2012
DOI: 10.1093/nar/gks497
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METAGENassist: a comprehensive web server for comparative metagenomics

Abstract: With recent improvements in DNA sequencing and sample extraction techniques, the quantity and quality of metagenomic data are now growing exponentially. This abundance of richly annotated metagenomic data and bacterial census information has spawned a new branch of microbiology called comparative metagenomics. Comparative metagenomics involves the comparison of bacterial populations between different environmental samples, different culture conditions or different microbial hosts. However, in order to do compa… Show more

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Cited by 340 publications
(218 citation statements)
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“…Sequences were also assigned to phylotypes using the phylotype command in Mothur. A multivariate data analysis of the OTUs was performed using METAGENassist (Arndt et al, 2012), followed by normalization based on interquantile range (IQR) (Hackstadt and Hess, 2009) and log 2 -transformation. IQR normalization allows one to increase statistical power by removing sequences that do not fall within the middle 50% of observations and thus reducing the number of statistical tests one has to perform.…”
Section: Methodsmentioning
confidence: 99%
See 1 more Smart Citation
“…Sequences were also assigned to phylotypes using the phylotype command in Mothur. A multivariate data analysis of the OTUs was performed using METAGENassist (Arndt et al, 2012), followed by normalization based on interquantile range (IQR) (Hackstadt and Hess, 2009) and log 2 -transformation. IQR normalization allows one to increase statistical power by removing sequences that do not fall within the middle 50% of observations and thus reducing the number of statistical tests one has to perform.…”
Section: Methodsmentioning
confidence: 99%
“…IQR normalization allows one to increase statistical power by removing sequences that do not fall within the middle 50% of observations and thus reducing the number of statistical tests one has to perform. Principal component analysis (PCA) and significant features were identified for all treatments using METAGENassist (Arndt et al, 2012). The Vegan package (Oksanen et al, 2012) for R was used for community dissimilarity calculations (Bray-Curtis index) and principal coordinate analysis (PCoA).…”
Section: Methodsmentioning
confidence: 99%
“…Analysis of metabolite data was conducted in R and METAGENassist (Arndt et al, 2012). For hierarchical clustering, samples were normalized (sum of 1) to make them comparable and peak concentrations normalized with a Pareto scaling.…”
Section: Cuticular Wax Analysismentioning
confidence: 99%
“…Analysis of such communities requires the use of bioinformatics tools to efficiently and reproducibly process the large amount of data generated from amplicon sequencing to derive a taxonomic overview. There are various tools available to analyse 16S rRNA gene sequencing data including QIIME (Quantitative Insights Into Microbial Ecology) [2], mothur [3], MG-RAST (Metagenomics -Rapid Annotation using Subsystems Technology) [4], Genboree [5], EzTaxon [6], Pheonix2 [7], METAGENassist [8], MEGAN [9], VAMPS [10], SnoWMan [11], CloVR-16S [12], the RDPipeline (Ribosomal Database Project Pipeline) [13], Vegan [14], ade4 [15], and ape [16]. These tools can be categorised into those that are self-contained analysis pipelines i.e.…”
Section: Introductionmentioning
confidence: 99%