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A methodology for mining clinical data: experiences from TRANSFoRm project

Authors :
Roxana, Danger
Derek, Corrigan
Jean K, Soler
Przemyslaw, Kazienko
Tomasz, Kajdanowicz
Azeem, Majeed
Vasa, Curcin
Source :
Studies in health technology and informatics. 210
Publication Year :
2015

Abstract

Data mining of electronic health records (eHRs) allows us to identify patterns of patient data that characterize diseases and their progress and learn best practices for treatment and diagnosis. Clinical Prediction Rules (CPRs) are a form of clinical evidence that quantifies the contribution of different clinical data to a particular clinical outcome and help clinicians to decide the diagnosis, prognosis or therapeutic conduct for any given patient. The TRANSFoRm diagnostic support system (DSS) is based on the construction of an ontological repository of CPRs for diagnosis prediction in which clinical evidence is expressed using a unified vocabulary. This paper explains the proposed methodology for constructing this CPR repository, addressing algorithms and quality measures for filtering relevant rules. Some preliminary application results are also presented.

Details

ISSN :
18798365
Volume :
210
Database :
OpenAIRE
Journal :
Studies in health technology and informatics
Accession number :
edsair.pmid..........da5d948e156850637d9574b0ae7f761b