| Literature DB >> 24472155 |
James R Perkins, Ana Antunes-Martins, Margarita Calvo, John Grist, Werner Rust, Ramona Schmid, Tobias Hildebrandt, Matthias Kohl, Christine Orengo, Stephen B McMahon, David L H Bennett1.
Abstract
BACKGROUND: The past decade has seen an abundance of transcriptional profiling studies of preclinical models of persistent pain, predominantly employing microarray technology. In this study we directly compare exon microarrays to RNA-seq and investigate the ability of both platforms to detect differentially expressed genes following nerve injury using the L5 spinal nerve transection model of neuropathic pain. We also investigate the effects of increasing RNA-seq sequencing depth. Finally we take advantage of the "agnostic" approach of RNA-seq to discover areas of expression outside of annotated exons that show marked changes in expression following nerve injury.Entities:
Mesh:
Year: 2014 PMID: 24472155 PMCID: PMC4021616 DOI: 10.1186/1744-8069-10-7
Source DB: PubMed Journal: Mol Pain ISSN: 1744-8069 Impact factor: 3.395
Previous studies comparing microarray and sequencing platforms for the measurement of gene expression
| Marioni et al. 2008 [ | Affymetrix HG-U133 Plus 2.0 | Illumina Genome Analyzer | Human | Liver/kidney | Technical replications (3 per tissue for microarray, 7 different flow cell lanes for RNA-seq). | All RNA was taken from a single human male. Aliquots from each sample were then used for RNA-sequencing and microarray analysis. |
| Bradford et al. 2010 [ | Affymetrix Human Exon 1.0 ST | Applied Biosystems SOLiD v3 platform | Human | MCF-7 and MCF-10a breast cancer lines | Technical replication (2 x MCF-7, 1 x MCF-10). Samples hybridised in triplicate to microarrays. | RNA analysed on the SOLiD platform and the same RNA samples hybridised in triplicate to Affymetrix Exon 1.0ST arrays. |
| Bottomly et al. 2011 [ | Affymetrix MOE 430 2.0 and Illumina MouseRef-8 v2.0 | Illumina GA IIx | Mouse | Striatum | Biological replication, independent groups used for different technologies. | B6 strain mice were compared to D2 strain. For RNA-seq, 10 B6 and 11 D2 were used; for Affymetrix arrays 7 D2, 10 B6; for Illumina arrays 12 D2 12 B6. A subset of this group of mice were also used for RNA-seq. |
| Toung et al. 2011 [ | Affymetrix HG Focus Array | Illumina 1G Genome Analyzer | Human | B-cells | Biological replicates (20 unrelated individuals). Independent samples (from same individuals) were used for different technologies. | B-cell lines were taken for 20 different individuals (10 male, 10 female). Cells were grown and total RNA extracted. |
| Su et al. 2011 [ | Affymetrix Rat Genome 230 2.0 | Illumina GA II | Rat | Kidney | Biological replication (4 rats per condition). | Eight rats in total, 4 were administered with aristolochic acid, 4 with control vehicle. RNA was extracted from kidneys of each rat; each RNA sample was assayed using RNA-seq and miroarrays |
| Fu et al. 2009 [ | Affymetrix Human Exon 1.0 ST | Illumina Solexa Sequencer (precise model name not given) | Human | Brain | Biological replication (two groups of 5 pooled individuals). | Two independent samples were used, each containing pooled mRNA from 5 adult human individuals. These samples were used as input for RNA-seq, microarray and proteomic analysis. |
| Griffith et al. 2010 [ | Affymetrix Human Exon 1.0 ST and Nimblegen custom array | Illumina GA II | Human | Colorectal cancer cell-lines | One sample per condition. | 5-fluorouracil resistant cell lines compared to non-resistant lines. The same input was used for microarrays and RNA-seq. |
| Bullard et al. 2010 [ | Affymetrix U133 Plus 2.0 | Illumina GA II | Human | Brain reference DNA and universal human reference DNA | Technical replication. | Various experimental designs were employed in order to teaste apart the effects of flow cell and library preparation on the results. |
| Kogenaru et al. 2012 [ | Agilent custom array | Illumina GA IIx | Whole organism | Biological replication (3 replicates per strain). | Comparison was made between wild-type and hrpX mutant strains. Biological replicates of each strain were grown in culture and the RNA was extracted. | |
| Sîrbu et al. 2012 [ | Affymetrix and dual-channel microarrays | Illumina GA II | Drosophila | Embryo development (time-series) | Technical replicates were used for RNA-seq, biological replicates were used for microarray. | Datasets were analysed and compared in terms of “reference” genes, which were highly likely to be expressed during embryogenesis. Several other technical measurements were also taken, including clustering and differential expression measurements. |
