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Identifying Abdominal Aortic Aneurysm Cases and Controls using Natural Language Processing of Radiology Reports

机译:使用放射学报告的自然语言处理识别腹部主动脉瘤病例和对照

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摘要

Prevalence of abdominal aortic aneurysm (AAA) is increasing due to longer life expectancy and implementation of screening programs. Patient-specific longitudinal measurements of AAA are important to understand pathophysiology of disease development and modifiers of abdominal aortic size. In this paper, we applied natural language processing (NLP) techniques to process radiology reports and developed a rule-based algorithm to identify AAA patients and also extract the corresponding aneurysm size with the examination date. AAA patient cohorts were determined by a hierarchical approach that: 1) selected potential AAA reports using keywords; 2) classified reports into AAA-case vs. non-case using rules; and 3) determined the AAA patient cohort based on a report-level classification. Our system was built in an Unstructured Information Management Architecture framework that allows efficient use of existing NLP components. Our system produced an F-score of 0.961 for AAA-case report classification with an accuracy of 0.984 for aneurysm size extraction.
机译:由于预期寿命更长和实施筛查程序,腹主动脉瘤(AAA)的患病率正在增加。特定于患者的AAA纵向测量对于了解疾病发展的病理生理学和腹主动脉大小的改变很重要。在本文中,我们应用自然语言处理(NLP)技术处理放射线报告,并开发了一种基于规则的算法来识别AAA患者,并提取带有检查日期的相应动脉瘤大小。 AAA患者队列是通过分层方法确定的:1)使用关键字选择潜在的AAA报告; 2)使用规则将报告分为AAA案例和非案例; 3)根据报告级别分类确定AAA患者队列。我们的系统建立在非结构化信息管理架构框架中,该框架可有效利用现有的NLP组件。我们的系统为AAA病例报告分类提供了0.961的F评分,对于动脉瘤大小的提取,其F值为0.984。

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