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Machine learning applications in microbial ecology, human microbiome studies, and environmental monitoring
2021
Computational and Structural Biotechnology Journal
Advances in nucleic acid sequencing technology have enabled expansion of our ability to profile microbial diversity. These large datasets of taxonomic and functional diversity are key to better understanding microbial ecology. Machine learning has proven to be a useful approach for analyzing microbial community data and making predictions about outcomes including human and environmental health. Machine learning applied to microbial community profiles has been used to predict disease states in
doi:10.1016/j.csbj.2021.01.028
pmid:33680353
pmcid:PMC7892807
fatcat:xfmch3r3krekvhy5rmcc4bjys4