Institute of Chinese Materia Medica, China Academy of Chinese Medical Sciences, Beijing, 100700, China.
Division of Rheumatology, Guang An Men Hospital, China Academy of Chinese Medical Science, Beijing, 100053, China.
J Transl Med. 2018 Jul 4;16(1):187. doi: 10.1186/s12967-018-1549-9.
Approximately 30% of rheumatoid arthritis (RA) patients treated with Tripterysium glycosides (TG) tablets fail to achieve clinical improvement, implying the essentiality of predictive biomarkers and tools. Herein, we aimed to identify possible biomarkers predictive of therapeutic effects of TG tablets in RA.
Gene expression profile in peripheral blood mononuclear cells obtained from a discovery cohort treated with TG tablets was detected by Affymetrix EG1.0 arrays. Then, a list of candidate gene biomarkers of response to TG tablets were identified by integrating differential expression data analysis and gene signal transduction network analysis. After that, a partial-least-squares (PLS) model based on the expression levels of the candidate gene biomarkers in RA patients was constructed and evaluated using a validation cohort.
Six candidate gene biomarkers (MX1, OASL, SPINK1, CRK, GRAPL and RNF2) were identified to be predictors of TG therapy. Following the construction of a PLS-based model using their expression levels in peripheral blood, both the 5-fold cross-validation and independent dataset validations showed the high predictive efficiency of this model, and demonstrated a distinguished improvement of the PLS-model based on six candidate gene biomarkers' expression in combination over the commonly used clinical and inflammatory parameters, as well as the gene biomarkers alone, in predicting RA patients' response to TG tablets.
This hypothesis-generating study identified MX1, OASL, SPINK1, CRK, GRAPL and RNF2 as novel targets for RA therapeutic intervention, and the PLS model based on the expression levels of these candidate biomarkers may have a potential prognostic value in RA patients treated with TG tablets.
约 30%的类风湿关节炎(RA)患者在使用雷公藤多苷片(TG)治疗后临床疗效不佳,这表明需要预测性生物标志物和工具。本研究旨在鉴定预测 TG 片治疗 RA 疗效的可能生物标志物。
采用 Affymetrix EG1.0 芯片检测接受 TG 片治疗的发现队列患者外周血单个核细胞的基因表达谱。然后,通过整合差异表达数据分析和基因信号转导网络分析,确定了一组候选基因生物标志物,用于预测 TG 片的疗效。之后,利用验证队列构建并评估基于候选基因生物标志物在 RA 患者中表达的偏最小二乘(PLS)模型。
鉴定出 6 个候选基因生物标志物(MX1、OASL、SPINK1、CRK、GRAPL 和 RNF2)可预测 TG 治疗。利用外周血中这些基因的表达水平构建 PLS 模型后,5 折交叉验证和独立数据集验证均显示该模型具有较高的预测效率,并且基于候选基因生物标志物表达构建的 PLS 模型在预测 RA 患者对 TG 片的反应方面,明显优于常用的临床和炎症参数以及基因生物标志物单独预测。
本研究为探索性研究,鉴定出 MX1、OASL、SPINK1、CRK、GRAPL 和 RNF2 为 RA 治疗干预的新靶点,基于这些候选生物标志物表达水平的 PLS 模型可能对接受 TG 片治疗的 RA 患者具有潜在的预后价值。