A B C D E F G H I K L M N O P Q R S T U V W misc
| crmPack-package | Object-oriented implementation of CRM designs |
| and-Stopping-Stopping | Combine Two Stopping Rules with AND |
| and-Stopping-StoppingAll | Combine an Atomic Stopping Rule and a Stopping List with AND |
| and-StoppingAll-Stopping | Combine a Stopping List and an Atomic Stopping Rule with AND |
| approximate | Approximate posterior with (log) normal distribution |
| approximate-method | Approximate posterior with (log) normal distribution |
| assertions | Additional Assertions for 'checkmate' |
| assert_equal | Check if All Arguments Are Equal |
| assert_format | Check that an argument is a valid format specification |
| assert_length | Check if vectors are of compatible lengths |
| assert_probabilities | Check if an argument is a probability vector |
| assert_probability | Check if an argument is a single probability value |
| assert_probability_range | Check if an argument is a probability range |
| assert_range | Check that an argument is a numerical range |
| biomarker | Get the Biomarker Levels for a Given Dual-Endpoint Model, Given Dose Levels and Samples |
| biomarker-DualEndpoint | Get the Biomarker Levels for a Given Dual-Endpoint Model, Given Dose Levels and Samples |
| biomarker-method | Get the Biomarker Levels for a Given Dual-Endpoint Model, Given Dose Levels and Samples |
| check_equal | Check if All Arguments Are Equal |
| check_format | Check that an argument is a valid format specification |
| check_length | Check if vectors are of compatible lengths |
| check_probabilities | Check if an argument is a probability vector |
| check_probability | Check if an argument is a single probability value |
| check_probability_range | Check if an argument is a probability range |
| check_range | Check that an argument is a numerical range |
| CohortSize | 'CohortSize' |
| CohortSize-class | 'CohortSize' |
| CohortSizeConst | 'CohortSizeConst' |
| CohortSizeConst-class | 'CohortSizeConst' |
| CohortSizeDLT | 'CohortSizeDLT' |
| CohortSizeDLT-class | 'CohortSizeDLT' |
| CohortSizeMax | 'CohortSizeMax' |
| CohortSizeMax-class | 'CohortSizeMax' |
| CohortSizeMin | 'CohortSizeMin' |
| CohortSizeMin-class | 'CohortSizeMin' |
| CohortSizeOrdinal | 'CohortSizeOrdinal' |
| CohortSizeOrdinal-class | 'CohortSizeOrdinal' |
| CohortSizeParts | 'CohortSizeParts' |
| CohortSizeParts-class | 'CohortSizeParts' |
| CohortSizeRange | 'CohortSizeRange' |
| CohortSizeRange-class | 'CohortSizeRange' |
| crmPack | Object-oriented implementation of CRM designs |
| CrmPackClass | 'CrmPackClass' |
| CrmPackClass-class | 'CrmPackClass' |
| crmPackExample | Open the Example PDF for crmPack |
| crmPackHelp | Open the Browser with Help Pages for crmPack |
| DADesign | 'DADesign' |
| DADesign-class | 'DADesign' |
| DALogisticLogNormal | 'DALogisticLogNormal' |
| DALogisticLogNormal-class | 'DALogisticLogNormal' |
| dapply | Apply a Function to Subsets of Data Frame. |
| DASimulations | 'DASimulations' |
| DASimulations-class | 'DASimulations' |
| Data | 'Data' |
| Data-class | 'Data' |
| DataDA | 'DataDA' |
| DataDA-class | 'DataDA' |
| DataDual | 'DataDual' |
| DataDual-class | 'DataDual' |
| DataGrouped | 'DataGrouped' |
| DataGrouped-class | 'DataGrouped' |
| DataMixture | 'DataMixture' |
| DataMixture-class | 'DataMixture' |
| DataOrdinal | 'DataOrdinal' |
| DataOrdinal-class | 'DataOrdinal' |
| DataParts | 'DataParts' |
| DataParts-class | 'DataParts' |
| Design | 'Design' |
| Design-class | 'Design' |
| DesignGrouped | 'DesignGrouped' |
| DesignGrouped-class | 'DesignGrouped' |
| DesignOrdinal | 'DesignOrdinal' |
| DesignOrdinal-class | 'DesignOrdinal' |
| disable_logging | Verbose Logging |
| dose | Computing the Doses for a given independent variable, Model and Samples |
| dose-DualEndpoint | Computing the Doses for a given independent variable, Model and Samples |
| dose-EffFlexi | Computing the Doses for a given independent variable, Model and Samples |
| dose-Effloglog-noSamples | Computing the Doses for a given independent variable, Model and Samples |
| dose-LogisticIndepBeta | Computing the Doses for a given independent variable, Model and Samples |
| dose-LogisticIndepBeta-noSamples | Computing the Doses for a given independent variable, Model and Samples |
| dose-LogisticKadane | Computing the Doses for a given independent variable, Model and Samples |
| dose-LogisticKadaneBetaGamma | Computing the Doses for a given independent variable, Model and Samples |
| dose-LogisticLogNormal | Computing the Doses for a given independent variable, Model and Samples |
| dose-LogisticLogNormalGrouped | Computing the Doses for a given independent variable, Model and Samples |
| dose-LogisticLogNormalMixture | Computing the Doses for a given independent variable, Model and Samples |
| dose-LogisticLogNormalOrdinal | Computing the Doses for a given independent variable, Model and Samples |
| dose-LogisticLogNormalSub | Computing the Doses for a given independent variable, Model and Samples |
| dose-LogisticNormal | Computing the Doses for a given independent variable, Model and Samples |
| dose-LogisticNormalFixedMixture | Computing the Doses for a given independent variable, Model and Samples |
| dose-LogisticNormalMixture | Computing the Doses for a given independent variable, Model and Samples |
| dose-method | Computing the Doses for a given independent variable, Model and Samples |
| dose-OneParExpPrior | Computing the Doses for a given independent variable, Model and Samples |
| dose-OneParLogNormalPrior | Computing the Doses for a given independent variable, Model and Samples |
| dose-ProbitLogNormal | Computing the Doses for a given independent variable, Model and Samples |
| dose-ProbitLogNormalRel | Computing the Doses for a given independent variable, Model and Samples |
| doseFunction | Getting the Dose Function for a Given Model Type |
| doseFunction-GeneralModel | Getting the Dose Function for a Given Model Type |
| doseFunction-LogisticLogNormalOrdinal | Getting the Dose Function for a Given Model Type |
| doseFunction-method | Getting the Dose Function for a Given Model Type |
| doseFunction-ModelPseudo | Getting the Dose Function for a Given Model Type |
| dose_grid_range | Getting the Dose Grid Range |
| dose_grid_range-Data | Getting the Dose Grid Range |
| dose_grid_range-method | Getting the Dose Grid Range |
| DualDesign | 'DualDesign' |
| DualDesign-class | 'DualDesign' |
| DualEndpoint | 'DualEndpoint' |
| DualEndpoint-class | 'DualEndpoint' |
| DualEndpointBeta | 'DualEndpointBeta' |
| DualEndpointBeta-class | 'DualEndpointBeta' |
| DualEndpointEmax | 'DualEndpointEmax' |
| DualEndpointEmax-class | 'DualEndpointEmax' |
| DualEndpointRW | 'DualEndpointRW' |
| DualEndpointRW-class | 'DualEndpointRW' |
| DualResponsesDesign | 'DualResponsesDesign.R' |
| DualResponsesDesign-class | 'DualResponsesDesign.R' |
| DualResponsesSamplesDesign | 'DualResponsesSamplesDesign' |
| DualResponsesSamplesDesign-class | 'DualResponsesSamplesDesign' |
| DualSimulations | 'DualSimulations' |
| DualSimulations-class | 'DualSimulations' |
| DualSimulationsSummary | 'DualSimulationsSummary' |
| DualSimulationsSummary-class | 'DualSimulationsSummary' |
| EffFlexi | 'EffFlexi' |
| EffFlexi-class | 'EffFlexi' |
| efficacy | Computing Expected Efficacy for a Given Dose, Model and Samples |
| efficacy-EffFlexi | Computing Expected Efficacy for a Given Dose, Model and Samples |
| efficacy-Effloglog | Computing Expected Efficacy for a Given Dose, Model and Samples |
| efficacy-Effloglog-noSamples | Computing Expected Efficacy for a Given Dose, Model and Samples |
| efficacy-method | Computing Expected Efficacy for a Given Dose, Model and Samples |
| efficacyFunction | Getting the Efficacy Function for a Given Model Type |
| efficacyFunction-method | Getting the Efficacy Function for a Given Model Type |
| efficacyFunction-ModelEff | Getting the Efficacy Function for a Given Model Type |
| Effloglog | 'Effloglog' |
| Effloglog-class | 'Effloglog' |
| enable_logging | Verbose Logging |
| examine | Obtain Hypothetical Trial Course Table for a Design |
| examine-method | Obtain Hypothetical Trial Course Table for a Design |
