The effect of estimating prevalences on the population-wise error rate

04/19/2023
by   Remi Luschei, et al.
0

The population-wise error rate (PWER) is a type I error rate for clinical trials with multiple target populations. In such trials, one treatment is tested for its efficacy in each population. The PWER is defined as the probability that a randomly selected, future patient will be exposed to an inefficient treatment based on the study results. The PWER can be understood and computed as an average of strata specific family-wise error rates and involves the prevalences of these strata. A major issue of this concept is that the population prevalences needed to determine this average are usually not known in practice, so that the PWER cannot be directly controlled. Instead, one could use an estimator of the prevalences based on the given sample, like their maximum-likelihood estimator. In this paper we show in simulations that this does not substantially inflate the true PWER. We differentiate between the expected PWER, which is almost perfectly controlled, and study-specific values of the PWER which are conditioned to given sample sizes and vary within a narrow range. Thereby, we consider up to eight different overlapping patient populations and moderate to large sample sizes.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/09/2020

A liberal type I error rate for studies in precision medicine

We introduce a new multiple type I error criterion for clinical trials w...
research
08/24/2023

A preplanned multi-stage platform trial for discovering multiple superior treatments with control of FWER and power

There is a growing interest in the implementation of platform trials, wh...
research
07/10/2023

Beyond the Two-Trials Rule

The two-trials rule for drug approval requires "at least two adequate an...
research
11/30/2020

Blinded sample size re-calculation in multiple composite population designs with normal data and baseline adjustments

The increasing interest in subpopulation analysis has led to the develop...
research
11/13/2017

Estimating prediction error for complex samples

Non-uniform random samples are commonly generated in multiple scientific...
research
07/09/2019

Making Study Populations Visible through Knowledge Graphs

Treatment recommendations within Clinical Practice Guidelines (CPGs) are...
research
07/22/2020

Model-based simultaneous inference for multiple subgroups and multiple endpoints

Various methodological options exist on evaluating differences in both s...

Please sign up or login with your details

Forgot password? Click here to reset