Department of Rheumatology, The Second Hospital of Shanxi Medical University, Taiyuan, Shanxi, China.
Key Laboratory of Cellular Physiology at Shanxi Medical University, Ministry of Education, Taiyuan, Shanxi, China.
Front Immunol. 2022 Aug 16;13:940918. doi: 10.3389/fimmu.2022.940918. eCollection 2022.
Rheumatoid arthritis is a highly heterogeneous autoimmune disease characterized by unpredictable disease flares and significant differences in therapeutic response to available treatments. One possible reason for poor efficacy is that it cannot be treated accurately due to no optimal stratification for RA patients.
This study aims to construct an RA classification model by m6A characters and further predict response to medication.
Twenty m6A regulators were used to construct a random forest diagnosis model, and RNA-seq analysis was employed for external validation. The RNA modification patterns mediated by 20 m6A regulators were systematically evaluated in 1191 RA samples and explored different molecular clusters associated with other immune microenvironment characteristics and biological pathways. Then, we established an m6A score model to quantify the m6A modification patterns. The model was applied to patients at baseline to test the association between m6Ascore and infliximab responsiveness.
The m6A diagnosis model showed good discriminatory ability in distinguishing RA. Patients with RA were classified into three clusters with distinct molecular and cellular signatures. Cluster A displayed strongly activated inflammatory cells and pathways. Specific innate lymphocytes occupied cluster B. Cluster C was mainly enriched in prominent adaptive lymphocytes and NK-mediated cytotoxicity signatures with the highest m6A score. Patients with a low m6Ascore exhibited significantly infliximab therapeutic benefits compared with those with a high m6Ascore (p< 0.05).
Our study is the first to provide a comprehensive analysis of m6A modifications in RA, which provides an innovative patient stratification framework and potentially enables improved therapeutic decisions.
类风湿关节炎是一种高度异质性的自身免疫性疾病,其特点是疾病发作不可预测,且对现有治疗方法的治疗反应存在显著差异。疗效不佳的一个可能原因是由于无法对 RA 患者进行最佳分层,因此无法进行准确治疗。
本研究旨在通过 m6A 特征构建 RA 分类模型,并进一步预测药物反应。
使用 20 个 m6A 调节剂构建随机森林诊断模型,并进行 RNA-seq 外部验证。在 1191 个 RA 样本中系统评估了 20 个 m6A 调节剂介导的 RNA 修饰模式,并探索了与其他免疫微环境特征和生物学途径相关的不同分子簇。然后,我们建立了一个 m6A 评分模型来量化 m6A 修饰模式。该模型应用于基线患者,以测试 m6A 评分与英夫利昔单抗反应性之间的关联。
m6A 诊断模型在区分 RA 方面表现出良好的判别能力。RA 患者被分为三个具有不同分子和细胞特征的聚类。簇 A 显示出强烈激活的炎症细胞和途径。特定的固有淋巴细胞占据簇 B。簇 C 主要富集具有最高 m6A 评分的显著适应性淋巴细胞和 NK 介导的细胞毒性特征。与 m6A 评分高的患者相比,m6A 评分低的患者表现出明显的英夫利昔单抗治疗获益(p<0.05)。
本研究首次提供了 RA 中 m6A 修饰的全面分析,为患者分层提供了一个创新的框架,并有可能改善治疗决策。