Literature DB >> 27906046

Chromatin landscapes and genetic risk in systemic lupus.

Joyce S Hui-Yuen1,2, Lisha Zhu3, Lai Ping Wong4, Kaiyu Jiang4, Yanmin Chen4, Tao Liu5, James N Jarvis6.   

Abstract

BACKGROUND: Systemic lupus erythematosus (SLE) is a multi-system, complex disease in which the environment interacts with inherited genes to produce broad phenotypes with inter-individual variability. Of 46 single nucleotide polymorphisms (SNPs) shown to confer genetic risk for SLE in recent genome-wide association studies, 30 lie within noncoding regions of the human genome. We therefore sought to identify and describe the functional elements (aside from genes) located within these regions of interest.
METHODS: We used chromatin immunoprecipitation followed by sequencing to identify epigenetic marks associated with enhancer function in adult neutrophils to determine whether enhancer-associated histone marks were enriched within the linkage disequilibrium (LD) blocks encompassing the 46 SNPs of interest. We also interrogated available data in Roadmap Epigenomics for CD4+ T cells and CD19+ B cells to identify these same elements in lymphoid cells.
RESULTS: All three cell types demonstrated enrichment of enhancer-associated histone marks compared with genomic background within LD blocks encoded by SLE-associated SNPs. In addition, within the promoter regions of these LD blocks, all three cell types demonstrated enrichment for transcription factor binding sites above genomic background. In CD19+ B cells, all but one of the LD blocks of interest were also enriched for enhancer-associated histone marks.
CONCLUSIONS: Much of the genetic risk for SLE lies within or near genomic regions of disease-relevant cells that are enriched for epigenetic marks associated with enhancer function. Elucidating the specific roles of these noncoding elements within these cell-type-specific genomes will be crucial to our understanding of SLE pathogenesis.

Entities:  

Keywords:  Enhancers; Genetics; Lymphocytes; Neutrophils; Systemic lupus erythematosus

Mesh:

Substances:

Year:  2016        PMID: 27906046      PMCID: PMC5134118          DOI: 10.1186/s13075-016-1169-9

Source DB:  PubMed          Journal:  Arthritis Res Ther        ISSN: 1478-6354            Impact factor:   5.156


Background

Systemic lupus erythematosus (SLE) is a complex trait believed to be caused by gene–environment interactions that lead to a perturbed immunologic state in which autoantibodies, immune complex deposition, and complement activation contribute to systemic inflammation and target tissue damage. The genetics of systemic lupus has been studied extensively, in particular its association with complement deficiencies. Although rare, C1q deficiency is the strongest genetic risk factor for SLE [1, 2]. C1r and C1s deficiencies are commonly inherited together, and over 50% of these patients develop SLE [3]. Moreover, homozygous C2 and C4 deficiencies have been shown to predispose toward SLE [4-6]. Other than complement deficiencies, however, associations between SLE and functions of specific genes have been harder to clarify. This situation became even more confusing as data began to emerge from genome-wide association studies (GWAS) and genetic fine mapping studies [7-9], where the majority of risk-associated single nucleotide polymorphisms (SNPs) occurred in noncoding regions of the genome, often considerable distances (in genomic terms) from protein-coding genes and their promoters. Thus, while it is still common in the literature to identify disease-associated SNPs by their nearest gene, most genetic risk for SLE does not appear to be within “genes,” as conventionally understood, at all. In this respect, SLE resembles almost every other complex trait studied by GWAS [10]. Maurano et al. [10] have shown that most SNPs for most complex traits lie within genomic regions identified by projects like ENCODE, Roadmap Epigenomics, and Blueprint Epigenomics as regulatory regions, often regions active during fetal life. This observation has been confirmed from studies of specific diseases. Recently, for example, Jiang et al. [11] demonstrated that regions of genetic risk for juvenile idiopathic arthritis (JIA) identified by genetic fine mapping using Illumina Immunochip arrays are enriched for H3K4me1 and or H3K27ac histone marks, epigenetic signatures associated with enhancer function. There is thus a broadly emerging consensus in the fields of genetics and functional genomics that genetic risk for complex traits likely involves specific aspects of transcriptional regulation and coordination rather than aberrant function of protein-coding genes. In the current study, we examined the “epigenetic landscape” around known SLE-associated SNPs in an effort to better understand the potential significance of disease-associated SNPs. We focused on three cell types known to contribute to SLE pathogenesis: CD19+ B cells, CD4+ T cells, and neutrophils [12-16]. We used ENCODE and Roadmap Epigenomics data as well as data generated in our own laboratory (for neutrophils) to identify functional elements within these regions.

Methods

We queried the chromatin landscape around SNPs whose associations with SLE are well documented [17]. In addition, we queried recently reported SNPs found in a large Asian population [18]. CD19+ B-cell and CD4+ T-cell data were queried from ENCODE, while neutrophil RNA sequencing (RNAseq) and chromatin immunoprecipitation sequencing (ChIP-seq) data for H3K4me1/H3K27ac data were generated in our laboratory and have been reported recently [11]. Laboratory methods for ChIP-seq and RNAseq data are described briefly in the following.

Healthy adults

Enhancers are both cell specific and cell-state specific [19]. Because neutrophils were not among the cells studied in either the ENCODE or Roadmap Epigenomics projects, we sought to create a genomic map for enhancer element locations using normal adult neutrophils. We obtained neutrophils from three healthy adults aged 25–40 using techniques we have described previously [11].

