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Monitoring of Technical Variation in Quantitative High-Throughput Datasets
by
Ilhami Visne
, Albert Kriegner
, Göran Jönsson
, Mattias Höglund
, Martin Lauss
, Markus Ringnér
in
Bias
/ Cancer
/ Computer programs
/ Design engineering
/ DNA microarrays
/ Gene expression
/ Genetic aspects
/ Genomics
/ Methylation
/ Monitoring
/ Original Research
/ Packages
/ Platforms
/ Regression
2013
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Monitoring of Technical Variation in Quantitative High-Throughput Datasets
by
Ilhami Visne
, Albert Kriegner
, Göran Jönsson
, Mattias Höglund
, Martin Lauss
, Markus Ringnér
in
Bias
/ Cancer
/ Computer programs
/ Design engineering
/ DNA microarrays
/ Gene expression
/ Genetic aspects
/ Genomics
/ Methylation
/ Monitoring
/ Original Research
/ Packages
/ Platforms
/ Regression
2013
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Monitoring of Technical Variation in Quantitative High-Throughput Datasets
by
Ilhami Visne
, Albert Kriegner
, Göran Jönsson
, Mattias Höglund
, Martin Lauss
, Markus Ringnér
in
Bias
/ Cancer
/ Computer programs
/ Design engineering
/ DNA microarrays
/ Gene expression
/ Genetic aspects
/ Genomics
/ Methylation
/ Monitoring
/ Original Research
/ Packages
/ Platforms
/ Regression
2013
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Monitoring of Technical Variation in Quantitative High-Throughput Datasets
Journal Article
Monitoring of Technical Variation in Quantitative High-Throughput Datasets
2013
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Overview
High-dimensional datasets can be confounded by variation from technical sources, such as batches. Undetected batch effects can have severe consequences for the validity of a study's conclusion(s). We evaluate high-throughput RNAseq and miRNAseq as well as DNA methylation and gene expression microarray datasets, mainly from the Cancer Genome Atlas (TCGA) project, in respect to technical and biological annotations. We observe technical bias in these datasets and discuss corrective interventions. We then suggest a general procedure to control study design, detect technical bias using linear regression of principal components, correct for batch effects, and re-evaluate principal components. This procedure is implemented in the R package swamp, and as graphical user interface software. In conclusion, high-throughput platforms that generate continuous measurements are sensitive to various forms of technical bias. For such data, monitoring of technical variation is an important analysis step.
Publisher
SAGE Publishing,SAGE Publications,Sage Publications Ltd. (UK),Sage Publications Ltd,Libertas Academica
Subject
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