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  "Title": "Object-Oriented Implementation of Dose Escalation Designs",
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  "Authors@R": "c(\nperson(\"Daniel\", \"Sabanés Bové\", , \"daniel.sabanes_bove@rconis.com\", role = c(\"aut\", \"cre\"),\ncomment = c(ORCID = \"0000-0002-0176-9239\")),\nperson(\"Wai\", \"Yin Yeung\", , \"winnie.yeung@roche.com\", role = \"aut\"),\nperson(\"Burak Kuersad\", \"Guenhan\", , \"burakgunhan@gmail.com\", role = \"aut\"),\nperson(\"Giuseppe\", \"Palermo\", , \"giuseppe.palermo@roche.com\", role = \"aut\"),\nperson(\"Thomas\", \"Jaki\", , \"jaki.thomas@gmail.com\", role = \"aut\"),\nperson(\"Jiawen\", \"Zhu\", , \"zhu.jiawen@gene.com\", role = \"aut\"),\nperson(\"Ziwei\", \"Liao\", , \"ziwei.liao.fdu@gmail.com\", role = \"aut\"),\nperson(\"Dimitris\", \"Kontos\", , \"dimitris.kontos@bayer.com\", role = \"aut\"),\nperson(\"Marlene\", \"Schulte-Goebel\", , \"marlene.schulte-goebel@merckgroup.com\", role = \"aut\"),\nperson(\"Doug\", \"Kelkhoff\", , \"doug.kelkhoff@gmail.com\", role = \"aut\",\ncomment = c(ORCID = \"0009-0003-7845-4061\")),\nperson(\"Oliver\", \"Boix\", , \"oliver.boix@bayer.com\", role = \"aut\"),\nperson(\"Robert\", \"Adams\", , \"robert.adams@bayer.com\", role = \"aut\"),\nperson(\"Clara\", \"Beck\", , \"clara.beck@bayer.com\", role = \"aut\"),\nperson(\"John\", \"Kirkpatrick\", , \"john@puzzledface.net\", role = \"aut\"),\nperson(\"Wojciech\", \"Wójciak\", , \"wojciech.wojciak@gmail.com\", role = \"aut\"),\nperson(\"Guanya\", \"Peng\", , role = \"aut\"),\nperson(\"Prerana\", \"Chandratre\", , role = \"aut\"),\nperson(\"F. Hoffmann-La Roche AG\", role = c(\"cph\", \"fnd\")),\nperson(\"Merck Healthcare KGaA\", role = c(\"cph\", \"fnd\")),\nperson(\"Bayer AG\", role = c(\"cph\", \"fnd\")),\nperson(\"RPACT GmbH\", role = c(\"cph\", \"fnd\"))\n)",
  "Description": "Implements a wide range of dose escalation designs. The\nfocus is on model-based designs, ranging from classical and\nmodern continual reassessment methods (CRMs) based on\ndose-limiting toxicity endpoints to dual-endpoint designs\ntaking into account a biomarker/efficacy outcome. Bayesian\ninference is performed via MCMC sampling in JAGS, and it is\neasy to setup a new design with custom JAGS code. However, it\nis also possible to implement 3+3 designs for comparison or\nmodels with non-Bayesian estimation. The whole package is\nwritten in a modular form in the S4 class system, making it\nvery flexible for adaptation to new models, escalation or\nstopping rules. Further details are presented in Sabanés Bové\net al. (2019) <doi:10.18637/jss.v089.i10>.",
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  "URL": "https://docs.crmpack.org/",
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  "Repository": "https://pharmaverse.r-universe.dev",
  "Date/Publication": "2026-03-17 01:14:31 UTC",
  "RemoteUrl": "https://github.com/Roche/crmPack",
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    ".StoppingLowestDoseHSRBeta",
    ".StoppingMaxGainCIRatio",
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    "h_model_dual_endpoint_rho",
    "h_model_dual_endpoint_sigma2betaw",
    "h_model_dual_endpoint_sigma2w",
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    "h_next_best_mg_doses_at_grid",
    "h_next_best_mg_plot",
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    "LogisticLogNormalMixture",
    "LogisticLogNormalOrdinal",
    "LogisticLogNormalSub",
    "LogisticNormal",
    "LogisticNormalFixedMixture",
    "LogisticNormalMixture",
    "logit",
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    "maxDose",
    "maxRecruits",
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    "McmcOptions",
    "MinimalInformative",
    "minSize",
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    "NextBestDualEndpoint",
    "NextBestEWOC",
    "NextBestInfTheory",
    "NextBestMaxGain",
    "NextBestMaxGainSamples",
    "NextBestMinDist",
    "NextBestMTD",
    "NextBestNCRM",
    "NextBestNCRMLoss",
    "NextBestOrdinal",
    "NextBestProbMTDLTE",
    "NextBestProbMTDMinDist",
    "NextBestTD",
    "NextBestTDsamples",
    "NextBestThreePlusThree",
    "ngrid",
    "OneParExpPrior",
    "OneParLogNormalPrior",
    "openCohort",
    "OpeningAll",
    "OpeningAny",
    "OpeningList",
    "OpeningMinCohorts",
    "OpeningMinDose",
    "OpeningMinResponses",
    "OpeningNone",
    "plot",
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    "plotGain",
    "prob",
    "probFunction",
    "probit",
    "ProbitLogNormal",
    "ProbitLogNormalRel",
    "PseudoDualFlexiSimulations",
    "PseudoDualSimulations",
    "PseudoSimulations",
    "Quantiles2LogisticNormal",
    "RecruitmentRatio",
    "RecruitmentUnlimited",
    "RuleDesign",
    "RuleDesignOrdinal",
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    "Samples",
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    "set_seed",
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    "simulate",
    "Simulations",
    "size",
    "StoppingAll",
    "StoppingAny",
    "StoppingCohortsNearDose",
    "StoppingExternal",
    "StoppingHighestDose",
    "StoppingList",
    "StoppingLowestDoseHSRBeta",
    "StoppingMaxGainCIRatio",
    "StoppingMinCohorts",
    "StoppingMinPatients",
    "StoppingMissingDose",
    "StoppingMTDCV",
    "StoppingMTDdistribution",
    "StoppingOrdinal",
    "StoppingPatientsNearDose",
    "StoppingSpecificDose",
    "StoppingTargetBiomarker",
    "StoppingTargetProb",
    "StoppingTDCIRatio",
    "stopTrial",
    "summary",
    "TDDesign",
    "TDsamplesDesign",
    "test_format",
    "test_length",
    "test_probabilities",
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    "test_probability_range",
    "test_range",
    "ThreePlusThreeDesign",
    "tidy",
    "TITELogisticLogNormal",
    "update",
    "windowLength"
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  "_help": [
    {
      "page": "CohortSize-class",
      "title": "'CohortSize'",
      "topics": [
        ".DefaultCohortSize",
        "CohortSize",
        "CohortSize-class"
      ]
    },
    {
      "page": "and-Stopping-Stopping-method",
      "title": "Combine Two Stopping Rules with AND",
      "topics": [
        "&,Stopping,Stopping-method",
        "and-Stopping-Stopping"
      ]
    },
    {
      "page": "and-Stopping-StoppingAll-method",
      "title": "Combine an Atomic Stopping Rule and a Stopping List with AND",
      "topics": [
        "&,Stopping,StoppingAll-method",
        "and-Stopping-StoppingAll"
      ]
    },
    {
      "page": "and-StoppingAll-Stopping-method",
      "title": "Combine a Stopping List and an Atomic Stopping Rule with AND",
      "topics": [
        "&,StoppingAll,Stopping-method",
        "and-StoppingAll-Stopping"
      ]
    },
    {
      "page": "and-Opening-Opening-method",
      "title": "Logical AND Operator for Opening Objects",
      "topics": [
        "&,Opening,Opening-method",
        "and,Opening,Opening-method"
      ]
    },
    {
      "page": "approximate",
      "title": "Approximate posterior with (log) normal distribution",
      "topics": [
        "approximate",
        "approximate,Samples-method"
      ]
    },
    {
      "page": "assertions",
      "title": "Additional Assertions for 'checkmate'",
      "topics": [
        "assertions"
      ]
    },
    {
      "page": "Backfill-class",
      "title": "'Backfill' class",
      "topics": [
        ".Backfill",
        ".DefaultBackfill",
        "Backfill",
        "Backfill-class"
      ]
    },
    {
      "page": "biomarker",
      "title": "Get the Biomarker Levels for a Given Dual-Endpoint Model, Given Dose Levels and Samples",
      "topics": [
        "biomarker",
        "biomarker,integer,DualEndpoint,Samples-method",
        "biomarker-DualEndpoint"
      ]
    },
    {
      "page": "check_equal",
      "title": "Check if All Arguments Are Equal",
      "topics": [
        "assert_equal",
        "check_equal"
      ]
    },
    {
      "page": "check_format",
      "title": "Check that an argument is a valid format specification",
      "topics": [
        "assert_format",
        "check_format",
        "expect_format",
        "test_format"
      ]
    },
    {
      "page": "check_length",
      "title": "Check if vectors are of compatible lengths",
      "topics": [
        "assert_length",
        "check_length",
        "test_length"
      ]
    },
    {
      "page": "check_probabilities",
      "title": "Check if an argument is a probability vector",
      "topics": [
        "assert_probabilities",
        "check_probabilities",
        "expect_probabilities",
        "test_probabilities"
      ]
    },
    {
      "page": "check_probability",
      "title": "Check if an argument is a single probability value",
      "topics": [
        "assert_probability",
        "check_probability",
        "expect_probability",
        "test_probability"
      ]
    },
    {
      "page": "check_probability_range",
      "title": "Check if an argument is a probability range",
      "topics": [
        "assert_probability_range",
        "check_probability_range",
        "expect_probability_range",
        "test_probability_range"
      ]
    },
    {
      "page": "check_range",
      "title": "Check that an argument is a numerical range",
      "topics": [
        "assert_range",
        "check_range",
        "expect_range",
        "test_range"
      ]
    },
    {
      "page": "CohortSizeConst-class",
      "title": "'CohortSizeConst'",
      "topics": [
        ".CohortSizeConst",
        ".DefaultCohortSizeConst",
        "CohortSizeConst",
        "CohortSizeConst-class"
      ]
    },
    {
      "page": "CohortSizeDLT-class",
      "title": "'CohortSizeDLT'",
      "topics": [
        ".CohortSizeDLT",
        ".DefaultCohortSizeDLT",
        "CohortSizeDLT",
        "CohortSizeDLT-class"
      ]
    },
    {
      "page": "CohortSizeMax-class",
      "title": "'CohortSizeMax'",
      "topics": [
        ".CohortSizeMax",
        ".DefaultCohortSizeMax",
        "CohortSizeMax",
        "CohortSizeMax-class"
      ]
    },
    {
      "page": "CohortSizeMin-class",
      "title": "'CohortSizeMin'",
      "topics": [
        ".CohortSizeMin",
        ".DefaultCohortSizeMin",
        "CohortSizeMin",
        "CohortSizeMin-class"
      ]
    },
    {
      "page": "CohortSizeOrdinal-class",
      "title": "'CohortSizeOrdinal'",
      "topics": [
        ".CohortSizeOrdinal",
        ".DefaultCohortSizeOrdinal",
        "CohortSizeOrdinal",
        "CohortSizeOrdinal-class"
      ]
    },
    {
      "page": "CohortSizeParts-class",
      "title": "'CohortSizeParts'",
