Confirmatory Adaptive Clinical Trial Design, Simulation, and Analysis.
We recommend three ways to learn how to use rpact
:
- Use the Shiny app: shiny.rpact.com
- Use the Vignettes: www.rpact.com/vignettes
- Book a training: www.rpact.com
The vignettes are hosted at www.rpact.com/vignettes and cover the following topics:
rpact
rpact
design <- getDesignGroupSequential()
rpact
comparison tools: getDesignSet
getSampleSizeMeans()
, getPowerMeans()
getSimulationMeans()
data <- getDataset()
getAnalysisResults(design, data)
The most important rpact
functions have intuitive
names:
getDesign
[GroupSequential
/InverseNormal
/Fisher
]()
getDesignCharacteristics()
getSampleSize
[Means
/Rates
/Survival
]()
getPower
[Means
/Rates
/Survival
]()
getSimulation
[MultiArm
/Enrichment
]`[
Means/
Rates/
Survival]
()`getDataSet()
getAnalysisResults()
getStageResults()
RStudio/Eclipse: auto code completion makes it easy to use these functions.
In general, everything runs with the R standard functions which are
always present in R: so-called R generics, e.g., print
,
summary
, plot
, as.data.frame
,
names
, length
Several utility functions are available, e.g.
getAccrualTime()
getPiecewiseSurvivalTime()
getNumberOfSubjects()
getEventProbabilities()
getPiecewiseExponentialDistribution()
pi
,
lambda
and median
, e.g.,
getLambdaByMedian()
testPackage()
: installation qualification on a client
computer or company server (via unit tests)Please contact us to
learn how to use rpact
on FDA/GxP-compliant validated
corporate computer systems and how to get a copy of the formal
validation documentation that is customized and licensed for exclusive
use by your company, e.g., to fulfill regulatory requirements.
For more information please visit www.rpact.org
rpact
packageFor more information please visit www.rpact.com
The rpact validation documentation is available exclusively for our customers and supporting companies. For more information visit www.rpact.com/services/sla↩︎