bayesmc |
Bayesian method for high-dimensional variable selection |
datasim |
Simulate data including multiple outcomes from error-prone diagnostic tests or self-reports |
fitsurv |
Fit survival function, used for Bayesian simulation |
icmis |
Maximum likelihood estimation for settings of error-prone diagnostic tests and self-reported outcomes |
icpower |
Study design in the presence of error-prone diagnostic tests and self-reported outcomes |
icpower.val |
Study design in the presence of error-prone diagnostic tests and self-reported outcomes when sensitivity and specificity are unkonwn and a validation set is used |
icpowerpf |
Study design in the presence of interval censored outcomes (assuming perfect diagnostic tests) |
icpower_weibull |
Study design in the presence of error-prone diagnostic tests and self-reported outcomes for Weibull model |
plot_surv |
Plot survival function |