Imperial Clinical Trials Unit, School of Public Health, Imperial College London, London, UK
Pragmatic Clinical Trials Unit, Centre for Evaluation and Methods, Wolfson Institute of Population Health, Queen Mary University of London, London, UK.
BMJ. 2022 May 16;377:e068983. doi: 10.1136/bmj-2021-068983.
To improve communication of harm in publications of randomised controlled trials via the development of recommendations for visually presenting harm outcomes.
Consensus study.
15 clinical trials units registered with the UK Clinical Research Collaboration, an academic population health department, Roche Products, and .
Experts in clinical trials: 20 academic statisticians, one industry statistician, one academic health economist, one data graphics designer, and two clinicians.
A methodological review of statistical methods identified visualisations along with those recommended by consensus group members. Consensus on visual recommendations was achieved (at least 60% of the available votes) over a series of three meetings with participants. The participants reviewed and critically appraised candidate visualisations against an agreed framework and voted on whether to endorse each visualisation. Scores marginally below this threshold (50-60%) were revisited for further discussions and votes retaken until consensus was reached.
28 visualisations were considered, of which 10 are recommended for researchers to consider in publications of main research findings. The choice of visualisations to present will depend on outcome type (eg, binary, count, time-to-event, or continuous), and the scenario (eg, summarising multiple emerging events or one event of interest). A decision tree is presented to assist trialists in deciding which visualisations to use. Examples are provided of each endorsed visualisation, along with an example interpretation, potential limitations, and signposting to code for implementation across a range of standard statistical software. Clinician feedback was incorporated into the explanatory information provided in the recommendations to aid understanding and interpretation.
Visualisations provide a powerful tool to communicate harms in clinical trials, offering an alternative perspective to the traditional frequency tables. Increasing the use of visualisations for harm outcomes in clinical trial manuscripts and reports will provide clearer presentation of information and enable more informative interpretations. The limitations of each visualisation are discussed and examples of where their use would be inappropriate are given. Although the decision tree aids the choice of visualisation, the statistician and clinical trial team must ultimately decide the most appropriate visualisations for their data and objectives. Trialists should continue to examine crude numbers alongside visualisations to fully understand harm profiles.
通过制定呈现危害结果的建议来提高随机对照试验出版物中危害的交流。
共识研究。
英国临床研究协作组的 15 个临床试验单位、一个学术人口健康部门、罗氏产品和。
临床试验专家:20 名学术统计学家、1 名行业统计学家、1 名学术健康经济学家、1 名数据图形设计师和 2 名临床医生。
对统计方法的方法学审查确定了可视化方法,以及共识小组成员推荐的方法。通过三次会议,在 20 名可用投票者中,至少 60%的投票者达成了关于视觉建议的共识。参与者根据商定的框架审查和批判性评估候选可视化,并投票决定是否支持每个可视化。得分略低于该阈值(50-60%)的内容将重新讨论并重新投票,直到达成共识。
考虑了 28 种可视化方法,其中推荐了 10 种用于研究人员在主要研究结果出版物中考虑。呈现可视化的选择将取决于结果类型(例如,二项式、计数、事件时间或连续)和情况(例如,总结多个新兴事件或一个感兴趣的事件)。提出了一个决策树来帮助试验者决定使用哪些可视化方法。为每个支持的可视化方法提供了示例,以及示例解释、潜在限制和代码提示,以便在一系列标准统计软件中实现。将临床医生的反馈纳入建议中的解释信息中,以帮助理解和解释。
可视化方法为在临床试验中交流危害提供了一种强大的工具,为传统的频率表提供了另一种视角。增加临床试验手稿和报告中危害结果的可视化使用,将提供更清晰的信息呈现,并能够进行更具信息性的解释。讨论了每种可视化方法的局限性,并给出了不适当使用的示例。虽然决策树有助于选择可视化方法,但统计学家和临床试验团队最终必须根据数据和目标选择最合适的可视化方法。试验者应继续检查可视化方法旁边的原始数据,以全面了解危害情况。