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

Selection and validation of suitable reference genes for qRT-PCR analysis in pear leaf tissues under distinct training systems

  • Zheng Liu ,

    Roles Conceptualization, Formal analysis, Writing – original draft, Writing – review & editing

    liuzhenghzau@aliyun.com (ZL); zhongqiqin@163.com (ZQQ)

    Affiliation Research Institute of Fruit and Tea, Hubei Academy of Agricultural Sciences, Wuhan, Hubei, China

  • Kexin Cheng,

    Roles Formal analysis

    Affiliations Research Institute of Fruit and Tea, Hubei Academy of Agricultural Sciences, Wuhan, Hubei, China, School of Life Sciences, Wuhan University, Wuhan, Hubei, China

  • Zhongqi Qin ,

    Roles Conceptualization

    liuzhenghzau@aliyun.com (ZL); zhongqiqin@163.com (ZQQ)

    Affiliations Research Institute of Fruit and Tea, Hubei Academy of Agricultural Sciences, Wuhan, Hubei, China, School of Life Sciences, Wuhan University, Wuhan, Hubei, China

  • Tao Wu,

    Roles Resources

    Affiliation Research Institute of Fruit and Tea, Hubei Academy of Agricultural Sciences, Wuhan, Hubei, China

  • Xianming Li,

    Roles Resources

    Affiliation Research Institute of Fruit and Tea, Hubei Academy of Agricultural Sciences, Wuhan, Hubei, China

  • Junfan Tu,

    Roles Resources

    Affiliation Research Institute of Fruit and Tea, Hubei Academy of Agricultural Sciences, Wuhan, Hubei, China

  • Fuchen Yang,

    Roles Resources

    Affiliation Research Institute of Fruit and Tea, Hubei Academy of Agricultural Sciences, Wuhan, Hubei, China

  • Hongyan Zhu,

    Roles Resources

    Affiliation Research Institute of Fruit and Tea, Hubei Academy of Agricultural Sciences, Wuhan, Hubei, China

  • Li Yang

    Roles Resources

    Affiliation Research Institute of Fruit and Tea, Hubei Academy of Agricultural Sciences, Wuhan, Hubei, China

Abstract

Training systems generally alter tree architecture, which modulates light microclimate within the canopy, for the purpose of improving photosynthetic efficiency and fruit quality. Gene expression quantification is one of the most important methods for exploring the molecular mechanisms underlying the influence of training systems on pear photosynthesis, and suitable reference genes for gene expression normalization are a prerequisite for this method. In this study, the expression stability of nine common and four novel candidate genes were evaluated in 14 different pear leaf samples in two training systems, including those at four developmental stages (training_period) and from different parts of the trees (training_space), using two distinct algorithms, geNorm and NormFinder. Our results revealed that SKD1 (Suppressor of K+ Transport Growth Defect1)/ YLS8 (Yellow Leaf Specific 8) and ARM (Armadillo) were the most stable single reference genes for the ‘training_period’ and ‘training_space’ subsets, respectively, although these single genes were not as stable as the optimal pairs of reference genes, SKD1+YLS8 and ARM+YLS8, respectively. Furthermore, the expression levels of the PpsAPX (Ascorbate peroxidase) gene showed that the arbitrary use of reference genes without previous testing could lead to misinterpretation of data. This work constitutes the first systematic analysis regarding the selection of superior reference genes in training system studies, facilitating the elucidation of gene function in pear and providing valuable information for similar studies in other higher plants.

Introduction

Pear is one of the most economically important deciduous fruit trees globally, and training is a vital cultivation technique to maintain its optimal fruit quality. A good training system is an important foundation for manipulations of tree planting arrangement and canopy geometry to improve the penetration and distribution of photosynthetically active radiation (PAR) for the purpose of optimizing photosynthetic carbon fixation and fruit quality [1]. Canopy structure can alter microclimate conditions (temperature, humidity and other environmental factors) and thereby indirectly affect disease incidence [2,3]. Currently, there are various training systems used for growing pears, such as the spindle system, open vase system, trellis system and so on. However, no one training system is best for all conditions (cultivar, rootstock, climate or economic circumstance) [4]. Therefore, understanding and utilizing the advantages of various training systems could be beneficial for pear growth and productivity.

In China, free systems, such as spindle and open vase, are widely employed in most pear orchards because of their low costs and high early yields. However, fruit may bruise easily and reduce marketability when the branches are not firmly attached to supports [5]. At the intra-tree scale of traditional training systems, fruit quality may show a large variability in response to architectural position, since uneven distribution of light within the canopy is associated with shade [6,7]. The flat-type trellis system has been widely utilized for pear cultivation in Japan. Recently, this system has attracted interest and gradually developed in China. The training system is based on the removal of water shoots above the trunk or primary branches and tying the lateral shoots with string to the trellis. This arrangement allows trees to receive sunlight uniformly and achieve uniform fruiting and fruit quality, not to mention lower labor costs and its capability to protect fruit trees from wind [5]. In addition, this system increases the shoot angle from the vertical to the horizontal position, which can promote flower bud formation and fruit set [8]. Although the flat-type trellis system favors low-density plantings, thereby gaining lower early productivity, the yield increases when trees grow into adults with more shoots.

