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过去十年胃肠道肿瘤试验中的发表偏倚。

Publication Bias in Gastrointestinal Oncology Trials Performed over the Past Decade.

机构信息

Department of Therapeutic Radiology, Yale School of Medicine, New Haven, Connecticut, USA.

Department of Mechanical Engineering, Boston University, Boston, Massachusetts, USA.

出版信息

Oncologist. 2021 Aug;26(8):660-667. doi: 10.1002/onco.13759. Epub 2021 Mar 31.

Abstract

BACKGROUND

Randomized controlled trials (RCTs) are the gold standard for evidence-based practice, but their development and implementation is resource intensive. We aimed to describe modern RCTs in gastrointestinal (GI) cancer and identify predictors of successful accrual and publication.

MATERIALS AND METHODS

ClinicalTrials.gov was queried for phase III GI cancer RCTs opened between 2010 and 2019 and divided into two cohorts: past and recruiting. Past trials were analyzed for predictors of successful accrual and the subset with ≥3 years follow-up were analyzed for predictors of publication. Univariate and multivariable (MVA) logistic regression were used to identify covariates associated with complete accrual and publication status.

RESULTS

A total of 533 GI RCTs were opened from 2010 to 2019, 244 of which are still recruiting. In the "past" trials cohort (235/533) MVA, Asian continent of enrollment was a predictor for successful accrual, whereas trials with prolonged enrollment (duration longer than median of 960 days) trended to failed accrual. Predictors for publication on MVA included international enrollment and accrual completion. Sponsorship was not associated with accrual or publication. Notably, 33% of past trials remain unpublished, and 60% of trials that were closed early remain unpublished.

CONCLUSION

Accrual rate and the primary continent of enrollment drive both trial completion and publication in GI oncology. Accrual must be streamlined to enhance the impact of RCTs on clinical management. A large portion of trials remain unpublished, underscoring the need to encourage dissemination of all trials to, at a minimum, inform future trial design.

IMPLICATIONS FOR PRACTICE

Two-thirds of gastrointestinal (GI) oncology phase III randomized controlled trials successfully accrue; however, one third of these trials are unpublished and more than half of trials that close early are unpublished. The strongest predictors for publication are successful accrual and international collaborations. Initiatives to optimize the trial enrollment process need to be explored to maximize the potential for trials to engender progress in clinical practice. Moreover, this study identified a significant publication bias in the realm of GI oncology, and the field should promote reporting of all trials in order to better inform future trial questions and design.

摘要

背景

随机对照试验(RCT)是循证实践的金标准,但它们的开发和实施需要大量资源。我们旨在描述胃肠道(GI)癌症的现代 RCT,并确定成功入组和发表的预测因素。

材料和方法

在 ClinicalTrials.gov 上查询了 2010 年至 2019 年间开放的 III 期胃肠道癌症 RCT,并将其分为两个队列:过去和招募。分析过去试验成功入组的预测因素,并对随访时间≥3 年的亚组分析发表的预测因素。使用单变量和多变量(MVA)逻辑回归来确定与完全入组和发表状态相关的协变量。

结果

2010 年至 2019 年共开放了 533 项胃肠道 RCT,其中 244 项仍在招募中。在“过去”试验队列(235/533)中,MVA 分析显示,入组的亚洲大陆是成功入组的预测因素,而招募时间延长(超过中位数 960 天)的试验则倾向于无法入组。MVA 分析显示,发表的预测因素包括国际入组和入组完成。赞助与入组或发表无关。值得注意的是,33%的过去试验仍未发表,60%提前关闭的试验仍未发表。

结论

入组率和主要入组大陆是胃肠道肿瘤学中试验完成和发表的驱动因素。必须简化入组流程,以提高 RCT 对临床管理的影响。大量试验仍未发表,这突显了鼓励传播所有试验的必要性,至少要告知未来的试验设计。

实践意义

三分之二的胃肠道(GI)肿瘤学 III 期随机对照试验成功入组;然而,其中三分之一的试验未发表,超过一半提前关闭的试验未发表。发表的最强预测因素是成功入组和国际合作。需要探索优化试验入组流程的措施,以最大限度地发挥试验在临床实践中取得进展的潜力。此外,本研究在胃肠道肿瘤学领域发现了显著的发表偏倚,该领域应促进所有试验的报告,以便更好地为未来的试验问题和设计提供信息。

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