Abstract
Genetics (i.e., mutations) has been assumed to be the major factor in rheumatoid arthritis (RA) etiology, but accounts for a minority of the variance in disease risk for RA. In contrast to genetics, the environment can have dramatic impacts on epigenetics that associate with disease etiology. The current study used buccal cells and purified blood monocytes from two different clinical cohorts involving Caucasian or African American female populations with or without arthritis. The differential DNA methylation regions (DMRs) between the control and RA populations were identified with an epigenome-wide association study. The DMRs (i.e., epimutations) identified in the buccal cells and monocytes were found to be distinct. The DMR associated genes were identified and many have previously been shown to be associated with arthritis. Observations demonstrate DNA methylation epimutation RA biomarkers are cell type specific and similar findings were observed with the two racial background populations. Rheumatoid arthritis susceptibility epigenetic diagnosis appears feasible and may improve the clinical management of RA and allowpreventative medicine considerations.
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Introduction
Rheumatoid arthritis (RA) is a chronic autoimmune inflammatory disease predominant in females with a worldwide prevalence of 0.5–1.0%1. The frequency of RA has increased in the past few decades, and is proportionally higher in North American populations1,2. RA is characterized by synovial hyperplasia and joint destruction3. RA impacts both African American and Caucasian populations, but does have higher comorbidity4 prevalence in African American populations. Coronary heart disease is more common in rheumatoid arthritis populations4, as in other chronic inflammatory diseases. Inflammatory lung disease is a common extra-articular manifestation5, along with rheumatoid nodules, secondary Sjogrens from endocrine gland inflammation, and more rarely rheumatoid vasculitis in this multisystem autoimmune disease. Correlations between RA and neurodegeneration have also been observed6.
Environment and lifestyle have been shown to influence the risk of RA7. Smoking and nutrition are two of the major factors linked to RA risk8,9. Nutrition and dieting habits also have a role in RA risk and progression10. Environmental toxicant exposures have been shown to be involved in the etiology of rheumatoid arthritis11,12. In addition to environmental toxicants, alcohol consumption is a risk factor for the incidence of RA13. Similar observations have been shown in various worldwide populations and ethnic backgrounds14,15,16. Therefore, environmental factors and lifestyle have a significant impact on the etiology and progression of rheumatoid arthritis.
Genetics has been assumed to be a major factor in rheumatoid arthritis etiology. Initially, gene associations were identified that involved a number of cellular pathways and immune related processes, such as the major histocompatibility complex (MHC), in particular the HLA-DRB1 and closely related genes17. These types of genetic mutation gene associations have been estimated to explain a minority of the variance in disease risk for RA18,19. A number of genome-wide association studies (GWAS) have been performed and identified hundreds of single-nucleotide polymorphisms (SNPs) that are associated with RA and speculated to impact a large number of biological processes20. Potential secondary gene associations suggest genetics can potentially explain 30% of familial disease cases18. Although these GWAS and similar gene impact studies have helped to better understand the molecular basis of RA, an alternate molecular process involving epigenetics is now assumed to be equally important and a significant factor in the etiology of RA21. Since environmental factors generally cannot directly change DNA sequence to alter genetic processes, the environmental impacts on RA etiology observed involve epigenetics. Epigenetics provides the molecular process for environmental factors such as nutrition and toxicants to impact genetics22. Therefore, an integration of environment, epigenetics and genetics is now thought to be involved in the etiology and progression of rheumatoid arthritis21,23,24.
Epigenetics is defined as “molecular factors and processes around DNA that regulate genome activity independent of DNA sequence, and are mitotically stable”22. Epigenetic factors include DNA methylation, histone modifications, non-coding RNA (ncRNA), chromatin structure and RNA methylation22. Although all these processes will be involved in RA, DNA methylation at 5-methylcytosine has been the primary epigenetic process investigated in rheumatoid arthritis21,25,26. Epigenome-wide association studies (EWAS) have been used to identify specific immune gene associations21,27, as have genome-wide investigations21. Some studies have investigated blood28, which contains over 20 different cell types. In contrast to genetics, where the DNA sequence is the same between different cell types, each individual cell type has a unique epigenome to give the cell type its specificity. Therefore, mixed cell type (e.g., blood or mixed T cell lymphocytes) analysis can be misleading and reflect changes in cell populations instead of epigenetic change. A number of RA studies have investigated purified cell populations to provide insights into rheumatoid arthritis etiology including B lymphocytes29, monocytes30, and synoviocytes31,32,33,34, which have distinct roles in RA etiology. Therefore, epigenetic analysis has provided insight into the pathology of rheumatoid arthritis21,35.