Branch or shoot bending is one of the most typical structural characteristics of the flat-type trellis system. Such mechanical stress may regulate hormone pathway genes, which might alter endogenous hormone levels and signaling sensitivity, thus promoting flower induction and increasing fruit production [8]. In ‘Kiyo’ Japanese plum, bent shoots in a joint tree system and the horizontal shoots of stand-alone trees showed lower levels of PslGA3ox transcript, which encodes a key enzyme involved in GA biosynthesis and may promote flower induction, than the upright shoots of stand-alone trees [9]. In pear, the expression levels of ripening-related genes (EIN4, ERS1, ETR1, ETR2, PG, ACO1, APRT, Def, MnSOD, GAL and PGM) were higher in a V-shaped system or the bottom part of the canopy that had less ripe fruit, which might indicate competence to initiate the ripening process [10]. The trellis system may improve light penetration and distribution in the orchard by training technology that decreases within-shoot shading, which appears to be crucial for fruit quality. However, very few studies offer a direct comparison of pear training systems, and the underlying molecular mechanisms explaining the contribution of efficient training system remain unknown [5,11,12]. Therefore, by comparing the potential photosynthesis of the classical central leader training system and trellis system and revealing the functions of biomolecules in nutrient contribution, we could better understand the mechanisms by which shoot reorientation in the trellis system promotes fruit quality. Gene expression analysis is an important research method to gain insight into the putative functions of specific candidate genes involved in complex regulatory relationships. Among the widely used methods, quantitative real-time reverse transcription PCR (qRT-PCR) is a sensitive and reproducible technique with a broad quantification range for measuring gene expression [1316]. This technique has been recently used to quantify changes in gene expression profiles in response to developmental transitions (anthocyanin biosynthesis, sclereid formation, fruit development) and environmental changes (low temperature, dehydration stress, biotic stress) in pear [1722]. Nevertheless, to accurately quantify gene expression by qRT-PCR, it is necessary to normalize the expression levels of the target genes to the expression levels of optimal reference genes, which are expected to exhibit only minor differences in their expression across various tissue/organ types, developmental stages and experimental conditions [23]. However, none of the reference genes discovered thus far is consistently expressed under diverse experimental situations [2427]. Previously, a few so-called housekeeping genes, such as glyceraldehyde-3-phosphate dehydrogenase (GAPDH), elongation factor 1a (EF1a) and tubulin (TUB), have been used extensively as internal controls for gene expression analysis in pear without systematic evaluation of their expression stability in a preliminary experiment [22,28,29]. There is evidence that the transcript levels of housekeeping genes may vary considerably under some experimental conditions [30]. Currently, two Excel-based statistical algorithms, geNorm and NormFinder, are widely recognized for selecting suitable reference genes in various species [3136]. Based on these algorithms, only four studies relying on qRT-PCR analysis in pear have evaluated the stability of candidate reference genes, mainly in a few test conditions such as various tissues or exposure to some abiotic stresses [3740]. However, no systematic study has been carried out for the selection of reference genes in distinct training systems.

In this study, we used qRT-PCR to examine variations in the expression of thirteen candidate reference genes, including nine common candidate reference genes (Actin2, EF1a, GAPC, Histone H3, SAND, TIP41-like, TUB7, UBQ5 and YLS8), which were previously shown to have highly stable expression levels in pear in other experimental conditions [3739], and four novel reference genes (ARM, MYB10, SKD1 and SRP34A) retrieved from our transcriptome data of fruit tissues between the flat-type trellis system and traditional spindle system. Our data provide optimal single or multiple reference gene(s) that will enable more accurate and reliable qRT-PCR normalization for gene expression studies in pear under distinct training systems and canopy positions. These results provide a useful basis for future gene expression analysis in studies of pear training system.

Material and methods

Ethics statement

This study was approved by the Wu Chang Sand Pear Garden National Fruit-tree Germplasm Resource (WCSPGNFGR), Wuhan, China. No specific permissions were required for the described field studies, as the pear germplasm resource were managed through Research Institute of Fruit and Tea. The collection location is not privately owned or protected area, and the field studies did not involve endangered or protected species.

Plant materials

‘Wonhwang’ pear (Pyrus pyrifolia Nakai cv. Wonhwang) leaf samples of distinct training systems (flat-type trellis system and spindle system) were collected from WCSPGNFGR. A flat-type trellis system was developed by our research team and referred to as Double Primary Branches Along the Row (DPBAR) (Figures a, b, and c in S1 Fig). The tree canopy is supported on two horizontal steel wires that are stretched along the row at heights of 1.3 m and 1.7 m. The two primary branches are bent in opposite directions along the row and hung naturally on the top wires. In the traditional spindle system, the tree has a central and vertical leader with a few horizontal branches, which are shorter at the tree top than at the bottom (Figure d in S1 Fig). Approximately twenty fully expanded sixth leaves in all directions were collected from the middle of May to August, which covers the full transition from fruit set to harvest maturity. These eight leaf samples were designated as the subset ‘training_period’, representing the leaf samples at four development stages in two distinct training systems. To inspect the stability of candidate reference genes over a wider spectrum, another six fully expanded leaf samples were collected in July under the two distinct training systems and designated as the second subset ‘training_space’, including those from the exterior, central and interior parts of the trees in the two distinct training systems (Figure e in S1 Fig). All samples mentioned above were collected from three independent trees as three biological replicates, immediately frozen in liquid nitrogen and stored at -80°C until total RNA isolation.

Total RNA isolation, quality control and cDNA synthesis

Total RNA was extracted from the frozen leaves using RNAprep Pure Plant Kit (Polysaccharides & Polyphenolics-rich) (Tiangen, China) following the manufacturer’s instructions. RNA concentration of each sample was determined using a NanoPhotometerTM spectrophotometer (IMPLEN, Germany). The OD260/OD280 absorption ratio (1.9 and 2.1) and OD260/OD230 (>2.0) were used to determine the quality and purity of RNA samples. Total RNA integrity was also verified by Agilent 2100 bioanalyzer (Figure a in S2 Fig). First-strand cDNA was synthesized from 1 μg of total RNA using RevertAidTM First Strand cDNA Synthesis Kit (Fermentas, USA). cDNA was stored at -20°C for future use.

