| getDesignOneSlope {lrstat} | R Documentation |
Group sequential design for one-sample slope
Description
Obtains the power given sample size or obtains the sample size given power for a group sequential design for one-sample slope.
Usage
getDesignOneSlope(
beta = NA_real_,
n = NA_real_,
slopeH0 = 0,
slope = 0.5,
stDev = 1,
stDevCovariate = 1,
normalApproximation = TRUE,
rounding = TRUE,
kMax = 1L,
informationRates = NA_real_,
efficacyStopping = NA_integer_,
futilityStopping = NA_integer_,
criticalValues = NA_real_,
alpha = 0.025,
typeAlphaSpending = "sfOF",
parameterAlphaSpending = NA_real_,
userAlphaSpending = NA_real_,
futilityBounds = NA_real_,
typeBetaSpending = "none",
parameterBetaSpending = NA_real_,
userBetaSpending = NA_real_,
spendingTime = NA_real_
)
Arguments
beta |
The type II error. |
n |
The total sample size. |
slopeH0 |
The slope under the null hypothesis. Defaults to 0. |
slope |
The slope under the alternative hypothesis. |
stDev |
The standard deviation of the residual. |
stDevCovariate |
The standard deviation of the covariate. |
normalApproximation |
The type of computation of the p-values.
If |
rounding |
Whether to round up sample size. Defaults to 1 for sample size rounding. |
kMax |
The maximum number of stages. |
informationRates |
The information rates. Fixed prior to the trial.
Defaults to |
efficacyStopping |
Indicators of whether efficacy stopping is allowed at each stage. Defaults to true if left unspecified. |
futilityStopping |
Indicators of whether futility stopping is allowed at each stage. Defaults to true if left unspecified. |
criticalValues |
Upper boundaries on the z-test statistic scale for stopping for efficacy. |
alpha |
The significance level. Defaults to 0.025. |
typeAlphaSpending |
The type of alpha spending. One of the following: "OF" for O'Brien-Fleming boundaries, "P" for Pocock boundaries, "WT" for Wang & Tsiatis boundaries, "sfOF" for O'Brien-Fleming type spending function, "sfP" for Pocock type spending function, "sfKD" for Kim & DeMets spending function, "sfHSD" for Hwang, Shi & DeCani spending function, "user" for user defined spending, and "none" for no early efficacy stopping. Defaults to "sfOF". |
parameterAlphaSpending |
The parameter value for the alpha spending. Corresponds to Delta for "WT", rho for "sfKD", and gamma for "sfHSD". |
userAlphaSpending |
The user defined alpha spending. Cumulative alpha spent up to each stage. |
futilityBounds |
Lower boundaries on the z-test statistic scale
for stopping for futility at stages 1, ..., |
typeBetaSpending |
The type of beta spending. One of the following: "sfOF" for O'Brien-Fleming type spending function, "sfP" for Pocock type spending function, "sfKD" for Kim & DeMets spending function, "sfHSD" for Hwang, Shi & DeCani spending function, "user" for user defined spending, and "none" for no early futility stopping. Defaults to "none". |
parameterBetaSpending |
The parameter value for the beta spending. Corresponds to rho for "sfKD", and gamma for "sfHSD". |
userBetaSpending |
The user defined beta spending. Cumulative beta spent up to each stage. |
spendingTime |
A vector of length |
Value
An S3 class designOneSlope object with three components:
-
overallResults: A data frame containing the following variables:-
overallReject: The overall rejection probability. -
alpha: The overall significance level. -
attainedAlpha: The attained significance level, which is different from the overall significance level in the presence of futility stopping. -
kMax: The number of stages. -
theta: The parameter value. -
information: The maximum information. -
expectedInformationH1: The expected information under H1. -
expectedInformationH0: The expected information under H0. -
drift: The drift parameter, equal totheta*sqrt(information). -
inflationFactor: The inflation factor (relative to the fixed design). -
numberOfSubjects: The maximum number of subjects. -
expectedNumberOfSubjectsH1: The expected number of subjects under H1. -
expectedNumberOfSubjectsH0: The expected number of subjects under H0. -
slopeH0: The slope under the null hypothesis. -
slope: The slope under the alternative hypothesis. -
stDev: The standard deviation of the residual. -
stDevCovariate: The standard deviation of the covariate.
-
-
byStageResults: A data frame containing the following variables:-
informationRates: The information rates. -
efficacyBounds: The efficacy boundaries on the Z-scale. -
futilityBounds: The futility boundaries on the Z-scale. -
rejectPerStage: The probability for efficacy stopping. -
futilityPerStage: The probability for futility stopping. -
cumulativeRejection: The cumulative probability for efficacy stopping. -
cumulativeFutility: The cumulative probability for futility stopping. -
cumulativeAlphaSpent: The cumulative alpha spent. -
efficacyP: The efficacy boundaries on the p-value scale. -
futilityP: The futility boundaries on the p-value scale. -
information: The cumulative information. -
efficacyStopping: Whether to allow efficacy stopping. -
futilityStopping: Whether to allow futility stopping. -
rejectPerStageH0: The probability for efficacy stopping under H0. -
futilityPerStageH0: The probability for futility stopping under H0. -
cumulativeRejectionH0: The cumulative probability for efficacy stopping under H0. -
cumulativeFutilityH0: The cumulative probability for futility stopping under H0. -
efficacySlope: The efficacy boundaries on the slope scale. -
futilitySlope: The futility boundaries on the slope scale. -
numberOfSubjects: The number of subjects.
-
-
settings: A list containing the following input parameters:-
typeAlphaSpending: The type of alpha spending. -
parameterAlphaSpending: The parameter value for alpha spending. -
userAlphaSpending: The user defined alpha spending. -
typeBetaSpending: The type of beta spending. -
parameterBetaSpending: The parameter value for beta spending. -
userBetaSpending: The user defined beta spending. -
spendingTime: The error spending time at each analysis. -
normalApproximation: The type of computation of the p-values. IfTRUE, the variance is assumed to be known, otherwise the calculations are performed with the t distribution. -
rounding: Whether to round up sample size.
-
Author(s)
Kaifeng Lu, kaifenglu@gmail.com
Examples
(design1 <- getDesignOneSlope(
beta = 0.1, n = NA, slope = 0.5,
stDev = 15, stDevCovariate = 9,
normalApproximation = FALSE,
alpha = 0.025))