Automating Detection of Drug-Related Harms on Social Media: Machine Learning Framework

被引:2
|
作者
Fisher, Andrew [1 ,7 ]
Young, Matthew Maclaren [2 ,3 ,4 ]
Payer, Doris [2 ]
Pacheco, Karen [5 ]
Dubeau, Chad [2 ]
Mago, Vijay [6 ]
机构
[1] St Marys Univ, Dept Math & Comp Sci, Halifax, NS, Canada
[2] Canadian Ctr Subst Use & Addict, Ottawa, ON, Canada
[3] Greo Evidence Insights, Guelph, ON, Canada
[4] Carleton Univ, Dept Psychol, Ottawa, ON, Canada
[5] Canadian Med Protect Assoc, Ottawa, ON, Canada
[6] York Univ, Fac Hlth, Toronto, ON, Canada
[7] St Marys Univ, Dept Math & Comp Sci, 923 Robie St, Halifax, NS B3H 3C3, Canada
关键词
early warning system; social media; law enforcement; public health; new psychoactive substances; development; drug; dosage; Canada; Twitter; poisoning; monitoring; community; public safety; machine learning; Fleiss; tweet; tweet annotations; pharmacology; addiction; OVERDOSE DEATHS; COCAINE; STATES;
D O I
10.2196/43630
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background: A hallmark of unregulated drug markets is their unpredictability and constant evolution with newly introduced substances. People who use drugs and the public health workforce are often unaware of the appearance of new drugs on the unregulated market and their type, safe dosage, and potential adverse effects. This increases risks to people who use drugs, including the risk of unknown consumption and unintentional drug poisoning. Early warning systems (EWSs) can help monitor the landscape of emerging drugs in a given community by collecting and tracking up-to-date information and determining trends. However, there are currently few ways to systematically monitor the appearance and harms of new drugs on the unregulated market in Canada. Objective: The goal of this work is to examine how artificial intelligence can assist in identifying patterns of drug-related risks and harms, by monitoring the social media activity of public health and law enforcement groups. This information is beneficial in the form of an EWS as it can be used to identify new and emerging drug trends in various communities. Methods: To collect data for this study, 145 relevant Twitter accounts throughout Quebec (n=33), Ontario (n=78), and British Columbia (n=34) were manually identified. Tweets posted between August 23 and December 21, 2021, were collected via the application programming interface developed by Twitter for a total of 40,393 tweets. Next, subject matter experts (1) developed keyword filters that reduced the data set to 3746 tweets and (2) manually identified relevant tweets for monitoring and early warning efforts for a total of 464 tweets. Using this information, a zero-shot classifier was applied to tweets from step 1 with a set of keep (drug arrest, drug discovery, and drug report) and not-keep (drug addiction support, public safety report, and others) labels to see how accurately it could extract the tweets identified in step 2. Results: When looking at the accuracy in identifying relevant posts, the system extracted a total of 584 tweets and had an overlap of 392 out of 477 (specificity of similar to 84.5%) with the subject matter experts. Conversely, the system identified a total of 3162 irrelevant tweets and had an overlap of 3090 (sensitivity of similar to 94.1%) with the subject matter experts. Conclusions: This study demonstrates the benefits of using artificial intelligence to assist in finding relevant tweets for an EWS. The results showed that it can be quite accurate in filtering out irrelevant information, which greatly reduces the amount of manual work required. Although the accuracy in retaining relevant information was observed to be lower, an analysis showed that the label definitions can impact the results significantly and would therefore be suitable for future work to refine. Nonetheless, the performance is promising and demonstrates the usefulness of artificial intelligence in this domain.
引用
收藏
页数:10
相关论文
共 50 条
  • [21] DETECTION OF DRUG-RELATED PROBLEMS IN ANTIMICROBIALS
    Penarrubia Rodrigo, Bonilla
    Monsalve Ana, Garcia
    Alonso Pilar, Campillos
    Salom Pedro, Garcia
    ATENCION FARMACEUTICA, 2009, 11 (03): : 181 - 189
  • [22] Social Media Cyberbullying Detection using Machine Learning
    Hani, John
    Nashaat, Mohamed
    Ahmed, Mostafa
    Emad, Zeyad
    Amer, Eslam
    Mohammed, Ammar
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2019, 10 (05) : 703 - 707
  • [23] Spatial analyses of health services and drug-related harms in urban and rural settings
    Bardwell, Geoff
    Perlman, Christopher
    LANCET PUBLIC HEALTH, 2024, 9 (02): : e69 - e70
  • [24] Trusting the source: The potential role of drug dealers in reducing drug-related harms via drug checking
    Bardwell, Geoff
    Boyd, Jade
    Arredondo, Jaime
    McNeil, Ryan
    Kerr, Thomas
    DRUG AND ALCOHOL DEPENDENCE, 2019, 198 : 1 - 6
  • [25] Detection of Misinformation Related to Pandemic Diseases using Machine Learning Techniques in Social Media Platforms
    Naeem J.
    Gul O.M.
    Parlak I.B.
    Karpouzis K.
    Salman Y.B.
    Kadry S.N.
    EAI Endorsed Transactions on Pervasive Health and Technology, 2024, 10
  • [26] Actual drug-related harms in residential aged care facilities: a narrative review
    Ali, Sheraz
    Curtain, Colin M.
    Bereznicki, Luke RE.
    Salahudeen, Mohammed S.
    EXPERT OPINION ON DRUG SAFETY, 2022, 21 (08) : 1047 - 1060
  • [27] Accurate spatiotemporal mapping of drug overdose deaths by machine learning of drug-related web-searches
    Campo, David S.
    Gussler, Joseph W.
    Sue, Amanda
    Skums, Pavel
    Khudyakov, Yury
    PLOS ONE, 2020, 15 (12):
  • [28] Social characteristics of female drug-related crime
    Yavshunovskaya, T. M.
    Stepanova, I. B.
    SOTSIOLOGICHESKIE ISSLEDOVANIYA, 2008, (02): : 102 - 106
  • [29] Fake social media news and distorted campaign detection framework using sentiment analysis & machine learning
    Bhardwaj, Akashdeep
    Bharany, Salil
    Kim, Seongki
    HELIYON, 2024, 10 (16)
  • [30] ROLE OF MASS MEDIA IN COMBATING DRUG-RELATED CRIME
    Yurtayeva, Kseniya
    Hladkova, Yevhenia
    Shcherbakova, Alona
    BALTIC JOURNAL OF ECONOMIC STUDIES, 2018, 4 (03) : 366 - 371