Abstract
Sarcoidosis is a complex systemic granulomatous disorder of unknown etiology. Genome-wide association studies have not been able to explain a causative role for nucleotide variation in its pathogenesis. The goal of the present study was to identify the gene expression profile and the cellular pathways altered in sarcoidosis monocytes via RNA-sequencing. Peripheral blood monocytes play a role in sarcoidosis inflammation. Therefore, we determined and compared the transcriptional signature of monocytes from peripheral blood from sarcoidosis patients and healthy controls via RNA-sequencing. We found 2,446 differentially expressed (DE) genes between sarcoidosis and healthy control monocytes. Analysis of these DE genes showed enrichment for ribosome, phagocytosis, lysosome, proteasome, oxidative phosphorylation and metabolic pathways. RNA-sequencing identified upregulation of genes involved in phagocytosis and lysosomal pathway in sarcoidosis monocytes, whereas genes involved in proteasome degradation and ribosomal pathways were downregulated. Further studies are needed to investigate the role of specific genes involved in the identified pathways and their possible interaction leading to sarcoidosis pathology.
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Introduction
Sarcoidosis is a multisystem granulomatous disease of unknown etiology characterized by granuloma formation in barrier organs such as lungs, skin, and eyes. It results in significant morbidity and mortality, primarily from respiratory failure in the US1,2,3. It is thought that exposure to the airborne antigens in a genetically susceptible host leads to disease initiation2,3,4,5. Granulomatous inflammation in sarcoidosis is characterized by activated macrophages as well as CD4+ T cell infiltration with predominant Th1 cytokine expression6, 7.
Several studies attempted to identify genetic risk of developing sarcoidosis using various techniques such as a candidate gene approach, microarray of candidate genes, and genetic linkage analysis3, 8, 9. Several genes were linked to sarcoidosis susceptibility including major histocompatibility complex (MHC) and HLA antigens class I and II such as loci HLA-B8 and HLA-DRB13, 8, 10. Similar candidate gene approaches additionally identified susceptibility genes involved in antigen processing, antigen presentation, macrophage and T-cell activation, and genes involved in injury repair11,12,13,14.
The similarities of sarcoidosis to infectious granulomatous diseases and its association with major histocompatibility loci suggest a major role for inciting microbial triggers15, 16. The presence of activated macrophages and the expansion of oligoclonal T cells and B cells suggest an important role of immunity in this disease2, 17. Several lines of evidence indicate that aberrant functioning of macrophages, dendritic cells, and monocytes may underlie the Th1 skewness in sarcoidosis18, 19. Similarly, previous studies from our laboratory demonstrated that sustained activation of p38 MAPK is associated with a lack of a negative feedback loop through kinase phosphatase (MKP)-1 leading to persistent inflammation in macrophages19, 20. Inhibition of inflammatory signaling in macrophages and monocytes led to modulation of activated T cells and their responses to mitogens19.
Our goal was to unravel the transcriptional signature, and to identify the genes and associated pathways that may be dysregulated in monocytes in sarcoidosis. To this end we interrogated the poly-adenylated fraction of the transcriptome via RNA-sequencing, thus reaching unprecedented depth in the analysis of the gene regulation events that are altered. To our knowledge, this is the first RNA-seq study to compare the transcriptional signature of peripheral blood monocytes from sarcoidosis patients and healthy controls.
Results
Differential gene expression and pathway analysis in monocytes
The study included two groups comprising of 20 patients with sarcoidosis and 20 healthy controls. The subject demographics are displayed in Table 1. There was no significant difference in age and BMI between patients and healthy controls (p > 0.05). To reduce the effect of potential confounding factors associated with variation in ancestry proportions, we included subjects with the same self-reported race. All subjects were non-smokers, and none was on immune-suppressive medication. All sarcoidosis subjects had lung involvement with chest radiograph stage 2 or 3. We prepared RNA-seq libraries from mRNA isolated from the peripheral blood monocytes obtained from sarcoidosis patients and healthy controls. The schematic study design of RNA-seq library preparation, work flow and analysis are shown in Supplementary Fig. S1. Alignment of the filtered reads to the reference human genome hg19 showed about 90% total aligned reads per RNA-seq library sample.
