Folkersen Lasse, Brynedal Boel, Diaz-Gallo Lina Marcela, Ramsköld Daniel, Shchetynsky Klementy, Westerlind Helga, Sundström Yvonne, Schepis Danika, Hensvold Aase, Vivar Nancy, Eloranta Maija-Leena, Rönnblom Lars, Brunak Søren, Malmström Vivianne, Catrina Anca, Moerch Ulrik Gw, Klareskog Lars, Padyukov Leonid, Berg Louise
Department of Systems Biology, Technical University of Denmark, Lyngby, Denmark.
Unit of Rheumatology, Department of Medicine Solna, Karolinska Institutet and Karolinska University Hospital, Stockholm, Sweden.
Mol Med. 2016 Sep;22:322-328. doi: 10.2119/molmed.2016.00078. Epub 2016 Aug 15.
In rheumatoid arthritis (RA) several recent efforts have sought to discover means of predicting which patients would benefit from treatment. However, results have been discrepant with few successful replications. Our objective was to build a biobank with DNA, RNA and protein measurements to test the claim that the current state-of-the-art precision medicine will benefit RA patients.
We collected 451 blood samples from 61 healthy individuals and 185 RA patients initiating treatment, before treatment initiation and at a 3 month follow-up time. All samples were subjected to high-throughput RNA sequencing, DNA genotyping, extensive proteomics and flow cytometry measurements, as well as comprehensive clinical phenotyping. Literature review identified 2 proteins, 52 single-nucleotide polymorphisms (SNPs) and 72 gene-expression biomarkers that had previously been proposed as predictors of TNF inhibitor response (∆DAS28-CRP).
From these published TNFi biomarkers we found that 2 protein, 2 SNP and 8 mRNA biomarkers could be replicated in the 59 TNF initiating patients. Combining these replicated biomarkers into a single signature we found that we could explain 51% of the variation in ∆DAS28-CRP. This corresponds to a sensitivity of 0.73 and specificity of 0.78 for the prediction of three month ∆DAS28-CRP better than -1.2.
The COMBINE biobank is currently the largest collection of multi-omics data from RA patients with high potential for discovery and replication. Taking advantage of this we surveyed the current state-of-the-art of drug-response stratification in RA, and identified a small set of previously published biomarkers available in peripheral blood which predicts clinical response to TNF blockade in this independent cohort.
在类风湿性关节炎(RA)领域,近期有多项研究致力于寻找预测哪些患者将从治疗中获益的方法。然而,研究结果存在差异,成功复现的案例较少。我们的目标是建立一个包含DNA、RNA和蛋白质测量数据的生物样本库,以验证当前最先进的精准医学是否能使RA患者受益这一说法。
我们收集了61名健康个体和185名开始治疗的RA患者在治疗开始前及3个月随访时的451份血液样本。所有样本均进行了高通量RNA测序、DNA基因分型、广泛的蛋白质组学和流式细胞术测量,以及全面的临床表型分析。文献综述确定了2种蛋白质、52个单核苷酸多态性(SNP)和72个基因表达生物标志物,这些标志物此前被提议作为肿瘤坏死因子(TNF)抑制剂反应(∆DAS28-CRP)的预测指标。
从这些已发表的TNFi生物标志物中,我们发现2种蛋白质、2个SNP和8个mRNA生物标志物可在59名开始使用TNF治疗的患者中复现。将这些复现的生物标志物整合为一个单一特征,我们发现可以解释∆DAS28-CRP中51%的变异。这对应于预测三个月时∆DAS28-CRP优于-1.2的敏感性为0.73,特异性为0.78。
COMBINE生物样本库是目前来自RA患者的最大规模多组学数据集合,具有很高的发现和复现潜力。利用这一优势,我们调查了RA中当前最先进的药物反应分层情况,并确定了一小部分先前发表的、在外周血中可用的生物标志物,这些标志物可预测该独立队列中对TNF阻断的临床反应。