373 research outputs found
Changing EDSS progression in placebo cohorts in relapsing MS: A systematic review and meta-regression
Background: Recent systematic reviews of randomised controlled trials (RCTs)
in relapsing multiple sclerosis (RMS) revealed a decrease in placebo annualized
relapse rates (ARR) over the past two decades. Furthermore, regression to the
mean effects were observed in ARR and MRI lesion counts. It is unclear whether
disease progression measured by the expanded disability status scale (EDSS)
exhibits similar features.
Methods: A systematic review of RCTs in RMS was conducted extracting data on
EDSS and baseline characteristics. The logarithmic odds of disease progression
were modelled to investigate time trends. Random-effects models were used to
account for between-study variability; all investigated models included trial
duration as a predictor to correct for unequal study durations.
Meta-regressions were conducted to assess the prognostic value of a number of
baseline variables.
Results: The systematic literature search identified 39 studies, including a
total of 19,714 patients. The proportion of patients in placebo controls
experiencing a disease progression decreased over the years (p<0.001). Meta
regression identified associated covariates including the size of the study and
its duration that in part explained the time trend. Progression probabilities
tended to be lower in the second year compared to the first year with a
reduction of 24% in progression probability from year 1 to year 2 (p=0.014).
Conclusion: EDSS disease progression exhibits similar behaviour over time as
the ARR and point to changes in trial characteristics over the years,
questioning comparisons between historical and recent trials.Comment: 17 pages, 2 figure
A Bayesian time-to-event pharmacokinetic model for sequential phase I dose-escalation trials with multiple schedules
Phase I dose-escalation trials constitute the first step in investigating the
safety of potentially promising drugs in humans. Conventional methods for phase
I dose-escalation trials are based on a single treatment schedule only. More
recently, however, multiple schedules are more frequently investigated in the
same trial. Here, we consider sequential phase I trials, where the trial
proceeds with a new schedule (e.g. daily or weekly dosing) once the dose
escalation with another schedule has been completed. The aim is to utilize the
information from both the completed and the ongoing dose-escalation trial to
inform decisions on the dose level for the next dose cohort. For this purpose,
we adapted the time-to-event pharmacokinetics (TITE-PK) model, which were
originally developed for simultaneous investigation of multiple schedules.
TITE-PK integrates information from multiple schedules using a pharmacokinetics
(PK) model. In a simulation study, the developed appraoch is compared to the
bridging continual reassessment method and the Bayesian logistic regression
model using a meta-analytic-prior. TITE-PK results in better performance than
comparators in terms of recommending acceptable dose and avoiding overly toxic
doses for sequential phase I trials in most of the scenarios considered.
Furthermore, better performance of TITE-PK is achieved while requiring similar
number of patients in the simulated trials. For the scenarios involving one
schedule, TITE-PK displays similar performance with alternatives in terms of
acceptable dose recommendations. The \texttt{R} and \texttt{Stan} code for the
implementation of an illustrative sequential phase I trial example is publicly
available at https://github.com/gunhanb/TITEPK_sequential
Causal inference methods for small non-randomized studies: methods and an application in COVID-19
The usual development cycles are too slow for the development of vaccines,
diagnostics and treatments in pandemics such as the ongoing SARS-CoV-2
pandemic. Given the pressure in such a situation, there is a risk that findings
of early clinical trials are overinterpreted despite their limitations in terms
of size and design. Motivated by a non-randomized open-label study
investigating the efficacy of hydroxychloroquine in patients with COVID-19, we
describe in a unified fashion various alternative approaches to the analysis of
non-randomized studies and apply them to the example study exploring the
question whether different methods might have led to different conclusions. A
widely used tool to reduce the impact of treatment-selection bias are so-called
propensity score (PS) methods. Conditioning on the propensity score allows one
to replicate the design of a randomized controlled trial, conditional on
observed covariates. Extensions include the doubly robust g-computation, which
is less frequently applied, in particular in clinical studies. Here, we
investigate the properties of propensity score based methods including
g-computation in small sample settings, typical for early trials, in a
simulation study. We conclude that the doubly robust g-computation has some
desirable properties and should be more frequently applied in clinical
research. In the hydroxychloroquine study, g-computation resulted in a very
wide confidence interval indicating much uncertainty. We speculate that
application of the method might have prevented some of the hype surrounding
hydroxychloroquine in the early stages of the SARS-CoV-2 pandemic. R code for
the g-computation is provided
- …