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Clinical information extraction applications: A literature review.临床信息提取应用:文献综述。
J Biomed Inform. 2018 Jan;77:34-49. doi: 10.1016/j.jbi.2017.11.011. Epub 2017 Nov 21.
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Natural language processing systems for capturing and standardizing unstructured clinical information: A systematic review.用于捕获和标准化非结构化临床信息的自然语言处理系统:一项系统综述。
J Biomed Inform. 2017 Sep;73:14-29. doi: 10.1016/j.jbi.2017.07.012. Epub 2017 Jul 17.
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Bidirectional RNN for Medical Event Detection in Electronic Health Records.用于电子健康记录中医疗事件检测的双向循环神经网络
Proc Conf. 2016 Jun;2016:473-482. doi: 10.18653/v1/n16-1056.
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MIMIC-III, a freely accessible critical care database.MIMIC-III,一个免费获取的重症监护数据库。
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Recognizing Disjoint Clinical Concepts in Clinical Text Using Machine Learning-based Methods.使用基于机器学习的方法识别临床文本中的不相交临床概念。
AMIA Annu Symp Proc. 2015 Nov 5;2015:1184-93. eCollection 2015.
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Using Electronic Health Records for Population Health Research: A Review of Methods and Applications.利用电子健康记录进行人群健康研究:方法与应用综述。
Annu Rev Public Health. 2016;37:61-81. doi: 10.1146/annurev-publhealth-032315-021353. Epub 2015 Dec 11.
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The contribution of co-reference resolution to supervised relation detection between bacteria and biotopes entities.共指消解对细菌与生物栖息地实体之间监督关系检测的贡献。
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Structured learning for spatial information extraction from biomedical text: bacteria biotopes.从生物医学文本中提取空间信息的结构化学习:细菌生物栖息地
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An information extraction framework for cohort identification using electronic health records.一种使用电子健康记录进行队列识别的信息提取框架。
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利用结合知识库和深度学习的自然语言处理系统提取药物和相关药物不良事件。

Extracting medications and associated adverse drug events using a natural language processing system combining knowledge base and deep learning.

机构信息

Med Data Quest, Inc, La Jolla, California, USA.

出版信息

J Am Med Inform Assoc. 2020 Jan 1;27(1):56-64. doi: 10.1093/jamia/ocz141.

DOI:10.1093/jamia/ocz141
PMID:31591641
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7489056/
Abstract

OBJECTIVE

Detecting adverse drug events (ADEs) and medications related information in clinical notes is important for both hospital medical care and medical research. We describe our clinical natural language processing (NLP) system to automatically extract medical concepts and relations related to ADEs and medications from clinical narratives. This work was part of the 2018 National NLP Clinical Challenges Shared Task and Workshop on Adverse Drug Events and Medication Extraction.

MATERIALS AND METHODS

The authors developed a hybrid clinical NLP system that employs a knowledge-based general clinical NLP system for medical concepts extraction, and a task-specific deep learning system for relations identification using attention-based bidirectional long short-term memory networks.

RESULTS

The systems were evaluated as part of the 2018 National NLP Clinical Challenges challenge, and our attention-based bidirectional long short-term memory networks based system obtained an F-measure of 0.9442 for relations identification task, ranking fifth at the challenge, and had <2% difference from the best system. Error analysis was also conducted targeting at figuring out the root causes and possible approaches for improvement.

CONCLUSIONS

We demonstrate the generic approaches and the practice of connecting general purposed clinical NLP system to task-specific requirements with deep learning methods. Our results indicate that a well-designed hybrid NLP system is capable of ADE and medication-related information extraction, which can be used in real-world applications to support ADE-related researches and medical decisions.

摘要

目的

从临床记录中检测药物不良事件(ADE)和药物相关信息对于医院医疗和医学研究都很重要。我们描述了我们的临床自然语言处理(NLP)系统,该系统用于自动从临床叙述中提取与 ADE 和药物相关的医学概念和关系。这项工作是 2018 年国家 NLP 临床挑战赛和药物不良事件与药物提取挑战赛的一部分。

材料与方法

作者开发了一种混合临床 NLP 系统,该系统使用基于知识的通用临床 NLP 系统进行医学概念提取,并使用基于注意力的双向长短期记忆网络的特定于任务的深度学习系统进行关系识别。

结果

该系统作为 2018 年国家 NLP 临床挑战赛的一部分进行了评估,我们基于注意力的双向长短期记忆网络系统在关系识别任务中获得了 0.9442 的 F 度量,在挑战赛中排名第五,与最佳系统的差异小于 2%。还进行了错误分析,旨在找出根本原因和改进的可能方法。

结论

我们展示了通用方法和将通用临床 NLP 系统连接到特定于任务的深度学习方法的实践。我们的结果表明,设计良好的混合 NLP 系统能够提取 ADE 和药物相关信息,可用于实际应用,以支持与 ADE 相关的研究和医疗决策。