Rassinoux A M, Miller R A, Baud R H, Scherrer J R
Division of Biomedical Informatics, Vanderbilt University, Nashville, TN, USA.
Proc AMIA Annu Fall Symp. 1997:620-4.
Medical language is in essence highly compositional, allowing complex information to be expressed from more elementary pieces. Embedding the expressive power of medical language into formal systems of representation is recognized in the medical informatics community as a key step towards sharing such information among medical record, decision support, and information retrieval systems. Accordingly, such representation requires managing both the expressiveness of the formalism and its computational tractability, while coping with the level of detail expected by clinical applications. These desiderata can be supported by enumerative as well as compositional approaches, as argued in this paper. These principles have been applied in recasting a frame-based system for general medical findings developed during the 1980s. The new system captures the precise meaning of a subset of over 1500 medical terms for general internal medicine identified from the Quick Medical Reference (QMR) lexicon. In order to evaluate the adequacy of this formal structure in reflecting the deep meaning of the QMR findings, a validation process was implemented. It consists of automatically rebuilding the semantic representation of the QMR findings by analyzing them through the RECIT natural language analyzer, whose semantic components have been adjusted to this frame-based model for the understanding task.
医学语言本质上具有高度的组合性,能够用更基本的元素来表达复杂信息。在医学信息学界,将医学语言的表达能力融入形式化表示系统被视为在病历、决策支持和信息检索系统之间共享此类信息的关键一步。因此,这种表示需要在处理临床应用所期望的细节程度的同时,兼顾形式主义的表达能力及其计算可处理性。如本文所述,枚举法和组合法都可以支持这些需求。这些原则已被应用于重塑一个20世纪80年代开发的用于一般医学发现的基于框架的系统。新系统捕捉了从快速医学参考(QMR)词汇表中识别出的1500多个普通内科医学术语子集的精确含义。为了评估这种形式结构在反映QMR发现的深层含义方面的充分性,实施了一个验证过程。它包括通过RECIT自然语言分析器对QMR发现进行分析,从而自动重建其语义表示,该分析器的语义组件已针对此基于框架的理解任务模型进行了调整。