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Journal of Medical Toxicology

, Volume 13, Issue 4, pp 278–286 | Cite as

Epidemiology from Tweets: Estimating Misuse of Prescription Opioids in the USA from Social Media

  • Michael CharyEmail author
  • Nicholas Genes
  • Christophe Giraud-Carrier
  • Carl Hanson
  • Lewis S. Nelson
  • Alex F. Manini
Original Article

Abstract

Background

The misuse of prescription opioids (MUPO) is a leading public health concern. Social media are playing an expanded role in public health research, but there are few methods for estimating established epidemiological metrics from social media. The purpose of this study was to demonstrate that the geographic variation of social media posts mentioning prescription opioid misuse strongly correlates with government estimates of MUPO in the last month.

Methods

We wrote software to acquire publicly available tweets from Twitter from 2012 to 2014 that contained at least one keyword related to prescription opioid use (n = 3,611,528). A medical toxicologist and emergency physician curated the list of keywords. We used the semantic distance (SemD) to automatically quantify the similarity of meaning between tweets and identify tweets that mentioned MUPO. We defined the SemD between two words as the shortest distance between the two corresponding word-centroids. Each word-centroid represented all recognized meanings of a word. We validated this automatic identification with manual curation. We used Twitter metadata to estimate the location of each tweet. We compared our estimated geographic distribution with the 2013–2015 National Surveys on Drug Usage and Health (NSDUH).

Results

Tweets that mentioned MUPO formed a distinct cluster far away from semantically unrelated tweets. The state-by-state correlation between Twitter and NSDUH was highly significant across all NSDUH survey years. The correlation was strongest between Twitter and NSDUH data from those aged 18–25 (r = 0.94, p < 0.01 for 2012; r = 0.94, p < 0.01 for 2013; r = 0.71, p = 0.02 for 2014). The correlation was driven by discussions of opioid use, even after controlling for geographic variation in Twitter usage.

Conclusions

Mentions of MUPO on Twitter correlate strongly with state-by-state NSDUH estimates of MUPO. We have also demonstrated that a natural language processing can be used to analyze social media to provide insights for syndromic toxicosurveillance.

Keywords

Social media Epidemiology Misuse Opioids Natural language processing Computational linguistics 

Notes

Compliance with Ethical Standards

Conflict of Interest

The authors declare that they have no conflicts of interest.

Sources of Funding

None

Supplementary material

13181_2017_625_MOESM1_ESM.docx (810 kb)
ESM 1 (DOCX 809 kb)

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Copyright information

© American College of Medical Toxicology 2017

Authors and Affiliations

  1. 1.Department of Emergency MedicineNewYork-Presbyterian/QueensQueensUSA
  2. 2.Department of Emergency MedicineMount Sinai HospitalNew YorkUSA
  3. 3.Department of Computer ScienceBrigham Young UniversityProvoUSA
  4. 4.Department of Health ScienceBrigham Young UniversityProvoUSA
  5. 5.Department of Emergency MedicineRutgers New Jersey Medical SchoolNewarkUSA
  6. 6.Division of Medical ToxicologyThe Icahn School of MedicineNew YorkUSA
  7. 7.Department of Emergency MedicineElmhurst Hospital CenterQueensUSA

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