INTRODUCTION: Bayesian data mining methods have been used to evaluate drug safety signals from adverse event reporting systems and allow for evaluation of multiple endpoints that are not prespecified. Their adaptation for use with longitudinal data such as administrative claims has not been previously evaluated or validated. METHODS: In this pilot study, we evaluated the feasibility of adapting data mining methods using the empirical Bayes Multi-item Gamma Poisson Shrinkage (MGPS) algorithm to longitudinal administrative claims data. The Medicare Current Beneficiary Survey was used to identify a cohort of Medicare enrollees who were exposed to cyclooxygenase selective (coxib) or nonselective nonsteroidal anti-inflammatory drugs (NS-NSAIDs) from 1999 to 2003. Empirical Bayes MGPS algorithm was used to simultaneously evaluate 259 outcomes associated with current use of coxibs versus NS-NSAIDs while adjusting for key covariates and multiple comparisons. For comparison, a parallel analysis used traditional epidemiologic methods to evaluate the relationship between coxib versus NS-NSAID use and acute myocardial infarction, with the goal of establishing the concurrent validity of the data mining approach. RESULTS: Among 9431 Medicare beneficiaries using NSAIDs and considering all 259 possible outcomes, empirical Bayes MGPS identified an association between current celecoxib use and acute myocardial infarction (Empirical Bayes Geometric Mean ratio 1.91) but not other outcomes. Rofecoxib use was associated with acute cerebrovascular events (Empirical Bayes Geometric Mean ratio 1.85) and several other diagnoses that likely represented indications for the drug. Results from the analyses using traditional epidemiologic methods were similar and indicated that the data mining results were valid. DISCUSSION: Bayesian data mining methods seem useful to evaluate drug safety using administrative data. Further work will be needed to extend these findings to different types of drug exposures and to other claims databases.
INTRODUCTION: Bayesian data mining methods have been used to evaluate drug safety signals from adverse event reporting systems and allow for evaluation of multiple endpoints that are not prespecified. Their adaptation for use with longitudinal data such as administrative claims has not been previously evaluated or validated. METHODS: In this pilot study, we evaluated the feasibility of adapting data mining methods using the empirical Bayes Multi-item Gamma Poisson Shrinkage (MGPS) algorithm to longitudinal administrative claims data. The Medicare Current Beneficiary Survey was used to identify a cohort of Medicare enrollees who were exposed to cyclooxygenase selective (coxib) or nonselective nonsteroidal anti-inflammatory drugs (NS-NSAIDs) from 1999 to 2003. Empirical Bayes MGPS algorithm was used to simultaneously evaluate 259 outcomes associated with current use of coxibs versus NS-NSAIDs while adjusting for key covariates and multiple comparisons. For comparison, a parallel analysis used traditional epidemiologic methods to evaluate the relationship between coxib versus NS-NSAID use and acute myocardial infarction, with the goal of establishing the concurrent validity of the data mining approach. RESULTS: Among 9431 Medicare beneficiaries using NSAIDs and considering all 259 possible outcomes, empirical Bayes MGPS identified an association between current celecoxib use and acute myocardial infarction (Empirical Bayes Geometric Mean ratio 1.91) but not other outcomes. Rofecoxib use was associated with acute cerebrovascular events (Empirical Bayes Geometric Mean ratio 1.85) and several other diagnoses that likely represented indications for the drug. Results from the analyses using traditional epidemiologic methods were similar and indicated that the data mining results were valid. DISCUSSION: Bayesian data mining methods seem useful to evaluate drug safety using administrative data. Further work will be needed to extend these findings to different types of drug exposures and to other claims databases.
Authors: Scott D Solomon; Marc A Pfeffer; John J V McMurray; Rob Fowler; Peter Finn; Bernard Levin; Craig Eagle; Ernest Hawk; Mariajosé Lechuga; Ann G Zauber; Monica M Bertagnolli; Nadir Arber; Janet Wittes Journal: Circulation Date: 2006-09-05 Impact factor: 29.690
Authors: Priscilla Velentgas; William West; Carolyn C Cannuscio; Douglas J Watson; Alexander M Walker Journal: Pharmacoepidemiol Drug Saf Date: 2006-09 Impact factor: 2.890
Authors: William B White; Christine R West; Jeffrey S Borer; Philip B Gorelick; Lisa Lavange; Sharon X Pan; Ethan Weiner; Kenneth M Verburg Journal: Am J Cardiol Date: 2006-11-10 Impact factor: 2.778
Authors: Gunnar H Gislason; Søren Jacobsen; Jeppe N Rasmussen; Søren Rasmussen; Pernille Buch; Jens Friberg; Tina Ken Schramm; Steen Z Abildstrom; Lars Køber; Mette Madsen; Christian Torp-Pedersen Journal: Circulation Date: 2006-06-19 Impact factor: 29.690
Authors: Vaishali K Patadia; Martijn J Schuemie; Preciosa Coloma; Ron Herings; Johan van der Lei; Sabine Straus; Miriam Sturkenboom; Gianluca Trifirò Journal: Int J Clin Pharm Date: 2014-12-09
Authors: Trevor R Shaddox; Patrick B Ryan; Martijn J Schuemie; David Madigan; Marc A Suchard Journal: Stat Anal Data Min Date: 2016-07-17 Impact factor: 1.051
Authors: Rod S Passman; Charles L Bennett; Joseph M Purpura; Rashmi Kapur; Lenworth N Johnson; Dennis W Raisch; Dennis P West; Beatrice J Edwards; Steven M Belknap; Dustin B Liebling; Mathew J Fisher; Athena T Samaras; Lisa-Gaye A Jones; Katrina-Marie E Tulas; June M McKoy Journal: Am J Med Date: 2012-03-03 Impact factor: 4.965
Authors: Huifeng Yun; Elizabeth Delzell; Kenneth G Saag; Meredith L Kilgore; Michael A Morrisey; Paul Muntner; Robert Matthews; Lingli Guo; Nicole Wright; Wilson Smith; Cathleen Colón-Emeric; Christopher M O'Connor; Kenneth W Lyles; Jeffrey R Curtis Journal: Clin Exp Rheumatol Date: 2014-07-28 Impact factor: 4.473
Authors: Stephanie J Reisinger; Patrick B Ryan; Donald J O'Hara; Gregory E Powell; Jeffery L Painter; Edward N Pattishall; Jonathan A Morris Journal: J Am Med Inform Assoc Date: 2010 Nov-Dec Impact factor: 4.497
Authors: Yannick Girardeau; Claire Trivin; Pierre Durieux; Christine Le Beller; Lillo-Le Louet Agnes; Antoine Neuraz; Patrice Degoulet; Paul Avillach Journal: Drug Saf Date: 2015-09 Impact factor: 5.606
Authors: Marc A Suchard; Shawn E Simpson; Ivan Zorych; Patrick Ryan; David Madigan Journal: ACM Trans Model Comput Simul Date: 2013-01 Impact factor: 1.075