| expect_format | Check that an argument is a valid format specification |
| expect_probabilities | Check if an argument is a probability vector |
| expect_probability | Check if an argument is a single probability value |
| expect_probability_range | Check if an argument is a probability range |
| expect_range | Check that an argument is a numerical range |
| fit | Fit method for the Samples class |
| fit-method | Fit method for the Samples class |
| fitGain | Get the fitted values for the gain values at all dose levels based on a given pseudo DLE model, DLE sample, a pseudo efficacy model, a Efficacy sample and data. This method returns a data frame with dose, middle, lower and upper quantiles of the gain value samples |
| fitGain-method | Get the fitted values for the gain values at all dose levels based on a given pseudo DLE model, DLE sample, a pseudo efficacy model, a Efficacy sample and data. This method returns a data frame with dose, middle, lower and upper quantiles of the gain value samples |
| fitPEM | Get the fitted DLT free survival (piecewise exponential model). This function returns a data frame with dose, middle, lower and upper quantiles for the 'PEM' curve. If hazard=TRUE, |
| fitPEM-method | Get the fitted DLT free survival (piecewise exponential model). This function returns a data frame with dose, middle, lower and upper quantiles for the 'PEM' curve. If hazard=TRUE, |
| FractionalCRM | 'FractionalCRM' |
| FractionalCRM-class | 'FractionalCRM' |
| gain | Compute Gain Values based on Pseudo DLE and a Pseudo Efficacy Models and Using Optional Samples. |
| gain-method | Compute Gain Values based on Pseudo DLE and a Pseudo Efficacy Models and Using Optional Samples. |
| gain-ModelTox-Effloglog-noSamples | Compute Gain Values based on Pseudo DLE and a Pseudo Efficacy Models and Using Optional Samples. |
| gain-ModelTox-ModelEff | Compute Gain Values based on Pseudo DLE and a Pseudo Efficacy Models and Using Optional Samples. |
| GeneralData | 'GeneralData' |
| GeneralData-class | 'GeneralData' |
| GeneralModel | 'GeneralModel' |
| GeneralModel-class | 'GeneralModel' |
| GeneralSimulations | 'GeneralSimulations' |
| GeneralSimulations-class | 'GeneralSimulations' |
| GeneralSimulationsSummary | 'GeneralSimulationsSummary' |
| GeneralSimulationsSummary-class | 'GeneralSimulationsSummary' |
| get-method | Get specific parameter samples and produce a data.frame |
| getEff | Extracting Efficacy Responses for Subjects Categorized by the DLT |
| getEff-DataDual | Extracting Efficacy Responses for Subjects Categorized by the DLT |
| getEff-method | Extracting Efficacy Responses for Subjects Categorized by the DLT |
| h_all_equivalent | Comparison with Numerical Tolerance and Without Name Comparison |
| h_blind_plot_data | Helper Function to Blind Plot Data |
| h_calc_report_label_percentage | Helper function to calculate percentage of true stopping rules for report label output calculates true column means and converts output into percentages before combining the output with the report label; output is passed to 'show()' and output with cat to console |
| h_check_fun_formals | Checking Formals of a Function |
| h_convert_ordinal_data | Convert a Ordinal Data to the Equivalent Binary Data for a Specific Grade |
| h_convert_ordinal_model | Convert an ordinal CRM model to the Equivalent Binary CRM Model for a Specific Grade |
| h_convert_ordinal_samples | Convert a Samples Object from an ordinal Model to the Equivalent Samples Object from a Binary Model |
| h_default_if_empty | Getting the default value for an empty object |
| h_doses_unique_per_cohort | Internal Helper Functions for Validation of 'GeneralData' Objects |
| h_find_interval | Find Interval Numbers or Indices and Return Custom Number For 0. |
| h_format_number | Conditional Formatting Using C-style Formats |
| h_info_theory_dist | Calculating the Information Theoretic Distance |
| h_in_range | Check which elements are in a given range |
| h_is_positive_definite | Testing Matrix for Positive Definiteness |
| h_jags_add_dummy | Appending a Dummy Number for Selected Slots in Data |
| h_jags_extract_samples | Extracting Samples from 'JAGS' 'mcarray' Object |
| h_jags_get_data | Getting Data for 'JAGS' |
| h_jags_get_model_inits | Setting Initial Values for 'JAGS' Model Parameters |
| h_jags_join_models | Joining 'JAGS' Models |
| h_jags_write_model | Writing JAGS Model to a File |
| h_model_dual_endpoint_beta | Update certain components of 'DualEndpoint' model with regard to parameters of the function that models dose-biomarker relationship defined in the 'DualEndpointBeta' class. |
| h_model_dual_endpoint_rho | Update 'DualEndpoint' class model components with regard to DLT and biomarker correlation. |
| h_model_dual_endpoint_sigma2betaw | Update certain components of 'DualEndpoint' model with regard to prior variance factor of the random walk. |
| h_model_dual_endpoint_sigma2w | Update 'DualEndpoint' class model components with regard to biomarker regression variance. |
| h_next_best_eligible_doses | Get Eligible Doses from the Dose Grid. |
| h_next_best_mgsamples_plot | Building the Plot for 'nextBest-NextBestMaxGainSamples' Method. |
| h_next_best_mg_ci | Credibility Intervals for Max Gain and Target Doses at 'nextBest-NextBestMaxGain' Method. |
| h_next_best_mg_doses_at_grid | Get Closest Grid Doses for a Given Target Doses for 'nextBest-NextBestMaxGain' Method. |
| h_next_best_mg_plot | Building the Plot for 'nextBest-NextBestMaxGain' Method. |
| h_next_best_ncrm_loss_plot | Building the Plot for 'nextBest-NextBestNCRMLoss' Method. |
| h_next_best_tdsamples_plot | Building the Plot for 'nextBest-NextBestTDsamples' Method. |
| h_next_best_td_plot | Building the Plot for 'nextBest-NextBestTD' Method. |
| h_null_if_na | Getting 'NULL' for 'NA' |
| h_obtain_dose_grid_range | Helper Function Containing Common Functionality |
| h_plot_data_cohort_lines | Preparing Cohort Lines for Data Plot |
| h_plot_data_dataordinal | Helper Function for the Plot Method of the Data and DataOrdinal Classes |
| h_plot_data_df | Preparing Data for Plotting |
| h_plot_data_df-method | Preparing Data for Plotting |
| h_rapply | Recursively Apply a Function to a List |
| h_slots | Getting the Slots from a S4 Object |
| h_summarize_add_stats | Helper function to calculate average across iterations for each additional reporting parameter extracts parameter names as specified by user and averaged the values for each specified parameter to 'show()' and output with cat to console |
| h_test_named_numeric | Check that an argument is a named vector of type numeric |
| h_unpack_stopit | Helper function to recursively unpack stopping rules and return lists with logical value and label given |
| h_validate_combine_results | Combining S4 Class Validation Results |
| h_validate_common_data_slots | Helper Function performing validation Common to Data and DataOrdinal |
| Increments | 'Increments' |
| Increments-class | 'Increments' |
| IncrementsDoseLevels | 'IncrementsDoseLevels' |
| IncrementsDoseLevels-class | 'IncrementsDoseLevels' |
| IncrementsHSRBeta | 'IncrementsHSRBeta' |
| IncrementsHSRBeta-class | 'IncrementsHSRBeta' |
| IncrementsMaxToxProb | 'IncrementsMaxToxProb' |
| IncrementsMaxToxProb-class | 'IncrementsMaxToxProb' |
| IncrementsMin | 'IncrementsMin' |
| IncrementsMin-class | 'IncrementsMin' |
| IncrementsOrdinal | 'IncrementsOrdinal' |
| IncrementsOrdinal-class | 'IncrementsOrdinal' |
| IncrementsRelative | 'IncrementsRelative' |
| IncrementsRelative-class | 'IncrementsRelative' |
| IncrementsRelativeDLT | 'IncrementsRelativeDLT' |
| IncrementsRelativeDLT-class | 'IncrementsRelativeDLT' |
| IncrementsRelativeDLTCurrent | 'IncrementsRelativeDLTCurrent' |
| IncrementsRelativeDLTCurrent-class | 'IncrementsRelativeDLTCurrent' |
| IncrementsRelativeParts | 'IncrementsRelativeParts' |
| IncrementsRelativeParts-class | 'IncrementsRelativeParts' |
| is_logging_enabled | Verbose Logging |
| knit_print | Render a 'CohortSizeConst' Object |
| knit_print.CohortSizeConst | Render a 'CohortSizeConst' Object |
| knit_print.CohortSizeDLT | Render a 'CohortSizeConst' Object |