      "topics": [
        ".CohortSizeParts",
        ".DefaultCohortSizeParts",
        "CohortSizeParts",
        "CohortSizeParts-class"
      ]
    },
    {
      "page": "CohortSizeRandom-class",
      "title": "'CohortSizeRandom'",
      "topics": [
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        ".DefaultCohortSizeRandom",
        "CohortSizeRandom",
        "CohortSizeRandom-class"
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    },
    {
      "page": "CohortSizeRange-class",
      "title": "'CohortSizeRange'",
      "topics": [
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        ".DefaultCohortSizeRange",
        "CohortSizeRange",
        "CohortSizeRange-class"
      ]
    },
    {
      "page": "crmPack",
      "title": "Object-oriented implementation of CRM designs",
      "topics": [
        "crmPack-package",
        "crmPack"
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    },
    {
      "page": "CrmPackClass",
      "title": "'CrmPackClass'",
      "topics": [
        ".CrmPackClass",
        "CrmPackClass",
        "CrmPackClass-class"
      ]
    },
    {
      "page": "crmPackExample",
      "title": "Open the Example PDF for crmPack",
      "topics": [
        "crmPackExample"
      ]
    },
    {
      "page": "crmPackHelp",
      "title": "Open the Browser with Help Pages for crmPack",
      "topics": [
        "crmPackHelp"
      ]
    },
    {
      "page": "DADesign-class",
      "title": "'DADesign'",
      "topics": [
        ".DADesign",
        ".DefaultDADesign",
        "DADesign",
        "DADesign-class"
      ]
    },
    {
      "page": "DALogisticLogNormal-class",
      "title": "'DALogisticLogNormal'",
      "topics": [
        ".DALogisticLogNormal",
        ".DefaultDALogisticLogNormal",
        "DALogisticLogNormal",
        "DALogisticLogNormal-class"
      ]
    },
    {
      "page": "dapply",
      "title": "Apply a Function to Subsets of Data Frame.",
      "topics": [
        "dapply"
      ]
    },
    {
      "page": "DASimulations-class",
      "title": "'DASimulations'",
      "topics": [
        ".DASimulations",
        ".DefaultDASimulations",
        "DASimulations",
        "DASimulations-class"
      ]
    },
    {
      "page": "Data-class",
      "title": "'Data'",
      "topics": [
        ".Data",
        ".DefaultData",
        "Data",
        "Data-class"
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    },
    {
      "page": "DataDA-class",
      "title": "'DataDA'",
      "topics": [
        ".DataDA",
        ".DefaultDataDA",
        "DataDA",
        "DataDA-class"
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    },
    {
      "page": "DataDual-class",
      "title": "'DataDual'",
      "topics": [
        ".DataDual",
        ".DefaultDataDual",
        "DataDual",
        "DataDual-class"
      ]
    },
    {
      "page": "DataGrouped-class",
      "title": "'DataGrouped'",
      "topics": [
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        ".DefaultDataGrouped",
        "DataGrouped",
        "DataGrouped-class"
      ]
    },
    {
      "page": "DataMixture-class",
      "title": "'DataMixture'",
      "topics": [
        ".DataMixture",
        ".DefaultDataMixture",
        "DataMixture",
        "DataMixture-class"
      ]
    },
    {
      "page": "DataOrdinal-class",
      "title": "'DataOrdinal'",
      "topics": [
        ".DataOrdinal",
        ".DefaultDataOrdinal",
        "DataOrdinal",
        "DataOrdinal-class"
      ]
    },
    {
      "page": "DataParts-class",
      "title": "'DataParts'",
      "topics": [
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        ".DefaultDataParts",
        "DataParts",
        "DataParts-class"
      ]
    },
    {
      "page": "Design-class",
      "title": "'Design'",
      "topics": [
        ".DefaultDesign",
        ".Design",
        "Design",
        "Design-class"
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    },
    {
      "page": "DesignGrouped-class",
      "title": "'DesignGrouped'",
      "topics": [
        ".DefaultDesignGrouped",
        ".DesignGrouped",
        "DesignGrouped",
        "DesignGrouped-class"
      ]
    },
    {
      "page": "DesignOrdinal-class",
      "title": "'DesignOrdinal'",
      "topics": [
        ".DefaultDesignOrdinal",
        ".DesignOrdinal",
        "DesignOrdinal",
        "DesignOrdinal-class"
      ]
    },
    {
      "page": "dose",
      "title": "Computing the Doses for a given independent variable, Model and Samples",
      "topics": [
        "dose",
        "dose,numeric,DualEndpoint,Samples-method",
        "dose,numeric,EffFlexi,Samples-method",
        "dose,numeric,Effloglog,missing-method",
        "dose,numeric,LogisticIndepBeta,missing-method",
        "dose,numeric,LogisticIndepBeta,Samples-method",
        "dose,numeric,LogisticKadane,Samples-method",
        "dose,numeric,LogisticKadaneBetaGamma,Samples-method",
        "dose,numeric,LogisticLogNormal,Samples-method",
        "dose,numeric,LogisticLogNormalGrouped,Samples-method",
        "dose,numeric,LogisticLogNormalMixture,Samples-method",
        "dose,numeric,LogisticLogNormalOrdinal,Samples-method",
        "dose,numeric,LogisticLogNormalSub,Samples-method",
        "dose,numeric,LogisticNormal,Samples-method",
        "dose,numeric,LogisticNormalFixedMixture,Samples-method",
        "dose,numeric,LogisticNormalMixture,Samples-method",
        "dose,numeric,OneParExpPrior,Samples-method",
        "dose,numeric,OneParLogNormalPrior,Samples-method",
        "dose,numeric,ProbitLogNormal,Samples-method",
        "dose,numeric,ProbitLogNormalRel,Samples-method",
        "dose-DualEndpoint",
        "dose-EffFlexi",
        "dose-Effloglog-noSamples",
        "dose-LogisticIndepBeta",
        "dose-LogisticIndepBeta-noSamples",
        "dose-LogisticKadane",
        "dose-LogisticKadaneBetaGamma",
        "dose-LogisticLogNormal",
        "dose-LogisticLogNormalGrouped",
        "dose-LogisticLogNormalMixture",
        "dose-LogisticLogNormalOrdinal",
        "dose-LogisticLogNormalSub",
        "dose-LogisticNormal",
        "dose-LogisticNormalFixedMixture",
        "dose-LogisticNormalMixture",
        "dose-OneParExpPrior",
        "dose-OneParLogNormalPrior",
        "dose-ProbitLogNormal",
        "dose-ProbitLogNormalRel"
      ]
    },
    {
      "page": "dose_grid_range",
      "title": "Getting the Dose Grid Range",
      "topics": [
        "dose_grid_range",
        "dose_grid_range,Data-method",
        "dose_grid_range,DataOrdinal-method",
        "dose_grid_range-Data"
      ]
    },
    {
      "page": "doseFunction",
      "title": "Getting the Dose Function for a Given Model Type",
      "topics": [
        "doseFunction",
        "doseFunction,GeneralModel-method",
        "doseFunction,LogisticLogNormalOrdinal-method",
        "doseFunction,ModelPseudo-method",
        "doseFunction-GeneralModel",
        "doseFunction-LogisticLogNormalOrdinal",
        "doseFunction-ModelPseudo"
      ]
    },
    {
      "page": "DualDesign-class",
      "title": "'DualDesign'",
      "topics": [
        ".DefaultDualDesign",
        ".DualDesign",
        "DualDesign",
        "DualDesign-class"
      ]
    },
    {
      "page": "DualEndpoint-class",
      "title": "'DualEndpoint'",
      "topics": [
        ".DefaultDualEndpoint",
        ".DualEndpoint",
        "DualEndpoint",
        "DualEndpoint-class"
      ]
    },
    {
      "page": "DualEndpointBeta-class",
      "title": "'DualEndpointBeta'",
      "topics": [
        ".DefaultDualEndpointBeta",
        ".DualEndpointBeta",
        "DualEndpointBeta",
        "DualEndpointBeta-class"
      ]
    },
    {
      "page": "DualEndpointEmax-class",
      "title": "'DualEndpointEmax'",
      "topics": [
        ".DefaultDualEndpointEmax",
        ".DualEndpointEmax",
        "DualEndpointEmax",
        "DualEndpointEmax-class"
      ]
    },
    {
      "page": "DualEndpointRW-class",
      "title": "'DualEndpointRW'",
      "topics": [
        ".DefaultDualEndpointRW",
        ".DualEndpointRW",
        "DualEndpointRW",
        "DualEndpointRW-class"
      ]
    },
    {
      "page": "DualResponsesDesign-class",
      "title": "'DualResponsesDesign.R'",
      "topics": [
        ".DefaultDualResponsesDesign",
        ".DualResponsesDesign",
        "DualResponsesDesign",
        "DualResponsesDesign-class"
      ]
    },
    {
      "page": "DualResponsesSamplesDesign-class",
      "title": "'DualResponsesSamplesDesign'",
      "topics": [
        ".DefaultDualResponsesSamplesDesign",
        ".DualResponsesSamplesDesign",
        "DualResponsesSamplesDesign",
        "DualResponsesSamplesDesign-class"
      ]
    },
    {
      "page": "DualSimulations-class",
      "title": "'DualSimulations'",
      "topics": [
        ".DefaultDualSimulations",
        ".DualSimulations",
        "DualSimulations",
        "DualSimulations-class"
      ]
    },
    {
      "page": "DualSimulationsSummary-class",
      "title": "'DualSimulationsSummary'",
      "topics": [
        ".DefaultDualSimulationsSummary",
        ".DualSimulationsSummary",
        "DualSimulationsSummary",
        "DualSimulationsSummary-class"
      ]
    },
    {
      "page": "EffFlexi-class",
      "title": "'EffFlexi'",
      "topics": [
        ".DefaultEffFlexi",
        ".EffFlexi",
        "EffFlexi",
        "EffFlexi-class"
      ]
    },
    {
      "page": "efficacy",
      "title": "Computing Expected Efficacy for a Given Dose, Model and Samples",
      "topics": [
        "efficacy",
        "efficacy,numeric,EffFlexi,Samples-method",
        "efficacy,numeric,Effloglog,missing-method",
        "efficacy,numeric,Effloglog,Samples-method",
        "efficacy-EffFlexi",
        "efficacy-Effloglog",
        "efficacy-Effloglog-noSamples"
      ]
    },
    {
      "page": "efficacyFunction",
      "title": "Getting the Efficacy Function for a Given Model Type",
      "topics": [
        "efficacyFunction",
        "efficacyFunction,ModelEff-method",
        "efficacyFunction-ModelEff"
      ]
    },
    {
      "page": "Effloglog-class",
      "title": "'Effloglog'",
      "topics": [
        ".DefaultEffloglog",
        ".Effloglog",
        "Effloglog",
        "Effloglog-class"
      ]
    },
    {
      "page": "enable_logging",
      "title": "Verbose Logging",
      "topics": [
        "disable_logging",
        "enable_logging",
        "is_logging_enabled",
        "log_trace"
      ]
    },
    {
      "page": "examine",
      "title": "Obtain Hypothetical Trial Course Table for a Design",
      "topics": [
        "examine",
        "examine,DADesign-method",
        "examine,Design-method",