First, we compared the DE genes between the healthy control and sarcoidosis monocytes using DEseq2. Figure 1a shows the distribution of log2-fold change and expression level for the 8,069 genes expressed in these samples. The DE genes (2,446; FDR < 5%) between sarcoidosis and healthy control monocytes are highlighted in red. Among DE genes, 1,221 were downregulated whereas 1,225 were upregulated in sarcoidosis monocytes. To determine the pathways that are modulated in the sarcoidosis monocytes compared to healthy control monocytes, we performed KEGG pathway analysis using iPathwayGuide and the Gene trail tool on the DE genes (log2-fold change of 0.6 and FDR < 5%). Figure 1b shows the score plot of pathways using impact analysis. Impact analysis uses two types of evidence: i) the over-representation of DE genes in a given pathway and ii) the perturbation of that pathway computed by propagating the measured expression changes across the pathway topology21,22,23. The pathway topologies consist of genes and their interactions that are obtained from the KEGG database24,25,26,27. Significant pathways with FDR < 5% are shown in red and non-significant in black (Fig.1b). The size of the circle is proportional to the number of genes involved in that pathway. Topological analysis identified 103 pathways significantly enriched in sarcoidosis as compared to healthy controls. The most significant pathways were: ribosome (FDR = 1 × 10−24), metabolic pathways (FDR = 5.1 × 10−14), oxidative phosphorylation (FDR = 4.0 × 10−6), lysosome (FDR = 1.7 × 10−5), FcγR-mediated phagocytosis (FDR = 1.5 × 10−4), phagosome (FDR = 1.9 × 10−2), and proteasome (FDR = 1.9 × 10−2).
Furthermore, pathway analysis identified that genes involved in monocyte activation, inflammation, and innate and adaptive immune responses were highly enriched in sarcoidosis monocytes. Especially, gene expression was increased in sarcoidosis monocytes for various pathways involved in phagosome, lysosome, monocyte activation, and leukocyte migration and trafficking. In contrast, genes involved in proteasome and ribosomal biogenesis were found to be downregulated in sarcoidosis monocytes as compared to control monocytes. Figure 2 shows the heat-map of sarcoidosis DE genes involved in three of the significant (FDR < 5%) pathways: (a) metabolic pathway (most of the genes involved in this pathway were downregulated), (b) phagocytosis (most of the genes involved in this pathway were upregulated), (c) proteasome pathway (genes involved in this pathway were found to be downregulated).
The top enriched pathway was ribosome pathway (Fig. 3). The genes involved in this pathway were downregulated as compared to control monocytes. Figure 4 shows lysosome pathway that was highly enriched in sarcoidosis monocytes. Most of genes related to lysosomal acid hydrolases and lysosomal membrane proteins were found to be upregulated. Whereas, the genes involved in proteasome pathway were found to be downregulated (Fig. 5). The genes involved in the assembly of regulatory and core particle of proteasome were downregulated. The immunoproteasome gene PA28γ (also known as PSME3) that encodes the gamma subunit of 11 S regulator of immunoproteasome was downregulated in sarcoidosis monocytes.
Validation of RNA-seq data via qRT-PCR
To validate the RNA-seq data, we evaluated the expression levels of selected DE genes. RNA was isolated from the monocytes obtained from an independent set of sarcoidosis patients (n = 10) and healthy controls (n = 10) and was subjected to qRT-PCR using selected primers. Our RNA-seq data showed that the phagocytosis, oxidative phosphorylation, ribosomal, and inflammatory pathways are impacted in sarcoidosis. Among DE genes involved in phagocytosis, we chose the gene encoding ATPase H+ transporting accessory protein 1 (ATP6AP1) for validation. This gene encodes an essential multitasking protein important for housekeeping acidification of membrane-bound compartments including acidifying endosomes, lysosomes, phagosomes, compartments for uncoupling receptors, and autophagosomes and it is involved in oxidative phosphorylation28. We selected the gene encoding the lysosomal membrane proteins (LAMP)-2, which is integral part of lysosomal membrane29 and was highly expressed in sarcoidosis. Furthermore, we chose the gene encoding cytochrome B-245 β chain that is an integral part of oxidative phosphorylation and its variation has been reported in chronic granulomatous disease30. Serpin family member 1 (SERPINA1) encodes peptidase inhibitor clade 1, which is α-antitrypsin precursor31. We also chose two genes from ribosomal pathways for validation. Genes encoding the protein SA of 40S subunit (RPSA), which is involved in ribosomal assembly, and the ribosomal protein L10a (RPL10A), which is the component of 60S subunit were selected for further validation.
