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Frontiers in Immunology logoLink to Frontiers in Immunology
. 2021 Dec 15;12:794800. doi: 10.3389/fimmu.2021.794800

Novel Insights Into Gene Signatures and Their Correlation With Immune Infiltration of Peripheral Blood Mononuclear Cells in Behcet’s Disease

Haoting Zhan 1,2,, Haolong Li 1,2,, Linlin Cheng 1,2, Songxin Yan 1,2, Wenjie Zheng 3, Yongzhe Li 1,2,*
PMCID: PMC8714896  PMID: 34975900

Abstract

Background

Behcet’s disease (BD) is a chronic inflammatory disease that involves systemic vasculitis and mainly manifests as oral and genital ulcers, uveitis, and skin damage as the first clinical symptoms, leading to gastrointestinal, aortic, or even neural deterioration. There is an urgent need for effective gene signatures for BD’s early diagnosis and elucidation of its underlying etiology.

Methods

We identified 82 differentially expressed genes (DEGs) in BD cases compared with healthy controls (HC) after combining two Gene Expression Omnibus datasets. We performed pathway analyses on these DEGs and constructed a gene co-expression network and its correlation with clinical traits. Hub genes were identified using a protein–protein interaction network. We manually selected CCL4 as a central hub gene, and gene-set enrichment and immune cell subset analyses were applied on patients in high- and low-CCL4 expression groups. Meanwhile, we validated the diagnostic value of hub genes in differentiating BD patients from HC in peripheral blood mononuclear cells using real-time PCR.

Results

Twelve hub genes were identified, and we validated the upregulation of CCL4 and the downregulation of NPY2R mRNA expression. Higher expression of CCL4 was accompanied by larger fractions of CD8 + T cells, natural killer cells, M1 macrophages, and activated mast cells. Receiver operator characteristic curves showed good discrimination between cases and controls based on the expression of these genes.

Conclusion

CCL4 and NPY2R could be diagnostic biomarkers for BD that reveal inflammatory status and predict vascular involvement in BD, respectively.

Keywords: Behcet’s disease, gene expression omnibus, biomarkers, diagnosis, immune cell infiltration

Introduction

Behcet’s disease (BD), considered a variable vessel vasculitis, is characterized by a wide spectrum of clinical features including mucocutaneous lesions, non-granulomatous uveitis, lower extremity vein/cerebral venous sinus thrombosis, aortic aneurysms, and neurological involvement (1). The diagnostic criteria of the international study group for BD requires oral aphthous as the entry symptom, with the concurrence of genital ulcers, ocular or vascular involvement, as well as pathergy test positivity, which renders an extreme specificity (97.5%) (2). Nonetheless, its dynamic manifestation with disease relapse and remission periods, distinct population and sexual clinical expression, and disease type subsets pose grand challenges in identifying novel biomarkers for the diagnosis of BD.

Genetic risk factors impact BD pathogenesis, as the occurrence of BD is 5.78 times higher in HLA B51/B5 carriers than in noncarriers (3). BD susceptibility loci, for instance IL-10, STAT, and IL-23R polymorphisms (4, 5), indicate the predominant pathogenetic role of inflammation in the disease etiology. MicroRNA (miRNA), influenced by inflammatory signaling pathways, regulates mRNA expression through pre- and post-translational processes, and miRNA variants have shed light on disease status (6). A recent study in Turkey identified the FAS rs1800682 polymorphism and mir146a as protective factors against BD (7). Ibrahim and Jadideslam confirmed the association between mir146a expression and disease activity, with involvement of the eyes and vasculature (8, 9). Downregulation of miR-155 and that of miR146a likely exert their effects by disturbing Th1/Th17 cell and cytokine homeostasis (10). Profiling analysis of miRNA expression has also identified epigenetic pathways that are enriched in vascular biology, the immune response, and apoptosis (11). Long non-coding RNAs (lncRNAs) are also involved in BD etiology, with the homozygous T allele of rs9517723 in lncRNA LOC107984558 correlated with ocular and central nervous system (CNS) lesions, the induction of UBAC2 expression, and overactivation of the ubiquitination-related pathway (12). However, we could not only concentrate on individual gene and ignore the potential interactions between them which might be the backbone of intracellular communications and etiology pathways.

Hub genes are highly connected nodes between co-expression network, exploring of which is vital for seeking diagnostic biomarkers or therapeutic drug targets and clarify the biological regulation process in disease conditions. In this study, we utilized weighted gene co-expression (WGCNA) network and protein-protein interaction (PPI) network to identify hub genes. Since WGCNA analysis could provide a systematic insight into co-expression gene sets and their relationships with clinical phenotypes, we invoked this algorithm to establish a scale-free network using adjacency matrix from which topological overlap matrix and corresponding dissimilarity were converted to differentiate gene co-expression modules (13). For subsequent analysis, we rigorously chose the turquoise module as a candidate module which gains highest correlation coefficient and significant corresponding p value with clinical features among patients suffering Behcet’s disease and healthy controls. Recently, a few of studies have comprehensively utilize WGCNA to filtrate synergistically altered gene sets in autoimmune diseases (1418). Up till now, amassed structure and function of single protein fragmented our comprehension of their intracellular interactions and pathogenesis pathways. By conducting PPI program, we could easily attain a tighter protein-based co-expressed DEG channel and a more integrated interaction network, the connectivity of which is ranked by combined score calculated from online sources including text-mining, experiments, databases and genomic context information, etc. (19). To predict hub genes bridged through networks, we employed MCODE plugin to visualize intensively related modules and CytoHubba package to screen out hub nodes avail of functional enrichment.

Despite the body of research elucidating the genetic variation contributing to BD, a deep exploration of its molecular mechanisms, interaction networks, and key pathways is lacking. In the present study, we aimed to uncover hub genes acting as biomarkers for the diagnosis, classification, and biological functions and networks of BD using bioinformatics methods and a validation cohort.

