Literature DB >> 19459718

An evaluation of three signal-detection algorithms using a highly inclusive reference event database.

Alan M Hochberg1, Manfred Hauben, Ronald K Pearson, Donald J O'Hara, Stephanie J Reisinger, David I Goldsmith, A Lawrence Gould, David Madigan.   

Abstract

BACKGROUND: Pharmacovigilance data-mining algorithms (DMAs) are known to generate significant numbers of false-positive signals of disproportionate reporting (SDRs), using various standards to define the terms 'true positive' and 'false positive'.
OBJECTIVE: To construct a highly inclusive reference event database of reported adverse events for a limited set of drugs, and to utilize that database to evaluate three DMAs for their overall yield of scientifically supported adverse drug effects, with an emphasis on ascertaining false-positive rates as defined by matching to the database, and to assess the overlap among SDRs detected by various DMAs.
METHODS: A sample of 35 drugs approved by the US FDA between 2000 and 2004 was selected, including three drugs added to cover therapeutic categories not included in the original sample. We compiled a reference event database of adverse event information for these drugs from historical and current US prescribing information, from peer-reviewed literature covering 1999 through March 2006, from regulatory actions announced by the FDA and from adverse event listings in the British National Formulary. Every adverse event mentioned in these sources was entered into the database, even those with minimal evidence for causality. To provide some selectivity regarding causality, each entry was assigned a level of evidence based on the source of the information, using rules developed by the authors. Using the FDA adverse event reporting system data for 2002 through 2005, SDRs were identified for each drug using three DMAs: an urn-model based algorithm, the Gamma Poisson Shrinker (GPS) and proportional reporting ratio (PRR), using previously published signalling thresholds. The absolute number and fraction of SDRs matching the reference event database at each level of evidence was determined for each report source and the data-mining method. Overlap of the SDR lists among the various methods and report sources was tabulated as well.
RESULTS: The GPS algorithm had the lowest overall yield of SDRs (763), with the highest fraction of events matching the reference event database (89 SDRs, 11.7%), excluding events described in the prescribing information at the time of drug approval. The urn model yielded more SDRs (1562), with a non-significantly lower fraction matching (175 SDRs, 11.2%). PRR detected still more SDRs (3616), but with a lower fraction matching (296 SDRs, 8.2%). In terms of overlap of SDRs among algorithms, PRR uniquely detected the highest number of SDRs (2231, with 144, or 6.5%, matching), followed by the urn model (212, with 26, or 12.3%, matching) and then GPS (0 SDRs uniquely detected).
CONCLUSIONS: The three DMAs studied offer significantly different tradeoffs between the number of SDRs detected and the degree to which those SDRs are supported by external evidence. Those differences may reflect choices of detection thresholds as well as features of the algorithms themselves. For all three algorithms, there is a substantial fraction of SDRs for which no external supporting evidence can be found, even when a highly inclusive search for such evidence is conducted.

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Year:  2009        PMID: 19459718     DOI: 10.2165/00002018-200932060-00007

Source DB:  PubMed          Journal:  Drug Saf        ISSN: 0114-5916            Impact factor:   5.606


  20 in total

1.  A retrospective evaluation of a data mining approach to aid finding new adverse drug reaction signals in the WHO international database.

Authors:  M Lindquist; M Ståhl; A Bate; I R Edwards; R H Meyboom
Journal:  Drug Saf       Date:  2000-12       Impact factor: 5.606

2.  Use of proportional reporting ratios (PRRs) for signal generation from spontaneous adverse drug reaction reports.

Authors:  S J Evans; P C Waller; S Davis
Journal:  Pharmacoepidemiol Drug Saf       Date:  2001 Oct-Nov       Impact factor: 2.890

3.  Anecdotes as evidence.

Authors:  Jeffrey K Aronson
Journal:  BMJ       Date:  2003-06-21

4.  Practical pharmacovigilance analysis strategies.

Authors:  A Lawrence Gould
Journal:  Pharmacoepidemiol Drug Saf       Date:  2003 Oct-Nov       Impact factor: 2.890

5.  Trimethoprim-induced hyperkalaemia -- lessons in data mining.

Authors:  Manfred Hauben
Journal:  Br J Clin Pharmacol       Date:  2004-09       Impact factor: 4.335

