minEffect.VSMc.logistic {powerMediation} | R Documentation |
Minimum detectable slope for mediator in logistic regression based on Vittinghoff, Sen and McCulloch's (2009) method
Description
Calculate minimal detectable slope for mediator given sample size and power in logistic regression based on Vittinghoff, Sen and McCulloch's (2009) method.
Usage
minEffect.VSMc.logistic(n,
power,
sigma.m,
p,
corr.xm,
alpha = 0.05,
verbose = TRUE)
Arguments
n |
sample size. |
power |
power for testing |
sigma.m |
standard deviation of the mediator. |
p |
the marginal prevalence of the outcome. |
corr.xm |
correlation between the predictor |
alpha |
type I error rate. |
verbose |
logical. |
Details
The test is for testing the null hypothesis
versus the alternative hypothesis
for the logistic regressions:
Vittinghoff et al. (2009) showed that for the above logistic regression, testing the mediation effect
is equivalent to testing the null hypothesis
versus the alternative hypothesis
, if the
correlation
corr.xm
between the primary predictor and mediator is non-zero.
The full model is
The reduced model is
Vittinghoff et al. (2009) mentioned that if confounders need to be included
in both the full and reduced models, the sample size/power calculation formula
could be accommodated by redefining corr.xm
as the multiple
correlation of the mediator with the confounders as well as the predictor.
Value
b2 |
minimum absolute detectable effect. |
res.uniroot |
results of optimization to find the optimal sample size. |
Note
The test is a two-sided test. For one-sided tests, please double the
significance level. For example, you can set alpha=0.10
to obtain one-sided test at 5% significance level.
Author(s)
Weiliang Qiu stwxq@channing.harvard.edu
References
Vittinghoff, E. and Sen, S. and McCulloch, C.E.. Sample size calculations for evaluating mediation. Statistics In Medicine. 2009;28:541-557.
See Also
powerMediation.VSMc.logistic
,
ssMediation.VSMc.logistic
Examples
# example in section 4 (page 545) of Vittinghoff et al. (2009).
# minimum effect is log(1.5)= 0.4054651
minEffect.VSMc.logistic(n = 255, power = 0.8, sigma.m = 1,
p = 0.5, corr.xm = 0.5, alpha = 0.05, verbose = TRUE)