Chromatin immunoprecipitation for histone marks H3K4me1 and H3K27ac and sequencing

Neutrophils were isolated as described previously [20]. The ChIP assay was carried out according to the protocol of the manufacturer (Cell Signaling Technologies Inc., Danvers, MA, USA) and has been described in our work published previously [11]. Briefly, adult neutrophils were incubated with newly prepared 1% formaldehyde in PBS at room temperature (RT). Crosslinking was quenched by adding 1× glycine. The crosslinked samples were centrifuged, the supernatant discarded, and the pellet washed with cold PBS followed by resuspension in 10 ml ice-cold Buffer A plus DTT, PMSF, and protease inhibitor cocktail. Cells were incubated on ice and then centrifuged at 4 °C to precipitate nucleus pellets, which were then resuspended in 10 ml ice-cold Buffer A plus DTT. The nucleus pellet was incubated with Micrococcal nuclease for 20 minutes at 37 °C with frequent mixing to digest DNA. Sonication of nuclear lysates was performed using a Sonic Dismembrator (FB-705; Fisher Scientific, Pittsburgh, PA, USA) on ice. After centrifugation of sonicated lysates, the supernatant was transferred into a fresh tube. Fifty microliters of the supernatant (chromatin preparation) was taken to analyze chromatin digestion and concentration. Fifteen micrograms of chromatin was added into 1× ChIP buffer plus protease inhibitor cocktail to a total volume of 500 μl. After removal of 2% of chromatin as the input sample, the antibodies were added to the ChIP buffer. The antibodies against respective histone modifications were rabbit polyclonal antibodies against histone H3 acetylated at lysine 27 (H3K27ac) and histone H3 monomethylated at lysine 4 (H3K4me1) from Cell Signaling Technologies. The negative control was normal IgG (Cell Signaling Technologies). After immunoprecipitation, the magnetic beads were added and incubated for another 2 hours at 4 °C. The magnetic beads are covalently coupled to a truncated form of recombinant protein G. They were then collected with a magnetic separator (Life Technologies, Grand Island, NY, USA). The beads were washed sequentially with low and high salt wash buffer, followed by incubation with elution buffer to elute protein/DNA complexes and reverse crosslinks of protein/DNA complexes to release DNA. The DNA fragments were purified by spin columns and dissolved in the elution buffer. The crosslinks of input sample were also reversed in elution buffer containing proteinase K before purification with spin columns. DNA sequencing was then conducted using the Illumina HiSeq 2500 at the next-generation sequencing center in University at Buffalo.

ChIP-seq analysis of neutrophils

Analysis of the ChIP-seq data was carried out exactly as described previously [11]. MACS2 v2.1.10 [21] was applied for calling regions enriched with histone marks against the input sample, with the parameters “–nomodel --extsize 150 --broad –broad-cutoff 0.1”. Details of these analyses are further described by Jiang et al. [11].

CD19+ B-cell and CD4+ T-cell analysis

In order to compare data from neutrophils with existing data from CD19+ B cells and CD4+ T cells, we queried data generated from the Roadmap Epigenomics Project [22]. Raw ChIP-seq data for CD19+ primary cells were downloaded from the GEO database [23] [GEO:GSM1027296, GEO:GSM1027287, GEO:GSM1027300, GEO:GSM1027304] for H3K4me1, H3K27ac, H3K4me3, and input control respectively. Raw ChIP-seq data for CD4+ T cells were downloaded [GEO:GSM1220567, GEO:GSM1220560, GEO:GSM1102798, GEO:GSM1102805] for H3K4me1, H3K27ac, H3K4me3, and input control respectively. The methods for mapping and region-calling are the same as those was used to analyze neutrophil data.

ENCODE transcription factor binding site enrichment

ENCODE transcription factor binding site (TFBS) data were downloaded from UCSC Genome Browser ENCODE (http://hgdownload.cse.ucsc.edu/goldenPath/hg19/encodeDCC/wgEncodeRegTfbsClustered/). Only the TFBS information derived from blood cells was used for analysis. The whole genome was binned to 100 bp bins and intersected with H3K27ac, H3K4me1, or H3K4me3 peak regions, which were used as background. Fisher’s exact test was applied to test the significance of enrichment for TFBS for each transcription factor (TF) within H3K27ac, H3K4me1, or H3K4me3 peaks within linkage disequilibrium (LD) blocks compared with peak regions in the whole genome. The cutoff point for the false discovery rate (FDR) was set to 0.05.

Results

Association of regions of genetic risk with functional elements within neutrophil genomes

We searched the LD regions near (within 5 kb of) each GWAS index locus for association with histone marks from ChIP-seq. LD blocks were defined for 46 out of the 58 SNPs described in recent GWAS [17, 18] using information from the SNAP database (http://www.broadinstitute.org/mpg/snap) [24] by querying data from the 1000 Genomes Project pilot and the HapMap3 database. LD blocks were defined using r 2 < 0.9. We further investigated H3K4me1, H3K4me3, and H3K27ac distal regions relative to transcription start sites. The distal regions typically correspond to cis-acting enhancers located far away from the gene(s) they regulate [25]. Regions containing at least one methylated (H3K4me1 or H3K4me3) and one acetylated histone mark (H3K27ac) were referred to as active enhancers, and those that contained only one methylated histone group or H3K27ac region were referred to as poised enhancers or H3K27ac-active enhancers, respectively. Of note, H3K4me3 appears to be cell-type specific, expressed in cells of the lymphoid lineage, and noted to be an important histone mark for enhancer activity [26]. We found functional elements within 5 kb of 36 of the 46 SNPs in adult neutrophils. Epigenetic evidence for active enhancers were found in 29 LD blocks, poised enhancers in six LD blocks, and H3K27ac-active enhancers in one LD block (Table 1). Using Fisher’s exact test, these regions were significantly enriched for enhancer activity above the genomic background (p < 0.05) (Fig. 1).
Table 1