Materials and Methods

Dataset Acquisition and Normalization

Two microarray profiling datasets from peripheral blood mononuclear cells (PBMCs) (GSE70403 and GSE17114) were downloaded from the Gene Expression Omnibus (GEO) (http://www.ncbi.nlm.nih.gov/geo/) with the screening terms “Behcet Syndrome,” “Triple Symptom Complex,” “Behçet Disease,” “Behcet’s Disease,” “Behcet Disease,” “Adamantiades Behcet Disease,” and the organism “Homo Sapiens.” We merged the two datasets and eliminated batch effects utilizing the R package “sva” (20). Consequently, 14 healthy controls (HCs) from GSE17114 and 56 BD samples (15 from GSE17114 and 41 from GSE70403) were combined.

Differentially Expressed Gene and Enrichment Analysis

Differentially expressed gene (DEG) analysis was conducted using the “limma” package in R with the thresholds of an adjusted P < 0.05 and |log Fold Change (FC)| > 0.5 (21). To identify the biological functions and corresponding pathways involving these DEGs, we performed Gene Ontology (GO) enrichment and visualized the biological process, cellular component (CC), and molecular function (MF) categories and Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway analysis of signaling pathways using the R packages “clusterProfiler” and “enrichplot” (22). The significance cutoff criteria were P < 0.05 and FDR < 0.05.

Identification of Hub Genes and Construction of a Protein–Protein Interaction Network

We clustered PBMC-specific gene modules and established a co-expression network using the R package “WGCNA.” The obvious superiority of WGCNA analysis is to cluster DEGs into co-expression modules and ultimately to identify the specific gene module which is most relevant to clinical phenotype of Behcet’s disease. After shearing samples below the abline (h=20000), we constructed the co-expression network with soft thresholding power to obtain a higher level of scale free R2 and mean connectivity (13). In dynamic tree cut and module identification section, we altered 10 as the minimum number of gene modules. Utilizing the clinical traits data containing BD patients and healthy controls from GSE70403 and GSE17114, the gene significance (GS) and module membership (MM) were calculated. The relationship between the gene modules and clinical traits was represented in the form of a heatmap, from which we selected a module that was most clinically relevant.

With a threshold score of 0.150, we constructed a protein–protein interaction (PPI) network consisting of the DEGs using the STRING database (19). We have realized from previous reference (23) that the combined score from STRING database is meant to express an approximate confidence of the association between proteins being true based on every channel of evidence (depended on genomic context information, co-expression, text-mining, experiments and databases). Thus, we have ranked the first 10 interactions by the combined score in the PPI network. To attain a higher degree of connectivity, we applied CytoHubba and then extracted the key Hubba nodes ranked by maximum clique centrality (MCC) in Cytoscape software (24). Using the MCODE plugin (25), we sought dense regions divided by the critical value of a degree cut-off = 2, node score cut-off = 0.2, k-core = 2, and max. Depth = 100.

Furthermore, we united the first 10 genes ranked by the combined score in the PPI network and node genes filtered with an MCC > 5 in CytoHubba analysis, together with genes exported using the MCODE program, and 12 hub genes were ultimately identified for principal component analysis (PCA) in the GSE17114 dataset where Oğuz et al. have divided BD patients into three subtypes containing isolated mucocutaneous manifestations (MB), ocular involvement (OB), and large vein thrombosis (VB) subtypes in accordance with the major clinical symptoms provided by Xavier et al. (26, 27) (detailed methodology is provided in online Supplementary Materials ).

Correlation of Hub Genes and Vasculitis

Genecards (https://www.genecards.org/) was screened using the keyword “vasculitis.” We ranked the relevance score given by website and selected top 15 genes, then revisited the normalized gene expression data merged from Method 2.1 to see which genes from Genecards have the intersections with GEO datasets. Thus, we deleted 3 genes which were not documented in normalized gene expression data merged from GEO datasets (ADA2, HLA-DRB, C4A). Finally, the top 12 genes (PRTN3, PTPN22, CTLA4, DNASE1L3, MPO, MEFV, HLA-B, HLA-DPA1, HLA-DPB1, IL-10, TNF and CRP) were selected. According to the relevance score, the top 12 genes were selected. Moreover, we visualized the correlation heatmap using the R package “corrplot” (28).

Gene-Set Enrichment Analysis

To explore the biological functions of hub genes, we downloaded Gene-Set Enrichment Analysis (GSEA) software (http://software.broadinstitute.org/gsea/index.jsp). The patients were divided into high/low-expression groups according to the median expression of the central hub genes. Afterward, we selected “c2.cp.kegg.v6.1.symbols.gmt” as the reference gene-set in the Molecular Signatures Database (29) and diagrammed the KEGG enrichment plot of distinct expression groups by normalized P < 0.05 and FDR < 0.2.

Correlation Analysis of Gene Signatures and Immune Cells

CYBERSORT is a deconvolution algorithm used to determine the relative proportions of 22 human immune cells from bulk expression data (30). Using the R packages “e1071,” “preprocessCore,” and “limma,” we performed immune cell profiling among the BD samples. Samples with a P < 0.05 were included. To estimate the diverse immune cell patterns in different central hub gene expression groups, we used “vioplot” in R studio.

Diagnostic Prediction and Validation of Hub Genes

To validate the expression pattern and diagnostic value of the selected hub genes, we collected blood samples from 16 BD patients and 16 age- and sex-matched HCs under a protocol approved by the Medical Ethics Committee of Peking Union Medical College Hospital with informed consent acquired from the enrolled subjects (demographic and clinical data of the validation population and controls in online Supplementary Materials , Table S3 ). We then isolated PBMCs by Ficoll density gradient centrifugation. Further, total RNA was extracted from PBMCs using the Trizol Reagent, and cDNA was reverse-transcribed following the manufacturer’s instructions (Mei5 Biotechnology, Co., Ltd). For amplification, SYBER green (Mei5 Biotechnology, Co., Ltd) was utilized for real-time PCR on a Roche LightCycler 480 system. Finally, the relative expression levels were determined using the 2−∆∆Ct formula after normalization with endogenous GAPDH mRNA expression. The primer sequences were as follows: CCL4 forward CTTTTCTTACACCGCGAGGA and reverse GCTTGCTTCTTTTGGTTTGG, AGTR2 forward TTCCCTTCCATGTTCTGACC and reverse AAACACACTGCGGAGCTTCT, NPY2R forward CAAAACTTCTCCTCCAGTCCCC and reverse AAGGTGGGAGGATCAGAGATGG, ZIC1 forward GCATCCCAGTTCGCTGCGCAAA and reverse GGAGACACGATGGTGGGAGGCG, and GADPH forward CCTCAAGATCATCAGCAAT and reverse CCATCCACAGTCTTCTGGGT. Receiver operator characteristic (ROC) curves were rendered using the R package “pROC,” and DEGs between BD and HC were visualized using “ggpubr.”