| knit_print.CohortSizeMax | Render a 'CohortSizeConst' Object |
| knit_print.CohortSizeMin | Render a 'CohortSizeConst' Object |
| knit_print.CohortSizeOrdinal | Render a 'CohortSizeConst' Object |
| knit_print.CohortSizeParts | Render a 'CohortSizeConst' Object |
| knit_print.CohortSizeRange | Render a 'CohortSizeConst' Object |
| knit_print.DADesign | Render a 'CohortSizeConst' Object |
| knit_print.DataParts | Render a 'CohortSizeConst' Object |
| knit_print.Design | Render a 'CohortSizeConst' Object |
| knit_print.DesignGrouped | Render a 'CohortSizeConst' Object |
| knit_print.DesignOrdinal | Render a 'CohortSizeConst' Object |
| knit_print.DualDesign | Render a 'CohortSizeConst' Object |
| knit_print.DualEndpoint | Render a 'CohortSizeConst' Object |
| knit_print.DualResponsesDesign | Render a 'CohortSizeConst' Object |
| knit_print.DualResponsesSamplesDesign | Render a 'CohortSizeConst' Object |
| knit_print.Effloglog | Render a 'CohortSizeConst' Object |
| knit_print.GeneralData | Render a 'CohortSizeConst' Object |
| knit_print.GeneralModel | Render a 'CohortSizeConst' Object |
| knit_print.IncrementsDoseLevels | Render a 'CohortSizeConst' Object |
| knit_print.IncrementsHSRBeta | Render a 'CohortSizeConst' Object |
| knit_print.IncrementsMin | Render a 'CohortSizeConst' Object |
| knit_print.IncrementsOrdinal | Render a 'CohortSizeConst' Object |
| knit_print.IncrementsRelative | Render a 'CohortSizeConst' Object |
| knit_print.IncrementsRelativeDLT | Render a 'CohortSizeConst' Object |
| knit_print.IncrementsRelativeDLTCurrent | Render a 'CohortSizeConst' Object |
| knit_print.IncrementsRelativeParts | Render a 'CohortSizeConst' Object |
| knit_print.LogisticIndepBeta | Render a 'CohortSizeConst' Object |
| knit_print.LogisticKadane | Render a 'CohortSizeConst' Object |
| knit_print.LogisticKadaneBetaGamma | Render a 'CohortSizeConst' Object |
| knit_print.LogisticLogNormal | Render a 'CohortSizeConst' Object |
| knit_print.LogisticLogNormalGrouped | Render a 'CohortSizeConst' Object |
| knit_print.LogisticLogNormalMixture | Render a 'CohortSizeConst' Object |
| knit_print.LogisticLogNormalOrdinal | Render a 'CohortSizeConst' Object |
| knit_print.LogisticLogNormalSub | Render a 'CohortSizeConst' Object |
| knit_print.LogisticNormalFixedMixture | Render a 'CohortSizeConst' Object |
| knit_print.LogisticNormalMixture | Render a 'CohortSizeConst' Object |
| knit_print.ModelParamsNormal | Render a 'CohortSizeConst' Object |
| knit_print.NextBestDualEndpoint | Render a 'CohortSizeConst' Object |
| knit_print.NextBestInfTheory | Render a 'CohortSizeConst' Object |
| knit_print.NextBestMaxGain | Render a 'CohortSizeConst' Object |
| knit_print.NextBestMaxGainSamples | Render a 'CohortSizeConst' Object |
| knit_print.NextBestMinDist | Render a 'CohortSizeConst' Object |
| knit_print.NextBestMTD | Render a 'CohortSizeConst' Object |
| knit_print.NextBestNCRM | Render a 'CohortSizeConst' Object |
| knit_print.NextBestNCRMLoss | Render a 'CohortSizeConst' Object |
| knit_print.NextBestOrdinal | Render a 'CohortSizeConst' Object |
| knit_print.NextBestProbMTDLTE | Render a 'CohortSizeConst' Object |
| knit_print.NextBestProbMTDMinDist | Render a 'CohortSizeConst' Object |
| knit_print.NextBestTD | Render a 'CohortSizeConst' Object |
| knit_print.NextBestTDsamples | Render a 'CohortSizeConst' Object |
| knit_print.NextBestThreePlusThree | Render a 'CohortSizeConst' Object |
| knit_print.OneParExpPrior | Render a 'CohortSizeConst' Object |
| knit_print.OneParLogNormalPrior | Render a 'CohortSizeConst' Object |
| knit_print.RuleDesign | Render a 'CohortSizeConst' Object |
| knit_print.RuleDesignOrdinal | Render a 'CohortSizeConst' Object |
| knit_print.SafetyWindow | Render a 'CohortSizeConst' Object |
| knit_print.SafetyWindowConst | Render a 'CohortSizeConst' Object |
| knit_print.SafetyWindowSize | Render a 'CohortSizeConst' Object |
| knit_print.StartingDose | Render a 'CohortSizeConst' Object |
| knit_print.StoppingAll | Render a 'CohortSizeConst' Object |
| knit_print.StoppingAny | Render a 'CohortSizeConst' Object |
| knit_print.StoppingCohortsNearDose | Render a 'CohortSizeConst' Object |
| knit_print.StoppingHighestDose | Render a 'CohortSizeConst' Object |
| knit_print.StoppingList | Render a 'CohortSizeConst' Object |
| knit_print.StoppingLowestDoseHSRBeta | Render a 'CohortSizeConst' Object |
| knit_print.StoppingMaxGainCIRatio | Render a 'CohortSizeConst' Object |
| knit_print.StoppingMinCohorts | Render a 'CohortSizeConst' Object |
| knit_print.StoppingMinPatients | Render a 'CohortSizeConst' Object |
| knit_print.StoppingMissingDose | Render a 'CohortSizeConst' Object |
| knit_print.StoppingMTDCV | Render a 'CohortSizeConst' Object |
| knit_print.StoppingMTDdistribution | Render a 'CohortSizeConst' Object |
| knit_print.StoppingOrdinal | Render a 'CohortSizeConst' Object |
| knit_print.StoppingPatientsNearDose | Render a 'CohortSizeConst' Object |
| knit_print.StoppingSpecificDose | Render a 'CohortSizeConst' Object |
| knit_print.StoppingTargetBiomarker | Render a 'CohortSizeConst' Object |
| knit_print.StoppingTargetProb | Render a 'CohortSizeConst' Object |
| knit_print.StoppingTDCIRatio | Render a 'CohortSizeConst' Object |
| knit_print.TDDesign | Render a 'CohortSizeConst' Object |
| knit_print.TDsamplesDesign | Render a 'CohortSizeConst' Object |
| LogisticIndepBeta | 'LogisticIndepBeta' |
| LogisticIndepBeta-class | 'LogisticIndepBeta' |
| LogisticKadane | 'LogisticKadane' |
| LogisticKadane-class | 'LogisticKadane' |
| LogisticKadaneBetaGamma | 'LogisticKadaneBetaGamma' |
| LogisticKadaneBetaGamma-class | 'LogisticKadaneBetaGamma' |
| LogisticLogNormal | 'LogisticLogNormal' |
| LogisticLogNormal-class | 'LogisticLogNormal' |
| LogisticLogNormalGrouped | 'LogisticLogNormalGrouped' |
| LogisticLogNormalGrouped-class | 'LogisticLogNormalGrouped' |
| LogisticLogNormalMixture | 'LogisticLogNormalMixture' |
| LogisticLogNormalMixture-class | 'LogisticLogNormalMixture' |
| LogisticLogNormalOrdinal | 'LogisticLogNormalOrdinal' |
| LogisticLogNormalOrdinal-class | 'LogisticLogNormalOrdinal' |
| LogisticLogNormalSub | 'LogisticLogNormalSub' |
| LogisticLogNormalSub-class | 'LogisticLogNormalSub' |
| LogisticNormal | 'LogisticNormal' |
| LogisticNormal-class | 'LogisticNormal' |
| LogisticNormalFixedMixture | 'LogisticNormalFixedMixture' |
| LogisticNormalFixedMixture-class | 'LogisticNormalFixedMixture' |
| LogisticNormalMixture | 'LogisticNormalMixture' |
| LogisticNormalMixture-class | 'LogisticNormalMixture' |
| logit | Shorthand for Logit Function |
| log_trace | Verbose Logging |
| match_within_tolerance | Helper Function for Value Matching with Tolerance |
| maxDose | Determine the Maximum Possible Next Dose |
| maxDose-IncrementsDoseLevels | Determine the Maximum Possible Next Dose |
| maxDose-IncrementsHSRBeta | Determine the Maximum Possible Next Dose |
| maxDose-IncrementsMaxToxProb | Determine the Maximum Possible Next Dose |
| maxDose-IncrementsMin | Determine the Maximum Possible Next Dose |
| maxDose-IncrementsOrdinal | Determine the Maximum Possible Next Dose |
| maxDose-IncrementsRelative | Determine the Maximum Possible Next Dose |
| maxDose-IncrementsRelativeDLT | Determine the Maximum Possible Next Dose |
| maxDose-IncrementsRelativeDLTCurrent | Determine the Maximum Possible Next Dose |
| maxDose-IncrementsRelativeParts | Determine the Maximum Possible Next Dose |
| maxDose-method | Determine the Maximum Possible Next Dose |
| maxSize | "MAX" Combination of Cohort Size Rules |
| maxSize-CohortSize | "MAX" Combination of Cohort Size Rules |
| maxSize-method | "MAX" Combination of Cohort Size Rules |
| mcmc | Obtaining Posterior Samples for all Model Parameters |
| mcmc-Data-LogisticIndepBeta | Obtaining Posterior Samples for all Model Parameters |
| mcmc-DataDual-EffFlexi | Obtaining Posterior Samples for all Model Parameters |
| mcmc-DataDual-Effloglog | Obtaining Posterior Samples for all Model Parameters |
| mcmc-DataMixture | Obtaining Posterior Samples for all Model Parameters |
| mcmc-DataOrdinal-LogisticLogNormalOrdinal | Obtaining Posterior Samples for all Model Parameters |
| mcmc-GeneralData | Obtaining Posterior Samples for all Model Parameters |
