Michael Borenstein, Director of Biostatistical Programming Associates
Professor Borenstein is the co-editor of the recently published Wiley book Publication Bias in Meta-Analysis, and has taught dozens of workshops on meta-analysis. He also helped to develop the best-selling software programs for statistical power analysis.
Hannah Rothstein, Zicklin School of Business, Baruch College
Professor Rothstein teaches regular seminars on meta-analysis and systematic reviews, and has 20 years of active research in the area of meta-analysis. She has authored several meta-analyses as well as articles on methodological issues in the area, and made numerous presentations on the topic. Having contributed chapters to two books on meta-analysis, she co-edited Publication Bias in Meta-Analysis.
Larry Hedges, University of Chicago
A pioneer in meta-analysis, Professor Hedges has published over 80 papers in the area (many describing techniques he himself developed, that are now used as standard), co-edited the Handbook for Synthesis Research, and co-authored three books on the topic including the seminal Statistical Methods for Meta-Analysis. He has also taught numerous short courses on meta-analysis sponsored by various international organizations such as the ASA.
Julian Higgins, MRC Biostatistics Unit, Cambridge
Dr Higgins has published many methodological papers in meta-analysis. He works closely with the Cochrane Collaboration and is an editor of the Cochrane Handbook. He has much experience of teaching meta-analysis, both at Cambridge University and, by invitation, around the world.
List of Figures | |
List of Tables | |
Acknowledgements | |
Preface | |
Introduction | |
How a meta-analysis works | |
Introduction | |
Individual studies | |
The summary effect | |
Heterogeneity of effect sizes | |
Summary points | |
Why Perform a Meta-Analysis | |
Introduction | |
The SKIV meta-analysis | |
Statistical significance | |
Clinical importance of the effect | |
Consistency of effects | |
Summary points | |
Effect Size and Precision | |
Overview | |
Treatment effects and effect sizes | |
Parameters and estimates | |
Outline | |
Effect Sizes Based on Means | |
Introduction | |
Raw (unstandardized) mean difference D | |
Standardized mean difference, D and G | |
Response ratiosSummary points | |
Effect Sizes Based on Binary Data (2+2 Tables) | |
Introduction | |
Risk ratio | |
Odds ratio | |
Risk difference | |
Choosing an effect size index | |
Summary points | |
Effect Sizes Based on Correlations | |
Introduction | |
Computing R | |
Other approaches | |
Summary points | |
Converting Among Effect Sizes | |
Introduction | |
Converting from the log odds ratio to D | |
Converting from D to the log odds ratio | |
Converting from R to D | |
Converting from D to R | |
Summary points | |
Factors that Affect Precision | |
Introduction | |
Factors that affect precision | |
Sample size | |
Study design | |
Summary points | |
Concluding Remarks | |
Further reading | |
Fixed-Effect Versus Random-Effects Models | |
Overview | |
Introduction | |
Nomenclature | |
Fixed-Effect Model | |
Introduction | |
The true effect size | |
Impact of sampling error | |
Performing a fixed-effect meta-analysis | |
Summary points | |
Random-effects model | |
Introduction | |
The true effect sizes | |
Impact of sampling error | |
Performing a random-effects meta-analysis | |
Summary points | |
Fixed Effect Versus Random-Effects Models | |
Introduction | |
Definition of a summary effect | |
Estimating the summary effect | |
Extreme effect size in large study | |
Confidence interval | |
The null hypothesis | |
Which model should we use? | |
Model should not be based on the test for heterogeneity | |
Concluding remarks | |
Summary points | |
Worked Examples (Part 1) | |
Introduction | |
Worked example for continuous data (Part 1) | |
Worked example for binary data (Part 1) | |
Worked example for correlational data (Part 1) | |
Summary points | |
Heterogeneity | |
Overview | |
Introduction | |
Identifying and Quantifying Heterogeneity | |
Introduction | |
Isolating the variation in true effects | |
Computing Q | |
Estimating tau-squared | |
The I 2 statistic | |
Comparing the measures of heterogeneity | |
Confidence intervals for T 2 | |
Confidence intervals (or uncertainty intervals) for I 2 | |
Summary points | |
Prediction Intervals | |
Introduction | |
Prediction intervals in primary studies | |
Prediction intervals in meta-analysis | |
Confidence intervals and prediction intervals | |
Comparing the confidence interval with the prediction interval | |
Summary points | |
Worked Examples (Part 2) | |
Introduction | |
Worked example for continuous data (Part 2) | |
Worked example for binary data (Part 2) | |
Worked example for correlational data (Part 2) | |
Summary points | |
Subgroup Analyse | |
Introduction | |
Fixed-effect model within subgroups | |
Computational models | |
Random effects with separate estimates of T 2 | |
Random effects with pooled estimate of T 2 | |
The proportion of variance explained | |
Mixed-effect model | |
Obtaining an overall effect in the presence of subgroups | |
Summary points | |
Meta-Regress | |
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