An Algorithm to Identify Generic Drugs in the FDA Adverse Event Reporting System
Introduction Although generic drugs constitute approximately 88% of drugs prescribed in the US, there are no reliable methods to identify generic drugs in the US FDA Adverse Event Reporting System (FAERS). Objective The aim of this study was to develop an algorithm for identifying generic drugs in t...
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          | Published in | Drug safety Vol. 40; no. 9; pp. 799 - 808 | 
|---|---|
| Main Authors | , , , | 
| Format | Journal Article | 
| Language | English | 
| Published | 
        Cham
          Springer International Publishing
    
        01.09.2017
     Springer Nature B.V  | 
| Subjects | |
| Online Access | Get full text | 
| ISSN | 0114-5916 1179-1942 1179-1942  | 
| DOI | 10.1007/s40264-017-0550-1 | 
Cover
| Abstract | Introduction
Although generic drugs constitute approximately 88% of drugs prescribed in the US, there are no reliable methods to identify generic drugs in the US FDA Adverse Event Reporting System (FAERS).
Objective
The aim of this study was to develop an algorithm for identifying generic drugs in the FAERS.
Data Source
We used 1237 adverse event reports for tamsulosin, levothyroxine, and amphetamine/dextroamphetamine from the publicly available FAERS from 2011–2013, and 277 source case narratives obtained from the FDA.
Methods
Two reviewers independently and in duplicate used a three-item algorithm including the following criteria: manufacturer name, New Drug Application (NDA) number/abbreviated NDA (ANDA), and specific use of the term ‘generic’ or ‘brand’ to classify the focal drug of each case report as
definitely generic
(two of three criteria),
probably generic
(one of three criteria),
brand
, and
cannot be assessed
. Inter-rater reliability was estimated using kappa coefficients, and internal consistency was estimated using Cronbach’s alpha. We compared the classification of the drugs as generic versus non-generic in publicly available FAERS compared with the original case reports (reference).
Results
The focal drug was classified as generic (definite or probable) in 15.8% (39/234), 9% (67/742), and 16.7% (42/261) of tamsulosin, levothyroxine and amphetamine/dextroamphetamine cases, respectively (overall kappa 0.89, 95% confidence interval 0.85–0.93), while 37% of reports could not be classified due to incomplete information. Among the drugs classified as generics using the publicly available FAERS, we categorized 95.3% as generic drugs using the original case reports. Among those drugs that did not meet the algorithm-based definition of generic in the publicly available data, 20.9% were reclassified as generics using the original case reports.
Conclusions
The algorithm demonstrated high inter-rater reliability with moderate internal consistency for identifying generic drugs in the FAERS, in our sample. Future efforts should focus on improving the reliability and validity of identifying generics through improving the completeness of reporting in the FAERS. | 
    
