| as_nomogram | Construct nomogram ojects for high-dimensional Cox models |
| calibrate | Calibrate high-dimensional Cox models |
| calibrate_external | Externally calibrate high-dimensional Cox models |
| compare_by_calibrate | Compare high-dimensional Cox models by model calibration |
| compare_by_validate | Compare high-dimensional Cox models by model validation |
| fit_aenet | Model selection for high-dimensional Cox models with adaptive elastic-net penalty |
| fit_alasso | Model selection for high-dimensional Cox models with adaptive lasso penalty |
| fit_enet | Model selection for high-dimensional Cox models with elastic-net penalty |
| fit_flasso | Model selection for high-dimensional Cox models with fused lasso penalty |
| fit_lasso | Model selection for high-dimensional Cox models with lasso penalty |
| fit_mcp | Model selection for high-dimensional Cox models with MCP penalty |
| fit_mnet | Model selection for high-dimensional Cox models with Mnet penalty |
| fit_scad | Model selection for high-dimensional Cox models with SCAD penalty |
| fit_snet | Model selection for high-dimensional Cox models with Snet penalty |
| glmnet_basesurv | Breslow baseline hazard estimator for glmnet objects |
| glmnet_survcurve | Survival curve prediction for glmnet objects |
| infer_variable_type | Extract information of selected variables from high-dimensional Cox models |
| kmplot | Kaplan-Meier plot with number at risk table for internal calibration and external calibration results |
| logrank_test | Log-rank test for internal calibration and external calibration results |
| ncvreg_basesurv | Breslow baseline hazard estimator for ncvreg objects |
| ncvreg_survcurve | Survival curve prediction for ncvreg objects |
| penalized_basesurv | Breslow baseline hazard estimator for penfit objects |
| penalized_survcurve | Survival curve prediction for penfit objects |
| plot.hdnom.calibrate | Plot calibration results |
| plot.hdnom.calibrate.external | Plot external calibration results |
| plot.hdnom.compare.calibrate | Plot model comparison by calibration results |
| plot.hdnom.compare.validate | Plot model comparison by validation results |
| plot.hdnom.nomogram | Plot nomogram objects |
| plot.hdnom.validate | Plot optimism-corrected time-dependent discrimination curves for validation |
| plot.hdnom.validate.external | Plot time-dependent discrimination curves for external validation |
| predict.hdnom.model | Make predictions from high-dimensional Cox models |
| print.hdnom.calibrate | Print calibration results |
| print.hdnom.calibrate.external | Print external calibration results |
| print.hdnom.compare.calibrate | Print model comparison by calibration results |
| print.hdnom.compare.validate | Print model comparison by validation results |
| print.hdnom.model | Print high-dimensional Cox model objects |
| print.hdnom.nomogram | Print nomograms objects |
| print.hdnom.validate | Print validation results |
| print.hdnom.validate.external | Print external validation results |
| smart | Imputed SMART study data |
| smarto | Original SMART study data |
| summary.hdnom.calibrate | Summary of calibration results |
| summary.hdnom.calibrate.external | Summary of external calibration results |
| summary.hdnom.compare.calibrate | Summary of model comparison by calibration results |
| summary.hdnom.compare.validate | Summary of model comparison by validation results |
| summary.hdnom.validate | Summary of validation results |
| summary.hdnom.validate.external | Summary of external validation results |
| theme_hdnom | Plot theme (ggplot2) for hdnom |
| validate | Validate high-dimensional Cox models with time-dependent AUC |
| validate_external | Externally validate high-dimensional Cox models with time-dependent AUC |