A Novel Semi-Supervised Algorithm for Rare Prescription Side Effect Discovery

IEEE Journal of Biomedical and Health Informatics, Volume 18, Issue 2, p. 537-547, March 2014

27 Pages Posted: 18 Aug 2016

See all articles by Jenna Reps

Jenna Reps

University of Nottingham - School of Computer Science

Jonathan Garibaldi

University of Nottingham - School of Computer Science

Uwe Aickelin

University of Melbourne - School of Computing and Information Systems

Daniel Soria

University of Westminster

Jack Gibson

University of Nottingham - Division of Epidemiology and Public Health

Richard Hubbard

University of Nottingham - School of Medicine

Date Written: January 1, 2014

Abstract

Drugs are frequently prescribed to patients with the aim of improving each patient’s medical state, but an unfortunate consequence of most prescription drugs is the occurrence of undesirable side effects. Side effects that occur in more than one in a thousand patients are likely to be signaled efficiently by current drug surveillance methods, however, these same methods may take decades before generating signals for rarer side effects, risking medical morbidity or mortality in patients prescribed the drug while the rare side effect is undiscovered. In this paper we propose a novel computational meta-analysis framework for signalling rare side effects that integrates existing methods, knowledge from the web, metric learning and semi-supervised clustering. The novel framework was able to signal many known rare and serious side effects for the selection of drugs investigated, such as tendon rupture when prescribed Ciprofloxacin or Levofloxacin, renal failure with Naproxen and depression associated with Rimonabant. Furthermore, for the majority of the drug investigated it generated signals for rare side effects at a more stringent signalling threshold than existing methods and shows the potential to become a fundamental part of post marketing surveillance to detect rare side effects.

Keywords: Adverse Drug Reaction, THIN, Semi-Supervised Clustering, MUTARA, Observed Expected Ratio

Suggested Citation

Reps, Jenna and Garibaldi, Jonathan and Aickelin, Uwe and Soria, Daniele and Gibson, Jack and Hubbard, Richard, A Novel Semi-Supervised Algorithm for Rare Prescription Side Effect Discovery (January 1, 2014). IEEE Journal of Biomedical and Health Informatics, Volume 18, Issue 2, p. 537-547, March 2014, Available at SSRN: https://ssrn.com/abstract=2823251 or http://dx.doi.org/10.2139/ssrn.2823251

Jenna Reps

University of Nottingham - School of Computer Science ( email )

Jubilee Campus
Wollaton Road
Nottingham, NG8 1BB
United Kingdom

Jonathan Garibaldi (Contact Author)

University of Nottingham - School of Computer Science ( email )

Jubilee Campus
Wollaton Road
Nottingham, NG8 1BB
United Kingdom

Uwe Aickelin

University of Melbourne - School of Computing and Information Systems ( email )

Australia

Daniele Soria

University of Westminster ( email )

School of Computer Science and Engineering
115 New Cavendish Street
London, W1W 6UW
United Kingdom

Jack Gibson

University of Nottingham - Division of Epidemiology and Public Health ( email )

University Park
Nottingham, NG8 1BB
United Kingdom

Richard Hubbard

University of Nottingham - School of Medicine ( email )

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