Contemporary statistical publications rely on simulation to evaluate performance of new methods and compare them with established methods. In the context of random-effects meta-analysis of log-odds-ratios, we investigate how choices in generating data affect such conclusions. The choices we study include the overall log-odds-ratio, the distribution of probabilities in the control arm, and the distribution of study-level sample sizes. We retain the customary normal distribution of study-level effects. To examine the impact of the components of simulations, we assess the performance of the best available inverse–variance–weighted two-stage method, a two-stage method with constant sample-size-based weights, and two generalized linear mixed mod...
BACKGROUND: For outcomes that studies report as the means in the treatment and control groups, some ...
Comparative trials that report binary outcome data are commonly pooled in systematic reviews and met...
Meta-analysis is widely used to compare and combine the results of multiple independent studies. To ...
Contemporary statistical publications rely on simulation to evaluate performance of new methods and ...
AIMS: The study of foundational features of meta-analysis is incomplete and continues to remain impo...
Background: Systematic reviews and meta-analyses of binary outcomes are widespread in all areas of a...
Simulation studies to evaluate performance of statistical methods require a well-specified data-gene...
Both fixed and random effects models have been used to simulate the meta-analyses. The fixed effects...
For meta-analysis of studies that report outcomes as binomial proportions, the most popular measure ...
Background: Standard random-effects meta-analysis methods perform poorly when applied to few studies...
In random-effects meta-analysis the between-study variance (τ 2) has a key role in assessing heterog...
There are both theoretical and empirical reasons to believe that design and execution factors are as...
Random-effects meta-analysis requires an estimate of the between-study variance, $\tau^2$. We study ...
The present study investigates the performance of several statistical tests to detect publication bi...
For meta-analysis of studies that report outcomes as binomial proportions, the most popular measure ...
BACKGROUND: For outcomes that studies report as the means in the treatment and control groups, some ...
Comparative trials that report binary outcome data are commonly pooled in systematic reviews and met...
Meta-analysis is widely used to compare and combine the results of multiple independent studies. To ...
Contemporary statistical publications rely on simulation to evaluate performance of new methods and ...
AIMS: The study of foundational features of meta-analysis is incomplete and continues to remain impo...
Background: Systematic reviews and meta-analyses of binary outcomes are widespread in all areas of a...
Simulation studies to evaluate performance of statistical methods require a well-specified data-gene...
Both fixed and random effects models have been used to simulate the meta-analyses. The fixed effects...
For meta-analysis of studies that report outcomes as binomial proportions, the most popular measure ...
Background: Standard random-effects meta-analysis methods perform poorly when applied to few studies...
In random-effects meta-analysis the between-study variance (τ 2) has a key role in assessing heterog...
There are both theoretical and empirical reasons to believe that design and execution factors are as...
Random-effects meta-analysis requires an estimate of the between-study variance, $\tau^2$. We study ...
The present study investigates the performance of several statistical tests to detect publication bi...
For meta-analysis of studies that report outcomes as binomial proportions, the most popular measure ...
BACKGROUND: For outcomes that studies report as the means in the treatment and control groups, some ...
Comparative trials that report binary outcome data are commonly pooled in systematic reviews and met...
Meta-analysis is widely used to compare and combine the results of multiple independent studies. To ...