Skip to main content
Advertisement
Browse Subject Areas
?

Click through the PLOS taxonomy to find articles in your field.

For more information about PLOS Subject Areas, click here.

  • Loading metrics

Identification of Novel and Conserved MicroRNAs Related to Drought Stress in Potato by Deep Sequencing

  • Ning Zhang,

    Affiliations Gansu Key Laboratory of Crop Genetic and Germplasm Enhancement, Gansu Provincial Key Laboratory of Aridland Crop Science, Gansu Agricultural University, Lanzhou, People's Republic of China, College of Life Science and Technology, Gansu Agricultural University, Lanzhou, People's Republic of China

  • Jiangwei Yang,

    Affiliation Gansu Key Laboratory of Crop Genetic and Germplasm Enhancement, Gansu Provincial Key Laboratory of Aridland Crop Science, Gansu Agricultural University, Lanzhou, People's Republic of China

  • Zemin Wang,

    Affiliations Gansu Key Laboratory of Crop Genetic and Germplasm Enhancement, Gansu Provincial Key Laboratory of Aridland Crop Science, Gansu Agricultural University, Lanzhou, People's Republic of China, College of Life Science and Technology, Gansu Agricultural University, Lanzhou, People's Republic of China

  • Yikai Wen,

    Affiliation College of Life Science and Technology, Gansu Agricultural University, Lanzhou, People's Republic of China

  • Jie Wang,

    Affiliations Gansu Key Laboratory of Crop Genetic and Germplasm Enhancement, Gansu Provincial Key Laboratory of Aridland Crop Science, Gansu Agricultural University, Lanzhou, People's Republic of China, College of Life Science and Technology, Gansu Agricultural University, Lanzhou, People's Republic of China

  • Wenhui He,

    Affiliations Gansu Key Laboratory of Crop Genetic and Germplasm Enhancement, Gansu Provincial Key Laboratory of Aridland Crop Science, Gansu Agricultural University, Lanzhou, People's Republic of China, College of Life Science and Technology, Gansu Agricultural University, Lanzhou, People's Republic of China

  • Bailin Liu,

    Affiliation Gansu Key Laboratory of Crop Genetic and Germplasm Enhancement, Gansu Provincial Key Laboratory of Aridland Crop Science, Gansu Agricultural University, Lanzhou, People's Republic of China

  • Huaijun Si ,

    hjsi@gsau.edu.cn (HS); wangd@gsau.edu.cn (DW)

    Affiliations Gansu Key Laboratory of Crop Genetic and Germplasm Enhancement, Gansu Provincial Key Laboratory of Aridland Crop Science, Gansu Agricultural University, Lanzhou, People's Republic of China, College of Life Science and Technology, Gansu Agricultural University, Lanzhou, People's Republic of China

  • Di Wang

    hjsi@gsau.edu.cn (HS); wangd@gsau.edu.cn (DW)

    Affiliation Gansu Key Laboratory of Crop Genetic and Germplasm Enhancement, Gansu Provincial Key Laboratory of Aridland Crop Science, Gansu Agricultural University, Lanzhou, People's Republic of China

Abstract

MicroRNAs (miRNAs) are a group of small, non-coding RNAs that play important roles in plant growth, development and stress response. There have been an increasing number of investigations aimed at discovering miRNAs and analyzing their functions in model plants (such as Arabidopsis thaliana and rice). In this research, we constructed small RNA libraries from both polyethylene glycol (PEG 6,000) treated and control potato samples, and a large number of known and novel miRNAs were identified. Differential expression analysis showed that 100 of the known miRNAs were down-regulated and 99 were up-regulated as a result of PEG stress, while 119 of the novel miRNAs were up-regulated and 151 were down-regulated. Based on target prediction, annotation and expression analysis of the miRNAs and their putative target genes, 4 miRNAs were identified as regulating drought-related genes (miR811, miR814, miR835, miR4398). Their target genes were MYB transcription factor (CV431094), hydroxyproline-rich glycoprotein (TC225721), quaporin (TC223412) and WRKY transcription factor (TC199112), respectively. Relative expression trends of those miRNAs were the same as that predicted by Solexa sequencing and they showed a negative correlation with the expression of the target genes. The results provide molecular evidence for the possible involvement of miRNAs in the process of drought response and/or tolerance in the potato plant.

Introduction

The potato (Solanum tuberosum L.) is one of the most important crops in the world. It is receiving attention for its function as a food for humans and domestic animals as well as for its potential use in future biofuel development [1], but its growth and productivity are severely affected by drought stress. In fact, drought is one of the most frequently occurring environmental stresses that limit agricultural production [2]. Plants respond to drought with an array of biochemical and physiological adaptations mainly dependent on the regulated expression of drought-related genes. To date, a large number of genes that respond to drought stress at the transcriptional level have been identified [3]. The products of these target genes play important roles not only in protecting cells from drought stress, but also in regulating genes for signal transduction in the drought stress response [4]. However, the detailed regulation mechanisms of these genes are incompletely understood.

