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Published in: BMC Medical Research Methodology 1/2016

Open Access 01-12-2016 | Research Article

Confidence intervals for the between-study variance in random-effects meta-analysis using generalised heterogeneity statistics: should we use unequal tails?

Authors: Dan Jackson, Jack Bowden

Published in: BMC Medical Research Methodology | Issue 1/2016

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Abstract

Background

Confidence intervals for the between study variance are useful in random-effects meta-analyses because they quantify the uncertainty in the corresponding point estimates. Methods for calculating these confidence intervals have been developed that are based on inverting hypothesis tests using generalised heterogeneity statistics. Whilst, under the random effects model, these new methods furnish confidence intervals with the correct coverage, the resulting intervals are usually very wide, making them uninformative.

Methods

We discuss a simple strategy for obtaining 95 % confidence intervals for the between-study variance with a markedly reduced width, whilst retaining the nominal coverage probability. Specifically, we consider the possibility of using methods based on generalised heterogeneity statistics with unequal tail probabilities, where the tail probability used to compute the upper bound is greater than 2.5 %. This idea is assessed using four real examples and a variety of simulation studies. Supporting analytical results are also obtained.

Results

Our results provide evidence that using unequal tail probabilities can result in shorter 95 % confidence intervals for the between-study variance. We also show some further results for a real example that illustrates how shorter confidence intervals for the between-study variance can be useful when performing sensitivity analyses for the average effect, which is usually the parameter of primary interest.

