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Comparing data-mining algorithms developed for longitudinal observational databases

Reps, Jenna, Garibaldi, Jonathan M., Aickelin, Uwe, Soria, Daniele, Gibson, Jack E., Hubbard, Richard B. (2012) Comparing data-mining algorithms developed for longitudinal observational databases. In: 2012 12th UK Workshop on Computational Intelligence, UKCI 2012. . IEEE ISBN 978-1-4673-4391-6. (doi:10.1109/UKCI.2012.6335771) (KAR id:98897)

Abstract

Longitudinal observational databases have become a recent interest in the post marketing drug surveillance community due to their ability of presenting a new perspective for detecting negative side effects. Algorithms mining longitudinal observation databases are not restricted by many of the limitations associated with the more conventional methods that have been developed for spontaneous reporting system databases. In this paper we investigate the robustness of four recently developed algorithms that mine longitudinal observational databases by applying them to The Health Improvement Network (THIN) for six drugs with well document known negative side effects. Our results show that none of the existing algorithms was able to consistently identify known adverse drug reactions above events related to the cause of the drug and no algorithm was superior. © 2012 IEEE.

Item Type: Conference or workshop item (Paper)
DOI/Identification number: 10.1109/UKCI.2012.6335771
Additional information: cited By 5
Uncontrolled keywords: data-mining
Subjects: Q Science > QA Mathematics (inc Computing science)
Divisions: Divisions > Division of Computing, Engineering and Mathematical Sciences > School of Computing
Depositing User: Daniel Soria
Date Deposited: 08 Dec 2022 15:13 UTC
Last Modified: 09 Dec 2022 16:17 UTC
Resource URI: https://kar.kent.ac.uk/id/eprint/98897 (The current URI for this page, for reference purposes)

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