Histone marks in the SNP linkage disequilibrium blocks in neutrophils

GWAS index SNPChrLinkage disequilibrium blocksNumber of H3K27ac marksNumber of H3K4me1 marksEnhancer marks (yes/no)
rs100288054102736456–10276258100No
rs100367485150457485–15046104955388Yes
rs104886317128585616–128711874104468Yes
rs105931212129277164–1292885344484Yes
rs1077462512111884608–112007756178368Yes
rs10807150635154315–35278796160263Yes
rs109365993169477506–1695285234158Yes
rs116440341685967285–85980534024Yes
rs118893412191943742–19197012000No
rs120224181192521591–1925351071745Yes
rs1270942631704294–321754151260Yes
rs1280220011566936–567627039Yes
rs16105551867523453–6754404600No
rs18012741161470042–16147974536317Yes
rs188588913100084234–1001041062553Yes
rs20094531165399528–6540530078237Yes
rs2238811657386566–5731713400No
rs2286672174706123–471261703Yes
rs22895831575285114–75370012227386Yes
rs23057721952021247–5203494000No
rs24211845158884119–15888693900No
rs24316975159879978–15988321700No
rs24766011114303808–114377568113297Yes
rs26630521050045456–5008123200No
rs27325491135073852–3509819326106Yes
rs2736340811337587–1135300000No
rs29415091737885383–38077485308693Yes
rs30245051206939904–206943968066Yes
rs345729431631272353–3127681179150Yes
rs37687922213871709–21389023200No
rs37940601171138710–7120379062125Yes
rs4917014750278187–503088116665Yes
rs49484961063803472–638199036783Yes
rs616166832239747050–39756650022Yes
rs65684316106574794–1065976391515Yes
rs6740462265654364–656672722635Yes
rs69320566138132123–138243700175286Yes
rs740840126327008–636006833886Yes
rs74442221920817–21983260153420Yes
rs75564691198607998–198637582379487Yes
rs77264145133232663–138773572521090Yes
rs794176511128499000–1285002155999Yes
rs849142728162674–2820009717222Yes
rs9462027634563164–34828553167717Yes
rs96526011611164567–1120789463105Yes
rs97829551235907825–236041129322511Yes

Linkage disequilibrium blocks were obtained from the 1000 Genomes Project pilot 1 and/or HapMap3 database

Chr chromosome, GWAS genome-wide association studies, SNP single nucleotide polymorphism

Fig. 1

Number of H3K27ac, H3K4me1, and H3K4me3 peak regions (histone marks) in linkage disequilibrium blocks. a Box plot of the raw number of H3K27ac regions in CD4+ cells, CD19+ cells, and neutrophils. b Box plot of the raw number of H3K4me1 regions in CD4+ cells, CD19+ cells, and neutrophils. c Box plot of the raw number of H3K4me3 regions in CD4+ and CD19+ cells

Histone marks in the SNP linkage disequilibrium blocks in neutrophils Linkage disequilibrium blocks were obtained from the 1000 Genomes Project pilot 1 and/or HapMap3 database Chr chromosome, GWAS genome-wide association studies, SNP single nucleotide polymorphism Number of H3K27ac, H3K4me1, and H3K4me3 peak regions (histone marks) in linkage disequilibrium blocks. a Box plot of the raw number of H3K27ac regions in CD4+ cells, CD19+ cells, and neutrophils. b Box plot of the raw number of H3K4me1 regions in CD4+ cells, CD19+ cells, and neutrophils. c Box plot of the raw number of H3K4me3 regions in CD4+ and CD19+ cells

Enhancer elements within CD4+ T and CD19+ B cells

Using the same approaches as we used for neutrophils, we interrogated available H3K4me1, H3K4me3, and H3K27ac ChIP-seq data from the Roadmap Epigenomics project for CD4+ T and CD19+ B cells. We found considerable overlap for the locations of H3K4me1 and H3K27ac peaks between our neutrophil data and resting CD4+ T cells. Functional elements were found within 39 of the 46 SNPs of interest in CD4+ T cells. Epigenetic evidence for active enhancers was found in 30 LD blocks, and for poised enhancers in nine LD blocks; no LD blocks contained H3K27ac marks alone (Table 2).
Table 2

