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A new normalization for Nanostring nCounter gene expression data.


ABSTRACT: The Nanostring nCounter gene expression assay uses molecular barcodes and single molecule imaging to detect and count hundreds of unique transcripts in a single reaction. These counts need to be normalized to adjust for the amount of sample, variations in assay efficiency and other factors. Most users adopt the normalization approach described in the nSolver analysis software, which involves background correction based on the observed values of negative control probes, a within-sample normalization using the observed values of positive control probes and normalization across samples using reference (housekeeping) genes. Here we present a new normalization method, Removing Unwanted Variation-III (RUV-III), which makes vital use of technical replicates and suitable control genes. We also propose an approach using pseudo-replicates when technical replicates are not available. The effectiveness of RUV-III is illustrated on four different datasets. We also offer suggestions on the design and analysis of studies involving this technology.

SUBMITTER: Molania R 

PROVIDER: S-EPMC6614807 | biostudies-literature | 2019 Jul

REPOSITORIES: biostudies-literature

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A new normalization for Nanostring nCounter gene expression data.

Molania Ramyar R   Gagnon-Bartsch Johann A JA   Dobrovic Alexander A   Speed Terence P TP  

Nucleic acids research 20190701 12


The Nanostring nCounter gene expression assay uses molecular barcodes and single molecule imaging to detect and count hundreds of unique transcripts in a single reaction. These counts need to be normalized to adjust for the amount of sample, variations in assay efficiency and other factors. Most users adopt the normalization approach described in the nSolver analysis software, which involves background correction based on the observed values of negative control probes, a within-sample normalizat  ...[more]

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