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landmaRk
landmaRk 0.1.1
- Package is made publicly available via CRAN.
New Features
- AUC(t) metric for evaluating landmark models.
- Cross-validation support for model evaluation.
- Subject-specific predictions with LCMM.
- Cluster assignment from LCMM fits can be used in the survival
step.
summary() method for LandmarkAnalysis
class.
prune() method for LandmarkAnalysis
class.
- Parallelised longitudinal model fitting.
- Survival plots via
plot() method.
- Convergence messages for fitted models.
- Print number of subjects in each risk set for
show()
method.
Bug Fixes
- Fixed cross-validation not working correctly with LCMM.
- Fixed LOCF (last observation carried forward) issues.
- Fixed bug where static covariates were not used in Cox PH
models.
- Fixed bug selecting IDs for survival analysis.
- Fixed bugs in working out risk sets.
- Fixed Windows parallelism issues.
- Better error handling for
fit_survival() when
predictions are not available.
- Character covariates are now converted to factors.
Other Changes
- Renamed package from landmarkR to landmaRk.
- Renamed main class to
LandmarkAnalysis.
- Standardised horizon parameter handling.
- Now depends on release version of lcmm (>= 2.2.2).
- Baseline set to 0 for all survival models.
- Internal functions refactored into smaller functions.
- Code formatted using Air.
- Added CODE_OF_CONDUCT.md.
landmaRk 0.0.0.9000
- Package is made publicly available via r-universe and GitHub.
Features
- Support for lmer, and hlme is added for longitudinal
sub-models.
- Support for last observation carried forward (LOCF).
- Support for cox proportional hazards survival sub-model.
- C-index and Brier score metrics are implemented for evaluating
landmark models.
- Support for arbitrary longitudinal sub-models.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
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