Skip to main content

Research Repository

Advanced Search

Generating and verifying risk prediction models using data mining

Davis, Darryl N.; Nguyen, Thuy T.T.

Authors

Darryl N. Davis

Thuy T.T. Nguyen



Contributors

Petr Berka
Editor

Jan Rauch
Editor

Djamel Abdelkader Zighed
Editor

Abstract

Risk prediction models are of great interest to clinicians. They offer an explicit and repeatable means to aide the selection, from a general medical population, those patients that require a referral to medical consultants and specialists. In many medical domains, including cardiovascular medicine, no gold standard exists for selecting referral patients. Where evidential selection is required using patient data, heuristics backed up by poorly adapted more general risk prediction models are pressed into action, with less than perfect results. In this study, existing clinical risk prediction models are examined and matched to the patient data to which they may be applied using classification and data mining techniques, such as neural nets. Novel risk prediction models are derived using unsupervised cluster analysis algorithms. All existing and derived models are verified as to their usefulness in medical decision support on the basis of their effectiveness on patient data from two UK sites. © 2009, IGI Global.

Citation

Davis, D. N., & Nguyen, T. T. (2009). Generating and verifying risk prediction models using data mining. In P. Berka, J. Rauch, & D. Abdelkader Zighed (Eds.), Data mining and medical knowledge management: cases and applications (181-205). IGI Global. https://doi.org/10.4018/978-1-60566-218-3.ch009

Publication Date Dec 1, 2009
Publisher IGI Global
Pages 181-205
Book Title Data mining and medical knowledge management: cases and applications
ISBN 9781605662183 ; 9781616926007
DOI https://doi.org/10.4018/978-1-60566-218-3.ch009
Public URL https://hull-repository.worktribe.com/output/405447
Contract Date Jan 1, 2008