        "examine,RuleDesign-method"
      ]
    },
    {
      "page": "fit",
      "title": "Fit method for the Samples class",
      "topics": [
        "fit",
        "fit,Samples,DualEndpoint,DataDual-method",
        "fit,Samples,EffFlexi,DataDual-method",
        "fit,Samples,Effloglog,DataDual-method",
        "fit,Samples,GeneralModel,Data-method",
        "fit,Samples,LogisticIndepBeta,Data-method",
        "fit,Samples,LogisticLogNormalOrdinal,DataOrdinal-method"
      ]
    },
    {
      "page": "fitGain",
      "title": "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",
      "topics": [
        "fitGain",
        "fitGain,ModelTox,Samples,ModelEff,Samples,DataDual-method"
      ]
    },
    {
      "page": "fitPEM",
      "title": "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,",
      "topics": [
        "fitPEM",
        "fitPEM,Samples,DALogisticLogNormal,DataDA-method"
      ]
    },
    {
      "page": "FractionalCRM-class",
      "title": "'FractionalCRM'",
      "topics": [
        ".DefaultFractionalCRM",
        ".FractionalCRM",
        "FractionalCRM",
        "FractionalCRM-class"
      ]
    },
    {
      "page": "gain",
      "title": "Compute Gain Values based on Pseudo DLE and a Pseudo Efficacy Models and Using Optional Samples.",
      "topics": [
        "gain",
        "gain,numeric,ModelTox,missing,Effloglog,missing-method",
        "gain,numeric,ModelTox,Samples,ModelEff,Samples-method",
        "gain-ModelTox-Effloglog-noSamples",
        "gain-ModelTox-ModelEff"
      ]
    },
    {
      "page": "GeneralData-class",
      "title": "'GeneralData'",
      "topics": [
        ".DefaultDataGeneral",
        ".GeneralData",
        "GeneralData",
        "GeneralData-class"
      ]
    },
    {
      "page": "GeneralModel-class",
      "title": "'GeneralModel'",
      "topics": [
        ".DefaultGeneralModel",
        ".GeneralModel",
        "GeneralModel",
        "GeneralModel-class"
      ]
    },
    {
      "page": "GeneralSimulations-class",
      "title": "'GeneralSimulations'",
      "topics": [
        ".DefaultGeneralSimulations",
        ".GeneralSimulations",
        "GeneralSimulations",
        "GeneralSimulations-class"
      ]
    },
    {
      "page": "GeneralSimulationsSummary-class",
      "title": "'GeneralSimulationsSummary'",
      "topics": [
        ".DefaultGeneralSimulationsSummary",
        ".GeneralSimulationsSummary",
        "GeneralSimulationsSummary",
        "GeneralSimulationsSummary-class"
      ]
    },
    {
      "page": "get-Samples-character-method",
      "title": "Get specific parameter samples and produce a data.frame",
      "topics": [
        "get,Samples,character-method"
      ]
    },
    {
      "page": "getEff",
      "title": "Extracting Efficacy Responses for Subjects Categorized by the DLT",
      "topics": [
        "getEff",
        "getEff,DataDual-method",
        "getEff-DataDual"
      ]
    },
    {
      "page": "h_all_equivalent",
      "title": "Comparison with Numerical Tolerance and Without Name Comparison",
      "topics": [
        "h_all_equivalent"
      ]
    },
    {
      "page": "h_blind_plot_data",
      "title": "Helper Function to Blind Plot Data",
      "topics": [
        "h_blind_plot_data"
      ]
    },
    {
      "page": "h_calc_report_label_percentage",
      "title": "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",
      "topics": [
        "h_calc_report_label_percentage"
      ]
    },
    {
      "page": "h_check_fun_formals",
      "title": "Checking Formals of a Function",
      "topics": [
        "h_check_fun_formals"
      ]
    },
    {
      "page": "h_convert_ordinal_data",
      "title": "Convert a Ordinal Data to the Equivalent Binary Data for a Specific Grade",
      "topics": [
        "h_convert_ordinal_data"
      ]
    },
    {
      "page": "h_convert_ordinal_model",
      "title": "Convert an ordinal CRM model to the Equivalent Binary CRM Model for a Specific Grade",
      "topics": [
        "h_convert_ordinal_model"
      ]
    },
    {
      "page": "h_convert_ordinal_samples",
      "title": "Convert a Samples Object from an ordinal Model to the Equivalent Samples Object from a Binary Model",
      "topics": [
        "h_convert_ordinal_samples"
      ]
    },
    {
      "page": "h_default_if_empty",
      "title": "Getting the default value for an empty object",
      "topics": [
        "h_default_if_empty"
      ]
    },
    {
      "page": "h_find_interval",
      "title": "Find Interval Numbers or Indices and Return Custom Number For 0.",
      "topics": [
        "h_find_interval"
      ]
    },
    {
      "page": "h_format_number",
      "title": "Conditional Formatting Using C-style Formats",
      "topics": [
        "h_format_number"
      ]
    },
    {
      "page": "h_in_range",
      "title": "Check which elements are in a given range",
      "topics": [
        "h_in_range"
      ]
    },
    {
      "page": "h_info_theory_dist",
      "title": "Calculating the Information Theoretic Distance",
      "topics": [
        "h_info_theory_dist"
      ]
    },
    {
      "page": "h_is_positive_definite",
      "title": "Testing Matrix for Positive Definiteness",
      "topics": [
        "h_is_positive_definite"
      ]
    },
    {
      "page": "h_jags_add_dummy",
      "title": "Appending a Dummy Number for Selected Slots in Data",
      "topics": [
        "h_jags_add_dummy"
      ]
    },
    {
      "page": "h_jags_extract_samples",
      "title": "Extracting Samples from 'JAGS' 'mcarray' Object",
      "topics": [
        "h_jags_extract_samples"
      ]
    },
    {
      "page": "h_jags_get_data",
      "title": "Getting Data for 'JAGS'",
      "topics": [
        "h_jags_get_data"
      ]
    },
    {
      "page": "h_jags_get_model_inits",
      "title": "Setting Initial Values for 'JAGS' Model Parameters",
      "topics": [
        "h_jags_get_model_inits"
      ]
    },
    {
      "page": "h_jags_join_models",
      "title": "Joining 'JAGS' Models",
      "topics": [
        "h_jags_join_models"
      ]
    },
    {
      "page": "h_jags_write_model",
      "title": "Writing JAGS Model to a File",
      "topics": [
        "h_jags_write_model"
      ]
    },
    {
      "page": "h_model_dual_endpoint_beta",
      "title": "Update certain components of 'DualEndpoint' model with regard to parameters of the function that models dose-biomarker relationship defined in the 'DualEndpointBeta' class.",
      "topics": [
        "h_model_dual_endpoint_beta"
      ]
    },
    {
      "page": "h_model_dual_endpoint_rho",
      "title": "Update 'DualEndpoint' class model components with regard to DLT and biomarker correlation.",
      "topics": [
        "h_model_dual_endpoint_rho"
      ]
    },
    {
      "page": "h_model_dual_endpoint_sigma2betaw",
      "title": "Update certain components of 'DualEndpoint' model with regard to prior variance factor of the random walk.",
      "topics": [
        "h_model_dual_endpoint_sigma2betaw"
      ]
    },
    {
      "page": "h_model_dual_endpoint_sigma2w",
      "title": "Update 'DualEndpoint' class model components with regard to biomarker regression variance.",
      "topics": [
        "h_model_dual_endpoint_sigma2w"
      ]
    },
    {
      "page": "h_next_best_eligible_doses",
      "title": "Get Eligible Doses from the Dose Grid.",
      "topics": [
        "h_next_best_eligible_doses"
      ]
    },
    {
      "page": "h_next_best_mg_ci",
      "title": "Credibility Intervals for Max Gain and Target Doses at 'nextBest-NextBestMaxGain' Method.",
      "topics": [
        "h_next_best_mg_ci"
      ]
    },
    {
      "page": "h_next_best_mg_doses_at_grid",
      "title": "Get Closest Grid Doses for a Given Target Doses for 'nextBest-NextBestMaxGain' Method.",
      "topics": [
        "h_next_best_mg_doses_at_grid"
      ]
    },
    {
      "page": "h_next_best_mg_plot",
      "title": "Building the Plot for 'nextBest-NextBestMaxGain' Method.",
      "topics": [
        "h_next_best_mg_plot"
      ]
    },
    {
      "page": "h_next_best_mgsamples_plot",
      "title": "Building the Plot for 'nextBest-NextBestMaxGainSamples' Method.",
      "topics": [
        "h_next_best_mgsamples_plot"
      ]
    },
    {
      "page": "h_next_best_ncrm_loss_plot",
      "title": "Building the Plot for 'nextBest-NextBestNCRMLoss' Method.",
      "topics": [
        "h_next_best_ncrm_loss_plot"
      ]
    },
    {
      "page": "h_next_best_td_plot",
      "title": "Building the Plot for 'nextBest-NextBestTD' Method.",
      "topics": [
        "h_next_best_td_plot"
      ]
    },
    {
      "page": "h_next_best_tdsamples_plot",
      "title": "Building the Plot for 'nextBest-NextBestTDsamples' Method.",
      "topics": [
        "h_next_best_tdsamples_plot"
      ]
    },
    {
      "page": "h_null_if_na",
      "title": "Getting 'NULL' for 'NA'",
      "topics": [
        "h_null_if_na"
      ]
    },
    {
      "page": "h_obtain_dose_grid_range",
      "title": "Helper Function Containing Common Functionality",
      "topics": [
        "h_obtain_dose_grid_range"
      ]
    },
    {
      "page": "h_plot_data_cohort_lines",
      "title": "Preparing Cohort Lines for Data Plot",
      "topics": [
        "h_plot_data_cohort_lines"
      ]
    },
    {
      "page": "plot-Data",
      "title": "Helper Function for the Plot Method of the Data and DataOrdinal Classes",
      "topics": [
        "h_plot_data_dataordinal",
        "plot,Data,missing-method",
        "plot,DataOrdinal,missing-method",
        "plot-Data"
      ]
    },
    {
      "page": "h_plot_data_df",
      "title": "Preparing Data for Plotting",
      "topics": [
        "h_plot_data_df",
        "h_plot_data_df,Data-method",
        "h_plot_data_df,DataOrdinal-method"
      ]
    },
    {
      "page": "h_rapply",
      "title": "Recursively Apply a Function to a List",
      "topics": [
        "h_rapply"
      ]
    },
    {
      "page": "h_slots",
      "title": "Getting the Slots from a S4 Object",
      "topics": [
        "h_slots"
      ]
    },
    {
      "page": "h_summarize_add_stats",
      "title": "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",
      "topics": [
        "h_summarize_add_stats"
      ]
    },
    {
      "page": "h_test_named_numeric",
      "title": "Check that an argument is a named vector of type numeric",
      "topics": [
        "h_test_named_numeric"
      ]
    },
    {
      "page": "h_unpack_stopit",
      "title": "Helper function to recursively unpack stopping rules and return lists with logical value and label given",
      "topics": [
        "h_unpack_stopit"
      ]
    },
    {
      "page": "h_validate_combine_results",