We validated selected genes from those pathways using qRT-PCR using primers for the following genes, ATP6AP1, LAMP2, CYBB, SERPINA1, RPSA and RPL10A. The relative gene expression levels for ATP6AP1, CYBB, LAMP2, and SERPINA1 were significantly higher in sarcoidosis monocytes as compared to healthy monocytes (Fig. 6a–d). Additionally, both RPSA and RPL10A genes encoding ribosomal proteins were found to be significantly downregulated in sarcoidosis monocytes as compared to healthy monocytes (Fig. 6e and f). The relative gene expression data are presented as box plots as mean ± SEM from ten subjects with sarcoidosis monocytes and ten healthy controls monocytes. *Represents a p value < 0.05 and **a p < 0.001 using a paired student t-test. These qRT-PCR data confirm in independent sets of patients and controls the RNA- seq data.
Discussion
It is well accepted that sarcoidosis is a polygenic and multifactorial disease32. Numerous association studies attempted to identify genetic susceptibility in sarcoidosis and various genes were found to increase the risk of developing this disease, among which the chemokine receptors, the tumor necrosis factor (TNF)-α, and several HLA loci and MHC class II antigens3, 32. Despite identifying some genes that may contribute to the risk of developing sarcoidosis or modify its severity3, 33, none have fully explained the complex nature of this disease. Several studies using heterogeneous samples, including peripheral blood, tissue samples or BALs, attempted to identify a gene signature in this disease34,35,36. Here, we investigated and compared the transcriptional profile of monocytes, one important player in the formation of multi-nucleated giant cells in sarcoidosis granuloma37. Our aim was to determine the transcriptional responses of peripheral blood monocytes and to unravel the cellular mechanisms responsible for the immunopathogenesis of sarcoidosis.
We found that 2,446 genes are significantly differentially expressed in monocytes between sarcoidosis and healthy controls. Functional analysis of DE genes showed the enrichment for various critical cellular pathways including ribosome and metabolic pathways, the phagosome and phagocytosis, lysosome, oxidative phosphorylation, proteasome, purine metabolism and cellular pathways involved in the inflammatory, innate and adaptive immune response.
One of the highly significant processes was the ribosomal pathway (FDR = 1 × 10−24). In sarcoidosis monocytes 62 genes related to ribosome were significantly downregulated compared to control monocytes (Fig. 3). In contrast, genes encoding mitochondrial ribosomes were upregulated. This might be due to different regulation between mitochondrial and cytosolic ribosomes. The biogenesis of ribosomes is an extremely energetically expensive cellular process that has long been linked to human health and disease. More recently, it has been shown that ribosome biogenesis is intimately linked to multiple cellular signaling pathways and that defects in ribosome production can lead to a wide variety of human diseases38. This novel pathway previously has not been described in sarcoidosis. Further studies are needed to determine the functional contribution of ribosomal pathways in sarcoidosis pathology.
We found about 50 DE genes that are involved in phagosome and phagocytosis in sarcoidosis monocytes compared to control monocytes. Among these genes, several were related to pattern recognition molecules, inflammatory signaling, leukocyte migration, and trafficking. In particular, genes encoding TLR2, RIPK2, CLEC7A, NLRP3 and MAP2K1 were upregulated. Similarly, we found genes involved in cytokine-cytokine receptor (CCR) signaling, and lipid metabolism that were aberrant in sarcoidosis35, 39, 40.
Another important pathway related to sarcoidosis pathology is the lysosomal pathway5. We identified a large number of genes involved in lysosomal acid hydrolases, lysosomal membrane proteins and various genes related to the function of lysosomes such as the V-ATPase complex that were upregulated in sarcoidosis monocytes as compared to healthy monocytes. Lysosomes are subcellular organelles found in all animal cells that digest cellular debris, damaged organelles and invading microorganisms. Lysosomal membrane proteins maintain the integrity of lysosomes and regulate lysosomal trafficking, fusion and intralysosomal pH. Aberrant lysosomal function in sarcoidosis has long been postulated41. One conventional immune modulatory therapies in sarcoidosis is Chloroquine42 which has been shown to inhibit lysosomal function and modulates autophagy43. Surprisingly, the LAPTM4B gene, which is involved in lysosomal machinery and has been shown to interact with ceramide to facilitate its removal from the late endosomal organelles was downregulated44 (Fig. 4). In contrast to genes involved in lysosomal pathways, genes involved in proteasome and immune-proteosome assembly were found to be downregulated in sarcoidosis monocytes (Fig. 5). Proteasomes are macromolecular proteins that are responsible for degradation of intracellular proteins in an ATP dependent manner45. Proteasomes degrade regulatory proteins and misfolded or damaged proteins45. Along with lysosomal function, proteasomes play a crucial role in protein homeostasis.
