metafor (version 2.4-0)

dat.linde2005: Studies on the Effectiveness of St. John's Wort for Treating Depression

Description

Results from 26 studies on the effectiveness of Hypericum perforatum extracts (St. John's wort) for treating depression.

Usage

dat.linde2005

Arguments

Format

The data frame contains the following columns:

id numeric study number
study character study author(s)
year numeric publication year
country character study location
ni numeric total sample size
major numeric sample restricted to patients who met criteria for major depression
baseline numeric HRSD baseline score
version numeric HRSD version (17 or 21 items)
duration numeric study duration (in weeks)
prep character Hypericum extract preparation
dosage numeric dosage (in mg)
response numeric definition of response (1 = HRSD score reduction of at least 50% or HRSDscore after therapy <10; 2 = HRSDreduction of at least 50%; 3 = based on HRSD scale but exact definition not reported; 4 = global patient assessment of efficacy; 5 = at least 'much improved' on the Clinical Global Impression sub-scale global improvement)
ai numeric number of responses in treatment group
n1i numeric number of patients in treatment group
ci numeric number of responses in placebo group
n2i numeric number of patients in placebo group

Details

The dataset includes the results from 26 double-blind placebo-controlled trials on the effectiveness of Hypericum perforatum extracts (St. John's wort) for treating depression (note that 2 studies did not provide sufficient response information).

Data were extracted from Table 1 and Figure 3. For study duration, the assessment week (instead of the total study duration) was coded for Philipp et al. (1999) and Montgomery et al. (2000). For dosage, the midpoint was coded when a range of values was given.

References

Viechtbauer, W. (2007). Accounting for heterogeneity via random-effects models and moderator analyses in meta-analysis. Zeitschrift f<U+00FC>r Psychologie / Journal of Psychology, 215, 104--121.

Examples

Run this code
# NOT RUN {
### copy data into 'dat'
dat <- dat.linde2005

### remove studies with no response information and study with no responses in either group
dat <- dat[-c(5,6,26),]

### calculate log risk ratios and corresponding sampling variances
dat <- escalc(measure="RR", ai=ai, ci=ci, n1i=n1i, n2i=n2i, data=dat)
dat

### meta-analysis of the log risk ratios using a random-effects model
res <- rma(yi, vi, data=dat, method="DL")
res

### mixed-effects meta-regression model with stratification variable
res <- rma(yi, vi, mods = ~ factor(group) - 1, data=dat, method="DL")
res

### predicted average risk ratio for each level of the stratification variable
predict(res, newmods=diag(4), transf=exp, digits=2)
# }

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