MicroRNAs (miRNAs) are classes of small, single-stranded, non-coding RNAs found both in plants and animals, which can play important roles in the regulation of gene expression at the post-transcriptional level. They have been considered as mediating gene silencing in response to abiotic stress in model plants [5], [6]. Mature miRNAs are usually 21–24 nucleotides (nt) in length, and can therefore more easily combine with the RNA-induced silencing complex (RISC) to regulate the expression of genes by inhibiting gene translation or degrading targeted mRNAs, depending on the complementarities between miRNA and mRNA [7]. Many miRNAs have been discovered and the majority of their target genes have been identified as encoding transcriptional factors or enzymes that play important roles in many biological processes, including leaf development [8], stem development [9], floral development [10], root development [11], signal transduction [12], phase change [13], and regulation of their own biogenesis [14]. A number of miRNAs also have been identified as being involved in response to drought stress in some plant species such as Arabidopsis thaliana [15], rice [16], [17], Medicago truncatula [18] and cowpea [19]. Although many plant miRNAs and their targets have been identified, a majority of those studies have focused on some model plant species, such as Arabidopsis thaliana, Oryza sativa, and Zea mays [20]. Since the functions of miRNAs in many other plant species have not been identified, the most challenging problem in understanding the function of plant miRNAs is to identify additional novel miRNAs. While forward genetics, bioinformatics prediction and direct deep-sequencing have been all used for miRNA discovery in plants, there is increasing evidence that deep-sequencing is the most effective method for plant miRNA discovery and expression analysis [16][21]. Deep sequencing technology has revolutionized small RNA discovery and a growing number of miRNAs have been identified.

There are several researches on potato miRNAs and their targets identification using computational prediction [22], [23], comparative genome strategy [24], comprehensive bioinformatic analysis of EST data [25] and high-throughput sequencing [26]. However, little has been known about the relationship between identified potato miRNAs and drought stress. Here we report deferentially expressed known and novel miRNAs related to drought stress in the potato using deep sequencing. Moreover we predict the target genes of the miRNAs and identify potential drought-responsive miRNAs and their target genes.

Results

Deep Sequencing Results of Potato sRNA Libraries

In order to identify miRNAs related to drought resistance in the potato, sRNA libraries were constructed for both control samples and samples treated with 15% PEG solution. The samples were obtained from the potato tetraploid cultivar ‘Zihuabei’. High-throughput sequencing led to the generation of 17,357,850 and 17,130,641 raw reads from the control and treatment libraries, respectively. There were 16,992,427 clean reads (3,579,840 unique reads) from the control library and 16,824,975 clean reads (4,412,305 unique reads) from the treatment library after initial processing (Table 1). There were 14.62% and 77.33% specific sRNAs in the treatment libraries for total and unique sRNAs, respectively. After initial processing, the high-quality sRNA reads were mapped to the potato genome sequence using SOAP [27]. The numbers of total and unique sequences that matched the genome were 7,243,085/1,715,629 and 7,059,657/2,131,423 in the control and treatment libraries, respectively (Table 1).

thumbnail
Table 1. Statistical analysis of sequencing reads for the two sRNAs libraries.

https://doi.org/10.1371/journal.pone.0095489.t001

The tRNA, siRNA, miRNA, intron and exon RNA, snoRNA, rRNA, and snRNA reads were annotated for the total sRNA control and treatment libraries. A total of 2,072,796 and 913,806 known miRNAs were mapped to the control and treatment groups respectively (Fig.1). After removal of contaminant reads, the length distribution of clean reads showed that the majority of the reads were 21 to 24 nt in size, of which the 21 nt class was the most abundant, followed by the 24 nt and 22 nt classes (Fig.2).

thumbnail
Figure 1. sRNAs annotation and distribution of mRNAs in control (A) and drought treatment (B).

https://doi.org/10.1371/journal.pone.0095489.g001

thumbnail
Figure 2. The length distribution of sRNAs in the libraries of control and treatment with 15% PEG in potato.

https://doi.org/10.1371/journal.pone.0095489.g002

Identification of Known miRNAs in Potato

In order to identify the conserved miRNAs that were obtained from small RNA high-throughput sequencing in potato, we compared this information with the up-dated, known, mature plant miRNAs in the miRBase database. Following Blastn searches and further sequence analysis, a total of 458 and 471 known miRNAs were identified in the control and treatment libraries, respectively. Many of the identified miRNA families have been shown to be conserved in a variety of plant species. Only a few members have been identified in the majority of known miRNA families, whereas some miRNA families contain many potential members which also require further validation based on genomic or EST sequences.

In this study, the read numbers for known miRNAs showed high diversity, ranging from 1 to 656,806 in the control group and from 1 to 300,458 in the treatment group. Among these miRNAs, the miR168 and miR166 families had the most reads in the control and treatment groups, respectively. Additionally, 23 miRNA families were found to have more than ten thousand redundancies in the control group and 17 miRNA families were found to have more than ten thousand redundancies in the treatment group (Table 2). A total of 62 miRNA families had more than one thousand redundancies in the treatment and control groups. The remaining families were infrequently sequenced (less than 1,000 occurrences).

thumbnail
Table 2. miRNA families of more than ten thousand redundancies.

https://doi.org/10.1371/journal.pone.0095489.t002

Identification of Novel miRNAs in Potato

A stable hairpin structure is the essential feature for identification of novel miRNAs [28]. In this study, to identify new miRNAs and new members of known miRNA families, we used the unique sRNA sequences from the two libraries to map to the potato genome and predict the secondary structures of a series of sequences surrounding mapped sites. We used the resultant reads to identify novel miRNAs by folding the sequences of potential miRNA precursors using the web-based software Mireap that is publicly available at the website (http://sourceforge.net/projects/mireap/) [29]. Additionally, free energies, and the binding locations of dicer enzymes were used to evaluate these candidate miRNAs. Finally, a total of 674 novel miRNAs in the control samples and 566 novel miRNAs in the drought treatment samples were predicted from high-throughput sequencing results using Mireap software.

