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Extraction and Standardization of Patient Complaints from Electronic Medication Histories for Pharmacovigilance: Natural Language Processing Analysis in Japanese

机译:从用于药物警戒的电子用药史中提取和标准化患者投诉:日语中的自然语言处理分析

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Background Despite the growing number of studies using natural language processing for pharmacovigilance, there are few reports on manipulating free text patient information in Japanese. Objective This study aimed to establish a method of extracting and standardizing patient complaints from electronic medication histories accumulated in a Japanese community pharmacy for the detection of possible adverse drug event (ADE) signals. Methods Subjective information included in electronic medication history data provided by a Japanese pharmacy operating in Hiroshima, Japan from September 1, 2015 to August 31, 2016, was used as patients’ complaints. We formulated search rules based on morphological analysis and daily (nonmedical) speech and developed a system that automatically executes the search rules and annotates free text data with International Classification of Diseases, Tenth Revision (ICD-10) codes. The performance of the system was evaluated through comparisons with data manually annotated by health care workers for a data set of 5000 complaints. Results Of 5000 complaints, the system annotated 2236 complaints with ICD-10 codes, whereas health care workers annotated 2348 statements. There was a match in the annotation of 1480 complaints between the system and manual work. System performance was .66 regarding precision, .63 in recall, and .65 for the F-measure. Conclusions Our results suggest that the system may be helpful in extracting and standardizing patients’ speech related to symptoms from massive amounts of free text data, replacing manual work. After improving the extraction accuracy, we expect to utilize this system to detect signals of possible ADEs from patients’ complaints in the future.
机译:背景技术尽管使用自然语言处理进行药物警戒的研究越来越多,但很少有关于用日语操纵自由文本患者信息的报道。目的本研究旨在建立一种从日本社区药房中积累的电子用药史中提取和标准化患者主诉的方法,以检测可能的不良药物事件(ADE)信号。方法将2015年9月1日至2016年8月31日在日本广岛市的一家日本药房提供的电子用药史数据中包含的主观信息用作患者的主诉。我们根据形态分析和日常(非医学)语音制定了搜索规则,并开发了一个系统,该系统自动执行搜索规则并使用国际疾病分类第十修订版(ICD-10)代码注释自由文本数据。该系统的性能是通过与5000名投诉的医疗保健工作者手动注释的数据进行比较来评估的。结果在5000个投诉中,系统使用ICD-10代码注释了2236个投诉,而医疗保健工作者注释了2348个声明。系统和手动操作之间在1480个投诉的注释中匹配。关于精度,系统性能为.66,召回率为.63,F量度为.65。结论我们的结果表明,该系统可能有助于从大量的免费文本数据中提取和标准化与症状相关的患者言语,从而代替人工工作。提高提取精度之后,我们希望将来使用该系统来检测患者投诉中可能产生的ADE信号。

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