View source: R/class_generic.R
BMD | R Documentation |
Benchmark dose associated to a particular risk
BMD(level, risk, x, alpha=0.05)
level |
dose level of interest. |
risk |
|
x |
numeric vector for the covariate relative to the dose of exposure used in |
alpha |
level of the credible bands. |
A dataframe containing as variables:
q
the dose level of interest.
BMD
the benchmark dose.
low
lower credible limit.
upp
upper credible limit.
BMDL
a more conservative benchmark dose.
Antonio Canale
{
data(CPP)
attach(CPP)
n <- NROW(CPP)
J <- H <- 10
premature <- as.numeric(gestage<=37)
mcmc <- list(nrep=5000, nb=2000, thin=5, ndisplay=4)
## too few iterations to be meaningful. see below for safer and more comprehensive results
mcmc <- list(nrep=10, nb=2, thin=1, ndisplay=4)
prior <- list(mu.theta=mean(gestage), k.theta=10, eta=rep(1, J)/J,
alpha=rep(1,H)/H, a=2, b=2, J=J, H=H)
fit.dummy <- comire.gibbs(gestage, dde, family="continuous",
mcmc=mcmc, prior=prior, seed=1, max.x=180)
risk.data <- add.risk(y = gestage, x = dde, fit = fit.dummy, mcmc = mcmc,
a = 37, x.grid = seq(0, max(dde), length = 100))
bmd.data <- BMD(seq(0,.20, length=50), risk.data$mcmc.risk,
x=seq(0,max(dde), length=100), alpha=0.05)
bmd.plot(bmd.data)
## safer procedure with more iterations (it may take some time)
mcmc <- list(nrep=5000, nb=2000, thin=5, ndisplay=4)
## Fit the model for continuous y
prior <- list(mu.theta=mean(gestage), k.theta=10, eta=rep(1, J)/J,
alpha=rep(1,H)/H, a=2, b=2, J=J, H=H)
fit <- comire.gibbs(gestage, dde, family="continuous",
mcmc=mcmc, prior=prior, seed=5, max.x=180)
risk.data <- add.risk(y = gestage, x = dde, fit = fit, mcmc = mcmc,
a = 37, x.grid = seq(0, max(dde), length = 100))
bmd.data <- BMD(seq(0,.20, length=50), risk.data$mcmc.risk,
x=seq(0,max(dde), length=100), alpha=0.05)
bmd.plot(bmd.data)
}
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