| Sekhon et al. 2013 [ | NimbleGen custom array | Illumina GA II | Maize | 18 selected tissues representing 5 organs | Biological replicates, compared to historical dataset. | Samples were assayed by both technologies, and compared in terms of expressed genes and correlation. |
| Mooney et al. 2013 [ | Affymetrix Canine Genome 2.0 | Illumina Hiseq 2000 | Dog | B-cell lymphoma | Biological replication; same samples used for both technologies (10 case, 4 control samples). | Investigation into the difference between technologies in terms of technical biases and pathways found. |
| Malone and Oliver 2011 [ | Nimblegen custom array | Ilumina GA I | Head | Biological replicates (four for microarray; one of these replicates used for RNA-seq). | RNA from males was compared to RNA from females. Four distinct RNA libraries were produced, with each library produced using 500–600 individual fly heads. |
Figure 1Experimental outline. L5-spinal nerve transection (SNT) was performed on twelve male Wistar rats. L5 DRG tissue was harvested 7 days after surgery and tissue from 4 animals was pooled for RNA extraction; naive tissue was used as control. Total RNA samples (n = 3 SNT, n = 3 naive) were divided into technical replicates used in parallel for microarray analysis (Affymetrix Rat Exon 1.0 ST arrays) and RNA-seq in the Illumina GAIIx platform, in both cases following poly(A) enrichment.
Figure 2RNA-seq procedure and RNA-seq analysis pipeline. cDNA libraries were produced for each sample from poly(A) enriched RNA. These were sequenced to three distinct read depths (~17, ~25 and ~50 M reads/sample). Reads not passing the Illumina quality filter were discarded. A) Filtered reads were mapped to the genome, allowing a maximum of one mismatch between the sequence and the reference genome (Rn5); reads that could not be mapped to the reference genome or that could be mapped to more than one genomic location (ambiguous reads) were discarded. B) The remaining reads were mapped onto the genome and classified as exonic, intronic or intergenic as described in the Methods section. C) Stacked bar charts, showing the proportions of exonic, intronic and intergenic reads, at a 50 M read depth (the same pattern was obtained at 17 M and 25 M read depths). The unstacked barcharts show there is a significantly higher proportion of reads that align to intronic regions in SNT samples than in naive samples, and that the proportion of reads mapping to exonic regions is significantly higher in naive samples than in SNT samples. P-values were calculated using the overdispersed logistic regression test described in the Methods section. Evidence of a difference between SNT and naive was found for intergenic reads, however this did not retain significance following the Bonferroni correction for multiple testing. Following alignment, gene expression was quantified by counting the number of reads mapping to each gene. Read counts were normalised by, and differential gene expression analysis was performed using DESeq. The effect of reads mapping to intronic regions on differential gene expression was assessed by comparing exonic expression to exonic and intronic expression.
Figure 3Example of a genome graph for the Cacna2d1 gene (Calcium channel, voltage-dependent, alpha2/delta subunit 1). A) The genomic location of the Cacna2d1 gene on chromosome 4, highlighted in red. B) The exonic/intronic structure of the gene; brown squares represent exons, the black links between them represent introns. C) A zoomed-in region of the gene, showing the positions where the sequenced reads align to the exons and introns of the gene (grey bricks), for a given RNA-seq sample (in this example, an SNT sample is shown, sequenced to a depth of 50 M reads). D) A further zoomed in region of the gene, showing the individual reads and the positions to which they align in greater detail. E) The genome graphs for all of the samples (shown for sequencing depth 50 M). Each row represents a different sample. When calculating fold change, the reads aligning to each exon are summed to produce the raw expression value for each sample, and then DESeq is used to compare these values between SNT and naive samples. Some reads align outside of known exons, this is explored further in the section “Intronic expression and its effect on fold change calculation”.