Candidate reference gene selection and primer design

The nine candidate reference genes (Actin2, EF1a, GAPC, Histone H3, SAND, TIP41-like, TUB7, UBQ5 and YLS8) were selected based on their common usage as reference genes in previous pear studies, where they showed stable expression levels in other tested experimental conditions [3739]. For all candidates mentioned above, the primers from previous studies were used. These genes represent several functional classes to minimize the possibility of co-regulation (Table 1). In addition, we included four novel candidates, i.e., ARM (Armadillo; accession no. MG029158), MYB10 (Myeloblastosis 10; accession no. MG029159), SKD1 (Suppressor of K+ Transport Growth Defect1; accession no. MG029160) and SRP34A (Serine/Arginine-Rich Protein Splicing Factor 34A, accession no. MG029161), which were identified from transcriptome datasets of ‘Wonhwang’ pear fruit samples during the maturation period in the same two training systems and found to have approximately even expression levels among libraries (S1 Table). However, the expression stability of these candidates should be still tested, since there is no additional evidence to verify that the four genes may be equally expressed in leaves under distinct training systems. Primers were designed by Primer 5.0 software using the default parameters (Table 1). To confirm the sequences of the amplicons, the PCR products were analyzed on 1.2% agarose gel and then sequenced. No-template control and no-reverse-transcriptase controls were performed as well (Figure b in S2 Fig). The amplicons of the 13 candidate reference genes were used to obtain homologous genes through a BLASTN search against the Arabidopsis thaliana database (The Arabidopsis Information Resource, http://www.arabidopsis.org/).

Quantitative real-time reverse transcription PCR (qRT-PCR) and PCR efficiency determination

qRT-PCR was performed utilizing SYBR Green detection chemistry on an ABI 7500 Real Time System (Applied Biosystems, USA). The qRT-PCR cocktail contained 0.5 μl of cDNA, 0.5 μl each of specific sense and anti-sense primers and 5 μl of 2× SYBR GREEN PCR Master Mix (Applied Biosystems, USA) in a final reaction volume of 10 μl for each well. The PCR amplification program was as follows: an initial denaturation step at 95°C for 3 min, followed by 40 amplification cycles of 30 s at 95°C, and 60°C for 1 min. Three biological replicates for each sample and four technical replicates of each biological replicate were analyzed by qRT-PCR. Each run was completed with a melting curve analysis for 13 candidate reference genes to confirm the specificity of amplification. A serial dilution of the total combined cDNA pools was used to obtain standard curves and the corresponding primer amplification efficiency for each candidate reference gene.

Determination of reference gene expression stability using geNorm and NormFinder

Analysis tools including geNorm (version 3.5) and NormFinder (version 0.953) were used to estimate gene expression stability [31, 32]. Genorm is a Microsoft Excel application that calculates the average stability measure (M) by assessing the pairwise expression ratio of each reference gene against all other tested reference genes. Genes with the lowest M value are considered to be most stably expressed. The pairwise variation Vn/Vn+1 between two sequential normalization factors was calculated to determine the optimal number of reference genes required for accurately normalizing qRT-PCR. A threshold value below 0.15 suggests that no additional reference genes are required for normalization. NormFinder uses an ANOVA-based model to estimate both intra- and inter-group variations and provides a direct measure for integrating all consistent results.

Validation of reference genes

In perennial fruit trees, including pear, complex branching structure and high leaf density also potentially aggravate environmental stress (high temperature or strong light) [41]. Ascorbate peroxidase (APX) was shown to be involved in scavenging H2O2 under stress conditions. To evaluate the validity of the reference genes, the expression profile of a target gene, PpsAPX (Ascorbate peroxidase), was detected in the eight samples of the ‘training_period’ subset and normalized separately to the most stable single reference gene, the optimal reference gene pair, two traditional reference genes and two unstable reference genes. For PpsAPX, primers were previously designed by Liu et al. [41].

Results

RNA intergrity assessment, amplification specificity and PCR efficiency

To verify the RNA integrity, Agilent 2100 bioanalyzer was used to determine RNA quality. The sizes of the RNA bands (28S and 18S) were conformed to their theoretical values (Figure a in S2 Fig). However, an abnormal migration was observed for chloroplast 23S rRNA, since it migrated slightly faster than 18S rRNA, presumably due to secondary structures effects that were not resolved by non-denaturing capillary electrophoresis. The RIN values of all samples were higher than seven, indicating that these RNA starting materials can be used for subsequent experiments. Agarose gel electrophoresis revealed that all primers of the 13 candidate reference genes amplified a single PCR product with the expected size, and then the cloned amplicons were sequenced (S2 Table). No amplification was observed in the negative control reactions with no template or no reverse transcriptase (Figure b in S2 Fig). The specificity of each primer pair was further confirmed by the presence of a single peak in the melting curve analysis (S3 Fig). The PCR amplification efficiency of the thirteen reference genes ranged from 92.86% for MYB10 to 110.95% for TIP41-like with linear regression coefficient R2 values being >0.99 (Table 1).

Expression levels of candidate reference genes

The quantification cycle (Ct) values of all 13 candidate reference genes were variable across the tested samples, indicating that their gene expression levels are affected by developmental stage, spatial distribution and training system (Fig 1). Naturally, the lowest amount of variance is the most favorable.

thumbnail
Fig 1. Ct values for 13 candidate reference genes across samples.

The Ct values of the candidate reference genes in the ‘training_period’ subset (a) and the ‘training_space’ subset (b). The box represents the 25th and 75th percentiles of the data. A line across the box depicts the median. Whiskers extend to the minimum and maximum values. Circles indicate outliers.

https://doi.org/10.1371/journal.pone.0202472.g001

For leaf tissues at four development stages in two distinct training systems (hereafter referred to as the ‘training_period’ subset), the Ct values of the candidate reference genes ranged from 18.64 to 26.46 (Fig 1A). Among these genes, Actin2, EF1a, GAPC, Histone H3 and UBQ5 were transcribed most abundantly, with Ct median values 21.15, 21.39, 19.83, 19.49 and 21.21, respectively, whereas ARM presented the lowest average expression level (mean Ct = 25.70). EF1a displayed relatively higher variation in the ‘training_period’ subset, with Ct values 20.55–22.50. In contrast, SKD1 and YLS8 were expressed rather stably, with a narrow range of Ct values spanning 21.67–22.86 and 21.87–22.90 among samples, respectively.