Histone marks in the SNP linkage disequilibrium blocks in CD4+ T cells

GWAS index SNPChrLinkage disequilibrium blocksNumber of H3K27ac marksNumber of H3K4me1 marksNumber of H3K4me3 marksEnhancer marks (yes/no)
rs100288054102736456–102762581000No
rs100367485150457485–150461049183522Yes
rs104886317128585616–128711874113014Yes
rs105931212129277164–1292885342190Yes
rs1077462512111884608–1120077562150Yes
rs10807150635154315–352787968911653Yes
rs109365993169477506–169528523302236Yes
rs116440341685967285–8598053413316Yes
rs118893412191943742–191970120090Yes
rs120224181192521591–192535107000No
rs1270942631704294–321754152969228Yes
rs1280220011566936–567627000No
rs16105551867523453–67544046010Yes
rs18012741161470042–161479745006Yes
rs188588913100084234–100104106203810Yes
rs20094531165399528–654053005173Yes
rs2238811657386566–57317134000No
rs2286672174706123–4712617077Yes
rs22895831575285114–7537001246614Yes
rs23057721952021247–52034940000No
rs24211845158884119–158886939030Yes
rs24316975159879978–159883217000No
rs24766011114303808–114377568655325Yes
rs26630521050045456–50081232000No
rs27325491135073852–3509819323470Yes
rs2736340811337587–113530000211Yes
rs29415091737885383–38077485228342116Yes
rs30245051206939904–2069439681470Yes
rs345729431631272353–312768110110Yes
rs37687922213871709–213890232002Yes
rs37940601171138710–71203790142928Yes
rs4917014750278187–5030881159595Yes
rs49484961063803472–63819903415327Yes
rs616166832239747050–39756650000No
rs65684316106574794–1065976394340Yes
rs6740462265654364–6566727202828Yes
rs69320566138132123–1382437009711753Yes
rs740840126327008–636006831250Yes
rs74442221920817–21983260513313Yes
rs75564691198607998–19863758216641126Yes
rs77264145133232663–13877357309809318Yes
rs794176511128499000–128500215892Yes
rs849142728162674–282000971252Yes
rs9462027634563164–348285536811066Yes
rs96526011611164567–112078949780Yes
rs97829551235907825–236041129223324Yes

Linkage disequilibrium blocks were obtained from the 1000 Genomes Project pilot 1 and/or HapMap3 database

Chr chromosome, GWAS genome wide association studies, SNP single nucleotide polymorphism

Histone marks in the SNP linkage disequilibrium blocks in CD4+ T cells Linkage disequilibrium blocks were obtained from the 1000 Genomes Project pilot 1 and/or HapMap3 database Chr chromosome, GWAS genome wide association studies, SNP single nucleotide polymorphism In CD19+ B cells, we identified functional elements found in 42 of 46 SNPs of interest. Epigenetic evidence for active enhancers was present in 32 LD blocks, and for poised enhancers in 10 LD blocks; no LD blocks contained H3K27ac histone marks alone (Table 3). There are thus more SNPs of interest in SLE with functional elements within lupus-associated LD blocks in CD19+ cells than in either CD4+ cells or neutrophils (p < 0.05). Representative screenshots from the UCSC Genome Browser with two of the LD blocks of interest are shown in Fig. 2.
Table 3

Histone marks in the SNP linkage disequilibrium blocks in CD19+ B cells

GWAS index SNPChrLinkage disequilibrium blocksNumber of H3K27ac marksNumber of H3K4me1 marksNumber of H3K4me3 marksEnhancer marks (yes/no)
rs100288054102736456–102762581446113Yes
rs100367485150457485–150461049152514Yes
rs104886317128585616–128711874436211Yes
rs105931212129277164–12928853433661Yes
rs1077462512111884608–1120077560340Yes
rs10807150635154315–352787967111033Yes
rs109365993169477506–169528523321833Yes
rs116440341685967285–859805344910623Yes
rs118893412191943742–191970120000No
rs120224181192521591–192535107000No
rs1270942631704294–321754155758123Yes
rs1280220011566936–567627000No
rs16105551867523453–67544046000No
rs18012741161470042–161479745080Yes
rs188588913100084234–10010410617433Yes
rs20094531165399528–654053000120Yes
rs2238811657386566–573171340300Yes
rs2286672174706123–4712617177Yes
rs22895831575285114–75370012231228Yes
rs23057721952021247–5203494023511Yes
rs24211845158884119–1588869390180Yes
rs24316975159879978–159883217020Yes
rs24766011114303808–114377568183213Yes
rs26630521050045456–50081232010Yes
rs27325491135073852–350981936470Yes
rs2736340811337587–11353000407129Yes
rs29415091737885383–3807748523546884Yes
rs30245051206939904–2069439680480Yes
rs345729431631272353–312768110360Yes
rs37687922213871709–2138902320100Yes
rs37940601171138710–71203790102822Yes
rs4917014750278187–5030881117570Yes
rs49484961063803472–638199038010117Yes
rs616166832239747050–397566505170Yes
rs65684316106574794–1065976394140Yes
rs6740462265654364–6566727212027Yes
rs69320566138132123–1382437005711520Yes
rs740840126327008–636006830260Yes
rs74442221920817–21983260148810Yes
rs75564691198607998–198637582478126Yes
rs77264145133232663–138773575401176284Yes
rs794176511128499000–12850021519450Yes
rs849142728162674–28200097451200Yes
rs9462027634563164–348285539517141Yes
rs96526011611164567–1120789431820Yes
rs97829551235907825–236041129387115Yes

Linkage disequilibrium blocks were obtained from the 1000 Genomes Project pilot 1 and/or HapMap3 database

Chr chromosome, GWAS genome-wide association studies, SNP single nucleotide polymorphism

