Towards Context Driven Modularization of Large Biomedical Ontologies
Author(s) -
Pinar Wennerberg,
Sonja Zillner,
Alexander Cavallaro
Publication year - 2009
Publication title -
nature precedings
Language(s) - English
Resource type - Journals
ISSN - 1756-0357
DOI - 10.1038/npre.2009.3523.1
Subject(s) - computer science , ontology , domain (mathematical analysis) , context (archaeology) , open biomedical ontologies , process ontology , data science , modular programming , software , idef5 , domain knowledge , software engineering , information retrieval , ontology alignment , programming language , paleontology , biology , mathematical analysis , philosophy , mathematics , epistemology
Formal knowledge about human anatomy, radiology or diseases is necessary to support clinical applications such as medical image search. This machine processable knowledge can be acquired from biomedical domain ontologies, which however, are typically very large and complex models. Thus, their straightforward incorporation into the software applications becomes difficult. In this paper we discuss first ideas on a statistical approach for modularizing large medical ontologies and we prioritize the practical applicability aspect. The underlying assumption is that the application relevant ontology fragments, i.e. modules, can be identified by the statistical analysis of the ontology concepts in the domain corpus. Accordingly, we argue that most frequently occurring concepts in the domain corpus define the application context and can therefore potentially yield the relevant ontology modules. We illustrate our approach on an example case that involves a large ontology on human anatomy and report on our first manual experiments
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