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Scaling Out and Evaluation of OBSecAn an Automated Section Annotator for Semi-Structured Clinical Documents on a Large VA Clinical Corpus

机译:在大型VA临床语料库上扩展和评估OBSecAn(半结构化临床文档的自动节注释器)

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摘要

“Identifying and labeling” (annotating) sections improves the effectiveness of extracting information stored in the free text of clinical documents. OBSecAn, an automated ontology-based section annotator, was developed to identify and label sections of semi-structured clinical documents from the Department of Veterans Affairs (VA). In the first step, the algorithm reads and parses the document to obtain and store information regarding sections into a structure that supports the hierarchy of sections. The second stage detects and makes correction to errors in the parsed structure. The third stage produces the section annotation output using the final parsed tree. In this study, we present the OBSecAn method and its scale to a million document corpus and evaluate its performance in identifying family history sections. We identify high yield sections for this use case from note titles such as primary care and demonstrate a median rate of 99% in correctly identifying a family history section.
机译:“识别和标记”(注释)部分提高了提取存储在临床文档自由文本中的信息的有效性。 OBSecAn是一种基于本体的自动节注释器,用于从退伍军人事务部(VA)识别和标记半结构化临床文档的节。第一步,算法读取并解析文档,以获取有关各节的信息并将其存储到支持节层次结构的结构中。第二阶段检测并纠正已解析结构中的错误。第三阶段使用最终的解析树生成节注释输出。在这项研究中,我们将OBSecAn方法及其规模扩展到一百万个文档语料库,并评估其在识别家族史部分中的性能。我们从笔记标题(例如初级保健)中识别出此用例的高收益部分,并证明正确识别家族史部分的中位率为99%。

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