Trial Sequential Analysis in systematic reviews with meta-analysis

Abstract Background Most meta-analyses in systematic reviews, including Cochrane ones, do not have sufficient statistical power to detect or refute even large intervention effects. This is why a meta-analysis ought to be regarded as an interim analysis on its way towards a required information size....

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Main Authors: Jørn Wetterslev, Janus Christian Jakobsen, Christian Gluud
Format: Article
Language:English
Published: BMC 2017-03-01
Series:BMC Medical Research Methodology
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12874-017-0315-7
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spelling doaj-07fdcd464d0049c4b3369f9640b1c2b52020-11-25T02:09:28ZengBMCBMC Medical Research Methodology1471-22882017-03-0117111810.1186/s12874-017-0315-7Trial Sequential Analysis in systematic reviews with meta-analysisJørn Wetterslev0Janus Christian Jakobsen1Christian Gluud2Copenhagen Trial Unit, Centre for Clinial Intervention Research, Dpt. 7812, Rigshospitalet, Copenhagen University HospitalCopenhagen Trial Unit, Centre for Clinial Intervention Research, Dpt. 7812, Rigshospitalet, Copenhagen University HospitalCopenhagen Trial Unit, Centre for Clinial Intervention Research, Dpt. 7812, Rigshospitalet, Copenhagen University HospitalAbstract Background Most meta-analyses in systematic reviews, including Cochrane ones, do not have sufficient statistical power to detect or refute even large intervention effects. This is why a meta-analysis ought to be regarded as an interim analysis on its way towards a required information size. The results of the meta-analyses should relate the total number of randomised participants to the estimated required meta-analytic information size accounting for statistical diversity. When the number of participants and the corresponding number of trials in a meta-analysis are insufficient, the use of the traditional 95% confidence interval or the 5% statistical significance threshold will lead to too many false positive conclusions (type I errors) and too many false negative conclusions (type II errors). Methods We developed a methodology for interpreting meta-analysis results, using generally accepted, valid evidence on how to adjust thresholds for significance in randomised clinical trials when the required sample size has not been reached. Results The Lan-DeMets trial sequential monitoring boundaries in Trial Sequential Analysis offer adjusted confidence intervals and restricted thresholds for statistical significance when the diversity-adjusted required information size and the corresponding number of required trials for the meta-analysis have not been reached. Trial Sequential Analysis provides a frequentistic approach to control both type I and type II errors. We define the required information size and the corresponding number of required trials in a meta-analysis and the diversity (D2) measure of heterogeneity. We explain the reasons for using Trial Sequential Analysis of meta-analysis when the actual information size fails to reach the required information size. We present examples drawn from traditional meta-analyses using unadjusted naïve 95% confidence intervals and 5% thresholds for statistical significance. Spurious conclusions in systematic reviews with traditional meta-analyses can be reduced using Trial Sequential Analysis. Several empirical studies have demonstrated that the Trial Sequential Analysis provides better control of type I errors and of type II errors than the traditional naïve meta-analysis. Conclusions Trial Sequential Analysis represents analysis of meta-analytic data, with transparent assumptions, and better control of type I and type II errors than the traditional meta-analysis using naïve unadjusted confidence intervals.http://link.springer.com/article/10.1186/s12874-017-0315-7Meta-analysisRandom-effects modelFixed-effect modelInterim analysisGroup sequential analysisTrial sequential analysis
collection DOAJ
language English
format Article
sources DOAJ
author Jørn Wetterslev
Janus Christian Jakobsen
Christian Gluud
spellingShingle Jørn Wetterslev
Janus Christian Jakobsen
Christian Gluud
Trial Sequential Analysis in systematic reviews with meta-analysis
BMC Medical Research Methodology
Meta-analysis
Random-effects model
Fixed-effect model
Interim analysis
Group sequential analysis
Trial sequential analysis
author_facet Jørn Wetterslev
Janus Christian Jakobsen
Christian Gluud
author_sort Jørn Wetterslev
title Trial Sequential Analysis in systematic reviews with meta-analysis
title_short Trial Sequential Analysis in systematic reviews with meta-analysis
title_full Trial Sequential Analysis in systematic reviews with meta-analysis
title_fullStr Trial Sequential Analysis in systematic reviews with meta-analysis
title_full_unstemmed Trial Sequential Analysis in systematic reviews with meta-analysis
title_sort trial sequential analysis in systematic reviews with meta-analysis
publisher BMC
series BMC Medical Research Methodology
issn 1471-2288
publishDate 2017-03-01
description Abstract Background Most meta-analyses in systematic reviews, including Cochrane ones, do not have sufficient statistical power to detect or refute even large intervention effects. This is why a meta-analysis ought to be regarded as an interim analysis on its way towards a required information size. The results of the meta-analyses should relate the total number of randomised participants to the estimated required meta-analytic information size accounting for statistical diversity. When the number of participants and the corresponding number of trials in a meta-analysis are insufficient, the use of the traditional 95% confidence interval or the 5% statistical significance threshold will lead to too many false positive conclusions (type I errors) and too many false negative conclusions (type II errors). Methods We developed a methodology for interpreting meta-analysis results, using generally accepted, valid evidence on how to adjust thresholds for significance in randomised clinical trials when the required sample size has not been reached. Results The Lan-DeMets trial sequential monitoring boundaries in Trial Sequential Analysis offer adjusted confidence intervals and restricted thresholds for statistical significance when the diversity-adjusted required information size and the corresponding number of required trials for the meta-analysis have not been reached. Trial Sequential Analysis provides a frequentistic approach to control both type I and type II errors. We define the required information size and the corresponding number of required trials in a meta-analysis and the diversity (D2) measure of heterogeneity. We explain the reasons for using Trial Sequential Analysis of meta-analysis when the actual information size fails to reach the required information size. We present examples drawn from traditional meta-analyses using unadjusted naïve 95% confidence intervals and 5% thresholds for statistical significance. Spurious conclusions in systematic reviews with traditional meta-analyses can be reduced using Trial Sequential Analysis. Several empirical studies have demonstrated that the Trial Sequential Analysis provides better control of type I errors and of type II errors than the traditional naïve meta-analysis. Conclusions Trial Sequential Analysis represents analysis of meta-analytic data, with transparent assumptions, and better control of type I and type II errors than the traditional meta-analysis using naïve unadjusted confidence intervals.
topic Meta-analysis
Random-effects model
Fixed-effect model
Interim analysis
Group sequential analysis
Trial sequential analysis
url http://link.springer.com/article/10.1186/s12874-017-0315-7
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