A common problem in the meta analysis of continuous data is that some studies do not report sufficient information to calculate the standard deviation (SDs) of the treatment effect. One of the approaches in handling this problem is through imputation. This article examines the empirical implications of imputing the missing SDs on the standard error (SE) of the overall meta analysis estimate. The simulation results show that if the SDs are missing under Missing Completely at Random and Missing at Random mechanism, imputation is recommended. With non random missing, imputation can lead to overestimation of the SE of the estimate
The choice between tile fixed aud raudom dfed5 model for pl'O'fidiDg am o'Ytl'd mda auIysis edimate ...
The choice between tile fixed aud raudom dfed5 model for pl'O'fidiDg am o'Ytl'd mda auIysis edimate ...
The choice between tile fixed aud raudom dfed5 model for pl'O'fidiDg am o'Ytl'd mda auIysis edimate ...
A common problem in the meta analysis of continuous data is that some studies do not report sufficie...
A common problem in the meta analysis of continuous data is that some studies do not report sufficie...
A common problem in the meta analysis of continuous data is that some studies do not report sufficie...
A common problem in the meta analysis of continuous data is that some studies do not report sufficie...
A common problem in the meta analysis of continuous data is that some studies do not report sufficie...
Abstract— The choice between the fixed and random effects model for providing an overall meta analy...
Abstract— The choice between the fixed and random effects model for providing an overall meta analy...
A common method of handling the problem of missing variances in meta-analysis of continuous response...
A common method of handling the problem of missing variances in meta-analysis of continuous response...
A common method of handling the problem of missing variances in meta-analysis of continuous response...
This paper examines the implications of the present approaches in handling missing variability in me...
A study that would otherwise be eligible is commonly excluded from a metaanalysis when the standard ...
The choice between tile fixed aud raudom dfed5 model for pl'O'fidiDg am o'Ytl'd mda auIysis edimate ...
The choice between tile fixed aud raudom dfed5 model for pl'O'fidiDg am o'Ytl'd mda auIysis edimate ...
The choice between tile fixed aud raudom dfed5 model for pl'O'fidiDg am o'Ytl'd mda auIysis edimate ...
A common problem in the meta analysis of continuous data is that some studies do not report sufficie...
A common problem in the meta analysis of continuous data is that some studies do not report sufficie...
A common problem in the meta analysis of continuous data is that some studies do not report sufficie...
A common problem in the meta analysis of continuous data is that some studies do not report sufficie...
A common problem in the meta analysis of continuous data is that some studies do not report sufficie...
Abstract— The choice between the fixed and random effects model for providing an overall meta analy...
Abstract— The choice between the fixed and random effects model for providing an overall meta analy...
A common method of handling the problem of missing variances in meta-analysis of continuous response...
A common method of handling the problem of missing variances in meta-analysis of continuous response...
A common method of handling the problem of missing variances in meta-analysis of continuous response...
This paper examines the implications of the present approaches in handling missing variability in me...
A study that would otherwise be eligible is commonly excluded from a metaanalysis when the standard ...
The choice between tile fixed aud raudom dfed5 model for pl'O'fidiDg am o'Ytl'd mda auIysis edimate ...
The choice between tile fixed aud raudom dfed5 model for pl'O'fidiDg am o'Ytl'd mda auIysis edimate ...
The choice between tile fixed aud raudom dfed5 model for pl'O'fidiDg am o'Ytl'd mda auIysis edimate ...