TY - JOUR
T1 - Detecting risk level in individuals misusing fentanyl utilizing posts from an online community on Reddit
AU - Garg, Sanjana
AU - Taylor, Jordan
AU - El Sherief, Mai
AU - Kasson, Erin
AU - Aledavood, Talayeh
AU - Riordan, Raven
AU - Kaiser, Nina
AU - Cavazos-Rehg, Patricia
AU - De Choudhury, Munmun
N1 - Funding Information:
Funding for this work was provided by the National Institutes of Health (NIH) [Grant No: K02 DA043657 (Dr. Cavazos-Rehg) and Grant No: R01MH117172 (Dr. De Choudhury)], and through a postdoctoral fellowship to Dr. Aledavood from the James S. McDonnell Foundation . We would also like to acknowledge Vivian Agbonavbare and Nnenna Anako for their work to manually code posts and comments for this study.
Publisher Copyright:
© 2021 The Authors
PY - 2021/12
Y1 - 2021/12
N2 - Introduction: Opioid misuse is a public health crisis in the US, and misuse of synthetic opioids such as fentanyl have driven the most recent waves of opioid-related deaths. Because those who misuse fentanyl are often a hidden and high-risk group, innovative methods for identifying individuals at risk for fentanyl misuse are needed. Machine learning has been used in the past to investigate discussions surrounding substance use on Reddit, and this study leverages similar techniques to identify risky content from discussions of fentanyl on this platform. Methods: A codebook was developed by clinical domain experts with 12 categories indicative of fentanyl misuse risk, and this was used to manually label 391 Reddit posts and comments. Using this data, we built machine learning classification models to identify fentanyl risk. Results: Our machine learning risk model was able to detect posts or comments labeled as risky by our clinical experts with 76% accuracy and 76% sensitivity. Furthermore, we provide a vocabulary of community-specific, colloquial words for fentanyl and its analogues. Discussion: This study uses an interdisciplinary approach leveraging machine learning techniques and clinical domain expertise to automatically detect risky discourse, which may elicit and benefit from timely intervention. Moreover, our vocabulary of online terms for fentanyl and its analogues expands our understanding of online “street” nomenclature for opiates. Through an improved understanding of substance misuse risk factors, these findings allow for identification of risk concepts among those misusing fentanyl to inform outreach and intervention strategies tailored to this at-risk group.
AB - Introduction: Opioid misuse is a public health crisis in the US, and misuse of synthetic opioids such as fentanyl have driven the most recent waves of opioid-related deaths. Because those who misuse fentanyl are often a hidden and high-risk group, innovative methods for identifying individuals at risk for fentanyl misuse are needed. Machine learning has been used in the past to investigate discussions surrounding substance use on Reddit, and this study leverages similar techniques to identify risky content from discussions of fentanyl on this platform. Methods: A codebook was developed by clinical domain experts with 12 categories indicative of fentanyl misuse risk, and this was used to manually label 391 Reddit posts and comments. Using this data, we built machine learning classification models to identify fentanyl risk. Results: Our machine learning risk model was able to detect posts or comments labeled as risky by our clinical experts with 76% accuracy and 76% sensitivity. Furthermore, we provide a vocabulary of community-specific, colloquial words for fentanyl and its analogues. Discussion: This study uses an interdisciplinary approach leveraging machine learning techniques and clinical domain expertise to automatically detect risky discourse, which may elicit and benefit from timely intervention. Moreover, our vocabulary of online terms for fentanyl and its analogues expands our understanding of online “street” nomenclature for opiates. Through an improved understanding of substance misuse risk factors, these findings allow for identification of risk concepts among those misusing fentanyl to inform outreach and intervention strategies tailored to this at-risk group.
KW - Detection
KW - Fentanyl
KW - Machine learning
KW - Opioids
KW - Overdose
KW - Social media
UR - http://www.scopus.com/inward/record.url?scp=85118484261&partnerID=8YFLogxK
U2 - 10.1016/j.invent.2021.100467
DO - 10.1016/j.invent.2021.100467
M3 - Article
C2 - 34804810
AN - SCOPUS:85118484261
SN - 2214-7829
VL - 26
JO - Internet Interventions
JF - Internet Interventions
M1 - 100467
ER -