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lmerSeq: an R package for analyzing transformed RNA-Seq data with linear mixed effects models

Brian Vestal, Elizabeth A. Wynn, Camille M. Moore

2022BMC Bioinformatics20 citationsDOIOpen Access PDF

Abstract

BACKGROUND: Studies that utilize RNA Sequencing (RNA-Seq) in conjunction with designs that introduce dependence between observations (e.g. longitudinal sampling) require specialized analysis tools to accommodate this additional complexity. This R package contains a set of utilities to fit linear mixed effects models to transformed RNA-Seq counts that properly account for this dependence when performing statistical analyses. RESULTS: In a simulation study comparing lmerSeq and two existing methodologies that also work with transformed RNA-Seq counts, we found that lmerSeq was comprehensively better in terms of nominal error rate control and statistical power. CONCLUSIONS: Existing R packages for analyzing transformed RNA-Seq data with linear mixed models are limited in the variance structures they allow and/or the transformation methods they support. The lmerSeq package offers more flexibility in both of these areas and gave substantially better results in our simulations.

Topics & Concepts

Mixed modelR packageComputer scienceFlexibility (engineering)Generalized linear mixed modelSet (abstract data type)Linear modelRNA-SeqData miningVariance (accounting)Data setMathematicsStatisticsArtificial intelligenceMachine learningComputational scienceBiologyProgramming languageGeneTranscriptomeGene expressionAccountingBusinessBiochemistryGenomics and Phylogenetic StudiesSingle-cell and spatial transcriptomicsRNA and protein synthesis mechanisms
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