Objectives: Meta-analyses are routinely evaluated for the presence of large between-study heterogeneity. We examined whether it is also important to probe whether there is extreme between-study homogeneity. Study Design: We used heterogeneity tests with left-sided statistical significance for inference and developed a Monte Carlo simulation test for testing extreme homogeneity in risk ratios across studies, using the empiric distribution of the summary risk ratio and heterogeneity statistic. A left-sided P = 0.01 threshold was set for claiming extreme homogeneity to minimize type I error. Results: Among 11,803 meta-analyses with binary contrasts from the Cochrane Library, 143 (1.21%) had left-sided P-value < 0.01 for the asymptotic Q statis...
Background: Heterogeneity has a key role in meta-analysis methods and can greatly affect conclusions...
Background: Many meta-analyses contain only a small number of studies, which makes it difficult to e...
Meta-analysis is a statistical methodology that combines the outcomes of several independent studies...
Meta-analysis aims to synthesize results from different studies. Although, in a meta-analysis the pr...
are used as the default tool for heterogeneity testing, the work we present here demonstrates that ...
Evaluation of important causes of heterogeneity among study results is an important component of any...
In statistical meta-analysis paradigm dealing with the techniques of pooling of evidence across seve...
After several decades' development, meta-analysis has become the pillar of evidence-based medicine. ...
Heterogeneity has a key role in meta-analysis methods and can greatly affect conclusions. However, t...
Heterogeneity has a key role in meta-analysis methods and can greatly affect conclusions. However, t...
In recent years, meta-analysis has evolved to a critically important field of Statistics, and has si...
Heterogeneity in meta-analysis can be caused by chance, methodological or clinical variations betwee...
Between-study heterogeneity and publication bias are common features of a meta-analysis that can be ...
(a) High statistical heterogeneity with inconsistency in direction of effects (uncertain benefit or ...
The identification of heterogeneity in effects between studies is a key issue in meta-analyses of ob...
Background: Heterogeneity has a key role in meta-analysis methods and can greatly affect conclusions...
Background: Many meta-analyses contain only a small number of studies, which makes it difficult to e...
Meta-analysis is a statistical methodology that combines the outcomes of several independent studies...
Meta-analysis aims to synthesize results from different studies. Although, in a meta-analysis the pr...
are used as the default tool for heterogeneity testing, the work we present here demonstrates that ...
Evaluation of important causes of heterogeneity among study results is an important component of any...
In statistical meta-analysis paradigm dealing with the techniques of pooling of evidence across seve...
After several decades' development, meta-analysis has become the pillar of evidence-based medicine. ...
Heterogeneity has a key role in meta-analysis methods and can greatly affect conclusions. However, t...
Heterogeneity has a key role in meta-analysis methods and can greatly affect conclusions. However, t...
In recent years, meta-analysis has evolved to a critically important field of Statistics, and has si...
Heterogeneity in meta-analysis can be caused by chance, methodological or clinical variations betwee...
Between-study heterogeneity and publication bias are common features of a meta-analysis that can be ...
(a) High statistical heterogeneity with inconsistency in direction of effects (uncertain benefit or ...
The identification of heterogeneity in effects between studies is a key issue in meta-analyses of ob...
Background: Heterogeneity has a key role in meta-analysis methods and can greatly affect conclusions...
Background: Many meta-analyses contain only a small number of studies, which makes it difficult to e...
Meta-analysis is a statistical methodology that combines the outcomes of several independent studies...