| mcmc-GeneralData-DualEndpointBeta | Obtaining Posterior Samples for all Model Parameters |
| mcmc-GeneralData-DualEndpointEmax | Obtaining Posterior Samples for all Model Parameters |
| mcmc-GeneralData-DualEndpointRW | Obtaining Posterior Samples for all Model Parameters |
| mcmc-GeneralData-OneParExpPrior | Obtaining Posterior Samples for all Model Parameters |
| mcmc-GeneralData-OneParLogNormalPrior | Obtaining Posterior Samples for all Model Parameters |
| mcmc-method | Obtaining Posterior Samples for all Model Parameters |
| McmcOptions | 'McmcOptions' |
| McmcOptions-class | 'McmcOptions' |
| MinimalInformative | Construct a Minimally Informative Prior |
| minSize | "MIN" Combination of Cohort Size Rules |
| minSize-CohortSize | "MIN" Combination of Cohort Size Rules |
| minSize-method | "MIN" Combination of Cohort Size Rules |
| ModelEff | 'ModelEff' |
| ModelEff-class | 'ModelEff' |
| ModelLogNormal | 'ModelLogNormal' |
| ModelLogNormal-class | 'ModelLogNormal' |
| ModelParamsNormal | 'ModelParamsNormal' |
| ModelParamsNormal-class | 'ModelParamsNormal' |
| ModelPseudo | 'ModelPseudo' |
| ModelPseudo-class | 'ModelPseudo' |
| ModelTox | 'ModelTox' |
| ModelTox-class | 'ModelTox' |
| names-method | The Names of the Sampled Parameters |
| names-Samples | The Names of the Sampled Parameters |
| NextBest | 'NextBest' |
| nextBest | Finding the Next Best Dose |
| NextBest-class | 'NextBest' |
| nextBest-method | Finding the Next Best Dose |
| nextBest-NextBestDualEndpoint | Finding the Next Best Dose |
| nextBest-NextBestEWOC | Finding the Next Best Dose |
| nextBest-NextBestInfTheory | Finding the Next Best Dose |
| nextBest-NextBestMaxGain | Finding the Next Best Dose |
| nextBest-NextBestMaxGainSamples | Finding the Next Best Dose |
| nextBest-NextBestMinDist | Finding the Next Best Dose |
| nextBest-NextBestMTD | Finding the Next Best Dose |
| nextBest-NextBestNCRM | Finding the Next Best Dose |
| nextBest-NextBestNCRM-DataParts | Finding the Next Best Dose |
| nextBest-NextBestNCRMLoss | Finding the Next Best Dose |
| nextBest-NextBestOrdinal | Finding the Next Best Dose |
| nextBest-NextBestProbMTDLTE | Finding the Next Best Dose |
| nextBest-NextBestProbMTDMinDist | Finding the Next Best Dose |
| nextBest-NextBestTD | Finding the Next Best Dose |
| nextBest-NextBestTDsamples | Finding the Next Best Dose |
| nextBest-NextBestThreePlusThree | Finding the Next Best Dose |
| NextBestDualEndpoint | 'NextBestDualEndpoint' |
| NextBestDualEndpoint-class | 'NextBestDualEndpoint' |
| NextBestEWOC | 'NextBestEWOC' |
| NextBestEWOC-class | 'NextBestEWOC' |
| NextBestInfTheory | 'NextBestInfTheory' |
| NextBestInfTheory-class | 'NextBestInfTheory' |
| NextBestMaxGain | 'NextBestMaxGain' |
| NextBestMaxGain-class | 'NextBestMaxGain' |
| NextBestMaxGainSamples | 'NextBestMaxGainSamples' |
| NextBestMaxGainSamples-class | 'NextBestMaxGainSamples' |
| NextBestMinDist | 'NextBestMinDist' |
| NextBestMinDist-class | 'NextBestMinDist' |
| NextBestMTD | 'NextBestMTD' |
| NextBestMTD-class | 'NextBestMTD' |
| NextBestNCRM | 'NextBestNCRM' |
| NextBestNCRM-class | 'NextBestNCRM' |
| NextBestNCRMLoss | 'NextBestNCRMLoss' |
| NextBestNCRMLoss-class | 'NextBestNCRMLoss' |
| NextBestOrdinal | 'NextBestOrdinal' |
| NextBestOrdinal-class | 'NextBestOrdinal' |
| NextBestProbMTDLTE | 'NextBestProbMTDLTE' |
| NextBestProbMTDLTE-class | 'NextBestProbMTDLTE' |
| NextBestProbMTDMinDist | 'NextBestProbMTDMinDist' |
| NextBestProbMTDMinDist-class | 'NextBestProbMTDMinDist' |
| NextBestTD | 'NextBestTD' |
| NextBestTD-class | 'NextBestTD' |
| NextBestTDsamples | 'NextBestTDsamples' |
| NextBestTDsamples-class | 'NextBestTDsamples' |
| NextBestThreePlusThree | 'NextBestThreePlusThree' |
| NextBestThreePlusThree-class | 'NextBestThreePlusThree' |
| ngrid | Number of Doses in Grid |
| ngrid-Data | Number of Doses in Grid |
| ngrid-method | Number of Doses in Grid |
| OneParExpPrior | 'OneParExpPrior' |
| OneParExpPrior-class | 'OneParExpPrior' |
| OneParLogNormalPrior | 'OneParLogNormalPrior' |
| OneParLogNormalPrior-class | 'OneParLogNormalPrior' |
| or-Stopping-Stopping | Combine Two Stopping Rules with OR |
| or-Stopping-StoppingAny | Combine an Atomic Stopping Rule and a Stopping List with OR |
| or-StoppingAny-Stopping | Combine a Stopping List and an Atomic Stopping Rule with OR |
| plot-Data | Helper Function for the Plot Method of the Data and DataOrdinal Classes |
| plot-DataDA | Plot Method for the 'DataDA' Class |
| plot-DataDual | Plot Method for the 'DataDual' Class |
| plot-DualSimulations-missing | Plot 'DualSimulations' |
| plot-DualSimulationsSummary-missing | Plot Dual-Endpoint Design Simulation Summary |
| plot-GeneralSimulations-missing | Plot 'GeneralSimulations' |
| plot-GeneralSimulationsSummary-missing | Plot 'GeneralSimulationsSummary' |
| plot-method | Plot of the fitted dose-tox based with a given pseudo DLE model and data without samples |
| plot-method | Helper Function for the Plot Method of the Data and DataOrdinal Classes |
| plot-method | Plot Method for the 'DataDA' Class |
| plot-method | Plot of the fitted dose-efficacy based with a given pseudo efficacy model and data without samples |
| plot-method | Plot Method for the 'DataDual' Class |
| plot-method | Plot 'DualSimulations' |
| plot-method | Plot Dual-Endpoint Design Simulation Summary |
| plot-method | Plot 'GeneralSimulations' |
| plot-method | Plot 'GeneralSimulationsSummary' |
| plot-method | Plot 'PseudoDualFlexiSimulations' |
| plot-method | Plot 'PseudoDualSimulations' |
| plot-method | Plot 'PseudoDualSimulationsSummary' |
| plot-method | Plot 'PseudoSimulationsSummary' |
| plot-method | Plotting dose-toxicity model fits |
| plot-method | Plotting dose-toxicity and dose-biomarker model fits |
| plot-method | Plotting dose-toxicity model fits |
| plot-method | Plot the fitted dose-efficacy curve using a model from 'ModelEff' class with samples |
| plot-method | Plot the fitted dose-DLE curve using a 'ModelTox' class model with samples |
| plot-method | Plot Model-Based Design Simulation Summary |
| plot-PseudoDualFlexiSimulations-missing | Plot 'PseudoDualFlexiSimulations' |
| plot-PseudoDualSimulations-missing | Plot 'PseudoDualSimulations' |
| plot-PseudoDualSimulationsSummary-missing | Plot 'PseudoDualSimulationsSummary' |
| plot-PseudoSimulationsSummary-missing | Plot 'PseudoSimulationsSummary' |
| plot-SimulationsSummary-missing | Plot Model-Based Design Simulation Summary |
| plot.gtable | Plot 'gtable' Objects |
| plotDualResponses | Plot of the DLE and efficacy curve side by side given a DLE pseudo model, a DLE sample, an efficacy pseudo model and a given efficacy sample |
| plotDualResponses-method | Plot of the DLE and efficacy curve side by side given a DLE pseudo model, a DLE sample, an efficacy pseudo model and a given efficacy sample |
| plotGain | Plot the gain curve in addition with the dose-DLE and dose-efficacy curve using a given DLE pseudo model, a DLE sample, a given efficacy pseudo model and an efficacy sample |
| plotGain-method | Plot the gain curve in addition with the dose-DLE and dose-efficacy curve using a given DLE pseudo model, a DLE sample, a given efficacy pseudo model and an efficacy sample |
| positive_number | 'positive_number' |
| print.gtable | Plot 'gtable' Objects |
| prob | Computing Toxicity Probabilities for a Given Dose, Model and Samples |
| prob-DualEndpoint | Computing Toxicity Probabilities for a Given Dose, Model and Samples |
| prob-LogisticIndepBeta | Computing Toxicity Probabilities for a Given Dose, Model and Samples |
| prob-LogisticIndepBeta-noSamples | Computing Toxicity Probabilities for a Given Dose, Model and Samples |
| prob-LogisticKadane | Computing Toxicity Probabilities for a Given Dose, Model and Samples |
| prob-LogisticKadaneBetaGamma | Computing Toxicity Probabilities for a Given Dose, Model and Samples |
| prob-LogisticLogNormal | Computing Toxicity Probabilities for a Given Dose, Model and Samples |
| prob-LogisticLogNormalGrouped | Computing Toxicity Probabilities for a Given Dose, Model and Samples |
| prob-LogisticLogNormalMixture | Computing Toxicity Probabilities for a Given Dose, Model and Samples |