Results

Screening for DEGs Between BD and HC

The workflow illustrated in Figure 1 demonstrates the procedure of exploring hub genes and diagnostic markers in BD. Two eligible datasets GSE70403 and GSE17114 with 56 BD and 14 HC combined were included. In total, 82 genes were differentially expressed in BD compared with HC (details provided in Table S1 ). Meanwhile, 11 DEGs were upregulated, and 71 were downregulated ( Figures 2A, B ).

Figure 1.

Figure 1

Flow diagram of exploring hub genes and diagnostic markers in BD.

Figure 2.

Figure 2

Differentially expressed genes displayed by volcano plot (A) and heatmap (B).

GO and KEGG Annotation of DEGs

We investigated the pathogenesis of BD by applying functional and pathway analysis. Several DEGs were prominently enriched in “clathrin-coated endocytic vesicle membrane” and “clathrin-coated endocytic vesicle” terms in the context of CC. For MF, DEGs were preferentially included in “IgG binding,” “immunoglobulin binding,” and “carbohydrate binding” demonstrating the immunopathogenic background of BD ( Figure 3A ). Various disease-associated KEGG pathways were hyperactivated, including “Fc gamma R-mediated phagocytosis,” “Staphylococcus aureus infection,” and “Leishmaniasis” ( Figure 3B ), indicating that the pathogenesis of BD might be triggered by innate immune activation and immunological response after infection ( Figures 3C, D ).

Figure 3.

Figure 3

Gene Ontology and KEGG annotation of DEGs (A) Histogram of Gene Ontology enrichment analysis: several DEGs were prominently enriched in “clathrin-coated endocytic vesicle membrane” and “clathrin-coated endocytic vesicle” terms in the context of cellular component (CC). For molecular function (MF), DEGs were preferentially included in “IgG binding”, “immunoglobulin binding”, and “carbohydrate binding” which demonstrates the immunopathogenic background of BD. (B) Histogram of KEGG pathway analysis: various disease-associated KEGG pathways were hyperactivated, including “Fc gamma R-mediated phagocytosis,” “Staphylococcus aureus infection,” and “Leishmaniasis” which indicates the pathogenesis of BD might be triggered by innate immune activation and immunological response after infection. (C, D) Circle plot of Gene Ontology and KEGG annotations.

Identification of Hub Genes

Five clusters of modules were constructed with WGCNA co-expression network analysis ( Figures 4A, B and Table S2 ). A sample dendrogram and trait heatmap calculated using Pearson’s correlation coefficients indicated that there were no outlier samples ( Figure 4C ). When incorporating the expression profile with clinical traits, we found that the turquoise module was significantly associated with clinical phenotypes and contained 72 genes (r = 0.60, P < 0.05) ( Figures 4D, E ). A Venn plot intersecting the DEGs and the turquoise module narrowed the hub gene candidates down to 71 ( Figure 4F ).

Figure 4.

Figure 4

Identification of hub genes (A) Gene dendrogram and the modules of DEGs correlated to BD in PBMC of 56 patients and 14 HCs. (B) Clustering of module eigengenes (C) Sample dendrogram and trait heatmap (D) Module-trait relationships: every module has its correlation coefficient and corresponding p value. (E) Module membership in turquoise module: the gene significance (GS) and module membership (MM) were calculated and their correlation was 0.93 (P <0.001) which indicates the strong relationship between module genes and clinical traits. One dot represents one gene in turquoise module, and dots at upper left corner were highly related to both the turquoise module and clinical traits. (F) Venn plot intersecting the DEGs and the turquoise module: there are 71 intersected DEGs for subsequent PPI network analysis.

Next, we input these 71 genes into PPI network analysis to investigate the interrelationship between the proteins encoded by these genes and discovered 70 interactions ( Figure 5A ). We have extracted the first 10 interactions by the combined score in the PPI network. CCL4, NPY2R, AGTR2, TAS2R1, ASB14, ASB17, C1orf110, SOX14, MAGEA1, NPAS4, EYA1 and HOXA11 was elected (Set 1). We filtered the top 10 genes ordered by a combined score and an MCC > 5 filtered by CytoHubba, including ZIC1, CTXN3, NPY2R, AGTR2, LRRC3B, EYA1, HOXA11, SOX6, CCL4, CAMKV, ANGPTL3, TAS2R1, SLC6A3 and SOX14 (Set 2). ( Figure 5B and Table 1 ), along with subnetwork gene nodes exported using the MCODE program where NPY2R, LRRC3B, AGTR2, CTXN3, CAMKV, CCL4 and TAS2R1 was clustered as subset 1 (shown in Figure 5C-ii ) and HOXA11, EYA1, SOX6 as subset 2 (shown in Figure 5C-i ), they are all named as Set 3. ( Figure 5C and Table 2 ). Eventually, 12 hub genes (AGTR2, CAMKV, CTXN3, EYA1, HOXA11, LRRC3B, NPY2R, SOX14, SOX6, TAS2R1, ZIC1, and CCL4) were identified (shown in Figure S1 : a union of the intersection of set 2 and 3 plus the intersection of set 1 and 2). ZIC1 is the top 1 significant node gene ranked by MCC, therefore we could not neglect it for further analysis and also add it into hub genes. These hub genes were identified for PCA analysis in GSE17114 to divide BD patients based on clinical manifestations (26). These hub genes could well discriminate isolated mucocutaneous manifestations (MB), ocular involvement (OB), and large vein thrombosis (VB) patients diagnosed with BD ( Figure 5D ).

Figure 5.

