Litcius/Paper detail

‘SRS’ R Package and ‘q2-srs’ QIIME 2 Plugin: Normalization of Microbiome Data Using Scaling with Ranked Subsampling (SRS)

Vitor Heidrich, Petr Karlovský, Lukas Beule

2021Applied Sciences81 citationsDOIOpen Access PDF

Abstract

Several ecological data types, especially microbiome count data, are commonly sample-wise normalized before analysis to correct for sampling bias and other technical artifacts. Recently, we developed an algorithm for the normalization of ecological count data called ‘scaling with ranked subsampling (SRS)’, which surpasses the widely adopted ‘rarefying’ (random subsampling without replacement) in reproducibility and in safeguarding the original community structure. Here, we describe an implementation of the SRS algorithm in the ‘SRS’ R package and the ‘q2-srs’ QIIME 2 plugin. We also provide accessory functions for dataset exploration to guide the choice of parameters for SRS.

Topics & Concepts

Normalization (sociology)Plug-inComputer scienceR packageScalingCount dataSample (material)MicrobiomeData miningStatisticsPoisson distributionMathematicsBiologyBioinformaticsComputational scienceGeometrySociologyProgramming languageChromatographyAnthropologyChemistryGut microbiota and healthMicrobial Community Ecology and PhysiologyBacterial Identification and Susceptibility Testing