BioMed Research International

BioMed Research International / 2010 / Article

Research Article | Open Access

Volume 2010 |Article ID 491217 | 30 pages | https://doi.org/10.1155/2010/491217

Microarray Detection Call Methodology as a Means to Identify and Compare Transcripts Expressed within Syncytial Cells from Soybean (Glycine max) Roots Undergoing Resistant and Susceptible Reactions to the Soybean Cyst Nematode (Heterodera glycines)

Academic Editor: Tanya Parish
Received23 Apr 2009
Revised23 Sep 2009
Accepted14 Feb 2010
Published19 May 2010

Abstract

Background. A comparative microarray investigation was done using detection call methodology (DCM) and differential expression analyses. The goal was to identify genes found in specific cell populations that were eliminated by differential expression analysis due to the nature of differential expression methods. Laser capture microdissection (LCM) was used to isolate nearly homogeneous populations of plant root cells. Results. The analyses identified the presence of 13,291 transcripts between the 4 different sample types. The transcripts filtered down into a total of 6,267 that were detected as being present in one or more sample types. A comparative analysis of DCM and differential expression methods showed a group of genes that were not differentially expressed, but were expressed at detectable amounts within specific cell types. Conclusion. The DCM has identified patterns of gene expression not shown by differential expression analyses. DCM has identified genes that are possibly cell-type specific and/or involved in important aspects of plant nematode interactions during the resistance response, revealing the uniqueness of a particular cell population at a particular point during its differentiation process.

1. Introduction

Microarray analyses are a way to study the expression of thousands of genes simultaneously. Microarray analyses are important because they can provide information on genes that are expressed differentially between a control and an experimental sample [1]. However, part of the problem of differential expression methodology is that genes must be expressed in both sample types, the experimental and control samples, for statistical analyses to be possible. Without gene expression data available for a probe set in each sample, the probe set will be discarded by the analysis procedure. The drawback of the differential expression methodology, therefore, is obvious when specific cell types with vastly different identities are being compared [2].

Microarray analyses, however, do provide useful information on the transcripts that are present or absent within samples [3]. Detection call methodology (DCM) reveals the types of transcripts that are present or absent within samples. The DCM is typically used on a single array to answer whether a transcript of a particular gene is present or absent in a sample. Several recent papers have used DCM successfully to understand transcription in various experimental systems [46]. The DCM is useful when cost is an issue because the method can be performed on a single array. More importantly, DCM can be used to compare transcripts between different cell types or of the same cell type at different points during a time course [2, 3, 7]. None of these examples compared detection calls during a pathological infection. Nonetheless, DCM can provide extremely useful information about the samples under investigation, especially in the analysis of plant pathological systems where a pathogen interacts intimately with a specific cell population within a complex tissue or organ (e.g., root).

The infection of plants by parasitic nematodes is a major agricultural problem that is currently poorly understood (reviewed in [812]). Infection results in damage totaling 157 billion U.S. dollars, annually [13]. Among the most costly is Heterodera glycines infection of Glycine max, accounting for an estimated $460 to $818 million in production losses annually in the U.S. [14]. The G. max-H. glycines system is a powerful research tool because both resistant and susceptible reactions can be studied in the same genotype (e.g., G. ). Information learned through its genetic and genomic studies can be translated directly to improve resistance in one of the most important global agriculturally relevant plants.

The genetic basis of G. max to overcome H. glycines infection (an incompatible reaction resulting in resistance) is complex (reviewed in [15]). Several recessive resistance loci (rhg1, rhg2, and rhg3) [16] and dominant resistance loci (Rhg4) [17] and (Rhg5) [18] have been identified (reviewed in [15]). The understanding of resistance to H. glycines has also been aided by other genetic marker technology (e.g., quantitative trait loci (QTL) mapping). Those studies have identified QTLs that map to 17 linkage groups. G. has nine QTLs that map to different linkage groups (reviewed in [15]). One of those QTLs present in G. that maps to linkage group G explains more than 50% of resistance to H. glycines [19]. It also is responsible for resistance to several different populations of H. glycines. The major QTL that is located on linkage group G was identified using the RFLP marker C006V and is designated as rhg1 [20]. Further studies have shown that molecular marker Satt309 is only 0.4 centiMorgans from rhg1 [21]. Importantly, much of the resistance that has been bred into elite G. max varieties originates from the G. genotype.

Genomic approaches have also identified transcriptional changes in whole roots during infection [2226]. Importantly, a time course microarray analysis was used to investigate the G. max-H. glycines interaction [23]. The analysis demonstrated that differential expression of genes was occurring in G. max roots undergoing a compatible reaction, a reaction that results in susceptibility. The analysis used time points both prior to and after feeding site selection [23]. Importantly, the differential expression of genes was occurring in G. max roots even before the nematodes had selected their feeding sites [23]. Thus, the plant is reacting in important ways to the presence of the nematode before the nematodes have begun to initiate the formation of their feeding sites during a compatible reaction.

The G. max-H. glycines interaction is an exceptional model because it is possible to compare gene expression occurring during incompatible (resistant) and compatible reactions. The experiments are possible because even resistant genotypes like G. undergo infection [12, 2533]. The comparisons can be made because well-defined incompatible and compatible H. glycines races (populations) are available [12, 25, 26, 3135]. A time course microarray analysis has examined H. glycines infection during both an incompatible and a compatible reaction in whole roots at time points both prior to and after nematodes have established feeding sites [25]. Importantly, those microarray analyses were performed in the same G. max genotype (e.g. G. ) by using incompatible and compatible populations of H. glycines [25, 26]. Thus, no possibility existed for G. max genotype differences complicating the identification of important gene expression events during those reactions. The analyses have shown that G. max behaves differently as it undergoes the incompatible or compatible reaction and these differences in gene expression are detectable as early as 12 hours post infection (hpi) [25]. The 12 hpi time point is a point before the nematode has selected its feeding site. The analyses also showed how expression of G. genes differs over time between roots undergoing an incompatible or compatible reactions.

The aforementioned investigations were not designed to study gene expression of the syncytium. However, several labs have made histological studies of the infection process. The studies showed that H. glycines infest the roots and migrate through the cortex during the early stages of the infestation process. After 24 hpi the nematodes reach the stele where they select and establish their feeding sites [2730, 36]. Consequently, the feeding site initial ( ), a cell that is usually a pericycle cell, fuses with neighboring cells. The process occurs when the cell walls dissolve and the cytoplasm of adjacent cells (e.g., cortex) merges with the feeding site initial. Cell fusion, thus, results in the formation of a syncytium. Syncytial cells continue to develop in compatible roots into sites from which H. glycines feed (Figure 1) [2730]. Conversely, syncytial cells of incompatible roots collapse four to five days post infection (dpi) and the nematodes die [27, 28, 30].

Understanding the localized resistance reaction at the site of infection may also lead to better measures to control H. glycines parasitism. The problem, however, has been in isolating these cells to some amount of homogeneity for expression analysis. Hand dissections have been performed to obtain giant cells from galls induced by the root knot nematode (Meloidogyne incognita) during a compatible interaction in tomato (Lycopersicon esculentum) [37]. The experiments permitted the isolation of cDNA from those cells [37]. However, relatively few of them turned out to be gall specific [38]. The experiments, nonetheless, demonstrated the efficacy of the approach in isolating RNA from those cell types. Unfortunately, it is not possible to use this method to study syncytium formation during H. glycines infection.

Laser capture microdissection (LCM) is an alternative means that affords a high degree of precision and accuracy to isolate homogeneous cell populations that are otherwise recalcitrant to their isolation [3942]. The method has proven to be especially valuable to study the development of the syncytium during G. max infection by H. glycines during a compatible and incompatible reaction [26, 33, 43, 44] because H. glycines can be used as an in situ physical marker for the syncytium. Microarray analysis studying gene expression of the syncytium has allowed for the identification of genes that exhibit differential expression in these cell types [26, 33]. However, it was unclear whether the true diversity of gene expression was being revealed by the differential expression methodology.

In the analysis presented here, DCM was used to compare detection calls made between the different cell types involved in the formation of the syncytium using samples isolated by LCM. The DCM was used to compare how the cell types under investigation (e.g., the syncytium) differed from the cell type(s) from which they originated (e.g., pericycle). Using a comparative analysis aided by customized computer scripts, a broader understanding was obtained of the differences between (1) syncytia and pericycle cells, (2) syncytia undergoing incompatible and compatible reactions, and (3) syncytia at different points of their development during a compatible reaction as they mature into a functional feeding site.

2. Materials and Methods

2.1. Female Index

The H. population used in the analyses presented here has been used extensively as race 3 for analyses requiring susceptible reactions in G. max genotype Kent (G. ) [22, 23, 3133, 43, 45] and resistant reactions in G. [25, 26, 31, 33, 46]. For a description of the 16 nematode races and the HG-type test, please refer to Niblack et al. [35]. The HG-type test is derived from the original Index of Parasitism test [47]. The determination of the HG-type is based on the performance of the nematode race to infect indicator lines. The indicator lines are G. max genotypes (including G. ) having varying ability to resist infection by the 16 known races of H. glycines. Based on the accepted variation of infection by H. glycines on the different indicator lines, an HG-type is given to an unknown sample. The numerous G. max genotypes are named by an accepted plant introduction (PI) classification scheme. The indicator lines now used in the HG-type test are G. , G. , G. , G. , G. (G. ), G. , G. (G. ), G. , and G. . Of note, G. was added to the HG-type test to allow a more accurate test because it was classified as being resistant to five H. glycines races (1, 2, 3, 5, and 14) in the greenhouse [48]. The HG-type test is based off of the presence of an expected number of females, given as a proportion, which will develop on each indicator line. The number is called the female index (FI). The FI is the number of mature females that develop on a test genotype divided by the number of females that develop on a known susceptible genotype (i.e., G. and/or G. ) multiplied by 100. According to the original Index of Parasitism [47] any genotype with a female number less than 10% of the number determined on G. would be considered resistant ( ) and any number above 10% would be susceptible (+). The HG-type test as determined by Niblack et al. [35] has changed the Index of Parasitism test [47] and improved race test [34] to include several other categories. Now, the FI categories for the HG-type test are Highly Resistant, FI: 0%–9%; Resistant, FI: 10%–24%; Moderately Resistant, FI: 25%–39%; Low Resistance, FI: 40%–59%; and No Effective Resistance, FI: 60%. The HG-type test for H. was determined independently in the lab of Dr. Terry Niblack (Department of Crop Sciences, University of Illinois) [11, 25] during June-July, 2007 using the published methods of Niblack et al. [35]. The performance of H. on those indicator lines was compared to the susceptible genotypes G. and G. . An FI of 0 (0%) was found for H. on G. . Thus, the HG-type test determined that G. is considered highly resistant to H. . Based on the infectivity of H. on the indicator lines, the HG-type test also determined that H. is race 3, as previously published [22, 23, 31, 43, 45, 49]. H. (incompatible) is HG-type 7 (H. ). The reaction of H. (HG-type 1.3.6.7 [race 14]) (H. ) (compatible) on G. is a susceptible reaction [50].

