Dynamic prediction models provide predicted survival probabilities that can be updated over time for an individual as new measurements become available. Two techniques for dynamic survival prediction with longitudinal data dominate the statistical literature: joint modelling and landmarking. There is substantial interest in the use of machine learning methods for prediction; however, their use in the context of dynamic survival prediction has been limited. We show how landmarking can be combined with a machine learning ensemble—the Super Learner. The ensemble combines predictions from different machine learning and statistical algorithms with the goal of achieving improved performance. The proposed approach exploits discrete time survival a...
The importance of developing personalized risk prediction estimates has become increasingly evident ...
Survival analysis is an important field of Statistics concerned with mak- ing time-to-event predicti...
In this thesis, we consider models for survival data with a high-dimensional covariate space. Most m...
Dynamic prediction models provide predicted survival probabilities that can be updated over time for...
Dynamic prediction incorporates time‐dependent marker information accrued during follow‐up to improv...
Abstract Background Risk prediction models for time-to-event outcomes play a vital role in personali...
A key question in clinical practice is accurate prediction of patient prognosis. To this end, nowada...
International audienceBackground: The individual data collected throughout patient follow-up constit...
The individual data collected throughout patient follow-up constitute crucial information for assess...
In medical research, predicting the probability of a time-to-event outcome is often of interest. Alo...
Prediction models for clinical outcomes can greatly help clinicians with early diagnosis, cost-effec...
With the availability of massive amounts of data from electronic health records and registry databas...
A key question in clinical practice is accurate prediction of patient prognosis. To this end, nowada...
Predicting patient survival probabilities based on observed covariates is an important assessment in...
BACKGROUND: Cystic fibrosis (CF) is an inherited, chronic, progressive condition affecting around 10...
The importance of developing personalized risk prediction estimates has become increasingly evident ...
Survival analysis is an important field of Statistics concerned with mak- ing time-to-event predicti...
In this thesis, we consider models for survival data with a high-dimensional covariate space. Most m...
Dynamic prediction models provide predicted survival probabilities that can be updated over time for...
Dynamic prediction incorporates time‐dependent marker information accrued during follow‐up to improv...
Abstract Background Risk prediction models for time-to-event outcomes play a vital role in personali...
A key question in clinical practice is accurate prediction of patient prognosis. To this end, nowada...
International audienceBackground: The individual data collected throughout patient follow-up constit...
The individual data collected throughout patient follow-up constitute crucial information for assess...
In medical research, predicting the probability of a time-to-event outcome is often of interest. Alo...
Prediction models for clinical outcomes can greatly help clinicians with early diagnosis, cost-effec...
With the availability of massive amounts of data from electronic health records and registry databas...
A key question in clinical practice is accurate prediction of patient prognosis. To this end, nowada...
Predicting patient survival probabilities based on observed covariates is an important assessment in...
BACKGROUND: Cystic fibrosis (CF) is an inherited, chronic, progressive condition affecting around 10...
The importance of developing personalized risk prediction estimates has become increasingly evident ...
Survival analysis is an important field of Statistics concerned with mak- ing time-to-event predicti...
In this thesis, we consider models for survival data with a high-dimensional covariate space. Most m...