The potential role of inheritance of RA has been demonstrated through familial clusters and parental transmission of arthritis susceptibility36,37,38. A non-genetic form of inheritance has been previously described that involves epigenetic alterations in the germline (sperm and egg) and the inheritance to subsequent generations, termed epigenetic transgenerational inheritance22,39. When the germ cell transmits the altered epigenetics to the developing embryo stem cells, all subsequent somatic cells developed will have altered epigenomes and transcriptomes. Those cell types sensitive to the shift in epigenetics will have a susceptibility to develop disease later in life22. Therefore, various somatic cell populations could be used as surrogate biomarker cell types to identify disease susceptibility and disease conditions. The role of epigenetic biomarkers in autoimmune disease and rheumatoid arthritis has previously been discussed40,41. A cell type population previously shown to have epigenetic alterations that is functionally related to disease activity in RA is the monocyte30,42. For the development of a biomarker cell type for disease susceptibility, the buccal cells are easily obtained from a cheek swab and have a high level of purity. Therefore, the current study used purified monocytes and buccal cells from a Caucasian population to develop a potential biomarker for rheumatoid arthritis. In addition, a distinct African American population cohort was also used with collection of buccal cells. This is one of the first observations that human buccal cells can be used as a surrogate marker cell for the detection of disease associated epimutations. Both Caucasian and African American population clinical cohorts were used to compare non-arthritis individuals versus arthritis individuals to identify RA associated DNA methylation alterations, termed epimutations. A combined analysis of Caucasian and African American populations provided an epigenetic biomarker in buccal cells for RA that was more efficient for diagnosis of RA susceptibility than either population alone. These epimutations can potentially be used as a biomarker for RA to improve the detection and clinical management43,44 of the disease. The current study provides the proof of concept that buccal cell RA epigenetic biomarkers may exist, however, future larger clinical trial studies are required to optimize the epigenetic biomarker.
Results
Females of similar age and race were collected for comparison of individuals with and without rheumatoid arthritis, Table 1. The white Caucasian non-Hispanic female samples were obtained by the Arthritis Northwest (ANW) Clinic in Spokane, Washington. The African American (AA) female samples were obtained by Dx Biosamples, LLC in San Diego, California, with sample collections in the Los Angeles California area. Institutional review board (IRB) approvals were obtained for the study from both sources. The individual sample information for age, race, and clinical information is presented in Table 1. Upon collection of buccal cell swabs, the samples were frozen at − 20 °C then shipped on dry ice and stored at − 80 °C until use. The procedure and sample processing for buccal cells is presented in the Supplemental Methods. For Caucasian ANW clinic patients, a blood sample was also obtained and shipped immediately on ice for isolation of monocytes, as described in the Methods. Monocytes were purified with an antibody bead procedure, as previously described45. After isolation, the monocytes were stored at- − 80 °C prior to use. The Caucasian (CC) buccal cell control without RA (n = 13) and with RA (n = 13) were compared. The Caucasian monocyte cell control without RA (n = 13) and with RA (n = 13) were compared. The African American (AA) buccal cell control without RA (n = 9) and with RA (n = 13) were compared. A combination of Caucasian and African American samples without (n = 23) and with RA (n = 26) were compared. The individual sample information is presented in Table 1 and provides clinical information and RA diagnostic information. The Caucasian samples had RA diagnostic assays of Rheumatoid Factor autoantibody (RF) and Citrullinated Peptide autoantibody (CCP), and more qualitative RA activity assays of Clinical Disease Activity Index (CDAI) with DAS28 and RAPID3 supportive analysis, Table 1.
