| Literature DB >> 22166012 |
Halil Bisgin1, Zhichao Liu, Hong Fang, Xiaowei Xu, Weida Tong.
Abstract
BACKGROUND: The Food and Drug Administration (FDA) approved drug labels contain a broad array of information, ranging from adverse drug reactions (ADRs) to drug efficacy, risk-benefit consideration, and more. However, the labeling language used to describe these information is free text often containing ambiguous semantic descriptions, which poses a great challenge in retrieving useful information from the labeling text in a consistent and accurate fashion for comparative analysis across drugs. Consequently, this task has largely relied on the manual reading of the full text by experts, which is time consuming and labor intensive.Entities:
Mesh:
Year: 2011 PMID: 22166012 PMCID: PMC3236833 DOI: 10.1186/1471-2105-12-S10-S11
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Figure 1Overview of the workflow. The MedDRA ontology was applied to the three drug labeling sections (i.e., Boxed Warnings, Warnings and Precautions, and Adverse Reactions) to generate a list of adverse event terms for each drug, on which topic modeling was applied, followed with statistical analysis to assess the identified topics in the context of safety concern and therapeutic use.
Figure 2The distribution of the number of drugs in the 100 topics. The cutoff for topics to perform further analysis on was set at 10 drugs and is shown on the graph.
Figure 3The percentage of drugs with Boxed Warning (BW) for 27 topics. This percentage was calculated for each of 27 topics that contain at least 10 drugs.
Five topics with highly populated BW drugs (>70%)
| Topics | Statistics | Corresponding ADRs from MedDRA | |||
|---|---|---|---|---|---|
| # drugs | # BW Drugs | % | P-value | ||
| Topic 5 | 21 | 15 | 71% | 0.0121 | Creatinine; renal-failure; hyperkalemia; potassium; injury |
| Topic 6 | 20 | 16 | 80% | 0.0014 | Suicide; irritability; restlessness; agitation; anxiety |
| Topic 8 | 19 | 14 | 74% | 0.01 | Bleeding; stroke; gastrointestinal-bleeding; myocardial-infarction; coronary artery bypass |
| Topic 18 | 14 | 13 | 93% | 2.38E-4 | Death; psychosis; elderly; dementia; extrapyramidal symptoms |
| Topic 24 | 11 | 9 | 82% | 0.0135 | Hepatitis; hepatotoxicity; hepatic-failure; injury; death |
Figure 4The purity of the top therapeutic category for 27 topics. Each of 27 topics was assigned to one therapeutic category according to which ATC category contained the most drugs from that topic; the percent of drugs belonging to that category from the topic is shown.
Five topics with highly populated drugs (>70%) in a therapeutic category
| Topics | Statistics | Corresponding ADRs from MedDRA | |||
|---|---|---|---|---|---|
| # drugs | Therapeutic categories (First Level of ATC) | % | P-value | ||
| Topic 1 | 31 | Antineoplastic and immunomodulating agents (L/24) | 81% | 0.0005 | Neutropenia; stomatitis; infection; myelosuppression; sepsis; immunosuppression |
| Topic 4 | 21 | Antiinfectives for systemic use (J/19) | 96% | 0.0005 | Colitis; diarrhea; allergy; colectomy; eosinophilia |
| Topic 6 | 20 | Nervous system (N/14) | 73% | 0.0011 | Suicide; irritability; restlessness; agitation; anxiety |
| Topic 18 | 14 | Nervous system (N/11) | 88% | 8.31E-004 | Death; psychosis; elderly; dementia; extrapyramidal symptoms |
| Topic 22 | 12 | Nervous system (N/8) | 75% | 0.020 | Depression; excitement; dysphoria; unconsciousness; sleep disturbances |