Fig. 2

Representative screenshots of functional elements within CD19+ cell genomes generated from the University of California, Santa Cruz genome browser. Red boxes Potential active enhancers, showing signal peak regions in H3K4me1, H3K4me3, and/or H3K27ac. Upper panel LD block of SNP rs10028805. Genes within this block are noted. The LD block contains enhancer regions with multiple potential TFBSs (gray and/or black bars under the TF ChIP-seq track). Lower panel LD block of SNP rs2941509. Similar findings as in Fig. 1a are noted. ChIP data on the H3K4me1, H3K4me3, and H3K27ac enhancers are from the Roadmap Epigenomics project. ChIP-seq chromatin immunoprecipitation sequencing, Chr chromosome, hg19 human genome 19, ENCODE Encyclopedia of Functional DNA Elements

Histone marks in the SNP linkage disequilibrium blocks in CD19+ B cells Linkage disequilibrium blocks were obtained from the 1000 Genomes Project pilot 1 and/or HapMap3 database Chr chromosome, GWAS genome-wide association studies, SNP single nucleotide polymorphism Representative screenshots of functional elements within CD19+ cell genomes generated from the University of California, Santa Cruz genome browser. Red boxes Potential active enhancers, showing signal peak regions in H3K4me1, H3K4me3, and/or H3K27ac. Upper panel LD block of SNP rs10028805. Genes within this block are noted. The LD block contains enhancer regions with multiple potential TFBSs (gray and/or black bars under the TF ChIP-seq track). Lower panel LD block of SNP rs2941509. Similar findings as in Fig. 1a are noted. ChIP data on the H3K4me1, H3K4me3, and H3K27ac enhancers are from the Roadmap Epigenomics project. ChIP-seq chromatin immunoprecipitation sequencing, Chr chromosome, hg19 human genome 19, ENCODE Encyclopedia of Functional DNA Elements While it is difficult at this time to determine exact differences in the acetylation and methylation of patients with SLE compared with healthy controls due to the scarcity of available data, we did perform an analysis of differentially methylated regions as identified by Absher et al. [27] in adult SLE patients. This analysis revealed only one gene (PBX2, on chromosome 6) lying within the same LD block as rs1270942 to be aberrantly methylated in T cells, B cells, and/or monocytes in SLE patients. In addition, analysis of differentially methylated regions identified by Coit et al. [28] in the neutrophils of adult SLE patients compared with healthy adult data from our laboratory and available in Roadmap Epigenomics revealed that none of these regions were located within the LD blocks containing the SLE-associated SNPs. Less than 40% of these regions contained enhancer marks in healthy adult neutrophils. Fewer than 1/3 of these regions contained enhancer marks in healthy adult CD4+ and CD19+ cells.

Transcription factor binding sites at enhancer regions in LD blocks in CD4+ cells, CD19+ cells, and neutrophils

We next sought to further test the likely functional significance of H3K4me1, H3K4me3, and H3K27ac enrichment within the SLE-associated LD blocks. We therefore analyzed the TF ChIP-seq data from blood cells obtained from the UCSC Genome Browser ENCODE data portal [29] to determine whether there was significant enrichment for TF binding within the enhancer regions located within SLE-associated LD blocks compared with other regions (Fig. 3). We investigated both promoter and nonpromoter regions within the regions where histone marks (H3K4me1, H3K4me3, and H3K27ac) are associated with enhancer activities. As expected, promoter regions within these LD blocks (defined as (−5 K, 1 K) of transcription start sites) are highly enriched for TF binding sites. Furthermore, we identified more enrichment for TF binding sites in H3K4me3 peak regions than in either H3K27ac or H3K4me1 peak regions in promoter sites in CD19+ and CD4+ T cells (p < 0.05). Overall, the LD blocks containing lupus-associated SNPs appeared to be in active, dynamic regions of leukocyte genomes as determined by the abundance of transcription factor binding motifs within these regions
Fig. 3

Enrichment of TFBSs in enhancer regions. a Heatmap of TFBSs in H3K27ac, H3K4me1, and H3K4me3 peak regions in promoter and distal regions in CD19+ cells. b Heatmap of TFBS in H3K27ac, H3K4me1, and H3K4me3 peak regions in promoter and distal regions in CD4+ cells. c Heatmap of TFBSs in H3K27ac and H3K4me1 peak regions in promoter and distal regions in neutrophils. Normalized rank: > 0 enrichment (red); <0 depletion (blue). TF transcription factor (Color figure online)

Enrichment of TFBSs in enhancer regions. a Heatmap of TFBSs in H3K27ac, H3K4me1, and H3K4me3 peak regions in promoter and distal regions in CD19+ cells. b Heatmap of TFBS in H3K27ac, H3K4me1, and H3K4me3 peak regions in promoter and distal regions in CD4+ cells. c Heatmap of TFBSs in H3K27ac and H3K4me1 peak regions in promoter and distal regions in neutrophils. Normalized rank: > 0 enrichment (red); <0 depletion (blue). TF transcription factor (Color figure online) Of note, 23 out of 46 SNP regions have shared histone modifications in all three cell types investigated. There are 102 genes located within the 46 SNP LD blocks, which are involved in 26 Panther pathways, including T-cell and B-cell activation, and Jak/STAT signaling pathways (Additional file 1: Table S1). Moreover, Farh et al. [30] demonstrated that many causal variants which map to immune-cell enhancers may gain histone acetylation and transcribe enhancer-associated RNA upon immune stimulation. This could indicate that the majority of SNPs are functional SNPs. However, expression quantitative loci analysis (eQTL) revealed that only one SNP (rs2736340) was associated with a target gene (FAM167A). Similarly, when the SNPs of interest were compared with genes identified by Bennett et al [31]. whose expression was upregulated in SLE patients, only one gene was found to lie in the same LD block as one of the identified SNPs: a phorbolin-1 like gene from the interferon family lies in the same LD block as SNP rs61616683.

