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A general natural-language text processor for clinical radiology.

机译:用于临床放射学的通用自然语言文本处理器。

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摘要

OBJECTIVE: Development of a general natural-language processor that identifies clinical information in narrative reports and maps that information into a structured representation containing clinical terms. DESIGN: The natural-language processor provides three phases of processing, all of which are driven by different knowledge sources. The first phase performs the parsing. It identifies the structure of the text through use of a grammar that defines semantic patterns and a target form. The second phase, regularization, standardizes the terms in the initial target structure via a compositional mapping of multi-word phrases. The third phase, encoding, maps the terms to a controlled vocabulary. Radiology is the test domain for the processor and the target structure is a formal model for representing clinical information in that domain. MEASUREMENTS: The impression sections of 230 radiology reports were encoded by the processor. Results of an automated query of the resultant database for the occurrences of four diseases were compared with the analysis of a panel of three physicians to determine recall and precision. RESULTS: Without training specific to the four diseases, recall and precision of the system (combined effect of the processor and query generator) were 70% and 87%. Training of the query component increased recall to 85% without changing precision.
机译:目的:开发一种通用的自然语言处理器,该处理器可识别叙事报告中的临床信息,并将该信息映射为包含临床术语的结构化表示形式。设计:自然语言处理器提供了三个处理阶段,所有这些阶段均由不同的知识源驱动。第一阶段执行解析。它通过使用定义语义模式和目标形式的语法来识别文本的结构。第二阶段,正则化,是通过多词短语的组成映射对初始目标结构中的术语进行标准化的。第三阶段,编码,将术语映射到受控词汇表。放射学是处理器的测试领域,目标结构是用于表示该领域中临床信息的正式模型。测量:230幅放射学报告的印象部分由处理器编码。将针对四种疾病的发生情况的结果数据库的自动查询结果与由三名医生组成的小组的分析进行比较,以确定召回率和精确度。结果:无需对这四种疾病进行专门的培训,系统的召回率和精确度(处理器和查询生成器的综合效果)分别为70%和87%。对查询组件的训练将查全率提高到了85%,而没有改变精度。

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