2.1.1. Plant and Nematode Procurement

The methods have been published previously [26, 33]. Briefly, plant and nematode materials were grown at the United States Department of Agriculture, Soybean Genomics and Improvement Laboratory (SGIL). A single G. max genotype (G. ) was used in the experiments to obtain both incompatible and compatible reactions by the use of two different populations of H. glycines, H. and H. . The H. glycines populations were maintained in the greenhouse using the moisture replacement system (MRS) [51].

The origin of H. was by selection of a single-cyst descent on G. [50]. Originally, H. was maintained on the G. genotype according to Niblack et al. [50]. The H. -infected G. max plants were maintained in sterilized field sand medium in 1liter containers. The containers were suspended in a 27 C water bath. Fertilization of G. max was done with Peter's soluble 20-20-20 nutrients (The Scotts Company; Marysville, OH). Transfer of H. to a new host was performed routinely on a 30–40 day basis. The H. population is maintained at SGIL on the susceptible G. . The H. population has been maintained on G. at SGIL. The H. population has been used extensively for analyses requiring susceptible reactions in G. [22, 23, 43] and resistant reactions in G. [25, 26, 31, 33, 46]. Thus, in side-by-side experiments, H. and H. have always been exposed to the same G. max genotypes. The method virtually eliminated variations among the different G. max genotypes in influencing the experiments.

Seedlings were grown in sterilized sand in  cm flats for a period of one week. The plants were gently removed from the sand and rinsed with sterile water. Seedlings were placed on moistened germination paper (Anchor Paper; St. Paul, MN) inside the flats. Mature female nematodes were harvested by massaging the roots in water. Mature nematodes were collected by filtering the solution through nested 850 and 150  m sieves. Females were further purified by sucrose flotation [45]. The females were crushed gently with a rubber stopper within a 7.5 cm diameter apparatus containing 250  m sieves. The process released the eggs. The eggs passed through the sieve into a small plastic tray. Debris smaller than the eggs was removed. Debris removal was done by washing the debris in a 25  m mesh sieve. The eggs were placed in a small plastic tray containing 1 cm of water. The tray was covered with plastic wrap and subsequently placed on a rotary shaker at 25 rpm. After 3 days, the second-stage juvenile nematodes (J2s) were separated from the unhatched eggs. Separation was done by passing them through a 41  m mesh cloth. The J2s were concentrated by centrifugation in an IEC clinical centrifuge for 30 seconds at 1720 rpm to 5,000 J2/mL. The nematodes were used to infest the roots. There were 2 mL of nematode-containing solution added directly on the roots for a final concentration of 2,000 J2/root. The control mock-infested replicates received the same amount of water. The roots were covered with a moistened sheet of germination paper. The plants were placed in a  cm plastic tray with a one cm of water in the bottom to add humidity. A semitransparent bag was then wrapped around the tray. The trays were then placed under fluorescent lights of 16/8 hour light/dark photoperiod. Light intensities were identical for all experiments. Infested roots were grown for three or 8 dpi. The mock-infested control samples and susceptible and resistant reactions were washed. The process removed the extraneous nematodes that had not yet penetrated the root, preventing additional nematodes from entering the root. The process ensured that tissue that was the most highly infested with nematodes was obtained. The process was then repeated, providing two independent sets of samples. Seven independent replicates were pooled to obtain each replicate for each sample type in the analysis. Thus, there are a total of 14 replicates used in the analysis. At least 50 serially sectioned syncytia were used for each of the 7 replicates. Materials for histological observation to confirm incompatible and compatible reactions were derived from these samples (see below).

2.1.2. Histology

Histological tissue processing was according to Klink et al. [26, 33, 43]. Briefly, tissue was fixed in Farmer’s solution (FS) composed of 75% ethanol and 25% acetic acid v/v [43, 52]. Some replicate samples of roots used for immunohistochemical analyses were killed and fixed in 3.7% w/v paraformaldehyde (PFA) buffered with PEMP buffer (100  M Pipes, 1  M EGTA, 1  M MgCl2, and 4% w/v polyethylene glycol MW 8000, pH 6.8) [43, 53]. G. max root tissue was harvested and cut into 0.5 cm pieces. Those pieces were vacuum infiltrated with either FS or PFA at room temperature for one hour (h). Fresh fixative (FS or PFA) was then added to their respective samples. Tissue was subjected to an incubation step of 12 hours at 4 C. PFA fixed tissue was then dehydrated through 10% (v/v), 25% (v/v), 50% (v/v), 75% (v/v) ethanol : water. The remaining procedure was done identically as for FS processed tissue. Fixative was removed from the roots. Dehydration of FS-fixed tissue proceeded through a graded series of 75% (v/v), 85% (v/v), 100% (v/v), 100% (v/v) ethanol : water, 30 minutes each. Ethanol was replaced with 1 : 1 (v/v) xylene : ethanol for 30 minutes. Subsequently, three, 100% xylene incubations (30 minutes each) were done. Xylene was replaced by paraffin. The processing was done slowly by placing the specimens into a 58 C oven. The roots were infiltrated sequentially in 3 : 1 (v/v), 1 : 1 (v/v), 1 :  3 (v/v) xylene : Paraplast+ tissue embedding medium (Tyco Healthcare Group LP; Mansfield, MA) in each step for three hours. Tissue was cast and subsequently mounted for sectioning. Serial sections of roots were made on an American Optical 820 microtome (American Optical Co.; Buffalo, NY) at a section thickness of 10  m. Sections were stained in Safranin O (Fischer Scientific) in 50% (v/v) ETOH : water and counter-stained in Fast Green FCF (Fisher Scientific). The tissue was permanently mounted in Permount (Fisher Scientific).

2.2. LCM

Slides were prepared according to Klink et al. [26]. MembraneSlides (Leica, Germany; Cat# 11505158) were placed on a slide warmer set at 40 C. DEPC-treated RNAse-free water ( 0.5–1 mL) was placed onto the slide and allowed to warm. The tissues used for these analyses were obtained from the same tissue used in whole-root microarray experiments [26]. Serial sections (10  m) from control mock-inoculated roots and roots undergoing incompatible (3 dpi) and compatible (3 and 8 dpi) reactions were prepared according to Klink et al. [26, 33, 43]. Serial sections for the independent sample types were placed directly onto the pool of DEPC-treated water. DEPC-treated water was blotted off with a sterile KimWipe after the serial sections were adequately spread. Tissue was allowed to warm on the slide warmer for an additional hour to promote tissue binding to the slide surface. Slides were deparaffinized for five minutes in xylene. The processing was followed by a two-minute incubation in 1 : 1 (v/v) xylene : ETOH. That was followed subsequently with two one-minute incubations in ETOH. Slides were then dried on the lab bench on filter paper covered with KimWipes. The slides were used immediately for LCM after the drying step was done. LCM was performed on a Leica ASLMD microscope (Leica). Microdissection cutting parameters were determined empirically for each session by examining how amenable the tissue was to LCM. However, cutting parameters for dissections performed on the 40 objective were approximately power, 55–85; speed, 2–4; specimen balance, 1–3; and offset, 40. Similar quantities of cells were obtained for each sample type for the analyses.

Tissue was collected in OptiCaps (Leica Cat. number 11505169) and subsequently washed to the bottom of the OptiCap PCR tube. The process was done by micropipetting 20  L of XB buffer (Arcturus) onto the microdissected tissue. The cap was spun for five minutes at 500 rpm to pellet the tissue into the bottom of the Opticap. LCM tissue was ground with a micropestle. The process was done in 40  L RNA extraction buffer (Arcturus). The RNA was extracted and subsequently processed using the PicoPure RNA Isolation Kit (Arcturus). The process was done according to the manufacturer’s instructions. A DNAse treatment was added, just before the second column wash, using DNAfree (Ambion; Austin, TX). RNA quality and yield were determined. The processing was done using the RNA 6000 Pico Assay (Agilent Technologies; Palo Alto, CA) using the Agilent 2100 Bioanalyzer according to the manufacturer’s instructions. RNA amplification of LCM samples was performed with the GeneChip Two-Cycle cDNA Synthesis Kit (Affymetrix; Santa Clara, CA: Cat. number 900432). Probe preparation and hybridizations were performed according to Affymetrix guidelines at the Laboratory of Molecular Technology, SAIC-Frederick, Inc., National Cancer Institute at Frederick, Frederick, MD 21701, USA.

2.3. Microarray Analyses and G. max Probe Set Annotations

The GeneChip Soybean Genome Array (Affymetrix; Cat. number 900526) containing 37,744 G. max transcripts (35,611 transcripts) was used for the microarray analyses. Details of the GeneChip soybean genome array can be obtained (http://www.affymetrix.com/index.affx). Annotations were made by comparison to the Arabidopsis thaliana gene ontology (GO) database [54] based on their best match obtained by BLAST searches [55]. They were updated (2009).

All microarray hybridizations were performed at the Laboratory of Molecular Technology, SAIC-Frederick, National Cancer Institute at Frederick, Frederick, MD 21701, USA. Local normalization was used. The presence or absence of a particular probe set’s (gene’s) transcript on a single array was determined using the Bioconductor implementation of the standard Affymetrix DCM. In summary, the DCM consists of four steps: (1) removal of saturated probes, (2) calculation of discrimination scores, (3) -value calculation using the Wilcoxon’s rank test, and (4) making the detection (present/marginal/absent). Ultimately, the algorithm determines if the presence of a probe set’s transcript is provably different from zero (present (P)), uncertain (marginal (M)), or not provably different from zero (absent (A)). Details of the standard Affymetrix DCM can be found in their Statistical Algorithms Description Document (http://www.affymetrix.com/support/technical/whitepapers/sadd_whitepaper.pdf.). For a particular condition (e.g., 3 dpi syncytia during the incompatible response), a probe set was considered present only if it was present on both replicate microarrays corresponding to that condition. Otherwise, it was considered to be absent. All original data sets, the normalized data sets, statistics, and data supplemental to each table and figure are available at the MAIME compliant [http://bioinformatics.towson.edu/SGMD3] [56].

3. Results

3.1. Histological Analysis of Incompatible and Compatible Responses in the Whole Root

Morphological and anatomical details of compatible and incompatible disease responses by G. max to H. glycines infection have been published previously [2729, 36, 5761]. Infection during the first 8 dpi (Figure 2) was focused on for this analysis because syncytial cells complete the incompatible reaction by 8 dpi under the experimental conditions in G. . During a compatible reaction, nematodes have selected and are establishing feeding sites by 3 dpi (Figure 2(a)) that are continuing to develop by 8 dpi (Figure 2(b)). During an incompatible reaction, nematodes have also selected and are establishing feeding sites at 3 dpi (Figure 2(c)). However, during an incompatible reaction, syncytial cells collapse by 8 dpi (Figure 2(d)). Syncytial cells (Figure 3(a)) for the various analyses were collected by LCM (Figure 3(b)).

