multibias_meta {multibiasmeta} | R Documentation |
Correction for meta-analysis with multiple biases
Description
Correction for meta-analysis with multiple biases
Usage
multibias_meta(
yi,
vi,
sei,
cluster = 1:length(yi),
biased = TRUE,
selection_ratio,
bias_affirmative,
bias_nonaffirmative,
favor_positive = TRUE,
alpha_select = 0.05,
ci_level = 0.95,
small = TRUE,
return_worst_meta = FALSE,
return_pubbias_meta = FALSE
)
Arguments
yi |
A vector of point estimates to be meta-analyzed. |
vi |
A vector of estimated variances (i.e., squared standard errors) for the point estimates. |
sei |
A vector of estimated standard errors for the point estimates.
(Only one of |
cluster |
Vector of the same length as the number of rows in the data, indicating which cluster each study should be considered part of (defaults to treating studies as independent; i.e., each study is in its own cluster). |
biased |
Boolean indicating whether each study is considered internally biased; either single value used for all studies or a vector the same length as the number of rows in the data (defaults to all studies). |
selection_ratio |
Ratio by which publication bias favors affirmative
studies (i.e., studies with p-values less than |
bias_affirmative |
Mean internal bias, on the additive scale, among
published affirmative studies. The bias has the same units as |
bias_nonaffirmative |
Mean internal bias, on the additive scale, among
published nonaffirmative studies. The bias has the same units as |
favor_positive |
|
alpha_select |
Alpha level at which an estimate's probability of being favored by publication bias is assumed to change (i.e., the threshold at which study investigators, journal editors, etc., consider an estimate to be significant). |
ci_level |
Confidence interval level (as proportion) for the corrected
point estimate. (The alpha level for inference on the corrected point
estimate will be calculated from |
small |
Should inference allow for a small meta-analysis? We recommend
always using |
return_worst_meta |
Boolean indicating whether the worst-case meta-analysis of only the nonaffirmative studies be returned. |
return_pubbias_meta |
Boolean indicating whether a meta-analysis correcting for publication but not for confounding be returned. |
Value
An object of class metabias::metabias()
, a list containing:
- data
A tibble with one row per study and the columns
yi
,vi
,sei
,biased
,cluster
,affirmative
,yi_adj
,weight
,userweight
.- values
A list with the elements
selection_ratio
,bias_affirmative
,bias_nonaffirmative
,favor_positive
,alpha_select
,ci_level
,small
.- stats
A tibble with the columns
model
,estimate
,se
,ci_lower
,ci_upper
,p_value
.- fit
A list of fitted models.
References
Mathur MB (2022). “Sensitivity analysis for the interactive effects of internal bias and publication bias in meta-analyses.” doi:10.31219/osf.io/u7vcb.
Examples
# publication bias without internal bias
meta_0 <- multibias_meta(yi = meta_meat$yi,
vi = meta_meat$vi,
selection_ratio = 4,
bias_affirmative = 0,
bias_nonaffirmative = 0)
meta_0$stats
# publication bias and internal bias in the non-randomized studies
meta_4 <- multibias_meta(yi = meta_meat$yi,
vi = meta_meat$vi,
biased = !meta_meat$randomized,
selection_ratio = 4,
bias_affirmative = log(1.5),
bias_nonaffirmative = log(1.1))
meta_4$stats
# treat all studies as biased, not just non-randomized ones
meta_all <- multibias_meta(yi = meta_meat$yi,
vi = meta_meat$vi,
biased = TRUE,
selection_ratio = 4,
bias_affirmative = log(1.5),
bias_nonaffirmative = log(1.1))
meta_all$stats