Signal detection in pharmacovigilance without a priori hypothesis: a
systematic review of the literature
Abstract
Introduction: The emergence of real-life health databases has
opened the door to studies for signal detection in pharmacovigilance
without the formulation of an a priori hypothesis, i.e., without
defining a drug/adverse drug event (ADR) pair. Our objective was to
perform a systematic review of this type of study and the statistical
methods used in this context. Methods: Studies about drug
signal detection without a priori hypotheses published in the
MEDLINE database between 2012 and 2021 were included. Database name and
type, statistical methods, ATC class for the studied drug(s) and SOC
MedDRA classification for the studied ADR were extracted.
Results: Ninety-two studies were included. Pharmacovigilance
databases were the most used type of database. Most studies performed a
disproportionality analysis using frequentist or Bayesian methods. The
most studied drug classes were anti-infectives, nervous system drugs,
and antineoplastics and immunomodulators. No common procedure was
implemented to correct for multiple testing. Conclusions: There
are very few statistical methods used for drug signal detection without
a priori hypotheses, with no consensus-based method and no interest in
multiple testing correction. This review argues for the establishment of
guidelines to perform such studies.