3.2. The Use of Detection Calls to Identify Genes Present in Syncytium Samples

The DCM was used to make a comparative analysis of the probe sets measuring the presence of a transcript (present transcript) within LCM-derived cell samples. The analyses would allow (1) the determination of the total number of present transcripts, (2) the determination of the numbers of present transcripts within a sample, and (3) a comparison of the present transcripts between the different sample types while estimating the differences between those samples (4) the identification of whether transcripts that are common between the two sample types under comparison had been identified in a prior differential expression analysis [26]. Only probe sets that measured detection on both arrays for a particular sample type (Figure 4) were evaluated further (see below).

While detection calls are generally used for single array analyses, the DCM presented here used two arrays for each sample type in a comparison. Thus, for a particular comparison between cell types, four arrays were taken into consideration. Detection calls were analyzed for each of the two arrays for each sample type (e.g., pericycle). Detection calls were made for each of the two arrays independently to determine if the probe sets were consistently measuring present or absent for a particular sample type. For example, the probe set had to obtain a like measurement (e.g., present/present; absent/absent) for each of the two arrays for each sample type to be considered for subsequent analyses (Figure 4). The arrays that measured present on both arrays within a sample type are considered present. The arrays that measured absent on both arrays within a sample type are considered absent (Figure 4). The probe sets that failed to produce like measurements (e.g., any combination of present/absent; present/marginal for the two arrays) and those that measured marginal amounts of a transcript for a particular probe set on each of the two arrays (e.g., marginal/marginal) were excluded from the analysis (Figure 4). The resulting probe sets used in the subsequent analyses were measuring present/present detection calls for each of the two arrays for a particular sample type (e.g., 3 dpi incompatible syncytia).

Comparisons were made between the different sample types (e.g., 3 dpi incompatible syncytia versus pericycle). In those comparisons, four arrays would be compared (Figure 5). Probe sets that measured detectable amounts of a transcript on the four arrays under comparison were considered common and present between two sample types (e.g., pericycle and 3 dpi incompatible syncytia-common). The probe sets measuring absent on the four arrays (common and absent), although potentially interesting, were not taken into consideration in this analysis. The samples whose probe sets measured present for both arrays but only in one of the two sample types would be considered present and unique for a particular sample type (e.g., pericycle-unique or 3 dpi incompatible syncytia-unique) (Figure 5). Probe sets that measure detectable amounts of gene activity in both sample types can either be differentially expressed or not differentially expressed (Figure 6). The differential expression calls used in some of the comparative analyses had been presented previously [26]. The DCM analysis presented here is employed as a different way of examining the data with the goal of identifying genes at low thresholds of expression that are missed in differential expression analyses. More importantly, DCM is also a way of identifying genes that may be expressed at high thresholds in one sample type and are undetectable in a second sample type used for comparative purposes in a differential expression analysis. In cases like these, statistical analyses cannot be done because no expression data is available for the second sample type and thus the probe set is excluded from the differential expression analysis. Therefore, probe sets that measured detectable amounts of a transcript uniquely in one sample type (e.g., unique-present) (Figure 5) cannot measure differential expression (Figure 6). An example of genes identified in a comparative analysis of two hypothetical gene pools (Figure 7) illustrates the different gene categories investigated in the analysis (Figure 8). As illustrated, all genes that are identified as differentially expressed had to be present in each gene pool (Figure 7). It became clear from the analysis that many genes that were unique to a specific sample type (e.g., A or B) were being excluded from the differential expression analysis because the probe sets measured detectable levels of gene activity only in one of the two sample types (Figure 7). The probe sets that match this criterion, A or B and not A U B, became the focus of the analysis (Figure 8).

3.3. The DCM Identifies Many Genes Expressed in the Experimental Cell Types

The DCM identified a total of 13,291 transcripts as being present between the pericycle, 3 dpi incompatible syncytium, 3 dpi compatible syncytium, and the 8 dpi compatible syncytium samples. Direct comparisons were made between each of the sample types. The analyses focused on two types of transcripts that were determined to be present. The transcript types are (1) unique and (2) common. Unique transcripts were defined as those that were present and found in only one of the two sample types being compared. Common transcripts were defined as those that were present and overlap between the two sample types being compared. Data from five of the comparisons (Figures 8(a), 8(c), 8(e), 8(g), 8(i)) are presented as Venn diagrams. The annotated probe sets were divided into seven subcategories (histograms) per functional category (Figures 8(b), 8(d), 8(f), 8(h), 8(j) (A–R—see figure legends)), based on the particular comparison being made (see below). The comparison in Figure 8(g), presented as a Venn diagram, was divided into eight subcategories (histograms) per functional category (see below).

3.4. 3 dpi Syncytia Undergoing an Incompatible Reaction

The DCM was used to compare present transcripts (genes) within the 3 dpi microdissected syncytia undergoing an incompatible reaction to the pericycle sample (Figures 8(a) and 8(b)). A total of 3,908 genes were present in these two samples. The DCM identified 1,966 genes that were present and unique to the pericycle sample (Figures 8(a)(see Table in Supplementary Material available online at 10.1155/2010/491217)). Further analysis identified 1,002 genes that were present and common between the pericycle and 3 dpi incompatible syncytium sample (Figure 8(a) (supplementary Table )). Only the genes that are present and common can be used for differential expression analyses because expression data was available for each sample type. An analysis identified 940 genes present and unique to the 3 dpi incompatible syncytium sample (Figure 8(a) (supplementary Table )). Therefore, in the analysis presented here, a total of 1,942 genes within 3 dpi incompatible syncytial cell samples were present. Customized computer scripts were written to make seven comparisons of those genes. Some of these comparisons were made to genes identified previously as being differentially expressed between the two cell types under investigation [26]. A histogram of the functional categorizations of the 940 genes present and unique to the 3 dpi incompatible syncytium sample is presented (Figure 8(b)). Selected gene lists comprising the (1) Disease and Defense, (2) Signaling, and (3) Transcription categories are provided (Table 1 (supplementary Table )).


I-3 dpi

Probe set IDPublic IDAvg 𝑃 -valueGene

Disease & defense

Gma.4886.2.S1_atAW2346240.005201937haem peroxidase
GmaAffx.69994.1.S1_atCD4170250.017952293phosphate-responsive protein (phi-1)
Gma.8449.1.S1_s_atAF002258.10.019563038CoA ligase 4
GmaAffx.14986.1.S1_atBE6578890.020669698phosphate-responsive protein (phi-1)
GmaAffx.93611.1.S1_s_atCF8093360.034312943disease resistance response protein (DRRG49-C)

Signal transduction

Gma.1965.1.S1_x_atL01432.10.005201937calmodulin (SCaM-3)
GmaAffx.50980.1.S1_x_atBE8230950.006003594protein phosphatase 2C (PP2C)
Gma.11041.1.S1_atBI9705550.006660588Pti1-like kinase-like
GmaAffx.33721.1.S1_atBI9671950.006660588protein kinase
Gma.6290.1.S1_atAW3112650.007290178BOTRYTIS-INDUCED KINASE1 (BIK1)
Gma.13604.1.S1_atCD4015370.011411572protein kinase-like
Gma.9902.1.A1_atAW3953280.011756578FUSCA 5 MAP kinase kinase (FUS5)
GmaAffx.56323.1.S1_atBU7642140.01212639protein kinase
Gma.5162.1.A1_atBI9711560.013412317Curculin-like (mannose-binding) protein kinase
Gma.4455.3.S1_atCB0636320.014076915PROTEIN KINASE 2B (APK2B)
GmaAffx.21787.1.A1_atAW3485550.015096504leucine-rich repeat transmembrane protein kinase (CLAVATA1)
GmaAffx.66511.1.S1_atAW3509170.019563038calcium and calmodulin-dependent protein kinase (ATCDPK1)
GmaAffx.34312.1.S1_atAI9657350.023684433protein phosphatase 2C (PP2C)
GmaAffx.64402.1.S1_atAW3172820.025399823leucine-rich repeat
Gma.4801.1.S1_s_atBU5486080.028086024protein phosphatase 1 (PP1)
Gma.11291.1.S1_atAW3512070.028086024inositol 1,3,4-trisphosphate 5/6-kinase
GmaAffx.73451.1.S1_atBG0468890.034312943CALMODULIN-RELATED PROTEIN 2

Transcription

Gma.7212.1.S1_atBE6581020.005553929SUPPRESSOR OF FRIGIDA4 (SUF4)
GmaAffx.67609.1.S1_atBG5510130.009290923SAR DNA-binding protein-1
Gma.4165.1.S1_atBI9691430.015813164homeodomain-related
Gma.4164.1.S1_atBI9686660.016772715MYB transcription factor (MYB112)
GmaAffx.1165.1.S1_atBI4255420.01738237jasmonate-responsive promoter element
Gma.15724.2.S1_atAW3502910.018668953CCR4 associated factor 1-related protein
Gma.1772.1.S1_atCD4060360.020753499transcription factor IIA (TFIIA)
GmaAffx.52970.1.S1_atBU5483300.021323422zinc finger (DHHC type) family protein
Gma.4560.1.S1_atCD3935580.022830045TINY-like
Gma.12330.2.S1_s_atBI9727580.027055562pathogenesis-related transcriptional factor
Gma.6838.1.S1_atAW3496330.027055562NIM1-like protein 1 (NPR-1)
Gma.13614.1.A1_atCD4020000.034312943zinc finger protein

3.5. 3 dpi Syncytia Undergoing a Compatible Reaction

The DCM was used to compare genes within the 3 dpi microdissected syncytia undergoing a compatible reaction to the pericycle sample (Figures 8(c) and 8(d)). A total of 4,925 genes were present in these two samples. From these analyses, 711 genes were identified that were present and unique to the pericycle sample (Figure 8(c) (supplementary Table )). Further analysis identified 2,257 genes that were present and common between the pericycle and 3 dpi compatible syncytium sample (Figure 8(c) (supplementary Table )). Only these genes could be used for differential expression analyses because expression data was available for each sample type. The detection call analysis identified 1,957 genes present and unique to the 3 dpi compatible syncytium sample (Figure 8 (supplementary Table )). Therefore, in the analysis presented here, a total of 4,214 genes were present within 3 dpi compatible syncytial cell samples. A histogram of the functional categorizations of the 1957 genes present and unique to the 3 dpi compatible syncytium sample described in this section is presented (Figure 8(d)). Selected gene lists comprising the (1) Disease and Defense, (2) Signaling, and (3) Transcription categories are provided (Table 2 (supplementary Table )).


