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Incorporating semantics into data driven workflows for content based analysis

Arguello-Casteleiro, M; Fernandez-Prieto, MJ

Authors

M Arguello-Casteleiro

MJ Fernandez-Prieto



Abstract

Finding meaningful associations between text elements and knowledge structures within clinical narratives in a highly verbal domain, such as psychiatry, is a challenging goal. The research presented here uses a small corpus of case histories and brings into play pre-existing knowledge, and therefore, complements other approaches that use large corpus (millions of words) and no pre-existing knowledge. The paper describes a variety of experiments for content-based analysis: Linguistic Analysis using NLP-oriented approaches, Sentiment Analysis, and Semantically Meaningful Analysis. Although it is not standard practice, the paper advocates providing automatic support to annotate the functionality as well as the data for each experiment by performing semantic annotation that uses OWL and OWL-S. Lessons learnt can be transmitted to legacy clinical databases facing the conversion of clinical narratives according to prominent Electronic Health Records standards.

Citation

Arguello-Casteleiro, M., & Fernandez-Prieto, M. (2010). Incorporating semantics into data driven workflows for content based analysis. In Research and Development in Intelligent Systems XXVII (453-466). Springer. https://doi.org/10.1007/978-0-85729-130-1_34

Publication Date Jan 1, 2010
Deposit Date Dec 14, 2011
Publisher Springer
Pages 453-466
Book Title Research and Development in Intelligent Systems XXVII
ISBN 9780857291295
DOI https://doi.org/10.1007/978-0-85729-130-1_34
Publisher URL http://dx.doi.org/10.1007/978-0-85729-130-1_34


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