Total number of genes measurable by RNA-seq and exon arrays at the three probeset confidence levels investigated, for Ensembl ids found in both Rn4 and Rn5 genome builds
| Microarray: | 7153 | 5 | ||
| 13638 | 118 | |||
| | ||||
| Microarray: | 13042 | 13 | ||
| 7749 | 110 | |||
| | ||||
| Microarray: | 15492 | 26 | ||
| 5299 | 97 | |||
Overlap between genes measurable by either platform, for all core probesets only (top table), core + extended probesets (middle table-the set of probesets used in this study), and core + extended + full probesets (bottom table).
Figure 4Comparison of RNA-seq and microarrays for the measurement of gene expression. Correlation between normalised hybridisation intensity and normalized read counts (RPKM) at a 50 M read depth for genes measureable using microarrays and RNA-Seq. A) Average expression for all three SNT samples. B) Average expression for all three naive samples. The red points show genes for which some expression level is measured by both platforms, blue points show genes that are not detected by RNA-seq (i.e. 0 reads aligned to the exons for that gene). Lines show the median (normalised) intensity for the antigenomic control probesets (solid line) and median + 1 median absolute deviation (dashed line). Some noise has been added to the expression values of these genes for clearer visualization of the point density.
Figure 5Comparison of RNA-seq and microarrays for the detection of differentially expressed genes. A) Correlation between fold changes estimated by microarrays and RNA-seq (50 M read depth) for genes detectable by both technologies. There is an overall concordance in direction of fold change for the genes deemed as significantly DE by both platforms (red points), however a large number of DE genes are detected exclusively by RNA-seq (green points) or microarrays (blue points). B) Plot of the distributions of absolute log2 FCs for DE genes. FCs are shown for the genes that are called as DE by both platforms (red lines, dashed and solid lines show RNA-seq and microarray fold changes), using RNA-seq only (dashed green line) and microarrays only (solid blue line). Distribution curve computed using the probability density function, implemented in R. Ci-iii) Venn diagrams showing the number of genes found to be differentially expressed by RNA-seq at distinct read depths (Ci- 17 M; Cii- 25 M; Ciii-50 M) and the overlap with microarray data.
Figure 6Sequencing depth and the detection of differentially expressed genes. A) Venn diagram showing the overlap between the total numbers of DE genes found at the different sequencing depths. B) Distributions of absolute log2 fold changes for the DE genes found at each sequencing depth. C) The 194 genes deemed as DE exclusively at 17 M read depth (but not at higher read depth), plotted as log2 read count vs. log2 fold change at three distinct read depths (orange points), along with not significantly DE genes (grey points) and genes significantly DE at all read depths (pink points). As read depth increases, the estimated fold changes for genes with low mean read count decreases, suggesting that the estimation of DE at lower sequencing depths suffers from sampling errors for genes with low read count. D) More plots of log2 read count vs. log2 fold change for all genes at all three respective sequencing depths. Genes detected as DE exclusively at a 50 M read depth (896 genes in total) are shown as green points.