2 C-3 dpi

Probe set IDPublic IDAvg 𝑃 -valueGene

Disease & defense

Gma.3749.1.S1_atCD3924910.002923594heat shock protein 70 precursor
GmaAffx.90134.1.S1_s_atCF8058590.008396837purple acid phosphatase-like protein
GmaAffx.78614.1.S1_atBQ6119910.008396837Suppressor-of-White-APricot/surp domain-containing protein
Gma.13217.1.S1_atCD3911910.011756578wound-responsive protein-related
GmaAffx.11893.1.A1_atCD4141880.01212639regulator of chromatin condensation-1 (RCC1)
GmaAffx.91519.1.S1_s_atCF8072440.013412317double-stranded DNA-binding family protein
GmaAffx.29692.1.S1_atAW3483960.016772715chitinase (class II)
GmaAffx.71331.1.S1_atAW5971010.018428453galactosyltransferase family protein
Gma.6640.1.S1_atBQ6282780.022040082haem peroxidase
Gma.8022.1.S1_atBQ6289980.024040827epoxide hydrolase
GmaAffx.24201.1.S1_atBQ7409720.025685834Avr9 elicitor response like protein
Gma.9638.1.A1_atCA9364030.029056963ADR6

Signal transduction

Gma.3893.1.S1_atU44850.10.002298236Guanine nucleotide-binding protein subunit beta-like protein (ArcA)
Gma.3286.1.S1_atBQ2987470.003021268putative presenilin
GmaAffx.33721.1.S1_atBI9671950.003317825calcium/calmodulin-dependent protein kinase (CDPK)
Gma.17655.1.S1_atBE0572590.003317825protein phosphatase 2A (PP2A)
Gma.10697.2.S1_atAW4241510.003591192BRI1-associated receptor kinase 1
Gma.10649.1.S1_atBE6592560.004034485BRI1-associated receptor kinase 1
Gma.1965.1.S1_x_atL01432.10.00603523calmodulin (SCaM-3)
GmaAffx.52826.3.S1_atBF5965030.00846925protein phpsphatase 2C (PP2C)
Gma.7517.1.S1_atBU5482720.009290923U box-containing protein kinase
GmaAffx.50980.1.S1_s_atBE8230950.010694912protein phpsphatase 2C (PP2C)
GmaAffx.57055.1.S1_atAW2034110.015413718mitogen-activated protein kinase
Gma.16954.2.A1_atBE8229030.017813909phospholipase C
GmaAffx.85565.1.S1_atBE6110820.018428453calcium-dependent protein kinase 29 (CDPK)
Gma.7177.2.A1_a_atBI4253720.018428453MHK kinase
GmaAffx.35805.2.S1_atBF3241780.019563038MAP3K delta-1 protein kinase-like
Gma.9902.1.A1_atAW3953280.019678474FUSCA 5 MAP kinase kinase (FUS5)
Gma.2314.1.S1_atAW3103850.019678474FUS3-COMPLEMENTING GENE 1
GmaAffx.21787.1.A1_atAW3485550.020429855CLAVATA1 receptor kinase (CLV1)
GmaAffx.69025.1.S1_atBM2711950.020753499RIO kinase
GmaAffx.62926.1.S1_atBE8049490.020828644G-protein alpha subunit
Gma.11015.1.S1_atCD3981100.023684433leucine-rich repeat transmembrane protein
Gma.3185.2.S1_atBM8907150.023684433leucine-rich repeat transmembrane protein
GmaAffx.15664.1.S1_atBE6076420.024040827LRR receptor-like protein kinase
GmaAffx.77602.1.S1_atBQ6276220.025399823protein phosphatase-2c (PP2C)
Gma.5722.1.S1_atBU5462280.029056963Ste20-related protein kinase
Gma.8364.1.S1_atBE6592260.034312943putative protein kinase (PK12)

Transcription

Gma.4165.1.S1_atBI9691430.005201937homeodomain-related
Gma.4205.1.S1_atAF464906.10.005679433repressor protein
GmaAffx.50673.1.S1_atBF4257420.005679433No apical meristem (NAM) protein
GmaAffx.67609.1.S1_atBG5510130.007110254SAR DNA-binding protein-1
Gma.16172.1.S1_atCD4116270.009049965CONSTANS-like B-box zinc finger
GmaAffx.52855.1.S1_atAW3089230.010397582transcription initiation factor IIE (TFIIE)
Gma.3176.1.S1_a_atBU5491150.010649919transcription factor IIA (TFIIA)
Gma.2702.2.S1_atAI8555870.010649919no apical meristem (NAM)
Gma.8298.1.S1_atCD3926940.012696314trithorax 4-nuclear SET-domain containing protein
Gma.4116.2.S1_atBM1779350.014076915transcription initiation factor IIE, beta subunit (TFIiE beta)
GmaAffx.85579.1.S1_atBQ2733520.014307059lipoamide dehydrogenase
GmaAffx.81234.1.A1_atBE8237650.014307059TRF-LIKE 8 (TRFL8)
GmaAffx.66085.1.S1_atBQ6303990.015096504Basic Helix-Loop-Helix (bHLH)
Gma.13174.1.S1_s_atCD4146860.016772715indoleacetic acid-induced protein 1 (IAA13)
GmaAffx.71523.1.S1_atBU5440120.01738237phospatase 2A inhibitor (NAP1-RELATED PROTEIN 1 [NRP1])
GmaAffx.92212.1.A1_s_atCF8079370.018428453MYB transcription factor (MYB92)
Gma.7891.1.S1_atAW3106250.020753499Basic Helix-Loop-Helix (bHLH)
Gma.3632.1.A1_atBI3169500.020828644zinc finger protein
Gma.17664.1.S1_atAW3489170.020828644zinc finger (DHHC type) family protein
Gma.2243.2.S1_s_atBE8071620.022028694transcription initiation factor IIF beta (TFIIF beta)
Gma.1270.1.S1_atCD4051470.022830045LIM domain-containing, zinc-binding protein
Gma.752.1.A1_atAW4324630.022830045Helix-loop-helix DNA-binding
Gma.5274.1.S1_atBM1784260.025399823transcription factor EIL2
Gma.7776.1.A1_atCD3992600.025685834ATBRM/CHR2
GmaAffx.52970.1.S1_atBU5483300.027055562zinc finger (DHHC type) family protein
Gma.7212.1.S1_atBE6581020.027055562Zinc finger, BED-type predicted
GmaAffx.91768.1.S1_s_atCF8074930.031457154WRKY27
Gma.14100.1.S1_atCD4089880.034312943zinc finger, RING-type
GmaAffx.11131.1.A1_atCD3952930.037684072CCR4 associated factor 1-related protein
Gma.4281.1.S1_atAW1563480.037684072WRKY

3.6. 8 dpi Syncytia Undergoing a Compatible Reaction

The DCM was used to compare genes within the 8 dpi microdissected syncytia undergoing a compatible reaction to the pericycle sample (Figures 8(e) and 8(f)). A total of 4,823 genes were present in these two samples. From these analyses, 656 genes that were present and unique to the pericycle sample were identified (Figure 8(e) (supplementary Table )). Further analysis identified 2,312 genes that were present and common between the pericycle and 8 dpi compatible syncytium sample (Figure 8(e) (supplementary Table )). Only these genes could be used for differential expression analyses because expression data was available for each sample type. The detection call analysis identified 1,855 genes present and unique to the 8 dpi compatible syncytium sample (Figure 8(e) (supplementary Table )). Therefore, in the analysis presented here, a total of 4,167 genes within 8 dpi compatible syncytial cell samples were present. A histogram of the functional categorizations of the 4,167 genes present and unique to the 8 dpi compatible syncytium sample described in this section is presented (Figure 8(f)). Selected gene lists comprising the (1) Disease and Defense, (2) Signaling, and (3) Transcription categories are provided (Table 3 (supplementary Table )).


3 C-8 dpi

Probe set IDPublic IDAvg 𝑃 -valueGene

Disease & defense

GmaAffx.91273.1.S1_s_atCF8059640.002747901wound-induced protein
Gma.4305.1.S1_atAW3506870.00337326haem peroxidase
GmaAffx.90134.1.S1_s_atCF8058590.004659843purple acid phosphatase-like protein
Gma.8512.1.S1_atAF236108.10.014307059purple acid phosphatase-like protein
Gma.7301.1.S1_atBM5282500.019563038gamma-glutamyl transferase
GmaAffx.78614.1.S1_atBQ6119910.019678474Suppressor-of-White-APricot splicing regulator
GmaAffx.59573.1.S1_atAW3509860.019951841purple acid phosphatase-like protein
GmaAffx.91519.1.S1_s_atCF8072440.027055562double-stranded DNA-binding protein
Gma.11154.1.S1_a_atAW3099270.031457154putative elicitor-responsive gene-3
GmaAffx.83232.1.S1_atBE0231280.037684072MILDEW RESISTANCE LOCUS O 10 (MLO10)

Signal transduction

Gma.1965.1.S1_x_atL01432.10.001946244calmodulin (SCaM-3)
GmaAffx.90377.1.S1_s_atCF8061020.001946244PP2A regulatory subunit
Gma.9902.1.A1_atAW3953280.002571602FUSCA 5 MAP kinase kinase (FUS5)
Gma.7517.1.S1_atBU5482720.002923594U box-containing protein kinase
Gma.17655.1.S1_atBE0572590.00492857calcium/calmodulin-dependent protein kinase
GmaAffx.50980.1.S1_atBE8230950.007394226protein phpsphatase 2C (PP2C)
Gma.4455.3.S1_atCB0636320.009290923PROTEIN KINASE 2B (APK2B)
Gma.5188.1.S1_atAW3494540.010397582protein phosphatase type-2C
Gma.9853.1.A1_atAW3503350.010397582LysM domain-containing receptor-like kinase 7
Gma.10515.1.S1_atBM5287010.011324733calmodulin-binding receptor-like cytoplasmic kinase 3 (CRCK3)
Gma.5304.2.S1_atCD4106570.01212639membrane-associated progesterone-binding protein 2 (ATMAPR2)
Gma.1068.1.S1_atL19360.10.013412317protein kinase 2
Gma.4631.1.S1_atBE8242100.013412974MITOGEN-ACTIVATED PROTEIN KINASE 1 (ATMPK1)
Gma.5722.1.S1_atBU5462280.013451556Ste20-related protein kinase
Gma.596.1.S1_atAF228501.10.01541371814-3-3-like protein
Gma.2222.1.S1_atCD4161680.015413718Inositol monophosphatase
GmaAffx.82748.1.S1_s_atBM0856040.016427052protein phosphatase 2C (PP2C)
GmaAffx.67957.1.S1_atBG1576220.016772715RhoGAP small G protein family protein
Gma.15250.1.S1_x_atAI8562280.016772715calmodulin
Gma.10649.1.S1_atBE6592560.016932704BRI1-associated receptor kinase 1
Gma.8364.1.S1_atBE6592260.016932704ARABIDOPSIS FUS3-COMPLEMENTING GENE (AFC1)
Gma.10697.2.S1_atAW4241510.01738237protein phosphatase 2A (PP2A) catalytic subunit
Gma.9706.1.S1_atBE6574000.018668953protein phosphatase 1 (PP1)
GmaAffx.65281.1.S1_atCA8198080.019563038transmembrane protein
Gma.2314.1.S1_atAW3103850.022040082ARABIDOPSIS FUS3-COMPLEMENTING GENE (AFC2)
Gma.10927.1.S1_atCD3989610.023684433root hair defective 3 (RHD3)
Gma.2471.1.S1_atAI9380290.025399823FUSCA PROTEIN (FUS6)
Gma.4629.1.A1_atCA8201950.028086024SGT1
GmaAffx.78968.2.S1_atBM1885870.030941813cysteine protease
Gma.1518.2.S1_a_atBM5246840.030941813cysteine protease
GmaAffx.19821.1.S1_atCA7825360.030941813protein kinase
Gma.4536.1.A1_atBI9454860.034312943receptor-like protein kinase

