extreme_surv_screen()
regression test with a deterministic survival-only fixture using
stepwise_cox, so the test no longer depends on optional
glmnet behavior and remains stable on Windows and Debian
R-devel incoming checks.All cohort
is labelled Overall, and only multi-cohort analyses add
Overall plus individual cohorts. This removes duplicated
single-cohort panels such as Overall plus
TCGA_LUAD_PanCan.log_message() so initialize_auto_logging()
captures messages such as Evaluating ... and
Fitting ... in the log file as well as the console.surv_svm_resampling = "kfold") to avoid known
single-row prediction failures from survivalsvm under
leave-one-out cross-validation.automlr_input_to_surv_xy(),
automlr_input_to_binary_xy(),
automlr_input_to_continuous_xy(), and
automlr_input_to_ordinal_xy() so users can call lower-level
evaluation functions without relying on internal :::
helpers.auto_min_cindex,
auto_min_auc, auto_min_r2, and
auto_min_qwk, controlled by
auto_quantile.recommend_surv_cindex_threshold(),
recommend_binary_auc_threshold(),
recommend_continuous_r2_threshold(), and
recommend_ordinal_qwk_threshold() for explicit threshold
review.check_automlr_dependencies() to report available
and missing model backends, optional features, expected skip/degradation
behavior, and install commands.log4r, future, or future.apply
packages are unavailable.prepare_continuous_cohort_input(),
continuousmlr_parameters(),
fit_continuous_ensemble(),
export_continuous_results(), and
render_continuous_report().prepare_ordinal_cohort_input(),
ordinalmlr_parameters(),
fit_ordinal_ensemble(),
export_ordinal_results(), and
render_ordinal_report().collapse_other = TRUE, and negative_class can
be supplied for clear positive / negative mapping.strategy = "threshold" report/export
compatibility.model_performance_forest.csv and
fig9_model_performance_forest with OOF ROC AUC and
approximate 95% CI.prepare_binary_cohort_input(),
binarymlr_parameters(), fit_binary_ensemble(),
export_binary_results(), and binary summary helpers.feature_importance.csv,
shap_approx_contributions.csv,
risk_score_nomogram.csv,
calibration_curve.csv, dca_curve.csv,
model_cindex_forest.csv, and
risk_prediction_horizon.csv.summarize_explainability_results() and bilingual
interpretation text explaining that SHAP-style outputs are
median-ablation approximations and that nomogram / calibration / DCA
diagnostics are based on the final risk-score Cox calibration.fit_surv_ensemble(automlr_input) support
so cohort labels from prepare_cohort_input() are used
automatically for stability diagnostics.render_surv_report() to write an HTML report with
separate figures/ and tables/ folders.export_surv_results() for batch output, including
publication-ready figures, tables, fitted objects, and session
metadata.risk_scores.csv export and a
risk-stratified Kaplan-Meier figure.timeROC is
available.extreme_surv_screen() for two-stage extreme
screening: apparent full-data upper-bound ranking followed by top-N
70/30 seed search.export_extreme_screen_results() with complete
audit tables and a Morandi-toned extreme-screening figure set.summarize_extreme_screen_results() and automatic
bilingual English / Chinese summary_report.md export to
explain the best apparent models, seed-search leaders, train /
validation C-index results, cohort diagnostics, and failure notes.render_surv_report() and export_surv_results()
now write bilingual English / Chinese summaries by default.min_models = 1, max_models = 2) so
users can directly compare the best single model with the best two-model
combination.inst/tutorials/AutoMLR_tutorial.md, with standalone code
blocks and interpretation guides for regular analysis and extreme
screening.
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