The DNA was extracted from each sample as described in the Supplemental Methods. The DNA was then sonicated to 150–300 bp fragments and used for a methylated DNA immunoprecipitation (MeDIP) protocol, as described in the Supplemental Methods. This involved an antibody to 5-methylcytosine and a magnetic bead procedure46. This immunoprecipitated methylated DNA was then used to generate a sequencing library for an MeDIP-Seq analysis, as described in the Supplemental Methods. MeDIP-Seq allows for greater than 90% of the genome to be examined for this EWAS analysis. Each sample for the MeDIP-Seq analysis had approximately 25 million reads, and the quality control details are presented in the Supplemental Methods. The EdgeR statistical analysis was used to identify differential DNA methylation regions (DMRs). Various p-value thresholds are presented for each of the comparisons, and p < 1e−04 was selected for subsequent analysis, Fig. 1. The majority of DMRs had one significant 1 kb window, but some had multiple windows. The Caucasian (CC) control versus RA buccal had 362 DMRs (Fig. 1a), CC control versus RA monocytes 617 DMRs (Fig. 1b), AA control versus AA RA buccal had 364 DMRs (Fig. 1c), and combination of CC and AA RA all buccal had 308 DMRs (Fig. 1d). A venn diagram of the different comparison DMRs at p < 1e−04 had no overlap, except for the all buccal combined CC and AA that had approximately a 10% overlap, Fig. 1e. An extended overlap of the p < 1e−04 DMR comparisons with the others at a reduced statistical threshold of p < 0.05 was used to determine if a DMR overlap is present at a reduced threshold, Fig. 1f. From the horizontal row, the same cell type has 100% overlap, as anticipated. The same row allows potential overlaps at a reduced statistical threshold to be identified. The overlap was 11% between the Caucasian monocyte and buccal cell. The other overlaps were between 3 and 7%, Fig. 1f. Interestingly, the combined CC and AA (all buccal) analysis had a 74% overlap with the CC buccal and 87% with the AA buccal (Fig. 1f highlight), suggesting the combined analysis DMR set is optimal for an RA biomarker. Therefore, the majority of the DMRs for each specific distinct comparison were cell and race specific, while the combined CC and AA analysis had good overlap, Fig. 1f.
The information for each comparison set of DMRs is presented in Supplemental Tables S1, S2, S3 and S4. The DMR name, chromosomal location, start and stop nucleotide sites, length bp, number of 1 kb significant windows, EdgeR p-value, maximum log-fold change (maxLFC) (i.e., positive values being an increase in DNA methylation, and negative values a decrease in DNA methylation), CpG number and density, and DMR associated gene and gene category, are presented in Supplemental Tables S1–S4. The chromosomal locations of the DMRs are presented in Fig. 2a–d with chromosome number and location (megabase) indicated for each with a red arrowhead. The black boxes indicate a cluster of DMRs. All the chromosomes contain DMRs with this genome-wide analysis, Fig. 2a–d. Therefore, the RA DMRs (e.g., epimutations) are genome-wide. The DMR characteristics demonstrate a low CpG density, termed a CpG desert, of 1–3 CpG/100 bp, Supplemental Figure S1, for all the comparison DMRs. The sizes of the DMRs are predominantly 1 kb in size with some being 2–4 kb in size, Supplemental Figure S1, for all the comparisons. A comparison of the principal components in a Principal Component Analysis (PCA) demonstrates that the DMR components for the control versus RA cluster separately for each of the comparison groups, Fig. 3a–d. The only exception is with the Caucasian control versus RA monocytes, Fig. 3b, that has one control and one RA each that overlap with the PCA cluster. The overlapping RA group DMR at PC1 = − 8 and PC2 = 2.2 was 74 year age. The other individuals at > 70 year age were the DMRs at PC1 = − 4 and PCR = − 18, PC1 = 31 and PC2 = − 0.5, and PC1 = − 4 and PC2 = 9.2, Fig. 3b. Higher variability was observed with the > 70 year individuals. Therefore, the PCA indicates principal components of the DMRs are predominantly distinct between the control and arthritis groups. In addition, the Native American and individual not specified for race (Table 1) were not outliers with the PCA analysis (Fig. 3), so we included in the analysis. The Caucasian sample sets had a few 70 year and 30 year outliers compared to the mean of approximately 55 year samples, Table 1a. Reanalysis of the comparison sample sets deleting these samples did not impact significantly the DMR number nor statistics. Future studies are needed with larger sample sizes to more accurately determine the impact of age on the RA epigenetic biomarkers. The genome-wide statistical analysis with EdgeR demonstrated the monocyte analysis provided a false discovery rate (FDR) of < 0.1, but the buccal analysis gave an FDR of approximately 0.2. Therefore, the buccal cell DMR analysis was more variable than the monocyte analysis. The significance of each DMR is indicated with minimum p-value and minimum FDR in the Supplemental Tables S1–S4. Future studies require increased sample size when using buccal cells as a marker cell. The potential DMR biomarkers for rheumatoid arthritis identified demonstrated predominantly unique chromosomal locations for each comparison (Fig. 2), but similar genomic features, Supplemental Tables S1–S4. The RA DMR biomarkers appear cell type specific, and are distinct between the Caucasian and African American populations when analyzed separately. However, a combined CC and AA all buccal cell analysis did show strong overlap among the groups, Fig. 1f.