| prob-LogisticLogNormalOrdinal | Computing Toxicity Probabilities for a Given Dose, Model and Samples |
| prob-LogisticLogNormalSub | Computing Toxicity Probabilities for a Given Dose, Model and Samples |
| prob-LogisticNormal | Computing Toxicity Probabilities for a Given Dose, Model and Samples |
| prob-LogisticNormalFixedMixture | Computing Toxicity Probabilities for a Given Dose, Model and Samples |
| prob-LogisticNormalMixture | Computing Toxicity Probabilities for a Given Dose, Model and Samples |
| prob-method | Computing Toxicity Probabilities for a Given Dose, Model and Samples |
| prob-OneParExpPrior | Computing Toxicity Probabilities for a Given Dose, Model and Samples |
| prob-OneParLogNormalPrior | Computing Toxicity Probabilities for a Given Dose, Model and Samples |
| prob-ProbitLogNormal | Computing Toxicity Probabilities for a Given Dose, Model and Samples |
| prob-ProbitLogNormalRel | Computing Toxicity Probabilities for a Given Dose, Model and Samples |
| probFunction | Getting the Prob Function for a Given Model Type |
| probFunction-GeneralModel | Getting the Prob Function for a Given Model Type |
| probFunction-LogisticLogNormalOrdinal | Getting the Prob Function for a Given Model Type |
| probFunction-method | Getting the Prob Function for a Given Model Type |
| probFunction-ModelTox | Getting the Prob Function for a Given Model Type |
| probit | Shorthand for Probit Function |
| ProbitLogNormal | 'ProbitLogNormal' |
| ProbitLogNormal-class | 'ProbitLogNormal' |
| ProbitLogNormalLogDose | 'ProbitLogNormal' |
| ProbitLogNormalRel | 'ProbitLogNormalRel' |
| ProbitLogNormalRel-class | 'ProbitLogNormalRel' |
| PseudoDualFlexiSimulations | 'PseudoDualFlexiSimulations' |
| PseudoDualFlexiSimulations-class | 'PseudoDualFlexiSimulations' |
| PseudoDualSimulations | 'PseudoDualSimulations' |
| PseudoDualSimulations-class | 'PseudoDualSimulations' |
| PseudoDualSimulationsSummary | 'PseudoDualSimulationsSummary' |
| PseudoDualSimulationsSummary-class | 'PseudoDualSimulationsSummary' |
| PseudoSimulations | 'PseudoSimulations' |
| PseudoSimulations-class | 'PseudoSimulations' |
| PseudoSimulationsSummary | 'PseudoSimulationsSummary' |
| PseudoSimulationsSummary-class | 'PseudoSimulationsSummary' |
| Quantiles2LogisticNormal | Convert Prior Quantiles to Logistic (Log) Normal Model |
| RuleDesign | 'RuleDesign' |
| RuleDesign-class | 'RuleDesign' |
| RuleDesignOrdinal | 'RuleDesignOrdinal' |
| RuleDesignOrdinal-class | 'RuleDesignOrdinal' |
| SafetyWindow | 'SafetyWindow' |
| SafetyWindow-class | 'SafetyWindow' |
| SafetyWindowConst | 'SafetyWindowConst' |
| SafetyWindowConst-class | 'SafetyWindowConst' |
| SafetyWindowSize | 'SafetyWindowSize' |
| SafetyWindowSize-class | 'SafetyWindowSize' |
| Samples | 'Samples' |
| Samples-class | 'Samples' |
| saveSample | Determining if this Sample Should be Saved |
| saveSample-McmcOptions | Determining if this Sample Should be Saved |
| saveSample-method | Determining if this Sample Should be Saved |
| set_seed | Helper Function to Set and Save the RNG Seed |
| show-DualSimulationsSummary | Show the Summary of Dual-Endpoint Simulations |
| show-GeneralSimulationsSummary | Show the Summary of the Simulations |
| show-method | Show the Summary of Dual-Endpoint Simulations |
| show-method | Show the Summary of the Simulations |
| show-method | Show the Summary of 'PseudoDualSimulations' |
| show-method | Show the Summary of 'PseudoSimulations' |
| show-method | Show the Summary of Model-Based Design Simulations |
| show-PseudoDualSimulationsSummary | Show the Summary of 'PseudoDualSimulations' |
| show-PseudoSimulationsSummary | Show the Summary of 'PseudoSimulations' |
| show-SimulationsSummary | Show the Summary of Model-Based Design Simulations |
| simulate-DesignGrouped | Simulate Method for the 'DesignGrouped' Class |
| simulate-method | Simulate outcomes from a time-to-DLT augmented CRM design |
| simulate-method | Simulate outcomes from a CRM design |
| simulate-method | Simulate Method for the 'DesignGrouped' Class |
| simulate-method | Simulate outcomes from a dual-endpoint design |
| simulate-method | Simulate dose escalation procedure using both DLE and efficacy responses without samples |
| simulate-method | Simulate dose escalation procedure using DLE and efficacy responses with samples |
| simulate-method | Simulate outcomes from a rule-based design |
| simulate-method | Simulate dose escalation procedure using DLE responses only without samples |
| simulate-method | Simulate dose escalation procedure using DLE responses only with DLE samples |
| Simulations | 'Simulations' |
| Simulations-class | 'Simulations' |
| SimulationsSummary | 'SimulationsSummary' |
| SimulationsSummary-class | 'SimulationsSummary' |
| size | Size of an Object |
| size-CohortSizeConst | Size of an Object |
| size-CohortSizeDLT | Size of an Object |
| size-CohortSizeMax | Size of an Object |
| size-CohortSizeMin | Size of an Object |
| size-CohortSizeOrdinal | Size of an Object |
| size-CohortSizeParts | Size of an Object |
| size-CohortSizeRange | Size of an Object |
| size-McmcOptions | Size of an Object |
| size-method | Size of an Object |
| size-Samples | Size of an Object |
| Stopping | 'Stopping' |
| Stopping-class | 'Stopping' |
| StoppingAll | 'StoppingAll' |
| StoppingAll-class | 'StoppingAll' |
| StoppingAny | 'StoppingAny' |
| StoppingAny-class | 'StoppingAny' |
| StoppingCohortsNearDose | 'StoppingCohortsNearDose' |
| StoppingCohortsNearDose-class | 'StoppingCohortsNearDose' |
| StoppingExternal | 'StoppingExternal' |
| StoppingExternal-class | 'StoppingExternal' |
| StoppingHighestDose | 'StoppingHighestDose' |
| StoppingHighestDose-class | 'StoppingHighestDose' |
| StoppingList | 'StoppingList' |
| StoppingList-class | 'StoppingList' |
| StoppingLowestDoseHSRBeta | 'StoppingLowestDoseHSRBeta' |
| StoppingLowestDoseHSRBeta-class | 'StoppingLowestDoseHSRBeta' |
| StoppingMaxGainCIRatio | 'StoppingMaxGainCIRatio' |
| StoppingMaxGainCIRatio-class | 'StoppingMaxGainCIRatio' |
| StoppingMinCohorts | 'StoppingMinCohorts' |
| StoppingMinCohorts-class | 'StoppingMinCohorts' |
| StoppingMinPatients | 'StoppingMinPatients' |
| StoppingMinPatients-class | 'StoppingMinPatients' |
| StoppingMissingDose | 'StoppingMissingDose' |
| StoppingMissingDose-class | 'StoppingMissingDose' |
| StoppingMTDCV | 'StoppingMTDCV' |
| StoppingMTDCV-class | 'StoppingMTDCV' |
| StoppingMTDdistribution | 'StoppingMTDdistribution' |
| StoppingMTDdistribution-class | 'StoppingMTDdistribution' |
| StoppingOrdinal | 'StoppingOrdinal' |
| StoppingOrdinal-class | 'StoppingOrdinal' |
| StoppingPatientsNearDose | 'StoppingPatientsNearDose' |
| StoppingPatientsNearDose-class | 'StoppingPatientsNearDose' |
| StoppingSpecificDose | 'StoppingSpecificDose' |
| StoppingSpecificDose-class | 'StoppingSpecificDose' |
| StoppingTargetBiomarker | 'StoppingTargetBiomarker' |
| StoppingTargetBiomarker-class | 'StoppingTargetBiomarker' |
| StoppingTargetProb | 'StoppingTargetProb' |
| StoppingTargetProb-class | 'StoppingTargetProb' |
| StoppingTDCIRatio | 'StoppingTDCIRatio' |
| StoppingTDCIRatio-class | 'StoppingTDCIRatio' |
| stopTrial | Stop the trial? |
| stopTrial-method | Stop the trial? |
| stopTrial-StoppingAll | Stop the trial? |
| stopTrial-StoppingAny | Stop the trial? |
| stopTrial-StoppingCohortsNearDose | Stop the trial? |
| stopTrial-StoppingExternal | Stop the trial? |
| stopTrial-StoppingHighestDose | Stop the trial? |
| stopTrial-StoppingList | Stop the trial? |
| stopTrial-StoppingLowestDoseHSRBeta | Stop the trial? |
| stopTrial-StoppingMaxGainCIRatio | Stop the trial? |
| stopTrial-StoppingMinCohorts | Stop the trial? |
| stopTrial-StoppingMinPatients | Stop the trial? |
| stopTrial-StoppingMissingDose | Stop the trial? |
| stopTrial-StoppingMTDCV | Stop the trial? |
| stopTrial-StoppingMTDdistribution | Stop the trial? |
| stopTrial-StoppingOrdinal | Stop the trial? |
| stopTrial-StoppingPatientsNearDose | Stop the trial? |
| stopTrial-StoppingSpecificDose | Stop the trial? |
| stopTrial-StoppingTargetBiomarker | Stop the trial? |
| stopTrial-StoppingTargetProb | Stop the trial? |
