| ICA.BinBin | Assess surrogacy in the causal-inference single-trial setting in the binary-binary case | 
| ICA.BinBin.CounterAssum | ICA (binary-binary setting) that is obtaied when the counterfactual correlations are assumed to fall within some prespecified ranges. | 
| ICA.BinBin.Grid.Full | Assess surrogacy in the causal-inference single-trial setting in the binary-binary case when monotonicity for S and T is assumed using the full grid-based approach | 
| ICA.BinBin.Grid.Sample | Assess surrogacy in the causal-inference single-trial setting in the binary-binary case when monotonicity for S and T is assumed using the grid-based sample approach | 
| ICA.BinBin.Grid.Sample.Uncert | Assess surrogacy in the causal-inference single-trial setting in the binary-binary case when monotonicity for S and T is assumed using the grid-based sample approach, accounting for sampling variability in the marginal pi. | 
| ICA.BinCont | Assess surrogacy in the causal-inference single-trial setting in the binary-continuous case | 
| ICA.ContCont | Assess surrogacy in the causal-inference single-trial setting (Individual Causal Association, ICA) in the Continuous-continuous case | 
| ICA.ContCont.MultS | Assess surrogacy in the causal-inference single-trial setting (Individual Causal Association, ICA) using a continuous univariate T and multiple continuous S | 
| ICA.ContCont.MultS.MPC | Assess surrogacy in the causal-inference single-trial setting (Individual Causal Association, ICA) using a continuous univariate T and multiple continuous S, by simulating correlation matrices using a modified algorithm based on partial correlations | 
| ICA.ContCont.MultS.PC | Assess surrogacy in the causal-inference single-trial setting (Individual Causal Association, ICA) using a continuous univariate T and multiple continuous S, by simulating correlation matrices using an algorithm based on partial correlations | 
| ICA.ContCont.MultS_alt | Assess surrogacy in the causal-inference single-trial setting (Individual Causal Association, ICA) using a continuous univariate T and multiple continuous S, alternative approach | 
| ICA.Sample.ContCont | Assess surrogacy in the causal-inference single-trial setting (Individual Causal Association, ICA) in the Continuous-continuous case using the grid-based sample approach | 
| ISTE.ContCont | Individual-level surrogate threshold effect for continuous normally distributed surrogate and true endpoints. | 
| plot Causal-Inference BinBin | Plots the (Meta-Analytic) Individual Causal Association and related metrics when S and T are binary outcomes | 
| plot Causal-Inference BinCont | Plots the (Meta-Analytic) Individual Causal Association and related metrics when S is continuous and T is binary | 
| plot Causal-Inference ContCont | Plots the (Meta-Analytic) Individual Causal Association when S and T are continuous outcomes | 
| plot FixedDiscrDiscrIT | Provides plots of trial-level surrogacy in the Information-Theoretic framework | 
| plot Information-Theoretic | Provides plots of trial- and individual-level surrogacy in the Information-Theoretic framework | 
| plot Information-Theoretic BinCombn | Provides plots of trial- and individual-level surrogacy in the Information-Theoretic framework when both S and T are binary, or when S is binary and T is continuous (or vice versa) | 
| plot ISTE.ContCont | Plots the individual-level surrogate threshold effect (STE) values and related metrics | 
| plot MaxEnt ContCont | Plots the sensitivity-based and maximum entropy based Individual Causal Association when S and T are continuous outcomes in the single-trial setting | 
| plot MaxEntICA BinBin | Plots the sensitivity-based and maximum entropy based Individual Causal Association when S and T are binary outcomes | 
| plot MaxEntSPF BinBin | Plots the sensitivity-based and maximum entropy based surrogate predictive function (SPF) when S and T are binary outcomes. | 
| plot Meta-Analytic | Provides plots of trial- and individual-level surrogacy in the meta-analytic framework | 
| plot MinSurrContCont | Graphically illustrates the theoretical plausibility of finding a good surrogate endpoint in the continuous-continuous case | 
| plot PredTrialTContCont | Plots the expected treatment effect on the true endpoint in a new trial (when both S and T are normally distributed continuous endpoints) | 
| plot SPF BinBin | Plots the surrogate predictive function (SPF) in the binary-binary settinf. | 
| plot SPF BinCont | Plots the surrogate predictive function (SPF) in the binary-continuous setting. | 
| plot.BifixedContCont | Provides plots of trial- and individual-level surrogacy in the meta-analytic framework | 
| plot.BimixedContCont | Provides plots of trial- and individual-level surrogacy in the meta-analytic framework | 
| plot.comb27.BinBin | Plots the distribution of prediction error functions in decreasing order of appearance. | 
| plot.Fano.BinBin | Plots the distribution of R^2_{HL} either as a density or as function of pi_{10} in the setting where both S and T are binary endpoints | 
| plot.FixedBinBinIT | Provides plots of trial- and individual-level surrogacy in the Information-Theoretic framework when both S and T are binary, or when S is binary and T is continuous (or vice versa) | 
| plot.FixedBinContIT | Provides plots of trial- and individual-level surrogacy in the Information-Theoretic framework when both S and T are binary, or when S is binary and T is continuous (or vice versa) | 
