Conducting Indirect-Treatment-Comparison and Network-Meta-Analysis Studies: Report of the ISPOR Task Force on Indirect Treatment Comparisons Good Research Practices: Part 2

被引:601
作者
Hoaglin, David C.
Hawkins, Neil [1 ]
Jansen, Jeroen P. [2 ]
Scott, David A. [1 ]
Itzler, Robbin [3 ]
Cappelleri, Joseph C. [4 ]
Boersma, Cornelis [5 ]
Thompson, David [6 ]
Larholt, Kay M. [7 ]
Diaz, Mireya [8 ]
Barrett, Annabel [9 ]
机构
[1] Oxford Outcomes Ltd, Oxford, England
[2] Mapi Values, Boston, MA USA
[3] Merck Res Labs, N Wales, PA USA
[4] Pfizer Inc, New London, CT USA
[5] Univ Groningen, HECTA, Groningen, Netherlands
[6] I3 Innovus, Medford, MA USA
[7] HealthCore Inc, Andover, MA USA
[8] Henry Ford Hlth Syst, Detroit, MI USA
[9] Eli Lilly & Co Ltd, Windlesham, Surrey, England
关键词
Bayesian meta-analysis; direct treatment comparison; evidence network; frequentist meta-analysis; heterogeneity; inconsistency; indirect treatment comparison; mixed treatment comparison; MIXED TREATMENT COMPARISONS; ECOLOGICAL BIAS; PATIENT-LEVEL; METAANALYSIS; HETEROGENEITY; TRIALS; INCONSISTENCY; INTERVENTIONS; DISTRIBUTIONS; REGRESSION;
D O I
10.1016/j.jval.2011.01.011
中图分类号
F [经济];
学科分类号
02 ;
摘要
Evidence-based health care decision making requires comparison of all relevant competing interventions. In the absence of randomized controlled trials involving a direct comparison of all treatments of interest, indirect treatment comparisons and network meta-analysis provide useful evidence for judiciously selecting the best treatment(s). Mixed treatment comparisons, a special case of network meta-analysis, combine direct evidence and indirect evidence for particular pairwise comparisons, thereby synthesizing a greater share of the available evidence than traditional meta-analysis. This report from the International Society for Pharmacoeconomics and Outcomes Research Indirect Treatment Comparisons Good Research Practices Task Force provides guidance on technical aspects of conducting network meta-analyses (our use of this term includes most methods that involve meta-analysis in the context of a network of evidence). We start with a discussion of strategies for developing networks of evidence. Next we briefly review assumptions of network meta-analysis. Then we focus on the statistical analysis of the data: objectives, models (fixed-effects and random-effects), frequentist versus Bayesian approaches, and model validation. A checklist highlights key components of network meta-analysis, and substantial examples illustrate indirect treatment comparisons (both frequentist and Bayesian approaches) and network meta-analysis. A further section discusses eight key areas for future research.
引用
收藏
页码:429 / 437
页数:9
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