| Literature DB >> 32788147 |
Tareq Nasralah1, Omar El-Gayar2, Yong Wang3.
Abstract
BACKGROUND: Social media are considered promising and viable sources of data for gaining insights into various disease conditions and patients' attitudes, behaviors, and medications. They can be used to recognize communication and behavioral themes of problematic use of prescription drugs. However, mining and analyzing social media data have challenges and limitations related to topic deduction and data quality. As a result, we need a structured approach to analyze social media content related to drug abuse in a manner that can mitigate the challenges and limitations surrounding the use of such data.Entities:
Keywords: drug abuse; infodemiology; infoveillance; opioid crisis; social media; text mining
Mesh:
Year: 2020 PMID: 32788147 PMCID: PMC7446758 DOI: 10.2196/18350
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1Social media text mining framework for drug abuse. Rx: prescription.
Figure 2Drug abuse ontology for drug main terms and classes.
Figure 3Evaluation matrix for users’ postquality assessment.
Figure 4Opioid drug abuse ontology that includes opioid-related terms and concepts.
Figure 5Opioid drug abuse ontology tree hierarchy that reflects the distribution of sample tweets over the ontology concepts and terms. Rx: prescription.
Figure 6A search query based on the terms and concepts from the opioid drug abuse ontology to collect opioid-related users’ posts.
Figure 7Sample of the collected tweets.
Metrics comparing the performance of manual analysis (classifier 1) and the evaluation matrix (classifier 2) [26].
| Variable | Without evaluation matrix (classifier 1) | With evaluation matrix (classifier 2) |
| Precision | 0.764 | 0.941 |
| Recall | 1.000 | 0.966 |
| F-measure | 0.866 | 0.953 |
| Accuracy | 0.764 | 0.928 |
Figure 8Sample outcomes from the evaluation matrix, where tweets autolabeled 0 are irrelevant and tweets autolabeled 1 are relevant.
Figure 9Top nine topic word clouds.
Public opioid topic weights.
| Topic | Description | Top 10 topic words | Topic weighta (N=264,522) |
| 1 | Chronic pain medications | Pain, opioid, chronic, med, patient, medication, people, emergency, doctor, and prescribed | 40,437 (15.29%) |
| 2 | Opioid crisis and government | Opioid, crisis, epidemic, money, government, abuse, trump, end, tax, and change | 28,210 (10.66%) |
| 3 | Border as the source of fentanyl | Border, fentanyl, drug, wall, American, coming, stop, country, human, and China | 25,380 (9.59%) |
| 4 | Overdose death from street fentanyl and heroin | Fentanyl, heroin, people, drug, kill, illicit, overdoses, street, literally, and laced | 25,226 (9.54%) |
| 5 | Opioid addiction treatments | Addiction, opioid, addict, suboxone, drug, treatment, people, understand, free, and increase | 18,160 (6.87%) |
| 6 | Opioid crisis as a real problem | Problem, opioid, real, crisis, issue, people, making, number, drug, and started | 13,966 (5.28%) |
| 7 | Opioid drugs for cough and other health problems | Codeine, pill, oxy, shit, cough, percocet, sex, yall, buy, and sound | 13,950 (5.27%) |
| 8 | Opioid overdose deaths | Death, overdose, opioid, died, die, people, life, naloxone, opioid crisis, and save | 13,179 (4.98%) |
| 9 | Opioid crisis impact on Americans | Opioid, family, crisis, America, job, rate, community, place, epidemic, and member | 11,214 (4.24%) |
| 10 | Patient suffering from opioid prescriptions | Patient, doctor, opioid, cancer, prescribing, control, doc, suffering, opioids, and suicide | 10,909 (4.12%) |
| 11 | Taking opioids after surgery or hospitalization | Day, morphine, feel, surgery, hospital, gave, time, home, needed, and sick | 10,326 (3.90%) |
| 12 | Illegal market for getting prescription drugs | Drug, prescription, illegal, street, market, dealer, law, opioid, supply, and sell | 9948 (3.76%) |
| 13 | Legalizing medical marijuana and cannabis | Medical, marijuana, opioid, cannabis, legal, research, pot, study, state, and cannabidiol | 9129 (3.45%) |
| 14 | People dying from opioids | People, opioid, white, dying, news, crime, crack, folk, black, and house | 9012 (3.41%) |
| 15 | Public health and substance | Care, health, opioid, substance, public, worse, world, guy, mental, and vote | 8065 (3.05%) |
| 16 | Opioid addiction and withdrawal | Addicted, opiate, percocet, week, people, opioid, withdrawal, hooked, thinking, and common | 7662 (2.90%) |
| 17 | Methadone clinic solutions for addiction | High, methadone, solution, fix, clinic, level, crazy, gone, heroine, and wait | 4912 (1.86%) |
| 18 | School health care education programs | Today, program, school, access, healthcare, policy, jail, recovery, act, and education | 4837 (1.83%) |
aThe number represents the number of tweets in each topic, and the percentage represents the proportion of tweets with respect to all tweets.