Figure 7The effect of intronic expression on fold change calculation. A) Estimation of log2 FC considering exonic reads only (x-axis) compared to FC calculating counting exonic and intronic reads (y-axis). Red points represent genes called DE when using both counting schemes with the same direction of fold change, peach points represent the two genes that are called as DE with both schemes, but with opposite directions of fold change. Green points show genes called DE when considering exonic reads only, but not when considering exonic and intronic reads. Blue points show genes DE when considering exonic and intronic reads but not when considering exonic reads only. B) Distribution of the ratio of fold changes estimated by both methods. Calculated by subtracting the log2 FC values calculated using full gene expression from log2 FC calculated exon expression only. Ci, Cii) Genome graphs for gene St3gal6, showing intronic expression that is not proportional to exonic expression, i.e. that is increased following SNT. The figure comprises a series of “tracks” for each gene, and its expression levels for SNT samples (Ci) and naive samples (Cii). The top tracks show the genomic coordinates of the gene on chromosome 11 (precise position marked in red). The middle histogram-like tracks show the positions of RNA-seq reads mapping to the genomic location of the gene. Below these tracks is a track showing the gene structure (exons are represented by boxes, introns are represented by arrowed lines, the direction of these arrows shows the direction of transcription). Bottom track shows the position of the microarray probes that map to the genomic location of the gene.
Differential gene expression of commonly dysregulated genes in experimental pain models
| Aif1/Iba-1 | Allograft inflammatory factor 1 (Iba-1) | 4.7 | 2.0 |
| Apoe | Apoliprotein E | 1.5 (ns) | 1.2 |
| Arg1 | Arginase, liver | 30.1 | 2.4 |
| Arpc1b | Actin related protein 2/3 complex, subunit 1B, 41 kDa | 3.7 | 2.7 |
| Atf3 | Activating transcription factor 3 | 33.8 | 13.7 |
| C1qb | Complement component 1, q subcomponent, B chain | 10.1 | 5.5 |
| C1qc | Complement component 1, q subcomponent, C chain | 7.7 | 4.5 |
| C1s | Complement component 1, s subcomponent | 4.4 | 2.5 |
| Cacna2d1 | Calcium channel, voltage-dependent, alpha 2/delta subunit 1 | 5.0 | 3.0 |
| Ccl2 | Chemokine (C-C motif) ligand 2 | 2.1 | 1.4 |
| Ccnd1 | Cyclin D1 | 4.1 | 2.7 |
| Cd74 | CD74 molecule, major histocompatibility complex, class II invariant chain | 6.5 | 2.8 |
| Coro1a | Coronin 1-A | 1.0 (ns) | 1.2 (ns) |
| Crabp2 | Cellular retinoic acid-binding protein 2 | 3.1 | 2.1 |
| Csrp3 | Cysteine and glycine-rich protein 3 (cardiac LIM protein) | 590.2 | 22.6 |
| Ctsd | Cathepsin D precursor | 1.4 (ns) | 1.3 |
| Ctsh | Cathepsin H | 1.6 | 1.3 (ns) |
| Cxcl10 | Chemokine (C-X-C motif) ligand 10 | 7.5 | 3.8 |
| Cxcl13 | Chemokine (C-X-C motif) ligand 13 | 4.0 | 2.2 |
| Egr1 | Early growth response 1 | 2.2 | 1.8 |
| Gabra5 | Gamma-aminobutyric acid (GABA) A receptor, alpha 5 | 2. 5 | 2.1 |
| Gadd45a | Growth arrest and DNA-damage-inducible, alpha | 6.8 | 4.6 |
| Gal | Galanin/GMAP prepropeptide | 46.3 | 13.5 |
| Gap43 | Growth associated protein 43 | 3.2 | 2.3 |
| Gfap | Glial fibrillary acidic protein | 8.8 | 3.8 |
