TY - JOUR
T1 - Dynamic enhancement of drug product labels to support drug safety, efficacy, and effectiveness
AU - Boyce, Richard D.
AU - Horn, John R.
AU - Hassanzadeh, Oktie
AU - Waard, Anita de
AU - Schneider, Jodi
AU - Luciano, Joanne S.
AU - Rastegar-Mojarad, Majid
AU - Liakata, Maria
N1 - Funding Information:
We thank master research librarian Rob Guzman for his help building the reference standard of relevant claims. RDB was funded by grant K12-HS019461 from the Agency for Healthcare Research and Quality (AHRQ). The content is solely the responsibility of the authors and does not represent the official views of AHRQ. JS’s work was supported by Science Foundation Ireland under Grant No. SFI/09/CE/I1380 (Líon2). ML’s work was funded by an Early Career Fellowship from the Leverhulme Trust and EBI-EMBL. AdW’s work was funded by Elsevier Labs. OH’s work was funded by IBM Research.
Funding Information:
RDB is an Assistant Professor of Biomedical Informatics and a scholar in the University of Pittsburgh Comparative Effectiveness Research Program funded by the Agency for Healthcare Research and Quality. JRH is a Professor of Pharmacy at the University of Washington and a Fellow of the American College of Clinical Pharmacy. He is also one of the founders of the Drug Interaction Foundation that has developed standardized methods of evaluating potential drug interactions and outcome-based criteria for rating the potential significance of drug interactions. OH holds a PhD in Computer Science from University of Toronto, and is currently a Research Staff Member at IBM T.J. Watson Research Center and a research associate at University of Toronto’s database group. AdW is Disruptive Technologies Director at Elsevier Labs. Her scientific discourse analysis work is done in collaboration with the Utrecht University Institute of Linguistics. JS is writing her dissertation on argumentation and semantic web at the Digital Enterprise Research Institute. JSL is a Research Associate Professor at the Tetherless World Constellation, Rensselaer Polytechnic Institute. MRM is a Masters Student in Biomedical Informatics at University of Wisconsin-Milwaukee. ML is an Early Career Leverhulme Trust research fellow with expertise in text mining, natural language processing and computational biology. She is based at the European Bioinformatics Institute (EMBL-EBI) in Cambridge, UK, and also affiliated with Aberystwyth University, UK.
Publisher Copyright:
© 2013 Boyce et al.
PY - 2013/1/26
Y1 - 2013/1/26
N2 - Out-of-date or incomplete drug product labeling information may increase the risk of otherwise preventable adverse drug events. In recognition of these concerns, the United States Federal Drug Administration (FDA) requires drug product labels to include specific information. Unfortunately, several studies have found that drug product labeling fails to keep current with the scientific literature. We present a novel approach to addressing this issue. The primary goal of this novel approach is to better meet the information needs of persons who consult the drug product label for information on a drug's efficacy, effectiveness, and safety. Using FDA product label regulations as a guide, the approach links drug claims present in drug information sources available on the Semantic Web with specific product label sections. Here we report on pilot work that establishes the baseline performance characteristics of a proof-of-concept system implementing the novel approach. Claims from three drug information sources were linked to the Clinical Studies, Drug Interactions, and Clinical Pharmacology sections of the labels for drug products that contain one of 29 psychotropic drugs. The resulting Linked Data set maps 409 efficacy/effectiveness study results, 784 drug-drug interactions, and 112 metabolic pathway assertions derived from three clinically-oriented drug information sources (ClinicalTrials.gov, the National Drug File - Reference Terminology, and the Drug Interaction Knowledge Base) to the sections of 1,102 product labels. Proof-of-concept web pages were created for all 1,102 drug product labels that demonstrate one possible approach to presenting information that dynamically enhances drug product labeling. We found that approximately one in five efficacy/effectiveness claims were relevant to the Clinical Studies section of a psychotropic drug product, with most relevant claims providing new information. We also identified several cases where all of the drug-drug interaction claims linked to the Drug Interactions section for a drug were potentially novel. The baseline performance characteristics of the proof-of-concept will enable further technical and user-centered research on robust methods for scaling the approach to the many thousands of product labels currently on the market.
AB - Out-of-date or incomplete drug product labeling information may increase the risk of otherwise preventable adverse drug events. In recognition of these concerns, the United States Federal Drug Administration (FDA) requires drug product labels to include specific information. Unfortunately, several studies have found that drug product labeling fails to keep current with the scientific literature. We present a novel approach to addressing this issue. The primary goal of this novel approach is to better meet the information needs of persons who consult the drug product label for information on a drug's efficacy, effectiveness, and safety. Using FDA product label regulations as a guide, the approach links drug claims present in drug information sources available on the Semantic Web with specific product label sections. Here we report on pilot work that establishes the baseline performance characteristics of a proof-of-concept system implementing the novel approach. Claims from three drug information sources were linked to the Clinical Studies, Drug Interactions, and Clinical Pharmacology sections of the labels for drug products that contain one of 29 psychotropic drugs. The resulting Linked Data set maps 409 efficacy/effectiveness study results, 784 drug-drug interactions, and 112 metabolic pathway assertions derived from three clinically-oriented drug information sources (ClinicalTrials.gov, the National Drug File - Reference Terminology, and the Drug Interaction Knowledge Base) to the sections of 1,102 product labels. Proof-of-concept web pages were created for all 1,102 drug product labels that demonstrate one possible approach to presenting information that dynamically enhances drug product labeling. We found that approximately one in five efficacy/effectiveness claims were relevant to the Clinical Studies section of a psychotropic drug product, with most relevant claims providing new information. We also identified several cases where all of the drug-drug interaction claims linked to the Drug Interactions section for a drug were potentially novel. The baseline performance characteristics of the proof-of-concept will enable further technical and user-centered research on robust methods for scaling the approach to the many thousands of product labels currently on the market.
KW - Comparative effectiveness research
KW - Drug information services
KW - Drug interactions
KW - Drug labeling
KW - Linked data
KW - Pharmacokinetics
KW - Regulatory science
KW - Scientific discourse ontologies
KW - Treatment effectiveness
KW - Treatment efficacy
UR - http://www.scopus.com/inward/record.url?scp=84931093028&partnerID=8YFLogxK
U2 - 10.1186/2041-1480-4-5
DO - 10.1186/2041-1480-4-5
M3 - Article
AN - SCOPUS:84931093028
SN - 2041-1480
VL - 4
JO - Journal of Biomedical Semantics
JF - Journal of Biomedical Semantics
IS - 1
M1 - 5
ER -