| Literature DB >> 32385840 |
Ying Li1, Antonio Jimeno Yepes2, Cao Xiao3.
Abstract
INTRODUCTION: Adverse drug reactions (ADRs) are unintended reactions caused by a drug or combination of drugs taken by a patient. The current safety surveillance system relies on spontaneous reporting systems (SRSs) and more recently on observational health data; however, ADR detection may be delayed and lack geographic diversity. The broad scope of social media conversations, such as those on Twitter, can include health-related topics. Consequently, these data could be used to detect potentially novel ADRs with less latency. Although research regarding ADR detection using social media has made progress, findings are based on single information sources, and no study has yet integrated drug safety evidence from both an SRS and Twitter.Entities:
Year: 2020 PMID: 32385840 PMCID: PMC7434724 DOI: 10.1007/s40264-020-00943-2
Source DB: PubMed Journal: Drug Saf ISSN: 0114-5916 Impact factor: 5.606
Symptom lists statistics
| List | Symptoms | Unique synonyms | Synonyms/symptom |
|---|---|---|---|
| Wiki | 183 | 2016 | 11.74 |
| UMLS1 | 2733 | 8654 | 3.99 |
| UMLS2 | 68,720 | 105,721 | 1.66 |
UMLS Unified Medical Language System
Fig. 1Processing pipeline for generating, combining and evaluating adverse drug reaction signals produced by Twitter, FAERS, and the combined system. FAERS US FDA Adverse Event Reporting System, MedDRA Medical Dictionary for Regulatory Activities
Summary statistics for four data sets
| Data source | Reports (N) | Drugs (N) | ADRs (N) | Drug–ADR pairs (N) | Drugs per ADRb | ADRs per drugb |
|---|---|---|---|---|---|---|
| Twitter Wiki | 55,867 | 286 | 40 | 1626 | 41.69 | 5.71 |
| Twitter UMLS1 | 64,195 | 290 | 55 | 1768 | 32.74 | 6.12 |
| Twitter UMLS2 | 72,008 | 298 | 69 | 2036 | 29.94 | 6.86 |
| FAERS | 2.3 milliona | 3639 | 15,173 | 2.4 milliona | 159.42 | 664.72 |
ADR adverse drug reaction, FAERS US FDA Adverse Event Reporting System, UMLS Unified Medical Language System
aNumber of drug–ADR pairs is bigger than the number of reports because multiple drugs and events were mentioned in a single case report
bDrugs per ADR is the average number of unique drugs that are mentioned with an ADR; ADRs per drug is the average number of unique ADRs that are mentioned with a drug
The top ten most frequently reported drugs and adverse drug reactions in each data source
| Data Source | Twitter Wiki | Twitter UMLS1 | Twitter UMLS2 | FAERS |
|---|---|---|---|---|
| Top ten drugs | Acetaminophen | Acetaminophen | Acetaminophen | Aspirin |
| Hydrocodone | Hydrocodone | Hydrocodone | Etanercept | |
| Diphenhydramine | Diphenhydramine | Diphenhydramine | Adalimumab | |
| Oxycodone | Oxycodone | Oxycodone | levothyroxine | |
| Caffeine | Caffeine | Caffeine | Omeprazole | |
| Phenylephrine | Dextromethorphan | Dextromethorphan | Acetaminophen | |
| Dextromethorphan | Menthol | Phenylephrine | Amlodipine | |
| Menthol | Phenylephrine | Menthol | Furosemide | |
| Ibuprofen | Ibuprofen | Ibuprofen | Prednisone | |
| Aspirin | Aspirin | Pseudoephedrine | Multivitamin preparation | |
| Top ten ADRs | Pain | Pain | Pain | Nausea |
| Headache | Headache | Headache | Drug ineffective | |
| Dizziness | Dizziness | Dizziness | Fatigue | |
| Nausea | Nausea | Nausea | Dyspnea | |
| Sleepy | Itching | Drowsiness | Pain | |
| Itching | Emesis | Itching | Diarrhea | |
| Fainting | Fainting | Emesis | Headache | |
| Cough | Cough | Fainting | Death | |
| Back pain | Backache | Cough | Vomiting | |
| Back ache | Insomnia | Backache | Dizziness |
