首页> 外文期刊>Drug safety: An international journal of medical toxicology and drug experience >MADEx: A System for Detecting Medications, Adverse Drug Events, and Their Relations from Clinical Notes
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MADEx: A System for Detecting Medications, Adverse Drug Events, and Their Relations from Clinical Notes

机译:Madex:一种检测药物,不良药物事件及其与临床票据关系的系统

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IntroductionEarly detection of adverse drug events (ADEs) from electronic health records is an important, challenging task to support pharmacovigilance and drug safety surveillance. A well-known challenge to use clinical text for detection of ADEs is that much of the detailed information is documented in a narrative manner. Clinical natural language processing (NLP) is the key technology to extract information from unstructured clinical text.ObjectiveWe present a machine learning-based clinical NLP systemMADExfor detecting medications, ADEs, and their relations from clinical notes.MethodsWe developed a recurrent neural network (RNN) model using a long short-term memory (LSTM) strategy for clinical name entity recognition (NER) and compared it with baseline conditional random fields (CRFs). We also developed a modified training strategy for the RNN, which outperformed the widely used early stop strategy. For relation extraction, we compared support vector machines (SVMs) and random forests on single-sentence relations and cross-sentence relations. In addition, we developed an integrated pipeline to extract entities and relations together by combining RNNs and SVMs.ResultsMADEx achieved the top-three best performances (F1 score of 0.8233) for clinical NER in the 2018 Medication and Adverse Drug Events (MADE1.0) challenge. The post-challenge evaluation showed that the relation extraction module and integrated pipeline (identify entity and relation together) of MADEx are comparable with the best systems developed in this challenge.ConclusionThis study demonstrated the efficiency of deep learning methods for automatic extraction of medications, ADEs, and their relations from clinical text to support pharmacovigilance and drug safety surveillance.
机译:引导式检测电子健康记录的不良药物事件(ADES)是一种重要的,具有挑战性的任务,可以支持药物检测和药物安全监测。众所周知的挑战用于检测到广告的临床文本是,许多详细信息以叙述方式记录。临床自然语言处理(NLP)是从非结构化临床文本中提取信息的关键技术。objectiveWe介绍了一种基于机器学习的临床NLP SystemMadex,用于检测药物,ades和它们与临床Notes的关系。近奇地区开发了一种经常性的神经网络(RNN)模型使用长期内存(LSTM)策略进行临床名称实体识别(ner),并将其与基线条件随机字段(CRF)进行比较。我们还为RNN制定了改进的培训策略,这优于广泛使用的早期停止策略。对于相关提取,我们将支持向量机(SVM)和随机林进行比较单句关系和跨句关系。此外,我们开发了一个集成的管道,通过组合RNN和SVMS来提取实体和关系。结果,2018年药物和不良药物事件(Make1.0)的临床网,诊所患有前三名最佳表演(F1得分为0.8233)挑战。挑战后的评估结果表明,Madex的关系提取模块和集成管道(识别实体和关系)与该挑战中的最佳系统相当。结论这项研究证明了深度学习方法的自动提取药物,ades他们与临床文本的关系支持药物检测和药物安全监测。

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