Less than half of the RA DMRs identified with each comparison had DMR associated genes within 10 kb of the DMR, Supplemental Tables S1–S4. The 10 kb distance is used to include the proximal and distal promoter regions of the genes. The RA DMR associated gene categories were identified and are presented in Fig. 4a. The DMR numbers for each associated gene functional category are presented for each comparison. The signaling, transcription, metabolism and receptor are predominant for each of the DMR comparisons. This does reflect the major gene categories within the human genome with metabolism, transcription and signaling being the largest gene categories. This gene category analysis was for an individual DMR gene association analysis and not to reflect group combined function. In contrast, a gene pathway analysis (KEGG) was performed, and those pathways in two or more different comparison DMR associated genes with similar function were identified in Fig. 4b. The metabolic pathway was excluded as it is present in all comparisons and over-represented in pathway analysis. The common signaling pathways include pathways in cancer, pathways in neurodegenerative disease, and specific pathways such as P13K-Akt, Fig. 4b.
The final analysis correlated the RA DMR associated genes with pathologies and processes. Pathway Studio was used to identify the associated pathologies, as described in the Supplemental Methods. The African American RA buccal cell DMR associated gene correlations to diseases are presented in Fig. 5a. Six of the major disease correlations were arthritis related. The others are cancer and neurodegenerative related. Therefore, the predominant African American RA DMRs in buccal cells are associated with arthritis pathologies, Fig. 5a. The Caucasian buccal cell RA DMR associated gene correlations with rheumatoid arthritis and arthritis pathologies are shown, Fig. 5b, with contiguous gene syndrome and intellectual disability as additional pathologies significantly correlated. The combination CC and AA analysis also provided DMR associated genes and arthritis gene associations, Fig. 6a. The Caucasian monocyte DMRs also predominantly associated with arthritis and RA correlated genes, with additional epilepsy and carcinoma associated genes, Fig. 6b. Observations demonstrate the RA DMRs identified with all the comparisons showed significant connections to genes correlated to arthritis pathologies, including rheumatoid arthritis. An additional analysis used the DMR associated genes for RA from each of the comparisons to identify known RA cellular process correlations, Fig. 7. Previous rodent and human studies have identified known gene correlations with RA associated cell processes, and these same genes and correlations were observed in the current study, Fig. 7 and Supplemental Table S5. Over 25 different RA gene cell processes were identified with a statistical significance p < 1e−06, with the four most significant being protein regulators of immune response, inflammatory response, innate immune response, and cellular immune response, Supplemental Table S5. These DMR associated rheumatoid arthritis gene cell process correlations are shown in Fig. 7 and Supplemental Table S5. Therefore, the RA DMR associated genes identified in the current study correlated to previously identified RA associated genes and cellular processes, as well as identified potential new RA associated genes.