Figure 5

PPI network analysis (A) Interrelationship between the proteins encoded by DEGs from STRING database. The thickness of connecting lines suggests the strength of the association between proteins. (B) Key Hubba nodes ranked by maximum clique centrality (MCC): the top 10 candidate hub genes ranked by MCC linkage degrees were ZIC1, CTXN3, NPY2R, AGTR2, LRRC3B, EYA1, HOXA11, SOX6, CCL4 and CAMKV. (C) Subnetwork gene nodes exported using the MCODE program: the hub nodes linking highly connected modules were NPY2R, LRRC3B, AGTR2, CTXN3, CAMKV, CCL4, TAS2R1, HOXA11, EYA1 and SOX6. (D) principal component analysis using the GSE17114 dataset: these hub genes could discriminate isolated mucocutaneous manifestations (MB), ocular involvement (OB), and large vein thrombosis (VB) patients diagnosed with BD from in GSE17114.

Table 1.

Hubba nodes ranked by maximum clique centrality (MCC) in CytoHubba.

Node_name MCC DMNC MNC Degree EPC BottleNeck Ec-Centricity Closeness Radiality Betweenness Stress Clusterin Coefficient
ZIC1 19 0.26 8 9 21.17 10 0.14773 19.98333 5.971 378.3 712 0.25
CTXN3 13 0.32 5 8 21.01 19 0.17727 19.95 6.088 356.5 660 0.18
NPY2R 12 0.32 5 7 20.29 16 0.17727 18.51667 5.878 249.9 516 0.24
LRRC3B 11 0.32 5 6 20.52 5 0.14773 17.65 5.761 100.2 224 0.33
AGTR2 11 0.32 5 6 19.93 1 0.17727 17.18333 5.715 152.5 324 0.33
EYA1 10 0.32 5 5 19.31 1 0.12662 15.72619 5.365 25.37 68 0.5
HOXA11 9 0.38 4 5 18.75 3 0.12662 15.55952 5.342 89.59 162 0.4
SOX6 8 0.38 4 4 18.95 1 0.12662 14.80952 5.248 8 20 0.67
CAMKV 7 0.46 3 4 19.08 4 0.17727 16.81667 5.808 190.7 332 0.5
CCL4 7 0.46 3 4 18.03 4 0.17727 15.4 5.551 158.7 364 0.5
ANGPTL3 6 0.31 3 5 12.97 3 0.14773 14.31667 4.968 131.8 266 0.3
TAS2R1 6 0.46 3 3 17.62 1 0.17727 14.16667 5.342 0 0 1
SLC6A3 6 0.31 2 6 18.97 4 0.14773 17.1 5.621 249.7 526 0.07
SOX14 5 0.31 3 4 18.24 2 0.12662 14.80952 5.248 76.67 178 0.33
UNC13C 5 0.31 3 4 18.81 1 0.14773 15.16667 5.411 30 62 0.33
PHOX2B 4 0.31 2 4 17.89 5 0.12662 16.02619 5.505 119.5 246 0.17
ANGPTL7 4 0.31 3 3 12.36 1 0.14773 12.65 4.782 17.27 58 0.67
KLK7 4 0.31 2 4 11.95 5 0.14773 13.56667 5.015 158.5 300 0.17
SLCO1B1 4 0.31 2 4 11.75 4 0.14773 13.55 4.945 162.3 298 0.17
SLC25A18 4 0 1 4 18.26 8 0.17727 16.86667 5.831 252.9 492 0
FGF20 3 0.31 2 3 17.21 1 0.12662 14.10952 5.178 40.1 94 0.33
SLC25A31 3 0 1 3 16.73 2 0.17727 15.51667 5.621 87.29 188 0
CLEC5A 3 0.31 2 3 13.55 3 0.14773 13.61667 5.132 123.4 292 0.33
UGT2A3 3 0.31 2 3 9.913 2 0.12662 11.89524 4.385 74 154 0.33
SLC22A25 2 0 1 2 12.23 5 0.17727 13.68333 5.365 175 340 0
LRRC4C 2 0 1 2 15.61 1 0.14773 14.43333 5.435 14.9 42 0
VWC2 2 0.31 2 2 15.27 1 0.14773 13.58333 5.272 0 0 1
KCNB2 2 0 1 2 12.42 3 0.17727 13.65 5.365 152.3 276 0
ATP13A5 2 0 1 2 14.06 1 0.14773 12.56667 4.968 2.667 4 0
MAGEA1 2 0 1 2 1.989 3 0.06818 2 0.239 2 2 0
TRPC5 2 0.31 2 2 14.99 1 0.14773 13.16667 5.155 0 0 1
THAP9 1 0 1 1 6.906 1 0.12662 9.79524 4.082 0 0 0
NPAS4 1 0 1 1 1.706 1 0.03409 1.5 0.205 0 0 0
LCE1B 1 0 1 1 6.932 1 0.12662 9.83571 4.152 0 0 0
SFTA3 1 0 1 1 9.689 1 0.1108 10.82738 4.478 0 0 0
HCRTR2 1 0 1 1 10.08 1 0.12662 11.56905 4.758 0 0 0
FAM24A 1 0 1 1 9.662 1 0.12662 11.56905 4.758 0 0 0
TEKT1 1 0 1 1 10.77 1 0.14773 12.91667 5.225 0 0 0
C1orf110 1 0 1 1 9.708 1 0.1108 10.51071 4.385 0 0 0
BTBD8 1 0 1 1 10 1 0.1108 11.17738 4.642 0 0 0
ASB17 1 0 1 1 1.451 1 0.04545 1 0.136 0 0 0
ASB14 1 0 1 1 1.451 1 0.04545 1 0.136 0 0 0
APOBEC1 1 0 1 1 5.817 1 0.1108 8.88452 3.522 0 0 0
ANKRD30A 1 0 1 1 1.785 1 0.03409 1.5 0.205 0 0 0

MCC, Maximal Clique Centrality; DMNC, Density of Maximum Neighborhood Component; MNC, Maximum Neighborhood Component; hey all calculated from local based method. Closeness, EcCentricity, Radiality, Bottle Neck, Stress, Betweenness, Edge percolated Component (EPC) were output in accordance to global-based method. We utilize MCC on behalf of connectivity of hub genes.

