Automation and Integration of Components for Generalized Semantic Markup of Electronic Medical Texts

JOURNAL OF THE AMERICAN MEDICAL INFORMATICS ASSOCIATION(1999)

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摘要
Our group has built an information retrieval system based on a complex semantic markup of medical textbooks. We describe the construction of a set of web-based knowledge-acquisition tools that expedites the collection and maintenance of the concepts require for text markup and the search interface required for information retrieval from the marked text. In the text markup system, domain experts (DEs) identify sections of text that contain one or more elements from a finite set of concepts. End users can then query the text using a predefined set of questions, each of which identifies a subset of complementary concepts. The search process matches that subset of concepts to relevant points in the text. The current process requires that the DE invest significant time to generate the required concepts and questions We propose a new system - called ACQUIRE (Acquisition of Concepts and Queries in an Integrated Retrieval Environment) - that assists a DE in two essential tasks in the text-markup process. First, it helps her to develop, edit, and maintain the concept model: the set of concepts with which she marks the text. Second ACQUIRE helps her to develop a query model: the set of specific questions that end users can later use to search the marked text The DE incorporates concepts from the concept model when she creates the questions in the query model. The major benefit of the ACQUIRE system is a reduction in the time and effort required for the text-markup process. We compared the process of concept- and query-model creation using ACQUIRE to the process wed in previous work by rebuilding two existing models that we previously constructed manually. Me observed a significant decrease in the time required to build and maintain the concept and query models.
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关键词
expert systems,programming languages,information retrieval system,information retrieval,semantics,information systems
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