Jansen J P, Vieira M C, Cope S
Redwood Outcomes, San Francisco, CA, U.S.A.
Tufts University School of Medicine, Boston, MA, U.S.A.
Stat Med. 2015 Jul 10;34(15):2294-311. doi: 10.1002/sim.6492. Epub 2015 Apr 15.
Network meta-analysis of randomized controlled trials (RCTs) are often based on one treatment effect measure per study. However, many studies report data at multiple time points. Furthermore, not all studies measure the outcomes at the same time points. As an alternative to a network meta-analysis based on a synthesis of the results at one time point, a network meta-analysis method is presented that allows for the simultaneous analysis of outcomes at multiple time points. The development of outcomes over time of interventions compared in an RCT is modeled with fractional polynomials, and the differences between the parameters of these polynomials within a trial are synthesized across studies with a Bayesian network meta-analysis. The proposed models are illustrated with an analysis of RCTs evaluating interventions for osteoarthritis of the knee. Fixed and random effects second order fractional polynomials were applied to the case study. Network meta-analysis with models that represent the treatment effects in terms of several parameters using fractional polynomials can be considered a useful addition to models for network meta-analysis of repeated measures previously proposed. When RCTs report treatment effects at multiple follow-up times, these models can be used to synthesize the results even if reporting times differ across the studies.
随机对照试验(RCT)的网络荟萃分析通常基于每项研究的一种治疗效果测量指标。然而,许多研究在多个时间点报告数据。此外,并非所有研究都在相同的时间点测量结局。作为基于一个时间点结果综合的网络荟萃分析的替代方法,本文提出了一种网络荟萃分析方法,该方法允许同时分析多个时间点的结局。在随机对照试验中比较的干预措施随时间的结局发展用分数多项式进行建模,并且通过贝叶斯网络荟萃分析在各研究中综合这些多项式参数之间的差异。通过对评估膝关节骨关节炎干预措施的随机对照试验进行分析来说明所提出的模型。固定效应和随机效应二阶分数多项式应用于该案例研究。使用分数多项式用几个参数表示治疗效果的模型进行网络荟萃分析可被视为对先前提出的重复测量网络荟萃分析模型的有益补充。当随机对照试验在多个随访时间报告治疗效果时,即使各研究的报告时间不同,这些模型也可用于综合结果。