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首页> 外文期刊>Journal of biomedical informatics. >DEEPEN: A negation detection system for clinical text incorporating dependency relation into NegEx
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DEEPEN: A negation detection system for clinical text incorporating dependency relation into NegEx

机译:DEEPEN:用于临床文本的否定检测系统,将依赖关系纳入NegEx

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摘要

In Electronic Health Records (EHRs), much of valuable information regarding patients' conditions is embedded in free text format. Natural language processing (NLP) techniques have been developed to extract clinical information from free text. One challenge faced in clinical NLP is that the meaning of clinical entities is heavily affected by modifiers such as negation. A negation detection algorithm, NegEx, applies a simplistic approach that has been shown to be powerful in clinical NLP. However, due to the failure to consider the contextual relationship between words within a sentence, NegEx fails to correctly capture the negation status of concepts in complex sentences. Incorrect negation assignment could cause inaccurate diagnosis of patients' condition or contaminated study cohorts. We developed a negation algorithm called DEEPEN to decrease NegEx's false positives by taking into account the dependency relationship between negation words and concepts within a sentence using Stanford dependency parser. The system was developed and tested using EHR data from Indiana University (IU) and it was further evaluated on Mayo Clinic dataset to assess its generalizability. The evaluation results demonstrate DEEPEN, which incorporates dependency parsing into NegEx, can reduce the number of incorrect negation assignment for patients with positive findings, and therefore improve the identification of patients with the target clinical findings in EHRs. (C) 2015 Elsevier Inc. All rights reserved.
机译:在电子健康记录(EHR)中,许多有关患者状况的宝贵信息以自由文本格式嵌入。已经开发了自然语言处理(NLP)技术以从自由文本中提取临床信息。临床NLP面临的一个挑战是临床实体的含义受否定等修饰语的严重影响。否定检测算法NegEx应用了一种简单的方法,该方法在临床NLP中已显示出强大的功能。但是,由于未能考虑句子中单词之间的上下文关系,NegEx无法正确捕获复杂句子中概念的否定状态。否定的否定分配可能导致对患者状况的诊断不正确或研究队列受到污染。我们开发了一种称为DEEPEN的否定算法,以通过使用Stanford依赖分析器考虑否定词与句子中概念之间的依赖关系来减少NegEx的误报。该系统使用印第安纳大学(IU)的EHR数据进行开发和测试,并在Mayo Clinic数据集中进行了进一步评估,以评估其通用性。评估结果表明,DEEPEN将依赖项解析合并到NegEx中,可以减少具有阳性发现的患者的错误否定分配数量,从而改善对具有EHRs中目标临床发现的患者的识别。 (C)2015 Elsevier Inc.保留所有权利。

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