Statistical methods for interrupted clinical trials

  • Funded by UK Research and Innovation (UKRI)
  • Total publications:5 publications

Grant number: MR/W021013/1

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Key facts

  • Disease

    COVID-19, Disease X
  • Start & end year

    2022
    2025
  • Known Financial Commitments (USD)

    $482,041.89
  • Funder

    UK Research and Innovation (UKRI)
  • Principal Investigator

    Nigel Stallard
  • Research Location

    United Kingdom
  • Lead Research Institution

    University of Warwick
  • Research Priority Alignment

    N/A
  • Research Category

    Secondary impacts of disease, response & control measures

  • Research Subcategory

    N/A

  • Special Interest Tags

    N/A

  • Study Type

    Clinical

  • Clinical Trial Details

    Not applicable

  • Broad Policy Alignment

    Pending

  • Age Group

    Not Applicable

  • Vulnerable Population

    Not applicable

  • Occupations of Interest

    Not applicable

Abstract

Large-scale randomised controlled clinical trials are an essential part of the evaluation of healthcare treatments including new drugs, surgical techniques and behavioural interventions. Like many other parts of life, ongoing clinical trials have been affected by the global coronavirus pandemic. The cancellation of non-essential medical procedures, restrictions on face-to-face assessments and outpatient non-attendance due to lockdown restrictions, illness or reluctance to visit hospitals or healthcare centres have led to recruitment and data collection being suspended for many ongoing clinical trials. As restrictions start to be relaxed, researchers have the opportunity to restart clinical trials that were interrupted. The questions of whether or not this is worth doing, or of the best way to analyse the data either in a restarted trial or in one that is not restarted, may raise some challenges, however. This project will research statistical tools to help address these questions. These methods will also be of value in other settings when trials are interrupted due to challenges in recruitment or funding, or due to the influence of new results from other research. If a trial is restarted, depending on the clinical area in which the trial is being conducted, there may be differences between the pre-pandemic and post-pandemic periods in the type of patients who enrol in the trial, the exact way in which measurements are taken, or even in the intervention to be assessed, for example for a psychological intervention for which delivery may have changed to being wholly or partially online. These differences, or heterogeneity, need to be accounted for in the statistical analysis, and may mean that a larger number of patients than initially anticipated need to be included in the trial in order to obtain a reliable result. We will identify methods for this analysis and evaluate these in the setting of interrupted trials. As it is important that analysis methods proposed are accepted by all stakeholders, we will organise workshops for clinical trialists, clinical trial statisticians and representatives of regulators, funders, science publishers and patients to discuss and hopefully lead to consensus on the most appropriate methodology. If a trial is not restarted, the number of patients included will be smaller than initially planned. In many cases, particularly those in which patients are followed up in the clinical trial for a long period before the effect of the treatment is finally assessed, some early data may be available for patients recruited shortly before the start of the pandemic. This data may give additional information that can be included in the final analysis. We will explore statistical approaches to best utilise the information available in these data, extending existing methods where this is necessary. In addition to developing and recommending methods for the analysis of trials that are or are not restarted, we will develop methods to help decide which of these is the best option depending on the amount of information already available and the degree of heterogeneity between pre-pandemic and post-pandemic periods that is anticipated. We will also develop methods that allow an analysis of the data already collected but also allow the option of restarting the trial if the results of the trial are not sufficiently clear. Specialist statistical methods are required for this analysis in order to ensure that the risk of an erroneous false positive trial result is not increased. The research team includes experts in clinical trial statistics along with trialists and representatives of trial funders from a range of clinical areas to ensure that the research is applicable in a wide range of clinical trial settings.

Publicationslinked via Europe PMC

Last Updated:37 minutes ago

View all publications at Europe PMC

A Seamless Hybrid Phase II/III Design With Bayesian Interim Subgroup Selection.

Testing for a treatment effect in a selected subgroup.

Statistical methods for clinical trials interrupted by the severe acute respiratory syndrome-coronavirus-2 (SARS-CoV-2) pandemic: A review.

Group sequential designs for pragmatic clinical trials with early outcomes: methods and guidance for planning and implementation.

Using dichotomized survival data to construct a prior distribution for a Bayesian seamless Phase II/III clinical trial.