| Literature DB >> 26861863 |
Ebun Omoyinmi1, Raja Hamaoui2, Annette Bryant3, Mike Chao Jiang4, Trin Athigapanich5, Despina Eleftheriou6, Mike Hubank7, Paul Brogan8, Patricia Woo9.
Abstract
BACKGROUND: Various pathways involved in the pathogenesis of sJIA have been identified through gene expression profiling in peripheral blood mononuclear cells (PBMC), but not in neutrophils. Since neutrophils are important in tissue damage during inflammation, and are elevated as part of the acute phase response, we hypothesised that neutrophil pathways could also be important in the pathogenesis of sJIA. We therefore studied the gene profile in both PBMC and neutrophils of sJIA patients treated with tocilizumab.Entities:
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Year: 2016 PMID: 26861863 PMCID: PMC4746827 DOI: 10.1186/s12969-016-0067-7
Source DB: PubMed Journal: Pediatr Rheumatol Online J ISSN: 1546-0096 Impact factor: 3.054
Clinical features of patients and response to tocilizumab
| Sample code | 37-5 | 37-7 | 50-2 | 50-4 | 51-1 | 51-3 | 53-2 | 53-4 |
| Sample type | N | N | P, N | P, N | P, N | P, N | P, N | P, N |
| Conditions | Pre-TOC | 12 weeks TOC | Pre-TOC | 12 weeks TOC | Pre-TOC | 12 weeks TOC | Pre-TOC | 12 weeks TOC |
| Ethnicity | Caucasian | Caucasian | Asian | Caucasian | ||||
| Gender | Male | Female | Male | Female | ||||
| Age at onset (AAO) | 7 years | 9 years | 14 years | 4 years | ||||
| Disease duration | 3.4 years | 7 years | 10 months | 9 months | ||||
| Fever | Yes | No | No | No | No | No | Yes | No |
| Rash | Yes | No | No | No | No | No | No | No |
| Total WCC (lymphocytes) x 109/L | 22.22 (1.36) | 10.76 (4.99) | 10.51 (1.28) | 5.58 (2.67) | N/D | 5.84 (2.52) | 13.98 (4.80) | 8.09 (4.03) |
| CRP (mg/l), 0-20 normal range | 84 | <5 | 24 | <5 | 13.6 | <3 | 56 | <5 |
| ESR (mm/h), 0–10 normal range | 65 | <1 | 29 | 3 | N/D | 1 | 35 | <1 |
| Joint active | 6 | 0 | 22 | 10 | 6 | 0 | 51 | 0 |
| Joint limited motion | 6 | 0 | 30 | 12 | 7 | 0 | 49 | 3 |
| Parental VAS | N/D | 0 | 6.8 | 1 | 2.8 | 0.4 | 5 | 2.2 |
| Physician VAS | 5 | 0 | 8 | 4 | 3 | 1 | 8 | 0.4 |
| CHAQ | 1.75 | 0 | 1.5 | 0.38 | 0 | 0 | 1.13 | 0.5 |
| ACR | - | 90 | - | 90 | - | 90 | - | 90 |
The demographics, clinical and laboratory parameters of the patients whose peripheral blood was used in this study are shown. For each patient, baseline measurements were taken before starting tocilizumab (TOC) treatment, and 12 weeks later. Normal range for total white cell count (WCC) is 4.5–13.5 × 109/L and for lymphocytes 1.5–7 × 109/L. The different types of samples taken/analysed were: PBMC = P; and Neutrophils = N. There are 3 paired samples for PBMC (P) and 4 for neutrophils (N). Response to treatment was determined by ACR90 response definition of improvement in juvenile arthritis [47], plus normalisation of the erythrocyte sedimentation rate (ESR) and C reactive protein (CRP). N/D not determined, VAS visual analogue score, CHAQ child health assessment questionnaire, ACR American College of Rheumatology
Fig. 1Heatmaps illustrating supervised hierarchical clustering analysis of the probe sets differentially expressed in PBMC (a) and Neutrophils (b) from sJIA patients before and after tocilizumab treatment (3 sJIA patients for PBMC samples and 4 sJIA patients for neutrophils). The differential expression of any probe set for a given gene was used as a surrogate for differential gene expression. Samples were collected at time points zero, and 3 months post treatment. All were responders with ACR90 (Table 1). Clustering analysis was performed in GeneSpring (GX11) as described in Methods. Normalized expression is colour coded in which red is high and blue is low relative to the median of the ‘before’ treatment samples. In the heatmaps, each column