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Automatic Extraction of Drug Adverse Effects from Product Characteristics (SPCs): A Text Versus Table Comparison

机译:自动提取产品特征(SPC)的药物不利影响:文本与表比较

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Background: Potential adverse effects (AEs) of drugs are described in their summary of product characteristics (SPCs), a textual document. Automatic extraction of AEs from SPCs is useful for detecting AEs and for building drug databases. However, this task is difficult because each AE is associated with a frequency that must be extracted and the presentation of AEs in SPCs is heterogeneous, consisting of plain text and tables in many different formats. Methods: We propose a taxonomy for the presentation of AEs in SPCs. We set up natural language processing (NLP) and table parsing methods for extracting AEs from texts and tables of any format, and evaluate them on 10 SPCs. Results: Automatic extraction performed better on tables than on texts. Conclusion: Tables should be recommended for the presentation of the AEs section of the SPCs.
机译:背景:在其产品特征(SPC)的概要中描述了药物的潜在不利影响(AES),是一种文本文件。来自SPC的AES自动提取对于检测AES和构建药物数据库是有用的。然而,这项任务很困难,因为每个AE与必须提取的频率相关联,并且SPC中的AES的呈现是异构的,由纯文本和表格中的许多不同格式组成。方法:我们提出了一个分类学,用于在SPCS中呈现AES。我们设置自然语言处理(NLP)和表解析方法,用于从任何格式的文本和表中解压缩AES,并在10个SPC上进行评估。结果:在表格上执行的自动提取比文本更好。结论:应建议表介绍SPC的AES部分。

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