An unobserved random effect is often used to describe the between-study variation that is apparent in meta-analysis datasets. A normally distributed random effect is conventionally used for this purpose. When outliers or other unusual estimates are included in the analysis, the use of alternative random effect distributions has previously been proposed. Instead of adopting the usual hierarchical approach to modelling between-study variation, and so directly modelling the study specific true underling effects, we propose two new marginal distributions for modelling heterogeneous datasets. These two distributions are suggested because numerical integration is not needed to evaluate the likelihood. This makes the computation required wh...
BACKGROUND: Confidence intervals for the between study variance are useful in random-effects meta-an...
In random-effects meta-analysis the between-study variance (τ 2) has a key role in assessing heterog...
Background: When multiple endpoints are of interest in evidence synthesis, a multivariate meta-anal...
An unobserved random effect is often used to describe the between-study variation that is apparent i...
BACKGROUND:Meta-analysis typically involves combining the estimates from independent studies in orde...
A new model with a variable size of random effectis introduced for the meta-analysis of 2 times 2 t...
The synthesis of evidence from trials and medical studies using meta-analysis is essential for Evide...
Background: Pairwise and network meta-analyses using fixed effect and random effects models are comm...
There are different methods for estimating the between-study variance, 2 in meta-analysis, however e...
Meta-analysis is widely used to compare and combine the results of multiple independent studies. To ...
Background: Meta-analysis is a valuable tool for combining evidence from multiple studies. Network ...
Abstract Background Confidence intervals for the betw...
The random-effects model, applied in most meta-analyses nowadays, typically assumes normality of the...
Meta-regression is becoming increasingly used to model study level covariate effects. However this t...
Random-effects models are frequently used to synthesise information from different studies in meta-a...
BACKGROUND: Confidence intervals for the between study variance are useful in random-effects meta-an...
In random-effects meta-analysis the between-study variance (τ 2) has a key role in assessing heterog...
Background: When multiple endpoints are of interest in evidence synthesis, a multivariate meta-anal...
An unobserved random effect is often used to describe the between-study variation that is apparent i...
BACKGROUND:Meta-analysis typically involves combining the estimates from independent studies in orde...
A new model with a variable size of random effectis introduced for the meta-analysis of 2 times 2 t...
The synthesis of evidence from trials and medical studies using meta-analysis is essential for Evide...
Background: Pairwise and network meta-analyses using fixed effect and random effects models are comm...
There are different methods for estimating the between-study variance, 2 in meta-analysis, however e...
Meta-analysis is widely used to compare and combine the results of multiple independent studies. To ...
Background: Meta-analysis is a valuable tool for combining evidence from multiple studies. Network ...
Abstract Background Confidence intervals for the betw...
The random-effects model, applied in most meta-analyses nowadays, typically assumes normality of the...
Meta-regression is becoming increasingly used to model study level covariate effects. However this t...
Random-effects models are frequently used to synthesise information from different studies in meta-a...
BACKGROUND: Confidence intervals for the between study variance are useful in random-effects meta-an...
In random-effects meta-analysis the between-study variance (τ 2) has a key role in assessing heterog...
Background: When multiple endpoints are of interest in evidence synthesis, a multivariate meta-anal...