| Literature DB >> 26501263 |
Yee-Shan Ku1, Johanna Wing-Hang Wong2, Zeta Mui3, Xuan Liu4, Jerome Ho-Lam Hui5, Ting-Fung Chan6, Hon-Ming Lam7.
Abstract
To survive under abiotic stresses in the environment, plants trigger a reprogramming of gene expression, by transcriptional regulation or translational regulation, to turn on protective mechanisms. The current focus of research on how plants cope with abiotic stresses has transitioned from transcriptomic analyses to small RNA investigations. In this review, we have summarized and evaluated the current methodologies used in the identification and validation of small RNAs and their targets, in the context of plant responses to abiotic stresses.Entities:
Keywords: abiotic stress; bioinformatics; microRNA; small RNA; transcriptional regulation
Mesh:
Substances:
Year: 2015 PMID: 26501263 PMCID: PMC4632763 DOI: 10.3390/ijms161024532
Source DB: PubMed Journal: Int J Mol Sci ISSN: 1422-0067 Impact factor: 5.923
Figure 1A simplified representation to illustrate the central role of gene expression reprogramming in triggering the adaption to abiotic stresses. Upon abiotic stresses, cellular homeostasis is disrupted. The signal is sensed and transduced by signaling molecules. This brings forth the reprogramming of gene expression which involves transcriptional factors and sRNAs, resulting in the up-regulation of positive regulators and down-regulation of negative regulators.
Figure 2hc-siRNAs are transcribed at the heterochromatic regions where they act in cis to trigger the methylation of cytosine in these sequence contexts: CG, CHG and CHH [17,18,19], resulting in transcriptional silencing.
Figure 3The roles of miRNA and siRNA in PTGS (post-transcriptional gene silencing). (A) The precursor of miRNA is a self-complementary RNA which forms a hair-pin structure while the precursor of siRNA is a dsRNA. The precursors are diced to form mature miRNA or siRNA [7,28,29]; (B) The mature miRNA or siRNA interacts with the AGO (argonaute) protein to form RISC (RNA-induced silencing complexes), which causes the silencing of the target gene by transcript cleavage or translational inhibition [7,28,29].
Summary of sRNA-mediated gene regulation mechanisms.
| Mechanism of Regulation | sRNA Types Participated | Origin of sRNAs | Targets of sRNAs | Modes of Action |
|---|---|---|---|---|
| Transcriptional gene silencing | hc-siRNAs | Transcripts of heterochromatic regions | Heterochromatic regions (act in | RNA-directed DNA methylation |
| Post-transcriptional gene silencing | miRNAs | Short stem-loop-forming transcripts | Other transcripts (act in both | Transcript cleavage; translational inhibition |
| Triggering double strand synthesis of | ||||
| NAT-siRNAs | Antisense transcripts | Other transcripts in both | Transcript cleavage; translational inhibition | |
| ta-siRNAs | Other transcripts in both | Transcript cleavage; translational inhibition |
TAS-transcripts, ta-siRNA transcripts; TAS-loci, ta-siRNA generating loci.
Summary of classical miRNA prediction tools.
| Tool | Application | Property | Reference |
|---|---|---|---|
| MIRFINDER | Detection of potential conserved miRNAs in | The use of NCBI BLAST to search for conserved short hits (~21–22 nt). The hits with flanking sequences were identified as putative hairpin precursors. | [ |
| miRSeeker | Identification of novel miRNA candidates that are conserved in insect, nematode, or vertebrate | The use of AVID to align | [ |
| mirCoS | Prediction of mammalian miRNAs | Detection of known miRNAs and prediction of new miRNAs based on sequence, secondary structure and conservation by comparing human and mouse genomes. | [ |
| miRRim | Identification of novel miRNAs in human | Detection of miRNAs with the use of a hidden Markov model. | [ |
| miRAlign | Detection of miRNA homologs or orthologs in animals. | Detection of miRNAs based on sequence and structure alignment. The sensitivity is better than BLAST search and ERPIN search with comparable specificity. | [ |
| microHARVESTER | Identification of plant miRNA homologs | Identification of plant miRNA homologs based on query miRNA. | [ |
| MiRscan | Identification of vertebrate miRNA genes | Evaluation of conserved stem-loops. | [ |
| miRDeep | Identification of miRNAs with deep sequencing data | The use of known miRNA training set obtained from | [ |
| MiRCheck | Identification of miRNAs in | The use of EINVERTED from EMBOSS [ | [ |
NCBI, National Center for Biotechnology Information; BLAST, Basic Local Alignment Search Tool; AVID, a global alignment program; ERPIN, Easy RNA Profile IdentificatioN; EINVERTED, a program that finds inverted repeats in nucleotide sequences; EMBOSS, European Molecular Biology Open Software Suite.
