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中央统计监测能否提高数据质量?对159项临床试验中1111个研究点的分析

Does Central Statistical Monitoring Improve Data Quality? An Analysis of 1,111 Sites in 159 Clinical Trials.

作者信息

de Viron Sylviane, Trotta Laura, Steijn William, Young Steve, Buyse Marc

机构信息

CluePoints S.A, Avenue Albert Einstein, 2a 1348, Louvain-la-Neuve, Belgium.

CluePoints Inc, King of Prussia, USA.

出版信息

Ther Innov Regul Sci. 2024 May;58(3):483-494. doi: 10.1007/s43441-024-00613-w. Epub 2024 Feb 9.

Abstract

BACKGROUND

Central monitoring aims at improving the quality of clinical research by pro-actively identifying risks and remediating emerging issues in the conduct of a clinical trial that may have an adverse impact on patient safety and/or the reliability of trial results. This paper, focusing on statistical data monitoring (SDM), is the second of a series that attempts to quantify the impact of central monitoring in clinical trials.

MATERIAL AND METHODS

Quality improvement was assessed in studies using SDM from a single large central monitoring platform. The analysis focused on a total of 1111 sites that were identified as at-risk by the SDM tests and for which the study teams conducted a follow-up investigation. These sites were taken from 159 studies conducted by 23 different clinical development organizations (including both sponsor companies and contract research organizations). Two quality improvement metrics were assessed for each selected site, one based on a site data inconsistency score (DIS, overall -log P-value of the site compared with all other sites) and the other based on the observed metric value associated with each risk signal.

RESULTS

The SDM quality metrics showed improvement in 83% (95% CI, 80-85%) of the sites across therapeutic areas and study phases (primarily phases 2 and 3). In contrast, only 56% (95% CI, 41-70%) of sites showed improvement in 2 historical studies that did not use SDM during study conduct.

CONCLUSION

The results of this analysis provide clear quantitative evidence supporting the hypothesis that the use of SDM in central monitoring is leading to improved quality in clinical trial conduct and associated data across participating sites.

摘要

背景

中央监测旨在通过主动识别风险并纠正临床试验过程中可能对患者安全和/或试验结果可靠性产生不利影响的新出现问题,来提高临床研究质量。本文聚焦于统计数据监测(SDM),是试图量化中央监测在临床试验中影响的系列文章中的第二篇。

材料与方法

使用来自单个大型中央监测平台的SDM对研究中的质量改进进行评估。分析集中在总共1111个被SDM测试识别为有风险的站点,研究团队对这些站点进行了后续调查。这些站点来自23个不同临床开发组织(包括申办公司和合同研究组织)开展的159项研究。为每个选定站点评估了两个质量改进指标,一个基于站点数据不一致分数(DIS,该站点与所有其他站点相比的总体-log P值),另一个基于与每个风险信号相关的观察到的指标值。

结果

SDM质量指标显示,各治疗领域和研究阶段(主要是2期和3期)中83%(95% CI,80 - 85%)的站点有改进。相比之下,在两项研究过程中未使用SDM的历史研究中,只有56%(95% CI,41 - 70%)的站点有改进。

结论

该分析结果提供了明确的定量证据,支持以下假设:在中央监测中使用SDM可提高参与站点的临床试验实施质量及相关数据质量。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a5e1/11043176/df2d18972a4a/43441_2024_613_Fig1_HTML.jpg

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