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Survival prediction models: an introduction to discrete-time modeling.

Krithika SureshCameron SevernDebashis Ghosh
Published in: BMC medical research methodology (2022)
We present a guide for developing survival prediction models using discrete-time methods and assessing their predictive performance with the aim of encouraging their use in medical research settings. These methods can be applied to data sets that have continuous time-to-event outcomes and multiple clinical predictors. They can also be extended to accommodate new binary classification algorithms as they become available. We provide R code for fitting discrete-time survival prediction models in a github repository.
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