The bold values represent the hub genes we have selected.

Table 2.

DEGs ranked by combined score in PPI network.

Node1 Node2 Combined_score
CCL4 NPY2R 0.922
AGTR2 CCL4 0.912
AGTR2 NPY2R 0.905
AGTR2 TAS2R1 0.9
ASB14 ASB17 0.9
CCL4 TAS2R1 0.9
NPY2R TAS2R1 0.9
C1orf110 SOX14 0.536
MAGEA1 NPAS4 0.503
EYA1 HOXA11 0.46
ANKRD30A MAGEA1 0.361
EYA1 SOX6 0.356
SOX6 ZIC1 0.353
ATP13A5 SLC25A31 0.327
EYA1 FGF20 0.319
ATP13A5 UNC13C 0.309
EYA1 ZIC1 0.305
CCL4 CLEC5A 0.302
LRRC3B SOX14 0.297
SLC22A25 SLC25A18 0.295
CAMKV LRRC3B 0.289
AGTR2 TRPC5 0.283
CTXN3 LRRC3B 0.281
CTXN3 ZIC1 0.276
SLC25A31 ZIC1 0.27
ANGPTL3 SLCO1B1 0.258
SLC22A25 SLCO1B1 0.247
SLC25A18 SLC25A31 0.235
KCNB2 KLK7 0.227
KLK7 LCE1B 0.222
FGF20 SLC6A3 0.221
BTBD8 PHOX2B 0.22
HOXA11 SFTA3 0.219
PHOX2B ZIC1 0.218
SOX14 ZIC1 0.218
CAMKV CTXN3 0.213
NPY2R SLC6A3 0.213
FAM24A SLC6A3 0.211
AGTR2 SLC6A3 0.208
LRRC3B LRRC4C 0.202
HOXA11 SOX6 0.198
HCRTR2 SLC6A3 0.197
CAMKV ZIC1 0.19
SLCO1B1 UGT2A3 0.187
ANGPTL3 ANGPTL7 0.184
EYA1 PHOX2B 0.181
CTXN3 UNC13C 0.175
FGF20 HOXA11 0.173
HOXA11 ZIC1 0.173
LRRC3B ZIC1 0.166
PHOX2B SLC6A3 0.166
ANGPTL3 UGT2A3 0.165
NPY2R TRPC5 0.162
CAMKV KCNB2 0.161
SLCO1B1 THAP9 0.16
SOX14 SOX6 0.16
CTXN3 NPY2R 0.158
CTXN3 SLC25A18 0.157
CTXN3 VWC2 0.157
ANGPTL3 KLK7 0.156
ANGPTL3 CLEC5A 0.156
ANGPTL7 KLK7 0.156
ANGPTL7 CLEC5A 0.156
LRRC3B UNC13C 0.156
LRRC4C NPY2R 0.156
AGTR2 SLC25A18 0.155
APOBEC1 UGT2A3 0.151
UNC13C VWC2 0.151
CTXN3 TEKT1 0.15

The first 10 interactions by the combined score in the PPI network were CCL4, NPY2R, AGTR2, TAS2R1, ASB14, ASB17, C1orf110, SOX14, MAGEA1, NPAS4, EYA1 and HOXA11 was elected.

The bold values represent the hub genes we have selected.

Correlation Between Hub Genes and Vasculitis

Genecards was searched, and the top 12 genes associated with vasculitis were exported (PRTN3, PTPN22, CTLA4, DNASE1L3, MPO, MEFV, HLA-B, HLA-DPA1, HLA-DPB1, IL10, TNF, and CRP). The correlation heatmap revealed tight relationships among these 12 hub genes with Pearson’s r ranging from 0.99 to 1 (P < 0.05); however, except for CCL4 and TNF (r = 0.56, P < 0.05), there was no relationship between the hub genes and the output genes from the Genecards website ( Figure 6 ).

Figure 6.

Figure 6

Correlation heatmap between hub Genes and vasculitis. The top 12 genes associated with vasculitis were exported (PRTN3, PTPN22, CTLA4, DNASE1L3, MPO, MEFV, HLA-B, HLA-DPA1, HLA-DPB1, IL10, TNF, and CRP) from Genecards together with 12 hub genes from 12 hub genes (AGTR2, CAMKV, CTXN3, EYA1, HOXA11, LRRC3B, NPY2R, SOX14, SOX6, TAS2R1, ZIC1, and CCL4) from above WGCNA and PPI analysis.

GSEA Analysis of Central Hub Genes

Through an intensive literature search in PubMed, we selected CCL4 as the central hub gene because of its known pathogenic role in autoimmune diseases including rheumatoid arthritis (RA) (31), multiple sclerosis (MS) (32) and Behcet’s disease (33). Accordingly, our patients were categorized into high- and low-expression groups of CCL4 for GSEA function and pathway analysis. Twelve KEGG pathways, “natural killer cell-mediated cytotoxicity,” “glycosaminoglycan biosynthesis chondroitin surface,” “antigen processing and presentation,” “regulation of autophagy,” “graft versus host disease,” “type I diabetes,” “T cell receptor signaling pathway,” “cytosolic DNA sensing pathway,” “TGF-β signaling pathway,” “chemokine signaling pathway,” “cytokine-to-cytokine receptor interaction,” and “toll-like receptor signaling pathway,” were enriched in the CCL4 high-expression BD patients ( Figure 7 ).

Figure 7.

Figure 7

GSEA analysis of central hub genes. BD patients were categorized into high- and low-expression groups of CCL4 for GSEA function and pathway analysis from which twelve KEGG pathways were enriched.

Landscape of Immune Cell Proportions

We calculated the relative percentage of immune cells among BD patients and HC ( Figure 8A ). In comparison with the low-expression group, the high-expression group had a higher fraction of CD8 + T cells (P = 0.019), Natural killer (NK) cells (both resting and activated, P = 0.041 and 0.010, respectively), M1 macrophages (P = 0.044), and activated mast cells (P = 0.041). Inversely, monocytes (P = 0.007), M0 macrophages (P = 0.006), and resting mast cells (P = 0.008) were decreased in BD patients with high CCL4 expression ( Figure 8B ).