Discussion
Rheumatoid arthritis impacts approximately one percent of the worldwide population, and some areas such as North America have a higher incidence of RA among the population21. RA is generally diagnosed today after the onset of the disease when clinical characteristics develop. Therefore, most diagnosis is based on symptomatic parameters. Although several RA biomarkers and diagnostics have been developed47,48, none are focused on early-stage biomarkers that can be used prior to the onset of clinical symptoms. The advantage of epimutations such as DNA methylation biomarkers is that they have been shown to develop early in life, or through epigenetic inheritance ancestrally, such that the biomarkers have the potential to act as diagnostics for preventative medicine treatments41,49. Such an early-stage RA biomarker or diagnostic has not been developed and is the focus of the current study. The clinical management and treatment of the disease has been shown to be more effective as a preventative treatment prior to disease onset. An example is the use of the chemotherapy tamoxifen, which has a low efficiency in treating breast cancer once the cancer has developed. However, tamoxifen can be effective as a preventative treatment for a female in her 30 s prior to disease development50. The possibility that current RA therapeutics may be more efficient as preventative treatments prior to the onset of disease remains to be investigated. The key factor in allowing these types of preventative therapeutics to be considered is the availability of an RA biomarker that can be used prior to the onset of disease or symptoms. The current study is designed to develop an epigenetic biomarker for RA that, due to the nature of environmental impacts on developmental programming of epigenetics, can potentially also act as an RA susceptibility diagnostic to facilitate a preventative medicine approach for the disease.
Genome-wide association studies (GWAS) that are used to identify genetic mutations have generally found that less than 1% of the population with a specific disease has correlated genetic mutations. This has become the major factor inhibiting effective genetic diagnostics for disease51. In contrast, epigenome-wide association studies (EWAS) often identify epimutations that are present in the majority of the population with a specific disease52. This allows EWAS studies to use smaller sample sizes compared to GWAS studies. The current study found RA DNA methylation DMR sites were present in the populations with RA when compared to those without, Fig. 1a–c. As previously demonstrated, epigenetic biomarkers are anticipated to be more efficient as a tool for disease and disease susceptibility analysis53,54. In the current study, two distinct control and RA clinical cohort populations were obtained for analysis. The Caucasian and African American populations were obtained at different locations under separate IRBs. Similar observations were made with both these clinical cohorts. Although the current study has the limitation of not having a blinded test set or distinct expanded clinical cohort, the current study does use two distinct clinical populations from different racial backgrounds, locations, and clinical sites for comparison. Interestingly, the Caucasian and African American population buccal cells had distinct RA DMRs with only a 3.6% overlap of 13 DMRs when analyzed separately, Fig. 1e. Observations suggest that ethnic background and race need to be considered in the development of epigenetic DNA methylation diagnostics for disease. One variable in this analysis is that the Caucasian samples were collected in Spokane, Washington, while the African American samples were collected in Los Angeles, California. Since epigenetics is environmentally responsive and inherited39, the demographics and collection regions will need to be considered. Spokane Washington is a moderate size city with less environmental contaminants versus Los Angeles, which is a large urban city with higher levels of pollutant exposure such as air pollution. The generational backgrounds will also be distinct between the populations, and ethnic and racial impacts on epigenetics has been observed55. However, when the CC and AA populations were combined, a DMR set with strong overlap with both the individual comparisons was identified, Fig. 1f. Therefore, expanded future studies should incorporate diverse race and ethnic background in the development of epigenetic DMR rheumatoid arthritis diagnostics. Observations from the current study demonstrate similar levels of epigenetic change (i.e., numbers of RA DMRs observed), but the majority of DMRs were distinct between the Caucasian and African American populations. This is one of the first observations for potential race and ethnic background impacts on the development of epigenetic disease biomarkers. Interestingly, the combination of the populations within the analysis generated a more efficient epigenetic biomarker for female RA susceptibility. Although the current study only provides the proof of concept potential biomarkers for RA may be developed, expanded clinical trials with larger sample size are now required. Diverse populations need to be considered in future studies and potential commercialization of such disease biomarkers.
The current study in the Caucasian population compared two different cell populations for the analysis of potential RA biomarkers. The monocytes are an immune related cell that has been shown to develop molecular alterations in RA patients relevant to the disease pathology56. As previously described, the alterations in epigenetics observed in the current study are relevant to RA, Figs. 6 and 7. In contrast, the buccal cells from a cheek swab have no distinct relationship to the RA disease pathology or etiology, but functions as a surrogate marker cell for epigenetic alterations. Buccal cells are one of the easiest purified cell populations to collect, which is required for epigenetics, and they are the least invasive for the patient. The blood collection, followed by monocyte cell purification, would not be an efficient biomarker cell to develop for RA compared to the buccal cell. Since the majority of disease has an early developmental exposure or impact that promotes the developmental origins of health and disease (DOHaD), all cell types in the body can be impacted by these early life events. Epigenetics is the primary mechanism involved in these developmental origins of disease, since genetic mutations are a minor component of disease correlations. Therefore, ancestral and early life exposure can impact the epigenetics of all cell types in the body such that marker cells like the buccal cells can be used to reflect epigenetic alterations associated with later life disease susceptibility and diagnosis. Although the buccal cells are simply a marker surrogate cell for epigenetic alterations, the current study demonstrates that a number of the RA DMRs identified do have associations with RA and generational arthritis, Figs. 5, 6 and 7. One of the major observations of the current study is that easily collected buccal cells may act as an effective surrogate marker cell for the epigenetic diagnosis of disease susceptibility.
