Design, execution, and interpretation of plant RNA-seq analyses

Front Plant Sci. 2023 Jun 30:14:1135455. doi: 10.3389/fpls.2023.1135455. eCollection 2023.

Abstract

Genomics has transformed our understanding of the genetic architecture of traits and the genetic variation present in plants. Here, we present a review of how RNA-seq can be performed to tackle research challenges addressed by plant sciences. We discuss the importance of experimental design in RNA-seq, including considerations for sampling and replication, to avoid pitfalls and wasted resources. Approaches for processing RNA-seq data include quality control and counting features, and we describe common approaches and variations. Though differential gene expression analysis is the most common analysis of RNA-seq data, we review multiple methods for assessing gene expression, including detecting allele-specific gene expression and building co-expression networks. With the production of more RNA-seq data, strategies for integrating these data into genetic mapping pipelines is of increased interest. Finally, special considerations for RNA-seq analysis and interpretation in plants are needed, due to the high genome complexity common across plants. By incorporating informed decisions throughout an RNA-seq experiment, we can increase the knowledge gained.

Keywords: QTL mapping; allele-specific variation; co-expression networks; differential expression; experimental design.

Publication types

  • Review

Grants and funding

This work was supported by USDA NIFA Award 2020-65114-30768 and the Office of Science (BER), US Department of Energy, grant no. DE-SC0021369.