In the leaf tissues from various parts of the trees in the two distinct training systems (hereafter referred to as the ‘training_space’ subset), the 13 candidate reference genes were also expressed differentially among samples, with Ct values spanning 15.93–26.86 (Fig 1B). GAPC and Histone H3 showed high accumulation, with median Ct values 18.90, and 16.75, respectively, whereas MYB10 had the lowest average expression level (mean Ct = 26.21). From the Ct value ranges of each candidate reference gene, we could tell that the expression levels of Actin2, ARM and UBQ5 were relatively stable among the ‘training_space’ subset tissues, with Ct values spanning 21.61–22.57, 24.32–25.09 and 20.96–21.62, respectively. On the other hand, Histone H3 was the most variable across the subset samples, with Ct values spanning 15.93–17.59, suggesting that Histone H3 may not be suitable as a reference gene in these experimental conditions.

Expression stability assessment of the candidate reference genes by geNorm

The geNorm tool applied a statistical algorithm to calculate the average expression stability M of all thirteen candidate reference genes. The least stable genes with the highest M values were successively excluded until the most stable genes were determined (Fig 2 and Table 2). All of the tested reference genes showed an overall limited variance, with M values of less than 0.65, which is well below the default limit of 1.5. In the ‘training_space’ subset, the M values of all the candidates were even smaller. The SKD1 and YLS8 genes exhibited the lowest variation and highest stability in the ‘training_period’ subset; for the ‘training_space’ subset, the two top ranked candidates were ARM and Actin2, with an M value of 0.14.

thumbnail
Fig 2. Gene expression stability and ranking of 13 candidate reference genes as calculated by geNorm.

Average expression stability (M) of the reference genes was measured during stepwise exclusion of the least stable reference genes. A lower value of average expression stability (M) indicates more stable expression. (a) The ‘training_period’ subset; (b) the ‘training_space’ subset.

https://doi.org/10.1371/journal.pone.0202472.g002

thumbnail
Table 2. Ranking of candidate genes according to their expression stability values (M) estimated using the geNorm algorithm.

https://doi.org/10.1371/journal.pone.0202472.t002

The optimal number of suitable reference genes for proper normalization was established using pairwise variation values (V). Generally, an additional reference gene was not required until the variation Vn/Vn+1 dropped below the given threshold, 0.15. For the two sample subsets, geNorm analysis revealed that the V2/3 values were 0.087 and 0.071, respectively (Fig 3), both far below the cut-off of 0.15, indicating that the two most stable reference genes would be sufficient for accurate normalization in each case. Thus, we concluded that SKD1 and YLS8 were the optimal multiple reference genes for the ‘training_period’ subset, while ARM and Actin2 were necessary to normalize gene expression for the ‘training_space’ subset.

thumbnail
Fig 3. Pairwise variation (V) to determine the optimal number of reference genes for accurate normalization.

The pairwise variation (Vn/Vn+1) was analyzed between the normalization factors NFn and NFn+1 by geNorm software. Asterisk indicates the optimal number of genes for normalization.

https://doi.org/10.1371/journal.pone.0202472.g003

Stability assessment of the candidate reference genes by NormFinder

Expression stabilities of the candidate reference genes were also analyzed by NormFinder. All reference gene candidates were ranked based on intra-group variations and converted into a stability value for each candidate. The lowest average stability value for a candidate reference gene indicates the most stable expression. For the ‘training_period’ and ‘training_space’ subsets, SKD1 and ARM were the top ranked candidates, respectively (Table 3).

thumbnail
Table 3. Intra-group ranking of the candidate reference genes according to their stability values calculated by NormFinder.

https://doi.org/10.1371/journal.pone.0202472.t003

In addition, inter-group variation was also estimated by NormFinder. For leaf samples in the two subgroups (flat-type trellis system and spindle system) of ‘training_period’, which was referred to as ‘training_period_divided’, the two top ranked candidates were YLS8 and SKD1, which were also the optimal pair (Table 4), in agreement with the results of the distinct statistical algorithm geNorm (Table 2). For the leaf samples in the two subgroups of ‘training_space_divided’, the most stable candidate was ARM, and ARM and YLS8 constituted the best combination with a stability value of 0.052 (Table 4).

thumbnail
Table 4. Inter-group ranking of the candidate reference genes according to their stability values calculated by NormFinder.

https://doi.org/10.1371/journal.pone.0202472.t004

Evaluation of the selected reference genes

To validate the reliability of the selected reference genes, we analyzed the relative expression patterns of the PpsAPX gene during leaf development in the two distinct training systems, using the two most stable reference genes and two unstable genes selected by ranking from the two algorithms (geNorm and NormFinder). Two traditional housekeeping genes, TUBβ and UBQ10, were also used for normalization. As shown in Fig 4, when normalized with SKD1, the transcription level of PpsAPX was slightly up-regulated during leaf development, reaching its peak in July and then showing steady expression in August. Similar expression patterns were observed when normalized with YLS8 or in combination with SKD1 together. On the other hand, a significant over-estimation of the PpsAPX expression level could be observed in various leaf development stages when normalized with EF1a. For instance, when PpsAPX expression was normalized with EF1a in sample DP5, its transcription level appeared approximately eight times higher than the estimation obtained using the most stable genes. The relative expression level results were also distorted when we normalized against the other unstable candidate reference genes or classical pear housekeeping genes. These results highlight the importance of the selection of suitable reference genes for reliable results in gene expression.

thumbnail
Fig 4. Expression level of PpsAPX using validated reference genes for normalization.

qRT-PCR data was normalized to the two most stable reference genes (SKD1 and YLS8), two commonly used reference genes (TUBβ and UBQ10), and two unstable genes (EF1a and MYB10). DP, flat-type trellis system, SP, spindle system. The numbers after DP and SP refer to the month.

https://doi.org/10.1371/journal.pone.0202472.g004

Discussion

In pear, the draft genomic sequences of Asiatic pear ‘Suli’ (Pyrus bretschneideri Rehd.) and European pear ‘Bartlett’ (P. communis L.) are now available [42, 43], along with increased transcriptomic resources, which will expedite functional genomics research. Gene expression analysis based on the qRT-PCR technique is a useful research method for increasing our understanding of the interactions between training systems and photosynthetic efficiency-related gene function. Reliable quantification results through qRT-PCR are largely dependent on the high expression stability of endogenous reference genes [23, 44]. However, there is no ideal reference gene that could be stably expressed in all situations [4547]. Thus, it is advisable to systematically validate the reference genes prior to their use in each specific experimental situation.

