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利用科学文献报告进行药物警戒。原型软件分析工具的开发与可用性测试。

Harnessing scientific literature reports for pharmacovigilance. Prototype software analytical tool development and usability testing.

作者信息

Sorbello Alfred, Ripple Anna, Tonning Joseph, Munoz Monica, Hasan Rashedul, Ly Thomas, Francis Henry, Bodenreider Olivier

机构信息

Alfred Sorbello, DO, MPH, US Food and Drug Administration, Center for Drug Evaluation and Research, Office of Translational Sciences, 10903 New Hampshire Avenue, Silver Spring, MD 20993-0002 USA, Email:

出版信息

Appl Clin Inform. 2017 Mar 22;8(1):291-305. doi: 10.4338/ACI-2016-11-RA-0188.

Abstract

OBJECTIVES

We seek to develop a prototype software analytical tool to augment FDA regulatory reviewers' capacity to harness scientific literature reports in PubMed/MEDLINE for pharmacovigilance and adverse drug event (ADE) safety signal detection. We also aim to gather feedback through usability testing to assess design, performance, and user satisfaction with the tool.

METHODS

A prototype, open source, web-based, software analytical tool generated statistical disproportionality data mining signal scores and dynamic visual analytics for ADE safety signal detection and management. We leveraged Medical Subject Heading (MeSH) indexing terms assigned to published citations in PubMed/MEDLINE to generate candidate drug-adverse event pairs for quantitative data mining. Six FDA regulatory reviewers participated in usability testing by employing the tool as part of their ongoing real-life pharmacovigilance activities to provide subjective feedback on its practical impact, added value, and fitness for use.

RESULTS

All usability test participants cited the tool's ease of learning, ease of use, and generation of quantitative ADE safety signals, some of which corresponded to known established adverse drug reactions. Potential concerns included the comparability of the tool's automated literature search relative to a manual 'all fields' PubMed search, missing drugs and adverse event terms, interpretation of signal scores, and integration with existing computer-based analytical tools.

CONCLUSIONS

Usability testing demonstrated that this novel tool can automate the detection of ADE safety signals from published literature reports. Various mitigation strategies are described to foster improvements in design, productivity, and end user satisfaction.

摘要

目标

我们旨在开发一种原型软件分析工具,以增强美国食品药品监督管理局(FDA)监管审评人员利用PubMed/MEDLINE中的科学文献报告进行药物警戒和药物不良事件(ADE)安全信号检测的能力。我们还旨在通过可用性测试收集反馈,以评估该工具的设计、性能和用户满意度。

方法

一种原型的、基于网络的开源软件分析工具,用于生成统计不均衡性数据挖掘信号分数和动态可视化分析,以进行ADE安全信号检测和管理。我们利用分配给PubMed/MEDLINE中已发表文献的医学主题词(MeSH)索引词来生成候选药物-不良事件对,用于定量数据挖掘。六名FDA监管审评人员通过将该工具作为其正在进行的实际药物警戒活动的一部分来参与可用性测试,以提供关于其实际影响、附加值和适用性的主观反馈。

结果

所有可用性测试参与者都提到了该工具易于学习、易于使用以及能生成定量的ADE安全信号,其中一些信号与已知的既定药物不良反应相对应。潜在问题包括该工具的自动文献搜索与手动的“所有字段”PubMed搜索的可比性、遗漏的药物和不良事件术语、信号分数的解释以及与现有的基于计算机的分析工具的集成。

结论

可用性测试表明,这种新型工具可以自动从已发表的文献报告中检测ADE安全信号。描述了各种缓解策略,以促进在设计、生产力和最终用户满意度方面的改进。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d5cc/5373771/76f8db699277/ACI-08-0291-g001.jpg

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