A hypothesis-driven approach to assessing significance of differences in RNA expression levels among specific groups of genes

Genome-wide molecular gene expression studies generally compare expression values for each gene across multiple conditions followed by cluster and gene set enrichment analysis to determine whether differentially expressed genes are enriched in specific biochemical pathways, cellular components, biol...

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Main Authors: Mingze He, Peng Liu, Carolyn J. Lawrence-Dill
Format: Article
Language:English
Published: Elsevier 2017-09-01
Series:Current Plant Biology
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2214662817301007
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spelling doaj-5383aa62fdfe48de979047034a7a314f2020-11-25T00:32:02ZengElsevierCurrent Plant Biology2214-66282017-09-0111C465110.1016/j.cpb.2017.12.003A hypothesis-driven approach to assessing significance of differences in RNA expression levels among specific groups of genesMingze He0Peng Liu1Carolyn J. Lawrence-Dill2Bioinformatics and Computational Biology Program, Iowa State University, Ames, IA, 50011, USABioinformatics and Computational Biology Program, Iowa State University, Ames, IA, 50011, USABioinformatics and Computational Biology Program, Iowa State University, Ames, IA, 50011, USAGenome-wide molecular gene expression studies generally compare expression values for each gene across multiple conditions followed by cluster and gene set enrichment analysis to determine whether differentially expressed genes are enriched in specific biochemical pathways, cellular components, biological processes, and/or molecular functions, etc. This approach to analyzing differences in gene expression enables discovery of gene function, but is not useful to determine whether pre-defined groups of genes share or diverge in their expression patterns in response to treatments nor to assess the correctness of pre-defined gene set groupings. Here we present a simple method that changes the dimension of comparison by treating genes as variable traits to directly assess significance of differences in expression levels among pre-defined gene groups. Because expression distributions are typically skewed (thus unfit for direct assessment using Gaussian statistical methods) our method involves transforming expression data to approximate a normal distribution followed by dividing the genes into groups, then applying Gaussian parametric methods to assess significance of observed differences. This method enables the assessment of differences in gene expression distributions within and across samples, enabling hypothesis-based comparison among groups of genes. We demonstrate this method by assessing the significance of specific gene groups’ differential response to heat stress conditions in maize.http://www.sciencedirect.com/science/article/pii/S2214662817301007Gene expressionStatistical methodsRNA-seqGenomics
collection DOAJ
language English
format Article
sources DOAJ
author Mingze He
Peng Liu
Carolyn J. Lawrence-Dill
spellingShingle Mingze He
Peng Liu
Carolyn J. Lawrence-Dill
A hypothesis-driven approach to assessing significance of differences in RNA expression levels among specific groups of genes
Current Plant Biology
Gene expression
Statistical methods
RNA-seq
Genomics
author_facet Mingze He
Peng Liu
Carolyn J. Lawrence-Dill
author_sort Mingze He
title A hypothesis-driven approach to assessing significance of differences in RNA expression levels among specific groups of genes
title_short A hypothesis-driven approach to assessing significance of differences in RNA expression levels among specific groups of genes
title_full A hypothesis-driven approach to assessing significance of differences in RNA expression levels among specific groups of genes
title_fullStr A hypothesis-driven approach to assessing significance of differences in RNA expression levels among specific groups of genes
title_full_unstemmed A hypothesis-driven approach to assessing significance of differences in RNA expression levels among specific groups of genes
title_sort hypothesis-driven approach to assessing significance of differences in rna expression levels among specific groups of genes
publisher Elsevier
series Current Plant Biology
issn 2214-6628
publishDate 2017-09-01
description Genome-wide molecular gene expression studies generally compare expression values for each gene across multiple conditions followed by cluster and gene set enrichment analysis to determine whether differentially expressed genes are enriched in specific biochemical pathways, cellular components, biological processes, and/or molecular functions, etc. This approach to analyzing differences in gene expression enables discovery of gene function, but is not useful to determine whether pre-defined groups of genes share or diverge in their expression patterns in response to treatments nor to assess the correctness of pre-defined gene set groupings. Here we present a simple method that changes the dimension of comparison by treating genes as variable traits to directly assess significance of differences in expression levels among pre-defined gene groups. Because expression distributions are typically skewed (thus unfit for direct assessment using Gaussian statistical methods) our method involves transforming expression data to approximate a normal distribution followed by dividing the genes into groups, then applying Gaussian parametric methods to assess significance of observed differences. This method enables the assessment of differences in gene expression distributions within and across samples, enabling hypothesis-based comparison among groups of genes. We demonstrate this method by assessing the significance of specific gene groups’ differential response to heat stress conditions in maize.
topic Gene expression
Statistical methods
RNA-seq
Genomics
url http://www.sciencedirect.com/science/article/pii/S2214662817301007
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