| stopTrial-StoppingTDCIRatio | Stop the trial? |
| summary-DualSimulations | Summarize Dual-Endpoint Design Simulations |
| summary-GeneralSimulations | Summarize the 'GeneralSimulations', Relative to a Given Truth |
| summary-method | Summarize Dual-Endpoint Design Simulations |
| summary-method | Summarize the 'GeneralSimulations', Relative to a Given Truth |
| summary-method | Summarize 'PseudoDualFlexiSimulations' |
| summary-method | Summarize 'PseudoDualSimulations' |
| summary-method | Summarize 'PseudoSimulations' |
| summary-method | Summarize Model-Based Design Simulations |
| summary-PseudoDualFlexiSimulations | Summarize 'PseudoDualFlexiSimulations' |
| summary-PseudoDualSimulations | Summarize 'PseudoDualSimulations' |
| summary-PseudoSimulations | Summarize 'PseudoSimulations' |
| summary-Simulations | Summarize Model-Based Design Simulations |
| TDDesign | 'TDDesign' |
| TDDesign-class | 'TDDesign' |
| TDsamplesDesign | 'TDsamplesDesign' |
| TDsamplesDesign-class | 'TDsamplesDesign' |
| test_format | Check that an argument is a valid format specification |
| test_length | Check if vectors are of compatible lengths |
| test_probabilities | Check if an argument is a probability vector |
| test_probability | Check if an argument is a single probability value |
| test_probability_range | Check if an argument is a probability range |
| test_range | Check that an argument is a numerical range |
| ThreePlusThreeDesign | 'RuleDesign' |
| tidy | Tidying 'CrmPackClass' objects |
| tidy-CohortSizeDLT | Tidying 'CrmPackClass' objects |
| tidy-CohortSizeMax | Tidying 'CrmPackClass' objects |
| tidy-CohortSizeMin | Tidying 'CrmPackClass' objects |
| tidy-CohortSizeParts | Tidying 'CrmPackClass' objects |
| tidy-CohortSizeRange | Tidying 'CrmPackClass' objects |
| tidy-CrmPackClass | Tidying 'CrmPackClass' objects |
| tidy-DataDA | Tidying 'CrmPackClass' objects |
| tidy-DataDual | Tidying 'CrmPackClass' objects |
| tidy-DataGrouped | Tidying 'CrmPackClass' objects |
| tidy-DataMixture | Tidying 'CrmPackClass' objects |
| tidy-DataOrdinal | Tidying 'CrmPackClass' objects |
| tidy-DataParts | Tidying 'CrmPackClass' objects |
| tidy-DualDesign | Tidying 'CrmPackClass' objects |
| tidy-Effloglog | Tidying 'CrmPackClass' objects |
| tidy-GeneralData | Tidying 'CrmPackClass' objects |
| tidy-IncrementsMaxToxProb | Tidying 'CrmPackClass' objects |
| tidy-IncrementsMin | Tidying 'CrmPackClass' objects |
| tidy-IncrementsRelative | Tidying 'CrmPackClass' objects |
| tidy-IncrementsRelativeDLT | Tidying 'CrmPackClass' objects |
| tidy-IncrementsRelativeParts | Tidying 'CrmPackClass' objects |
| tidy-LogisticIndepBeta | Tidying 'CrmPackClass' objects |
| tidy-method | Tidying 'CrmPackClass' objects |
| tidy-NextBestNCRM | Tidying 'CrmPackClass' objects |
| tidy-NextBestNCRMLoss | Tidying 'CrmPackClass' objects |
| tidy-Samples | Tidying 'CrmPackClass' objects |
| tidy-Simulations | Tidying 'CrmPackClass' objects |
| TITELogisticLogNormal | 'TITELogisticLogNormal' |
| TITELogisticLogNormal-class | 'TITELogisticLogNormal' |
| update-Data | Updating 'Data' Objects |
| update-DataDA | Updating 'DataDA' Objects |
| update-DataDual | Updating 'DataDual' Objects |
| update-DataOrdinal | Updating 'DataOrdinal' Objects |
| update-DataParts | Updating 'DataParts' Objects |
| update-method | Updating 'Data' Objects |
| update-method | Updating 'DataDA' Objects |
| update-method | Updating 'DataDual' Objects |
| update-method | Updating 'DataOrdinal' Objects |
| update-method | Updating 'DataParts' Objects |
| update-method | Update method for the 'ModelPseudo' model class. This is a method to update the model class slots (estimates, parameters, variables and etc.), when the new data (e.g. new observations of responses) are available. This method is mostly used to obtain new modal estimates for pseudo model parameters. |
| update-ModelPseudo | Update method for the 'ModelPseudo' model class. This is a method to update the model class slots (estimates, parameters, variables and etc.), when the new data (e.g. new observations of responses) are available. This method is mostly used to obtain new modal estimates for pseudo model parameters. |
| Validate | 'Validate' |
| v_cohort_size | Internal Helper Functions for Validation of 'CohortSize' Objects |
| v_cohort_size_const | Internal Helper Functions for Validation of 'CohortSize' Objects |
| v_cohort_size_dlt | Internal Helper Functions for Validation of 'CohortSize' Objects |
| v_cohort_size_max | Internal Helper Functions for Validation of 'CohortSize' Objects |
| v_cohort_size_ordinal | Internal Helper Functions for Validation of 'Increments' Objects |
| v_cohort_size_parts | Internal Helper Functions for Validation of 'CohortSize' Objects |
| v_cohort_size_range | Internal Helper Functions for Validation of 'CohortSize' Objects |
| v_data | Internal Helper Functions for Validation of 'GeneralData' Objects |
| v_data_da | Internal Helper Functions for Validation of 'GeneralData' Objects |
| v_data_dual | Internal Helper Functions for Validation of 'GeneralData' Objects |
| v_data_grouped | Internal Helper Functions for Validation of 'GeneralData' Objects |
| v_data_mixture | Internal Helper Functions for Validation of 'GeneralData' Objects |
| v_data_objects | Internal Helper Functions for Validation of 'GeneralData' Objects |
| v_data_ordinal | Internal Helper Functions for Validation of 'GeneralData' Objects |
| v_data_parts | Internal Helper Functions for Validation of 'GeneralData' Objects |
| v_da_simulations | Internal Helper Functions for Validation of 'GeneralSimulations' Objects |
| v_design | Internal Helper Functions for Validation of 'RuleDesign' Objects |
| v_design_grouped | Internal Helper Functions for Validation of 'RuleDesign' Objects |
| v_dual_simulations | Internal Helper Functions for Validation of 'GeneralSimulations' Objects |
| v_general_data | Internal Helper Functions for Validation of 'GeneralData' Objects |
| v_general_model | Internal Helper Functions for Validation of 'GeneralModel' and 'ModelPseudo' Objects |
| v_general_simulations | Internal Helper Functions for Validation of 'GeneralSimulations' Objects |
| v_increments | Internal Helper Functions for Validation of 'Increments' Objects |
| v_increments_dose_levels | Internal Helper Functions for Validation of 'Increments' Objects |
| v_increments_hsr_beta | Internal Helper Functions for Validation of 'Increments' Objects |
| v_increments_maxtoxprob | Internal Helper Functions for Validation of 'Increments' Objects |
| v_increments_min | Internal Helper Functions for Validation of 'Increments' Objects |
| v_increments_ordinal | Internal Helper Functions for Validation of 'Increments' Objects |
| v_increments_relative | Internal Helper Functions for Validation of 'Increments' Objects |
| v_increments_relative_dlt | Internal Helper Functions for Validation of 'Increments' Objects |
| v_increments_relative_parts | Internal Helper Functions for Validation of 'Increments' Objects |
| v_logisticlognormalordinal | Internal Helper Functions for Validation of 'GeneralModel' and 'ModelPseudo' Objects |
| v_mcmcoptions_objects | Internal Helper Functions for Validation of 'McmcOptions' Objects |
| v_mcmc_options | Internal Helper Functions for Validation of 'McmcOptions' Objects |
| v_model_da_logistic_log_normal | Internal Helper Functions for Validation of 'GeneralModel' and 'ModelPseudo' Objects |
| v_model_dual_endpoint | Internal Helper Functions for Validation of 'GeneralModel' and 'ModelPseudo' Objects |
| v_model_dual_endpoint_beta | Internal Helper Functions for Validation of 'GeneralModel' and 'ModelPseudo' Objects |
| v_model_dual_endpoint_emax | Internal Helper Functions for Validation of 'GeneralModel' and 'ModelPseudo' Objects |
| v_model_dual_endpoint_rw | Internal Helper Functions for Validation of 'GeneralModel' and 'ModelPseudo' Objects |
| v_model_eff_flexi | Internal Helper Functions for Validation of 'GeneralModel' and 'ModelPseudo' Objects |
| v_model_eff_log_log | Internal Helper Functions for Validation of 'GeneralModel' and 'ModelPseudo' Objects |
| v_model_logistic_indep_beta | Internal Helper Functions for Validation of 'GeneralModel' and 'ModelPseudo' Objects |