| Gfra1 | GDNF family receptor alpha 1 | 3.2 | 2.1 |
| Igfbp3 | Insulin-like growth factor binding protein 3 | 4.7 | 2.9 |
| Igfbp6 | Insulin-like growth factor binding protein 6 | 1.8 | 1.5 |
| Lum | Lumican | 2.5 | 1.6 |
| Npy | Neuropeptide Y | Not detected | 7.8 |
| Reg3b | Regenerating islet-derived 3 beta | 61.0 | 20.1 |
| S100a4 | S100 calcium binding protein A4 | 2.8 | 1.9 |
| Sprr1a | Small proline-rich protein 1A/cornifin-1 | 176.6 | 57.9 |
| Stmn4 | Stathmin-like 4 | 6.1 | 3.2 |
| Timp1 | TIMP metallopeptidase inhibitor 1 | 3.5 | 2.1 |
| Vgf | VGF nerve growth factor inducible | 5.3 | 2.5 |
| Vip | Vasoactive intestinal peptide | 138.1 | 5.4 |
| Atp1b3* | ATPase, Na+/K + transporting, beta 3 polypeptide | 0.6 | 0.8 |
| Calca* | Calcitonin-related polypeptide alpha | 0.3 | 0.4 |
| Cd55 | CD55 molecule, decay accelerating factor for complement | 0.2 | 0.3 |
| Chrna3 | Cholinergic receptor, nicotinic, alpha 3 (neuronal) | 0.1 | 0.1 |
| Ckmt1 | Creatine kinase, mitochondrial 1, ubiquitous | 0.2 | 0.3 |
| Gabbr1 | Gamma-aminobutyric acid (GABA) B receptor, 1 | 0.8 | 0.8 (ns) |
| Grik1 | Glutamate receptor, ionotropic, kainate 1 | 0.2 | 0.1 |
| Htr3a | 5-hydroxytryptamine (serotonin) receptor 3A, ionotropic | 0.1 | 0.1 |
| Kcnc2 | Potassium voltage-gated channel, Shaw-related subfamily, member 2 | 0.3 | 0.5 |
| Nefh | Neurofilament, heavy polypeptide | 0.3 | 0.4 |
| Nefl | Neurofilament, light polypeptide | 0.2 | 0.5 |
| Nefm | Neurofilament, medium polypeptide | 0.3 | 0.5 |
| Nsf | N-ethylmaleimide-sensitive factor | 0.5 | 0.5 |
| Rab3a | RAB3A, member RAS oncogene family | 0.3 | 0.4 |
| Rgs4 | Regulator of G-protein signaling 4 | 0.2 | 0.2 |
| Scn11a | Sodium channel, voltage-gated, type XI, alpha subunit | 0.1 | 0.1 |
| Snap25 | Synaptosomal-associated protein, 25 kDa | 0.3 | 0.6 |
| Sst* | Somatostatin | 0.1 | 0.1 |
| Sv2b | Synaptic vesicle glycoprotein 2B | 0.3 | 0.3 |
| Tac1* | Tachykinin, precursor 1 | 0.3 | 0.3 |
| Vsnl1 | Visinin-like 1 | 0.2 | 0.3 |
| Ywhag | Tyrosine 3-monooxygenase/tryptophan 5-monooxygenase activation protein gamma polypeptide | 0.5 | 0.7 |
The list of genes resulted from a meta-analysis study of microarray data of DRG and/or spinal cord tissue in inflammatory and neuropathic pain models [4]. Fold changes expressed as ratio SNT/naive in L5 DRGs. All fold changes are significant (p < 0.1, FDR) except if indicated by “ns” – non significant. The direction of fold change is consistent between the exon array and RNA-Seq dataset and largely coincides with the reported trends. Exceptions are genes marked with “*” Atp1b3, Calca, Sst, Tac1 which are listed as upregulated in the meta-analysis study but are significantly downregulated in our study. In support of our results, qPCR data reported by LaCroix-Fralish et al. [4] suggested that these genes are down regulated (albeit not significantly) in DRG tissue after chronic constriction injury. Also Npy expression is not detected in RNA-seq because there is a paralogous gene to Npy sharing 98% sequence homology. Therefore, reads aligning to Npy would be deemed as ambiguous and discarded from our analysis. Mapping to the Rn4 assembly of the rat genome (where paralogous genes are not annotated) reveals a 36.4 upregulation of Npy.
