Prideaux E Barton, Boyle David L, Choi Eunice, Buckner Jane H, Robinson William H, Holers V Michael, Deane Kevin D, Firestein Gary S, Wang Wei
bioRxiv. 2025 Jan 29:2024.10.15.618490. doi: 10.1101/2024.10.15.618490.
The presence of autoantibodies to citrullinated protein antigens (ACPAs) in the absence of clinically-apparent inflammatory arthritis (IA) identifies individuals at-risk for developing future clinical rheumatoid arthritis (RA). However, it is unclear why some ACPA+ individuals convert to clinical RA while others do not. We explored the possibility in the Targeting Immune Responses for Prevention of Rheumatoid Arthritis (TIP-RA) study that epigenetic remodeling is part of the trajectory from an at-risk state to clinical disease and identifies novel biomarkers associated with conversion to clinical RA.
ACPA- Controls, ACPA+ At-Risk, and Early RA individuals were followed for up to 5 years, including obtaining blood samples annually and at RA diagnosis. Peripheral blood mononuclear cells (PBMCs) were separated into CD19+ B cells, memory CD4+ T cells, and naive CD4+ T cells using antibodies and magnetic beads. Genome-wide methylation within each cell lineage was assayed using the Illumina MethylationEPIC v1.0 beadchip. ACPA+ At-Risk participants who did or did not develop RA were designated Pre-RA or Non-converters, respectively. Differentially methylated loci (DML) were selected using the Limma software package. Using the Caret package, we constructed machine learning models in test and validation cohorts and identified the most predictive loci of clinical RA conversion.
Cross-sectional differential methylation analysis at baseline revealed DMLs that distinguish the Pre-RA methylome from ACPA+ Non-converters, the latter which closely resembled ACPA- Controls. Genes overlapping these DMLs correspond to aberrant NOTCH signaling and DNA repair pathways in B cells. Longitudinal analysis showed that ACPA- Control and ACPA+ Non-converter methylomes are relatively constant. In contrast, the Pre-RA methylome remodeled along a dynamic RA methylome trajectory characterized by epigenetic changes in active regulatory elements. Clinical conversion to RA, defined based on diagnosis, marked an epigenetic inflection point for cell cycle pathways in B cells and adaptive immunity pathways in naive T cells. Machine learning revealed individual loci associated with RA conversion. This model significantly outperformed autoantibodies plus acute phase reactants as predictors of RA conversion.
DNA methylation is a dynamic process in ACPA+ individuals at-risk for developing RA that eventually transition to clinical disease. In contrast, non-converters and controls have stable methylomes. The accumulation of epigenetic marks over time prior to conversion to clinical RA conforms to pathways that are associated with immunity and can be used to identify potential pathogenic pathways for therapeutic targeting and/or use as prognostic biomarkers.
在无临床明显炎症性关节炎(IA)的情况下,瓜氨酸化蛋白抗原自身抗体(ACPA)的存在可识别出未来有发生临床类风湿关节炎(RA)风险的个体。然而,尚不清楚为何一些ACPA阳性个体发展为临床RA,而另一些则未发展。我们在类风湿关节炎预防的靶向免疫反应(TIP-RA)研究中探讨了表观遗传重塑是从风险状态到临床疾病轨迹的一部分,并识别与转化为临床RA相关的新生物标志物的可能性。
对ACPA阴性对照、ACPA阳性风险个体和早期RA个体进行长达5年的随访,包括每年及在RA诊断时采集血样。使用抗体和磁珠将外周血单个核细胞(PBMC)分离为CD19+B细胞、记忆CD4+T细胞和初始CD4+T细胞。使用Illumina MethylationEPIC v1.0芯片检测每个细胞谱系内的全基因组甲基化。将发展为RA或未发展为RA的ACPA阳性风险参与者分别指定为RA前期或未转化者。使用Limma软件包选择差异甲基化位点(DML)。使用Caret软件包,我们在测试和验证队列中构建机器学习模型,并识别临床RA转化的最具预测性的位点。
基线时的横断面差异甲基化分析揭示了区分RA前期甲基组与ACPA阳性未转化者的DML,后者与ACPA阴性对照非常相似。与这些DML重叠的基因对应于B细胞中异常的NOTCH信号通路和DNA修复通路。纵向分析表明,ACPA阴性对照和ACPA阳性未转化者的甲基组相对稳定。相比之下,RA前期甲基组沿着动态的RA甲基组轨迹重塑,其特征是活性调节元件中的表观遗传变化。基于诊断定义的临床转化为RA标志着B细胞中细胞周期通路和初始T细胞中适应性免疫通路的表观遗传转折点。机器学习揭示了与RA转化相关的个体位点。该模型作为RA转化的预测指标明显优于自身抗体加急性期反应物。
DNA甲基化在有发展为RA风险并最终转变为临床疾病的ACPA阳性个体中是一个动态过程。相比之下,未转化者和对照有稳定的甲基组。在转化为临床RA之前,表观遗传标记随时间的积累符合与免疫相关的通路,可用于识别潜在的致病通路以进行治疗靶向和/或用作预后生物标志物。