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gsDesign (version 2.8-7)

Group Sequential Design

Description

gsDesign is a package that derives group sequential designs and describes their properties.

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Version

Install

install.packages('gsDesign')

Monthly Downloads

3,220

Version

2.8-7

License

GPL (>= 2)

Maintainer

Keaven Anderson

Last Published

December 2nd, 2013

Functions in gsDesign (2.8-7)

sfTDist

4.8: t-distribution Spending Function
gsBinomialExact

3.4: One-Sample Exact Binomial Boundary Crossing Probabilities
sfExponential

4.3: Exponential Spending Function
gsBoundCP

2.5: Conditional Power at Interim Boundaries
gsBoundSummary

2.8: Bound Summary and Z-transformations
Wang-Tsiatis Bounds

5.0: Wang-Tsiatis Bounds
sfPoints

4.5: Pointwise Spending Function
sfLDOF

4.4: Lan-DeMets Spending function overview
plot.gsDesign

2.3: Plots for group sequential designs
Spending functions

4.0: Spending function overview
normalGrid

3.1: Normal Density Grid
gsDesign

2.1: Design Derivation
sfTruncated

4.7a: Truncated spending functions
sfLinear

4.6: Piecewise Linear Spending Function
Binomial

3.2: Testing, Confidence Intervals, Sample Size and Power for Comparing Two Binomial Rates
nNormal

Normal distribution sample size (2-sample)
sfHSD

4.1: Hwang-Shih-DeCani Spending Function
gsBound

2.6: Boundary derivation - low level
nSurv

Advanced time-to-event sample size calculation
eEvents

Expected number of events for a time-to-event study
gsDesign package overview

1.0 Group Sequential Design
gsCP

2.4: Conditional and Predictive Power, Overall and Conditional Probability of Success
nSurvival

3.4: Time-to-event sample size calculation (Lachin-Foulkes)
gsDensity

2.6: Group sequential design interim density function
ssrCP

Sample size re-estimation based on conditional power
sfLogistic

4.7: Two-parameter Spending Function Families
checkScalar

6.0 Utility functions to verify variable properties
sfPower

4.2: Kim-DeMets (power) Spending Function
gsProbability

2.2: Boundary Crossing Probabilities