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Temporal probabilistic modeling of bacterial compositions derived from 16S rRNA sequencing
2017
Bioinformatics
Motivation: The number of microbial and metagenomic studies has increased drastically due to advancements in next-generation sequencing-based measurement techniques. Statistical analysis and the validity of conclusions drawn from (time series) 16S rRNA and other metagenomic sequencing data is hampered by the presence of significant amount of noise and missing data (sampling zeros). Accounting uncertainty in microbiome data is often challenging due to the difficulty of obtaining biological
doi:10.1093/bioinformatics/btx549
pmid:28968799
pmcid:PMC5860357
fatcat:petx735ga5c4xhu5esvpslhila