checknames |
Check for valid model terms in a qgcomp fit |
coxmsm_fit |
Marginal structural Cox model (MSM) fitting within quantile g-computation |
gcomp.boot |
Quantile g-computation for continuous and binary outcomes |
gcomp.noboot |
Quantile g-computation for continuous, binary, and count outcomes under linearity/additivity |
glance.qgcompfit |
Glance at a qgcompfit object |
homogeneity_test |
Hypothesis testing about joint effect of exposures on a multinomial outcome |
homogeneity_test.qgcompmultfit |
Hypothesis testing about joint effect of exposures on a multinomial outcome |
hurdlemsm_fit |
Secondary prediction method for the (hurdle) qgcomp MSM. |
hurdlemsm_fit.control |
Control of fitting parameters for zero inflated MSMs |
joint_test |
Hypothesis testing about joint effect of exposures on a multinomial outcome |
joint_test.qgcompmultfit |
Hypothesis testing about joint effect of exposures on a multinomial outcome |
metals |
Well water data |
mice.impute.leftcenslognorm |
Imputation for limits of detection problems |
mice.impute.tobit |
Imputation for limits of detection problems |
modelbound.boot |
Estimating qgcomp regression line confidence bounds |
msm.predict |
Secondary prediction method for the (non-survival) qgcomp MSM. |
msm_fit |
Fitting marginal structural model (MSM) within quantile g-computation |
msm_multinomial_fit |
Fitting marginal structural model (MSM) within quantile g-computation |
plot.qgcompfit |
Default plotting method for a qgcompfit object |
plot.qgcompmultfit |
Default plotting method for a qgcompfit object |
pointwisebound.boot |
Estimating pointwise comparisons for qgcomp.glm.boot objects |
pointwisebound.noboot |
Estimating pointwise comparisons for qgcomp.glm.noboot objects |
predict.qgcompfit |
Default prediction method for a qgcompfit object (non-survival outcomes only) |
print.qgcompfit |
Default printing method for a qgcompfit object |
qgcomp |
Quantile g-computation for continuous, binary, count, and censored survival outcomes |
qgcomp.boot |
Quantile g-computation for continuous and binary outcomes |
qgcomp.cch.noboot |
Quantile g-computation for survival outcomes in a case-cohort design under linearity/additivity |
qgcomp.cox.boot |
Quantile g-computation for survival outcomes |
qgcomp.cox.noboot |
Quantile g-computation for survival outcomes under linearity/additivity |
qgcomp.glm.boot |
Quantile g-computation for continuous and binary outcomes |
qgcomp.glm.noboot |
Quantile g-computation for continuous, binary, and count outcomes under linearity/additivity |
qgcomp.hurdle.boot |
Quantile g-computation for hurdle count outcomes |
qgcomp.hurdle.noboot |
Quantile g-computation for hurdle count outcomes under linearity/additivity |
qgcomp.multinomial.boot |
Quantile g-computation for multinomial outcomes |
qgcomp.multinomial.noboot |
Quantile g-computation for multinomial outcomes |
qgcomp.noboot |
Quantile g-computation for continuous, binary, and count outcomes under linearity/additivity |
qgcomp.partials |
Partial effect sizes, confidence intervals, hypothesis tests |
qgcomp.survcurve.boot |
Survival curve data from a qgcomp survival fit |
qgcomp.zi.boot |
Quantile g-computation for zero-inflated count outcomes |
qgcomp.zi.noboot |
Quantile g-computation for zero-inflated count outcomes under linearity/additivity |
quantize |
Quantizing exposure data |
se_comb |
Calculate standard error of weighted linear combination of random variables |
simdata_quantized |
Simulate quantized exposures for testing methods |
split_data |
Perform sample splitting |
summary.qgcompmultfit |
Summarize gcompmultfit object |
tidy.qgcompfit |
Tidy method for qgcompfit object |
vc_comb |
Calculate covariance matrix between one random variable and a linear combination of random variables |
zimsm_fit |
Secondary prediction method for the (zero-inflated) qgcomp MSM. |
zimsm_fit.control |
Control of fitting parameters for zero inflated MSMs |