Figure 8.

Figure 8

Immune cell proportions among BD patients and HC according to the high/low expression of central hub genes. (A) The relative percentage of immune cells are presented. (B) Violin plot shows the CCL4 high-expression group had a higher fraction of CD8 + T cells (P = 0.019), Natural killer (NK) cells (both resting and activated, P = 0.041 and 0.010, respectively), M1 macrophages (P = 0.044), and activated mast cells (P = 0.041) in contrast with low-expression group.

Diagnostic Performance of Hub Genes and Validation

We then performed ROC analysis to detect the performance of hub genes in differentiating patients with BD from HC. The area under the curve (AUC) ranged from 0.81 to 0.88 ( Figure 9A ). Additionally, CCL4 was highly expressed in our validation cohort (P = 0.0234), whereas NPY2R was downregulated (P = 0.024) ( Figures 9B, C and Table 3 ); however, no significant difference was found in AGTR2 and ZIC1 expression among BD and HC individuals (data not presented).

Figure 9.

Figure 9

Diagnostic performance of hub genes and validation (A) ROC analysis to detect the performance of hub genes in differentiating patients with BD from HC. (B) ROC validation and differential expression among BD and HC of CCL4. (C) ROC validation and differential expression among BD and HC of NPY2R.

Table 3.

mRNA expression in PBMC of BD and HC from validation cohort.

Type CCL4 (2-∆∆Ct) NPY2R (2-∆∆Ct)
BD 6.711646 0.962594
BD 1.081725 0.458502
BD 1.236847 2.013911
BD 8.436629 0.719467
BD 1.757267 0.421908
BD 2.439637 0.607097
BD 0.819794 0.481297
BD 0.320116 1.105731
BD 4.167455 0.433769
BD 1.098727 0.501736
BD 14.54549 0.664343
BD 2.360621 0.90125
BD 0.483806 0.659754
BD 2.322749 0.742262
BD 1.873626 0.493116
BD 23.90378 0.195467
HC 0.16647 2.629886
HC 1.41095 1.105731
HC 1.114709 0.895025
HC 1.583738 2.114036
HC 3.563595 0.68302
HC 0.421421 0.779165
HC 0.759611 2.337554
HC 1.498307 0.965936
HC 1.071155 0.203063
HC 1.362101 2.273634
HC 0.492832 0.429283
HC 1.066216 0.461691
HC 1.550249 0.699793
HC 0.539303 1.121166
HC 1.507857 1.664397
HC 1.034667 1.265757

Behcet’s disease, BD; healthy control, HC; peripheral blood mononuclear cell, PBMC.

Discussion

In this current study, we knit in-silico results and the in vitro data closely then disclosed the biological functions as well as pathogenic pathways involved in Behçet’s disease (BD). To begin with, we downloaded and merged 2 GEO datasets GSE70403 and GSE17114 by microarray profiling of peripheral blood mononuclear cells from BD patients. WGCNA algorithm identified the most relevant gene set to clinical phenotype of Behçet’s disease which named as turquoise module. Subsequently, PPI network (CytoHubba and MOCDE plugin) was employed to explore the co-expression interactions between DEGs from which hub nodes were extracted (AGTR2, CAMKV, CTXN3, EYA1, HOXA11, LRRC3B, NPY2R, SOX14, SOX6, TAS2R1, ZIC1, and CCL4). It turns out that these above hub genes could be used to discriminate BD patients into MB, OB, and VB subtypes in accordance with the major clinical symptoms provided by Xavier et al. in GSE 17114 dataset which additionally demonstrated a reliable antidiastole performance (26, 27). Wondering which hub gene is previously considered as the potential pathogenic manipulator for autoimmune disease in references, we retrieved PubMed and only to find CCL4, as a central hub gene, stands out in RA, MS and BD etiology. Therefore, we classified the BD patients from microarray datasets following the expression level of CCL4 for GSEA function, twelve KEGG pathways intensively enriched in intracellular and intercellular biological communications among immune cells. Hence, CYBERSORT was utilized to visualize the immune cell profiling based on the expression level of CCL4 in BD patients. The upregulated CCL4 could recruit a higher proportion of CD8 + T cells (P = 0.019), NK cells (both resting and activated, P = 0.041 and 0.010, respectively), M1 macrophages (P = 0.044), and activated mast cells (P = 0.041) into inflammatory sites (skin, eyes and even vascular), which likely exacerbates proinflammatory situation, immune cell function and intensify disease activity in BD patients. Last but not least, the performance of hub genes exerts a great ability in discerning BD and HC (AUC ranging from 0.81-0.88) where CCL4 and NPY2R are proved as a moderate diagnostic biomarker in disease recognition from healthy subjects in our validation cohort (clinical characteristics are provided in the online Supplementary Material , Table S1 ).

Taken together, we have identified the immune-activated, inflammation-induced, and carbohydrate-mediated pathogenesis of BD and identified DEGs and pathways involved in its etiology. Our results indicate that the identified hub genes could be of diagnostic value and reveal new insights into the etiological analysis of BD.

Subsequent validation disclosed that CCL4 expression is significantly upregulated in BD patients compared to HC. Additionally, we found that there was a higher proportion of CD8 + T cells, NK cells, M1 macrophages, and activated mast cells infiltrating in inflammation sites in the subset of BD patients with high CCL4 expression. CCL4 is a proinflammatory chemokine that extensively participates in autoimmune pathogenesis, with immunoregulatory effects on trafficking immune cells into sites of inflammation. For instance, CCL4/MIP-1β secreted by IL-2-activated NK cells amplified IFN-γ release and invoked other inflammatory cells like neutrophils, macrophages, and T cells, which are responsive to chemokines and aggravate the inflammatory process (34). In RA, CCL4 is vital for guiding CD56dimCD16bright NK cells into the synovium (35); in addition, it is positively correlated with IL-36 agonists, IL-36RA, and IL-38 cytokines, which intensify joint inflammation (36).

