es_from_med_min_max {metaConvert} | R Documentation |
Convert median, quartiles, and range of two independent groups into several effect size measures
Description
Convert median, quartiles, and range of two independent groups into several effect size measures
Usage
es_from_med_min_max(
min_exp,
med_exp,
max_exp,
n_exp,
min_nexp,
med_nexp,
max_nexp,
n_nexp,
smd_to_cor = "viechtbauer",
reverse_med
)
Arguments
min_exp |
minimum value of the experimental/exposed group. |
med_exp |
median value of the experimental/exposed group. |
max_exp |
maximum value of the experimental/exposed group. |
n_exp |
number of participants in the experimental/exposed group. |
min_nexp |
minimum value of the non-experimental/non-exposed group. |
med_nexp |
median value of the non-experimental/non-exposed group. |
max_nexp |
maximum value of the non-experimental/non-exposed group. |
n_nexp |
number of participants in the non-experimental/non-exposed group. |
smd_to_cor |
formula used to convert the generated |
reverse_med |
a logical value indicating whether the direction of generated effect sizes should be flipped. |
Details
This function first converts a Cohen's d (D), Hedges' g (G) and mean difference (MD) from the medians and ranges of two independent groups. Odds ratio (OR) and correlation coefficients (R/Z) are then converted from the Cohen's d.
This function recreates means+SD of the two groups (Wan et al., 2014):
mean\_exp = \frac{min\_exp + 2*med\_exp + max\_exp}{4}
mean\_nexp = \frac{min\_nexp + 2*med\_nexp + max\_nexp}{4}
mean\_sd\_exp = \frac{max\_exp - min\_exp}{2*qnorm((n\_exp-0.375) / (n\_exp+0.25))}
mean\_sd\_nexp = \frac{max\_nexp - min\_nexp}{2*qnorm((n\_nexp-0.375) / (n\_nexp+0.25))}
Note that if the group sample size is inferior to 50, a correction is applied to estimate the standard deviation.
From these means+SD, the function computes MD, D and G using formulas
described in es_from_means_sd()
.
To estimate other effect size measures,
calculations of the es_from_cohen_d()
are applied.
Importantly,, authors of the Cochrane Handbook stated "As a general rule, we recommend that ranges should not be used to estimate SDs." (see section 6.5.2.6). It is thus a good practice to explore the consequences of the use of this conversion in sensitivity analyses.
Value
This function estimates and converts between several effect size measures.
natural effect size measure | |
converted effect size measure | MD + D + G |
OR + R + Z | |
required input data | See 'Section 12. Median, range and/or interquartile range' |
https://metaconvert.org/html/input.html | |
This function estimates and converts between several effect size measures.
natural effect size measure | |
converted effect size measure | MD + D + G |
OR + R + Z | |
required input data | See 'Section 12. Median, range and/or interquartile range' |
https://metaconvert.org/html/input.html | |
References
Wan, X., Wang, W., Liu, J. et al. Estimating the sample mean and standard deviation from the sample size, median, range and/or interquartile range. BMC Med Res Methodol 14, 135 (2014). https://doi.org/10.1186/1471-2288-14-135
Higgins JPT, Li T, Deeks JJ (editors). Chapter 6: Choosing effect size measures and computing estimates of effect. In: Higgins JPT, Thomas J, Chandler J, Cumpston M, Li T, Page MJ, Welch VA (editors). Cochrane Handbook for Systematic Reviews of Interventions version 6.3 (updated February 2022). Cochrane, 2022. Available from www.training.cochrane.org/handbook.
Examples
es_from_med_min_max(
min_exp = 1335, med_exp = 1400,
max_nexp = 1765, n_exp = 40,
min_nexp = 1481, med_nexp = 1625,
max_exp = 1800, n_nexp = 40
)