We identified several major dysregulated pathways related to metabolism and oxidative phosphorylation in sarcoidosis monocytes. There were 143 differentially expressed genes related to metabolism. Among genes involved in metabolism, we found a predominant downregulation of genes involved in purine metabolism (FDR = 2.9 × 10−7). A major set of metabolic genes was involved in oxidative phosphorylation and mitochondrial electron transfer chain. Recently, it has been recognized that metabolic reprogramming is a prerequisite for inflammation and immunological responses to diverse stimuli, both in macrophages and lymphocytes46,47,48. However, most of these studies were done in animal models or isolated macrophages and lymphocytes46. In the current study, we also found several differentially expressed genes involved in fatty acid and cholesterol metabolism in sarcoidosis monocytes.
We found that various genes involved in cholesterol synthesis and β-oxidation pathways, including acetyl CoA transferases, were lower expressed in sarcoidosis monocytes as compared to healthy monocytes. Other genes involved in lipid metabolisms, including several genes involved in mitochondrial β-oxidation (e.g. various isoforms of Acetyl-Coenzyme A acetyltransferases (ACATs) appear to be unique in sarcoidosis monocytes. No previous studies have identified these genes being associated with the differentiation of human monocytes or macrophages49,50,51. Previously, in an independent study using 1H nuclear magnetic resonance (NMR)-based untargeted metabolomic approach, our group showed aberrant metabolism in sarcoidosis52. In that study, we found increased levels of several intermediates related to fatty acid metabolism and TCA cycle in sera of sarcoidosis subjects52. Our current RNA-seq data confirms our previous metabolic data by identifying specific genes involved in mitochondrial β-oxidation, e.g. ACATs.
Our RNA-sequencing results demonstrate that sarcoidosis monocytes exhibit increased gene expression for phagocytosis and lysosomal genes that may result in the increased uptake of extracellular particles and lysosomal degradation. In contrast, we found a significant down regulation of genes involved in proteasome degradation in sarcoidosis monocytes compared to control monocytes. This may indicate that the accumulation of intracellular proteins or phagocytic degradation products may be the cause of the persistent inflammation in sarcoidosis. Further studies need to delineate in detail the functional role of the identified changes in gene expression in sarcoidosis. This dataset will be useful to develop a model organism for sarcoidosis disease or to investigate potential target drugs.
Methods
Subjects
The Committee for Investigations Involving Human Subjects at Wayne State University approved the protocol for obtaining blood by phlebotomy from control subjects and patients with sarcoidosis. The IRB number for this study is 055208MP4E. All methods were performed in accordance with the relevant guidelines and regulations. Informed consent was obtained from all subjects enrolled for the study. Sarcoidosis diagnosis was based on the ATS/ERS/WASOG statement5. The criteria for enrollment in the diseased group were: (i) a compatible clinical/radiographic picture consistent with sarcoidosis, (ii) histologic demonstration of non-caseating granulomas on the tissue biopsy, and (iii) exclusion of other diseases capable of producing a similar histologic or clinical picture, such as infection by fungus or mycobacteria. Subjects excluded were: (i) smokers, (ii) those receiving immune suppressive medication (defined as corticosteroid alone and/or immune modulatory medications), (iii) those with positive microbial culture in routine laboratory examinations or viral infection; or (iv) those with known hepatitis or HIV infections or any immune suppressive condition. The criteria for enrollment in the control group were: (i) absence of any chronic respiratory diseases, (ii) lifetime nonsmoker, (iii) absence of HIV or hepatitis infection. A total of 20 patients with sarcoidosis and 20 controls participated in this study.
Isolation of PBMCs and purification of monocytes
PBMCs were isolated from heparinized blood using Ficoll-Histopaque (Sigma, St. Louis, MO) density gradient separation method as previously described19, 20. CD14 + monocytes were purified from PBMCs by using the MACS monocyte isolation kit (Miltenyl Biotech, San Diego, CA) according to the manufacturer’s instructions. The purity of enriched monocytes was evaluated by flow cytometry using fluorochrome-conjugated CD14 antibody; the purity of monocytes was about 95%.
mRNA isolation
Purified monocytes were incubated overnight in endotoxin-free RPMI 1640 medium (HyClone) supplemented with L-glutamine (Life Technologies), penicillin/streptomycin (Life Technologies), and FCS (HyClone) at 37 °C and in air containing 5% CO2. Cells were washed twice with ice cold PBS and pellets were collected by centrifuging at 2000 rpm. Collected pellets were lysed with Lysis/Binding Buffer (Ambion) and frozen at −80 °C. Poly-adenylated mRNAs were subsequently isolated from thawed lysates using the Dynabeads mRNA Direct Kit (Ambion) following the manufacturer’s instructions.