Conclusions

We conclude that using unequal tail probabilities when computing 95 % confidence intervals for the between-study variance, when using methods based on generalised heterogeneity statistics, can result in shorter confidence intervals. We suggest that those who find the case for using unequal tail probabilities convincing should use the ‘1–4 % split’, where greater tail probability is allocated to the upper confidence bound. The ‘width-optimal’ interval that we present deserves further investigation.
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Literature
1.
2.
go back to reference Hardy R, Thompson SG. A likelihood approach to meta-analysis with random effects. Control Clin Trials. 1996; 15:619–629. Hardy R, Thompson SG. A likelihood approach to meta-analysis with random effects. Control Clin Trials. 1996; 15:619–629.
3.
go back to reference Higgins JPT, Thompson SG, Spiegelhalter DJ. A re-evaluation of random-effects meta-analysis. J Royal Stat Soc Ser A. 2009; 172:137–159.CrossRef Higgins JPT, Thompson SG, Spiegelhalter DJ. A re-evaluation of random-effects meta-analysis. J Royal Stat Soc Ser A. 2009; 172:137–159.CrossRef
4.
go back to reference Thompson S, Sharp S. Explaining Heterogeneity in Meta-analysis: a comparison of methods. Stat Med. 1999; 18:2693–2708.CrossRefPubMed Thompson S, Sharp S. Explaining Heterogeneity in Meta-analysis: a comparison of methods. Stat Med. 1999; 18:2693–2708.CrossRefPubMed
5.
go back to reference Paule RC, Mandel J. Concensus values and weighting factors. J Res Natl Bureau Stand. 1982; 87:377–385.CrossRef Paule RC, Mandel J. Concensus values and weighting factors. J Res Natl Bureau Stand. 1982; 87:377–385.CrossRef
6.
go back to reference Jackson D, Bowden J, Baker R. Approximate confidence intervals for moment-based estimators of the between-study variance in random effects meta-analysis. Res Synth Methods. 2015; 6:372–382.CrossRefPubMedPubMedCentral Jackson D, Bowden J, Baker R. Approximate confidence intervals for moment-based estimators of the between-study variance in random effects meta-analysis. Res Synth Methods. 2015; 6:372–382.CrossRefPubMedPubMedCentral
7.
go back to reference Biggerstaff BJ, Jackson D. The exact distribution of Cochran’s heterogeneity statistic in one-way random effects meta-analysis. Stat Med. 2008; 27:6093–6110.CrossRefPubMed Biggerstaff BJ, Jackson D. The exact distribution of Cochran’s heterogeneity statistic in one-way random effects meta-analysis. Stat Med. 2008; 27:6093–6110.CrossRefPubMed
8.
go back to reference Jackson D. Confidence intervals for the between–study variance in random effect meta-analysis using generalised Cochran heterogeneity statistics. Res Synth Methods. 2013; 4:220–229.CrossRefPubMed Jackson D. Confidence intervals for the between–study variance in random effect meta-analysis using generalised Cochran heterogeneity statistics. Res Synth Methods. 2013; 4:220–229.CrossRefPubMed
9.
go back to reference Jackson D, Bowden J, Baker R. Hoes does the DerSimonian and Laird procedure for random effects meta-analysis compare with its more efficient but harder to compute counterparts?J Stat Plan Infer. 2010; 140:961–970.CrossRef Jackson D, Bowden J, Baker R. Hoes does the DerSimonian and Laird procedure for random effects meta-analysis compare with its more efficient but harder to compute counterparts?J Stat Plan Infer. 2010; 140:961–970.CrossRef
10.
go back to reference Knapp G, Biggerstaff BJ, Hartung J. Assessing the amount of heterogeneity in random-effects meta-analysis. Biom J. 2006; 48:271–285.CrossRefPubMed Knapp G, Biggerstaff BJ, Hartung J. Assessing the amount of heterogeneity in random-effects meta-analysis. Biom J. 2006; 48:271–285.CrossRefPubMed
11.
go back to reference Viechtbauer W. Confidence intervals for the amount of heterogeneity in a meta-analysis. Stat Med. 2007; 26:37–52.CrossRefPubMed Viechtbauer W. Confidence intervals for the amount of heterogeneity in a meta-analysis. Stat Med. 2007; 26:37–52.CrossRefPubMed
12.
go back to reference Casella G, Berger RL. Statistical Inference. Duxbury: Pacrific Gove USA; 2002. Casella G, Berger RL. Statistical Inference. Duxbury: Pacrific Gove USA; 2002.
13.
go back to reference Rhodes KM, Turner RM, Higgins JP. Predictive distributions were developed for the extent of heterogeneity in meta-analyses of continuous outcome data. J Clin Epidemiol. 2015; 68:52–60.CrossRefPubMedPubMedCentral Rhodes KM, Turner RM, Higgins JP. Predictive distributions were developed for the extent of heterogeneity in meta-analyses of continuous outcome data. J Clin Epidemiol. 2015; 68:52–60.CrossRefPubMedPubMedCentral