Summary of plant-friendly miRNA prediction tools using deep sequencing data.
| Tool | Property | Reference |
|---|---|---|
| miRDeep-P | Adopting miRDeep core algorithm with modified step of setting a maximal value for the MFE log-odds score to account for longer plant miRNA precursors | [ |
| miRPlant | Implementing miRDeep* [ | [ |
| miR-PREFeR | Filtering miRNA precursor candidates with criteria suggested in [ | [ |
| MIReNA | Filtering putative precursors with length-normalized and GC-normalized MFE to accommodate the prediction of plant miRNAs | [ |
| ShortStack | Defining structural miRNA parameters based on selected annotated miRNA in miRBase depending on the “miRType” specified by user, either “plant” or “animal”, subsequently filter candidates with criteria suggested in [ | [ |
Figure 4A flowchart for miRNA gene prediction. This flowchart summarized how computational tools predict miRNAs with different approaches. Purely ab initio miRNA prediction programs (pink boxes) use the reference genome of interest as the only starting material to generate miRNA precursor candidates, followed by classifying/filtering with known miRNA properties. In contrast, comparative genomics miRNA prediction programs (green boxes) start with identifying conserved regions between two or more genomes to generate miRNA precursor candidates, followed by the same classifying/filtering step of purely ab initio prediction programs (orange boxes). The sequencing read-based prediction programs (purple boxes) use miRNA expression data to locate possible mature miRNAs. Subsequently, flanking genomic regions of mapped reads are extracted and evaluated whether they pass the criteria of miRNA annotation, using various scoring/classifying algorithms.
Summary of experimental methodologies previously used for sRNA studies.
| Method | Stress | sRNA | Reference |
|---|---|---|---|
|
| |||
| qRT-PCR | Salinity, copper deficiency | miR397, miR857 | [ |
| Northern blot | Salinity, sulphur deprivation, oxidative stress, nitrogen deficiency, inorganic phosphtase deprivation, drought, irradiation, copper deficiency | miR399, miR395, miR398, miR408 | [ |
|
| |||
| 5′ RACE | Copper deficiency | miR397, miR408 | [ |
|
| |||
|
| Inorganic phosphate deprivation | miR399 | [ |
|
| Drought | miR196 | [ |
| Creeping bentgrass | Drought, salinity | miR319 | [ |
Comparison of methods for sRNA validation.
| Purpose | Method | Advantage(s) | Disadvantage(s) |
|---|---|---|---|
| Validation of the existence of predicted sRNA | Northern blot | Quantitative, simultaneous detection of sRNA and its precursor | Optimization steps are needed to improve sensitivity and specificity. |
| qPCR | Small amount of RNA is required | Normalization by spike-in control or housekeeping genes can be unreliable. | |
| Validation of the existence of predicted sRNA | Allows tissue-specific and spatiotemporal detection | Optimization steps are needed to improve sensitivity and specificity. | |
| Functional analysis of sRNA | LAMP assay | Straightforward | An |
| RLM-RACE | Previous knowledge of the cleaved mRNA is not required | Cannot distinguish by which type of sRNA the mRNA cleavage is mediated. | |
| Reporter assays | An | Transformation of the species under study is needed. |