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1.
Int J Med Inform ; 76(2-3): 118-23, 2007.
Article in English | MEDLINE | ID: mdl-17023201

ABSTRACT

OBJECTIVES: The main objective is to create a knowledge-intensive coding support tool for the International Classification of Diseases (ICD10), which is based on formal representation of ICD10 categories. Beyond this task the resulting ontology could be reused in various ways. Decidability is an important issue for computer-assisted coding; consequently the ontology should be represented in description logic. METHODS: The meaning of the ICD10 categories is represented using the GALEN Core Reference Model. Due to the deficiencies of its representation language (GRAIL) the ontology is transformed to the quasi-standard OWL. A test system which extracts disease concepts and classifies them to ICD10 categories has been implemented in Prolog to verify the feasibility of the approach. RESULTS: The formal representation of the first two chapters of ICD10 (infectious diseases and neoplasms) has been almost completed. The constructed ontology has been converted to OWL DL. The test system successfully identified diseases in medical records from gastrointestinal oncology (84% recall, however precision is only 45%). The classifier module is still under development. Due to the experiences gained during the modelling, in the future work FMA is going to be used as anatomical reference ontology.


Subject(s)
Artificial Intelligence , International Classification of Diseases , Natural Language Processing , Vocabulary, Controlled , Abstracting and Indexing , Automation , Humans , Hungary , Terminology as Topic
2.
Stud Health Technol Inform ; 116: 707-12, 2005.
Article in English | MEDLINE | ID: mdl-16160341

ABSTRACT

The authors present a formal representation of ICD10 based on GALEN CRM. The goal of the work is to create a coding support tool for coding clinical diagnoses to ICD10. The formal representation of the first two chapters of ICD10 has been almost completed. The paper presents the main aspects of the modelling, and the experienced problems. The constructed ontology has been converted to OWL, and a test system has been implemented in Prolog to verify the feasibility of the approach. The system successfully identified diseases in medical records from gastrointestinal oncology. The classifier module is still under development.


Subject(s)
International Classification of Diseases , Natural Language Processing , Clinical Coding , Humans
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