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Comparing time to adverse drug reaction signals in a spontaneous reporting database and a claims database : a case study of rofecoxib-induced myocardial infarction and rosiglitazone-induced heart failure signals in Australia
- Publication Year :
- 2014
- Publisher :
- New Zealand : Adis International, 2014.
-
Abstract
- Conclusion : This case study highlights that a post-marketing quantitative method utilising administrative claims data can be a complementary tool to traditional quantitative methods employed in spontaneous reports that may help to verify safety signals detected in spontaneous reporting data. Introduction : The objective of post-marketing surveillance of medicines is to rapidly detect adverse drug reactions (ADRs). Early ADR detection will enable policy makers and health professionals to recognise adverse events that may not have been identified in pre-marketing clinical trials. Multiple methods exist for ADR signal detection. Traditional quantitative methods employed in spontaneous reports data have include reporting odds ratio (ROR), proportional reporting ratio (PRR) and Bayesian techniques. With the development of administrative health claims databases, additional methods such as sequence symmetry analysis (SSA) may be able to be employed routinely to confirm ADR signals. Objective & Method : We tested the time to signal detection of quantitative ADR signalling methods in a health claims database (SSA) and in a spontaneous reporting database (ROR, PRR, Bayesian confidence propagation neural network) for rofecoxib-induced myocardial infarction and rosiglitazone-induced heart failure. Results : This study demonstrated that all four signalling methods detected safety signals within 1-3 years of market entry or subsidisation of the medicines, and for both cases the signals were detected before post-marketing clinical trial results. By contrast, the trial results and subsequent warning or withdrawal were published 5-7 years after first marketing of these medicines.
- Subjects :
- Time Factors
Bayes theorem
Databases, Factual
Myocardial Infarction
heart failure
Toxicology
computer.software_genre
neural networks (computer)
time factors
Lactones
Pharmacology (medical)
Sulfones
Myocardial infarction
humans
health care economics and organizations
Database
postmarketing
myocardial infarction
cyclooxygenase 2 inhibitors
factual
Rosiglitazone
medicine.drug
databases
MEDLINE
hypoglycemic agents
lactones
Product Surveillance, Postmarketing
medicine
Adverse Drug Reaction Reporting Systems
Humans
Hypoglycemic Agents
Adverse effect
sulfones
thiazolidinediones
Rofecoxib
Heart Failure
Pharmacology
Cyclooxygenase 2 Inhibitors
business.industry
adverse drug reaction reporting systems
Australia
Bayes Theorem
Odds ratio
medicine.disease
Clinical trial
Thiazolidinediones
Neural Networks, Computer
business
computer
Adverse drug reaction
product surveillance
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Accession number :
- edsair.doi.dedup.....c35e574dc53e3a338643e78cea5f3deb