Package index
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as_df.coxphw() - Convert
coxphw::coxphwinto a data.frame -
as_df.rcorr() - Convert
Hmisc::rcorrinto a data.frame -
as_df.rms() - Convert a generic
rmsobject into a data.frame -
as_df.validate() - Convert
rms::validateinto a data.frame -
class_acc() - Classification accuracy and agreement estimates
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cor_sparse() - Correlation of a sparse matrix
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descript() - Descriptive statistics
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dichotomize() - Dichotomize continuous variables
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dxy2auc() - Convert Dxy to AUC
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geometric_mean() - Geometric mean
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landmark() - Build a landmark-analysis dataset
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lmm_marginal_varcov() - Marginal variance-covariance matrix from an LMM
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lmm_re_varcor() - Extract random-effects variances, standard deviation, and correlations from an LMM
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logit() - Convert probabilities to logits
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logit_inv() - Convert logits to probabilities
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normalize()normalize_maxabs() - Normalize a numeric vector
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oddspath() - Odds of Pathogenicity
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plot_model() - Create a coefficient/model/forest plot
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pmsampsize_r2() - Estimate Cox-Snell R2 using AUC
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predict_glm() - Logistic Model Predictions
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predict_surv_prob() - Predicted survival probability at a given time
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predict_surv_time() - Predicted median survival time
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print(<landmark>) - Print a landmark-analysis dataset
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pval() - Format p-values
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rcv_glmnet() - Repeated Cross Validated Elastic Net Regression
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reldif_means() - Relative/Percent Difference in Means
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sd_within_ss() - Sample size for the within subject standard deviation
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standardize() - Standardize a numeric vector
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standardize_quantile() - Standardize a numeric vector using quantiles
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stat_centroid() - Connect points to their centroid
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surv_prob() - Get the survival probability at a given time
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surv_time() - Get the survival time at a given probability of survival
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svyglm_nested_test() - Design-based test for nested survey-weighted GLMs
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walsh() - Walsh averages