| v_model_logistic_kadane | Internal Helper Functions for Validation of 'GeneralModel' and 'ModelPseudo' Objects |
| v_model_logistic_kadane_beta_gamma | Internal Helper Functions for Validation of 'GeneralModel' and 'ModelPseudo' Objects |
| v_model_logistic_log_normal_mix | Internal Helper Functions for Validation of 'GeneralModel' and 'ModelPseudo' Objects |
| v_model_logistic_normal_fixed_mix | Internal Helper Functions for Validation of 'GeneralModel' and 'ModelPseudo' Objects |
| v_model_logistic_normal_mix | Internal Helper Functions for Validation of 'GeneralModel' and 'ModelPseudo' Objects |
| v_model_objects | Internal Helper Functions for Validation of 'GeneralModel' and 'ModelPseudo' Objects |
| v_model_one_par_exp_normal_prior | Internal Helper Functions for Validation of 'GeneralModel' and 'ModelPseudo' Objects |
| v_model_one_par_exp_prior | Internal Helper Functions for Validation of 'GeneralModel' and 'ModelPseudo' Objects |
| v_model_params | Internal Helper Functions for Validation of Model Parameters Objects |
| v_model_params_normal | Internal Helper Functions for Validation of Model Parameters Objects |
| v_model_tite_logistic_log_normal | Internal Helper Functions for Validation of 'GeneralModel' and 'ModelPseudo' Objects |
| v_next_best | Internal Helper Functions for Validation of 'NextBest' Objects |
| v_next_best_dual_endpoint | Internal Helper Functions for Validation of 'NextBest' Objects |
| v_next_best_ewoc | Internal Helper Functions for Validation of 'NextBest' Objects |
| v_next_best_inf_theory | Internal Helper Functions for Validation of 'NextBest' Objects |
| v_next_best_max_gain_samples | Internal Helper Functions for Validation of 'NextBest' Objects |
| v_next_best_min_dist | Internal Helper Functions for Validation of 'NextBest' Objects |
| v_next_best_mtd | Internal Helper Functions for Validation of 'NextBest' Objects |
| v_next_best_ncrm | Internal Helper Functions for Validation of 'NextBest' Objects |
| v_next_best_ncrm_loss | Internal Helper Functions for Validation of 'NextBest' Objects |
| v_next_best_ordinal | Internal Helper Functions for Validation of 'NextBest' Objects |
| v_next_best_prob_mtd_lte | Internal Helper Functions for Validation of 'NextBest' Objects |
| v_next_best_prob_mtd_min_dist | Internal Helper Functions for Validation of 'NextBest' Objects |
| v_next_best_td | Internal Helper Functions for Validation of 'NextBest' Objects |
| v_next_best_td_samples | Internal Helper Functions for Validation of 'NextBest' Objects |
| v_pseudo_dual_flex_simulations | Internal Helper Functions for Validation of 'PseudoSimulations' Objects |
| v_pseudo_dual_simulations | Internal Helper Functions for Validation of 'PseudoSimulations' Objects |
| v_pseudo_simulations | Internal Helper Functions for Validation of 'PseudoSimulations' Objects |
| v_rule_design | Internal Helper Functions for Validation of 'RuleDesign' Objects |
| v_rule_design_ordinal | Internal Helper Functions for Validation of 'RuleDesign' Objects |
| v_safety_window | Internal Helper Functions for Validation of 'SafetyWindow' Objects |
| v_safety_window_const | Internal Helper Functions for Validation of 'SafetyWindow' Objects |
| v_safety_window_size | Internal Helper Functions for Validation of 'SafetyWindow' Objects |
| v_samples | Internal Helper Functions for Validation of 'Samples' Objects |
| v_samples_objects | Internal Helper Functions for Validation of 'Samples' Objects |
| v_simulations | Internal Helper Functions for Validation of 'GeneralSimulations' Objects |
| v_stopping | Internal Helper Functions for Validation of 'Stopping' Objects |
| v_stopping_all | Internal Helper Functions for Validation of 'Stopping' Objects |
| v_stopping_cohorts_near_dose | Internal Helper Functions for Validation of 'Stopping' Objects |
| v_stopping_list | Internal Helper Functions for Validation of 'Stopping' Objects |
| v_stopping_min_cohorts | Internal Helper Functions for Validation of 'Stopping' Objects |
| v_stopping_min_patients | Internal Helper Functions for Validation of 'Stopping' Objects |
| v_stopping_mtd_cv | Internal Helper Functions for Validation of 'Stopping' Objects |
| v_stopping_mtd_distribution | Internal Helper Functions for Validation of 'Stopping' Objects |
| v_stopping_patients_near_dose | Internal Helper Functions for Validation of 'Stopping' Objects |
| v_stopping_target_biomarker | Internal Helper Functions for Validation of 'Stopping' Objects |
| v_stopping_target_prob | Internal Helper Functions for Validation of 'Stopping' Objects |
| v_stopping_tdci_ratio | Internal Helper Functions for Validation of 'Stopping' Objects |
| windowLength | Determine the Safety Window Length of the Next Cohort |
| windowLength-method | Determine the Safety Window Length of the Next Cohort |
| windowLength-SafetyWindowConst | Determine the Safety Window Length of the Next Cohort |
| windowLength-SafetyWindowSize | Determine the Safety Window Length of the Next Cohort |
| &-method | Combine Two Stopping Rules with AND |
| &-method | Combine an Atomic Stopping Rule and a Stopping List with AND |
| &-method | Combine a Stopping List and an Atomic Stopping Rule with AND |
| .CohortSizeConst | 'CohortSizeConst' |
| .CohortSizeDLT | 'CohortSizeDLT' |
| .CohortSizeMax | 'CohortSizeMax' |
| .CohortSizeMin | 'CohortSizeMin' |
| .CohortSizeOrdinal | 'CohortSizeOrdinal' |
| .CohortSizeParts | 'CohortSizeParts' |
| .CohortSizeRange | 'CohortSizeRange' |
| .CrmPackClass | 'CrmPackClass' |
| .DADesign | 'DADesign' |
| .DALogisticLogNormal | 'DALogisticLogNormal' |
| .DASimulations | 'DASimulations' |
| .Data | 'Data' |
| .DataDA | 'DataDA' |
| .DataDual | 'DataDual' |
| .DataGrouped | 'DataGrouped' |
| .DataMixture | 'DataMixture' |
| .DataOrdinal | 'DataOrdinal' |
| .DataParts | 'DataParts' |
| .DefaultCohortSize | 'CohortSize' |
| .DefaultCohortSizeConst | 'CohortSizeConst' |
| .DefaultCohortSizeDLT | 'CohortSizeDLT' |
| .DefaultCohortSizeMax | 'CohortSizeMax' |
| .DefaultCohortSizeMin | 'CohortSizeMin' |
| .DefaultCohortSizeOrdinal | 'CohortSizeOrdinal' |
| .DefaultCohortSizeParts | 'CohortSizeParts' |
| .DefaultCohortSizeRange | 'CohortSizeRange' |
| .DefaultDADesign | 'DADesign' |
| .DefaultDALogisticLogNormal | 'DALogisticLogNormal' |
| .DefaultDASimulations | 'DASimulations' |
| .DefaultData | 'Data' |
| .DefaultDataDA | 'DataDA' |
| .DefaultDataDual | 'DataDual' |
| .DefaultDataGeneral | 'GeneralData' |
| .DefaultDataGrouped | 'DataGrouped' |
| .DefaultDataMixture | 'DataMixture' |
| .DefaultDataOrdinal | 'DataOrdinal' |
| .DefaultDataParts | 'DataParts' |
| .DefaultDesign | 'Design' |
| .DefaultDesignGrouped | 'DesignGrouped' |
| .DefaultDesignOrdinal | 'DesignOrdinal' |
| .DefaultDualDesign | 'DualDesign' |
| .DefaultDualEndpoint | 'DualEndpoint' |
| .DefaultDualEndpointBeta | 'DualEndpointBeta' |
| .DefaultDualEndpointEmax | 'DualEndpointEmax' |
| .DefaultDualEndpointRW | 'DualEndpointRW' |
| .DefaultDualResponsesDesign | 'DualResponsesDesign.R' |
| .DefaultDualResponsesSamplesDesign | 'DualResponsesSamplesDesign' |
| .DefaultDualSimulations | 'DualSimulations' |
| .DefaultDualSimulationsSummary | 'DualSimulationsSummary' |
| .DefaultEffFlexi | 'EffFlexi' |
| .DefaultEffloglog | 'Effloglog' |
| .DefaultFractionalCRM | 'FractionalCRM' |
| .DefaultGeneralModel | 'GeneralModel' |
| .DefaultGeneralSimulations | 'GeneralSimulations' |
| .DefaultGeneralSimulationsSummary | 'GeneralSimulationsSummary' |
| .DefaultIncrements | 'Increments' |
| .DefaultIncrementsDoseLevels | 'IncrementsDoseLevels' |
| .DefaultIncrementsHSRBeta | 'IncrementsHSRBeta' |
| .DefaultIncrementsMaxToxProb | 'IncrementsMaxToxProb' |
| .DefaultIncrementsMin | 'IncrementsMin' |
| .DefaultIncrementsOrdinal | 'IncrementsOrdinal' |
| .DefaultIncrementsRelative | 'IncrementsRelative' |
| .DefaultIncrementsRelativeDLT | 'IncrementsRelativeDLT' |
| .DefaultIncrementsRelativeDLTCurrent | 'IncrementsRelativeDLTCurrent' |
| .DefaultIncrementsRelativeParts | 'IncrementsRelativeParts' |
| .DefaultLogisticIndepBeta | 'LogisticIndepBeta' |
| .DefaultLogisticKadane | 'LogisticKadane' |
| .DefaultLogisticKadaneBetaGamma | 'LogisticKadaneBetaGamma' |
