A key issue when designing clinical trials is the estimation of the number of subjects required. Assuming for multicentre trials or biomarker-stratified designs that the effect size between treatment arms is the same among the whole study population might be inappropriate. Limited work is available for properly determining the sample size for such trials. However, we need to account for both, the heterogeneity of the baseline hazards over clusters or strata but also the heterogeneity of the treatment effects, otherwise sample size estimates might be biased. Most existing methods account for either heterogeneous baseline hazards or treatment effects but they dot not allow to simultaneously account for both sources of variations. This article...
When comparing two different kinds of group therapy or two individual treatments where patients with...
Clinical trials of rare diseases commonly enlist several centers to achieve recruitment goals. The a...
Abstract: Problem statement: The common assumption in non-randomized Phase II clinical trials is a h...
A key issue when designing clinical trials is the estimation of the number of subjects required. Ass...
In this dissertation, we investigate sample size calculations for three different study designs: str...
When comparing two different kinds of group therapy or two individual treatments where patients with...
When comparing two different kinds of group therapy or two individual treatments where patients with...
Sary The need for sample size calculations is briefly reviewed: many of the arguments against small ...
Sample size calculation for treatment effects in randomized trials with fixed cluster sizes and hete...
While the primary objective of multicenter clinical trials is to compare treatments for a specific d...
Abstract Background Multi-centre randomized controlled clinical trials play an important role in mod...
The main goal of this master thesis is to compute the sample size of the OPTIMAL study (OPTimizing I...
The main goal of this master thesis is to compute the sample size of the OPTIMAL study (OPTimizing I...
Cluster randomized trial designs are growing in popularity in, for example, cardiovascular medicine ...
When comparing two different kinds of group therapy or two individual treatments where patients with...
When comparing two different kinds of group therapy or two individual treatments where patients with...
Clinical trials of rare diseases commonly enlist several centers to achieve recruitment goals. The a...
Abstract: Problem statement: The common assumption in non-randomized Phase II clinical trials is a h...
A key issue when designing clinical trials is the estimation of the number of subjects required. Ass...
In this dissertation, we investigate sample size calculations for three different study designs: str...
When comparing two different kinds of group therapy or two individual treatments where patients with...
When comparing two different kinds of group therapy or two individual treatments where patients with...
Sary The need for sample size calculations is briefly reviewed: many of the arguments against small ...
Sample size calculation for treatment effects in randomized trials with fixed cluster sizes and hete...
While the primary objective of multicenter clinical trials is to compare treatments for a specific d...
Abstract Background Multi-centre randomized controlled clinical trials play an important role in mod...
The main goal of this master thesis is to compute the sample size of the OPTIMAL study (OPTimizing I...
The main goal of this master thesis is to compute the sample size of the OPTIMAL study (OPTimizing I...
Cluster randomized trial designs are growing in popularity in, for example, cardiovascular medicine ...
When comparing two different kinds of group therapy or two individual treatments where patients with...
When comparing two different kinds of group therapy or two individual treatments where patients with...
Clinical trials of rare diseases commonly enlist several centers to achieve recruitment goals. The a...
Abstract: Problem statement: The common assumption in non-randomized Phase II clinical trials is a h...