Estimation and adjustment of bias in randomized evidence by using mixed treatment comparison meta-analysis
There is good empirical evidence that specific flaws in the conduct of randomized controlled trials are associated with exaggeration of treatment effect estimates. Mixed treatment comparison meta-analysis, which combines data from trials on several treatments that form a network of comparisons, has the potential both to estimate bias parameters within the synthesis and to produce bias-adjusted estimates of treatment effects. We present a hierarchical model for bias with common mean across treatment comparisons of active treatment "versus" control. It is often unclear, from the information that is reported, whether a study is at risk of bias or not. We extend our model to estimate the probability that a particular study is biased, where the probabilities for the 'unclear' studies are drawn from a common beta distribution. We illustrate these methods with a synthesis of 130 trials on four fluoride treatments and two control interventions for the prevention of dental caries in children. Whether there is adequate allocation concealment and/or blinding are considered as indicators of whether a study is at risk of bias. Bias adjustment reduces the estimated relative efficacy of the treatments and the extent of between-trial heterogeneity. Copyright (c) 2010 Royal Statistical Society.
Year of publication: |
2010
|
---|---|
Authors: | Dias, S. ; Welton, N. J. ; Marinho, V. C. C. ; Salanti, G. ; Higgins, J. P. T. ; Ades, A. E. |
Published in: |
Journal of the Royal Statistical Society Series A. - Royal Statistical Society - RSS, ISSN 0964-1998. - Vol. 173.2010, 3, p. 613-629
|
Publisher: |
Royal Statistical Society - RSS |
Saved in:
Saved in favorites
Similar items by person
-
Rhodes, K. M., (2019)
-
Models for potentially biased evidence in meta-analysis using empirically based priors
Welton, N. J., (2009)
-
A model of toxoplasmosis incidence in the UK: evidence synthesis and consistency of evidence
Welton, N. J., (2005)
- More ...