We present a newly developed technique for identification of positive and negative responders to a new treatment which was compared to a classical treatment (or placebo) in a randomized clinical trial. This bump-hunting-based method was developed for trials in which the two treatment arms do not differ in survival overall. It checks in a systematic manner if certain subgroups, described by predictive factors do show difference in survival due to the new treatment. Several versions of the method were discussed and compared in a simulation study. The best version of the responder identification method employs martingale residuals to a prognostic model as response in a stabilized through bootstrapping bump hunting procedure. On average it reco...
Multiple biomarkers (surrogate endpoints) are often used to predict the failure event, as well as to...
Right censored data is the type of data in which the interested event has not been observed in worki...
Survival analysis is a popular area of statistics dealing with time-to-event data. A special charact...
We present a newly developed technique for identification of positive and negative responders to a n...
We present a newly developed technique for identification of positive and negative responders to a n...
Clinical trials often judge the efficacy of a new treatment by comparing the survival patterns of pa...
Clinical trials often judge the efficacy of a new treatment by comparing the survival patterns of pa...
AbstractResponder analysis is in common use in clinical trials, and has been described and endorsed ...
Analyzing events over time is often complicated by incomplete, or censored, observations. Special no...
In the analysis of censored survival data, it is frequently of interest to determine the efficacy of...
International audienceIndividualizing treatment according to patients' characteristics is central fo...
Background: Personalized medicine is the tailoring of treatment to the individual characteristics of...
Oncology clinical trials typically collect a number of endpoints tomeasure the efficacy of the drugs...
Medical and epidemiological studies are mostly conducted with an interest in measuring the occurrenc...
In this paper, we discuss a response adaptive randomization method, and why it should be used in cli...
Multiple biomarkers (surrogate endpoints) are often used to predict the failure event, as well as to...
Right censored data is the type of data in which the interested event has not been observed in worki...
Survival analysis is a popular area of statistics dealing with time-to-event data. A special charact...
We present a newly developed technique for identification of positive and negative responders to a n...
We present a newly developed technique for identification of positive and negative responders to a n...
Clinical trials often judge the efficacy of a new treatment by comparing the survival patterns of pa...
Clinical trials often judge the efficacy of a new treatment by comparing the survival patterns of pa...
AbstractResponder analysis is in common use in clinical trials, and has been described and endorsed ...
Analyzing events over time is often complicated by incomplete, or censored, observations. Special no...
In the analysis of censored survival data, it is frequently of interest to determine the efficacy of...
International audienceIndividualizing treatment according to patients' characteristics is central fo...
Background: Personalized medicine is the tailoring of treatment to the individual characteristics of...
Oncology clinical trials typically collect a number of endpoints tomeasure the efficacy of the drugs...
Medical and epidemiological studies are mostly conducted with an interest in measuring the occurrenc...
In this paper, we discuss a response adaptive randomization method, and why it should be used in cli...
Multiple biomarkers (surrogate endpoints) are often used to predict the failure event, as well as to...
Right censored data is the type of data in which the interested event has not been observed in worki...
Survival analysis is a popular area of statistics dealing with time-to-event data. A special charact...