Objective: We aim to utilise real world data in evidence synthesis to optimise an evidence base for the effectiveness of biologic therapies in rheumatoid arthritis in order to allow for evidence on first-line therapies to inform second-line effectiveness estimates. Study design and setting: We use data from the British Society for Rheumatology Biologics Register for Rheumatoid Arthritis (BSRBR-RA) to supplement RCT evidence obtained from the literature, by emulating target trials of treatment sequences to estimate treatment effects in each line of therapy. Treatment effects estimates from the target trials inform a bivariate network meta-analysis (NMA) of first and second-line treatments. Results: Summary data were obtained from 21 trials of biologic therapies including 2 for second-line treatment and results from six emulated target trials of both treatment lines. Bivariate NMA resulted in a decrease in uncertainty around the effectiveness estimates of the second-line therapies, when compared to the results of univariate NMA, and allowed for predictions of treatment effects not evaluated in second-line RCTs. Conclusion: Bivariate NMA provides effectiveness estimates for all treatments in first- and second-line, including predicted effects in second-line where these estimates did not exist in the data. This novel methodology may have further applications, for example for bridging networks of trials in children and adults.
翻译:目标:我们利用真实世界的证据数据进行证据综合,优化风湿病关节炎生物疗法有效性的证据基础,以便一线疗法证据,为二线效果估计提供资料。研究设计和设置:我们利用英国风湿病生物生物学学会的关于风湿病动动脉炎生物生物学登记册(BSRBR-RA)的数据来补充从文献中获得的RCT证据,办法是模拟对治疗序列的定向试验,以估计治疗每行治疗的效果。目标试验的治疗影响估计数为一线和二线治疗的双轨网络元分析(NMA)提供信息。结果:从21项生物疗法试验中获得简要数据,包括二线治疗的2项试验和两线治疗线试验的6项模拟目标试验结果。比对二线疗法的效果估计减少了二线治疗序列的不确定性,并允许预测第二线RCT治疗效果的二线治疗效果。