Transcription

GmaAffx.92861.1.S1_s_atCF8085860.002923594HMG-protein
Gma.1748.2.S1_a_atCA8203720.003591192no apical meristem (NAM) protein (NAC1)
Gma.17736.1.S1_atAW5985700.00603523zinc finger, C2H2-type
Gma.4165.1.S1_atBI9691430.007394226Homeodomain-related
Gma.6739.1.S1_s_atAI8560420.007667593RNA polymerase II (RPB15.9)
Gma.2844.1.S1_atBI9723780.008019584auxin-induced protein 2
Gma.2258.2.S1_a_atBG2372800.008396837pre-mRNA processing ribonucleoprotein (NOP5)
GmaAffx.54382.1.A1_atBE8075920.00846925calmodulin-binding transcription activator 4
GmaAffx.50673.1.S1_atBF4257420.009049965no apical meristem (NAM) protein
GmaAffx.41946.1.S1_atBM5283570.009290923helix-loop-helix DNA-binding
GmaAffx.78992.1.S1_atBU7608190.010397582HMG-I and HMG-Y DNA-binding protein
Gma.2465.1.S1_atCD3905770.010694912ARABIDOPSIS THALIANA HOMEOBOX PROTEIN 54 (ATHB54)
GmaAffx.42667.1.S1_atBU7611640.011051366SCARECROW-LIKE 1 (SCL1)
GmaAffx.66085.1.S1_atBQ6303990.011411572basic helix-loop-helix (bHLH)
Gma.4975.1.S1_atBI9701780.011756578zinc finger, CCCH-type; Zinc finger, RING-type
Gma.6838.1.S1_atAW3496330.011756578NIM1-like protein 1 (NPR-1)
GmaAffx.91768.1.S1_s_atCF8074930.013412317WRKY27
GmaAffx.81622.1.S1_atBM0931590.013412317bZIP transcription factor bZIP123
Gma.3609.1.S1_atCD3920100.013412317helix-loop-helix DNA-binding
GmaAffx.85579.1.S1_atBQ2733520.014307059lipoamide dehydrogenase-UNE12 (unfertilized embryo sac 12)
GmaAffx.60479.4.S1_atBG5073690.014307059BEL1-like homeodomain transcription factor
GmaAffx.24357.1.A1_atBU5448270.014526581zinc finger (DHHC type) family protein
Gma.7212.1.S1_atBE6581020.016772715SUPPRESSOR OF FRIGIDA4 (SUF4)
Gma.3632.1.A1_atBI3169500.016772715zinc finger protein
Gma.15748.1.A1_atAI9005300.017813909WRKY15
Gma.16645.1.S1_atBM1434290.017952293no apical meristem (NAM) protein (NAC2)
Gma.4225.1.S1_a_atAW3173870.018428453transcription initiation factor IID (TFIID)
Gma.1772.1.S1_atCD4060360.019678474transcription factor IIA (TFIIA)
Gma.16172.1.S1_atCD4116270.020429855CONSTANS-like B-box zinc finger
GmaAffx.65829.1.A1_atCD3924180.020669698pathogenesis-related transcriptional factor and ERF
Gma.4281.1.S1_atAW1563480.020669698WRKY
Gma.12798.1.S1_atCD3905010.020828644PHYTOCHROME A SIGNAL TRANSDUCTION 1 (PAT1)
GmaAffx.85720.1.S1_atCD4151930.022040082basic helix-loop-helix (bHLH)
GmaAffx.87860.1.S1_atBU0812750.023684433MYB transcription factor
Gma.11345.1.S1_atBE0240360.025230236MYB transcription factor (MYB92)
GmaAffx.41422.2.S1_atBI3218070.027055562PHD1
GmaAffx.552.1.S1_atBI7850200.027055562RNA polymerase dimerisation domain containing protein (Rpb3/Rpb11)
GmaAffx.37827.1.S1_atCD4149120.028086024gibberellic acid-insensitive mutant protein 1 (GAI1)/DELLA protein
GmaAffx.73813.1.S1_atBU5512660.029056963Arabidopsis NAC domain containing protein 104 (ANAC104/XND1)
GmaAffx.67609.1.S1_atBG5510130.029056963SAR DNA-binding protein-1
GmaAffx.91229.1.S1_s_atCF8069540.030941813AUXIN RESISTANT 3 (AXR3)
GmaAffx.1957.1.S1_atBM2712850.030941813WIP1 protein
Gma.4207.3.S1_a_atBE8048030.031457154MYB transcription factor (MYB48)

3.7. Direct Comparison: 3 dpi Incompatible versus 3 dpi Compatible Syncytia

The DCM was used to compare genes within the 3 dpi microdissected syncytia undergoing an incompatible reaction directly to the 3 dpi syncytia undergoing a compatible reaction (Figures 8(g) and 8(h)). A total of 4,793 genes were present in these two samples. From these analyses, 2,851 genes were identified that were present and unique to the 3 dpi compatible syncytium sample (Figure 8(g) (supplementary Table )). Further analysis identified 1,363 genes that were present and common between the 3 dpi syncytia undergoing compatible and incompatible reactions (Figure 8(g) (supplementary Table )). Only these genes could be used for differential expression analyses because expression data was available for each sample type. The detection call analysis identified 579 genes present and unique to the 3 dpi incompatible syncytium sample (Figure 8(g) (supplementary Table )). A histogram of the functional categorizations of the 579 genes present and unique to the 3 dpi incompatible syncytium (as directly compared to the present and unique to the 3 dpi compatible syncytium sample genes) described in this section is presented (Figure 8(h)). Selected gene lists for the incompatible syncytium (Table 4) and compatible syncytium (Table 5) comprising the (1) Disease and Defense, (2) Signaling, and (3) Transcription categories are provided.


I-3 dpi genes in the comparison of I-3 dpi to C-3 dpi

Probe set IDPublic IDAvg 𝑃 -valueGene

Disease & defense

Gma.4886.2.S1_atAW2346240.005201937haem peroxidase
Gma.405.1.A1_atAI4434110.008396837leucine-rich repeat family protein (DRT100)
Gma.2044.2.S1_atBE8212300.011411572abscisic stress ripening-like protein
GmaAffx.92230.1.A1_s_atCF8079550.012305657thaumatin-like protein PR-5b
Gma.7542.2.S1_atCA9367640.016772715defender against cell death 1 (DAD-1)
Gma.8449.1.S1_s_atAF002258.10.019563038CoA ligase 4
GmaAffx.14986.1.S1_atBE6578890.020669698PHOSPHATE-INDUCED 1 (phi-1)
GmaAffx.2203.1.S1_atCD4157450.020669698cadmium-induced protein
GmaAffx.91141.1.S1_atCF8068660.020828644peroxidase 1 precursor
GmaAffx.46214.1.S1_atBE6592660.022934167polyphenol oxidase

Signal transduction

Gma.13604.1.S1_atCD4015370.011411572protein kinase
GmaAffx.56323.1.S1_atBU7642140.01212639protein kinase
Gma.6092.1.S1_atBI9687570.012305657COP9 signalosome subunit 3
Gma.5162.1.A1_atBI9711560.013412317Curculin-like (mannose-binding) lectin protein kinase
Gma.4455.3.S1_atCB0636320.014076915PROTEIN KINASE 2B (APK2B)
GmaAffx.66511.1.S1_atAW3509170.019563038calcium and calmodulin-dependent protein kinase (ATCDPK1)
GmaAffx.34312.1.S1_atAI9657350.023684433protein phosphatase 2C (PP2C)
GmaAffx.64402.1.S1_atAW3172820.025399823leucine-rich repeat
Gma.4801.1.S1_s_atBU5486080.028086024protein phosphatase 1 (PP1)
Gma.11291.1.S1_atAW3512070.028086024inositol 1,3,4-trisphosphate 5/6-kinase
GmaAffx.73451.1.S1_atBG0468890.034312943CALMODULIN-RELATED PROTEIN 2

Transcription

GmaAffx.89077.1.A1_s_atCK6056470.009323331CONSTANS interacting protein 2a
Gma.3996.1.S1_atAW3949460.014307059WRKY52
Gma.9678.1.S1_atCD4048940.016707249RNA polymerase II
Gma.12330.2.S1_s_atBI9727580.027055562pathogenesis-related transcriptional factor
Gma.6838.1.S1_atAW3496330.027055562NIM1-like protein 1 (NPR-1)
Gma.16645.1.S1_atBM1434290.028086024Arabidopsis NAC domain-containing protein 1 (ATAF1)


C-3 dpi genes in the comparison of I-3 dpi to C-3 dpi

Probe set IDPublic IDAvg 𝑃 -valueGene

Disease & defense

GmaAffx.36484.1.S1_s_atBI4254410.001672877PR1a
Gma.6091.1.S1_atAW3107620.00221961haem peroxidase
Gma.2523.1.S1_s_atCA8524400.002747901R 14 protein
GmaAffx.85114.1.S1_s_atAW7608440.003021268Malus major allergen (Mal d 1.07)
Gma.4312.3.S1_a_atBF4242400.003822926glutathione peroxidase (GSH-PX3)
Gma.257.2.S1_a_atCD4003640.005553929cysteine proteinase inhibitor
GmaAffx.36514.1.S1_atBE6583410.005553929cationic peroxidase
Gma.6299.3.S1_atBU5477010.00603523selenium binding protein
GmaAffx.92699.1.S1_s_atCF8084240.006308596PR-5 protein
Gma.5141.1.S1_atBI9711020.007667593laccase 3 (LAC3)
Gma.9504.1.S1_atCA8031300.007680178plant disease resistance response protein
Gma.18084.1.S1_atBI3175570.008396837RESPIRATORY BURST OXIDASE HOMOLOG (ATRBOHB)
Gma.8144.1.A1_atBU5485990.009323331cationic peroxidase
GmaAffx.11893.1.A1_atCD4141880.01212639regulator of chromatin condensation-1 (RCC1)
Gma.4077.1.S1_atCD4141180.012696314ASR protein
Gma.7257.2.S1_atBG1554890.016427052soluble epoxide hydrolase
GmaAffx.71331.1.S1_atAW5971010.018428453galactosyltransferase family protein
GmaAffx.52146.1.S1_atCA9349660.028086024PATHOGENESIS-RELATED 4 (PR4)
Gma.9638.1.A1_atCA9364030.029056963ADR6