In this study, four novel candidate reference genes retrieved from mRNA high-throughput sequencing data (S1 Table) and nine common reference genes with highly stable expression levels under other tested experimental conditions in pear [3739] were selected to determine the most reliable gene(s) for accurate normalization, instead of using housekeeping genes chosen arbitrarily. To the best of our knowledge, the present work is the first systematic evaluation of the expression stability of reference genes in training system studies. We have employed two distinct software packages, geNorm and NormFinder, to evaluate the expression stability of the candidates in two independent experimental subsets (Tables 24 and Fig 2). GeNorm uses a pairwise approach to select the two genes with the least variation in their expression ratios, while NormFinder uses a model-based variance estimation approach to identify candidate reference genes with lowest intra- and inter-group variation [31, 32]. Owing to their distinct statistical algorithms, the assessment results obtained by distinct statistical algorithms were not identical. It is noteworthy that both programs yielded similar overall ranking orders with subtle variation under certain experimental conditions. The candidates in the last two positions, EF1a/TUB7 for ‘training_period’ and TUB7/Histone H3 for ‘training_space’, were consistently predicted by both algorithms, indicating that these genes were inadequate for transcript normalization in pear under these experimental conditions. For ‘training_period’, SKD1 and YLS8 were ranked as the most stable single reference genes and the best combination by both programs, no matter whether intra- or inter-group variation was considered. For ‘training_space’, both algorithms recommended ARM and Actin2 as the top two most stable reference genes, but the best combination of genes varied slightly: geNorm selected ARM+Actin2 as the optimal pair, while the best combination was ARM+YLS8 according to the NormFinder inter-group variation analysis. Some researchers preferred the NormFinder algorithm owing to its robust design and ability to provide more reliable information on the stability of a single reference gene [44, 48]. We found that NormFinder affirmed the optimal single reference gene determined by geNorm. Here, we counted on the result of geNorm, since it systematically analyzes optimal multiple reference genes. Thereby, SKD1 (or YLS8) and ARM were the most stable single reference genes for the ‘training_period’ and ‘training_space’ subsets, respectively, but their validity may still lower than the optimal pairs SKD1+YLS8 and ARM+YLS8 as assessed by geNorm, based on the hypothesis that a single reference gene is less stable than a combination of multiple reference genes [26, 49]. The current work is the first to propose SKD1 and ARM sequences as stable reference genes. The homolog of SKD1 in Arabidopsis thaliana contributes to vacuolar trafficking and maintenance of the large central vacuole of plant cells [50, 51], in agreement with its stable expression in pear because it is probably involved in basic processes of cell maintenance. The sequence of ARM had a low similarity (E-value = 0.28) to the Arabidopsis gene (Table 1) and no GO or KEGG annotation in our previous transcriptome analysis. While we can not speculate arbitrarily on its molecular function and biological process, this novel candidate gene is a good choice for normalization in gene expression studies of pear in distinct training systems.

Both software packages indicated that GAPC, SAND, TIP41-like, MYB10 and SRP34 ranked in the middle positions among the subsets studied. GAPC was considered the most appropriate reference gene in pear when considering fruit tissues or phytohormone treatments [37]. However, our results revealed that the expression stability of other two novel genes, SKD1 and ARM, was superior to that of GAPC during leaf development in distinct training systems (Tables 24). Similar results were observed in Petunia; GAPDH was considered the gene least stably expressed when assessed during leaf and flower development [52]. Based on NormFinder stability values in pear flower organ samples, SAND was the top reference gene, and TIP41-like was a variable gene [38]. In contrast, using the same algorithm, our results showed that the expression stability of TIP41-like was higher than that of SAND in the ‘training_period’ subset, although neither was the most stable reference gene (Tables 3 and 4). Furthermore, it is interesting to note that the two other novel candidates, MYB10 and SRP34A, had approximately equal expression levels between fruit libraries in these distinct training systems by high-throughput sequencing (S2 Table). However, we found that the expression of these two genes varied among the 14 leaf samples in the same training systems, ranking in the middle position with Ct values spanning 24.75–26.86 and 23.62–25.43, respectively. This outcome indicates that the expression of these two candidates was affected by tissue type. These results highlight the necessity to assess suitable reference genes for each experimental condition, and not to assume that reference genes that have stable expression in one experimental condition are optimal in another condition, even in the same species.

The suitability of the selected reference genes has been validated by analyzing the expression profile of a PpsAPX gene encoding a key enzyme that plays a central role in scavenging H2O2 under stress conditions [53]. Similar expression patterns of PpsAPX were described when the stable single references SKD1 and YLS8 and the optimal reference pair SKD1+YLS8 were employed (Fig 4). We found that the expression of PpsAPX was slightly increased during early leaf development and then stably expressed duing fruit harvesting period (July and August), regardless of whether the flat-type trellis system or traditional spindle system was considered. The expression analysis results were consistent with previous research ideas that leaf senescence are associated with the formation of free radicals but that this effect can be retarded by removing reproductive tissues (flower or fruit) [54]. As expected, notably conflicting expression differences were estimated with the two unstable references or with two commonly used reference genes compared to the results normalized by the stable candidate genes, leading to too high (or relatively low) misinterpretation of the PpsAPX expression level. These results further proved the reliability of the optimal single and double reference gene(s) selected by geNorm and NormFinder in our study.