Differential Expression Analysis of Known and Novel miRNAs Under Drought Stress

In order to identify the differentially expressed miRNAs, we compared the expression of the known miRNAs between the control and drought treatment samples by plotting log2-ratios and scatter plots (Fig. 3). Based on the deep sequencing results, the miRNAs with changes in expression levels greater than 2.0-fold in response to drought treatment were selected, which included 100 miRNAs with down-regulation expression pattern and 99 miRNAs with up-regulation expression pattern (Table S1). Based on the miRNAs expression profile, the expression levels of miR3437, miR1076, miR4375, miR3695, miR1037, miR3637, miR1867, miR4235, miR2099, and miR2109 had remarkable differences. The novel miRNAs with changes in expression levels greater than 2.0-fold in response to drought treatment were selected, which included 151 novel miRNAs with down-regulation and 119 novel miRNAs with up-regulation expression patterns (Table S2).

thumbnail
Figure 3. Analysis of known miRNAs differential expression between control and drought treatment.

Each point in the figure represents an miRNA. The X axis and Y axis show the expression levels of miRNAs in the control and drought treatment samples, respectively. Colors in the figure: red points represent miRNAs with ratio>2; blue points represent miRNAs with 1/2<ratio≤2; green points represent miRNAs with ratio≤1/2. Ratio = normalized expression in the treatment samples/normalized expression in the control samples.

https://doi.org/10.1371/journal.pone.0095489.g003

Target Predictions and Annotation for Differentially Expressed miRNAs

Generally, the targets of plant miRNAs have perfect or near-perfect complementary sites, allowing their identification using bioinformatic prediction methods [30]. We used the online program psRNATarget (http://plantgrn.noble.org/psRNATarget/), Gene Ontology (http://www.Geneontology.org/), and the Kyoto Encyclopedia of Genes and Genomes (http://www.Genome.jp/kegg/) to predict and annotate the target genes. The sixty differentially and highly expressed known and novel miRNAs could each be searched for their potential target genes. All 246 target genes for the known miRNAs and 214 target genes for the novel miRNAs were predicted, and the target ID and target annotation data are shown in (Table S3 and S4). The number of potential targets in the potato varies from zero (stu-miR-662, stu-miR-721 and miR1535) to 16 targets (miR837) per miRNA. Annotation showed that the functions of their target genes were diverse (including involvement in metabolism, cell differentiation, growth and resistance to biotic and abiotic stresses), and their products include transcription factors, enzymes, functional proteins and protein precursor (Table S3 and S4). Based on literatures access [31][36] and functional analysis, we determined that 9 target genes of 9 miRNAs are potential drought stress-related genes, and their corresponding 9 miRNAs were therefore considered to be probable drought-related miRNAs. Detailed information about those miRNAs and their target genes is shown in (Table 3).

thumbnail
Table 3. Selected potential drought-related miRNAs and their target genes.

https://doi.org/10.1371/journal.pone.0095489.t003

RT-qPCR Analysis of Drought-Responsive miRNAs and their Target Genes

To confirm and validate the data obtained from the high-throughput sequencing and computational prediction, real-time quantitative PCR (RT-qPCR) analysis was carried out to validate the expression patterns of the 9 drought-responsive miRNAs and their predicted target genes (Fig.4). Comparison of the miRNA from Solexa sequencing and RT-qPCR analyses revealed that the relative expression trends of 7 of the 9 miRNAs in response to the drought treatment were the same as that predicted by Solexa sequencing. These included miR811, miR814, miR835, miR1158, miR4398 and stu-miR535 (which showed down-regulation under drought stress), and stu-miR860 (which showed up-regulation under drought stress). The expression patterns of miR158 and stu-miR-856 showed different expression trends under drought stress conditions between RT-qPCR analysis and Solexa sequencing results. The predicted target genes MYB transcription factor (CV431094), hydroxyproline-rich glycoprotein (TC225721), quaporin (TC223412), WRKY transcription factor (TC199112), mitogen-activated protein kinase 19 (TC225708) and mitogen-activated protein kinase (TC224966) for miR811, miR814, miR835, miR4398, stu-miR-856, stu-miR-860 were up-regulated under drought stress, while target genes trehalose synthase (NP440459), bZIP family transcription factor (TC225596) and MYB domain-containing protein (TC222240) for miR158, miR1158 and stu-miR-535 were down-regulated.

thumbnail
Figure 4. Verification of the selected miRNAs and their potential target genes related to drought stress from deep sequencing by RT-qPCR.