Additionally, CCL4 could indicate the deterioration of BD, as extremely high expression of CCL4 mRNA was found in patients who suffer from thrombosis and CNS involvement in our validation cohort. A research published by Schecter et al. demonstrated that in human smooth muscle cells enriched in plaque area CCL4/MIP-1β is abundant and introduce the elevation of tissue factor that involves in arterial coagulation together with thrombotic cascade (37). From snap shots of CCL4/MIP-1β participation in clotting formation, there is supposed to exist a hidden mechanism in causing thrombosis of BD patients. Previous evidence supports that upregulated CCL4 could be considered to be a circulating inflammatory cytokine marker in primary and systemic lupus erythematosus (SLE)-related autoimmune hemolytic anemia, indicating erythroid compensation and disease severity due to its positive relationship with reticulocyte count (38). Being a major macrophage attractant, universal involvement of CCL4 has been found in diabetes mellitus, since its circulating concentration increased regardless of disease stage, which may contribute to destruction of islet cells and the progression of diabetes. By providing an inflammatory microenvironment, CCL4 induces cell adhesion to endothelial cells through oxidative stress and tends to augment atherosclerosis and vascular injury (39). Additionally, elevated CCL4/MIP-1β in the cerebrospinal fluid is a characteristic of IgG4 anti‐neurofascin 155-positive chronic inflammatory demyelinating polyneuropathy, which implies exacerbation of protein leakage, damage of encephalic and CCL4/MIP-1β decreases with combined immune-treatment response (40). Della-Torre et al. demonstrated that B cells and fibroblasts might orchestrate inflammatory infiltration through CCL4, which in turn amplified the recruitment of monocytes, CD4 + cytotoxic T cells through CCR5, and IgG4-related disease lesions (41). In discriminating between relapsing–remitting and progressive clinical phenotypes of multiple sclerosis (MS), the plasma CCL4/MIP-1β level showed a good diagnostic value (AUC = 0.702, P < 0.0002) and was a protective factor preventing disease progression (odds ratio = 0.9873, P = 0.0171) (42). However, the pathogenic impact of CCL4 in BD has not been reported before. As the similar pathogenesis existing among autoimmune diseases, we could deduce that the expression of CCL4 might be a circulating inflammatory chemokine which aggravates inflammation and disease progression via inducing immune cell infiltration and damaging surrounding tissue in BD patients.

Neuropeptide Y receptor subtype 2 (NPY2R) is a G-protein binding receptor for neurotransmitter NPY, which triggers vascular smooth cell proliferation and vasoconstriction, and results in ischemic angiogenesis (43). In our study, NPY2R mRNA expression in PBMCs of BD patients, especially in those with severe symptoms including thrombosis and gastrointestinal involvement, was distinctly lower than that in HC. A genome-wide association study demonstrated that the NPY2R rs1902491 polymorphism was associated with a severe diabetic retinopathy subgroup without end-stage renal disease (44); however, no significant association was replicated in a small cohort with rapidly proliferative diabetic retinopathy in Lithuania (45). This may imply NPY2R is potentially correlated with microvascular leakage and obstruction which could stands for vascular destruction within BD patients. The gene encoding the type 2 angiotensin II (Ang II) receptor (AGT2R) plays a pivotal role in atherosclerosis, vascular inflammation, and remodeling and has anti-inflammatory and antiproliferative influences, and it exhibited a female advantage by counteracting the AT1 receptor in mice (46). In SLE, AGT2R polymorphisms containing the A allele (CA  +  AA) in exon 3 or G allele (AG  +  GG) in intron 1 are of apparent significance compared with HC (47). AGT2R expression is also strongly enhanced in RA synovial tissue, an exogenous agonist that could ameliorate inflammation (48). On the contrary, AGT2R blockers are postulated to dampen the clinical situation and laboratory metrics in RA patients (49). In idiopathic pulmonary fibrosis, AGT2R is highly expressed in interstitial fibroblasts and serves as a determinant of fibroblast proliferation and migration (50). In 883 Austrian MS patients and 972 controls. The ZIC1 rs1841770 polymorphism was associated with an earlier disease onset of MS (51), but a Spanish replication study did not support it as an MS predisposition factor (52). Nevertheless, we did not find any statistical difference in AGT2R and ZIC1 mRNA expression between BD and HC; this may be attributed to the small population of our validation cohort.

NK cells are innate immune lymphocytes that have a cytolytic immune-regulatory effect in autoinflammatory disease, particularly in BD. We confirmed that in patients with upregulated CCL4 expression, there is a higher fraction of NK cells infiltrating the inflammatory zone. However, conflicting studies have reported decreased, normal, and increased NK cells in BD compared with those in HC (53). It has been hypothesized that impaired NK cytotoxicity and degranulation facilitate and active disease progress (54, 55). The NK1/NK2 ratio is significantly increased, resulting in CD16 + IFN-γ + NK1-induced IFN-γ secretion and suppressed NK regulation in mucocutaneous BD. Moreover, increasing IFN-γ produced by NK cells reflects active disease and relapse of disease, which demonstrated the dominant interaction between NK cells and interferons (56). Accordingly, NKMHC-I modules encoding HLA-B*51 could also contribute to NK cell inhibition through binding killer immunoglobin-like receptors, further supporting hereditary factors as key drivers of BD etiology.

Hyperactivation of monocytes and neutrophils is a feature of BD (57). Our results identified a high level of monocytes in CCL4 low expression group, instead of neutrophils in BD. Monocytes in BD patients appear to have intensified oxidative burst activity compared with those in RA patients and HC (58). The enriched pathways JAK/STAT, IL-6, and interferon signaling are upregulated in CD14 + monocytes isolated from BD patients (59), whereas toll-like receptors 2, 4, and 5 are highly expressed in monocytes, causing a cascade of activation of nuclear factor-κB and production of TNF-α, unveiling a proinflammatory mechanism of BD (60). Bacterial infection might be a trigger of BD pathogenesis. Lipopolysaccharide (LPS) stimulation increases TNF-α secretion in vivo in monocytes of active BD rather than in quiescent ones (61). A recent study demonstrated a perturbed FcγRs balance in monocytes from BD patients that represented downregulated inhibitory FcγRIIb and upregulated activating FcγRIII, the level of which fluctuated along with BD treatment and disease severity. Moreover, LPS and IgG-stimulated monocytes produced more IL-6 than those from HC (57). IgG binding activates FcγRs and FcγRIIb, mainly leading to endocytosis and internalization of immune complexes; therefore, these studies corroborate our finding of “IgG binding,” “clathrin-coated endocytic vesicle membrane,” and “clathrin-coated endocytic vesicle” in our GO analysis and the enriched pathways “Fc gamma R-mediated phagocytosis” and “Staphylococcus aureus infection” in the KEGG analysis.