6.  What counts in data mining?

Authors:  Manfred Hauben; Vaishali K Patadia; David Goldsmith
Journal:  Drug Saf       Date:  2006       Impact factor: 5.606

7.  Effects of stratification on data mining in the US Vaccine Adverse Event Reporting System (VAERS).

Authors:  Emily Jane Woo; Robert Ball; Dale R Burwen; M Miles Braun
Journal:  Drug Saf       Date:  2008       Impact factor: 5.606

8.  Standardized assessment of drug-adverse reaction associations--rationale and experience.

Authors:  J Venulet; A Ciucci; G C Berneker
Journal:  Int J Clin Pharmacol Ther Toxicol       Date:  1980-09

9.  Safety related drug-labelling changes: findings from two data mining algorithms.

Authors:  Manfred Hauben; Lester Reich
Journal:  Drug Saf       Date:  2004       Impact factor: 5.606

10.  Time-to-signal comparison for drug safety data-mining algorithms vs. traditional signaling criteria.

Authors:  A M Hochberg; M Hauben
Journal:  Clin Pharmacol Ther       Date:  2009-03-25       Impact factor: 6.875

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  23 in total

1.  Implementation of an automated signal detection method in the French pharmacovigilance database: a feasibility study.

Authors:  Véronique Pizzoglio; Ismaïl Ahmed; Pascal Auriche; Pascale Tuber-Bitter; Françoise Haramburu; Carmen Kreft-Jaïs; Ghada Miremont-Salamé
Journal:  Eur J Clin Pharmacol       Date:  2011-12-06       Impact factor: 2.953

2.  A decade of data mining and still counting.

Authors:  Manfred Hauben; G Niklas Norén
Journal:  Drug Saf       Date:  2010-07-01       Impact factor: 5.606

3.  Early detection of pharmacovigilance signals with automated methods based on false discovery rates: a comparative study.

Authors:  Ismaïl Ahmed; Frantz Thiessard; Ghada Miremont-Salamé; Françoise Haramburu; Carmen Kreft-Jais; Bernard Bégaud; Pascale Tubert-Bitter
Journal:  Drug Saf       Date:  2012-06-01       Impact factor: 5.606

4.  A nationwide medication incidents reporting system in The Netherlands.

Authors:  Ka-Chun Cheung; Patricia M L A van den Bemt; Marcel L Bouvy; Michel Wensing; Peter A G M De Smet
Journal:  J Am Med Inform Assoc       Date:  2011-08-11       Impact factor: 4.497

5.  Comparison of statistical signal detection methods within and across spontaneous reporting databases.

Authors:  Gianmario Candore; Kristina Juhlin; Katrin Manlik; Bharat Thakrar; Naashika Quarcoo; Suzie Seabroke; Antoni Wisniewski; Jim Slattery
Journal:  Drug Saf       Date:  2015-06       Impact factor: 5.606

6.  A Pharmacovigilance Signaling System Based on FDA Regulatory Action and Post-Marketing Adverse Event Reports.

Authors:  Keith B Hoffman; Mo Dimbil; Nicholas P Tatonetti; Robert F Kyle
Journal:  Drug Saf       Date:  2016-06       Impact factor: 5.606

7.  Arrhythmia associated with buprenorphine and methadone reported to the Food and Drug Administration.

Authors:  David P Kao; Mark C P Haigney; Philip S Mehler; Mori J Krantz
Journal:  Addiction       Date:  2015-09       Impact factor: 6.526

Review 8.  Novel data-mining methodologies for adverse drug event discovery and analysis.

Authors:  R Harpaz; W DuMouchel; N H Shah; D Madigan; P Ryan; C Friedman
Journal:  Clin Pharmacol Ther       Date:  2012-06       Impact factor: 6.875

Review 9.  Defining a reference set to support methodological research in drug safety.

Authors:  Patrick B Ryan; Martijn J Schuemie; Emily Welebob; Jon Duke; Sarah Valentine; Abraham G Hartzema
Journal:  Drug Saf       Date:  2013-10       Impact factor: 5.606

10.  Performance of pharmacovigilance signal-detection algorithms for the FDA adverse event reporting system.

Authors:  R Harpaz; W DuMouchel; P LePendu; A Bauer-Mehren; P Ryan; N H Shah
Journal:  Clin Pharmacol Ther       Date:  2013-02-11       Impact factor: 6.875

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