Time-course RNA-seq analysis provides an improved understanding of gene regulation during the formation of nodule-like structures in rice

Plant Mol Biol. 2020 May;103(1-2):113-128. doi: 10.1007/s11103-020-00978-0. Epub 2020 Feb 21.

Abstract

Using a time-course RNA-seq analysis we identified transcriptomic changes during formation of nodule-like structures (NLS) in rice and compared rice RNA-seq dataset with a nodule transcriptome dataset in Medicago truncatula. Plant hormones can induce the formation of nodule-like structures (NLS) in plant roots even in the absence of bacteria. These structures can be induced in roots of both legumes and non-legumes. Moreover, nitrogen-fixing bacteria can recognize and colonize these root structures. Therefore, identifying the genetic switches controlling the NLS organogenesis program in crops, especially cereals, can have important agricultural implications. Our recent study evaluated the transcriptomic response occurring in rice roots during NLS formation, 7 days post-treatment (dpt) with auxin, 2,4-D. In this current study, we investigated the regulation of gene expression occurring in rice roots at different stages of NLS formation: early (1-dpt) and late (14-dpt). At 1-dpt and 14-dpt, we identified 1662 and 1986 differentially expressed genes (DEGs), respectively. Gene ontology enrichment analysis revealed that the dataset was enriched with genes involved in auxin response and signaling; and in anatomical structure development and morphogenesis. Next, we compared the gene expression profiles across the three time points (1-, 7-, and 14-dpt) and identified genes that were uniquely or commonly differentially expressed at all three time points. We compared our rice RNA-seq dataset with a nodule transcriptome dataset in Medicago truncatula. This analysis revealed there is some amount of overlap between the molecular mechanisms governing nodulation and NLS formation. We also identified that some key nodulation genes were not expressed in rice roots during NLS formation. We validated the expression pattern of several genes via reverse transcriptase polymerase chain reaction (RT-PCR). The DEGs identified in this dataset may serve as a useful resource for future studies to characterize the genetic pathways controlling NLS formation in cereals.

Keywords: Auxin; Medicago truncatula; Nodule-like structures; RNA-seq; Rice.

MeSH terms

  • Datasets as Topic
  • Gene Expression Profiling
  • Gene Expression Regulation, Plant*
  • Gene Ontology
  • Medicago truncatula / genetics
  • Oryza / anatomy & histology
  • Oryza / drug effects
  • Oryza / genetics*
  • Plant Growth Regulators / pharmacology
  • Plant Proteins / genetics
  • Plant Roots / anatomy & histology
  • Plant Roots / drug effects
  • Plant Roots / genetics
  • Protein Kinases / genetics
  • RNA, Plant*
  • RNA-Seq*
  • Transcription Factors / metabolism
  • Transcriptome

Substances

  • Plant Growth Regulators
  • Plant Proteins
  • RNA, Plant
  • Transcription Factors
  • Protein Kinases