COVID-19 随机对照试验中的复合终点:系统综述。

IF 2.2 3区 医学 Q3 MEDICINE, RESEARCH & EXPERIMENTAL Clinical Trials Pub Date : 2024-10-10 DOI:10.1177/17407745241276130
Pedro Nascimento Martins, Mateus Henrique Toledo Lourenço, Gabriel Paz Souza Mota, Alexandre Biasi Cavalcanti, Ana Carolina Peçanha Antonio, Fredi Alexander Diaz-Quijano
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引用次数: 0

摘要

背景/目的:本研究旨在确定冠状病毒病2019年试验中序数、二值和数值复合终点的流行程度,以及使用这些终点可能导致的偏倚:我们系统回顾了Cochrane COVID-19研究登记册,以评估冠状病毒病2019年随机临床试验中使用复合终点的流行率、特征和相关偏倚。我们通过估算综合结果的偏倚指数[ln(综合结果的相对风险)/ln(死亡的相对风险)],比较了综合结果的效应度量(相对风险)及其最关键部分(即死亡)的效应度量:在冠状病毒疾病2019年随机试验的417个主要终点中,复合终点占152个,在高影响力期刊上发表的研究中复合终点更为常见。顺序终点最常见(占所有复合终点的54%),其次是二元终点或时间到事件终点(34%)、数字终点(11%)和层次终点(1%)。与轻度或中度病例组合的试验相比,在招募重症患者的试验中,复合终点最常见(几率比=1.72)。40%的序数主要终点采用了世界卫生组织的七分量表,在进行统计分析时经常对其进行二分法处理。死亡率在所有事件中的中位数为 24%(四分位间范围:6%-48%)。综合结果偏倚指数的中位点估计值为0.3(四分位间范围:-0.1至0.7),在24项比较中的5项明显低于1:讨论:冠状病毒疾病2019年试验中有很大一部分使用了复合终点,尤其是那些涉及重症患者的试验。这可能是由于此类研究中死亡等竞争事件的预期发生率较高。二元组合很常见,但往往未得到充分重视,从而降低了潜在的信息增益和统计效率。在采用二元复合方法的研究中,死亡是最常见的组成部分,出乎意料的是,与死亡率死亡相比,复合结果估计值往往更接近于空。数字复合结果不太常见,只有两项试验使用了分层终点。与传统的二元复合终点和序数复合终点相比,这些新方法可能更有优势;但是,它们的潜在优势还需要进一步研究:综合终点占2019年冠状病毒疾病试验主要终点的三分之一以上;在纳入重症患者的研究中,综合终点的使用更为普遍,其点效应估计值往往低估了死亡率估计值。
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Composite endpoints in COVID-19 randomized controlled trials: a systematic review.

Background/aims: This study aimed to determine the prevalence of ordinal, binary, and numerical composite endpoints among coronavirus disease 2019 trials and the potential bias attributable to their use.

Methods: We systematically reviewed the Cochrane COVID-19 Study Register to assess the prevalence, characteristics, and bias associated with using composite endpoints in coronavirus disease 2019 randomized clinical trials. We compared the effect measure (relative risk) of composite outcomes and that of its most critical component (i.e. death) by estimating the Bias Attributable to Composite Outcomes index [ln(relative risk for the composite outcome)/ln(relative risk for death)].

Results: Composite endpoints accounted for 152 out of 417 primary endpoints in coronavirus disease 2019 randomized trials, being more frequent among studies published in high-impact journals. Ordinal endpoints were the most common (54% of all composites), followed by binary or time-to-event (34%), numerical (11%), and hierarchical (1%). Composites predominated among trials enrolling patients with severe disease when compared to trials with a mild or moderate case mix (odds ratio = 1.72). Adaptations of the seven-point World Health Organization scale occurred in 40% of the ordinal primary endpoints, which frequently underwent dichotomization for the statistical analyses. Mortality accounted for a median of 24% (interquartile range: 6%-48%) of all events when included in the composite. The median point estimate of the Bias Attributable to Composite Outcomes index was 0.3 (interquartile range: -0.1 to 0.7), being significantly lower than 1 in 5 of 24 comparisons.

Discussion: Composite endpoints were used in a significant proportion of coronavirus disease 2019 trials, especially those involving severely ill patients. This is likely due to the higher anticipated rates of competing events, such as death, in such studies. Ordinal composites were common but often not fully appreciated, reducing the potential gains in information and statistical efficiency. For studies with binary composites, death was the most frequent component, and, unexpectedly, composite outcome estimates were often closer to the null when compared to those for mortality death. Numerical composites were less common, and only two trials used hierarchical endpoints. These newer approaches may offer advantages over traditional binary and ordinal composites; however, their potential benefits warrant further scrutiny.

Conclusion: Composite endpoints accounted for more than a third of coronavirus disease 2019 trials' primary endpoints; their use was more common among studies that included patients with severe disease and their point effect estimates tended to underestimate those for mortality.

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来源期刊
Clinical Trials
Clinical Trials 医学-医学:研究与实验
CiteScore
4.10
自引率
3.70%
发文量
82
审稿时长
6-12 weeks
期刊介绍: Clinical Trials is dedicated to advancing knowledge on the design and conduct of clinical trials related research methodologies. Covering the design, conduct, analysis, synthesis and evaluation of key methodologies, the journal remains on the cusp of the latest topics, including ethics, regulation and policy impact.
期刊最新文献
Challenges in conducting efficacy trials for new COVID-19 vaccines in developed countries. Society for Clinical Trials Data Monitoring Committee initiative website: Closing the gap. A comparison of computational algorithms for the Bayesian analysis of clinical trials. Comparison of Bayesian and frequentist monitoring boundaries motivated by the Multiplatform Randomized Clinical Trial. Efficient designs for three-sequence stepped wedge trials with continuous recruitment.
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