| plot.FixedContBinIT | Provides plots of trial- and individual-level surrogacy in the Information-Theoretic framework when both S and T are binary, or when S is binary and T is continuous (or vice versa) | 
| plot.FixedContContIT | Provides plots of trial- and individual-level surrogacy in the Information-Theoretic framework | 
| plot.FixedDiscrDiscrIT | Provides plots of trial-level surrogacy in the Information-Theoretic framework | 
| plot.ICA.BinBin | Plots the (Meta-Analytic) Individual Causal Association and related metrics when S and T are binary outcomes | 
| plot.ICA.BinCont | Plots the (Meta-Analytic) Individual Causal Association and related metrics when S is continuous and T is binary | 
| plot.ICA.ContCont | Plots the (Meta-Analytic) Individual Causal Association when S and T are continuous outcomes | 
| plot.ICA.ContCont.MultS | Plots the Individual Causal Association in the setting where there are multiple continuous S and a continuous T | 
| plot.ICA.ContCont.MultS_alt | Plots the Individual Causal Association in the setting where there are multiple continuous S and a continuous T | 
| plot.ISTE.ContCont | Plots the individual-level surrogate threshold effect (STE) values and related metrics | 
| plot.MaxEntContCont | Plots the sensitivity-based and maximum entropy based Individual Causal Association when S and T are continuous outcomes in the single-trial setting | 
| plot.MaxEntICA.BinBin | Plots the sensitivity-based and maximum entropy based Individual Causal Association when S and T are binary outcomes | 
| plot.MaxEntSPF.BinBin | Plots the sensitivity-based and maximum entropy based surrogate predictive function (SPF) when S and T are binary outcomes. | 
| plot.MICA.ContCont | Plots the (Meta-Analytic) Individual Causal Association when S and T are continuous outcomes | 
| plot.MinSurrContCont | Graphically illustrates the theoretical plausibility of finding a good surrogate endpoint in the continuous-continuous case | 
| plot.MixedContContIT | Provides plots of trial- and individual-level surrogacy in the Information-Theoretic framework | 
| plot.PPE.BinBin | Plots the distribution of either PPE, RPE or R^2_{H} either as a density or as a histogram in the setting where both S and T are binary endpoints | 
| plot.PredTrialTContCont | Plots the expected treatment effect on the true endpoint in a new trial (when both S and T are normally distributed continuous endpoints) | 
| plot.Single.Trial.RE.AA | Conducts a surrogacy analysis based on the single-trial meta-analytic framework | 
| plot.SPF.BinBin | Plots the surrogate predictive function (SPF) in the binary-binary settinf. | 
| plot.SPF.BinCont | Plots the surrogate predictive function (SPF) in the binary-continuous setting. | 
| plot.SurvSurv | Provides plots of trial- and individual-level surrogacy in the Information-Theoretic framework when both S and T are time-to-event endpoints | 
| plot.TrialLevelIT | Provides a plots of trial-level surrogacy in the information-theoretic framework based on the output of the 'TrialLevelIT()' function | 
| plot.TrialLevelMA | Provides a plots of trial-level surrogacy in the meta-analytic framework based on the output of the 'TrialLevelMA()' function | 
| plot.TwoStageSurvSurv | Plots trial-level surrogacy in the meta-analytic framework when two survival endpoints are considered. | 
| plot.UnifixedContCont | Provides plots of trial- and individual-level surrogacy in the meta-analytic framework | 
| plot.UnimixedContCont | Provides plots of trial- and individual-level surrogacy in the meta-analytic framework | 
| Pos.Def.Matrices | Generate 4 by 4 correlation matrices and flag the positive definite ones | 
| PPE.BinBin | Evaluate a surrogate predictive value based on the minimum probability of a prediction error in the setting where both S and T are binary endpoints | 
| Pred.TrialT.ContCont | Compute the expected treatment effect on the true endpoint in a new trial (when both S and T are normally distributed continuous endpoints) | 
| Prentice | Evaluates surrogacy based on the Prentice criteria for continuous endpoints (single-trial setting) | 
| PROC.BinBin | Evaluate the individual causal association (ICA) and reduction in probability of a prediction error (RPE) in the setting where both S and T are binary endpoints | 
| Schizo | Data of five clinical trials in schizophrenia | 
| Schizo_Bin | Data of a clinical trial in Schizophrenia (with binary outcomes). | 
| Schizo_BinCont | Data of a clinical trial in schizophrenia, with binary and continuous endpoints | 
| Schizo_PANSS | Longitudinal PANSS data of five clinical trials in schizophrenia | 
| Sim.Data.Counterfactuals | Simulate a dataset that contains counterfactuals | 
| Sim.Data.CounterfactualsBinBin | Simulate a dataset that contains counterfactuals for binary endpoints | 
| Sim.Data.MTS | Simulates a dataset that can be used to assess surrogacy in the multiple-trial setting | 
| Sim.Data.STS | Simulates a dataset that can be used to assess surrogacy in the single-trial setting | 
| Sim.Data.STSBinBin | Simulates a dataset that can be used to assess surrogacy in the single trial setting when S and T are binary endpoints | 
| Single.Trial.RE.AA | Conducts a surrogacy analysis based on the single-trial meta-analytic framework | 
| SPF.BinBin | Evaluate the surrogate predictive function (SPF) in the binary-binary setting (sensitivity-analysis based approach) | 
| SPF.BinCont | Evaluate the surrogate predictive function (SPF) in the binary-continuous setting (sensitivity-analysis based approach) | 
| SurvSurv | Assess surrogacy for two survival endpoints based on information theory and a two-stage approach |