represents a sample and each row represents a gene. Full list of all genes in clusters are available in Additional files 1 and 2. However, listed below are genes with fold change (FC) ≥3 found within the clusters in the order of decreasing FC values. A cluster 1: Genes with significant decrease (FC ≥ 3 fold) after treatment with tocilizumab in PBMC: FCGR3B, KCNJ15, CHI3L1, ADM, PROS1, SOCS3, CHI3L1, and NRG1. A cluster 2: there were genes with increased expression on the heatmap but these were all less than 3 fold change. B cluster 1: Genes with significant decrease (FC ≥ 3 fold) after treatment with tocilizumab in neutrophils: ARHGAP24, CLEC5A, TAF8. B cluster 2: Genes with significant increase (FC ≥ 3 fold) after treatment with tocilizumab in neutrophils: CD3D, LOC129293, AQP3, LAT, LY9, HLA-DPB1, TRA@, GFI1B, BCL11B, PASK, POLR3E, DOK2, AFG3L2, MEX3C, PASK, ENTPD6, KIAA0114, FAM102A, RCAN3, ATXN10, TNFAIP8L1, ABHD14B, RPL10A, GPR44, ATP6V0E2, ADARB1, APEX1, C17orf61, KLHL3, MRPS24, POU6F1, LDLRAP1, NDUFB2, SLC25A38, UBQLN4, KLF10, C22orf32, AKR1B1, PPP3CC, GSS, CAMK1, EIF3C, EEF2K, ILF3, RPL13, SLC25A6, THEM4, RPL13A, RDH14, KCTD15, DNMT1, TTC4, KIAA0748, AKR7A2, PLSCR3, ZNF639, KIAA1024, UNC84A, IARS, C11orf31, PVT1, DNPEP, LOC202781, LAGE3, NHP2, LSG1, SIRPG, SLC35B2, EEF2K, AES, TMEM14A, PAN2, DDX39, NOC4L, CAMSAP1, LOC100131731, BHLHE40, ECHS1, CLNS1A, CPSF1, LOC93622, TOMM5, COX6C, NLRC3, EIF3B, CIRH1A, OLIG1, ZBTB40
Top ten IPA pathways that were found to be significantly altered in PBMC and neutrophil samples from sJIA patients responding to tocilizumab
| PBMCa | Neutrophils |
|---|---|
| Oncostatin M signalling (3) | Mitochondrial dysfunction (20) |
| Natural killer cell signalling (5) | EIF2 signalling (23) |
| Glutamine biosynthesis I (1) | NRF2-mediated oxidative stress response (20) |
| B Cell receptor signalling (6) | Calcium-induced T lymphocyte apoptosis (9) |
| PPARα/RXRα activation (6) | mTOR signalling (20) |
| Thyroid hormone biosynthesis (1) | Sucrose degradation V (Mammalian) (3) |
| Regulation of eIF4 and p70S6K signalling (16) | |
| TCA cycle II (Eukaryotic) (5) | |
| CTLA4 signalling in cytotoxic T lymphocytes (11) | |
| Protein ubiquitination pathway (24) |
aThere were only 6 significant canonical pathways for this condition. In brackets are the numbers of genes from the input file in each pathway
Fig. 2Genes associated with oxidative phosphorylation (mitochondria function). a Enrichment plot of KEGG_Oxidative phosphorylation gene set identified by GSEA. Middle section (black bars) illustrate the position of the genes belonging to the gene set in the context of all the genes on the Affymetrix U133 plus 2.0 array. The enrichment score (ES) plotted as a function of the position within the ranked list of array genes is shown as a green line. The ranked list metric shown in gray illustrates the correlation between the signal to noise values of all individually ranked genes according to the neutrophil samples of the ‘before’ and ‘after’ tocilizumab treatment (experimental conditions). b on the left is GSEA-derived heat map of the 110 leading edge genes that correlates with response to tocilizumab and contributing to the enrichment score; on the right is the top 20 genes that includes some of the genes mapped by IPA to mitochondria dysfunction pathway (in red asterisks). Signal intensities are illustrated by varying shades of red (increased) and blue (decreased). c Quantitative real-time polymerase chain reaction (qRT-PCR) validation of differentially expressed genes (NDUFB2, COX6C, LAT) observed in this microarray experiment. The relative fold change of both microarray (solid bar) and qRT-PCR (open bars) are shown. The data for qRT-PCR are the average of 3 independent experiments done on the same sample