Discussion

Multiple GWAS in human disease have yielded surprising data demonstrating that a significant majority of disease-associated polymorphisms are located within noncoding regions of the genome [8, 9], i.e., those regions of the genome where transcription is coordinated on a genome-wide basis [32]. In fact, only 1–2% of the human genome is believed to span protein-coding genes [33, 34] and the remaining DNA is believed to incorporate an abundance of regulatory elements that contribute to maintenance of a cell’s identity and/or regulate specific cell functions. Results of recent GWAS in SLE also illustrate this point. Of 46 SNPs identified by Bentham et al. and Sun et al. [17, 18] as conferring risk for SLE, only 16 lie within coding regions. In this study, we demonstrate that these SLE-associated SNPs lie within LD blocks containing histone marks commonly associated with enhancer function. We identified these marks in three cell types known to contribute to SLE pathogenesis and/or disease manifestations: CD4+ T cells, CD19+ B cells, and neutrophils. Enhancers are cis-acting, active regions of DNA that promote gene transcription. Enhancers act by binding transcription factors and other transcriptional regulators that then alter the three-dimensional conformation of chromatin and facilitate the interaction between gene promoters and protein–DNA complexes. Enhancers may lie considerable distances from the promoters they regulate and may not regulate the genes closest to them [35]. Enhancers may also be cell-type specific and tissue specific, and may regulate more than one gene [19, 36]. For example, Martin et al. [35] recently used HiC chromosome capture approaches to identify long-range interactions between autoimmune disease risk loci and target genes. They demonstrated that SNPs lying large distances apart (in genomic terms) might either interact with the nearest gene or bypass multiple genes lying nearer to them to interact with those situated more distally. The finding that the genetic risk for SLE lies largely within functional, noncoding regions of the human genome that contain regulatory elements in neutrophils, CD4+ T cells, and CD19+ B cells invites a new perspective in disease pathogenesis. All three cell types have been implicated in the pathogenesis of SLE [12-16]. Preliminary studies in adult SLE used RNAseq and found differentially expressed genes comprising different cellular functions from distinct leukocyte populations (in particular, from B cells and monocytes) [37]. Thus, cell-type-specific differences in gene expression may contribute to the pathogenesis of SLE. Similar findings of risk in the noncoding genome have been observed in the neutrophils and CD4+ T cells of JIA patients [11]. Our results demonstrate that, particularly in lymphocytes, there is copious transcription factor binding in H3K4me1/H3K4me3/H327ac-marked regulatory regions encompassed by the LD blocks containing SLE-associated SNPs, providing further evidence that these are important regulatory regions. Shi et al. [38] have shown that both promoters and enhancers exhibit significant changes in monocytes from SLE patients when compared with healthy controls. In particular, differentially methylated regions in SLE were significantly enriched in potential interferon-related TFBS. Furthermore, the importance of histone modifications (e.g., epigenetic marks) in regulating transcription is demonstrated in the recent work of Zhang et al. These authors identified distinct patterns of H3K4me3 methylation associated with aberrations in gene expression in monocytes from patients with SLE [39]. Their results demonstrated that genes overexpressed in SLE tended to respond to H3K4me3 changes downstream of transcription start sites. Our findings, as well the expanded understanding of gene regulation that has emerged in the past 10 years, suggest a new paradigm of SLE pathogenesis that includes complex interactions between the innate and adaptive immune systems that may emerge because of disordered transcriptional regulation in both lymphoid and myeloid cells. The field of functional genomics is demonstrating that transcription is a complex process that must be regulated and coordinated on a genome-wide basis to maintain normal cellular function [32]. For example, transcription factors do not simply bind to DNA independently from other proteins, but rather interact with one another in layers of complexity. This newer finding suggests that transcriptional and regulatory networks are created for complex biological processes, and that even small perturbations of this system (e.g., from genetic variance or environmentally-induced epigenetic alterations) could accumulate over time. These cumulative small perturbations result in significant disorders in the regulation and coordination of transcription, ultimately leading to the development of disease. These newer data suggest that complex disorders may be due less to “bad genes” than to faulty gene regulation [40, 41]. Perhaps SLE, and many of the other conditions we refer to as “autoimmune diseases,” may be better understood as a disease of disordered transcription. It is important to keep in mind the limitations of our study. First, both Bentham et al. and Sun et al. [17, 18] focused on regions of immunologic interest when performing GWAS, in that both groups used the Illumina Immunochip. The GWAS thus identified only selected genomic regions of specific immunologic interest that confer risk for SLE. It will be important to investigate whether additional risk loci would be revealed with a broadening of the query to genes that regulate chromatin access, or genes that regulate specific epigenetic processes (e.g., DNA methyl transferases, histone deacetylases, etc.). In addition, as already mentioned briefly, enhancers appear to be cell-type specific and tissue specific. The enhancer marks used in this study for neutrophils and lymphocytes as mapped by the Roadmap Epigenomics project were detected in adult blood cells. There is the possibility that slightly different results could be obtained from cells in pediatric SLE patients. Thus, our results may not be generalizable or extrapolated, for example, to a pediatric population without further investigation. Indeed, we already know that the epigenomes of pathologically relevant cells may differ from epigenetic marks annotated in Roadmap data [42]. Coit et al. [40], for example, have shown that the methylome in CD4+ T cells of patients with SLE shows distinct differences from what is observed in healthy controls. Moreover, the SLE patients included in the GWAS studies were generated from heterogeneous populations and most likely included patients with varying clinical manifestations. It is well known that SLE can affect different organ systems in the body with varying severity, and that treatment of these manifestations varies from milder immunosuppression with hydroxychloroquine alone to more aggressive immunosuppression with anti-neoplastic agents for disease control. Recently, Haddon et al. [43] demonstrated that pediatric SLE patients with kidney involvement possessed a different autoantibody profile than those without kidney involvement. Other groups then showed differences in expression levels of RNA and microRNAs in lupus nephritis biopsies [44, 45], suggesting that different clinical phenotypes may have individualized gene expression signatures. Our results also have implications for the optimization of therapy in patients with SLE. Jiang et al. [20] demonstrated that response to treatment in JIA suggests that children on treatment for JIA can experience a long period of asymptomatic disease remission, but continue to have immune cell dysregulation. Our current treatments for SLE do not “normalize” immune cell function, as evidenced by continued periods of disease remission and flare. A better understanding of how epigenetic signatures drive gene expression signatures in SLE patients will allow us to better determine which patients with which SLE phenotypes will respond best to different treatments given their epigenetic profiles.