ADR adverse drug reaction, FAERS US FDA Adverse Event Reporting System, UMLS Unified Medical Language System
The AUCs of signal detection performance for Twitter, FAERS, and combined systems using relevant reference standards
| Data source | Method | AUC | Positive controls ( | Negative controls ( |
|---|---|---|---|---|
| Twitter Wiki and FAERS | FAERS alone | 0.642 | 489 | 348 |
| Twitter alone | 0.534 | 489 | 348 | |
| Baseline combination | 0.603 | 489 | 348 | |
| Proposed combination | 0.637 | 489 | 348 | |
| Twitter UMLS1 and FAERS | FAERS alone | 0.613 | 455 | 390 |
| Twitter alone | 0.532 | 455 | 390 | |
| Baseline combination | 0.578 | 455 | 390 | |
| Proposed combination | 0.587 | 455 | 390 | |
| Twitter UMLS2 and FAERS | FAERS alone | 0.612 | 465 | 456 |
| Twitter alone | 0.525 | 465 | 456 | |
| Baseline combination | 0.572 | 465 | 456 | |
| Proposed combination | 0.595 | 465 | 456 |
ADR adverse drug reaction, AUC area under the receiver operating characteristics curve, FAERS US FDA Adverse Event Reporting System, UMLS Unified Medical Language System
Two-sided p values for the hypothesis test of no difference in AUC performance between two methods
| Data source | Method | Twitter alone | Baseline combination | Proposed combination |
|---|---|---|---|---|
| Twitter Wiki and FAERS | FAERS alone | 0.0005 | 0.0003 | 0.2037 |
| Twitter alone | – | 0.0422 | 0.0011 | |
| Baseline combination | – | – | 0.0013 | |
| Twitter UMLS1 and FAERS | FAERS alone | 0.0103 | 0.0103 | 0.0031 |
| Twitter alone | – | 0.1830 | 0.1096 | |
| Baseline combination | – | – | 0.4314 | |
| Twitter UMLS2 and FAERS | FAERS alone | 0.0029 | 0.0024 | 0.0106 |
| Twitter alone | – | 0.1665 | 0.0328 | |
| Baseline combination | – | – | 0.0563 |
ADR adverse drug reaction, AUC area under the receiver operating characteristics curve, FAERS US FDA Adverse Event Reporting System, UMLS Unified Medical Language System
Fig. 2Receiver operating characteristic curves for signal scores based on Twitter, FAERS, and two combination systems. a Twitter Wiki, and FAERS; b Twitter UMLS1, and FAERS; c Twitter UMLS2, and FAERS. FAERS US FDA Adverse Event Reporting System, UMLS Unified Medical Language System
Adverse drug reactions with the best area under the receiver operating characteristics curve in one of three systems or are undetermined
| FAERS | Combination System | Undetermined | |
|---|---|---|---|
| Abdominal pain, burning sensation, constipation, dizziness, dry skin, flushing, hunger, nausea, rash, toothache, tremor | Anxiety disorder, back pain, chest pain, cough, fatigue, hunger, lethargy, pain, seizure, thirst | Agitation, anxiety, dizziness, fatigue, headache, insomnia, myalgia, nausea, vertigo | Abdominal discomfort, alcoholism, alopecia, amnesia, arthralgia, blindness, chills, drooling, dry eye, dry mouth, ear pain, ear pruritus, eye pruritus, flatulence, hypersomnia, malaise, overweight, sinus headache, sneezing, snoring, somnolence, starvation, stress, throat irritation, wheezing |
FAERS US FDA Adverse Event Reporting System
| This study is the first of its kind to use a computational method (empirical Bayesian model) to combine drug safety signals from a spontaneous reporting system with those from social media. |
| The accuracy of signal detection using social media can be improved by combining the signals with those from spontaneous reporting systems. |
| The evaluation of the combined system and individual sources was based on a fairly large reference standard, and the results of this study shed light on the potential role of Twitter data in pharmacovigilance. |