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Adverse Drug Reaction Mining in Pharmacovigilance Data Using Formal Concept Analysis

机译:使用形式概念分析的药物警戒数据中的不良药物反应挖掘

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In this paper we discuss the problem of extracting and evaluating associations between drugs and adverse effects in pharmacovigilance data. Approaches proposed by the medical informatics community for mining one drug - one effect pairs perform an exhaustive search strategy that precludes from mining high-order associations. Some specificities of pharmacovigilance data prevent from applying pattern mining approaches proposed by the data mining community for similar problems dealing with epidemiological studies. We argue that Formal Concept Analysis (FCA) and concept lattices constitute a suitable framework for both identifying relevant associations, and assisting experts in their evaluation task. Demographic attributes are handled so that the disproportionality of an association is computed w.r.t. the relevant population stratum to prevent confounding. We put the focus on the under- standability of the results and provide evaluation facilities for experts. A real case study on a subset of the French spontaneous reporting system shows that the method identifies known adverse drug reactions and some unknown associations that has to be further investigated.
机译:在本文中,我们讨论了提取和评估药物之间的关联以及药物警戒性数据中的不良反应的问题。医学信息学界提出的用于挖掘一种药物的方法-一个效应对执行详尽的搜索策略,该策略排除了挖掘高阶关联的可能性。药物警戒性数据的某些特殊性阻止了数据挖掘社区针对与流行病学研究相关的类似问题应用模式挖掘方法。我们认为形式概念分析(FCA)和概念格构成了一个合适的框架,既可以识别相关的关联,又可以帮助专家完成评估任务。处理人口统计属性,以便用w.r.t计算关联的不成比例。有关的人口阶层,以防止混淆。我们将重点放在结果的可理解性上,并为专家提供评估工具。对法国自发报告系统子集的真实案例研究表明,该方法可以识别已知的药物不良反应和一些未知的关联,需要进一步研究。

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