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Computational Approaches for Pharmacovigilance Signal Detection: Toward Integrated and Semantically-Enriched Frameworks

机译:药物警戒信号检测的计算方法:朝着集成化和语义丰富的框架发展

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摘要

Computational signal detection constitutes a key element of postmarketing drug monitoring and surveillance. Diverse data sources are considered within the ‘search space’ of pharmacovigilance scientists, and respective data analysis methods are employed, all with their qualities and shortcomings, towards more timely and accurate signal detection. Recent systematic comparative studies highlighted not only event-based and data-source-based differential performance across methods but also their complementarity. These findings reinforce the arguments for exploiting all possible information sources for drug safety and the parallel use of multiple signal detection methods. Combinatorial signal detection has been pursued in few studies up to now, employing a rather limited number of methods and data sources but illustrating well-promising outcomes. However, the large-scale realization of this approach requires systematic frameworks to address the challenges of the concurrent analysis setting. In this paper, we argue that semantic technologies provide the means to address some of these challenges, and we particularly highlight their contribution in (a) annotating data sources and analysis methods with quality attributes to facilitate their selection given the analysis scope; (b) consistently defining study parameters such as health outcomes and drugs of interest, and providing guidance for study setup; (c) expressing analysis outcomes in a common format enabling data sharing and systematic comparisons; and (d) assessing/supporting the novelty of the aggregated outcomes through access to reference knowledge sources related to drug safety. A semantically-enriched framework can facilitate seamless access and use of different data sources and computational methods in an integrated fashion, bringing a new perspective for large-scale, knowledge-intensive signal detection.
机译:计算信号检测是上市后药物监测和监视的关键要素。在药物警戒科学家的“搜索空间”中考虑了各种数据源,并采用了各自的数据分析方法,这些方法各有其优缺点,旨在更及时,更准确地检测信号。最近的系统比较研究不仅强调了跨方法的基于事件和基于数据源的差异性能,还强调了它们的互补性。这些发现加强了为药物安全性以及并行使用多种信号检测方法而利用所有可能的信息源的论点。迄今为止,在很少的研究中一直追求组合信号检测,采用了数量有限的方法和数据源,但说明了有希望的结果。但是,这种方法的大规模实现需要系统的框架来应对并发分析设置的挑战。在本文中,我们认为语义技术提供了解决其中一些挑战的方法,并且我们特别强调了它们在以下方面的贡献:(a)注释具有质量属性的数据源和分析方法,以方便在给定分析范围的情况下对其进行选择; (b)始终如一地定义研究参数,例如健康结果和目标药物,并为研究设置提供指导; (c)以通用格式表示分析结果,以实现数据共享和系统比较; (d)通过获取与药物安全性相关的参考知识来源,评估/支持汇总结果的新颖性。语义丰富的框架可以以集成的方式促进无缝访问和使用不同的数据源和计算方法,从而为大规模的知识密集型信号检测带来了新的视角。

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