@inproceedings{Wennerberg2008, abstract = {Medical research and clinical practice deal with complex and heterogeneous data. This requires a systematic approach for semantic integration of information to support clinicians in their daily tasks. As the clinicians speak and think in a very different language than that of the computer scientists, existing knowledge engineering approaches based on classical expert interviews fall short. Moreover, as human health is a very sensitive subject, the reuse of standardized hence reliable ontologies as medical knowledge resources becomes a key requirement. In this paper, we first discuss the specific medical knowledge engineering requirements, we identified along a semantic medical image and text retrieval use case. Then we report on ongoing work towards establishing a corresponding methodology based on ontology reuse that is derived from the requirements. The methodology, which will be discussed in detail, relies on a novel technique for semi-automatically generating a set of potential user queries to support the knowledge elicitation process.}, added-at = {2010-03-12T13:21:51.000+0100}, author = {Wennerberg, Pinar and Zillner, Sonja and M\"oller, Manuel and Buitelaar, Paul and Sintek, Michael}, biburl = {http://www.bibsonomy.org/bibtex/222814e4a867fab412b0023c34a21d057/manuelm}, booktitle = {Proc. of the 5th International Conference on Formal Ontology in Information Systems (FOIS)}, interhash = {ab52cb2be4cd4e175bce14e1538ec6ec}, intrahash = {22814e4a867fab412b0023c34a21d057}, keywords = {medico}, timestamp = {2010-03-12T13:21:51.000+0100}, title = {KEMM: A Knowledge Engineering Methodology in the Medical Domain}, year = 2008 }