      "title": "Combining S4 Class Validation Results",
      "topics": [
        "h_validate_combine_results"
      ]
    },
    {
      "page": "h_validate_common_data_slots",
      "title": "Helper Function performing validation Common to Data and DataOrdinal",
      "topics": [
        "h_validate_common_data_slots"
      ]
    },
    {
      "page": "Increments-class",
      "title": "'Increments'",
      "topics": [
        ".DefaultIncrements",
        "Increments",
        "Increments-class"
      ]
    },
    {
      "page": "IncrementsDoseLevels-class",
      "title": "'IncrementsDoseLevels'",
      "topics": [
        ".DefaultIncrementsDoseLevels",
        ".IncrementsDoseLevels",
        "IncrementsDoseLevels",
        "IncrementsDoseLevels-class"
      ]
    },
    {
      "page": "IncrementsHSRBeta-class",
      "title": "'IncrementsHSRBeta'",
      "topics": [
        ".DefaultIncrementsHSRBeta",
        ".IncrementsHSRBeta",
        "IncrementsHSRBeta",
        "IncrementsHSRBeta-class"
      ]
    },
    {
      "page": "IncrementsMaxToxProb-class",
      "title": "'IncrementsMaxToxProb'",
      "topics": [
        ".DefaultIncrementsMaxToxProb",
        ".IncrementsMaxToxProb",
        "IncrementsMaxToxProb",
        "IncrementsMaxToxProb-class"
      ]
    },
    {
      "page": "IncrementsMin-class",
      "title": "'IncrementsMin'",
      "topics": [
        ".DefaultIncrementsMin",
        ".IncrementsMin",
        "IncrementsMin",
        "IncrementsMin-class"
      ]
    },
    {
      "page": "IncrementsOrdinal-class",
      "title": "'IncrementsOrdinal'",
      "topics": [
        ".DefaultIncrementsOrdinal",
        ".IncrementsOrdinal",
        "IncrementsOrdinal",
        "IncrementsOrdinal-class"
      ]
    },
    {
      "page": "IncrementsRelative-class",
      "title": "'IncrementsRelative'",
      "topics": [
        ".DefaultIncrementsRelative",
        ".IncrementsRelative",
        "IncrementsRelative",
        "IncrementsRelative-class"
      ]
    },
    {
      "page": "IncrementsRelativeDLT-class",
      "title": "'IncrementsRelativeDLT'",
      "topics": [
        ".DefaultIncrementsRelativeDLT",
        ".IncrementsRelativeDLT",
        "IncrementsRelativeDLT",
        "IncrementsRelativeDLT-class"
      ]
    },
    {
      "page": "IncrementsRelativeDLTCurrent-class",
      "title": "'IncrementsRelativeDLTCurrent'",
      "topics": [
        ".DefaultIncrementsRelativeDLTCurrent",
        ".IncrementsRelativeDLTCurrent",
        "IncrementsRelativeDLTCurrent",
        "IncrementsRelativeDLTCurrent-class"
      ]
    },
    {
      "page": "IncrementsRelativeParts-class",
      "title": "'IncrementsRelativeParts'",
      "topics": [
        ".DefaultIncrementsRelativeParts",
        ".IncrementsRelativeParts",
        "IncrementsRelativeParts",
        "IncrementsRelativeParts-class"
      ]
    },
    {
      "page": "knit_print",
      "title": "Render a 'CohortSizeConst' Object",
      "topics": [
        "knit_print",
        "knit_print.Backfill",
        "knit_print.CohortSizeConst",
        "knit_print.CohortSizeDLT",
        "knit_print.CohortSizeMax",
        "knit_print.CohortSizeMin",
        "knit_print.CohortSizeOrdinal",
        "knit_print.CohortSizeParts",
        "knit_print.CohortSizeRandom",
        "knit_print.CohortSizeRange",
        "knit_print.DADesign",
        "knit_print.DataParts",
        "knit_print.Design",
        "knit_print.DesignGrouped",
        "knit_print.DesignOrdinal",
        "knit_print.DualDesign",
        "knit_print.DualEndpoint",
        "knit_print.DualResponsesDesign",
        "knit_print.DualResponsesSamplesDesign",
        "knit_print.Effloglog",
        "knit_print.GeneralData",
        "knit_print.GeneralModel",
        "knit_print.IncrementsDoseLevels",
        "knit_print.IncrementsHSRBeta",
        "knit_print.IncrementsMin",
        "knit_print.IncrementsOrdinal",
        "knit_print.IncrementsRelative",
        "knit_print.IncrementsRelativeDLT",
        "knit_print.IncrementsRelativeDLTCurrent",
        "knit_print.IncrementsRelativeParts",
        "knit_print.LogisticIndepBeta",
        "knit_print.LogisticKadane",
        "knit_print.LogisticKadaneBetaGamma",
        "knit_print.LogisticLogNormal",
        "knit_print.LogisticLogNormalGrouped",
        "knit_print.LogisticLogNormalMixture",
        "knit_print.LogisticLogNormalOrdinal",
        "knit_print.LogisticLogNormalSub",
        "knit_print.LogisticNormalFixedMixture",
        "knit_print.LogisticNormalMixture",
        "knit_print.ModelParamsNormal",
        "knit_print.NextBestDualEndpoint",
        "knit_print.NextBestInfTheory",
        "knit_print.NextBestMaxGain",
        "knit_print.NextBestMaxGainSamples",
        "knit_print.NextBestMinDist",
        "knit_print.NextBestMTD",
        "knit_print.NextBestNCRM",
        "knit_print.NextBestNCRMLoss",
        "knit_print.NextBestOrdinal",
        "knit_print.NextBestProbMTDLTE",
        "knit_print.NextBestProbMTDMinDist",
        "knit_print.NextBestTD",
        "knit_print.NextBestTDsamples",
        "knit_print.NextBestThreePlusThree",
        "knit_print.OneParExpPrior",
        "knit_print.OneParLogNormalPrior",
        "knit_print.OpeningAll",
        "knit_print.OpeningAny",
        "knit_print.OpeningList",
        "knit_print.OpeningMinCohorts",
        "knit_print.OpeningMinDose",
        "knit_print.OpeningMinResponses",
        "knit_print.OpeningNone",
        "knit_print.RecruitmentRatio",
        "knit_print.RecruitmentUnlimited",
        "knit_print.RuleDesign",
        "knit_print.RuleDesignOrdinal",
        "knit_print.SafetyWindow",
        "knit_print.SafetyWindowConst",
        "knit_print.SafetyWindowSize",
        "knit_print.StartingDose",
        "knit_print.StoppingAll",
        "knit_print.StoppingAny",
        "knit_print.StoppingCohortsNearDose",
        "knit_print.StoppingHighestDose",
        "knit_print.StoppingList",
        "knit_print.StoppingLowestDoseHSRBeta",
        "knit_print.StoppingMaxGainCIRatio",
        "knit_print.StoppingMinCohorts",
        "knit_print.StoppingMinPatients",
        "knit_print.StoppingMissingDose",
        "knit_print.StoppingMTDCV",
        "knit_print.StoppingMTDdistribution",
        "knit_print.StoppingOrdinal",
        "knit_print.StoppingPatientsNearDose",
        "knit_print.StoppingSpecificDose",
        "knit_print.StoppingTargetBiomarker",
        "knit_print.StoppingTargetProb",
        "knit_print.StoppingTDCIRatio",
        "knit_print.TDDesign",
        "knit_print.TDsamplesDesign"
      ]
    },
    {
      "page": "LogisticIndepBeta-class",
      "title": "'LogisticIndepBeta'",
      "topics": [
        ".DefaultLogisticIndepBeta",
        ".LogisticIndepBeta",
        "LogisticIndepBeta",
        "LogisticIndepBeta-class"
      ]
    },
    {
      "page": "LogisticKadane-class",
      "title": "'LogisticKadane'",
      "topics": [
        ".DefaultLogisticKadane",
        ".LogisticKadane",
        "LogisticKadane",
        "LogisticKadane-class"
      ]
    },
    {
      "page": "LogisticKadaneBetaGamma-class",
      "title": "'LogisticKadaneBetaGamma'",
      "topics": [
        ".DefaultLogisticKadaneBetaGamma",
        ".LogisticKadaneBetaGamma",
        "LogisticKadaneBetaGamma",
        "LogisticKadaneBetaGamma-class"
      ]
    },
    {
      "page": "LogisticLogNormal-class",
      "title": "'LogisticLogNormal'",
      "topics": [
        ".DefaultLogisticLogNormal",
        ".LogisticLogNormal",
        "LogisticLogNormal",
        "LogisticLogNormal-class"
      ]
    },
    {
      "page": "LogisticLogNormalGrouped-class",
      "title": "'LogisticLogNormalGrouped'",
      "topics": [
        ".DefaultLogisticLogNormalGrouped",
        ".LogisticLogNormalGrouped",
        "LogisticLogNormalGrouped",
        "LogisticLogNormalGrouped-class"
      ]
    },
    {
      "page": "LogisticLogNormalMixture-class",
      "title": "'LogisticLogNormalMixture'",
      "topics": [
        ".DefaultLogisticLogNormalMixture",
        ".LogisticLogNormalMixture",
        "LogisticLogNormalMixture",
        "LogisticLogNormalMixture-class"
      ]
    },
    {
      "page": "LogisticLogNormalOrdinal-class",
      "title": "'LogisticLogNormalOrdinal'",
      "topics": [
        ".DefaultLogisticLogNormalOrdinal",
        ".LogisticLogNormalOrdinal",
        "LogisticLogNormalOrdinal",
        "LogisticLogNormalOrdinal-class"
      ]
    },
    {
      "page": "LogisticLogNormalSub-class",
      "title": "'LogisticLogNormalSub'",
      "topics": [
        ".DefaultLogisticLogNormalSub",
        ".LogisticLogNormalSub",
        "LogisticLogNormalSub",
        "LogisticLogNormalSub-class"
      ]
    },
    {
      "page": "LogisticNormal-class",
      "title": "'LogisticNormal'",
      "topics": [
        ".DefaultLogisticNormal",
        ".LogisticNormal",
        "LogisticNormal",
        "LogisticNormal-class"
      ]
    },
    {
      "page": "LogisticNormalFixedMixture-class",
      "title": "'LogisticNormalFixedMixture'",
      "topics": [
        ".DefaultLogisticNormalFixedMixture",
        ".LogisticNormalFixedMixture",
        "LogisticNormalFixedMixture",
        "LogisticNormalFixedMixture-class"
      ]
    },
    {
      "page": "LogisticNormalMixture-class",
      "title": "'LogisticNormalMixture'",
      "topics": [
        ".DefaultLogisticNormalMixture",
        ".LogisticNormalMixture",
        "LogisticNormalMixture",
        "LogisticNormalMixture-class"
      ]
    },
    {
      "page": "logit",
      "title": "Shorthand for Logit Function",
      "topics": [
        "logit"
      ]
    },
    {
      "page": "match_within_tolerance",
      "title": "Helper Function for Value Matching with Tolerance",
      "topics": [
        "match_within_tolerance"
      ]
    },
    {
      "page": "maxDose",
      "title": "Determine the Maximum Possible Next Dose",
      "topics": [
        "maxDose",
        "maxDose,IncrementsDoseLevels,Data-method",
        "maxDose,IncrementsHSRBeta,Data-method",
        "maxDose,IncrementsMaxToxProb,Data-method",
        "maxDose,IncrementsMaxToxProb,DataOrdinal-method",
        "maxDose,IncrementsMin,Data-method",
        "maxDose,IncrementsMin,DataOrdinal-method",
        "maxDose,IncrementsOrdinal,DataOrdinal-method",
        "maxDose,IncrementsRelative,Data-method",
        "maxDose,IncrementsRelativeDLT,Data-method",
        "maxDose,IncrementsRelativeDLTCurrent,Data-method",
        "maxDose,IncrementsRelativeParts,DataParts-method",
        "maxDose-IncrementsDoseLevels",
        "maxDose-IncrementsHSRBeta",
        "maxDose-IncrementsMaxToxProb",
        "maxDose-IncrementsMin",