Conclusions

This is the first study to comprehensively analyze the stability of a set of reference genes in distinct training systems. Two novel candidates, SKD1 and ARM, display high stability in the ‘training_period’ and ‘training_space’ subsets, respectively. Reference pairs SKD1+YLS8 and ARM+Actin2 are the best multiple reference genes for the two subsets mentioned above. In addition, we also showed that some commonly used reference genes, such as TUBβ and UBQ10, could be inadequate for transcript normalization under particular experimental conditions in pear. Our results provide a foundation for extensive use of qRT-PCR in gene expression analysis for future training system studies in pear, which could be beneficial for post-genomic research and revealing the underlying molecular mechanism of the effects of training systems on leaf photosynthesis and fruit quality.

Supporting information

S1 Fig. The two training systems used in this study.

The flat-type trellis system (Double Primary Branches Along the Row) has two primary branches bent in opposite directions along the row and hung naturally on the two horizontal wires. In spring, the branches of the trees had many new leaves and flowers on them (a). Lateral branches with high-quality fruit were evenly distributed on the primary branches in summer (b), but the leaves gradually fell in autumn (c). In the spindle system, the tree has a central and vertical leader, with a few horizontal branches that are shorter at the tree top than at the bottom (d). The schematic illustration (aerial view) of leaf samples collection for the ‘training_space’ subset (e). Samples were collected from exterior, central and interior parts of the trees in that flat-type trellis system (upper part) and spindle system (bottom part). Interior parts (I), central part (C), and exterior part (E) were approximately 0–0.5 m, 0.5–1.0 m and more than 1.0 m away from the trunk.

https://doi.org/10.1371/journal.pone.0202472.s001

(TIF)

S2 Fig. The RNA quality of 14 samples assessed by Agilent 2100 Bioanalyzer and agarose gel showing amplification of PCR product of the expected amplicon size for each gene tested in this study.

a. Gel-like image produced by Agilent 2100 bioanalyzer showing the results of separate bands of RNA samples. A typical electropherogram of leaf RNA include clearly visible 28/18S rRNA peak. Two additional prominent peaks migrated faster than cytoplasmic 18S rRNA, indicating an abnormal migration of 16S and 23S rRNA from chloroplasts, presumably due to secondary structures effects that were not resolved by non-denaturing capillary electrophoresis. [FU] represent fluorescence. DP, flat-type trellis system, SP, spindle system. The numbers after DP and SP refer to the month. DP/SP-x was the DP or SP leaf samples collected from exterior, central and interior parts of the trees, x = In, Ce and Ex represented Interior parts, central part, and exterior part. b. Equal amounts of cDNA from all tested samples were mixed as the templates. The thirteen amplicon sizes were verified with 1.2% agarose gel electrophoresis and ethidium bromide staining (b). M, P, T and R represent DNA size marker, PCR for positive amplifications, no-template control and no-reverse-transcriptase control.

https://doi.org/10.1371/journal.pone.0202472.s002

(TIF)

S3 Fig. Dissociation curve data for the 13 reference genes tested.

https://doi.org/10.1371/journal.pone.0202472.s003

(TIF)

S1 Table. Four novel candidate reference genes retrieved from mRNA high-throughput sequencing data.

Transcripts were retrieved from high-throughput sequencing results of fruit tissues between the flat-type trellis system and traditional spindle system.

https://doi.org/10.1371/journal.pone.0202472.s004

(DOCX)

S2 Table. Sequence information of the 13 candidate reference gene amplicons.

https://doi.org/10.1371/journal.pone.0202472.s005

(DOCX)