Top 50 significantly upregulated genes in RNA-seq and exon arrays
| Crisp3 | Cysteine-rich secretory protein 1 | 1 | 5 | 1414.6 | 7.06E-10 | 21.0 | 2.58E-03 |
| Csrp3 | Cysteine and glycine-rich protein 3 | 2 | 3 | 590.1 | 4.30E-44 | 22.6 | 8.59E-05 |
| Mmp12 | Macrophage metaloelastase | 3 | 14 | 427.5 | 2.98E-03 | 7.8 | 1.58E-02 |
| Tgm1 | Protein-glutamine gamma-glutamyltransferase k | 4 | 25 | 355.1 | 2.18E-43 | 5.9 | 1.39 E-03 |
| Hpd | 4-hydroxyphenylpyruvate dioxygenase | 5 | 34 | 237.3 | 1.56E-20 | 4.9 | 1.11E-03 |
| Ucn | Urocortin | 6 | 187 | 180.1 | 2.92E-36 | 2.5 | 1.10E-03 |
| Sprr1a | Small proline-rich protein 1a / Cornifin-a | 7 | 1 | 176.6 | 2.02E-25 | 57.9 | 2.36E-05 |
| Serpina3n | Serine protease inhibitor A3N | 8 | 4 | 174.6 | 1.97E-44 | 21.6 | 3.66E-04 |
| Cxcl14 | Chemokine (C-X-C motif) ligand 14 | 9 | 2 | 167.3 | 3.62E-08 | 33.4 | 1.59E-03 |
| Hamp | Hepcidin antimicrobial peptide | 10 | 11 | 162.5 | 5.41E-35 | 13.1 | 1.11E-03 |
| Ptprh | Receptor-type tyrosine-protein phosphatase h | 11 | 49 | 161.4 | 2.48E-48 | 3.9 | 1.40E-04 |
| Rgd1305807 / LOC298077 | Uncharacterized protein | 12 | 2333 | 159.3 | 6.66E-06 | 1.2 | 1.89E-02 |
| Cldn4 | Claudin 4 | 13 | 31 | 159.2 | 3.29E-42 | 5.3 | 1.391E-03 |
| Mmp7 | Matrix metallopeptidase 7 | 14 | 319 | 158.3 | 2.62E-02 | 2.0 | 3.85E-02 |
| Vip | Vasoactive intestinal peptide | 15 | 28 | 138.2 | 3.21E-25 | 5.4 | 1.39E-03 |
| Mroh4 | Maestro heat-like repeat family member 4 | 16 | ND | 132.8 | 3.58E-08 | - | - |
| Stac2 | SH3 and cysteine-rich domain-containing protein 2 | 17 | 46 | 126.0 | 2.35E-69 | 4.1 | 1.43E-03 |
| Ucn2 | Urocortin 2 | 18 | 21 | 88.8 | 5.08E-04 | 6.0 | 2.67E-03 |
| Il6 | Interleukin 6 | 19 | 41 | 78.4 | 8.66E-18 | 4.5 | 1.58E-03 |
| Serpinb2 | Plasminogen activator inhibitor 2 type a | 20 | 95 | 75.7 | 1.09E-34 | 3.2 | 6.07E-03 |
| Abp1 | Amiloride-sensitive amine oxidase | 21 | 2050 | 73.8 | 6.06E-08 | 1.3 | 1.89E-02 |
| D3zu79_rat/ lsmem1 | Leucine rich single pass membrane protein | 22 | ND | 73.7 | 8.13E-07 | - | - |
| Ankrd1 | Ankyrin repeat domain-containing protein 1 | 23 | 40 | 68.3 | 5.46E-31 | 4.5 | 2.22E-03 |
| Cd8b | T-cell surface glycoprotein cd8 beta chain precursor | 24 | 105 | 67.4 | 1.75E-02 | 3.0 | 1.24E-02 |
| Vtcn1 | V-set domain containing t cell activation inhibitor 1 | 25 | 183 | 67.4 | 1.13E-30 | 2.5 | 4.33 E-04 |
| RT1-M2 | RT1 class IB, locus M2 | 26 | ND | 64.9 | 2.54E-08 | - | - |
| Il1a | Interleukin-1 alpha precursor | 27 | 642 | 64.2 | 3.14E-22 | 1.7 | 5.58E-03 |
| Reg3b | Regenerating islet-derived protein 3-beta | 28 | 6 | 61.0 | 1.45E-114 | 20.1 | 2.36E-05 |
| Il24 | Interleukin-24 | 29 | 19 | 55.3 | 3.21E-25 | 6.4 | 1.39E-03 |
