aft.gamma |
Library of the Super Learner for an accelerated failure time (AFT) parametric model with a gamma distribution |
aft.ggamma |
Library of the Super Learner for an accelerated failure time (AFT) parametric model with a generalized gamma distribution |
aft.llogis |
Library of the Super Learner for an accelerated failure time (AFT) parametric model with a log logistic distribution |
aft.weibull |
Library of the Super Learner for an accelerated failure time (AFT) parametric model with a Weibull distribution |
auc |
Area Under ROC Curve From Sensitivities And Specificities. |
cox.aic |
Library of the Super Learner for Cox univariate significant model |
cox.all |
Library of the Super Learner for Cox Regression |
cox.en |
Library of the Super Learner for Elastic Net Cox Regression |
cox.lasso |
Library of the Super Learner for Lasso Cox Regression |
cox.ridge |
Library of the Super Learner for Ridge Cox Regression |
dataCSL |
CSL Liver Chirrosis Data. |
dataDIVAT1 |
A First Sample From The DIVAT Data Bank. |
dataDIVAT2 |
A Second Sample From the DIVAT Data Bank. |
dataDIVAT3 |
A Third Sample From the DIVAT Data Bank. |
dataDIVAT4 |
A Fourth Sample From the DIVAT Data Bank. |
dataDIVAT5 |
The Aggregated Kidney Graft Survival Stratified By The 1-year Serum Creatinine. |
dataFTR |
Data for First Kidney Transplant Recipients. |
dataHepatology |
The Data Extracted From The Meta-Analysis By Cabibbo et al. (2010). |
dataKi67 |
The Aggregated Data Published By de Azambuja et al. (2007). |
dataKTFS |
A Sixth Sample Of The DIVAT Cohort. |
dataOFSEP |
A Simulated Sample From the OFSEP Cohort. |
dataSTR |
Data for Second Kidney Transplant Recipients. |
differentiation |
Numerical Differentiation with Finite Differences. |
expect.utility1 |
Cut-Off Estimation Of A Prognostic Marker (Only One Observed Group). |
expect.utility2 |
Cut-Off Estimation Of A Prognostic Marker (Two Groups Are observed). |
fr.ratetable |
Expected Mortality Rates of the General French Population |
gc.logistic |
Marginal Effect for Binary Outcome by G-computation. |
gc.sl.binary |
Marginal Effect for Binary Outcome by Super Learned G-computation. |
gc.survival |
Marginal Effect for Censored Outcome by G-computation with a Cox Regression for the Outcome Model. |
ipw.log.rank |
Log-Rank Test for Adjusted Survival Curves. |
ipw.survival |
Adjusted Survival Curves by Using IPW. |
lines.rocrisca |
Add Lines to a ROC Plot |
lrs.multistate |
Likelihood Ratio Statistic to Compare Embedded Multistate Models |
markov.3states |
3-State Time-Inhomogeneous Markov Model |
markov.3states.rsadd |
3-state Relative Survival Markov Model with Additive Risks |
markov.4states |
4-State Time-Inhomogeneous Markov Model |
markov.4states.rsadd |
4-state Relative Survival Markov Model with Additive Risks |
metric |
Metrics to Evaluate the Prognostic Capacities |
mixture.2states |
Horizontal Mixture Model for Two Competing Events |
nn.time |
Library of the Super Learner for Survival Neural Network |
ph.exponential |
Library of the Super Learner for an proportional hazards (PH) parametric model with an Exponential distribution |
ph.gompertz |
Library of the Super Learner for an proportional hazards (PH) parametric model with a Gompertz distribution |
plot.rocrisca |
Plot Method for 'rocrisca' Objects |
plot.sl.time |
Caliration Plot for Super Learner |
plot.survrisca |
Plot Method for 'survrisca' Objects |
port |
POsitivity-Regression Tree (PoRT) Algorithm to Identify Positivity Violations. |
pred.mixture.2states |
Cumulative Incidence Function Form Horizontal Mixture Model With Two Competing Events |
predict.cox |
Prediction from a Penalized Cox Regression |
predict.flexsurv |
Prediction from an Flexible Parametric Model |
predict.nn.time |
Prediction from a Survival Neural Network |
predict.rf.time |
Prediction from a Suvival Random Forest Tree |
predict.sl.time |
Prediction from an Super Learner (SL) for Censored Outcomes |
print.sl.time |
S3 method for Printing an 'sl.time' object |
rf.time |
Library of the Super Learner for Survival Random Forest Tree |
rmst |
Restricted Mean Survival Times. |
roc.binary |
ROC Curves For Binary Outcomes. |
roc.net |
Net Time-Dependent ROC Curves With Right Censored Data. |
roc.prognostic.aggregate |
Prognostic ROC Curve Based on Survival Probabilities |
roc.prognostic.individual |
Prognostic ROC Curve based on Individual Data |
roc.summary |
Summary ROC Curve For Aggregated Data. |
roc.time |
Time-Dependent ROC Curves With Right Censored Data. |
semi.markov.3states |
3-State Semi-Markov Model |
semi.markov.3states.ic |
3-State Semi-Markov Model With Interval-Censored Data |
semi.markov.3states.rsadd |
3-State Relative Survival Semi-Markov Model With Additive Risks |
semi.markov.4states |
4-State Semi-Markov Model |
semi.markov.4states.rsadd |
4-State Relative Survival Semi-Markov Model With Additive Risks |
sl.time |
Super Learner for Censored Outcomes |
summary.sl.time |
Summaries of a Super Learner |
survival.mr |
Multiplicative-Regression Model to Compare the Risk Factors Between Two Reference and Relative Populations |
survival.summary |
Summary Survival Curve From Aggregated Data |
survival.summary.strata |
Summary Survival Curve And Comparison Between Strata. |
tune.cox.aic |
Tune cox step AIC with forward selection |
tune.cox.en |
Tune Elastic Net Cox Regression |
tune.cox.lasso |
Tune Lasso Cox Regression |
tune.cox.ridge |
Tune Ridge Cox Regression |
tune.nn.time |
Tune a 1-Layer Survival Neural Network |
tune.rf.time |
Tune Survival Random Forest Tree |