Signal transduction

GmaAffx.92136.1.S1_s_atCF8074510.001672877Curculin-like (mannose-binding) lectin protein kinase
Gma.6338.1.S1_atAI4427750.001946244protein phosphatase 2C (PP2C)
Gma.3893.1.S1_atU44850.10.002298236Arabidopsis thaliana Homolog of the Tobacco ArcA (ATARCA)
Gma.4228.1.S1_atAI8567640.002298236RelA-SpoT like protein (RSH3)
Gma.13033.1.A1_a_atCD3927950.002298236calcium-dependent calmodulin-independent protein kinase (CDPK)
Gma.6709.1.S1_atBE8232910.002747901CBL-interacting protein kinase 22
Gma.10697.2.S1_atAW4241510.003591192protein phosphatase 2A catalytic subunit
Gma.11006.1.S1_s_atAW7062040.00492857CBL-interacting protein kinase
Gma.6359.1.S1_atCD3984810.005201937caltractin-like
GmaAffx.92229.1.S1_s_atCF8063810.00555392914-3-3 protein
Gma.4507.1.S1_atBG6532550.006308596leucine-rich repeat protein
Gma.568.1.S1_atBI9679840.007110254LRR receptor-like protein kinase
GmaAffx.90655.1.S1_s_atCF8063800.00768017814-3-3-like protein C (SGF14C)
GmaAffx.91570.1.A1_s_atCF8077320.008019584JUN-activation-domain-binding protein
Gma.4049.1.S1_atBQ7865190.008184263 wall-associated kinase (WAK-like kinase)
Gma.3083.1.S1_atBE4744660.008396837BAK1 (BRI1-ASSOCIATED RECEPTOR KINASE)
Gma.7517.1.S1_atBU5482720.009290923protein kinase
GmaAffx.25928.1.S1_atCD4140130.012305657WD-40 repeat protein
Gma.15907.1.A1_atCD4071540.014307059leucine-rich repeat protein
Gma.3852.1.S1_atCD3991040.014771313serine/threonine-protein phosphatase PP1
GmaAffx.57055.1.S1_atAW2034110.015413718Arabidopsis thaliana MAP kinase 2 (ATMPK20)
Gma.10215.1.S1_a_atAY263347.10.016307345 Pti1-like kinase
GmaAffx.85565.1.S1_atBE6110820.018428453calcium-dependent protein kinase 29 (CPK29)
Gma.7177.2.A1_a_atBI4253720.018428453Cdc2-related protein kinase (CRK2)
GmaAffx.35805.2.S1_atBF3241780.019563038MAP3K delta-1 protein kinase-like
Gma.10798.1.S1_atCD4011680.019563038protein phosphatase 2A (PP2A)
Gma.2314.1.S1_atAW3103850.019678474ARABIDOPSIS FUS3-COMPLEMENTING GENE (AFC2)
Gma.1517.2.S1_a_atBE0598590.019951841calcium dependent calmodulin independent protein kinase (CDPK)
Gma.6123.1.S1_atAW3498000.020669698VERNALIZATION INDEPENDENCE 3 (VIP3)
GmaAffx.69025.1.S1_atBM2711950.020753499RIO kinase
GmaAffx.62926.1.S1_atBE8049490.020828644extra-large GTP-binding protein 3 (XLG3)
GmaAffx.40750.1.S1_s_atBG3524690.022028694protein phosphatase 2A regulatory subunit (PP2A)
GmaAffx.44305.1.S1_atBU5513930.022830045transmembrane protein
Gma.3185.2.S1_atBM8907150.023684433leucine-rich repeat transmembrane protein
Gma.11015.1.S1_atCD3981100.023684433leucine-rich repeat transmembrane protein
GmaAffx.15664.1.S1_atBE6076420.024040827leucine-rich repeat transmembrane protein
Gma.1423.1.S1_s_atAI9600450.024040827BRASSINAZOLE-RESISTANT 1 (BZR1)
Gma.4044.1.S1_atBE8212330.025399823Pescadillo-like
GmaAffx.89525.1.S1_s_atCK6065170.027055562protein phosphatase 1 (PP1)
Gma.7387.1.A1_a_atCD3969100.027055562pseudo-response regulator
Gma.5722.1.S1_atBU5462280.029056963Ste20-related protein kinase
Transcription

Gma.1538.1.S1_a_atAW3511150.002298236salt tolerance protein 6
Gma.12279.1.A1_atCD3978260.00337326basic helix-loop-helix (bHLH)
Gma.5331.1.S1_atBI8927020.004307852no apical meristem (NAM) protein NAC4
Gma.593.2.S1_x_atCA8002860.00492857MYB transcription factor (MYB173)
GmaAffx.5069.2.A1_atBM1215650.005201937basic-leucine zipper (bZIP111)
GmaAffx.50673.1.S1-atBF4257420.005679433no apical meristem (NAM) protein (NAC)
GmaAffx.93436.1.A1-s-atCF8091610.007680178AP2/EREBP transcription factor ERF-2
GmaAffx.38951.1.S1_atBI3220980.008396837basic-leucine zipper (bZIP)
Gma.16172.1.S1_atCD4116270.009049965CONSTANS-LIKE 13
Gma.3730.2.S1_a_atBI3208460.009290923WRKY27
Gma.15862.1.S1_atBI9705930.009323331pathogenesis-related transcriptional factor and ERF
Gma.2702.2.S1_atAI8555870.010649919no apical meristem (NAM) protein
Gma.163.1.S1_atAB029269.10.014076915MYB transcription factor (MYB12)
Gma.16613.1.S1_s_atBU7606510.014307059zinc finger
GmaAffx.81234.1.A1_atBE8237650.014307059MYB-TRFL8 (TRF-LIKE 8)
GmaAffx.15471.1.S1_atBQ6117470.014526581MYB transcription factor (MYB139)
Gma.17432.1.S1_s_atAW2777830.015813164RNA polymerase subunit (RPB5)
Gma.13174.1.S1_s_atCD4146860.016772715aux/IAA protein (IAA13)
GmaAffx.71523.1.S1_atBU5440120.01738237Polycomb group-NAP1-RELATED PROTEIN 1 (NRP1)
Gma.15460.1.S1_atCD4034960.018032044ethylene-induced calmodulin binding protein (EICBP.B)
GmaAffx.92212.1.A1_s_atCF8079370.018428453MYB transcription factor (MYB92)
Gma.5483.1.S1_s_atCD4145810.019563038basic-leucine zipper (bZIP105)
Gma.7891.1.S1_atAW3106250.020753499basic helix-loop-helix
Gma.3632.1.A1_atBI3169500.020828644zinc finger protein
Gma.17664.1.S1_atAW3489170.020828644zinc finger (DHHC type) family protein
Gma.752.1.A1_atAW4324630.022830045helix-loop-helix DNA-binding
Gma.7341.1.A1_s_atCA9533500.022830045aux/IAA protein (IAA3)
GmaAffx.44143.1.S1_atBU5477300.023684433CCR4-Not complex component (Not1)
GmaAffx.50295.1.S1_atBI4241230.024040827zinc finger (C2H2 type, AN1-like)
GmaAffx.76537.1.S1_atCD4164170.025399823MYC1
Gma.5274.1.S1_atBM1784260.025399823transcription factor EIL2
GmaAffx.91768.1.S1_s_atCF8074930.031457154WRKY27
Gma.6571.2.S1_a_atBE1916210.031457154transcription initiation factor IIA (TFIIA)
Gma.4281.1.S1_atAW1563480.037684072WRKY
Gma.15184.1.S1_atBM5229920.037684072homeobox-leucine zipper protein 22 (HAT22)

3.8. Direct Comparison: 8 dpi Compatible versus 3 dpi Compatible Syncytia

The DCM was used to compare genes within the 8 dpi microdissected syncytia undergoing a compatible reaction to the 3 dpi syncytia undergoing a compatible reaction (Figures 8(i) and 8(j)). A total of 5,475 genes were present in these two samples. From these analyses, 1,308 genes were identified that were present and unique to the 3 dpi compatible syncytium sample (Figure 8(i) (supplementary Table )). The detection call analysis identified 2,906 genes that were present and common between the three and 8 dpi syncytia undergoing compatible reactions (Figure 8(i) (supplementary Table )). Only these genes could be used for differential expression analyses because expression data was available for each sample type. Further analysis identified 1,261 genes present and unique to the 8 dpi compatible syncytium sample (Figure 8(i) (supplementary Table )). A histogram of the functional categorizations of the 1,261 genes present and unique to the 8 dpi compatible syncytium sample (as directly compared to the present and unique to the 3 dpi compatible syncytium sample genes) described in this section is presented (Figure 8(j)). Selected gene lists comprising the (1) Disease and Defense, (2) Signaling, and (3) Transcription categories are provided (Table 6 (supplementary Table )).


C-8 dpi as compared to C-3 dpi

Probe set IDPublic IDAvg 𝑃 -valueGene

Disease & defense

GmaAffx.8704.2.S1_atBG0429820.003021268Peroxidase
Gma.8512.1.S1_atAF236108.10.014307059purple acid phosphatase
GmaAffx.93342.1.S1_s_atCF8090670.014526581glutathione peroxidase 1
Gma.7301.1.S1_atBM5282500.019563038GAMMA-GLUTAMYL TRANSPEPTIDASE 3 (GGT3)
GmaAffx.59573.1.S1_atAW3509860.019951841purple acid phosphatase
Gma.13182.1.S1_atCD3922980.020669698copper-binding protein (CUTA)
Gma.320.1.S1_atAF019116.10.024040827Peroxidase
Gma.11154.1.S1_a_atAW3099270.031457154elicitor-responsive gene

Signal transduction

GmaAffx.21217.3.S1_atAW5698720.004392849protein phosphatase 2C (PP2C)
Gma.4455.3.S1_atCB0636320.009290923PROTEIN KINASE 2B (APK2B)
Gma.2407.1.S1_atBI9704190.009755834putative protein kinase
Gma.5304.2.S1_atCD4106570.01212639membrane-associated progesterone-binding protein 2 (ATMAPR2)
Gma.1007.1.S1_a_atCD4022150.015096504calmodulin-related protein
Gma.2222.1.S1_atCD4161680.015413718inositol monophosphatase
Gma.596.1.S1_atAF228501.10.01541371814-3-3-like protein
GmaAffx.67957.1.S1_atBG1576220.016772715RhoGAP small G protein family protein
GmaAffx.73932.1.S1_s_atBU5504260.017952293CTR1-like protein kinase
Gma.4487.2.S1_atAW5083290.020753499calcium ion binding
GmaAffx.91867.1.S1_x_atCF8075920.02808602414-3-3 protein
Gma.4629.1.A1_atCA8201950.028086024SGT1
Gma.1518.2.S1_a_atBM5246840.030941813cysteine protease
GmaAffx.19821.1.S1_atCA7825360.030941813serine/threonine protein kinase

