A normalization method that controls for total RNA abundance affects the identification of differentially expressed genes, revealing bias toward morning‐expressed responses

Author:

Laosuntisuk Kanjana1ORCID,Vennapusa Amaranatha2ORCID,Somayanda Impa M.3ORCID,Leman Adam R.4ORCID,Jagadish SV Krishna35ORCID,Doherty Colleen J.1ORCID

Affiliation:

1. Department of Molecular and Structural Biochemistry North Carolina State University Raleigh North Carolina USA

2. Department of Agriculture and Natural Resources Delaware State University Dover Delaware USA

3. Department of Plant and Soil Science Texas Tech University Lubbock Texas 79410 USA

4. Department of Science and Technology The Good Food Institute Washington District of Columbia 20090 USA

5. Department of Agronomy Kansas State University Manhattan Kansas 66506 USA

Abstract

SUMMARYRNA‐Sequencing is widely used to investigate changes in gene expression at the transcription level in plants. Most plant RNA‐Seq analysis pipelines base the normalization approaches on the assumption that total transcript levels do not vary between samples. However, this assumption has not been demonstrated. In fact, many common experimental treatments and genetic alterations affect transcription efficiency or RNA stability, resulting in unequal transcript abundance. The addition of synthetic RNA controls is a simple correction that controls for variation in total mRNA levels. However, adding spike‐ins appropriately is challenging with complex plant tissue, and carefully considering how they are added is essential to their successful use. We demonstrate that adding external RNA spike‐ins as a normalization control produces differences in RNA‐Seq analysis compared to traditional normalization methods, even between two times of day in untreated plants. We illustrate the use of RNA spike‐ins with 3' RNA‐Seq and present a normalization pipeline that accounts for differences in total transcriptional levels. We evaluate the effect of normalization methods on identifying differentially expressed genes in the context of identifying the effect of the time of day on gene expression and response to chilling stress in sorghum.

Funder

Division of Integrative Organismal Systems

Biological Technologies Office

Publisher

Wiley

Reference103 articles.

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