RNA-seq library preparation and sequencing
RNA-seq libraries were prepared using the NEBNext ultradirectional library preparation protocol (New England BioLabs, Ipswich, MA). The individual libraries were quantified using the KAPA real-time PCR system, following the manufacturer instructions and using a custom-made series of standards obtained from serial dilutions of the phi-X DNA53. Individually barcoded RNA-seq libraries were pooled in equimolar quantities. RNA-seq library quality was assessed using an Agilent Bioanalyzer. A pooled library of 20 samples (10 sarcoidosis monocytes, and 10 healthy monocytes) was sequenced on the Illumina Next-Seq 500 (75 cycles, PE).
RNA-seq data analysis, differential gene expression, and canonical pathway analysis
RNA-seq data were analyzed using the Illumina Basespace RNA express application (app). In this app, the sequencing reads were aligned to the reference human genome hg19 using STAR aligner and differentially expressed (DE) gene data was obtained with the DEseq2 analysis tool54, 55. Gene Trail and iPathwayGuide tools were used to identify the cellular pathways and gene ontology categories that were overrepresented based on the list of DE genes (FDR < 5%). The pathways with FDR < 5% were considered to be significant. The type of FDR adjustment used was Benjamini and Hochberg. Heat maps were generated using the DEseq2 package in R-studio.
RNA Extraction and Quantitative Reverse Transcriptase/Real Time-PCR (qRT-PCR)
To validate the RNA-seq data, we performed qRT-PCR of selected genes enrolling 10 independent subjects in each study group. RNA was isolated from monocytes of 10 different sarcoidosis patients and 10 healthy controls and qRT-PCR was done as described previously56. Relative mRNA expression levels were calculated and normalized to β-actin using delta Ct method. Statistical analysis was done using paired, two-tailed Student’s t-test The following primers were used for PCR reactions: β-actin forward; 5′-CATGTACGTTGCTATCCAGGC 3′and reverse; 5′ CTCCTTAATGTCACGCACGAT-3′, ATP6AP1 forward; 5′-CAAGTCCGAAGATGTCCCATAC-3′ and reverse; 5′- CTTGTACGCCACAGAGAAGTT-3′; CYBB forward; 5′-CTGGACAGGAATCTCACCTTTC-3′ and reverse; 5′-GCCTCCTTCAGGGTTCTTTATT-3′, SerpinA1 forward; 5′-GAAGGTCTGCCAGCTTACAT-3′ and reverse; 5′-GCAGCTTCAGTCCCTTTCT-3′, LAMP2 forward; 5′-CCAACACTACTGGGATGTTCT-3′and reverse, 5′-GCAGACAAGTATCATTGCCATT-3′; RPSA forward; 5′-TAGGTGGCACCAATCTTGAC-3 and reverse; 5′-GCAGCAAACTTCAGCACAG-3, RPL10A forward, 5′-GCACTGTGACGAGGCTAAG-3′ and reverse; 5′-TTGTGTGTGAGCAGGGAAG-3′.
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Acknowledgements
This work was supported by a grant (R01HL113508 (LS) and American lung Association (LS) and as well as the Department of Medicine and the Center for Molecular Medicine and Genetics, Wayne State University School of Medicine (LS).
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J.T. contributed to the study design, conducted the experiments, analyzed the results and in writing the manuscript. P.F. performed qRT-PCR experiments. A.A. conducted the RNA-seq library samples run on Illumina Nextseq500. F.L. and R.P. reviewed the data analysis and the manuscript. L.S. conceived and designed the study, participated in all areas of the research such as patient selection and oversaw patient enrollment, data analysis and writing of the manuscript.
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Talreja, J., Farshi, P., Alazizi, A. et al. RNA-sequencing Identifies Novel Pathways in Sarcoidosis Monocytes. Sci Rep 7, 2720 (2017). https://doi.org/10.1038/s41598-017-02941-4
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DOI: https://doi.org/10.1038/s41598-017-02941-4
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