Many of the DMR associated genes correlated with previously identified RA disease associated genes, Figs. 5, 6 and 7. The DMR associated genes were within 10 kb of the gene to consider the proximal and distal promoters of the genes. Although some DMRs are only within the promoter region, the majority of DMRs overlapped with the gene. The RA DMR associated genes suggest a potential regulatory role, but future studies are needed to demonstrate a potential to regulate gene expression. Approximately 50% of the DMRs have an increase in DNA methylation and the rest a decrease in DNA methylation, Supplemental Tables S1–S4 (log fold change, max LFC value). Interestingly, the DMR associated genes for the Caucasian buccal cell and monocyte cells both had RA associated genes, but were distinct, Figs. 5, 6 and 7. Some of the RA associated genes common among the different comparisons included Sox5, Fox01, FGF8, TNFSF8, TANK and H19. Two genes not in the DMR associated genes at p < 1e−04 that have been shown to be correlated with RA are HLA-DRB157 and 14-3-3eta58. The HLA-DRB1 is within the immune complex gene group and is associated with RA therapeutics59. The 14-3-3 eta gene has been shown to be a useful RA biomarker60. Further analysis at a reduced statistical threshold demonstrated DMRs within 10 kb of these genes to include the proximal and distal promoter region for HLA-DRB1 in the African American buccal (p < 0.02), and the 14-3-3 eta in the Caucasian monocyte (p < 0.0003) and buccal (p < 0.03), and African American buccal (p < 0.04). Therefore, the DMRs at reduced statistical thresholds will also be important to consider in the RA disease etiology. Previous studies have validated the functional and clinical roles of the DMR associated genes in RA disease etiology, Fig. 7 and Supplemental Table S5. The RA DMRs identified in the different comparisons provides insight into potentially important epimutations (e.g., DMRs) that provide a molecular mechanism for how environmental exposures and lifestyle impact the onset of RA.
The current study identifies potential rheumatoid arthritis (RA) biomarkers with an EWAS for epimutations in control versus RA patients. An interesting observation was that the Caucasian and African American populations had distinct epimutations with increased DMR overlaps in the buccal cells. Interestingly, a combination of the Caucasian and African American samples analysis identified a DMR set that had strong overlap for both and provides a more efficient and optimal potential RA biomarker. Monocytes had DMR epimutations that were distinct from the buccal cells, but both cells had DMR associated genes previously shown to be involved in RA. Observations indicate that buccal cells can have RA DMR associated genes and provide a potential biomarker cell for RA disease susceptibility. Larger clinical trials with a greater number of RA patients are now needed to confirm and validate the observations and DMRs identified in the current study. These expanded trials also need to identify RA susceptibility in patients without the onset of RA to explore the ability to initiate preventative therapeutic experiments to delay or prevent the onset of RA later in life. The availability of such RA susceptibility biomarkers will allow preventative medicine approaches to be considered. The current study provides the proof of concept that such RA epigenetic biomarkers may potentially be developed.
Methods summary
Clinical sample collection
Two independent single center prospective and open clinical studies were performed. The Arthritis Northwest Clinic (ANW) in Spokane, Washington, USA and Dx Biosamples, LLC in San Diego, California, USA provided samples for the current study. The participant approval and informed consent was obtained from all participants prior to the clinical sample collection. The study protocols were approved by the Quorum Review Institutional Review Board (IRB) for the ANW clinic with code # AE010831, and the Dx Biosamples company with code IORG # 0006584, and IRB # 00007904. All research was performed in accordance with relevant guidelines/regulations. The study was not designed for, nor did the IRB involve, the ability of reporting patient clinical information to be correlated. The Caucasian and African American buccal cells and Caucasian monocytes were analyzed as described in the Supplemental Methods. The buccal samples were frozen at − 20 °C, shipped on dry ice and then stored at − 80 °C prior to analysis. The monocytes were shipped immediately on ice for antibody bead isolation, as described in the Supplemental Methods, then stored at − 80 °C prior to analysis, as described in the Supplemental Methods.