14.
go back to reference Turner RM, Davey J, Clarke MJ, Thompson SG, Higgins JP. Predictive distributions for between-study heterogeneity and simple methods for their application in Bayesian meta-analysis. Stat Med. 2015; 34:984–998.CrossRefPubMed Turner RM, Davey J, Clarke MJ, Thompson SG, Higgins JP. Predictive distributions for between-study heterogeneity and simple methods for their application in Bayesian meta-analysis. Stat Med. 2015; 34:984–998.CrossRefPubMed
15.
go back to reference Hartung J, Knapp G. Predictive distributions for between-study heterogeneity and simple methods for their application in Bayesian meta-analysis. Stat Med. 2001; 20:1771–1782.CrossRefPubMed Hartung J, Knapp G. Predictive distributions for between-study heterogeneity and simple methods for their application in Bayesian meta-analysis. Stat Med. 2001; 20:1771–1782.CrossRefPubMed
16.
go back to reference Sidik K, Jonkman JN. On tests of the overall treatment effect in meta-analysis with normally distributed responses. Stat Med. 2001; 20:1771–1782.CrossRef Sidik K, Jonkman JN. On tests of the overall treatment effect in meta-analysis with normally distributed responses. Stat Med. 2001; 20:1771–1782.CrossRef
17.
go back to reference Jackson D, Baker R. Meta-analysis inside and outside particle physics: convergence using the path of least resistance?Res Synth Methods. 2013; 4:125–126.CrossRefPubMed Jackson D, Baker R. Meta-analysis inside and outside particle physics: convergence using the path of least resistance?Res Synth Methods. 2013; 4:125–126.CrossRefPubMed
18.
go back to reference Wiksten A, Rucker G, Schwarzer G. Hartung-Knapp method is not always conservative compared with fixed-effect meta-analysis. Stat Med. 2016; 35:2503–2515.CrossRefPubMed Wiksten A, Rucker G, Schwarzer G. Hartung-Knapp method is not always conservative compared with fixed-effect meta-analysis. Stat Med. 2016; 35:2503–2515.CrossRefPubMed
19.
go back to reference Cochran WG. The combination of estimates from different experiments. Biometrics. 1954; 10:101–129.CrossRef Cochran WG. The combination of estimates from different experiments. Biometrics. 1954; 10:101–129.CrossRef
20.
go back to reference Hoaglin DC. Misunderstandings about Q and ’Cochran’s Q test’ in meta-analysis. Stat Med. 2016; 35:485–495.CrossRefPubMed Hoaglin DC. Misunderstandings about Q and ’Cochran’s Q test’ in meta-analysis. Stat Med. 2016; 35:485–495.CrossRefPubMed
21.
go back to reference DerSimonian R, Kacker R. Random effect models for meta-analysis of clinical trials: an update. Contemp Clinical Trials. 2007; 28:105–114.CrossRef DerSimonian R, Kacker R. Random effect models for meta-analysis of clinical trials: an update. Contemp Clinical Trials. 2007; 28:105–114.CrossRef
22.
go back to reference Berkey CS, Hoaglin DC, Mosteller F, Colditz GA. A random-effects regression model for meta-analysis. Stat Med. 1995; 14:395–411.CrossRefPubMed Berkey CS, Hoaglin DC, Mosteller F, Colditz GA. A random-effects regression model for meta-analysis. Stat Med. 1995; 14:395–411.CrossRefPubMed
23.
go back to reference Morris CN. Parametric empirical Bayes inference: Theory and applications. J Am Stat Assoc. 1983; 78:47–55.CrossRef Morris CN. Parametric empirical Bayes inference: Theory and applications. J Am Stat Assoc. 1983; 78:47–55.CrossRef
24.
go back to reference Viechtbauer W, Lopez-Lopez JA, Sanchez-Meca J, Marin-Martìnez F. A Comparison of Procedures to Test for Moderators in Mixed-Effects Meta-Regression Models. Psychol Methods. 2014; 20:360–374.CrossRefPubMed Viechtbauer W, Lopez-Lopez JA, Sanchez-Meca J, Marin-Martìnez F. A Comparison of Procedures to Test for Moderators in Mixed-Effects Meta-Regression Models. Psychol Methods. 2014; 20:360–374.CrossRefPubMed
25.
go back to reference Bowden J, Tierney J, Copas A, Burdett S. Quantifying, displaying and accounting for heterogeneity in the meta-analysis of RCTs using standard and generalised Q statistics. BMC Res Method. 2011; 11:41.CrossRef Bowden J, Tierney J, Copas A, Burdett S. Quantifying, displaying and accounting for heterogeneity in the meta-analysis of RCTs using standard and generalised Q statistics. BMC Res Method. 2011; 11:41.CrossRef
26.
