1992
DOI: 10.1055/s-0038-1634865
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Natural Language Processing and Semantical Representation of Medical Texts

Abstract: Abstract:For medical records, the challenge for the present decade is Natural Language Processing (NLP) of texts, and the construction of an adequate Knowledge Representation. This article describes the components of an NLP system, which is currently being developed in the Geneva Hospital, and within the European Community’s AIM programme. They are: a Natural Language Analyser, a Conceptual Graphs Builder, a Data Base Storage component, a Query Processor, a Natural Language Generator and, in addition, a Transl… Show more

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Cited by 88 publications
(46 citation statements)
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“…However, in a practical application, the need for high specificity (low rate of false positives) in the output that the system extracts from the text often leads the system's designers to follow a knowledge intensive approach: Detailed models of human language processing, often in the form of a semantic grammar (Baud et al, 1992) (a grammar with both syntactic and classification information in its non-terminals), is painstakingly encoded by hand. The resulting system can then perform its task with an acceptably low error rate.…”
Section: Unsupervised Learning Versus Alternativesmentioning
confidence: 99%
“…However, in a practical application, the need for high specificity (low rate of false positives) in the output that the system extracts from the text often leads the system's designers to follow a knowledge intensive approach: Detailed models of human language processing, often in the form of a semantic grammar (Baud et al, 1992) (a grammar with both syntactic and classification information in its non-terminals), is painstakingly encoded by hand. The resulting system can then perform its task with an acceptably low error rate.…”
Section: Unsupervised Learning Versus Alternativesmentioning
confidence: 99%
“…Systems capable of understanding free speech are not presently available; however, many useful and reliable tools for the identifi cation and manipulation of strings, lexical structures, and concepts have been developed [13][14][15] . Although the potential of NLP is not fully realized, we believe that harnessing all available information inherent in a free-text input string is a strategic goal for electronic medical records.…”
Section: Vocabulary-based Strategiesmentioning
confidence: 99%
“…PubMed abstracts are clustered with frequent words and near terms in [13]. A graph algorithm based on flow simulation is considered in [14], where advanced techniques are proposed in [15].…”
Section: Previous Workmentioning
confidence: 99%