分布式网络环境中药物流行病学研究的透明度、再现性和可复制性。

IF 2.4 4区 医学 Q3 PHARMACOLOGY & PHARMACY Pharmacoepidemiology and Drug Safety Pub Date : 2024-06-01 DOI:10.1002/pds.5820
Ashish Rai, Judith C Maro, Sarah Dutcher, Patricia Bright, Sengwee Toh
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引用次数: 0

摘要

目的:我们的目标是描述美国食品药品管理局(FDA)的哨兵系统如何实施最佳实践,以确保使用不同来源的真实世界数据进行的药物安全性研究的可信度:方法:我们逐步介绍了 Sentinel 系统的数据协调、数据质量检查、查询设计和实施以及报告实践,并介绍了在每个步骤中提高研究的透明度、可重复性和可复制性的方法:每个哨兵数据合作伙伴都会将其源数据转换为哨兵通用数据模型。转换后的数据要经过严格的质量检查,才能用于 Sentinel 查询。Sentinel 通用数据模型框架、多个数据源的数据转换代码以及数据质量保证软件包均可公开获取。Sentinel 的查询系统是针对 Sentinel 通用数据模型设计的,由一套预先经过测试、可设置参数的计算机程序组成,用户无需跨站点交换个人层面的数据,即可执行复杂的描述性和推断性分析。程序功能的详细文档以及执行这些程序所需的代码和信息均可在哨兵网站上公开获取。Sentinel 还提供公共培训和在线资源,以方便使用其数据模型和查询系统。其研究规范符合既定的报告框架,旨在促进真实世界数据研究的再现性和可复制性。Sentinel 查询报告以及相关的设计和分析规范可在 Sentinel 网站上下载。Sentinel 是一个范例,说明了如何利用透明、可重现和可复制的流程,将真实世界数据用于大规模生成监管级证据。
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Transparency, reproducibility, and replicability of pharmacoepidemiology studies in a distributed network environment.

Purpose: Our objective is to describe how the U.S. Food and Drug Administration (FDA)'s Sentinel System implements best practices to ensure trust in drug safety studies using real-world data from disparate sources.

Methods: We present a stepwise schematic for Sentinel's data harmonization, data quality check, query design and implementation, and reporting practices, and describe approaches to enhancing the transparency, reproducibility, and replicability of studies at each step.

Conclusions: Each Sentinel data partner converts its source data into the Sentinel Common Data Model. The transformed data undergoes rigorous quality checks before it can be used for Sentinel queries. The Sentinel Common Data Model framework, data transformation codes for several data sources, and data quality assurance packages are publicly available. Designed to run against the Sentinel Common Data Model, Sentinel's querying system comprises a suite of pre-tested, parametrizable computer programs that allow users to perform sophisticated descriptive and inferential analysis without having to exchange individual-level data across sites. Detailed documentation of capabilities of the programs as well as the codes and information required to execute them are publicly available on the Sentinel website. Sentinel also provides public trainings and online resources to facilitate use of its data model and querying system. Its study specifications conform to established reporting frameworks aimed at facilitating reproducibility and replicability of real-world data studies. Reports from Sentinel queries and associated design and analytic specifications are available for download on the Sentinel website. Sentinel is an example of how real-world data can be used to generate regulatory-grade evidence at scale using a transparent, reproducible, and replicable process.

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来源期刊
CiteScore
4.80
自引率
7.70%
发文量
173
审稿时长
3 months
期刊介绍: The aim of Pharmacoepidemiology and Drug Safety is to provide an international forum for the communication and evaluation of data, methods and opinion in the discipline of pharmacoepidemiology. The Journal publishes peer-reviewed reports of original research, invited reviews and a variety of guest editorials and commentaries embracing scientific, medical, statistical, legal and economic aspects of pharmacoepidemiology and post-marketing surveillance of drug safety. Appropriate material in these categories may also be considered for publication as a Brief Report. Particular areas of interest include: design, analysis, results, and interpretation of studies looking at the benefit or safety of specific pharmaceuticals, biologics, or medical devices, including studies in pharmacovigilance, postmarketing surveillance, pharmacoeconomics, patient safety, molecular pharmacoepidemiology, or any other study within the broad field of pharmacoepidemiology; comparative effectiveness research relating to pharmaceuticals, biologics, and medical devices. Comparative effectiveness research is the generation and synthesis of evidence that compares the benefits and harms of alternative methods to prevent, diagnose, treat, and monitor a clinical condition, as these methods are truly used in the real world; methodologic contributions of relevance to pharmacoepidemiology, whether original contributions, reviews of existing methods, or tutorials for how to apply the methods of pharmacoepidemiology; assessments of harm versus benefit in drug therapy; patterns of drug utilization; relationships between pharmacoepidemiology and the formulation and interpretation of regulatory guidelines; evaluations of risk management plans and programmes relating to pharmaceuticals, biologics and medical devices.
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