Transcription

GmaAffx.92861.1.S1_s_atCF8085860.002923594HIGH MOBILITY GROUP B 1 (HMGB1)
Gma.3419.2.S1_atBE6586410.005201937zinc finger, C2H2-type
Gma.6739.1.S1_s_atAI8560420.007667593RNA polymerase II 15.9 (RPB15.9)
GmaAffx.41946.1.S1_atBM5283570.009290923helix-loop-helix DNA-binding
GmaAffx.42667.1.S1_atBU7611640.011051366SCARECROW-LIKE 1 (SCL1)
Gma.6476.2.S1_x_atBQ4531350.011324733polynucleotidyl transferase
GmaAffx.30434.1.S1_atBQ0812270.011676724helix-loop-helix DNA-binding
Gma.4975.1.S1_atBI9701780.011756578zinc finger, CCCH-type- RING-type
Gma.6838.1.S1_atAW3496330.011756578NIM1-like protein 1 (NPR-1)
GmaAffx.58899.1.S1_atBI3177600.016307345C2-H2 zinc finger protein
Gma.16645.1.S1_atBM1434290.017952293no apical meristem (NAM) protein (NAC2)
GmaAffx.65829.1.A1_atCD3924180.020669698pathogenesis-related transcriptional factor and ERF
GmaAffx.53755.1.S1_atBQ4541950.022028694BEL-like homeodomain protein 3
GmaAffx.73306.1.S1_atBE6583010.022040082single-stranded nucleic acid binding R3H
GmaAffx.87860.1.S1_atBU0812750.023684433MYB transcription factor
Gma.11345.1.S1_atBE0240360.025230236MYB transcription factor (MYB92)
GmaAffx.90313.1.S1_s_atCF8060380.025685834no apical meristem (NAM) protein NAC5
GmaAffx.73813.1.S1_atBU5512660.029056963Arabidopsis NAC domain containing protein 104 (ANAC104/XND1)
GmaAffx.1957.1.S1_atBM2712850.030941813WIP1 protein
Gma.8118.1.A1_atBE8198460.031457154zinc finger, C3HC4-type RING finger

4. Discussion

Microarray experiments typically rely on differential expression analysis methods to identify differences in relative levels of gene expression. However, it is possible that very large differences in gene activity are present when the analysis involves comparing gene expression within homogeneous populations of cells, especially cells that are at different stages of differentiation or become genomically reprogrammed as a consequence of a pathological infection. In the analysis presented here, the DCM was used as an alternative method to identify genes that are expressed in a particular cell type but not active in another cell type. Importantly, the resulting DCM analysis identified a group of genes that were present uniquely within a sample type. However, those same genes were eliminated by differential expression analyses methods because differential expression analyses require expression data from each sample in the comparison.

The DCM is a statistically sound method based on a four-step procedure. The procedude incorporates (1) removal of saturated probes, (2) calculation of discrimination scores, (3) -value calculation using the Wilcoxon’s rank test, and (4) making the detection call. The DCM has been used in a variety of analyses to understand gene expression in various experimental systems [46]. The DCM analyses have demonstrated the utility of the method. The DCM takes into consideration only the presence of the transcript as measured by the probe set on the microarray. Thus, DCM can be used as a measurement of the diversity of transcripts within those samples.

In the analysis presented here, DCM identified thousands of genes in the 3 dpi incompatible and compatible syncytium samples, the 8 dpi compatible syncytium samples, and the pericycle samples that were isolated by LCM. The DCM, along with customized computer scripts, was then used to compare the transcripts present in those samples. The method allowed for the identification and comparison of transcripts that were found in those samples. The DCM analyses presented here identified transcripts that are found in the incompatible or compatible syncytium samples that did not meet the criteria in a differential expression analysis [26]. Thus, DCM provided a broader (or different) estimate of the similarities and differences in those samples. In all of the comparisons made, the samples exhibited substantial differences in transcript composition. The DCM demonstrated vast differences in transcripts when directly comparing 3 dpi incompatible to compatible syncytia, even though the anatomy of these cells at that time appears similar [2628, 33].

Comparisons of detection calls between the pericycle control and syncytia undergoing an incompatible reaction resulted in the identification of a disproportionate number of transcripts in the syncytia undergoing an incompatible reaction belonging to the “No Homology to Known Proteins” category. Conversely, the pericycle control had a disproportionate number of transcripts in the “Metabolism” and “Hypothetical Protein Supported by cDNA” categories (Figure 8(b)). Detection calls can also be used to determine other features of the cells under study. For example, detection calls can be used to arrive at an estimate of how different (or similar) two cell samples or sample types are from each other. Thus, when examining the development of specialized cell types like the syncytium, certain types of gene activity can be identified and used for comparative purposes by using DCM. For example, rapid elicitation of gene expression can be followed by a return to preinfestation levels during a reaction to a pathogen [62, 63]. The DCM may allow for the identification of genes expressed at lower levels that are not identified in a differential expression analysis. The DCM will also identify gene expression that is at a high threshold in one sample and absent in the other. This category of genes would be excluded in a differential expression analysis because no statistics can be performed on probe sets lacking expression data.

In this study, DCM aided in identifying additional genes expressed during nematode infection. In the analyses many genes from (1) Disease and Defense, (2) Signaling, and (3) Transcription categories that were unique to one sample type and thus excluded from a differential expression analysis were focused on because of their obvious importance in a variety of plant defense pathways. The analyses here focus on the incompatible analyses. Recent proteomic work by Afzal et al. [64] provides an additional bank of genes to obtain a broader understanding of H. glycines infection of G. max. The genes identified in the analysis make reasonable candidates for further functional tests [32].

4.1. DCM Is Used to Compare the 3 dpi Incompatible Syncytium to Pericycle Cells

The DCM analyses identified genes that were present only in the incompatible syncytial cell sample as compared to the pericycle sample. The genes included various defense response genes. Some of these were DRRG49-C (CF809336), Pto-interacting-kinase (Pti) (BI970555), BOTRYTIS-INDUCED KINASE 1 (BIK1) (AW311265), and two leucine-rich repeat genes (LRRs) (AW348555, AW317282). LRRs near rhg1 exist [65]. The DRRG49-C gene is induced during pathogen attack [66]. The Pti-kinase [67] and BIK1 [68] are examples of genes that are induced during a response to pathogenic attack and are involved in important defense responses. The identification of a Pti-like kinase was particularly interesting. In L. esculentum, Pti4 and Pti5 are induced by the virulent Pseudomonas syringae pv. tomato, the nonhost pathogenic bacterium Xanthomonas oryzae pv. oryzae (strain avrXa10), and the nonpathogenic bacterium Pseudomonas fluorescens (strain 2–79) [69]. Interestingly, Pti kinases are observed at 3 dpi in both compatible and incompatible reactions. The Pti-kinase identified in the 3 dpi incompatible reaction was most closely related to Pti1 isolated from tomato [70]. In that analysis, Pti1 was shown to be phosphorylated by Pto and to be involved in the hypersensitive response [70]. The LRR genes have a long history as being important for plant defense [71, 72]. The genes also have been shown to confer resistance to parasitic nematodes [7378]. Thus, due to the transient nature of expression of some of these genes in other systems, it is not surprising that they were not identified as being differentially expressed in syncytium samples [26].

4.2. DCM Is Used to Compare the 3 dpi Incompatible Syncytium Directly to the 3 dpi Compatible Syncytium

The DCM analyses identified genes that were present only in the 3 dpi incompatible syncytium as compared directly to the 3 dpi compatible syncytium sample (supplementary Table ). The probe sets included genes like haem peroxidase (AW234624), DRT100 (AI443411), thaumatin (CF807955), defender against cell death-1 (DAD-1) (CA936764), polyphenol oxidase (BE659266), calcium dependent protein kinase (AW350917), constitutive photomorphogenic 9 (COP9) subunit 3 (BI968757), WRKY 52 gene (AW394946), and Nonexpressor of PR genes 1 (NPR1) (AW349633) in syncytia undergoing an incompatible reaction at 3 dpi. Importantly, these comparisons were made directly to syncytia undergoing a compatible reaction at 3 dpi. Haem peroxidase [79], DRT100 [80, 81], thaumatin [82], DAD-1 [8385], polyphenol oxidase [8688], calcium dependent protein kinase [89, 90], COP9 subunit 3 [91, 92], WRKY [9399], and NPR1 [100] all perform important roles in defense and/or stress tolerance. Genes like polyphenol oxidase are known to exhibit intense, but transient expression after wounding [87] while a WRKY homolog (WRKY45) exhibits intense, but transient expression after infection [99]. The identification of genes that are known to experience rapid elicitation of gene expression as a consequence of wounding or infection followed by a rapid decline in expression is consistent with their absence from differential expression analyses. The absence could be due to the chronology of infection and syncytium establishment and maintenance [2729, 36, 5761].

4.3. DCM Identifies Genes Involved in Defense in the Syncytia Undergoing an Incompatible Reaction

Comparisons of 3 dpi resistant syncytia to 3 dpi susceptible syncytia resulted in the identification of polyphenol oxidase (PPO). PPO, also known as catechol oxidase, is an important protein in the defense response, being responsible for catalyzing the oxidation of o-diphenols to o-diquinones, thereby having diphenolase activity. In some plants, PPO may also perform the o-hydroxylation of monophenols, thereby having monophenolase activity [101]. Cellular components react rapidly to the o-quinones, whereby they rapidly polymerize and alkylate cell components. Consequently, tissue becomes brown in coloration because of extensive cross-linking of phenols, proteins, and other cellular constituents [102106]. Such morphological changes are observed in G. max roots undergoing infection by H. glycines. Functional tests of PPO activity on pathogens were made in (Populus tremula P. alba) plants overexpressing a hybrid poplar (Populus trichocarpa P. deltoides) PPO (PtdPPO1) gene [88]. Functional tests demonstrate that PPO-overexpressing transgenic plants produce significantly higher mortality and reduced average weight gain in the forest tent caterpillar (Malacosoma disstria) larvae feeding on transgenic plants as compared to control plants [88]. Similar experiments, involving the overexpression of a potato (Solanum tuberosum L.) PPO in tomato (Lycopersicon esculentum Mill. cv. Money Maker), resulted in transgenic plants expressing 30-fold more PPO transcripts [107]. Quantification of PPO protein functionality showed a 5- to 10-fold increase in PPO activity in the transgenic plants [107]. Consequently, the overexpressing PPO transgenic lines produce 15-fold fewer lesions as well as strong inhibition of bacterial growth [107]. Bacterial population growth counts demonstrate at least a 100-fold reduction of bacterial populations in the infected leaves [107]. Thus, PPO could provide a terminal step in plant defense and may provide a localized resistance reaction to H. glycines infection.

WRKY transcription factor homologs, involved directly in plant defense, are also identified in syncytia undergoing a resistant reaction. WRKY transcription factors are important in defense [9396, 98, 108]. Shen et al. [108] demonstrated that WRKY genes are important to the resistance response in the specific cells that contain the signaling proteins that are secreted by the pathogen. Shen et al. [108] demonstrated that this is accomplished through leucine rich repeat receptor-like kinase genes (LRRs) involved in resistance. Many LRRs are essential in gene-for-gene resistant (R) interactions [72]. Shen et al. [108] demonstrated that the signals were transduced through R-genes to WRKY transcription factors, resulting in resistance to the pathogen. Importantly, R genes have been shown to confer resistance to parasitic nematodes [73, 75]. WRKY gene expression in the syncytial cells during the resistance response is consistent with their suggested roles in plant defense.