Epigenetic analysis, statistics and bioinformatics
Buccal cell and monocyte DNA were isolated, as previously described61. Methylated DNA immunoprecipitation (MeDIP), followed by next generation sequencing (MeDIP-Seq) was performed. MeDIP-Seq, sequencing libraries, next generation sequencing, and bioinformatics analysis were performed as described61, and are found in the Supplemental Methods. The statistical analysis and validation protocols were performed as previously described61, and are found in the Supplemental Methods. All molecular data has been deposited into the public database at NCBI (GEO # GSE186179), and R code computational tools are available at GitHub (https://github.com/skinnerlab/MeDIP-seq) and www.skinner.wsu.edu. Lists of DMR associated genes were analyzed for functional relationships using the KEGG database (https://www.genome.jp/kegg/pathway.html) and Pathway Studio software (version 12.2.1.2: Database of functional relationships and pathways of mammalian proteins; Elsevier).
Ethics approval
The participant approval and informed consent was obtained from all participants prior to the clinical sample collection. The IRB study was approved by the Quorum Review IRB Committee for the Arthritis Northwest (ANW) Clinic, Spokane, WA, USA, with code IRB # AE010831 and Dx Biosamples, LLC, San Diego, CA, USA with code IORG # 0006584, and IRB # 00007904. All research was performed in accordance with relevant guidelines/regulations.
Data availability
All molecular data has been deposited into the public database at NCBI (GEO # GSE186179), and R code computational tools are available at GitHub (https://github.com/skinnerlab/MeDIP-seq) and www.skinner.wsu.edu.
Abbreviations
- RA:
-
Rheumatoid arthritis
- EWAS:
-
Epigenome-wide association study
- DMRs:
-
Differential DNA methylation regions
- GWAS:
-
Genome-wide association study
- MeDIP:
-
Methylated DNA immunoprecipitation
- MeDIP-Seq:
-
Methylated DNA immunoprecipitation followed by next generation sequencing
- LFC:
-
Log-fold-change
- PCA:
-
Principal component analysis
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Acknowledgements
We acknowledge Ms. Jayleana Barton and for technical assistance and all technicians and nurses from ANW Clinic, Spokane, Washington and Dx Biosamples, San Diego, California company laboratories for assistance in the clinical sample collection. We thank Drs. Millissia Ben Maamar and Jennifer L.M. Thorson for critically reviewing the manuscript. We thank Mr. Lewis Rumpler, Coeur d’Alene, ID for initiating and assistance in establishing sample collection. We acknowledge Ms. Amanda Quilty for editing and Ms. Heather Johnson for assistance in preparation of the manuscript. We thank the Genomics Core laboratory at WSU Spokane for sequencing data. We acknowledge Epigenesys Inc., Pullman, WA where the initial molecular analysis was performed, and the support of the LA Perks family, Reno, NV. This study was supported by Epigenesys Inc., Pullman, WA USA and John Templeton Foundation (61174) (https://templeton.org/) grants to MKS. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.
Funding
This study was supported in part by Epigenesys Inc., Pullman, WA USA and John Templeton Foundation (61174) (https://templeton.org/) grants to MKS. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.
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G.C. patient’s recruitment, clinical and sample collection oversight, data analysis, editing manuscript. H.K. patient’s recruitment, clinical and sample collection oversight, data analysis, editing manuscript. I.S.R. molecular analysis, data analysis, editing manuscript. D.B. bioinformatics, data analysis, editing manuscript. E.N. sample processing, data analysis, editing manuscript. M.K.S. conceived, data analysis, funding acquisition, wrote and edited manuscript.
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Craig, G., Kenney, H., Nilsson, E.E. et al. Epigenome association study for DNA methylation biomarkers in buccal and monocyte cells for female rheumatoid arthritis. Sci Rep 11, 23789 (2021). https://doi.org/10.1038/s41598-021-03170-6
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DOI: https://doi.org/10.1038/s41598-021-03170-6
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