| .DefaultLogisticLogNormal | 'LogisticLogNormal' |
| .DefaultLogisticLogNormalGrouped | 'LogisticLogNormalGrouped' |
| .DefaultLogisticLogNormalMixture | 'LogisticLogNormalMixture' |
| .DefaultLogisticLogNormalOrdinal | 'LogisticLogNormalOrdinal' |
| .DefaultLogisticLogNormalSub | 'LogisticLogNormalSub' |
| .DefaultLogisticNormal | 'LogisticNormal' |
| .DefaultLogisticNormalFixedMixture | 'LogisticNormalFixedMixture' |
| .DefaultLogisticNormalMixture | 'LogisticNormalMixture' |
| .DefaultMcmcOptions | 'McmcOptions' |
| .DefaultModelEff | 'ModelEff' |
| .DefaultModelLogNormal | 'ModelLogNormal' |
| .DefaultModelParamsNormal | 'ModelParamsNormal' |
| .DefaultModelPseudo | 'ModelPseudo' |
| .DefaultModelTox | 'ModelTox' |
| .DefaultNextBest | 'NextBest' |
| .DefaultNextBestDualEndpoint | 'NextBestDualEndpoint' |
| .DefaultNextBestEWOC | 'NextBestEWOC' |
| .DefaultNextBestInfTheory | 'NextBestInfTheory' |
| .DefaultNextBestMaxGain | 'NextBestMaxGain' |
| .DefaultNextBestMaxGainSamples | 'NextBestMaxGainSamples' |
| .DefaultNextBestMinDist | 'NextBestMinDist' |
| .DefaultNextBestMTD | 'NextBestMTD' |
| .DefaultNextBestNCRM | 'NextBestNCRM' |
| .DefaultNextBestNCRMLoss | 'NextBestNCRMLoss' |
| .DefaultNextBestOrdinal | 'NextBestOrdinal' |
| .DefaultNextBestProbMTDLTE | 'NextBestProbMTDLTE' |
| .DefaultNextBestProbMTDMinDist | 'NextBestProbMTDMinDist' |
| .DefaultNextBestTD | 'NextBestTD' |
| .DefaultNextBestTDsamples | 'NextBestTDsamples' |
| .DefaultNextBestThreePlusThree | 'NextBestThreePlusThree' |
| .DefaultOneParExpPrior | 'OneParExpPrior' |
| .DefaultOneParLogNormalPrior | 'OneParLogNormalPrior' |
| .DefaultProbitLogNormal | 'ProbitLogNormal' |
| .DefaultProbitLogNormalRel | 'ProbitLogNormalRel' |
| .DefaultPseudoDualFlexiSimulations | 'PseudoDualFlexiSimulations' |
| .DefaultPseudoDualSimulations | 'PseudoDualSimulations' |
| .DefaultPseudoDualSimulationsSummary | 'PseudoDualSimulationsSummary' |
| .DefaultPseudoSimulations | 'PseudoSimulations' |
| .DefaultPseudoSimulationsSummary | 'PseudoSimulationsSummary' |
| .DefaultRuleDesign | 'RuleDesign' |
| .DefaultRuleDesignOrdinal | 'RuleDesignOrdinal' |
| .DefaultSafetyWindow | 'SafetyWindow' |
| .DefaultSafetyWindowConst | 'SafetyWindowConst' |
| .DefaultSafetyWindowSize | 'SafetyWindowSize' |
| .DefaultSamples | 'Samples' |
| .DefaultSimulations | 'Simulations' |
| .DefaultSimulationsSummary | 'SimulationsSummary' |
| .DefaultStoppingAll | 'StoppingAll' |
| .DefaultStoppingAny | 'StoppingAny' |
| .DefaultStoppingCohortsNearDose | 'StoppingCohortsNearDose' |
| .DefaultStoppingExternal | 'StoppingExternal' |
| .DefaultStoppingHighestDose | 'StoppingHighestDose' |
| .DefaultStoppingList | 'StoppingList' |
| .DefaultStoppingLowestDoseHSRBeta | 'StoppingLowestDoseHSRBeta' |
| .DefaultStoppingMaxGainCIRatio | 'StoppingMaxGainCIRatio' |
| .DefaultStoppingMinCohorts | 'StoppingMinCohorts' |
| .DefaultStoppingMinPatients | 'StoppingMinPatients' |
| .DefaultStoppingMissingDose | 'StoppingMissingDose' |
| .DefaultStoppingMTDCV | 'StoppingMTDCV' |
| .DefaultStoppingMTDdistribution | 'StoppingMTDdistribution' |
| .DefaultStoppingOrdinal | 'StoppingOrdinal' |
| .DefaultStoppingPatientsNearDose | 'StoppingPatientsNearDose' |
| .DefaultStoppingSpecificDose | 'StoppingSpecificDose' |
| .DefaultStoppingTargetBiomarker | 'StoppingTargetBiomarker' |
| .DefaultStoppingTargetProb | 'StoppingTargetProb' |
| .DefaultStoppingTDCIRatio | 'StoppingTDCIRatio' |
| .DefaultTDDesign | 'TDDesign' |
| .DefaultTDsamplesDesign | 'TDsamplesDesign' |
| .DefaultTITELogisticLogNormal | 'TITELogisticLogNormal' |
| .Design | 'Design' |
| .DesignGrouped | 'DesignGrouped' |
| .DesignOrdinal | 'DesignOrdinal' |
| .DualDesign | 'DualDesign' |
| .DualEndpoint | 'DualEndpoint' |
| .DualEndpointBeta | 'DualEndpointBeta' |
| .DualEndpointEmax | 'DualEndpointEmax' |
| .DualEndpointRW | 'DualEndpointRW' |
| .DualResponsesDesign | 'DualResponsesDesign.R' |
| .DualResponsesSamplesDesign | 'DualResponsesSamplesDesign' |
| .DualSimulations | 'DualSimulations' |
| .DualSimulationsSummary | 'DualSimulationsSummary' |
| .EffFlexi | 'EffFlexi' |
| .Effloglog | 'Effloglog' |
| .FractionalCRM | 'FractionalCRM' |
| .GeneralData | 'GeneralData' |
| .GeneralModel | 'GeneralModel' |
| .GeneralSimulations | 'GeneralSimulations' |
| .GeneralSimulationsSummary | 'GeneralSimulationsSummary' |
| .IncrementsDoseLevels | 'IncrementsDoseLevels' |
| .IncrementsHSRBeta | 'IncrementsHSRBeta' |
| .IncrementsMaxToxProb | 'IncrementsMaxToxProb' |
| .IncrementsMin | 'IncrementsMin' |
| .IncrementsOrdinal | 'IncrementsOrdinal' |
| .IncrementsRelative | 'IncrementsRelative' |
| .IncrementsRelativeDLT | 'IncrementsRelativeDLT' |
| .IncrementsRelativeDLTCurrent | 'IncrementsRelativeDLTCurrent' |
| .IncrementsRelativeParts | 'IncrementsRelativeParts' |
| .LogisticIndepBeta | 'LogisticIndepBeta' |
| .LogisticKadane | 'LogisticKadane' |
| .LogisticKadaneBetaGamma | 'LogisticKadaneBetaGamma' |
| .LogisticLogNormal | 'LogisticLogNormal' |
| .LogisticLogNormalGrouped | 'LogisticLogNormalGrouped' |
| .LogisticLogNormalMixture | 'LogisticLogNormalMixture' |
| .LogisticLogNormalOrdinal | 'LogisticLogNormalOrdinal' |
| .LogisticLogNormalSub | 'LogisticLogNormalSub' |
| .LogisticNormal | 'LogisticNormal' |
| .LogisticNormalFixedMixture | 'LogisticNormalFixedMixture' |
| .LogisticNormalMixture | 'LogisticNormalMixture' |
| .McmcOptions | 'McmcOptions' |
| .ModelEff | 'ModelEff' |
| .ModelLogNormal | 'ModelLogNormal' |
| .ModelParamsNormal | 'ModelParamsNormal' |
| .ModelPseudo | 'ModelPseudo' |
| .ModelTox | 'ModelTox' |
| .NextBestDualEndpoint | 'NextBestDualEndpoint' |
| .NextBestEWOC | 'NextBestEWOC' |
| .NextBestInfTheory | 'NextBestInfTheory' |
| .NextBestMaxGain | 'NextBestMaxGain' |
| .NextBestMaxGainSamples | 'NextBestMaxGainSamples' |
| .NextBestMinDist | 'NextBestMinDist' |
| .NextBestMTD | 'NextBestMTD' |
| .NextBestNCRM | 'NextBestNCRM' |
| .NextBestNCRMLoss | 'NextBestNCRMLoss' |
| .NextBestOrdinal | 'NextBestOrdinal' |
| .NextBestProbMTDLTE | 'NextBestProbMTDLTE' |
| .NextBestProbMTDMinDist | 'NextBestProbMTDMinDist' |
| .NextBestTD | 'NextBestTD' |
| .NextBestTDsamples | 'NextBestTDsamples' |
| .NextBestThreePlusThree | 'NextBestThreePlusThree' |
| .OneParExpPrior | 'OneParExpPrior' |
| .OneParLogNormalPrior | 'OneParLogNormalPrior' |
| .ProbitLogNormal | 'ProbitLogNormal' |
| .ProbitLogNormalRel | 'ProbitLogNormalRel' |
| .PseudoDualFlexiSimulations | 'PseudoDualFlexiSimulations' |
| .PseudoDualSimulations | 'PseudoDualSimulations' |
| .PseudoDualSimulationsSummary | 'PseudoDualSimulationsSummary' |
| .PseudoSimulations | 'PseudoSimulations' |
| .PseudoSimulationsSummary | 'PseudoSimulationsSummary' |
| .RuleDesign | 'RuleDesign' |
| .RuleDesignOrdinal | 'RuleDesignOrdinal' |
| .SafetyWindowConst | 'SafetyWindowConst' |
| .SafetyWindowSize | 'SafetyWindowSize' |
| .Samples | 'Samples' |
| .Simulations | 'Simulations' |
| .SimulationsSummary | 'SimulationsSummary' |
| .StoppingAll | 'StoppingAll' |
| .StoppingAny | 'StoppingAny' |
| .StoppingCohortsNearDose | 'StoppingCohortsNearDose' |
| .StoppingExternal | 'StoppingExternal' |
| .StoppingHighestDose | 'StoppingHighestDose' |
| .StoppingList | 'StoppingList' |
| .StoppingLowestDoseHSRBeta | 'StoppingLowestDoseHSRBeta' |
| .StoppingMaxGainCIRatio | 'StoppingMaxGainCIRatio' |
| .StoppingMinCohorts | 'StoppingMinCohorts' |
| .StoppingMinPatients | 'StoppingMinPatients' |
| .StoppingMissingDose | 'StoppingMissingDose' |
| .StoppingMTDCV | 'StoppingMTDCV' |
| .StoppingMTDdistribution | 'StoppingMTDdistribution' |
| .StoppingOrdinal | 'StoppingOrdinal' |
| .StoppingPatientsNearDose | 'StoppingPatientsNearDose' |
| .StoppingSpecificDose | 'StoppingSpecificDose' |
| .StoppingTargetBiomarker | 'StoppingTargetBiomarker' |
| .StoppingTargetProb | 'StoppingTargetProb' |
| .StoppingTDCIRatio | 'StoppingTDCIRatio' |
| .TDDesign | 'TDDesign' |
| .TDsamplesDesign | 'TDsamplesDesign' |
| .TITELogisticLogNormal | 'TITELogisticLogNormal' |
| |-method | Combine Two Stopping Rules with OR |
| |-method | Combine an Atomic Stopping Rule and a Stopping List with OR |
| |-method | Combine a Stopping List and an Atomic Stopping Rule with OR |