References

  1. 1. Hampson CR, Quamme HA, Brownlee RT. Canopy growth, Yield, and fruit quality of ‘Royal Gala’ apple trees grown for eight years in five tree training systems. Sci Hort. 2002;34: 627–631.
  2. 2. Zahavi T, Reuveni M. Effect of grapevine training systems on susceptibility of berries to infection by Erysiphe necator. Eur J Plant Pathol. 2012;133: 511–515.
  3. 3. Liu MY, Chi M, Tang YH, Song CZ, Xi ZM, Zhang ZW. Effect of three training systems on grapes in a wet region of China: yield, incidence of disease and anthocyanin compositions of Vitis vinifera cv. Cabernet Sauvignon. Molecules. 2015; 20: 18967–18987. pmid:26492226
  4. 4. Kappel F, Brownlee R. Early performance of ‘Conference’ pear on four training systems. HortScience. 2001; 36(1): 69–71.
  5. 5. Petri JL, Leite GB, Basso C, Hawerrth FJ. Evaluation of training systems for Nashi pears. Acta Hortic. 2008;800: 755–762.
  6. 6. Stephan J, Sinoquet H, Dones N, Haddad N, Talhouk S, Lauri PE. Light interception and partitioning between shoots in apple cultivars influenced by training. Tree Physiol. 2008;28: 331–342. pmid:18171657
  7. 7. Jajo A, Rahim MA, Serra S, Gagliardi F, Jajo NK, Musacchi S, et al. Impact of tree training system, branch type and position in the canopy on the ripening homogeneity of ‘Abbé Fétel’ pear fruit. Tree Genet Genomes. 2014;10: 1477–1488.
  8. 8. Ito A, Yoshioka H, Hayama H, Kashimura Y. Reorientation of shoots to the horizontal position influences the sugar metabolism of lateral buds and shoot internodes in Japanese pear (Pyrus pyrifolia (Burm.) Nak.). J Hortic Sci Biotech, 2004;79(3): 416–422.
  9. 9. Chutinanthakun T, Sekozawa Y, Sugaya S, Gemma H. Effect of bending and the joint tree training system on the expression levels of GA3- and GA2-oxidases during flower bud development in ‘Kiyo’ Japanese plum. Sci Hortic, 2015;193: 308–315.
  10. 10. Jajo A, Rahim MA, Serra S, Gagliardi F, Jajo NK, Musacchi S, et al. Impact of tree training system, branch type and position in the canopy on the ripening homogeneity of ‘Abbé Fétel’ pear fruit. Tree Genet Genome, 2014;10: 1477–1488.
  11. 11. Musacchi S. Bibaum®: a new training system for pear orchard. Acta Hortic. 2008;800: 763–769.
  12. 12. Sosna I, Czaplicka M. The influence of two training systems on growth and cropping of three pear cultivars. J Fruit Ornam Plant Res. 2008;16:75–81.
  13. 13. Zhang J, Gai MZ, Xue BY, Jia NN, Wang CX, Wang JX, et al. The use of miRNAs as reference genes for miRNA expression normalization during Lilium somatic embryogenesis by real-time reverse transcription PCR analysis. Plant Cell Tiss Organ Cult. 2017;129(1): 105–118.
  14. 14. Rumlow A, Keunen E, Klein J, Pallmann P, Riemenschneider A, Cuypers A, et al. Quantitative expression analysis in Brassica napus by Northern blot analysis and reverse transcription-quantitative PCR in a complex experimental setting. PLoS ONE. 2016;11(9): e0163679. pmid:27685087
  15. 15. Ferradás Y, Rey L, Martínez Ó, Rey M, González MªV. Identification and validation of reference genes for accurate normalization of real-time quantitative PCR data in kiwifruit. Plant Physiol Bioch. 2016;102: 27–36.
  16. 16. He Y, Yan H, Hua W, Huang Y, Wang Z. Selection and validation of reference genes for quantitative real-time PCR in Gentiana macrophylla. Front Plant Sci. 2016;7: 945. pmid:27446172
  17. 17. Yao G, Ming M, Allan AC, Gu C, Li L, Wu X, Wang R, Chang Y, Qi K, Zhang S, Wu J. Map-based cloning of the pear gene MYB114 identifies an interaction with other transcription factors to coordinately regulate fruit anthocyanin biosynthesis. Plant J, 2017;92(3): 437–451. pmid:28845529
  18. 18. Yang SL, Zhang XN, Lu GL, Wang CR, Wang R. Regulation of gibberellin on gene expressions related with the lignin biosynthesis in ‘Wangkumbae’ pear (Pyrus pyrifolia Nakai) fruit. Plant Growth Regul, 2015;76(2): 127–134.
  19. 19. Cao Y, Han Y, Li D, Lin Y, Cai Y. MYB transcription factors in Chinese pear (Pyrus bretschneideri Rehd.): genome-wide identification, classification, and expression profiling during fruit development. Front Plant Sci, 2016;7: 577. pmid:27200050
  20. 20. Nham NT, Macnish AJ, Zakharov F, Mitcham EJ. ‘Bartlett’ pear fruit (Pyrus communis L.) ripening regulation by low temperatures involves genes associated with jasmonic acid, cold response, and transcription factors. Plant Sci, 2017;260: 8–18. pmid:28554478
  21. 21. Dai S, Li P, Chen P, Li Q, Pei Y, He S, Sun Y, Wang Y, Kai W, Zhao B, Liao Y, Leng P. Transcriptional regulation of genes encoding ABA metabolism enzymes during the fruit development and dehydration stress of pear 'Gold Nijisseiki'. Plant Physiol Bioch, 2014;82: 299–308.
  22. 22. Yang XP, Hu HJ, Yu DZ, Sun ZH, He XJ, Zhang JG, et al. Candidate resistant genes of sand pear (Pyrus pyrifolia Nakai) to Alternaria alternata revealed by transcriptome sequencing. PLoS ONE. 2015;10: e0135046. pmid:26292286
  23. 23. Shivhare R, Lata C. Seletion of suitable reference genes for assessing gene expression in pearl millet under different abiotic stresses and their combinations. Sci Rep. 2016;6: 23036. pmid:26972345
  24. 24. Campbell EM, Mclntosh CH, Bowman AS. A toolbox for quantitative gene expression in Varroa destructor: RNA degradation in field samples and systematic analysis of reference gene stability. PLoS ONE. 2016;11: e0155640. pmid:27182699
  25. 25. Liu Q, Wei C, Zhang MF, Jia GX. Evaluation of putative reference genes for quantitative real-time PCR normalization in Lilium regale during development and under stress. PeerJ. 2016;4: e1837. pmid:27019788
  26. 26. Liu Z, Ge XX, Wu XM, Kou SJ, Chai LJ, Guo WW. Selection and validation of suitable reference genes for mRNA qRT-PCR analysis using somatic embryogenic cultures, floral and vegetative tissues in citrus. Plant Cell Tiss Organ Cult. 2013;113: 496–481.
  27. 27. Wang YY, Zhao YQ, Li J, Liu HJ, Ernst CW, Liu XR, et al. Evaluation of housekeeping genes for normalizing real-time quantitative PCR assays in pig skeletal muscle at multiple development stages. Gene. 2015;565: 235–241. pmid:25865298
