  • Recent DNA sequencing advancements have enabled extensive data collection from human-associated microbial communities, aiming to identify key microorganisms linked to health or disease states.
  • Traditional methods struggle with the complexity and rarity of certain taxa, but the machine learning field has found effective techniques in other domains, like microarray analysis.
  • This review highlights the application of supervised classifiers for microbiota classification and offers insight into unique microbial data structures that could lead to new classification methods, along with benchmark tasks for community testing.

Article Abstract

Recent advances in DNA sequencing technology have allowed the collection of high-dimensional data from human-associated microbial communities on an unprecedented scale. A major goal of these studies is the identification of important groups of microorganisms that vary according to physiological or disease states in the host, but the incidence of rare taxa and the large numbers of taxa observed make that goal difficult to obtain using traditional approaches. Fortunately, similar problems have been addressed by the machine learning community in other fields of study such as microarray analysis and text classification. In this review, we demonstrate that several existing supervised classifiers can be applied effectively to microbiota classification, both for selecting subsets of taxa that are highly discriminative of the type of community, and for building models that can accurately classify unlabeled data. To encourage the development of new approaches to supervised classification of microbiota, we discuss several structures inherent in microbial community data that may be available for exploitation in novel approaches, and we include as supplemental information several benchmark classification tasks for use by the community.

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Source
http://dx.doi.org/10.1111/j.1574-6976.2010.00251.xDOI Listing

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