Identifying Anatomical Phrases in Clinical Reports by Shallow Semantic Parsing Methods

Vijayaraghavan Bashyam, R. Taira
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引用次数: 6

Abstract

Natural language processing (NLP) is being applied for several information extraction tasks in the biomedical domain. The unique nature of clinical information requires the need for developing an NLP system designed specifically for the clinical domain. We describe a method to identify semantically coherent phrases within clinical reports. This is an important step towards full syntactic parsing within a clinical NLP system. We use this semantic phrase chunker to identify anatomical phrases within radiology reports related to the genitourinary domain. A discriminative classifier based on support vector machines was used to classify words into one of five phrase classification categories. Training of the classifier was performed using 1000 hand-tagged sentences from a corpus of genitourinary radiology reports. Features used by the classifier include n-grams, syntactic tags and semantic labels. Evaluation was conducted on a blind test set of 250 sentences from the same domain. The system achieved overall performance scores of 0.87 (precision), 0.91 (recall) and 0.89 (balanced f-score). Anatomical phrase extraction can be rapidly and accurately accomplished
浅语义分析方法识别临床报告中的解剖短语
自然语言处理(NLP)正被应用于生物医学领域的一些信息提取任务。临床信息的独特性要求开发一个专门为临床领域设计的NLP系统。我们描述了一种在临床报告中识别语义连贯短语的方法。这是迈向临床NLP系统完整句法分析的重要一步。我们使用这个语义短语分块器来识别与泌尿生殖系统领域相关的放射学报告中的解剖学短语。采用基于支持向量机的判别分类器将词划分为五个短语分类类别之一。分类器的训练是使用来自泌尿生殖系统放射学报告的1000个手工标记的句子进行的。分类器使用的特征包括n-grams、句法标签和语义标签。对来自同一领域的250个句子进行盲测。该系统的总体性能得分为0.87(精度)、0.91(召回率)和0.89(平衡f分数)。解剖短语提取可以快速、准确地完成
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