Likelihood-based random-effects meta-analysis with few studies: empirical and simulation studies

被引:103
作者
Seide, Svenja E. [1 ,2 ]
Roever, Christian [1 ]
Friede, Tim [1 ]
机构
[1] Univ Med Ctr Gottingen, Dept Med Stat, Humboldtallee 32, D-37073 Gottingen, Germany
[2] Heidelberg Univ Hosp, Inst Med Biometry & Informat, Neuenheimer Feld 130-3, D-69120 Heidelberg, Germany
关键词
Random-effects meta-analysis; Normal-normal hierarchical model (NNHM); Hartung-Knapp-Sidik-Jonkman (HKSJ) adjustment; Generalized linear mixed model (GLMM); Count data; CLINICAL-TRIALS; META-REGRESSION; HETEROGENEITY; MODEL; CONFIDENCE; FRAMEWORK; TESTS;
D O I
10.1186/s12874-018-0618-3
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
BackgroundStandard random-effects meta-analysis methods perform poorly when applied to few studies only. Such settings however are commonly encountered in practice. It is unclear, whether or to what extent small-sample-size behaviour can be improved by more sophisticated modeling.MethodsWe consider likelihood-based methods, the DerSimonian-Laird approach, Empirical Bayes, several adjustment methods and a fully Bayesian approach. Confidence intervals are based on a normal approximation, or on adjustments based on the Student-t-distribution. In addition, a linear mixed model and two generalized linear mixed models (GLMMs) assuming binomial or Poisson distributed numbers of events per study arm are considered for pairwise binary meta-analyses. We extract an empirical data set of 40 meta-analyses from recent reviews published by the German Institute for Quality and Efficiency in Health Care (IQWiG). Methods are then compared empirically as well as in a simulation study, based on few studies, imbalanced study sizes, and considering odds-ratio (OR) and risk ratio (RR) effect sizes. Coverage probabilities and interval widths for the combined effect estimate are evaluated to compare the different approaches.ResultsEmpirically, a majority of the identified meta-analyses include only 2 studies. Variation of methods or effect measures affects the estimation results. In the simulation study, coverage probability is, in the presence of heterogeneity and few studies, mostly below the nominal level for all frequentist methods based on normal approximation, in particular when sizes in meta-analyses are not balanced, but improve when confidence intervals are adjusted. Bayesian methods result in better coverage than the frequentist methods with normal approximation in all scenarios, except for some cases of very large heterogeneity where the coverage is slightly lower. Credible intervals are empirically and in the simulation study wider than unadjusted confidence intervals, but considerably narrower than adjusted ones, with some exceptions when considering RRs and small numbers of patients per trial-arm. Confidence intervals based on the GLMMs are, in general, slightly narrower than those from other frequentist methods. Some methods turned out impractical due to frequent numerical problems.ConclusionsIn the presence of between-study heterogeneity, especially with unbalanced study sizes, caution is needed in applying meta-analytical methods to few studies, as either coverage probabilities might be compromised, or intervals are inconclusively wide. Bayesian estimation with a sensibly chosen prior for between-trial heterogeneity may offer a promising compromise.
引用
收藏
页数:14
相关论文
共 51 条
[41]  
Selde SE, 2018, GOTTINGEN RES ONLINE, DOI DOI 10.25625/BWYBNK
[42]   A simple confidence interval for meta-analysis [J].
Sidik, K ;
Jonkman, JN .
STATISTICS IN MEDICINE, 2002, 21 (21) :3153-3159
[43]  
Spiegelhalter DJ, 2004, Bayesian Approaches to Clinical Trials and Health-Care Evaluation, V13
[44]   Random effects meta-analysis of event outcome in the framework of the generalized linear mixed model with applications in sparse data [J].
Stijnen, Theo ;
Hamza, Taye H. ;
Ozdemir, Pinar .
STATISTICS IN MEDICINE, 2010, 29 (29) :3046-3067
[45]   Predictive distributions for between-study heterogeneity and simple methods for their application in Bayesian meta-analysis [J].
Turner, Rebecca M. ;
Jackson, Dan ;
Wei, Yinghui ;
Thompson, Simon G. ;
Higgins, Julian P. T. .
STATISTICS IN MEDICINE, 2015, 34 (06) :984-998
[46]   Predicting the extent of heterogeneity in meta-analysis, using empirical data from the Cochrane Database of Systematic Reviews [J].
Turner, Rebecca M. ;
Davey, Jonathan ;
Clarke, Mike J. ;
Thompson, Simon G. ;
Higgins, Julian P. T. .
INTERNATIONAL JOURNAL OF EPIDEMIOLOGY, 2012, 41 (03) :818-827
[47]  
Turner RM, 2000, STAT MED, V19, P3417, DOI 10.1002/1097-0258(20001230)19:24<3417::AID-SIM614>3.0.CO
[48]  
2-L
[49]   A BIVARIATE APPROACH TO METAANALYSIS [J].
VANHOUWELINGEN, HC ;
ZWINDERMAN, KH ;
STIJNEN, T .
STATISTICS IN MEDICINE, 1993, 12 (24) :2273-2284
[50]   Bias and efficiency of meta-analytic variance estimators in the random-effects model [J].
Viechtbauer, W .
JOURNAL OF EDUCATIONAL AND BEHAVIORAL STATISTICS, 2005, 30 (03) :261-293