Signal Selection and Follow-Up in Pharmacovigilance
- 1 January 2002
- journal article
- Published by Springer Nature in Drug Safety
- Vol. 25 (6) , 459-465
- https://doi.org/10.2165/00002018-200225060-00011
Abstract
The detection of unknown and unexpected connections between drug exposure and adverse events is one of the major challenges of pharmacovigilance. For the identification of possible connections in large databases, automated statistical systems have been introduced with promising results. From the large numbers of associations so produced, the human mind has to identify signals that are likely to be important, in need of further assessment and follow-up and that may require regulatory action. Such decisions are based on a variety of clinical, epidemiological, pharmacological and regulatory criteria. Likewise, there are a number of criteria that underlie the subsequent evaluation of such signals. A good understanding of the logic underlying these processes fosters rational pharmacovigilance and efficient drug regulation. In the future a combination of quantitative and qualitative criteria may be incorporated in automated signal detection.Keywords
This publication has 9 references indexed in Scilit:
- Data-mining analyses of pharmacovigilance signals in relation to relevant comparison drugsEuropean Journal of Clinical Pharmacology, 2002
- Anaphylactic Reactions to Proton-Pump InhibitorsAnnals of Pharmacotherapy, 2000
- A Retrospective Evaluation of a Data Mining Approach to Aid Finding New Adverse Drug Reaction Signals in the WHO International DatabaseDrug Safety, 2000
- Pharmacovigilance in PerspectiveDrug Safety, 1999
- A Bayesian neural network method for adverse drug reaction signal generationEuropean Journal of Clinical Pharmacology, 1998
- The Role of the WHO Programme on International Drug Monitoring in Coordinating Worldwide Drug Safety EffortsDrug Safety, 1998
- Causal or Casual?Drug Safety, 1997
- Non‐puerperal lactation associated with antidepressant drug useBritish Journal of Clinical Pharmacology, 1997
- Principles of Signal Detection in PharmacovigilanceDrug Safety, 1997