PVM
is an R
package containing a wide variety of methods used in the field of pharmacovigilance for discovering 'interesting' drug-adverse event pairs from spontaneous reporting data.
The methods currently implemented are:
-
the reporting odds ratio (ROR), see
R/ROR.R
; -
Yule's Q, see
R/YulesQ.R
; -
the proportional relative risk (PRR), see
R/PRR.R
; -
the relative report rate (RRR), see
R/RRR.R
; -
the reporting Fisher's exact test (RFET) and the mid-p-value test (midRFET), see
R/fisherExactTest.R
; -
the chi-squared test (with and without Yates' correction for continuity), see
R/chi2Test.R
; -
the binomial likelihood ratio test, see
R/logLikelihoodRatioBinomial.R
; -
the test of the Poisson mean, see
R/PoissonTest.R
; -
the Bayesian confidence propagation neural network (BCPNN), see
R/BCPNN.R
; -
the Gamma Poisson shrinker (GPS), see
R/GPS.R
, and -
the LASSO, see
R/LASSO.R
To install, simply type in R
devtools::install_github("bips-hb/pvm")
We gratefully acknowledge the financial support from the innovation fund (“Innovationsfonds”) of the Federal Joint Committee in Germany (grant number: 01VSF16020).
Please cite
Adverse Drug Reaction or Innocent Bystander? A Systematic Comparison of Statistical Discovery Methods for Spontaneous Reporting Systems
L.J. Dijkstra, M. Garling, R. Foraita & I. Pigeot
Pharmacoepidemiology and Drug Safety (2020)
DOI:10.1002/PDS.4970
Louis Dijkstra
Leibniz Institute for Prevention Research & Epidemiology
E-mail: dijkstra (at) leibniz-bips.de