Relative expression levels of the selected 9 miRNAs (miR158, miR811, miR814, miR835, miR1158, miR4398, stu-miR535, stu-miR856, stu-miR860) and their potential target genes (NP440459, CV431094, TC225721, TC223412, TC225596, TC199112, TC222240, TC225708, TC224966) were measured by RT-qPCR. The ef1a gene was used as an internal control. The expression level is expressed as the mean of relative fold changes of triplicate biological replicates and the vertical bars represent standard derivation of the mean (n = 3).

https://doi.org/10.1371/journal.pone.0095489.g004

The results from RT-qPCR and Solexa sequencing analysis of the expression patterns of 9 miRNAs and their target genes showed that the relative expression trends of 4 miRNAs were the same for both methods and have a negatively correlated expression pattern with their target genes. Those 4 miRNAs were considered to be potential drought-responsive miRNAs. They include miR811, miR814, miR835, miR4398, and their target genes are MYB transcription factor (CV431094), hydroxyproline-rich glycoprotein (TC225721), quaporin (TC223412) and WRKY transcription factor (TC199112), respectively.

Discussion

Drought stress is one of the major factors severely limiting plant growth and development, and often results in low crop yields. It is well-known that plants react to drought with an array of gene regulation responses. Many studies have been devoted to transcriptional regulation, in response to high salinity, cold, drought, and ABA treatment in a model plant through cDNA microarray analysis [37], [38]. As a result, a large number of abiotic stress-inducible genes have been identified, contributing to the elucidation of the molecular mechanism of the stress response. Expressional products of induced genes have been reported to function both in the initial stress response and in establishing stress tolerance in plants [39].

miRNAs are a large, new class of small non-coding RNAs, which play important roles in post-transcriptional gene regulation by targeting mRNAs for cleavage or repressing translation. High-throughput sequencing has been used for identification and expressional analysis of miRNAs at the whole genome level in several plant species, including Arabidopsis [40], rice [16], [17], Medicago [18], cowpea [19], tomato [41], Populus [42], wheat [43] and potato [26]. However, most of these studies have focused on miRNAs under non-stressed, normal growth conditions. Only some studies have compared miRNAs under control conditions to those under conditions of abiotic stresses using high-throughput sequencing of plant miRNAs [17][19]. Therefore, analysis of the miRNA expression profile under drought stress can contribute to a better understanding of the function of plant miRNAs.

Xie et al. [24] identified 202 potential potato miRNAs using a newly modified comparative genome strategy and predicted 1,094 miRNA targets and found some of targets encoded transcription factors as well as genes that function in stress response, signal transduction, and a variety of other metabolic processes. Zhang et al. [26] characterized small RNAs of potato using high-throughput sequencing and confirmed 28 conserved miRNA families and found 120 potato-specific miRNA families, and predicted miRNA target functions. In this study, we used Solexa sequencing to estimate the genome-wide expression levels of miRNAs in potato plants treated with PEG stress, in order to discover drought responsive miRNAs. A large number of known and novel miRNAs were identified. The results obtained from differential expressional analysis of the miRNAs suggested that miRNAs may play a crucial role in plant response to drought stress. The target genes of the differentially expressed miRNAs obtained from our prediction and annotation can be classified into three clusters: 1) transcription and translation factors (such as zinc finger protein, and MYB domain-containing protein); 2) enzyme and functional protein (such as glucose acyltransferase, glutathione S-transferase, cysteine protease, and peroxidase); and 3) protein or whole genome shot gun sequences with unknown functions in plants (Table S3 and S4). We identified 9 miRNAs as potential targets for drought-related genes. Those potential target genes have a wide variety of predicted functions, which include drought-related transcription factors (MYB, bZIP, WRKY); enzymes (trehalose synthase), and functional proteins (aquaporin). The results from RT-qPCR showed that the relative expression trends of 4 miRNAs (miR811, miR814, miR835 and miR4398) were the same as that predicted by Solexa sequencing, and their accumulation showed a negatively correlated expression pattern with their target genes (MYB transcription factor, hydroxyproline-rich glycoprotein, aquaporin and WRKY transcription factor). MYB transcription factor members have been shown to regulate plant responses to biotic and abiotic stress conditions [33]. WRKY transcription factors are also reported as being involved in plant stress response, which can bind with high affinity to a DNA cis-acting element called the W box ((C/T)TGAC(T/C)) which permits signal transduction to regulate the expression of stress-related genes, resulting in plant stress tolerance. Over-expression of WRKY genes in Arabidopsis [34], [35] conferred tolerance to abiotic stresses. Hydroxyproline-rich glycoprotein is a functional protein that can help plants accumulate proline, which is an important osmotic-adjusting material that can help plants adapt to drought and other abiotic stresses [36].

The present results demonstrate that the differentially expressed miRNAs were involved in the biochemical and physiological processes of plant response to drought stress. Further study is necessary to elucidate the functional importance of predicted miRNA-target RNA relationships.

Materials and Methods

Plant Material and Drought Treatments

The experiments were carried out with the potato tetraploid cultivar ‘Zihuabei’. The potato tubers (weight: about 150 g) were grown in 3 L pots of vermiculite in a greenhouse, under natural light at (25±2)°C. After sprouting, the plants were watered and fertilized weekly with a complete nutrient solution. When the plants were 30 days old, drought treatments were conducted on the treatment samples by watering 50 ml of 15% PEG solution once a day for 20 days, while plants in the control samples were watered with 50 ml of water daily. Three replicates consisting of 10 plants from each experiment were used for the analysis. Entire plant leaves were then collected from two plants of each replicate and pooled together, and immediately frozen in liquid nitrogen. They were then stored at −80°C for further use.

