Study Design and Data Analysis in the Presence of Error-Prone Diagnostic Tests and Self-Reported Outcomes


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Documentation for package ‘icensmis’ version 1.5.0

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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