Knowledge-based temporal abstraction in clinical domains

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摘要

We have defined a knowledge-based framework for the creation of abstract, interval-based concepts from time-stamped clinical data, the knowledge-based temporal-abstraction (KBTA) method. The KBTA method decomposes its task into five subtasks; for each subtask we propose a formal solving mechanism. Our framework emphasizes explicit representation of knowledge required for abstraction of time-oriented clinical data, and facilitates its acquisition, maintenance, reuse and sharing. The RÉSUMÉ system implements the KBTA method. We tested RÉSUMÉ in several clinical-monitoring domains, including the domain of monitoring patients who have insulin-dependent diabetes. We acquired from a diabetes-therapy expert diabetes-therapy temporal-abstraction knowledge. Two diabetes-therapy experts (including the first one) created temporal abstractions from about 800 points of diabetic-patients' data. RÉSUMÉ generated about 80% of the abstractions agreed by both experts; about 97% of the generated abstractions were valid. We discuss the advantages and limitations of the current architecture.

论文关键词:Temporal reasoning,Knowledge acquisition,Clinical decision support,Diabetes

论文评审过程:Received 1 February 1995, Revised 1 July 1995, Accepted 2 October 1995, Available online 29 March 1999.

论文官网地址:https://doi.org/10.1016/0933-3657(95)00036-4