go back to reference Carter GM, Rolph JE. Emprical Bayes Methods applied to Estimating Fire Alarm Probabilities. J Am Stat Assoc. 1974; 69:880–885.CrossRef Carter GM, Rolph JE. Emprical Bayes Methods applied to Estimating Fire Alarm Probabilities. J Am Stat Assoc. 1974; 69:880–885.CrossRef
27.
go back to reference Jackson D, Turner R, Rhodes K, Viechtbauer W. Methods for calculating confidence and credible intervals for the residual between-study variance in random effects meta-regression models. BMC Res Method. 2014; 14:103.CrossRef Jackson D, Turner R, Rhodes K, Viechtbauer W. Methods for calculating confidence and credible intervals for the residual between-study variance in random effects meta-regression models. BMC Res Method. 2014; 14:103.CrossRef
28.
go back to reference Higgins JPT, Thompson SG. Quantifying heterogeneity in a meta-analyses. Stat Med. 2002; 21:1539–1558.CrossRefPubMed Higgins JPT, Thompson SG. Quantifying heterogeneity in a meta-analyses. Stat Med. 2002; 21:1539–1558.CrossRefPubMed
29.
go back to reference Biggerstaff BJ, Tweedie R. Incorporating variability in estimates of heterogeneity in the random effects model in meta-analysis. Stat Med. 1997; 16:753–768.CrossRefPubMed Biggerstaff BJ, Tweedie R. Incorporating variability in estimates of heterogeneity in the random effects model in meta-analysis. Stat Med. 1997; 16:753–768.CrossRefPubMed
30.
go back to reference Viechtbauer W. Conducting Meta-Analyses in R with the metafor package. J Stat Softw. 2010; 3:1–49. Viechtbauer W. Conducting Meta-Analyses in R with the metafor package. J Stat Softw. 2010; 3:1–49.
31.
go back to reference Jackson D. The power of the standard test for the presence of heterogeneity in meta-analysis. Stat Med. 2006; 25:2688–2699.CrossRefPubMed Jackson D. The power of the standard test for the presence of heterogeneity in meta-analysis. Stat Med. 2006; 25:2688–2699.CrossRefPubMed
32.
go back to reference Jackson D, Bowden J. A re-evaluation of the ‘quantile approximation method’ for random effects meta-analysis. Stat Med. 2009; 28:338–348.CrossRefPubMed Jackson D, Bowden J. A re-evaluation of the ‘quantile approximation method’ for random effects meta-analysis. Stat Med. 2009; 28:338–348.CrossRefPubMed
33.
go back to reference Raudenbush SW, Bryk AS. Empirical Bayes meta-analysis. J Ed Stat. 1985; 10:75–98.CrossRef Raudenbush SW, Bryk AS. Empirical Bayes meta-analysis. J Ed Stat. 1985; 10:75–98.CrossRef
34.
go back to reference Kulinskaya E, Dollinger MB, Bjørkestøl K. On the moments of Cochran’s Q statistic under the null hypothesis, with application to the meta-analysis of risk difference. Res Synth Methods. 2011; 2:254–270.CrossRefPubMed Kulinskaya E, Dollinger MB, Bjørkestøl K. On the moments of Cochran’s Q statistic under the null hypothesis, with application to the meta-analysis of risk difference. Res Synth Methods. 2011; 2:254–270.CrossRefPubMed
35.
go back to reference Kulinskaya E, Dollinger MB, Bjørkestøl K. Testing for homogeneity in meta-analysis I. The one-parameter case: Standardized mean difference. Biometrics. 2011; 67:203–212.CrossRefPubMed Kulinskaya E, Dollinger MB, Bjørkestøl K. Testing for homogeneity in meta-analysis I. The one-parameter case: Standardized mean difference. Biometrics. 2011; 67:203–212.CrossRefPubMed
36.
go back to reference Veroniki AA, Jackson D, Viechtbauer W, Bender R, Bowden J, Knapp G, Kuss O, Higgins JPT, Langan D, Salanti G. Methods to estimate the between-study variance and its uncertainty in meta-analysis. Res Synth Methods. 2016; 7:55–79.CrossRefPubMed Veroniki AA, Jackson D, Viechtbauer W, Bender R, Bowden J, Knapp G, Kuss O, Higgins JPT, Langan D, Salanti G. Methods to estimate the between-study variance and its uncertainty in meta-analysis. Res Synth Methods. 2016; 7:55–79.CrossRefPubMed
37.
go back to reference Ioannidis JPA, Trikalinos TA, Zintzaras E. Extreme between-study homogeneity in meta-analyses could offer useful insights. J Clin Epidemiol. 2006; 59:1023–1032.CrossRefPubMed Ioannidis JPA, Trikalinos TA, Zintzaras E. Extreme between-study homogeneity in meta-analyses could offer useful insights. J Clin Epidemiol. 2006; 59:1023–1032.CrossRefPubMed
Metadata
Title
Confidence intervals for the between-study variance in random-effects meta-analysis using generalised heterogeneity statistics: should we use unequal tails?
Authors
Dan Jackson
Jack Bowden
Publication date
01-12-2016
Publisher
BioMed Central
Published in
BMC Medical Research Methodology / Issue 1/2016
Electronic ISSN: 1471-2288
DOI
https://doi.org/10.1186/s12874-016-0219-y

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