Conclusion

In this study, we have shown that disease-associated SNPs in SLE lie within LD blocks rich in functional elements regulating and coordinating gene transcription. These findings provide new insight into possible links between genetic and epigenetic risk factors for SLE.
  44 in total

1.  SNAP: a web-based tool for identification and annotation of proxy SNPs using HapMap.

Authors:  Andrew D Johnson; Robert E Handsaker; Sara L Pulit; Marcia M Nizzari; Christopher J O'Donnell; Paul I W de Bakker
Journal:  Bioinformatics       Date:  2008-10-30       Impact factor: 6.937

2.  Identification and characterization of enhancers controlling the inflammatory gene expression program in macrophages.

Authors:  Serena Ghisletti; Iros Barozzi; Flore Mietton; Sara Polletti; Francesca De Santa; Elisa Venturini; Lorna Gregory; Lorne Lonie; Adeline Chew; Chia-Lin Wei; Jiannis Ragoussis; Gioacchino Natoli
Journal:  Immunity       Date:  2010-03-04       Impact factor: 31.745

Review 3.  Clinical presentation of human C1q deficiency: How much of a lupus?

Authors:  Mihaela Stegert; Merete Bock; Marten Trendelenburg
Journal:  Mol Immunol       Date:  2015-04-03       Impact factor: 4.407

4.  Disease-Associated Single-Nucleotide Polymorphisms From Noncoding Regions in Juvenile Idiopathic Arthritis Are Located Within or Adjacent to Functional Genomic Elements of Human Neutrophils and CD4+ T Cells.

Authors:  Kaiyu Jiang; Lisha Zhu; Michael J Buck; Yanmin Chen; Bradley Carrier; Tao Liu; James N Jarvis
Journal:  Arthritis Rheumatol       Date:  2015-07       Impact factor: 10.995

5.  OX40 Ligand Contributes to Human Lupus Pathogenesis by Promoting T Follicular Helper Response.

Authors:  Clément Jacquemin; Nathalie Schmitt; Cécile Contin-Bordes; Yang Liu; Priya Narayanan; Julien Seneschal; Typhanie Maurouard; David Dougall; Emily Spence Davizon; Hélène Dumortier; Isabelle Douchet; Loïc Raffray; Christophe Richez; Estibaliz Lazaro; Pierre Duffau; Marie-Elise Truchetet; Liliane Khoryati; Patrick Mercié; Lionel Couzi; Pierre Merville; Thierry Schaeverbeke; Jean-François Viallard; Jean-Luc Pellegrin; Jean-François Moreau; Sylviane Muller; Sandy Zurawski; Robert L Coffman; Virginia Pascual; Hideki Ueno; Patrick Blanco
Journal:  Immunity       Date:  2015-06-09       Impact factor: 31.745

6.  The NIH Roadmap Epigenomics Mapping Consortium.

Authors:  Bradley E Bernstein; John A Stamatoyannopoulos; Joseph F Costello; Bing Ren; Aleksandar Milosavljevic; Alexander Meissner; Manolis Kellis; Marco A Marra; Arthur L Beaudet; Joseph R Ecker; Peggy J Farnham; Martin Hirst; Eric S Lander; Tarjei S Mikkelsen; James A Thomson
Journal:  Nat Biotechnol       Date:  2010-10       Impact factor: 54.908

7.  Association of systemic lupus erythematosus with C8orf13-BLK and ITGAM-ITGAX.

Authors:  Geoffrey Hom; Robert R Graham; Barmak Modrek; Kimberly E Taylor; Ward Ortmann; Sophie Garnier; Annette T Lee; Sharon A Chung; Ricardo C Ferreira; P V Krishna Pant; Dennis G Ballinger; Roman Kosoy; F Yesim Demirci; M Ilyas Kamboh; Amy H Kao; Chao Tian; Iva Gunnarsson; Anders A Bengtsson; Solbritt Rantapää-Dahlqvist; Michelle Petri; Susan Manzi; Michael F Seldin; Lars Rönnblom; Ann-Christine Syvänen; Lindsey A Criswell; Peter K Gregersen; Timothy W Behrens
Journal:  N Engl J Med       Date:  2008-01-20       Impact factor: 91.245

