Sturtz Sibylle, Bender Ralf
Department of Medical Biometry, Institute for Quality and Efficiency in Health Care (IQWiG), Cologne, Germany.
Faculty of Medicine, University of Cologne, Cologne, Germany.
Res Synth Methods. 2012 Dec;3(4):300-11. doi: 10.1002/jrsm.1057. Epub 2012 Sep 27.
Indirect comparisons and mixed treatment comparison (MTC) meta-analyses are increasingly used in medical research. These methods allow a simultaneous analysis of all relevant interventions in a connected network even if direct evidence regarding two interventions is missing. The framework of MTC meta-analysis provides a flexible approach for complex networks. However, this method has yet some unsolved problems, in particular the choice of the network size and the assessment of inconsistency. In this paper, we describe the practical application of MTC meta-analysis by using a data set on antidepressants. We focus on the impact of the size of the chosen network and the assumption of consistency. A larger network is based on more evidence but may show inconsistencies, whereas a smaller network contains less evidence but may show no clear inconsistencies. A choice is required which network should be used in practice. In summary, MTC meta-analysis represents a promising approach; however, clear application standards are still lacking. Especially, standards for the identification of inconsistency and the way to deal with potential inconsistency are required. Copyright © 2012 John Wiley & Sons, Ltd.
间接比较和混合治疗比较(MTC)荟萃分析在医学研究中的应用日益广泛。这些方法能够对连通网络中的所有相关干预措施进行同步分析,即便缺少关于两种干预措施的直接证据。MTC荟萃分析框架为复杂网络提供了一种灵活的方法。然而,该方法仍存在一些未解决的问题,尤其是网络规模的选择以及不一致性的评估。在本文中,我们通过使用一组抗抑郁药数据集来描述MTC荟萃分析的实际应用。我们重点关注所选网络规模的影响以及一致性假设。较大的网络基于更多证据,但可能显示出不一致性;而较小的网络包含的证据较少,但可能未显示出明显的不一致性。在实际应用中需要做出选择,即应使用哪个网络。总之,MTC荟萃分析是一种很有前景的方法;然而,仍然缺乏明确的应用标准。特别是,需要关于不一致性识别的标准以及处理潜在不一致性的方法。版权所有© 2012约翰·威利父子有限公司。