        "maxDose-IncrementsOrdinal",
        "maxDose-IncrementsRelative",
        "maxDose-IncrementsRelativeDLT",
        "maxDose-IncrementsRelativeDLTCurrent",
        "maxDose-IncrementsRelativeParts"
      ]
    },
    {
      "page": "maxRecruits",
      "title": "Calculate Maximum Number of Backfill Patients",
      "topics": [
        "maxRecruits",
        "maxRecruits,RecruitmentRatio-method",
        "maxRecruits,RecruitmentUnlimited-method",
        "maxRecruits-RecruitmentRatio",
        "maxRecruits-RecruitmentUnlimited"
      ]
    },
    {
      "page": "maxSize",
      "title": "\"MAX\" Combination of Cohort Size Rules",
      "topics": [
        "maxSize",
        "maxSize,CohortSize-method",
        "maxSize-CohortSize"
      ]
    },
    {
      "page": "mcmc",
      "title": "Obtaining Posterior Samples for all Model Parameters",
      "topics": [
        "mcmc",
        "mcmc,Data,LogisticIndepBeta,McmcOptions-method",
        "mcmc,DataDual,EffFlexi,McmcOptions-method",
        "mcmc,DataDual,Effloglog,McmcOptions-method",
        "mcmc,DataMixture,GeneralModel,McmcOptions-method",
        "mcmc,DataOrdinal,LogisticLogNormalOrdinal,McmcOptions-method",
        "mcmc,GeneralData,DualEndpointBeta,McmcOptions-method",
        "mcmc,GeneralData,DualEndpointEmax,McmcOptions-method",
        "mcmc,GeneralData,DualEndpointRW,McmcOptions-method",
        "mcmc,GeneralData,GeneralModel,McmcOptions-method",
        "mcmc,GeneralData,OneParExpPrior,McmcOptions-method",
        "mcmc,GeneralData,OneParLogNormalPrior,McmcOptions-method",
        "mcmc-Data-LogisticIndepBeta",
        "mcmc-DataDual-EffFlexi",
        "mcmc-DataDual-Effloglog",
        "mcmc-DataMixture",
        "mcmc-DataOrdinal-LogisticLogNormalOrdinal",
        "mcmc-GeneralData",
        "mcmc-GeneralData-DualEndpointBeta",
        "mcmc-GeneralData-DualEndpointEmax",
        "mcmc-GeneralData-DualEndpointRW",
        "mcmc-GeneralData-OneParExpPrior",
        "mcmc-GeneralData-OneParLogNormalPrior"
      ]
    },
    {
      "page": "McmcOptions-class",
      "title": "'McmcOptions'",
      "topics": [
        ".DefaultMcmcOptions",
        ".McmcOptions",
        "McmcOptions",
        "McmcOptions-class"
      ]
    },
    {
      "page": "MinimalInformative",
      "title": "Construct a Minimally Informative Prior",
      "topics": [
        "MinimalInformative"
      ]
    },
    {
      "page": "minSize",
      "title": "\"MIN\" Combination of Cohort Size Rules",
      "topics": [
        "minSize",
        "minSize,CohortSize-method",
        "minSize-CohortSize"
      ]
    },
    {
      "page": "ModelEff-class",
      "title": "'ModelEff'",
      "topics": [
        ".DefaultModelEff",
        ".ModelEff",
        "ModelEff",
        "ModelEff-class"
      ]
    },
    {
      "page": "ModelLogNormal-class",
      "title": "'ModelLogNormal'",
      "topics": [
        ".DefaultModelLogNormal",
        ".ModelLogNormal",
        "ModelLogNormal",
        "ModelLogNormal-class"
      ]
    },
    {
      "page": "ModelParamsNormal-class",
      "title": "'ModelParamsNormal'",
      "topics": [
        ".DefaultModelParamsNormal",
        ".ModelParamsNormal",
        "ModelParamsNormal",
        "ModelParamsNormal-class"
      ]
    },
    {
      "page": "ModelPseudo-class",
      "title": "'ModelPseudo'",
      "topics": [
        ".DefaultModelPseudo",
        ".ModelPseudo",
        "ModelPseudo",
        "ModelPseudo-class"
      ]
    },
    {
      "page": "ModelTox-class",
      "title": "'ModelTox'",
      "topics": [
        ".DefaultModelTox",
        ".ModelTox",
        "ModelTox",
        "ModelTox-class"
      ]
    },
    {
      "page": "names-Samples-method",
      "title": "The Names of the Sampled Parameters",
      "topics": [
        "names,Samples-method",
        "names-Samples"
      ]
    },
    {
      "page": "nextBest",
      "title": "Finding the Next Best Dose",
      "topics": [
        "nextBest",
        "nextBest,NextBestDualEndpoint,numeric,Samples,DualEndpoint,Data-method",
        "nextBest,NextBestEWOC,numeric,Samples,GeneralModel,Data-method",
        "nextBest,NextBestInfTheory,numeric,Samples,GeneralModel,Data-method",
        "nextBest,NextBestMaxGain,numeric,missing,ModelTox,DataDual-method",
        "nextBest,NextBestMaxGainSamples,numeric,Samples,ModelTox,DataDual-method",
        "nextBest,NextBestMinDist,numeric,Samples,GeneralModel,Data-method",
        "nextBest,NextBestMTD,numeric,Samples,GeneralModel,Data-method",
        "nextBest,NextBestNCRM,numeric,Samples,GeneralModel,Data-method",
        "nextBest,NextBestNCRM,numeric,Samples,GeneralModel,DataParts-method",
        "nextBest,NextBestNCRMLoss,numeric,Samples,GeneralModel,Data-method",
        "nextBest,NextBestOrdinal,numeric,Samples,GeneralModel,Data-method",
        "nextBest,NextBestOrdinal,numeric,Samples,LogisticLogNormalOrdinal,DataOrdinal-method",
        "nextBest,NextBestProbMTDLTE,numeric,Samples,GeneralModel,Data-method",
        "nextBest,NextBestProbMTDMinDist,numeric,Samples,GeneralModel,Data-method",
        "nextBest,NextBestTD,numeric,missing,LogisticIndepBeta,Data-method",
        "nextBest,NextBestTDsamples,numeric,Samples,LogisticIndepBeta,Data-method",
        "nextBest,NextBestThreePlusThree,missing,missing,missing,Data-method",
        "nextBest-NextBestDualEndpoint",
        "nextBest-NextBestEWOC",
        "nextBest-NextBestInfTheory",
        "nextBest-NextBestMaxGain",
        "nextBest-NextBestMaxGainSamples",
        "nextBest-NextBestMinDist",
        "nextBest-NextBestMTD",
        "nextBest-NextBestNCRM",
        "nextBest-NextBestNCRM-DataParts",
        "nextBest-NextBestNCRMLoss",
        "nextBest-NextBestOrdinal",
        "nextBest-NextBestProbMTDLTE",
        "nextBest-NextBestProbMTDMinDist",
        "nextBest-NextBestTD",
        "nextBest-NextBestTDsamples",
        "nextBest-NextBestThreePlusThree"
      ]
    },
    {
      "page": "NextBest-class",
      "title": "'NextBest'",
      "topics": [
        ".DefaultNextBest",
        "NextBest",
        "NextBest-class"
      ]
    },
    {
      "page": "NextBestDualEndpoint-class",
      "title": "'NextBestDualEndpoint'",
      "topics": [
        ".DefaultNextBestDualEndpoint",
        ".NextBestDualEndpoint",
        "NextBestDualEndpoint",
        "NextBestDualEndpoint-class"
      ]
    },
    {
      "page": "NextBestEWOC-class",
      "title": "'NextBestEWOC'",
      "topics": [
        ".DefaultNextBestEWOC",
        ".NextBestEWOC",
        "NextBestEWOC",
        "NextBestEWOC-class"
      ]
    },
    {
      "page": "NextBestInfTheory-class",
      "title": "'NextBestInfTheory'",
      "topics": [
        ".DefaultNextBestInfTheory",
        ".NextBestInfTheory",
        "NextBestInfTheory",
        "NextBestInfTheory-class"
      ]
    },
    {
      "page": "NextBestMaxGain-class",
      "title": "'NextBestMaxGain'",
      "topics": [
        ".DefaultNextBestMaxGain",
        ".NextBestMaxGain",
        "NextBestMaxGain",
        "NextBestMaxGain-class"
      ]
    },
    {
      "page": "NextBestMaxGainSamples-class",
      "title": "'NextBestMaxGainSamples'",
      "topics": [
        ".DefaultNextBestMaxGainSamples",
        ".NextBestMaxGainSamples",
        "NextBestMaxGainSamples",
        "NextBestMaxGainSamples-class"
      ]
    },
    {
      "page": "NextBestMinDist-class",
      "title": "'NextBestMinDist'",
      "topics": [
        ".DefaultNextBestMinDist",
        ".NextBestMinDist",
        "NextBestMinDist",
        "NextBestMinDist-class"
      ]
    },
    {
      "page": "NextBestMTD-class",
      "title": "'NextBestMTD'",
      "topics": [
        ".DefaultNextBestMTD",
        ".NextBestMTD",
        "NextBestMTD",
        "NextBestMTD-class"
      ]
    },
    {
      "page": "NextBestNCRM-class",
      "title": "'NextBestNCRM'",
      "topics": [
        ".DefaultNextBestNCRM",
        ".NextBestNCRM",
        "NextBestNCRM",
        "NextBestNCRM-class"
      ]
    },
    {
      "page": "NextBestNCRMLoss-class",
      "title": "'NextBestNCRMLoss'",
      "topics": [
        ".DefaultNextBestNCRMLoss",
        ".NextBestNCRMLoss",
        "NextBestNCRMLoss",
        "NextBestNCRMLoss-class"
      ]
    },
    {
      "page": "NextBestOrdinal-class",
      "title": "'NextBestOrdinal'",
      "topics": [
        ".DefaultNextBestOrdinal",
        ".NextBestOrdinal",
        "NextBestOrdinal",
        "NextBestOrdinal-class"
      ]
    },
    {
      "page": "NextBestProbMTDLTE-class",
      "title": "'NextBestProbMTDLTE'",
      "topics": [
        ".DefaultNextBestProbMTDLTE",
        ".NextBestProbMTDLTE",
        "NextBestProbMTDLTE",
        "NextBestProbMTDLTE-class"
      ]
    },
    {
      "page": "NextBestProbMTDMinDist-class",
      "title": "'NextBestProbMTDMinDist'",
      "topics": [
        ".DefaultNextBestProbMTDMinDist",
        ".NextBestProbMTDMinDist",
        "NextBestProbMTDMinDist",
        "NextBestProbMTDMinDist-class"
      ]
    },
    {
      "page": "NextBestTD-class",
      "title": "'NextBestTD'",
      "topics": [
        ".DefaultNextBestTD",
        ".NextBestTD",
        "NextBestTD",
        "NextBestTD-class"
      ]
    },
    {
      "page": "NextBestTDsamples-class",
      "title": "'NextBestTDsamples'",
      "topics": [
        ".DefaultNextBestTDsamples",
        ".NextBestTDsamples",
        "NextBestTDsamples",
        "NextBestTDsamples-class"
      ]
    },
    {
      "page": "NextBestThreePlusThree-class",
      "title": "'NextBestThreePlusThree'",
      "topics": [
        ".DefaultNextBestThreePlusThree",
        ".NextBestThreePlusThree",
        "NextBestThreePlusThree",
        "NextBestThreePlusThree-class"
      ]
    },
    {
      "page": "ngrid",
      "title": "Number of Doses in Grid",
      "topics": [
        "ngrid",
        "ngrid,Data-method",
        "ngrid-Data"
      ]
    },
    {
      "page": "OneParExpPrior-class",
      "title": "'OneParExpPrior'",
      "topics": [
        ".DefaultOneParExpPrior",
        ".OneParExpPrior",
        "OneParExpPrior",
        "OneParExpPrior-class"
      ]
    },
    {
      "page": "OneParLogNormalPrior-class",
      "title": "'OneParLogNormalPrior'",
      "topics": [
        ".DefaultOneParLogNormalPrior",
        ".OneParLogNormalPrior",
        "OneParLogNormalPrior",
        "OneParLogNormalPrior-class"
      ]
    },
    {
      "page": "openCohort",
      "title": "Open / recruit backfill patients into a cohort?",
      "topics": [
        "openCohort",
        "openCohort,OpeningAll-method",
        "openCohort,OpeningAny-method",
        "openCohort,OpeningList-method",
        "openCohort,OpeningMinCohorts-method",