M1 macrophages stimulate an inflammatory reaction by triggering cytokines such as TNF-α and IL-6, resulting in Th1 reactivity, whereas BD patients with skin lesions conferred M1 macrophage dominance in systemic sclerosis (SSc). It confers that M1 macrophages is more like a predominant pathogenesis factor in BD than in SSc. A higher expression of CCR1 ligands for CCL3/MIP-1α than that in HC again demonstrated that a skewed M1 and M2 macrophage balance led to MIP-1α-induced inflammation (62). Macrophage incubation with active BD serum facilitated CD64 (FcγRI) positivity and IL-8 mRNA expression compared to inactive BD, suggesting an overwhelming proinflammatory response and aberrant endothelial alteration (63). Mast cells are prominently elevated in the skin lesions of active Behcet’s disease compared with those uninvolved skin (64). It seems that mast cells are attracted by chemotaxis influenced by complement cascades in BD patients with high-expressed CCL4, which is analogical to basophil hyperactivation process.

The profound role of IL-17A and CD8 + T cell-mediated immune response is pronounced in BD with papulopustular skin lesions. Investigation into Tc17 cell activation confirmed that CD8 + T cells are infiltrated in peripheral vascular walls and the subcutis in BD, and, concurrently, IL-17A + CD8 + T cells were elevated in BD compared to psoriasis vulgaris lesions and were a major source of IL-17A rather than CD4 + T cells (65). IFN-γ-producing CD8 + T cells are enhanced in the peripheral blood of active BD patients and are even higher in patients with pulmonary manifestations and neurological involvement. Furthermore, the Tc1/Tc2 ratio is dramatically increased in the active and remission phases of BD (66). Increased IFN-γ and CD8 + Leu7 + T cells together with an increased titer of IgG antibodies to HSV-1 demonstrated an antigen-driven T cell-dominant etiology characteristic of BD (67), which is in accordance with our GSEA pathway analysis results.

Our GO analysis highlighted the “carbohydrate binding” pathway, and accumulating evidence suggests that galectins regulate immune cell homeostasis, in which galectin-1 inhibits T cell proliferation, enhances apoptotic activity, and thus suppresses inflammation, whereas galectin-3 amplifies the inflammatory response and survival of T lymphocytes, which subsequentially activates NADPH oxidase, the superoxidative reaction of neutrophils, and recruits monocytes (68). This coincides with our finding of “alcohol dehydrogenase [NAD(P)+] activity” among the MF GO terms. The combination of lectins and epithelial cells and lectins binding to specific tissues triggers antigen humoral responses leading to autoimmune rheumatic responses, for instance, in RA or type I diabetes (69). S-nitrosated mannose binding lectin (SNO-MBL) is upregulated in RA patients and was dysfunctional in depositing C4, phagocytosing bacteria, and binding to apoptotic cells, which consequently caused enhancement of anti-SNO-MBL antibodies (70).

There are several limitations in the present study. First, although we have verified significant difference between BD and HC group in mRNA expressions of CCL4 and NPY2R, we could not associate our results with disease activity index (Behçet’s Disease Current Activity Form) attributed to lack of integrated clinical information of each patient. Second, we aimed to identify a diagnostic marker in discerning BD patients and healthy subjects, thus we did not add disease controls such as takayasu arteritis, inflammatory bowel disease, ANCA-associated systemic vasculitis and even patients with either coronary or venous thrombosis which shares semblable clinical feature with BD. Third, via MCODE program we have discovered the protein interaction network between CCL4 and NPY2R, future analysis should more concentrate on underlying up/down regulation between them which might be the mechanism leading to vasculitis moreover vascular deteriorations in BD. Further studies using more comprehensive data and larger validation cohort should be performed to elucidate the association of CCL4 and NPY2R with BD activity as well as clinical phenotypes.

In conclusion, as a proinflammatory factor synthesized in the inflammation zone, higher mRNA expression of CCL4 might be an upstream switch to attract more immune cells into inflammatory sites, these cells in turn positively amplify cytokine secretion and exacerbates BD disease stage. In vasculitis related to BD, NPY2R expression is potentially impaired and may be a marker of vascular complications. Future studies are required to elucidate the potential mechanisms underlying the dysregulated expression of target genes and their correlation with the immune microenvironment and clinical phenotypes in BD.

Data Availability Statement

The original contributions presented in the study are included in the article/ Supplementary Material . Further inquiries can be directed to the corresponding author.

Ethics Statement

The studies including human participants were approved by Medical Ethics Committee of Peking Union Medical College Hospital with informed consensus acquired from enrolled subjects. The patients/participants provided their written informed consent to participate in this study.

Author Contributions

YL conceived and designed the research. HZ extracted data, performed software analysis and visualized graphs and tables. LC, SY, HL, and HZ categorized and supervised graphs and tables. WZ provided the clinical data of each patient. HZ and HL went on validation experiments. HZ wrote the paper. All authors are accountable for all aspects of the study, and attest to the accuracy and integrity of the results. All authors contributed to the article and approved the submitted version.

Funding

This research was supported by grants from the National Key Research and Development Program of China (2018YFE0207300), the National Natural Science Foundation of China Grants (81871302,81871299) and Beijing Key Clinical Specialty for Laboratory Medicine - Excellent Project (No. ZK201000).

Conflict of Interest

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Publisher’s Note

All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article, or claim that may be made by its manufacturer, is not guaranteed or endorsed by the publisher.

Supplementary Material

The Supplementary Material for this article can be found online at: https://www.frontiersin.org/articles/10.3389/fimmu.2021.794800/full#supplementary-material

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Data Availability Statement

The original contributions presented in the study are included in the article/ Supplementary Material . Further inquiries can be directed to the corresponding author.


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