Total RNA Extraction and Small RNA Isolation and Sequencing

Total RNA was isolated from the leaves of both the drought treatment and control potato plants using Trizol Reagent (Shanghai Sangon Biotech Co., Ltd., China) according to the manufacturer's instructions. Small RNA libraries were constructed as described by Lagos-Quintana et al. [44]. Briefly, the extracted total RNA was separated by 15% polyacrylamide gel electrophoresis (PAGE) to isolate small RNAs (between 18–30 nt.) These small RNAs were ligated to 5′ adapters (5′-GUUCAGAGUUCUAC AGUCCGACGAUC-3′) and 3′ adapters (5′-UCGUAUGCCGUCUUCUGCUUGU-3′). Subsequently, they were reverse transcribed and amplified using polymerase chain reaction (PCR). The resulting RNA was sequenced by the Beijing Genomics Institute (BGI), using the Solexa technology. All sequence data have been deposited in the Sequence Read Archive (SRA) at the NCBI database (http://www.ncbi.nlm.nih.gov/) under the accession number SRP034924.

Bioinformatic Identification of Conserved miRNAs

A 50 nt length of raw reads was sequenced. We eliminated some low quality and contaminant reads from the raw reads and obtained the final clean reads using the following steps: (1) eliminating low quality reads; (2) eliminating reads with 5′ primer contaminants; (3) eliminating reads without 3′ primer; (4) eliminating reads without the insert tag; (5) eliminating reads with poly A; (6) eliminating reads shorter than 18 nt; and (7) summarizing the length distribution of the clean reads. Modified sequences from 18 nt to 30 nt long were used for further analysis. The small RNA tags were mapped to the genome using SOAP [27] to analyze their expression and distribution on the genome. We then aligned the small RNA tags to the miRNA precursor/mature miRNA of all plants and animals in the miRBase database [45] to identify the sequence and count of miRNA families (no specific species) in the samples. Only the perfectly matched sequences were considered to be conserved miRNAs.

Bioinformatic Identification of Novel miRNAs

After removing the conserved miRNA sequences, the remaining small RNA sequences were used to perform Blastn searches in order to obtain novel drought-related miRNAs in the potato. First, rRNA, tRNA, snRNA, and snoRNA, as well as those containing the polyA tail, were removed from the sRNA sequences and the remaining sequences were compared with the sequences in the NCBI GenBank database and Rfam (http://www.sanger.ac.uk/Software/Rfam) database. Then, we aligned small the RNA tags to mRNA exons and introns, to find the degraded fragments of mRNA in the small RNA tags.

Small interfering RNA (siRNA) is a 22–24 nt long, double-strand RNA, each strand of which is 2 nt longer than the other on the 3′ end. According to this structural feature, we aligned tags from the clean reads to each other to find sRNAs meeting the criteria, to identify potential siRNA candidates. Finally, we summarized all alignments and annotations before obtained from the previous steps. This method meant that some small RNA tags could be mapped to more than one category. To make sure that every unique small RNA was mapped to only one annotation, we applied the following priority rule: rRNA etc. (in which GenBank > Rfam) > known miRNA > repeat > exon > intron [46].

We used the web-based software Mireap to predict novel miRNA by exploring the secondary structure, the Dicer cleavage site and the minimum free energy of the unannotated small RNA tags which could be mapped to the genome. Mireap can be accessed from the following link: (http://sourceforge.net/projects/mireap/). The parameters for plants are as follows: (1) minimal miRNA sequence length (18); (2) maximal miRNA sequence length (25); (3) minimal miRNA reference sequence length (20); (4) maximal miRNA reference sequence length (23); (5) maximal copy number of miRNAs on reference (20); (6) maximal free energy allowed for a miRNA precursor (−18 kcal/mol); (7) maximal space between miRNA and miRNA* (300); (8) minimal base pairs of miRNA and miRNA* (16); (9) maximal bulge of miRNA and miRNA* (4); (10) maximal asymmetry of miRNA/miRNA* duplex (4); (11) flank sequence length of miRNA precursor (20).

RNA sequences were considered miRNA candidates only if they fit all of the following criteria: (1) an RNA sequence can fold into an appropriate stem-loop hairpin secondary structure; (2) a mature miRNA sequence site is located in one arm of the hairpin structure; (3) miRNAs had less than 6 mismatches with the opposite miRNA* sequence in the other arm; (4) no loop or break in miRNA* sequences; (5) predicted secondary structures had higher MFEIs, negative MFEs, and 30–70% A+U contents; (6) predicted mature miRNAs had no more than four nucleotide substitutions compared with Arabidopsis thaliana and/or rice mature miRNAs. In addition, RNA sequences were considered miRNA candidates only if they fit the criteria for annotation plant miRNAs [28].