        "openCohort,OpeningMinDose-method",
        "openCohort,OpeningMinResponses-method",
        "openCohort,OpeningNone-method",
        "openCohort-OpeningAll",
        "openCohort-OpeningAny",
        "openCohort-OpeningList",
        "openCohort-OpeningMinCohorts",
        "openCohort-OpeningMinDose",
        "openCohort-OpeningMinResponses",
        "openCohort-OpeningNone"
      ]
    },
    {
      "page": "Opening-class",
      "title": "'Opening'",
      "topics": [
        ".DefaultOpening",
        ".Opening",
        "Opening",
        "Opening-class"
      ]
    },
    {
      "page": "OpeningAll-class",
      "title": "'OpeningAll'",
      "topics": [
        ".DefaultOpeningAll",
        ".OpeningAll",
        "OpeningAll",
        "OpeningAll-class"
      ]
    },
    {
      "page": "OpeningAny-class",
      "title": "'OpeningAny'",
      "topics": [
        ".DefaultOpeningAny",
        ".OpeningAny",
        "OpeningAny",
        "OpeningAny-class"
      ]
    },
    {
      "page": "OpeningList-class",
      "title": "'OpeningList'",
      "topics": [
        ".DefaultOpeningList",
        ".OpeningList",
        "OpeningList",
        "OpeningList-class"
      ]
    },
    {
      "page": "OpeningMinCohorts-class",
      "title": "'OpeningMinCohorts'",
      "topics": [
        ".DefaultOpeningMinCohorts",
        ".OpeningMinCohorts",
        "OpeningMinCohorts",
        "OpeningMinCohorts-class"
      ]
    },
    {
      "page": "OpeningMinDose-class",
      "title": "'OpeningMinDose'",
      "topics": [
        ".DefaultOpeningMinDose",
        ".OpeningMinDose",
        "OpeningMinDose",
        "OpeningMinDose-class"
      ]
    },
    {
      "page": "OpeningMinResponses-class",
      "title": "'OpeningMinResponses'",
      "topics": [
        ".DefaultOpeningMinResponses",
        ".OpeningMinResponses",
        "OpeningMinResponses",
        "OpeningMinResponses-class"
      ]
    },
    {
      "page": "OpeningNone-class",
      "title": "'OpeningNone'",
      "topics": [
        ".DefaultOpeningNone",
        ".OpeningNone",
        "OpeningNone",
        "OpeningNone-class"
      ]
    },
    {
      "page": "or-Stopping-Stopping",
      "title": "Combine Two Stopping Rules with OR",
      "topics": [
        "or-Stopping-Stopping",
        "|,Stopping,Stopping-method"
      ]
    },
    {
      "page": "or-Stopping-StoppingAny",
      "title": "Combine an Atomic Stopping Rule and a Stopping List with OR",
      "topics": [
        "or-Stopping-StoppingAny",
        "|,Stopping,StoppingAny-method"
      ]
    },
    {
      "page": "or-StoppingAny-Stopping",
      "title": "Combine a Stopping List and an Atomic Stopping Rule with OR",
      "topics": [
        "or-StoppingAny-Stopping",
        "|,StoppingAny,Stopping-method"
      ]
    },
    {
      "page": "or-Opening-Opening-method",
      "title": "Logical OR Operator for Opening Objects",
      "topics": [
        "or,Opening,Opening-method",
        "|,Opening,Opening-method"
      ]
    },
    {
      "page": "plot-Data-ModelTox-method",
      "title": "Plot of the fitted dose-tox based with a given pseudo DLE model and data without samples",
      "topics": [
        "plot,Data,ModelTox-method"
      ]
    },
    {
      "page": "plot-DataDA-missing-method",
      "title": "Plot Method for the 'DataDA' Class",
      "topics": [
        "plot,DataDA,missing-method",
        "plot-DataDA"
      ]
    },
    {
      "page": "plot-DataDual-missing-method",
      "title": "Plot Method for the 'DataDual' Class",
      "topics": [
        "plot,DataDual,missing-method",
        "plot-DataDual"
      ]
    },
    {
      "page": "plot-DataDual-ModelEff-method",
      "title": "Plot of the fitted dose-efficacy based with a given pseudo efficacy model and data without samples",
      "topics": [
        "plot,DataDual,ModelEff-method"
      ]
    },
    {
      "page": "plot-DualSimulations-missing-method",
      "title": "Plot 'DualSimulations'",
      "topics": [
        "plot,DualSimulations,missing-method",
        "plot-DualSimulations-missing"
      ]
    },
    {
      "page": "plot-DualSimulationsSummary-missing-method",
      "title": "Plot Dual-Endpoint Design Simulation Summary",
      "topics": [
        "plot,DualSimulationsSummary,missing-method",
        "plot-DualSimulationsSummary-missing"
      ]
    },
    {
      "page": "plot-GeneralSimulations-missing-method",
      "title": "Plot 'GeneralSimulations'",
      "topics": [
        "plot,GeneralSimulations,missing-method",
        "plot-GeneralSimulations-missing"
      ]
    },
    {
      "page": "plot-GeneralSimulationsSummary-missing-method",
      "title": "Plot 'GeneralSimulationsSummary'",
      "topics": [
        "plot,GeneralSimulationsSummary,missing-method",
        "plot-GeneralSimulationsSummary-missing"
      ]
    },
    {
      "page": "plot-PseudoDualFlexiSimulations-missing-method",
      "title": "Plot 'PseudoDualFlexiSimulations'",
      "topics": [
        "plot,PseudoDualFlexiSimulations,missing-method",
        "plot-PseudoDualFlexiSimulations-missing"
      ]
    },
    {
      "page": "plot-PseudoDualSimulations-missing-method",
      "title": "Plot 'PseudoDualSimulations'",
      "topics": [
        "plot,PseudoDualSimulations,missing-method",
        "plot-PseudoDualSimulations-missing"
      ]
    },
    {
      "page": "plot-PseudoDualSimulationsSummary-missing-method",
      "title": "Plot 'PseudoDualSimulationsSummary'",
      "topics": [
        "plot,PseudoDualSimulationsSummary,missing-method",
        "plot-PseudoDualSimulationsSummary-missing"
      ]
    },
    {
      "page": "plot-PseudoSimulationsSummary-missing-method",
      "title": "Plot 'PseudoSimulationsSummary'",
      "topics": [
        "plot,PseudoSimulationsSummary,missing-method",
        "plot-PseudoSimulationsSummary-missing"
      ]
    },
    {
      "page": "plot-Samples-DALogisticLogNormal-method",
      "title": "Plotting dose-toxicity model fits",
      "topics": [
        "plot,Samples,DALogisticLogNormal-method"
      ]
    },
    {
      "page": "plot-Samples-DualEndpoint-method",
      "title": "Plotting dose-toxicity and dose-biomarker model fits",
      "topics": [
        "plot,Samples,DualEndpoint-method"
      ]
    },
    {
      "page": "plot-Samples-GeneralModel-method",
      "title": "Plotting dose-toxicity model fits",
      "topics": [
        "plot,Samples,GeneralModel-method"
      ]
    },
    {
      "page": "plot-Samples-ModelEff-method",
      "title": "Plot the fitted dose-efficacy curve using a model from 'ModelEff' class with samples",
      "topics": [
        "plot,Samples,ModelEff-method"
      ]
    },
    {
      "page": "plot-Samples-ModelTox-method",
      "title": "Plot the fitted dose-DLE curve using a 'ModelTox' class model with samples",
      "topics": [
        "plot,Samples,ModelTox-method"
      ]
    },
    {
      "page": "plot-SimulationsSummary-missing-method",
      "title": "Plot Model-Based Design Simulation Summary",
      "topics": [
        "plot,SimulationsSummary,missing-method",
        "plot-SimulationsSummary-missing"
      ]
    },
    {
      "page": "plot.gtable",
      "title": "Plot 'gtable' Objects",
      "topics": [
        "plot.gtable",
        "print.gtable"
      ]
    },
    {
      "page": "plotDualResponses",
      "title": "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",
      "topics": [
        "plotDualResponses",
        "plotDualResponses,ModelTox,missing,ModelEff,missing-method",
        "plotDualResponses,ModelTox,Samples,ModelEff,Samples-method"
      ]
    },
    {
      "page": "plotGain",
      "title": "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",
      "topics": [
        "plotGain",
        "plotGain,ModelTox,missing,ModelEff,missing-method",
        "plotGain,ModelTox,Samples,ModelEff,Samples-method"
      ]
    },
    {
      "page": "positive_number",
      "title": "'positive_number'",
      "topics": [
        "positive_number"
      ]
    },
    {
      "page": "prob",
      "title": "Computing Toxicity Probabilities for a Given Dose, Model and Samples",
      "topics": [
        "prob",
        "prob,numeric,DualEndpoint,Samples-method",
        "prob,numeric,LogisticIndepBeta,missing-method",
        "prob,numeric,LogisticIndepBeta,Samples-method",
        "prob,numeric,LogisticKadane,Samples-method",
        "prob,numeric,LogisticKadaneBetaGamma,Samples-method",
        "prob,numeric,LogisticLogNormal,Samples-method",
        "prob,numeric,LogisticLogNormalGrouped,Samples-method",
        "prob,numeric,LogisticLogNormalMixture,Samples-method",
        "prob,numeric,LogisticLogNormalOrdinal,Samples-method",
        "prob,numeric,LogisticLogNormalSub,Samples-method",
        "prob,numeric,LogisticNormal,Samples-method",
        "prob,numeric,LogisticNormalFixedMixture,Samples-method",
        "prob,numeric,LogisticNormalMixture,Samples-method",
        "prob,numeric,OneParExpPrior,Samples-method",
        "prob,numeric,OneParLogNormalPrior,Samples-method",
        "prob,numeric,ProbitLogNormal,Samples-method",
        "prob,numeric,ProbitLogNormalRel,Samples-method",
        "prob-DualEndpoint",
        "prob-LogisticIndepBeta",
        "prob-LogisticIndepBeta-noSamples",
        "prob-LogisticKadane",
        "prob-LogisticKadaneBetaGamma",
        "prob-LogisticLogNormal",
        "prob-LogisticLogNormalGrouped",
        "prob-LogisticLogNormalMixture",
        "prob-LogisticLogNormalOrdinal",
        "prob-LogisticLogNormalSub",
        "prob-LogisticNormal",
        "prob-LogisticNormalFixedMixture",
        "prob-LogisticNormalMixture",
        "prob-OneParExpPrior",
        "prob-OneParLogNormalPrior",
        "prob-ProbitLogNormal",
        "prob-ProbitLogNormalRel"
      ]
    },
    {
      "page": "probFunction",
      "title": "Getting the Prob Function for a Given Model Type",
      "topics": [
        "probFunction",
        "probFunction,GeneralModel-method",
        "probFunction,LogisticLogNormalOrdinal-method",
        "probFunction,ModelTox-method",
        "probFunction-GeneralModel",
        "probFunction-LogisticLogNormalOrdinal",
        "probFunction-ModelTox"
      ]
    },
    {
      "page": "probit",
      "title": "Shorthand for Probit Function",
      "topics": [
        "probit"
      ]
    },
    {
      "page": "ProbitLogNormal-class",
      "title": "'ProbitLogNormal'",
      "topics": [
        ".DefaultProbitLogNormal",
        ".ProbitLogNormal",
        "ProbitLogNormal",
        "ProbitLogNormal-class",
        "ProbitLogNormalLogDose"
      ]
    },
    {
      "page": "ProbitLogNormalRel-class",
      "title": "'ProbitLogNormalRel'",
      "topics": [