| Igsf23 | Immunoglobulin superfamily, member 23 | 30 | ND | 53.7 | 2.41E-28 | - | - |
| En1 | Homeobox protein engrailed | 31 | ND | 51.6 | 2.90E-18 | - | - |
| Trim55 | Tripartite motif-containing protein 55 | 32 | 2142 | 49.4 | 1.24E-02 | 1.3 | 4.16E-02 |
| Igsf7 | Immunoglobulin superfamily, member 7 | 33 | ND | 46.9 | 1.51E-02 | - | - |
| Cd8a | T-cell surface glycoprotein CD8 alpha chain | 34 | 20 | 46.7 | 2.16E-03 | 6.1 | 4.13E-03 |
| Gal | Galanin/GMAP prepropeptide | 35 | 10 | 46.3 | 3.94E-58 | 13.5 | 1.36E-04 |
| LOC363060/ Plet1 | Placenta-induced transcript 1 | 36 | 588 | 41.2 | 5.17E-08 | 1.7 | 4.41E-03 |
| Vsig4 | V-set and immunoglobulin domain containing 4 | 37 | 1752 | 39.7 | 1.18E-02 | 1.3 | 5.80E-02 |
| Nps | Neuropeptide S | 38 | ND | 37.4 | 2.07E-07 | - | - |
| Htr2b | 5-hydroxytryptamine receptor 2b, g-protein coupled | 39 | 18 | 36.3 | 8.44E-04 | 7.2 | 3.89E-03 |
| Col7a1 | Collagen alpha-1(VII) chain precursor | 40 | 1426 | 34.2 | 2.37E-11 | 1.4 | 1.60E-02 |
| Atf3 | Activating transcription factor 3 | 41 | 9 | 33.8 | 2.36E-66 | 13.7 | 1.99E-05 |
| Novel | Novel protein coding | 42 | ND | 32.8 | 1.61E-03 | - | - |
| Gpnmb | Transmembrane glycoprotein nmb | 43 | 8 | 31.9 | 4.00E-03 | 14.3 | 1.39E-03 |
| Lilrb4 | Leukocyte immunoglobulin-like receptor, subfamily b, member 4 | 44 | 12 | 31.6 | 6.33E-02 | 9.1 | 3.14E-02 |
| Gzmb | Granzyme b (granzyme 2, cytotoxic t-lymphocyte-associated serine esterase 1) | 45 | 7 | 31.4 | 2.52E-11 | 16.6 | 4.87E-05 |
| Arg1 | Arginase-1 | 46 | 197 | 30.1 | 2.30E-66 | 2.4 | 2.00E-03 |
| Fcrls | Fc receptor-like s, scavenger receptor | 47 | ND | 30.0 | 7.34E-05 | - | - |
| Mmp10 | Matrix metallopeptidase 10 | 48 | NS | 29.2 | 4.47E-03 | 1.1 | NS |
| Lce1f | Late cornified envelope 1F | 49 | ND | 28.3 | 5.03E-04 | - | - |
| Cnga4 | Cyclic nucleotide gated channel alpha 4 | 50 | NS | 27.7 | 5.20E-12 | 1.1 | NS |
| Npy | Neuropeptide Y | ND | 13 | - | - | 7.8 | 4.12E-03 |
| Cthrc1 | Collagen triple helix repeat containing 1 | 90 | 15 | 16.9 | 4.57E-04 | 7.6 | 2.39E-03 |
| Clec7a | C-type lectin domain family 7, member a | 91 | 16 | 16.2 | 5.58E-04 | 7.4 | 3.61E-03 |
| Cd68 | Macrosialin precursor | 71 | 17 | 21.8 | 4.51E-03 | 7.4 | 3.84E-03 |
| Thbs2 | Thrombospondin 2 precursor | 87 | 22 | 17.3 | 1.66E-04 | 6.0 | 3.41E-03 |
| Ccl9 | Chemokine (C-C motif) ligand 9 | 55 | 23 | 25.3 | 8.48E-07 | 5.9 | 4.92E-03 |
| Apobec1 | Apolipoprotein B mRNA editing enzyme, catalytic polypeptide 1 | 104 | 24 | 14.3 | 1.37E-04 | 5.9 | 4.62E-03 |
| C1qb | Complement C1Q subcomponent subunit B precursor | 160 | 26 | 10.1 | 2.82E-04 | 5.5 | 2.15E-03 |