Differential Expression Analysis of Known and Novel miRNAs

In order to identify the differentially expressed miRNAs, we compared the known and novel miRNA expressions between the control and PEG treatment samples by preparing log2-ratios and scatter plots [18]. In the first step, the miRNA expressions in the two samples were normalized to obtain the expression of transcript per million (TPM) on the basis of the normalization formula: normalized expression  =  (actual miRNA count/total count of clean reads) ×1,000,000. In the second step, the fold-change and p-values were calculated from the normalized expression. The log2-ratio and scatter plots were then generated. The algorithms are shown as below:

Fold-change formula: fold change  =  log2 (treatment/control)

P-value formula:

Prediction and Annotation of Target Genes for Differential Expression of miRNAs

The putative target genes for the thirty most down-regulated and up-regulated differentially expressed known and novel miRNAs were predicted using the plant miRNA target prediction online software psRNATarget (http://plantgrn.noble.org/psRNATarget/) with default parameters [47], which can identify putative targets that may be regulated at post-transcriptional or at translational levels. The parameters are as follows: (1) maximum expectation is less than 3.0; (2) length for complementarity scoring (hspsize) is shorter than 20 nt; (3) target accessibility-allowed maximum energy to unpair the target site (UPE) is shorter than 25; (4) flanking length around target site for target accessibility analysis is 17 bp in upstream and 13 bp in downstream; (5) range of central mismatch leading to translational inhibition is 9–11 nt. Mature miRNA sequences were used as queries to search for potential target mRNAs in the potato database (unigene, DECT Gene Index release 13 on 2010, 04, 16) in order to predict the target genes for differential expression of miRNAs. The Gene Ontology website (http://www.Geneontology.org/) and the Kyoto Encyclopedia of Genes and Genomes (http://www.Genome.jp/kegg/) were used to annotate the function of target genes.

RT-qPCR Analysis of Drought-related miRNAs and their Predicted Targets

The RT-qPCR technique was used to validate expression profiling of mature miRNAs and their target genes which were obtained from the high-throughput sequencing and bioinformatic prediction for the drought-stressed and control samples. Total RNA was extracted from both drought treated and control plantlets using TRIzol reagent (Invitrogen, USA) following the manufacturer's instructions.

Total RNA (1 µl) was used for synthesizing reverse transcripts using the One Step PrimeScript miRNA cDNA Synthesis Kit (Takara, Japan) in a 20 µl reaction mixture. The reaction was performed at 37°C for 60 minutes and 85°C for 5 seconds following the manufacturer's instructions. The RT-qPCR analysis was performed with SYBR® Premix Ex TaqII (Takara, Japan) to detect and quantify potato miRNAs according to the manufacturer's protocol. The expression levels of 9 obtained miRNAs were analyzed in both the control and treatment samples. The PCR amplification was set at 40 cycles of denaturation at 95°C for 10 seconds, annealing at 60°C for 30 seconds, and extension at 72°C for 1 minute [48]. Reverse primers and Uni-miR qPCR primers provided with the kit, and the miRNA-specific primers were as follows (Table 4).

thumbnail
Table 4. RT-qPCR primers for miRNA and their target genes.

https://doi.org/10.1371/journal.pone.0095489.t004

For the RT-qPCR analysis of the miRNA target genes, the 20 ml PCR reaction mixture contained about 100 ng cDNA, 10 ml SYBR Premix Ex Taq II solution (TaKaRa, Japan), and 0.8 µl of each primer. The reactions were gently mixed and incubated at 94°C for 2 minutes, followed by 40 cycles of 94°C for 30 seconds, 60°C for 34 seconds and 72°C for 30 seconds. All sample analysis was performed using 3 biological replicates with 2 technical replicates. The each sample's ef1a gene was used as an internal control [49]. These reactions were performed using the ABI3000 (Applied Biosystems 3000 Real-Time PCR) System. The relative level of miRNAs and target genes were detected using the △△Ct method [50], the Ct value was directly compared and transformed into a fold-change difference with the following formula: △△Ct = (△Ct treatment-△Ctcontrol), △Ct = Ct(miRNA/target)-Ct (ef1a) for each gene. The values within a column of the threshold cycle (Ct) were calculated between control and drought sample groups. The standard deviations of the data were obtained from the three independent experiments with one-way analysis of variance (ANOVA) using statistics software SPSS version 13.0 (SPSS Inc, Chicago, USA).

Supporting Information

Table S1.

Differentially expressed known miRNAs between control and drought treatment (miRNAs with fold-change >2.0 or <-2 were listed).

https://doi.org/10.1371/journal.pone.0095489.s001

(DOC)

Table S2.

Differentially expressed novel miRNAs between control and drought treatment (miRNAs with fold-change (log2 >2.0 or<-2 were listed).

https://doi.org/10.1371/journal.pone.0095489.s002

(DOC)

Table S3.

Predicted target genes of sixty differentially expressed known miRNAs and their functional annotation.

https://doi.org/10.1371/journal.pone.0095489.s003

(DOC)

Table S4.

Predicted target genes of sixty differentially expressed novel miRNAs and their functional annotation.

https://doi.org/10.1371/journal.pone.0095489.s004

(DOC)

Acknowledgments

We thank David C. Whyte (Environmental Policy Branch, Department of Environment and Local Government, New Brunswick, Canada) for editing drafts of the manuscript.

Author Contributions

Conceived and designed the experiments: NZ HS DW. Performed the experiments: NZ HS JY. Analyzed the data: NZ HS JY. Contributed reagents/materials/analysis tools: ZW YW JW WH BL. Wrote the paper: NZ HS JY.

