Meta-analysis with application to estimating combined estimators of effect sizes in biomedical research.
Date
2018
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Abstract
Meta-analysis is a statistical analysis that combines results from different independent
studies. In meta-analysis a number of statistical methods are currently used for
combining effect sizes of different studies. The simplest of these methods is based
on a fixed-effects model, which assumes that all studies in the meta-analysis share
a common true effect size and that the effect sizes in our meta-analysis differ only
because of sampling error. Another statistical method that is used in meta-analysis,
is the random-effects model, which assumes sampling variation due to fixed-effects
model assumptions and random variation because the effect sizes themselves are
sampled from a population of effect sizes. These models are compared to determine
which model is appropriate and under what circumstances is the model appropriate.
We illustrate these models by applying each model to a collection of 3 studies examining
the effectiveness of new drug versus placebo to treat patients with duodenal
ulcers and meta-analysis of 9 studies of the use of diuretics during pregnancy to prevent
the development of pre-eclampsia. Results indicated that the choice between
the two model depends on the question of which model fits the distribution of effect
sizes better and takes account of the relevant source(s) of error. We further study
the meta-analysis of longitudinal studies where effect sizes are reported at multiple
time points. Univariate meta-analysis is a statistical approach which may be used to
study effect sizes reported at multiple time point. The problem with this approach
is that it ignores correlation between the effect sizes, which might increase the standard
error of the point estimates. We used the linear mixed-effects model, which
borrows ideas from multivariate meta-analysis. One of the advantages of the linear
mixed-effects model is that it accounts for correlation between effect sizes both
within and between studies. The independence model where separate univariate
meta-analysis is done at each of the time points was compared against models where
correlation was accounted for different alternatives; including random study effects,
correlated random time effects and/or correlated within-study errors, or unstructured
covariance structures. We implemented these methods through an example
of meta-analysis of 16 randomized clinical trials of radiotherapy and chemotherapy
versus radiotherapy alone for the post-operative treatment of patients with malignant gliomas, where in each trial, survival is evaluated at 6, 12, 18 and 24 months post randomization. The results revealed that models that accounted for correlations had better fit.
Keywords: meta-analysis, fixed-effects model, random-effects model, heterogeneity,
publication bias, linear mixed-effects model.
Description
Masters Degree. University of KwaZulu-Natal, Pietermaritzburg.