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理解医疗保健领域的大文本数据:临床自然语言处理部分的研究结果。

Making Sense of Big Textual Data for Health Care: Findings from the Section on Clinical Natural Language Processing.

作者信息

Névéol A, Zweigenbaum P

出版信息

Yearb Med Inform. 2017 Aug;26(1):228-234. doi: 10.15265/IY-2017-027. Epub 2017 Sep 11.

DOI:10.15265/IY-2017-027
PMID:29063569
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC6239234/
Abstract

To summarize recent research and present a selection of the best papers published in 2016 in the field of clinical Natural Language Processing (NLP). A survey of the literature was performed by the two section editors of the IMIA Yearbook NLP section. Bibliographic databases were searched for papers with a focus on NLP efforts applied to clinical texts or aimed at a clinical outcome. Papers were automatically ranked and then manually reviewed based on titles and abstracts. A shortlist of candidate best papers was first selected by the section editors before being peer-reviewed by independent external reviewers. The five clinical NLP best papers provide a contribution that ranges from emerging original foundational methods to transitioning solid established research results to a practical clinical setting. They offer a framework for abbreviation disambiguation and coreference resolution, a classification method to identify clinically useful sentences, an analysis of counseling conversations to improve support to patients with mental disorder and grounding of gradable adjectives. Clinical NLP continued to thrive in 2016, with an increasing number of contributions towards applications compared to fundamental methods. Fundamental work addresses increasingly complex problems such as lexical semantics, coreference resolution, and discourse analysis. Research results translate into freely available tools, mainly for English.

摘要

总结近期研究,并展示2016年发表在临床自然语言处理(NLP)领域的精选优秀论文。IMIA年鉴NLP板块的两位编辑对文献进行了调查。在文献数据库中搜索论文,重点关注应用于临床文本或旨在取得临床结果的NLP研究。论文首先自动排名,然后根据标题和摘要进行人工评审。候选优秀论文的入围名单首先由板块编辑选出,然后由独立的外部评审人员进行同行评审。五篇临床NLP优秀论文的贡献涵盖了从新兴的原创基础方法到将成熟的研究成果转化到实际临床环境等多个方面。它们提供了一个缩写词消歧和指代消解的框架、一种识别临床有用句子的分类方法、对咨询对话的分析以改善对精神障碍患者的支持以及可分级形容词的基础。2016年临床NLP持续蓬勃发展,与基础方法相比,应用方面的贡献越来越多。基础工作解决了越来越复杂的问题,如词汇语义、指代消解和语篇分析。研究成果转化为免费可用的工具,主要针对英语。

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Yearb Med Inform. 2017 Aug;26(1):214-227. doi: 10.15265/IY-2017-029. Epub 2017 Sep 11.
2
Large-scale Analysis of Counseling Conversations: An Application of Natural Language Processing to Mental Health.咨询对话的大规模分析:自然语言处理在心理健康中的应用
Trans Assoc Comput Linguist. 2016;4:463-476.
3
Enhancing Risk Assessment in Patients Receiving Chronic Opioid Analgesic Therapy Using Natural Language Processing.利用自然语言处理技术增强接受慢性阿片类镇痛药治疗的患者的风险评估。
Pain Med. 2017 Oct 1;18(10):1952-1960. doi: 10.1093/pm/pnw283.
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The utility of including pathology reports in improving the computational identification of patients.纳入病理报告在改善患者的计算识别方面的效用。
J Pathol Inform. 2016 Nov 29;7:46. doi: 10.4103/2153-3539.194838. eCollection 2016.
5
Large-scale identification of patients with cerebral aneurysms using natural language processing.使用自然语言处理技术大规模识别脑动脉瘤患者
Neurology. 2017 Jan 10;88(2):164-168. doi: 10.1212/WNL.0000000000003490. Epub 2016 Dec 7.
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A Natural Language Processing-based Model to Automate MRI Brain Protocol Selection and Prioritization.一种基于自然语言处理的模型,用于自动选择和优先安排MRI脑部检查方案
Acad Radiol. 2017 Feb;24(2):160-166. doi: 10.1016/j.acra.2016.09.013. Epub 2016 Nov 23.
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