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ADEPt, a semantically-enriched pipeline for extracting adverse drug events from free-text electronic health records

机译:ADEPt,一种语义丰富的管道,用于从自由文本电子健康记录中提取不良药物事件

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摘要

Adverse drug events (ADEs) are unintended responses to medical treatment. They can greatly affect a patient’s quality of life and present a substantial burden on healthcare. Although Electronic health records (EHRs) document a wealth of information relating to ADEs, they are frequently stored in the unstructured or semi-structured free-text narrative requiring Natural Language Processing (NLP) techniques to mine the relevant information. Here we present a rule-based ADE detection and classification pipeline built and tested on a large Psychiatric corpus comprising 264k patients using the de-identified EHRs of four UK-based psychiatric hospitals. The pipeline uses characteristics specific to Psychiatric EHRs to guide the annotation process, and distinguishes: a) the temporal value associated with the ADE mention (whether it is historical or present), b) the categorical value of the ADE (whether it is assertive, hypothetical, retrospective or a general discussion) and c) the implicit contextual value where the status of the ADE is deduced from surrounding indicators, rather than explicitly stated. We manually created the rulebase in collaboration with clinicians and pharmacists by studying ADE mentions in various types of clinical notes. We evaluated the open-source Adverse Drug Event annotation Pipeline (ADEPt) using 19 ADEs specific to antipsychotics and antidepressants medication. The ADEs chosen vary in severity, regularity and persistence. The average F-measure and accuracy achieved by our tool across all tested ADEs were 0.83 and 0.83 respectively. In addition to annotation power, the ADEPT pipeline presents an improvement to the state of the art context-discerning algorithm, ConText.
机译:药物不良反应(ADEs)是药物治疗的意外反应。它们会极大地影响患者的生活质量,并给医疗保健带来沉重负担。尽管电子健康记录(EHR)记录了大量与ADE有关的信息,但它们经常存储在非结构化或半结构化的自由文本叙述中,需要自然语言处理(NLP)技术来挖掘相关信息。在这里,我们介绍了基于规则的ADE检测和分类管道,该管道在包含264k患者的大型精神病语料库上使用英国四家精神病医院的未识别出的EHR进行构建和测试。管道使用特定于精神病学EHR的特征来指导注释过程,并区分:a)与ADE提及相关的时间价值(无论是历史的还是现在的),b)ADE的分类价值(无论是肯定的,假设性,回顾性或一般性讨论)和c)隐含的上下文值,其中ADE的状态是从周围的指标推导出来的,而不是明确指出的。我们与临床医生和药剂师合作,通过研究各种临床注释中的ADE提及来手动创建规则库。我们使用19种特定的ADEs评估了开源的 A 不同的 D 地毯 E 排气口注 P ipeline(ADEPt)服用抗精神病药和抗抑郁药。选择的ADE的严重性,规律性和持久性各不相同。我们的工具在所有测试的ADE中平均获得的F值和准确性分别为0.83和0.83。除注释功能外,ADEPT管道还对上下文检测算法ConText进行了改进。

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