  28. 28. Qi XX, Wu J, Wang LF, Li LT, Cao YF, Tian LM, et al. Identifying the candidate genes involved in the calyx abscission process of ‘Kuerlexiangli’ (Pyrus sinkiangensis Yu) by digital transcript abundance measurements. BMC Genomics. 2013;14: 727. pmid:24152304
  29. 29. Wang YZ, Dai MS, Zhang SJ, Shi ZB. Exploring candidate genes for pericarp russet pigmentation of sand pear (Pyrus pyrifolia) via RNA-seq data in two genotypes contrasting for pericarp color. PLoS ONE. 2014;9: e83675. pmid:24400075
  30. 30. Chandna R, Augustine R, Bisht NC. Evaluation of candidate reference genes for gene expression normalization in Brassica juncea using real time quantitative RT-PCR. PLoS ONE. 2012;7:e36918. pmid:22606308
  31. 31. Vandesompele J, Preter KD, Pattyn F, Poppe B, Van Roy N, Paepe AD, et al. Accurate normalization of real-time quantitative RT-PCR data by geometric averaging of multiple internal control genes. Genome Biol. 2002;3: research0034.
  32. 32. Andersen CL, Jensen JL, Orntoft TF. Normalization of real-time quantitative reverse transcription-PCR data: a model-based variance estimation approach to identify genes suited for normalization, applied to bladder and colon cancer data sets. Cancer Res. 2004;64: 5245–5250. pmid:15289330
  33. 33. Leal MF, Arliani GG, Astur DC, Franciozi CE, Debieux P, Andreoli CV, et al. Comprehensive selection of reference genes for expression studies in meniscus injury using quantitative real-time PCR. Gene. 2016;584: 60–68. pmid:26968891
  34. 34. Pereira-Fantini PM, Rajapaka AE, Oakley R, Tingay DG. Selection of reference genes for gene expression studies related to lung injury in a preterm lamb model. Sci Rep. 2016;6: 26476. pmid:27210246
  35. 35. Sinha P, Saxena RK, Singh VK, Krishnamurthy L, Varshney RK. Selection and Validation of housekeeping genes as reference for gene expression studies in pigeonpea (Cajanus cajan) under heat and salt stress conditions. Front Plant Sci. 2015;6: 1071. pmid:27242803
  36. 36. Wu ZJ, Tian C, Jiang Q, Li XH, Zhuang J. Selection of suitable reference genes for qRT-PCR normalization during leaf development and hormonal stimuli in tea plant (Camellia sinensis). Sci Rep. 2015;6: 19748.
  37. 37. Wu T, Zhang RP, Gu C, Wu JY, Wan HJ, Zhang SJ, et al. Evaluation of candidate reference genes for real time quantitative PCR normalization in pear fruit. Afr J Agr Res. 2012;7: 3701–3704.
  38. 38. Imai T, Ubi BE, Saito T, Moriguchi T. Evaluation of reference genes for accurate normalization of gene expression for real time-quantitative PCR in Pyrus pyrifolia using different tissue samples and seasonal conditions. PLoS ONE. 2014; 9: e86492. pmid:24466117
  39. 39. Xu YY, Li H, Li XG, Lin J, Wang ZH, Yang QS, et al. Systematic selection and validation of appropriate reference genes for gene expression studies by quantitative real-time PCR in pear. Acta Physiol Plant. 2015;37: 40.
  40. 40. Chen JQ, Li XY, Wang DQ, Li LT, Zhou HS, Liu Z, et al. Identification and testing of reference genes for gene expression analysis in pollen of Pyrus bretschneideri. Sci Hort. 2015;190: 43–56.
  41. 41. Liu DF, Zhang D, Liu GQ, Hussain S, Teng YW. Influence of heat stress on leaf ultrastructure, photosynthetic performance, and ascorbate peroxidase gene expression of two pear cultivars (Pyrus pyrifolia). J Zhejiang Univ Sci B. 2013;14: 1070–1083. pmid:24302708
  42. 42. Wu J, Wang ZW, Shi ZB, Zhang S, Ming R, Zhu SL, et al. The genome of the pear (Pyrus bretschneideri Rehd.). Genome Res. 2013;23: 396–408. pmid:23149293
  43. 43. Chagne D, Crowhurst RN, Pindo M, Thrimawithana A, Deng C, Ireland H, et al. The draft genome sequence of European pear (Pyrus communis L. ‘Bartlett’). PLoS ONE. 2014;9:e92644. pmid:24699266
  44. 44. Taylor CM, Jost R, Erskine W, Nelson MN. Identifying stable reference genes for qRT-PCR normalisation in gene expression studies of Narrow-leafed lupin (Lupinus angustifolius L.). PLoS ONE, 2016;11: e0148300. pmid:26872362
  45. 45. Petriccione M, Mastrobuoni F, Zampella L, Scortichini M. Reference gene selection for normalization of RT-qPCR gene expression data from Actinidia deliciosa leaves infected with Pseudomonas syringae pv. Actinidiae. Sci Rep. 2015;5: 16961. pmid:26581656
  46. 46. Spiegelaere WD, Dern-Wieloch J, Weigel R, Schumacher V, Schorle H, Nettersheim D, et al. Reference gene validation for RT-qPCR, a note on different available software packages. PLoS ONE. 2015;10: e0122515. pmid:25825906
  47. 47. Zhang QL, Zhu QH, Liao X, Wang XQ, Chen T, Xu HT, et al. Selection of reliable reference genes for normalization of quantitative RT-PCR from different developmental stages and tissues in amphioxus. Sci Rep. 2016;6: 37549. pmid:27869224
  48. 48. Kou SJ, Wu XM, Liu Z, Liu YL, Xu Q, Guo WW. Selection and validation of suitable reference genes for miRNA expression normlization by quantitative RT-PCR in citrus somatic embryogenic and adult tissues. Plant Cell Rep. 2012;31:2151–2163. pmid:22865195
  49. 49. Zhong HY, Chen JW, Li CQ, Chen L, Wu JY, Chen JY, et al. Selection of reliable reference genes for expression studies by reverse transcription quantitative real-time PCR in litchi under different experimental conditions. Plant Cell Rep. 2011;30: 641–653. pmid:21301853
  50. 50. Shahriari M, Keshavaiah C, Scheuring D, Sabovljevic A, Pimpl P, Hausler RE, et al. The AAA-type ATPase AtSKD1 contributes to vacuolar maintenance of Arabidopsis thaliana. Plant J. 2010;64: 71–85. pmid:20663085
  51. 51. Buono RA, Paez-Valencia J, Miller ND, Goodman K, Spitzer C, Spalding EP, et al. Role of SKD1 regulators LIP5 and IST1-LIKE1 in endosomal sorting and plant development. Plant Physiol. 2016;171: 251–264. pmid:26983994
  52. 52. Mallona I, Lischewski S, Weiss J, Hause B, Egea-Cortines M. Validation of reference genes for quantitative real-time PCR during leaf and flower development in Petunia hybrida. BMC Plant Biol. 2010;10: 4. pmid:20056000
  53. 53. Hossain MA, Bhattacharjee S, Armin SM, Qian PP, Xin W, Li HY, et al. Hydrogen peroxide priming modulates abiotic oxidative stress tolerance: insights from ROS detoxification and scavenging. Front Plant Sci. 2015;6: 420. pmid:26136756
  54. 54. Zimmermann P, Zentgraf U. The correlation between oxidative stress and leaf senescence during plant development. Cell Mol Biol Lett. 2005;10: 515–534. pmid:16217560