Progression Models for Repeated Measures


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Documentation for package ‘pmrm’ version 0.0.2

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AIC.pmrm_fit Akaike information criterion (AIC)
BIC.pmrm_fit Bayesian information criterion (BIC)
coef.pmrm_fit Treatment effect parameters
confint.pmrm_fit Confidence intervals of parameters
deviance.pmrm_fit Deviance
fitted.pmrm_fit Fitted values
glance.pmrm_fit Glance at a PMRM.
logLik.pmrm_fit Extract the log likelihood.
plot.pmrm_fit Plot a fitted PMRM.
pmrm_estimates Parameter estimates and confidence intervals
pmrm_marginals Marginal means
pmrm_model_decline_nonproportional Fit the non-proportional decline model.
pmrm_model_decline_proportional Fit the proportional decline model.
pmrm_model_slowing_nonproportional Fit the non-proportional slowing model.
pmrm_model_slowing_proportional Fit the proportional slowing model.
pmrm_simulate_decline_nonproportional Simulate non-proportional decline model.
pmrm_simulate_decline_proportional Simulate proportional decline model.
pmrm_simulate_slowing_nonproportional Simulate non-proportional slowing model.
pmrm_simulate_slowing_proportional Simulate proportional slowing model.
predict.pmrm_fit Predict new outcomes
print.pmrm_fit Print a fitted PMRM.
residuals.pmrm_fit 'pmrm' residuals.
summary.pmrm_fit Summarize a PMRM.
tidy.pmrm_fit Tidy a fitted PMRM.
VarCorr.pmrm_fit Estimated covariance matrix
vcov.pmrm_fit Treatment effect parameter covariance matrix