References

  1. 1. Gerbens-Leenes W, Hoekstra AY, van der Meer TH (2009) The water footprint of bioenergy. Proc Natl Acad Sci 106: 10219–10223.
  2. 2. Sahi C, Singh A, Kumar K, Blumwald E, Grover A (2006) Salt stress response in rice: genetics, molecular biology, and comparative genomics. Func Integr Geno 6: 263–284.
  3. 3. Cuming AC, Cho SH, Kamisugi Y, Graham H, Quatrano RS (2007) Microarray analysis of transcriptional responses to abscisic acid and osmotic, salt, and drought stress in the moss, Physcomitrella patens. New Phytol 176: 275–287.
  4. 4. Uno Y, Furihata T, Abe H, Yoshida R, Shinozaki K, et al. (2000) Arabidopsis basic leucine zipper transcription factors involved in an abscisic acid-dependent signal transduction pathway under drought and high-salinity conditions,. Proc Natl Acad Sci 97: 11632–11637.
  5. 5. Haake V, Cook D, Riechmann JL, Pineda O, Thomashow MF, et al. (2002) Transcription factor CBF4 is a regulator of drought adaptation in Arabidopsis. Plant Physiol 130: 639–648.
  6. 6. Bartel DP (2004) MicroRNAs: genomics, biogenesis, mechanism, and function. Cell 116: 281–297.
  7. 7. Kidner CA, Martienssen RA (2005) The developmental role of microRNA in plants. Curr Opin Plant Biol 8: 38–44.
  8. 8. Palatnik JF, Allen E, Wu X, Schommer C, Schwab R, et al. (2003) Control of leaf morphogenesis by microRNAs. Nature 425: 257–263.
  9. 9. Mallory AC, Dugas DV, Bartel DP, Bartel B (2004) MicroRNA regulation of NAC domaintargets is required for proper formation and separation of adjacent embryonic, vegetative, and floral organs. Curr Biol 14: 1035–1046.
  10. 10. Rhoades MW, Reinhart BJ, Lim LP, Burge CB, Bartel B, et al. (2002) Prediction of plant microRNA targets. Cell 110: 513–520.
  11. 11. Guo HS, Xie Q, Fei JF, Chua NH (2005) MicroRNA directs mRNA cleavage of the transcription factor NAC1 to down regulate auxin signals for Arabidopsis lateral root development. Plant Cell 17: 1376–1386.
  12. 12. Rhoades MW, Reinhart BJ, Lim LP, Burge CB, Bartel B, et al. (2005) Prediction of plant microRNA targets. Cell 110: 513–520.
  13. 13. Lauter N, Kampani A, Carlson S, Goebel M, Moose SP (2005) MicroRNA172 down-regulates glossy 15 to promote vegetative phase change in maize. Proc Natl Acad Sci 102: 9412–9417.
  14. 14. Zhang B, Pan X, Cobb GP, Anderson TA (2006) Plant microRNA: a small regulatory molecule with big impact. Dev Biol 289: 3–16.
  15. 15. Chen XM (2005) microRNA biogenesis and function in plants. FEBS Lett 579: 923–5931.
  16. 16. Zhao B, Liang R, Ge L, Li W, Xiao H, et al. (2007) Identification of drought-induced microRNAs in rice,. Biochem Biophys Res Commun 354: 585–590.
  17. 17. Zhou L, Liu YZ, Kong D, Duan M, Luo L (2010) Genome-wide identification and analysis of drought-responsive microRNAs in Oryza sativa. J Exp Bot 61: 4157–4168.
  18. 18. Wang TZ, Chen L, Zhao MG, Tian QY, Zhang WH (2011) Identification of drought-responsive microRNAs in Medicago truncatula by genome-wide high-throughput sequencing. BMC Genomics 12: 367.
  19. 19. Barrera-Figueroa BE, Gao L, Diop NN, Wu ZG, Ehlers JD, et al. (2011) Identification and comparative analysis of drought- associated microRNAs in two cowpea genotypes,. BMC Plant Biol 11: 127.
  20. 20. Griffiths-Jones S, Grocock RJ, vanDongen S, Bateman A, Enright AJ (2006) miRBase: microRNA sequences, targets and gene nomenclature. Nucleic Acids Res 34: D140–D144.
  21. 21. Zhao CZ, Xia H, Frazier TP, Yao YY, Bi YP, et al. (2010) Deep sequencing identifies novel and conserved microRNAs in peanuts (Arachis hypogaea L.). BMC Plant Biol 10: 3.
  22. 22. Zhang W, Luo Y, Gong X, Zeng W, Li S (2009) Computational identification of 48 potato microRNAs and their targets. Comput Biol Chem 33: 84–93.
  23. 23. Yang W, Liu X, Zhang J, Feng J, Li C, et al. (2010) Prediction and validation of conservative microRNAs of Solanum tuberosum L. Mol Biol Rep 37: 3081–3087.
  24. 24. Xie F, Frazier TP, Zhang B (2010) Identification, characterization and expression analysis of microRNAs and their targets in the potato (Solanum tuberosum). Gene 473: 8–22.
  25. 25. Kim HJ, Baek KH, Lee BW, Choi D, Hur CG (2011) In silico identification and characterization of microRNAs and their putative target genes in Solanaceae plants. Genome 54: 91–98.
  26. 26. Zhang R, Marshall D, Bryan GJ, Hornyik C (2013) Identification and characterization of miRNA transcriptome in potato by high-throughput sequencing. PLoS ONE 8: e57233.
