利用研究电子数据捕获(REDCap)的功能来提高阿片类镇痛减少研究的数据收集和质量。

IF 2.2 3区 医学 Q3 MEDICINE, RESEARCH & EXPERIMENTAL Clinical Trials Pub Date : 2024-06-01 Epub Date: 2023-11-14 DOI:10.1177/17407745231212190
Janine Fredericks-Younger, Patricia Greenberg, Tracy Andrews, Pamela B Matheson, Paul J Desjardins, Shou-En Lu, Cecile A Feldman
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引用次数: 0

摘要

背景:阿片类药物镇痛减少研究是一项双盲、前瞻性临床试验,研究在五个临床部位对第三磨牙阻生拔牙后急性术后疼痛的镇痛效果。具体来说,阿片类镇痛减少研究检查了常用的阿片类药物组合(氢可酮/对乙酰氨基酚)和非阿片类药物组合(布洛芬/对乙酰氨基酚)。阿片类镇痛药减少研究采用了一种新颖的电子基础设施,利用其数据管理系统的功能,研究电子数据捕获,不仅作为其数据储存库,而且为其质量管理计划提供框架。方法:在阿片类镇痛减少研究中,研究电子数据采集扩展为多功能管理工具,作为临床数据管理、项目管理和认证、材料管理和质量管理的中心。研究电子数据捕获有效地捕获数据,显示/跟踪研究进度,触发后续行动,并支持质量管理流程。结果:在72%的研究完成时,在研究电子数据捕获中执行了超过12,000个受试者数据表格,其中最小的缺失(0.15%)或不完整或错误的表格(0.06%)。提出了523项查询,要求澄清和/或解决丢失的数据和数据差异。结论:研究电子数据采集是一种有效的数字卫生技术,可以最大限度地促进临床试验的成功。在阿片类镇痛减少研究中使用的研究电子数据捕获基础设施和增强功能提供了框架和逻辑,确保数据完整、准确,同时指导团队成员跨站点遵循的有效、高效的工作流程。这种增强的数据可靠性和全面的质量管理过程可以为临床监测和监管报告提供更好的准备和准备。
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Leveraging the functionality of Research Electronic Data Capture (REDCap) to enhance data collection and quality in the Opioid Analgesic Reduction Study.

Background: The Opioid Analgesic Reduction Study is a double-blind, prospective, clinical trial investigating analgesic effectiveness in the management of acute post-surgical pain after impacted third molar extraction across five clinical sites. Specifically, Opioid Analgesic Reduction Study examines a commonly prescribed opioid combination (hydrocodone/acetaminophen) against a non-opioid combination (ibuprofen/acetaminophen). The Opioid Analgesic Reduction Study employs a novel, electronic infrastructure, leveraging the functionality of its data management system, Research Electronic Data Capture, to not only serve as its data reservoir but also provide the framework for its quality management program.

Methods: Within the Opioid Analgesic Reduction Study, Research Electronic Data Capture is expanded into a multi-function management tool, serving as the hub for its clinical data management, project management and credentialing, materials management, and quality management. Research Electronic Data Capture effectively captures data, displays/tracks study progress, triggers follow-up, and supports quality management processes.

Results: At 72% study completion, over 12,000 subject data forms have been executed in Research Electronic Data Capture with minimal missing (0.15%) or incomplete or erroneous forms (0.06%). Five hundred, twenty-three queries were initiated to request clarifications and/or address missing data and data discrepancies.

Conclusion: Research Electronic Data Capture is an effective digital health technology that can be maximized to contribute to the success of a clinical trial. The Research Electronic Data Capture infrastructure and enhanced functionality used in Opioid Analgesic Reduction Study provides the framework and the logic that ensures complete, accurate, data while guiding an effective, efficient workflow that can be followed by team members across sites. This enhanced data reliability and comprehensive quality management processes allow for better preparedness and readiness for clinical monitoring and regulatory reporting.

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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
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