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rmRNAseq: Differential Expression Analysis for Repeated-measures RNA-seq Data
Bioinformatics
  • Yet Nguyen, Old Dominion University
  • Dan Nettleton, Iowa State University
Document Type
Article
Publication Version
Accepted Manuscript
Publication Date
5-25-2020
DOI
10.1093/bioinformatics/btaa525
Abstract

Motivation: With the reduction in price of next generation sequencing technologies, gene expression profiling using RNA-seq has increased the scope of sequencing experiments to include more complex designs, such as designs involving repeated measures. In such designs, RNA samples are extracted from each experimental unit at multiple time points. The read counts that result from RNA sequencing of the samples extracted from the same experimental unit tend to be temporally correlated. Although there are many methods for RNA-seq differential expression analysis, existing methods do not properly account for within-unit correlations that arise in repeated-measures designs.

Results: We address this shortcoming by using normalized log-transformed counts and associated precision weights in a general linear model pipeline with continuous autoregressive structure to account for the correlation among observations within each experimental unit. We then utilize parametric bootstrap to conduct differential expression inference. Simulation studies show the advantages of our method over alternatives that do not account for the correlation among observations within experimental units.

Availability:We provide anRpackage rmRNAseq implementing our proposed method (function TC_CAR1) at https://cran.r-project.org/web/packages/rmRNAseq/index.html. Reproducible R codes for data analysis and simulation are available at https://github.com/ntyet/rmRNAseq/ tree/master/simulation.

Comments

This is a manuscript of an article published as Nguyen, Yet, and Dan Nettleton. "rmRNAseq: Differential Expression Analysis for Repeated-measures RNA-seq Data." Bioinformatics (2020). doi: 10.1093/bioinformatics/btaa525. Posted with permission.

Copyright Owner
The Authors
Language
en
File Format
application/pdf
Citation Information
Yet Nguyen and Dan Nettleton. "rmRNAseq: Differential Expression Analysis for Repeated-measures RNA-seq Data" Bioinformatics (2020)
Available at: http://works.bepress.com/dan-nettleton/135/