| Cdkn1a | Cyclin-dependent kinase inhibitor 1 | 174 | 27 | 9.6 | 1.20E-29 | 5.4 | 5.12E-04 |
| Postn | Periostin precursor | 132 | 29 | 11.3 | 1.33E-04 | 5.4 | 4.78E-03 |
| Fcgr2a | Low affinity immunoglobulin gamma fc region receptor iii | ND | 30 | - | - | 5.3 | 4.26E-03 |
| Crlf1 | Cytokine receptor-like factor 1 | 110 | 32 | 13.1 | 4.06E-04 | 5.1 | 4.22E-03 |
| C1qa | Complement C1Q subcomponent subunitA | 135 | 33 | 11.2 | 9.39E-05 | 5.0 | 1.43E-03 |
| Trem2 | Triggering receptor expressed on myeloid cells 2 | 68 | 35 | 22.3 | 2.64E-03 | 4.8 | 7.16E-03 |
| Cxcl9 | Chemokine (C-X-C motif) ligand 9 | 301 | 36 | 6.7 | 7.44E-09 | 4.6 | 5.39E-03 |
| Socs3 | Suppressor of cytokine signaling 3 | 239 | 37 | 7.7 | 1.66E-06 | 4.6 | 1.09E-02 |
| Gadd45a | Growth arrest and DNA damage-inducible protein gadd45 alpha | 287 | 38 | 6.8 | 5.03E-25 | 4.6 | 3.03E-04 |
| C1qc | Complement c1q subcomponent subunit c | 235 | 39 | 7.7 | 2.65E-04 | 4.5 | 2.99E-03 |
| Ly49si2 | Immunoreceptor ly49si2 | ND | 42 | - | - | 4.5 | 2.92E-02 |
| RT1-DA | RT1 class II, locus Da | 307 | 43 | 6.7 | 5.88E-17 | 4.3 | 2.45E-03 |
| Tgfbr1 | Transforming growth factor, beta receptor 1 | 528 | 44 | 4.6 | 5.23E-03 | 4.2 | 4.92E-03 |
| Ecel1 | Endothelin converting enzyme-like 1 | 51 | 45 | 27.0 | 1.52E-93 | 4.1 | 4.87E-05 |
| Cx3cr1 | Chemokine (C-X3-C motif) receptor 1 | 219 | 47 | 8.1 | 1.08E-05 | 3.9 | 3.40E-03 |
| RT1-BB | RT1 class II, locus Bb beta chain | 308 | 48 | 6.7 | 5.23E-06 | 3.9 | 1.76E-03 |
| Cxcl10 | Chemokine (C-X-C motif) ligand 10 | 251 | 50 | 7.5 | 5.36E-03 | 3.8 | 1.88E-02 |
Rank indicates highest significant fold changes determined by each method in descending order. In order to obtain a numeric FC for genes with infinite fold changes, a read count of one was ascribed to the naïve samples.
NS- Non significant; ND- not detectable by exon arrays due to lack of probes in the core or extended confidence level or not detectable by RNA-Seq due to the existence of paralogous rat genes sharing high sequence homology leading to reads being classified as ambiguous and discarded from the analysis.
Figure 8Functional analysis of differentially expressed genes after SNT as determined by RNA-seq (50 M) and exon arrays. A) Distribution of DE genes according to respective protein classes is similar for both datasets. B) Top Biological Functions/“Diseases and Disorders” assigned to DE genes largely overlap between the two datasets. Ci, Cii) Statistically overrepresented “canonical pathways” rank differently between the datasets, with top pathways in exon arrays being mostly related to immune function (Ci), while in RNA-seq, neuronal pathways are more represented (Cii).