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# eventPrediction |
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[](https://travis-ci.org/scientific-computing-solutions/eventPrediction) |
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[](https://cran.r-project.org/package=eventPrediction) |
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[](https://coveralls.io/github/scientific-computing-solutions/eventPrediction?branch=forCRAN) |
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[](https://ci.appveyor.com/project/scientific-computing-solutions/eventPrediction) |
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[](https://cran.r-project.org/package=eventPrediction) |
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Event Prediction in Clinical Trials with Time-to-Event Outcomes |
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This R package implements methods to predict either the required number to achieve |
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a target or the expected time at which you will reach the required number of events. |
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You can use this package in the design phase of clinical trials or in the reporting |
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phase. Which means you can use simulate a trial based on a set of assumption and |
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run prediction and calculate uncertainties when your trial will finish. Alternatively |
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you can upload your trial data, simulate additional patient recruitment based on |
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observed one and run prediction on when the target number of event will be reached |
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or the expected number of events at a given time. |
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## Contributors |
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Dalevi, Daniel (maintainer); Burkoff, Nikolas; Hollis, Sally; Mann, Helen; Metcalfe, |
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Paul; Ruau, David; |
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## Installation |
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To install the development version from GitHub: |
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```R |
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install.packages("devtools") |
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# We spent a lot of time developing the vignettes. We recommend the read but |
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# building them from source takes some time |
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devtools::install_github("scientific-computing-solutions/eventPrediction", |
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build_vignettes = TRUE) |
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``` |