Predicting bacterial community assemblages using an artificial neural network approach
- PMID: 22504588
- DOI: 10.1038/nmeth.1975
Predicting bacterial community assemblages using an artificial neural network approach
Abstract
Understanding the interactions between the Earth's microbiome and the physical, chemical and biological environment is a fundamental goal of microbial ecology. We describe a bioclimatic modeling approach that leverages artificial neural networks to predict microbial community structure as a function of environmental parameters and microbial interactions. This method was better at predicting observed community structure than were any of several single-species models that do not incorporate biotic interactions. The model was used to interpolate and extrapolate community structure over time with an average Bray-Curtis similarity of 89.7. Additionally, community structure was extrapolated geographically to create the first microbial map derived from single-point observations. This method can be generalized to the many microbial ecosystems for which detailed taxonomic data are currently being generated, providing an observation-based modeling technique for predicting microbial taxonomic structure in ecological studies.
Comment in
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Predicting microbial distributions in space and time.Nat Methods. 2012 May 30;9(6):549-51. doi: 10.1038/nmeth.2041. Nat Methods. 2012. PMID: 22669651 No abstract available.
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