The nonexpressor of PR genes (NPR1) (also known as nim1 (for noninducible immunity 1) and sai1) [109, 110] is the regulator of salicylic acid-mediated defense. Mutants of NPR1 block SA signaling in A. thaliana [100, 110112]. In the uninduced state, NPR1 exists in the cytoplasm as an oligomer. The oligomer is formed through intermolecular disulfide bonds [113]. Oligomerization is mediated by S-nitrosylation of NPR1 by S-nitrosoglutathione which occurs at cysteine-156 [114]. During systemic acquired resistance (SAR), NPR1 experiences a thioredoxin-mediated reaction that results in its monomerization [114]. This monomerization is induced by mutations at residues Cys82 and Cys216 that facilitated NPR1 monomer accumulation. It also resulted in constitutive nuclear localization. Importantly, the monomerization promoted NPR1-mediated gene expression in the absence of the pathogen [114]. Experiments in A. thaliana using mutants in NPR1 (npr1-2 and npr1-3), impaired in SA signaling, demonstrate an increased susceptibility to the beet cyst nematode H. schachtii [115]. Conversely, the npr1-suppressor mutation sni1 shows decreased susceptibility to the nematode [115]. Thus, the highly induced expression of thioredoxin during the resistance responses of G. is consistent with functional tests involving npr1-2 and npr1-3 in A. thaliana. Induced levels of NPR1 are not observed in syncytium samples of G. . Thioredoxin has been shown to be involved in this process [114]. Therefore, it is possible that thioredoxin transcription accompanies infection. Thus, thioredoxin could be recruited during the defense response to monomerize NPR1 already present in root tissues to accomplish the resistant reaction.

Calmodulin dependent protein kinases (CDPKs) such as calmodulin kinase II (CaMKII) are proteins reliant on calcium for their proper function. The identification of CaMKII indicates that calcium may be playing important roles in resistance. Calcium performs many interesting cellular roles. Calcium, as a second messenger, encodes information through Ca+2 gradients, amplitude, and oscillation frequency [116]. Thus, proteins relying on Ca+2 gradients and calmodulin may be important during the establishment of the resistant reaction. CaMKII functions by decoding Ca+2 oscillation frequencies [117]. At the cellular level, calmodulin is implicated in successful plant-pathogen interactions by its interaction with CDPKs. For example, the arbuscular mycorrhizal interaction in Medicago truncatula requires the CDPK, DMI3 [118]. Other symbioses as well are dependent on CDPKs [118, 119]. The expression analyses show that calmodulin may be performing some function analogous to those observed for the arbuscular mycorrhizal interaction in M. truncatula.

4.4. Orthogonality of the DCM

The DCM has resulted in the identification of probe sets that measure detectable amounts of gene activity in one cell type (present) while absent in the other cell type (Figures 7 and 8). The DCM analysis has also identified genes that were common to the two cell types under investigation. As would be expected, there is orthogonality of the DCM probe set lists as compared to probe set lists obtained by the differential expression analysis method. However, since statistical analyses for differential expression analyses can only happen if statistically significant (e.g., measuring present) amounts of gene activity are present in the two cell types under study (e.g., A B), many genes are eliminated from differential expression analyses. The elimination of the genes occurs because measureable amounts of gene activity as measured by a particular probe set are not present in one of the two samples under study. The exclusion of genes from differential expression analyses is probably less common and less of a problem when the RNA under study is obtained from a whole organism or whole organs (i.e., roots). The problem would be minimized in analyses of whole organisms or organs because they are composed of heterogeneous cell populations, each having unique gene expression programs. The RNA pools of those individual cell types become homogenized during the RNA extraction procedures. In contrast, LCM purifies cells to near homogeneity. Thus, gene expression of homogeneous samples of one cell type may be very different from gene expression found in their neighboring cells or a cell at an earlier point during its developmental process. As shown here, many genes are excluded from a differential expression analysis of nearly homogeneous populations of pericycle cells as compared to syncytia at various stages of their resistant or susceptible reactions. The genes identified in the DCM analyses that are present, but not differentially expressed, became the focus of the analysis presented here. As shown in the multiple analyses, genes that pertain to important classes of genes involved in various plant defense responses to pathogens have been identified by DCM.

5. Summary

The DCM was used to compare syncytium and pericycle samples isolated by LCM. The comparisons presented here are an alternative method of examining microarray gene expression data and are different from those presented in a differential expression analysis of the syncytium [26]. The DCM comparisons are powerful when considering that the cells under investigation are homogeneous (e.g., syncytia). The power of DCM is that it reveals that nearly homogeneous populations of cells have gene activity that is unique to each type. Importantly, differential expression analyses would miss the uniqueness of gene activity of the various cell types because gene expression data is required from each cell type for the analysis to be performed. Therefore, differential expression analyses actually may be underestimating the uniqueness of gene activity profiles for the different cell types under study. The genes identified here represent an additional and significant pool to take into consideration and explore with regard to the interaction between G. max and H. glycines. The genes can be investigated in functional analyses to study the interaction between G. max and H. glycines [31, 120]. In the broader sense, DCM should be seriously considered as an analysis tool when comparing homogeneous populations of cells.

Abbreviations

EST:Expressed sequence tag
hpi:Hours post inoculation
dpi:Days post inoculation
SCN:Soybean cyst nematode
J2:Second stage juvenile
FS:Farmer’s solution
PFA:Paraformaldehyde
DEPC:Diethylpyrocarbonate
LCM:Laser capture microdissection
MRS:Moisture replacement system
DCM:Detection call methodology.

Acknowledgments

The authors greatly appreciate the continued support provided by the United Soybean Board under Grant 5214. The authors thank Dr. David Munroe and Nicole Lum at the Laboratory of Molecular Technology, SAIC-Frederick, National Cancer Institute at Frederick, Frederick, MD 21701, USA for the Affymetrix array hybridizations and data acquisition. Brandon Le and Anhthu Bui of Dr. Robert Goldberg’s lab (University of California-Los Angeles) very kindly provided the G. max annotations. The authors thank Veronica Martins for careful editing of the manuscript. Mention of trade names or commercial products in this article is solely for the purpose of providing specific information and does not imply recommendation or endorsement by the United States Department of Agriculture.

Supplementary Materials

Supplemental table 1: The DCM was used to compare present transcripts (genes) within the 3 dpi microdissected syncytia undergoing an incompatible reaction to the pericycle sample (Fig. 8a). A total of 3,908 genes were present in these two samples. The DCM identified 1,966 genes that were present and unique to the pericycle sample (Fig. 8a).

Supplemental table 2: The DCM was used to compare present transcripts (genes) within the 3 dpi microdissected syncytia undergoing an incompatible reaction to the pericycle sample (Fig. 8a). A total of 3,908 genes were present in these two samples. Further analysis identified 1,002 genes that were present and common between the pericycle and 3 dpi incompatible syncytium sample (Fig.8a).

Supplemental table 3: The DCM was used to compare present transcripts (genes) within the 3 dpi microdissected syncytia undergoing an incompatible reaction to the pericycle sample (Fig. 8a). A total of 3,908 genes were present in these two samples. An analysis identified 940 genes present and unique to the 3 dpi incompatible syncytium sample (Fig. 8a).

Supplemental table 4: The DCM was used to compare genes within the 3 dpi microdissected syncytia undergoing a compatible reaction to the pericycle sample (Fig. 8c). A total of 4,925 genes were present in these two samples. From these analyses, 711 genes were identified that were present and unique to the pericycle sample (Fig. 8c).

Supplemental table 5: The DCM was used to compare genes within the 3 dpi microdissected syncytia undergoing a compatible reaction to the pericycle sample (Fig. 8c). A total of 4,925 genes were present in these two samples. Further analysis identified 2,257 genes that were present and common between the pericycle and 3 dpi compatible syncytium sample (Fig. 8c).

Supplemental table 6: The DCM was used to compare genes within the 3 dpi microdissected syncytia undergoing a compatible reaction to the pericycle sample (Fig. 8c). A total of 4,925 genes were present in these two samples. The detection call analysis identified 1,957 genes present and unique to the 3 dpi compatible syncytium sample (Fig. 8c).

Supplemental table 7: The DCM was used to compare genes within the 8 dpi microdissected syncytia undergoing a compatible reaction to the pericycle sample (Fig. 8e). A total of 4,823 genes were present in these two samples. From these analyses, 656 genes that were present and unique to the pericycle sample were identified (Fig. 8e).

Supplemental table 8: The DCM was used to compare genes within the 8 dpi microdissected syncytia undergoing a compatible reaction to the pericycle sample (Fig. 8e). A total of 4,823 genes were present in these two samples. Further analysis identified 2,312 genes that were present and common between the pericycle and 8 dpi compatible syncytium sample (Fig. 8e).

Supplemental table 9: The DCM was used to compare genes within the 8 dpi microdissected syncytia undergoing a compatible reaction to the pericycle sample (Figs. 8e). A total of 4,823 genes were present in these two samples. The detection call analysis identified 1,855 genes present and unique to the 8 dpi compatible syncytium sample (Fig.8e).

Supplemental table 10: The DCM was used to compare genes within the 3 dpi microdissected syncytia undergoing an incompatible reaction directly to the 3 dpi syncytia undergoing a compatible reaction (Fig. 8g). A total of 4,793 genes were present in these two samples. From these analyses, 2,851 genes were identified that were present and unique to the 3 dpi compatible syncytium sample (Fig. 8g).

Supplemental table 11: The DCM was used to compare genes within the 3 dpi microdissected syncytia undergoing an incompatible reaction directly to the 3 dpi syncytia undergoing a compatible reaction (Fig. 8g). Further analysis identified 1,363 genes that were present and common between the 3 dpi syncytia undergoing compatible and incompatible reactions (Fig. 8g).

Supplemental table 12: The DCM was used to compare genes within the 3 dpi microdissected syncytia undergoing an incompatible reaction directly to the 3 dpi syncytia undergoing a compatible reaction (Fig.8g). The detection call analysis identified 579 genes present and unique to the 3 dpi incompatible syncytium sample (Fig. 8g).

Supplemental table 13: The DCM was used to compare genes within the 8 dpi microdissected syncytia undergoing a compatible reaction to the 3 dpi syncytia undergoing a compatible reaction (Fig. 8i). A total of 5,475 genes were present in these two samples. From these analyses, 1,308 genes were identified that were present and unique to the 3 dpi compatible syncytium sample (Fig. 8i).

Supplemental table 14: The DCM was used to compare genes within the 8 dpi microdissected syncytia undergoing a compatible reaction to the 3 dpi syncytia undergoing a compatible reaction (Fig. 8i). The detection call analysis identified 2,906 genes that were present and common between the three and 8 dpi syncytia undergoing compatible reactions (Fig. 8i).

Supplemental table 15: The DCM was used to compare genes within the 8 dpi microdissected syncytia undergoing a compatible reaction to the 3 dpi syncytia undergoing a compatible reaction (Fig. 8i). Further analysis identified 1,261 genes present and unique to the 8 dpi compatible syncytium sample (Fig. 8i).

  1. Supplementary Table 1
  2. Supplementary Table 2
  3. Supplementary Table 3
  4. Supplementary Table 4
  5. Supplementary Table 5
  6. Supplementary Table 6
  7. Supplementary Table 7
  8. Supplementary Table 8
  9. Supplementary Table 9
  10. Supplementary Table 10
  11. Supplementary Table 11
  12. Supplementary Table 12
  13. Supplementary Table 13
  14. Supplementary Table 14
  15. Supplementary Table 15

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Copyright © 2010 Vincent P. Klink et al. This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

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