        ".DefaultProbitLogNormalRel",
        ".ProbitLogNormalRel",
        "ProbitLogNormalRel",
        "ProbitLogNormalRel-class"
      ]
    },
    {
      "page": "PseudoDualFlexiSimulations-class",
      "title": "'PseudoDualFlexiSimulations'",
      "topics": [
        ".DefaultPseudoDualFlexiSimulations",
        ".PseudoDualFlexiSimulations",
        "PseudoDualFlexiSimulations",
        "PseudoDualFlexiSimulations-class"
      ]
    },
    {
      "page": "PseudoDualSimulations-class",
      "title": "'PseudoDualSimulations'",
      "topics": [
        ".DefaultPseudoDualSimulations",
        ".PseudoDualSimulations",
        "PseudoDualSimulations",
        "PseudoDualSimulations-class"
      ]
    },
    {
      "page": "PseudoDualSimulationsSummary-class",
      "title": "'PseudoDualSimulationsSummary'",
      "topics": [
        ".DefaultPseudoDualSimulationsSummary",
        ".PseudoDualSimulationsSummary",
        "PseudoDualSimulationsSummary",
        "PseudoDualSimulationsSummary-class"
      ]
    },
    {
      "page": "PseudoSimulations-class",
      "title": "'PseudoSimulations'",
      "topics": [
        ".DefaultPseudoSimulations",
        ".PseudoSimulations",
        "PseudoSimulations",
        "PseudoSimulations-class"
      ]
    },
    {
      "page": "PseudoSimulationsSummary-class",
      "title": "'PseudoSimulationsSummary'",
      "topics": [
        ".DefaultPseudoSimulationsSummary",
        ".PseudoSimulationsSummary",
        "PseudoSimulationsSummary",
        "PseudoSimulationsSummary-class"
      ]
    },
    {
      "page": "Quantiles2LogisticNormal",
      "title": "Convert Prior Quantiles to Logistic (Log) Normal Model",
      "topics": [
        "Quantiles2LogisticNormal"
      ]
    },
    {
      "page": "Recruitment-class",
      "title": "'Recruitment'",
      "topics": [
        ".DefaultRecruitment",
        ".Recruitment",
        "Recruitment",
        "Recruitment-class"
      ]
    },
    {
      "page": "RecruitmentRatio-class",
      "title": "'RecruitmentRatio'",
      "topics": [
        ".DefaultRecruitmentRatio",
        ".RecruitmentRatio",
        "RecruitmentRatio",
        "RecruitmentRatio-class"
      ]
    },
    {
      "page": "RecruitmentUnlimited-class",
      "title": "'RecruitmentUnlimited'",
      "topics": [
        ".DefaultRecruitmentUnlimited",
        ".RecruitmentUnlimited",
        "RecruitmentUnlimited",
        "RecruitmentUnlimited-class"
      ]
    },
    {
      "page": "RuleDesign-class",
      "title": "'RuleDesign'",
      "topics": [
        ".DefaultRuleDesign",
        ".RuleDesign",
        "RuleDesign",
        "RuleDesign-class",
        "ThreePlusThreeDesign"
      ]
    },
    {
      "page": "RuleDesignOrdinal-class",
      "title": "'RuleDesignOrdinal'",
      "topics": [
        ".DefaultRuleDesignOrdinal",
        ".RuleDesignOrdinal",
        "RuleDesignOrdinal",
        "RuleDesignOrdinal-class"
      ]
    },
    {
      "page": "SafetyWindow-class",
      "title": "'SafetyWindow'",
      "topics": [
        ".DefaultSafetyWindow",
        "SafetyWindow",
        "SafetyWindow-class"
      ]
    },
    {
      "page": "SafetyWindowConst-class",
      "title": "'SafetyWindowConst'",
      "topics": [
        ".DefaultSafetyWindowConst",
        ".SafetyWindowConst",
        "SafetyWindowConst",
        "SafetyWindowConst-class"
      ]
    },
    {
      "page": "SafetyWindowSize-class",
      "title": "'SafetyWindowSize'",
      "topics": [
        ".DefaultSafetyWindowSize",
        ".SafetyWindowSize",
        "SafetyWindowSize",
        "SafetyWindowSize-class"
      ]
    },
    {
      "page": "Samples-class",
      "title": "'Samples'",
      "topics": [
        ".DefaultSamples",
        ".Samples",
        "Samples",
        "Samples-class"
      ]
    },
    {
      "page": "saveSample",
      "title": "Determining if this Sample Should be Saved",
      "topics": [
        "saveSample",
        "saveSample,McmcOptions-method",
        "saveSample-McmcOptions"
      ]
    },
    {
      "page": "set_seed",
      "title": "Helper Function to Set and Save the RNG Seed",
      "topics": [
        "set_seed"
      ]
    },
    {
      "page": "show-DualSimulationsSummary-method",
      "title": "Show the Summary of Dual-Endpoint Simulations",
      "topics": [
        "show,DualSimulationsSummary-method",
        "show-DualSimulationsSummary"
      ]
    },
    {
      "page": "show-GeneralSimulations-method",
      "title": "Show 'Simulations' Objects",
      "topics": [
        "show,GeneralSimulations-method",
        "show-GeneralSimulations"
      ]
    },
    {
      "page": "show-GeneralSimulationsSummary-method",
      "title": "Show the Summary of the Simulations",
      "topics": [
        "show,GeneralSimulationsSummary-method",
        "show-GeneralSimulationsSummary"
      ]
    },
    {
      "page": "show-PseudoDualSimulationsSummary-method",
      "title": "Show the Summary of 'PseudoDualSimulations'",
      "topics": [
        "show,PseudoDualSimulationsSummary-method",
        "show-PseudoDualSimulationsSummary"
      ]
    },
    {
      "page": "show-PseudoSimulationsSummary-method",
      "title": "Show the Summary of 'PseudoSimulations'",
      "topics": [
        "show,PseudoSimulationsSummary-method",
        "show-PseudoSimulationsSummary"
      ]
    },
    {
      "page": "show-SimulationsSummary-method",
      "title": "Show the Summary of Model-Based Design Simulations",
      "topics": [
        "show,SimulationsSummary-method",
        "show-SimulationsSummary"
      ]
    },
    {
      "page": "simulate-DADesign-method",
      "title": "Simulate outcomes from a time-to-DLT augmented CRM design",
      "topics": [
        "simulate,DADesign-method"
      ]
    },
    {
      "page": "simulate-Design-method",
      "title": "Simulate outcomes from a CRM design",
      "topics": [
        "simulate,Design-method"
      ]
    },
    {
      "page": "simulate-DesignGrouped-method",
      "title": "Simulate Method for the 'DesignGrouped' Class",
      "topics": [
        "simulate,DesignGrouped-method",
        "simulate-DesignGrouped"
      ]
    },
    {
      "page": "simulate-DualDesign-method",
      "title": "Simulate outcomes from a dual-endpoint design",
      "topics": [
        "simulate,DualDesign-method"
      ]
    },
    {
      "page": "simulate-DualResponsesDesign-method",
      "title": "Simulate dose escalation procedure using both DLE and efficacy responses without samples",
      "topics": [
        "simulate,DualResponsesDesign-method"
      ]
    },
    {
      "page": "simulate-DualResponsesSamplesDesign-method",
      "title": "Simulate dose escalation procedure using DLE and efficacy responses with samples",
      "topics": [
        "simulate,DualResponsesSamplesDesign-method"
      ]
    },
    {
      "page": "simulate-RuleDesign-method",
      "title": "Simulate outcomes from a rule-based design",
      "topics": [
        "simulate,RuleDesign-method"
      ]
    },
    {
      "page": "simulate-TDDesign-method",
      "title": "Simulate dose escalation procedure using DLE responses only without samples",
      "topics": [
        "simulate,TDDesign-method"
      ]
    },
    {
      "page": "simulate-TDsamplesDesign-method",
      "title": "Simulate dose escalation procedure using DLE responses only with DLE samples",
      "topics": [
        "simulate,TDsamplesDesign-method"
      ]
    },
    {
      "page": "Simulations-class",
      "title": "'Simulations'",
      "topics": [
        ".DefaultSimulations",
        ".Simulations",
        "Simulations",
        "Simulations-class"
      ]
    },
    {
      "page": "SimulationsSummary-class",
      "title": "'SimulationsSummary'",
      "topics": [
        ".DefaultSimulationsSummary",
        ".SimulationsSummary",
        "SimulationsSummary",
        "SimulationsSummary-class"
      ]
    },
    {
      "page": "size",
      "title": "Size of an Object",
      "topics": [
        "size",
        "size,CohortSizeConst-method",
        "size,CohortSizeDLT-method",
        "size,CohortSizeMax-method",
        "size,CohortSizeMin-method",
        "size,CohortSizeOrdinal-method",
        "size,CohortSizeParts-method",
        "size,CohortSizeRandom-method",
        "size,CohortSizeRange-method",
        "size,McmcOptions-method",
        "size,Samples-method",
        "size-CohortSizeConst",
        "size-CohortSizeDLT",
        "size-CohortSizeMax",
        "size-CohortSizeMin",
        "size-CohortSizeOrdinal",
        "size-CohortSizeParts",
        "size-CohortSizeRandom",
        "size-CohortSizeRange",
        "size-McmcOptions",
        "size-Samples"
      ]
    },
    {
      "page": "Stopping-class",
      "title": "'Stopping'",
      "topics": [
        "Stopping",
        "Stopping-class"
      ]
    },
    {
      "page": "StoppingAll-class",
      "title": "'StoppingAll'",
      "topics": [
        ".DefaultStoppingAll",
        ".StoppingAll",
        "StoppingAll",
        "StoppingAll-class"
      ]
    },
    {
      "page": "StoppingAny-class",
      "title": "'StoppingAny'",
      "topics": [
        ".DefaultStoppingAny",
        ".StoppingAny",
        "StoppingAny",
        "StoppingAny-class"
      ]
    },
    {
      "page": "StoppingCohortsNearDose-class",
      "title": "'StoppingCohortsNearDose'",
      "topics": [
        ".DefaultStoppingCohortsNearDose",
        ".StoppingCohortsNearDose",
        "StoppingCohortsNearDose",
        "StoppingCohortsNearDose-class"
      ]
    },
    {
      "page": "StoppingExternal-class",
      "title": "'StoppingExternal'",
      "topics": [
        ".DefaultStoppingExternal",
        ".StoppingExternal",
        "StoppingExternal",
        "StoppingExternal-class"
      ]
    },
    {
      "page": "StoppingHighestDose-class",
      "title": "'StoppingHighestDose'",
      "topics": [
        ".DefaultStoppingHighestDose",
        ".StoppingHighestDose",
        "StoppingHighestDose",
        "StoppingHighestDose-class"
      ]
    },
    {
      "page": "StoppingList-class",
      "title": "'StoppingList'",
      "topics": [
        ".DefaultStoppingList",
        ".StoppingList",
        "StoppingList",
        "StoppingList-class"
      ]
    },
    {
      "page": "StoppingLowestDoseHSRBeta-class",
      "title": "'StoppingLowestDoseHSRBeta'",
      "topics": [
        ".DefaultStoppingLowestDoseHSRBeta",
        ".StoppingLowestDoseHSRBeta",
        "StoppingLowestDoseHSRBeta",
        "StoppingLowestDoseHSRBeta-class"
      ]
    },
    {
      "page": "StoppingMaxGainCIRatio-class",
      "title": "'StoppingMaxGainCIRatio'",
      "topics": [
        ".DefaultStoppingMaxGainCIRatio",
