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Published in: Pharmaceutical Medicine 1/2008

01-01-2008 | Current Opinion

Number Needed to Detect

Nuances in the Use of a Simple and Intuitive Signal Detection Metric

Authors: Dr Manfred Hauben, Ulrich Vogel, Francois Maignen

Published in: Pharmaceutical Medicine | Issue 1/2008

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Abstract

Data mining algorithms are increasingly being used to support the process of signal detection and evaluation in pharmacovigilance. Published data mining exercises formulated within a screening paradigm typically calculate classical performance indicators such as sensitivity, specificity, predictive value and receiver operator characteristic curves. Extrapolating signal detection performance from these isolated data mining exercises to performance in real-world pharmacovigilance scenarios is complicated by numerous factors and some published exercises may promote an inappropriate and exclusive focus on only one aspect of performance. In this article, we discuss a variation on positive predictive value that we call the ‘number needed to detect’ that provides a simple and intuitive screening metric that might usefully supplement the usual presentations of data mining performance. We use a series of figures to demonstrate the nature and application of this metric, and selected adaptive variations. Even with simple and intuitive metrics, precisely quantifying the performance of contemporary data mining algorithms in pharmacovigilance is complicated by the complexity of the phenomena under surveillance and the manner in which the data are recorded in spontaneous reporting systems.
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Metadata
Title
Number Needed to Detect
Nuances in the Use of a Simple and Intuitive Signal Detection Metric
Authors
Dr Manfred Hauben
Ulrich Vogel
Francois Maignen
Publication date
01-01-2008
Publisher
Springer International Publishing
Published in
Pharmaceutical Medicine / Issue 1/2008
Print ISSN: 1178-2595
Electronic ISSN: 1179-1993
DOI
https://doi.org/10.1007/BF03256678

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