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| AbstractList | Introduction Although generic drugs constitute approximately 88% of drugs prescribed in the US, there are no reliable methods to identify generic drugs in the US FDA Adverse Event Reporting System (FAERS). Objective The aim of this study was to develop an algorithm for identifying generic drugs in the FAERS. Data Source We used 1237 adverse event reports for tamsulosin, levothyroxine, and amphetamine/dextroamphetamine from the publicly available FAERS from 2011-2013, and 277 source case narratives obtained from the FDA. Methods Two reviewers independently and in duplicate used a three-item algorithm including the following criteria: manufacturer name, New Drug Application (NDA) number/abbreviated NDA (ANDA), and specific use of the term 'generic' or 'brand' to classify the focal drug of each case report as definitely generic (two of three criteria), probably generic (one of three criteria), brand, and cannot be assessed. Inter-rater reliability was estimated using kappa coefficients, and internal consistency was estimated using Cronbach's alpha. We compared the classification of the drugs as generic versus non-generic in publicly available FAERS compared with the original case reports (reference). Results The focal drug was classified as generic (definite or probable) in 15.8% (39/234), 9% (67/742), and 16.7% (42/261) of tamsulosin, levothyroxine and amphetamine/ dextroamphetamine cases, respectively (overall kappa 0.89, 95% confidence interval 0.85-0.93), while 37% of reports could not be classified due to incomplete information. Among the drugs classified as generics using the publicly available FAERS, we categorized 95.3% as generic drugs using the original case reports. Among those drugs that did not meet the algorithm-based definition of generic in the publicly available data, 20.9% were reclassified as generics using the original case reports. Conclusions The algorithm demonstrated high inter-rater reliability with moderate internal consistency for identifying generic drugs in the FAERS, in our sample. Future efforts should focus on improving the reliability and validity of identifying generics through improving the completeness of reporting in the FAERS. Although generic drugs constitute approximately 88% of drugs prescribed in the US, there are no reliable methods to identify generic drugs in the US FDA Adverse Event Reporting System (FAERS). The aim of this study was to develop an algorithm for identifying generic drugs in the FAERS. We used 1237 adverse event reports for tamsulosin, levothyroxine, and amphetamine/dextroamphetamine from the publicly available FAERS from 2011-2013, and 277 source case narratives obtained from the FDA. Two reviewers independently and in duplicate used a three-item algorithm including the following criteria: manufacturer name, New Drug Application (NDA) number/abbreviated NDA (ANDA), and specific use of the term 'generic' or 'brand' to classify the focal drug of each case report as definitely generic (two of three criteria), probably generic (one of three criteria), brand, and cannot be assessed. Inter-rater reliability was estimated using kappa coefficients, and internal consistency was estimated using Cronbach's alpha. We compared the classification of the drugs as generic versus non-generic in publicly available FAERS compared with the original case reports (reference). The focal drug was classified as generic (definite or probable) in 15.8% (39/234), 9% (67/742), and 16.7% (42/261) of tamsulosin, levothyroxine and amphetamine/dextroamphetamine cases, respectively (overall kappa 0.89, 95% confidence interval 0.85-0.93), while 37% of reports could not be classified due to incomplete information. Among the drugs classified as generics using the publicly available FAERS, we categorized 95.3% as generic drugs using the original case reports. Among those drugs that did not meet the algorithm-based definition of generic in the publicly available data, 20.9% were reclassified as generics using the original case reports. The algorithm demonstrated high inter-rater reliability with moderate internal consistency for identifying generic drugs in the FAERS, in our sample. Future efforts should focus on improving the reliability and validity of identifying generics through improving the completeness of reporting in the FAERS. Introduction Although generic drugs constitute approximately 88% of drugs prescribed in the US, there are no reliable methods to identify generic drugs in the US FDA Adverse Event Reporting System (FAERS). Objective The aim of this study was to develop an algorithm for identifying generic drugs in the FAERS. Data Source We used 1237 adverse event reports for tamsulosin, levothyroxine, and amphetamine/dextroamphetamine from the publicly available FAERS from 2011–2013, and 277 source case narratives obtained from the FDA. Methods Two reviewers independently and in duplicate used a three-item algorithm including the following criteria: manufacturer name, New Drug Application (NDA) number/abbreviated NDA (ANDA), and specific use of the term ‘generic’ or ‘brand’ to classify the focal drug of each case report as definitely generic (two of three criteria), probably generic (one of three criteria), brand , and cannot be assessed . Inter-rater reliability was estimated using kappa coefficients, and internal consistency was estimated using Cronbach’s alpha. We compared the classification of the drugs as generic versus non-generic in publicly available FAERS compared with the original case reports (reference). Results The focal drug was classified as generic (definite or probable) in 15.8% (39/234), 9% (67/742), and 16.7% (42/261) of tamsulosin, levothyroxine and amphetamine/dextroamphetamine cases, respectively (overall kappa 0.89, 95% confidence interval 0.85–0.93), while 37% of reports could not be classified due to incomplete information. Among the drugs classified as generics using the publicly available FAERS, we categorized 95.3% as generic drugs using the original case reports. Among those drugs that did not meet the algorithm-based definition of generic in the publicly available data, 20.9% were reclassified as generics using the original case reports. Conclusions The algorithm demonstrated high inter-rater reliability with moderate internal consistency for identifying generic drugs in the FAERS, in our sample. Future efforts should focus on improving the reliability and validity of identifying generics through improving the completeness of reporting in the FAERS.  | 
    
| Author | Iyer, Geetha Singh, Sonal Marimuthu, Sathiya Priya Segal, Jodi B.  | 
    
| AuthorAffiliation | 5 Division of General Internal Medicine, Department of Medicine, Johns Hopkins Medicine, Baltimore, MD, USA 2 Center for Drug Safety and Effectiveness, Johns Hopkins Bloomberg School of Public Health, Baltimore, MD, USA 4 Department of Epidemiology, Johns Hopkins Bloomberg School of Public Health, Baltimore, MD, USA 3 Division of Clinical Pharmacology, Johns Hopkins School of Medicine, Baltimore, MD, USA 6 Department of Family Medicine and Community Health and Meyers Primary Care Institute, Umass Memorial Health Care, University of Massachusetts Medical School, 55 Lake Ave North, Worcester, MA 01655-0002, USA 1 Department of Epidemiology, Harvard T.H. Chan School of Public Health, Harvard University, Boston, MA, USA  | 
    
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| Notes | ObjectType-Article-1 SourceType-Scholarly Journals-1 ObjectType-Feature-2 content type line 14 Geetha Iyer, Sonal Singh: This work was performed while the authors were at Johns Hopkins University.  | 
    
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| Snippet | Introduction
Although generic drugs constitute approximately 88% of drugs prescribed in the US, there are no reliable methods to identify generic drugs in the... Although generic drugs constitute approximately 88% of drugs prescribed in the US, there are no reliable methods to identify generic drugs in the US FDA... Introduction Although generic drugs constitute approximately 88% of drugs prescribed in the US, there are no reliable methods to identify generic drugs in the...  | 
    
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| SubjectTerms | Adverse Drug Reaction Reporting Systems - statistics & numerical data Algorithms Amphetamines Case reports Confidence intervals Consistency Criteria Data processing Databases, Factual Drug abuse Drug Safety and Pharmacovigilance Drug-Related Side Effects and Adverse Reactions - epidemiology Drugs Drugs, Generic - administration & dosage Drugs, Generic - adverse effects Food Generic drugs Humans Identification methods International conferences Medical errors Medicine Medicine & Public Health Names Observer Variation Original Research Article Patients Pharmacology/Toxicology Prescription drugs Product safety Reliability analysis Reproducibility of Results Surveillance Systematic review Thyroxine United States - epidemiology United States Food and Drug Administration  | 
    
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| Title | An Algorithm to Identify Generic Drugs in the FDA Adverse Event Reporting System | 
    
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