        ".StoppingMaxGainCIRatio",
        "StoppingMaxGainCIRatio",
        "StoppingMaxGainCIRatio-class"
      ]
    },
    {
      "page": "StoppingMinCohorts-class",
      "title": "'StoppingMinCohorts'",
      "topics": [
        ".DefaultStoppingMinCohorts",
        ".StoppingMinCohorts",
        "StoppingMinCohorts",
        "StoppingMinCohorts-class"
      ]
    },
    {
      "page": "StoppingMinPatients-class",
      "title": "'StoppingMinPatients'",
      "topics": [
        ".DefaultStoppingMinPatients",
        ".StoppingMinPatients",
        "StoppingMinPatients",
        "StoppingMinPatients-class"
      ]
    },
    {
      "page": "StoppingMissingDose-class",
      "title": "'StoppingMissingDose'",
      "topics": [
        ".DefaultStoppingMissingDose",
        ".StoppingMissingDose",
        "StoppingMissingDose",
        "StoppingMissingDose-class"
      ]
    },
    {
      "page": "StoppingMTDCV-class",
      "title": "'StoppingMTDCV'",
      "topics": [
        ".DefaultStoppingMTDCV",
        ".StoppingMTDCV",
        "StoppingMTDCV",
        "StoppingMTDCV-class"
      ]
    },
    {
      "page": "StoppingMTDdistribution-class",
      "title": "'StoppingMTDdistribution'",
      "topics": [
        ".DefaultStoppingMTDdistribution",
        ".StoppingMTDdistribution",
        "StoppingMTDdistribution",
        "StoppingMTDdistribution-class"
      ]
    },
    {
      "page": "StoppingOrdinal-class",
      "title": "'StoppingOrdinal'",
      "topics": [
        ".DefaultStoppingOrdinal",
        ".StoppingOrdinal",
        "StoppingOrdinal",
        "StoppingOrdinal-class"
      ]
    },
    {
      "page": "StoppingPatientsNearDose-class",
      "title": "'StoppingPatientsNearDose'",
      "topics": [
        ".DefaultStoppingPatientsNearDose",
        ".StoppingPatientsNearDose",
        "StoppingPatientsNearDose",
        "StoppingPatientsNearDose-class"
      ]
    },
    {
      "page": "StoppingSpecificDose-class",
      "title": "'StoppingSpecificDose'",
      "topics": [
        ".DefaultStoppingSpecificDose",
        ".StoppingSpecificDose",
        "StoppingSpecificDose",
        "StoppingSpecificDose-class"
      ]
    },
    {
      "page": "StoppingTargetBiomarker-class",
      "title": "'StoppingTargetBiomarker'",
      "topics": [
        ".DefaultStoppingTargetBiomarker",
        ".StoppingTargetBiomarker",
        "StoppingTargetBiomarker",
        "StoppingTargetBiomarker-class"
      ]
    },
    {
      "page": "StoppingTargetProb-class",
      "title": "'StoppingTargetProb'",
      "topics": [
        ".DefaultStoppingTargetProb",
        ".StoppingTargetProb",
        "StoppingTargetProb",
        "StoppingTargetProb-class"
      ]
    },
    {
      "page": "StoppingTDCIRatio-class",
      "title": "'StoppingTDCIRatio'",
      "topics": [
        ".DefaultStoppingTDCIRatio",
        ".StoppingTDCIRatio",
        "StoppingTDCIRatio",
        "StoppingTDCIRatio-class"
      ]
    },
    {
      "page": "stopTrial",
      "title": "Stop the trial?",
      "topics": [
        "stopTrial",
        "stopTrial,StoppingAll,ANY,ANY,ANY,ANY-method",
        "stopTrial,StoppingAny,ANY,ANY,ANY,ANY-method",
        "stopTrial,StoppingCohortsNearDose,numeric,ANY,ANY,Data-method",
        "stopTrial,StoppingExternal,numeric,ANY,ANY,ANY-method",
        "stopTrial,StoppingHighestDose,numeric,ANY,ANY,Data-method",
        "stopTrial,StoppingList,ANY,ANY,ANY,ANY-method",
        "stopTrial,StoppingLowestDoseHSRBeta,numeric,Samples,ANY,ANY-method",
        "stopTrial,StoppingMaxGainCIRatio,ANY,missing,ModelTox,DataDual-method",
        "stopTrial,StoppingMaxGainCIRatio,ANY,Samples,ModelTox,DataDual-method",
        "stopTrial,StoppingMinCohorts,ANY,ANY,ANY,Data-method",
        "stopTrial,StoppingMinPatients,ANY,ANY,ANY,Data-method",
        "stopTrial,StoppingMissingDose,numeric,ANY,ANY,Data-method",
        "stopTrial,StoppingMTDCV,numeric,Samples,GeneralModel,ANY-method",
        "stopTrial,StoppingMTDdistribution,numeric,Samples,GeneralModel,ANY-method",
        "stopTrial,StoppingOrdinal,numeric,ANY,ANY,ANY-method",
        "stopTrial,StoppingOrdinal,numeric,ANY,LogisticLogNormalOrdinal,DataOrdinal-method",
        "stopTrial,StoppingPatientsNearDose,numeric,ANY,ANY,Data-method",
        "stopTrial,StoppingSpecificDose,numeric,ANY,ANY,Data-method",
        "stopTrial,StoppingTargetBiomarker,numeric,Samples,DualEndpoint,ANY-method",
        "stopTrial,StoppingTargetProb,numeric,Samples,GeneralModel,ANY-method",
        "stopTrial,StoppingTDCIRatio,ANY,missing,ModelTox,ANY-method",
        "stopTrial,StoppingTDCIRatio,ANY,Samples,ModelTox,ANY-method",
        "stopTrial-StoppingAll",
        "stopTrial-StoppingAny",
        "stopTrial-StoppingCohortsNearDose",
        "stopTrial-StoppingExternal",
        "stopTrial-StoppingHighestDose",
        "stopTrial-StoppingList",
        "stopTrial-StoppingLowestDoseHSRBeta",
        "stopTrial-StoppingMaxGainCIRatio",
        "stopTrial-StoppingMinCohorts",
        "stopTrial-StoppingMinPatients",
        "stopTrial-StoppingMissingDose",
        "stopTrial-StoppingMTDCV",
        "stopTrial-StoppingMTDdistribution",
        "stopTrial-StoppingOrdinal",
        "stopTrial-StoppingPatientsNearDose",
        "stopTrial-StoppingSpecificDose",
        "stopTrial-StoppingTargetBiomarker",
        "stopTrial-StoppingTargetProb",
        "stopTrial-StoppingTDCIRatio"
      ]
    },
    {
      "page": "subset-Data",
      "title": "Subsetting Operator for the Data Class",
      "topics": [
        "subset-Data",
        "[,Data,logical,missing,missing-method",
        "[,Data,numeric,missing,missing-method"
      ]
    },
    {
      "page": "summary-DualSimulations-method",
      "title": "Summarize Dual-Endpoint Design Simulations",
      "topics": [
        "summary,DualSimulations-method",
        "summary-DualSimulations"
      ]
    },
    {
      "page": "summary-GeneralSimulations-method",
      "title": "Summarize the 'GeneralSimulations', Relative to a Given Truth",
      "topics": [
        "summary,GeneralSimulations-method",
        "summary-GeneralSimulations"
      ]
    },
    {
      "page": "summary-PseudoDualFlexiSimulations-method",
      "title": "Summarize 'PseudoDualFlexiSimulations'",
      "topics": [
        "summary,PseudoDualFlexiSimulations-method",
        "summary-PseudoDualFlexiSimulations"
      ]
    },
    {
      "page": "summary-PseudoDualSimulations-method",
      "title": "Summarize 'PseudoDualSimulations'",
      "topics": [
        "summary,PseudoDualSimulations-method",
        "summary-PseudoDualSimulations"
      ]
    },
    {
      "page": "summary-PseudoSimulations-method",
      "title": "Summarize 'PseudoSimulations'",
      "topics": [
        "summary,PseudoSimulations-method",
        "summary-PseudoSimulations"
      ]
    },
    {
      "page": "summary-Simulations-method",
      "title": "Summarize Model-Based Design Simulations",
      "topics": [
        "summary,Simulations-method",
        "summary-Simulations"
      ]
    },
    {
      "page": "TDDesign-class",
      "title": "'TDDesign'",
      "topics": [
        ".DefaultTDDesign",
        ".TDDesign",
        "TDDesign",
        "TDDesign-class"
      ]
    },
    {
      "page": "TDsamplesDesign-class",
      "title": "'TDsamplesDesign'",
      "topics": [
        ".DefaultTDsamplesDesign",
        ".TDsamplesDesign",
        "TDsamplesDesign",
        "TDsamplesDesign-class"
      ]
    },
    {
      "page": "tidy",
      "title": "Tidying 'CrmPackClass' objects",
      "topics": [
        "tidy",
        "tidy,CohortSizeDLT-method",
        "tidy,CohortSizeMax-method",
        "tidy,CohortSizeMin-method",
        "tidy,CohortSizeParts-method",
        "tidy,CohortSizeRange-method",
        "tidy,CrmPackClass-method",
        "tidy,Data-method",
        "tidy,DataDA-method",
        "tidy,DataDual-method",
        "tidy,DataGrouped-method",
        "tidy,DataMixture-method",
        "tidy,DataOrdinal-method",
        "tidy,DataParts-method",
        "tidy,DualDesign-method",
        "tidy,Effloglog-method",
        "tidy,GeneralData-method",
        "tidy,IncrementsMaxToxProb-method",
        "tidy,IncrementsMin-method",
        "tidy,IncrementsRelative-method",
        "tidy,IncrementsRelativeDLT-method",
        "tidy,IncrementsRelativeParts-method",
        "tidy,LogisticIndepBeta-method",
        "tidy,NextBestNCRM-method",
        "tidy,NextBestNCRMLoss-method",
        "tidy,Samples-method",
        "tidy,Simulations-method",
        "tidy-CohortSizeDLT",
        "tidy-CohortSizeMax",
        "tidy-CohortSizeMin",
        "tidy-CohortSizeParts",
        "tidy-CohortSizeRange",
        "tidy-CrmPackClass",
        "tidy-Data",
        "tidy-DataDA",
        "tidy-DataDual",
        "tidy-DataGrouped",
        "tidy-DataMixture",
        "tidy-DataOrdinal",
        "tidy-DataParts",
        "tidy-DualDesign",
        "tidy-Effloglog",
        "tidy-GeneralData",
        "tidy-IncrementsMaxToxProb",
        "tidy-IncrementsMin",
        "tidy-IncrementsRelative",
        "tidy-IncrementsRelativeDLT",
        "tidy-IncrementsRelativeParts",
        "tidy-LogisticIndepBeta",
        "tidy-NextBestNCRM",
        "tidy-NextBestNCRMLoss",
        "tidy-Samples",
        "tidy-Simulations"
      ]
    },
    {
      "page": "TITELogisticLogNormal-class",
      "title": "'TITELogisticLogNormal'",
      "topics": [
        ".DefaultTITELogisticLogNormal",
        ".TITELogisticLogNormal",
        "TITELogisticLogNormal",
        "TITELogisticLogNormal-class"
      ]
    },
    {
      "page": "update-Data-method",
      "title": "Updating 'Data' Objects",
      "topics": [
        "update,Data-method",
        "update-Data"
      ]
    },
    {
      "page": "update-DataDA-method",
      "title": "Updating 'DataDA' Objects",
      "topics": [
        "update,DataDA-method",
        "update-DataDA"
      ]
    },
    {
      "page": "update-DataDual-method",
      "title": "Updating 'DataDual' Objects",
      "topics": [
        "update,DataDual-method",
        "update-DataDual"
      ]
    },
    {
      "page": "update-DataOrdinal-method",
      "title": "Updating 'DataOrdinal' Objects",
      "topics": [
        "update,DataOrdinal-method",
        "update-DataOrdinal"
      ]
    },
    {
      "page": "update-DataParts-method",
      "title": "Updating 'DataParts' Objects",
      "topics": [
        "update,DataParts-method",
        "update-DataParts"
      ]
    },
    {
      "page": "update-ModelPseudo-method",
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      "date": "2026-06-02T18:59:57.000Z",
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    }
  ]
}