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Published in: Drug Safety 7/2007

01-07-2007 | Conference Paper

Bayesian Confidence Propagation Neural Network

Author: Dr Andrew Bate

Published in: Drug Safety | Issue 7/2007

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Abstract

A Bayesian confidence propagation neural network (BCPNN)-based technique has been in routine use for data mining the 3 million suspected adverse drug reactions (ADRs) in the WHO database of suspected ADRs of as part of the signal-detection process since 1998. Data mining is used to enhance the early detection of previously unknown possible drug-ADR relationships, by highlighting combinations that stand out quantitatively for clinical review. Now-established signals prospectively detected from routine data mining include topiramate associated glaucoma, and the SSRIs with neonatal withdrawal syndrome. Recent advances in the method and its use will be discussed: (i) the recurrent neural network approach used to analyse cyclo-oxygenase 2 inhibitor data, isolating patterns for both rofecoxib and celecoxib; (ii) the use of data-mining methods to improve data quality, especially the detection of duplicate reports; and (iii) the application of BCPNN to the 2 million patient-record IMS Disease Analyzer.
Literature
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Metadata
Title
Bayesian Confidence Propagation Neural Network
Author
Dr Andrew Bate
Publication date
01-07-2007
Publisher
Springer International Publishing
Published in
Drug Safety / Issue 7/2007
Print ISSN: 0114-5916
Electronic ISSN: 1179-1942
DOI
https://doi.org/10.2165/00002018-200730070-00011

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