  27. 27. Li R, Li Y, Kristiansen K, Wang J (2008) SOAP: short oligonucleotide alignment program. Bioinformatics 24: 713–714.
  28. 28. Ambros V, Bartel B, Bartel DP, Burge CB, Carrington JC, et al. (2003) A uniform system for microRNA annotation. RNA 9: 277–279.
  29. 29. Zuker M (2003) Mfold web server for nucleic acid folding and hybridization prediction. Nucleic Acids Res 31: 3406–3415.
  30. 30. Lee Y, Jeon K, Lee JT, Kim S, Kim VN (2002) MicroRNA maturation: stepwise processing and subcellular localization. EMBO J 21: 4663–4670.
  31. 31. Ricardi MM, González1 RM, Zhong S, Duffy T, Turjanski PG, et al. (2014) Genome-wide data (ChIP-seq) enabled identification of cell wall-related and aquaporin genes as targets of tomato ASR1, a drought stress-responsive transcription factor. BMC Plant Biol 14: 29.
  32. 32. Huang XS, Luo T, Fu XZ, Fan QJ, Liu JH (2011) Cloning and molecular characterization of a mitogen-activated protein kinase gene from Poncirus trifoliata whose ectopic expression confers dehydration/drought tolerance in transgenic tobacco. J Exp Bot 62: 5191–5206.
  33. 33. Dubos C, Stracke R, Grotewold E, Weisshaar B, Martin C (2010) MYB transcription factors in Arabidopsis. Trends Plant Sci 15: 1360–1385.
  34. 34. Song Y, Jing S, Yu D (2009) Overexpression of the stress-induced OsWRKY08 improves osmotic stress tolerance in Arabidopsis. Chinese Sci Bull 54: 4671–4678.
  35. 35. Zhou Q, Tian A, Zou H, Xie Z, Lei G (2008) Soybean WRKY-type transcription factor genes, GmWRKY13, GmWRKY21, and GmWRKY54, confer differential tolerance to abiotic stresses in transgenic Arabidopsis plants. Plant Biotechnol J 6: 486–503.
  36. 36. Szabados L, Savoure A (2010) Proline: a multifunctional amino acid. Trend Plant Sci 15: 89–97.
  37. 37. Kawasaki S, Borchert C, Deyholos M, Wang H, Brazille S, et al. (2001) Gene expression profiles during the initial phase of salt stress in rice. The Plant Cell 13: 889–905.
  38. 38. Rabbani MA, Maruyama K, Abe H, Khan MA, Katsura K, et al. (2003) Monitoring expression profiles of rice genes under cold, drought, and high-salinity stresses and abscisic acid application using cDNA microarray and RNA gel-blot analyses. Plant Physiol 133: 1755–1767.
  39. 39. Kasuga M, Liu Q, Miura S, Yamaguchi-Shinozaki K, Shinozaki K (2007) Improving plant drought, salt, and freezing tolerance by gene transfer of a single stress-inducible transcription factor. Nature Biotechnol 17: 287–291.
  40. 40. Fahlgren N, Howell MD, Kasschau KD, Chapman EJ, Sullivan CM, et al. (2007) High-throughput sequencing of Arabidopsis microRNAs: evidence for frequent birth and death of miRNA genes. PLoS One 2: e219.
  41. 41. Moxon S, Jing R, Szittya G, Schwach F, Rusholme Pilcher RL, et al. (2008) Deep sequencing of tomato short RNAs identifies microRNAs targeting genes involved in fruit ripening. Genome Res 18: 1602–1609.
  42. 42. Barakat A, Wall PK, Diloreto S, Depamphilis CW, Carlson JE (2007) Conservation and divergence of microRNAs in Populus. BMC Genomics 8: 481.
  43. 43. Xin M, Wang Y, Yao Y, Xie C, Peng H, et al. (2010) Diverse set of microRNAs are responsive to powdery mildew infection and heat stress in wheat (Triticum aestivum L.). BMC Plant Biol 10: 123.
  44. 44. Lagos-Quintana M, Rauhut R, Yalcin A, Meyer J, Lendeckel W, et al. (2002) Identification of tissue-specific microRNAs from mouse. Curr Biol 12: 735–739.
  45. 45. Saini S, Dongen HK, Enrigh SV (2008) miRBase: tools formicroRNA genomics. Nucleic Acids Res 36: D154–D158.
  46. 46. Calabrese JM, Seila AC, Yeo GW, Sharp PA (2007) RNA sequence analysis defines Dicer's role in mouse embryonic stem cells. Proc Natl Acad Sci 104: 18097–18102.
  47. 47. Dai X, Zhao PX (2011) psRNATarget: a plant small RNA target analysis server. Nucleic Acids Res 39: W155–W159.
  48. 48. Feng J, Wang K, Liu X, Chen S, Chen J (2009) The quantification of tomato microRNAs response to viral infection by stem-loop real-time RT-PCR. Gene 437: 14–21.
  49. 49. Nicot N, Hausman JF, Hoffmann L, Evers D (2005) Housekeeping gene selection for real-time RT-PCR normalization in potato during biotic and abiotic stress. J Exp Bot 56: 2907–2914.
  50. 50. Livak KJ, Schmittgen TD (2001) Analysis of relative gene expression data using real-time quantitative PCR and the 2(-Delta Delta C(T)) method. Methods 25: 402–408.