8.  Interferon and granulopoiesis signatures in systemic lupus erythematosus blood.

Authors:  Lynda Bennett; A Karolina Palucka; Edsel Arce; Victoria Cantrell; Josef Borvak; Jacques Banchereau; Virginia Pascual
Journal:  J Exp Med       Date:  2003-03-17       Impact factor: 14.307

9.  High-density genotyping of immune-related loci identifies new SLE risk variants in individuals with Asian ancestry.

Authors:  Celi Sun; Julio E Molineros; Loren L Looger; Xu-Jie Zhou; Kwangwoo Kim; Yukinori Okada; Jianyang Ma; Yuan-Yuan Qi; Xana Kim-Howard; Prasenjeet Motghare; Krishna Bhattarai; Adam Adler; So-Young Bang; Hye-Soon Lee; Tae-Hwan Kim; Young Mo Kang; Chang-Hee Suh; Won Tae Chung; Yong-Beom Park; Jung-Yoon Choe; Seung Cheol Shim; Yuta Kochi; Akari Suzuki; Michiaki Kubo; Takayuki Sumida; Kazuhiko Yamamoto; Shin-Seok Lee; Young Jin Kim; Bok-Ghee Han; Mikhail Dozmorov; Kenneth M Kaufman; Jonathan D Wren; John B Harley; Nan Shen; Kek Heng Chua; Hong Zhang; Sang-Cheol Bae; Swapan K Nath
Journal:  Nat Genet       Date:  2016-01-25       Impact factor: 38.330

10.  Ethnicity-specific epigenetic variation in naïve CD4+ T cells and the susceptibility to autoimmunity.

Authors:  Patrick Coit; Mikhail Ognenovski; Elizabeth Gensterblum; Kathleen Maksimowicz-McKinnon; Jonathan D Wren; Amr H Sawalha
Journal:  Epigenetics Chromatin       Date:  2015-11-24       Impact factor: 4.954

View more
  10 in total

1.  Broadening our understanding of the genetics of Juvenile Idiopathic Arthritis (JIA): Interrogation of three dimensional chromatin structures and genetic regulatory elements within JIA-associated risk loci.

Authors:  Kaiyu Jiang; Haeja Kessler; Yungki Park; Marc Sudman; Susan D Thompson; James N Jarvis
Journal:  PLoS One       Date:  2020-07-30       Impact factor: 3.240

2.  The Chromatin Accessibility Landscape of Peripheral Blood Mononuclear Cells in Patients With Systemic Lupus Erythematosus at Single-Cell Resolution.

Authors:  Haiyan Yu; Xiaoping Hong; Hongwei Wu; Fengping Zheng; Zhipeng Zeng; Weier Dai; Lianghong Yin; Dongzhou Liu; Donge Tang; Yong Dai
Journal:  Front Immunol       Date:  2021-05-18       Impact factor: 7.561

3.  Chromatin landscapes and genetic risk for juvenile idiopathic arthritis.

Authors:  Lisha Zhu; Kaiyu Jiang; Karstin Webber; Laiping Wong; Tao Liu; Yanmin Chen; James N Jarvis
Journal:  Arthritis Res Ther       Date:  2017-03-14       Impact factor: 5.156

Review 4.  Thinking BIG rheumatology: how to make functional genomics data work for you.

Authors:  Deborah R Winter
Journal:  Arthritis Res Ther       Date:  2018-02-12       Impact factor: 5.156

5.  Overall Downregulation of mRNAs and Enrichment of H3K4me3 Change Near Genome-Wide Association Study Signals in Systemic Lupus Erythematosus: Cell-Specific Effects.

Authors:  Zhe Zhang; Lihua Shi; Li Song; Kelly Maurer; Michele A Petri; Kathleen E Sullivan
Journal:  Front Immunol       Date:  2018-03-13       Impact factor: 7.561

Review 6.  Using Chromatin Architecture to Understand the Genetics and Transcriptomics of Juvenile Idiopathic Arthritis.

Authors:  Haeja Kessler; Kaiyu Jiang; James N Jarvis
Journal:  Front Immunol       Date:  2018-12-14       Impact factor: 7.561

7.  Variant to Gene Mapping to Discover New Targets for Immune Tolerance.

Authors:  Parul Mehra; Andrew D Wells
Journal:  Front Immunol       Date:  2021-04-15       Impact factor: 7.561

8.  Broadening our understanding of genetic risk for scleroderma/systemic sclerosis by querying the chromatin architecture surrounding the risk haplotypes.

Authors:  Kerry E Poppenberg; Vincent M Tutino; Evan Tarbell; James N Jarvis
Journal:  BMC Med Genomics       Date:  2021-04-24       Impact factor: 3.063

9.  Polymorphisms of ATG5 Gene Are Associated with Autoimmune Thyroid Diseases, Especially Thyroid Eye Disease.

Authors:  Wen Wang; Zheng-Yao Yu; Rong-Hua Song; Shuang-Tao He; Liang-Feng Shi; Jin-An Zhang
Journal:  J Immunol Res       Date:  2022-04-26       Impact factor: 4.493

10.  Personalized therapy design for systemic lupus erythematosus based on the analysis of protein-protein interaction networks.

Authors:  Elizabeth J Brant; Edward A Rietman; Giannoula Lakka Klement; Marco Cavaglia; Jack A Tuszynski
Journal:  PLoS One       Date:  2020-03-19       Impact factor: 3.240

  10 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.