In a meta-analysis, differences in the design and conduct of studies may cause variation in effects beyond what is expected from chance alone. This additional variation is commonly known as heterogeneity, which is incorporated into a random-effects model. The heterogeneity variance parameter in this model is commonly estimated by the DerSimonian-Laird method, despite being shown to produce negatively biased estimates in simulated data. Many other methods have been proposed, but there has been less research into their properties. This thesis compares all methods to estimate the heterogeneity variance in both empirical and simulated meta-analysis data. First, methods are compared in 12,894 empirical meta-analyses from the Cochrane Databas...
Background: Many meta-analyses contain only a small number of studies, which makes it difficult to e...
An increasing number of systematic reviews summarize results from cluster randomization trials. Appl...
There are both theoretical and empirical reasons to believe that design and execution factors are as...
In a meta-analysis, differences in the design and conduct of studies may cause variation in effects ...
Studies combined in a meta-analysis often have differences in their design and conduct that can lead...
Meta-analyses typically quantify heterogeneity of results, thus providing information about the cons...
It has been widely recognized that statistical meta-analysis is not only important for estimating av...
A random effects meta-analysis combines the results of several independent studies to summarise the ...
Methods for random-effects meta-analysis require an estimate of the between-study variance, τ 2. The...
In meta-analysis the random-effects model is often used to account for heterogeneity. The model assu...
Meta-analyses are conducted to synthesize the quantitative results of related studies. The random-ef...
There are different methods for estimating the between-study variance, 2 in meta-analysis, however e...
This article examines an improved alternative to the random effects (RE) model for meta-analysis of ...
The random effects model in meta-analysis is a standard statistical tool often used to analyze the e...
To conduct a meta-analysis, one needs to express the results from a set of related studies in terms ...
Background: Many meta-analyses contain only a small number of studies, which makes it difficult to e...
An increasing number of systematic reviews summarize results from cluster randomization trials. Appl...
There are both theoretical and empirical reasons to believe that design and execution factors are as...
In a meta-analysis, differences in the design and conduct of studies may cause variation in effects ...
Studies combined in a meta-analysis often have differences in their design and conduct that can lead...
Meta-analyses typically quantify heterogeneity of results, thus providing information about the cons...
It has been widely recognized that statistical meta-analysis is not only important for estimating av...
A random effects meta-analysis combines the results of several independent studies to summarise the ...
Methods for random-effects meta-analysis require an estimate of the between-study variance, τ 2. The...
In meta-analysis the random-effects model is often used to account for heterogeneity. The model assu...
Meta-analyses are conducted to synthesize the quantitative results of related studies. The random-ef...
There are different methods for estimating the between-study variance, 2 in meta-analysis, however e...
This article examines an improved alternative to the random effects (RE) model for meta-analysis of ...
The random effects model in meta-analysis is a standard statistical tool often used to analyze the e...
To conduct a meta-analysis, one needs to express the results from a set of related studies in terms ...
Background: Many meta-analyses contain only a small number of studies, which makes it difficult to e...
An increasing number of systematic reviews summarize results from cluster randomization trials. Appl...
There are both theoretical and empirical reasons to believe that design and execution factors are as...