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Social Media Mining for Toxicovigilance: Automatic Monitoring of Prescription Medication Abuse from Twitter

INTRODUCTION: Prescription medication overdose is the fastest growing drug-related problem in the USA. The growing nature of this problem necessitates the implementation of improved monitoring strategies for investigating the prevalence and patterns of abuse of specific medications. OBJECTIVES: Our...

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Autores principales: Sarker, Abeed, O’Connor, Karen, Ginn, Rachel, Scotch, Matthew, Smith, Karen, Malone, Dan, Gonzalez, Graciela
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer International Publishing 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4749656/
https://www.ncbi.nlm.nih.gov/pubmed/26748505
http://dx.doi.org/10.1007/s40264-015-0379-4
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author Sarker, Abeed
O’Connor, Karen
Ginn, Rachel
Scotch, Matthew
Smith, Karen
Malone, Dan
Gonzalez, Graciela
author_facet Sarker, Abeed
O’Connor, Karen
Ginn, Rachel
Scotch, Matthew
Smith, Karen
Malone, Dan
Gonzalez, Graciela
author_sort Sarker, Abeed
collection PubMed
description INTRODUCTION: Prescription medication overdose is the fastest growing drug-related problem in the USA. The growing nature of this problem necessitates the implementation of improved monitoring strategies for investigating the prevalence and patterns of abuse of specific medications. OBJECTIVES: Our primary aims were to assess the possibility of utilizing social media as a resource for automatic monitoring of prescription medication abuse and to devise an automatic classification technique that can identify potentially abuse-indicating user posts. METHODS: We collected Twitter user posts (tweets) associated with three commonly abused medications (Adderall(®), oxycodone, and quetiapine). We manually annotated 6400 tweets mentioning these three medications and a control medication (metformin) that is not the subject of abuse due to its mechanism of action. We performed quantitative and qualitative analyses of the annotated data to determine whether posts on Twitter contain signals of prescription medication abuse. Finally, we designed an automatic supervised classification technique to distinguish posts containing signals of medication abuse from those that do not and assessed the utility of Twitter in investigating patterns of abuse over time. RESULTS: Our analyses show that clear signals of medication abuse can be drawn from Twitter posts and the percentage of tweets containing abuse signals are significantly higher for the three case medications (Adderall(®): 23 %, quetiapine: 5.0 %, oxycodone: 12 %) than the proportion for the control medication (metformin: 0.3 %). Our automatic classification approach achieves 82 % accuracy overall (medication abuse class recall: 0.51, precision: 0.41, F measure: 0.46). To illustrate the utility of automatic classification, we show how the classification data can be used to analyze abuse patterns over time. CONCLUSION: Our study indicates that social media can be a crucial resource for obtaining abuse-related information for medications, and that automatic approaches involving supervised classification and natural language processing hold promises for essential future monitoring and intervention tasks.
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spelling pubmed-47496562016-02-19 Social Media Mining for Toxicovigilance: Automatic Monitoring of Prescription Medication Abuse from Twitter Sarker, Abeed O’Connor, Karen Ginn, Rachel Scotch, Matthew Smith, Karen Malone, Dan Gonzalez, Graciela Drug Saf Original Research Article INTRODUCTION: Prescription medication overdose is the fastest growing drug-related problem in the USA. The growing nature of this problem necessitates the implementation of improved monitoring strategies for investigating the prevalence and patterns of abuse of specific medications. OBJECTIVES: Our primary aims were to assess the possibility of utilizing social media as a resource for automatic monitoring of prescription medication abuse and to devise an automatic classification technique that can identify potentially abuse-indicating user posts. METHODS: We collected Twitter user posts (tweets) associated with three commonly abused medications (Adderall(®), oxycodone, and quetiapine). We manually annotated 6400 tweets mentioning these three medications and a control medication (metformin) that is not the subject of abuse due to its mechanism of action. We performed quantitative and qualitative analyses of the annotated data to determine whether posts on Twitter contain signals of prescription medication abuse. Finally, we designed an automatic supervised classification technique to distinguish posts containing signals of medication abuse from those that do not and assessed the utility of Twitter in investigating patterns of abuse over time. RESULTS: Our analyses show that clear signals of medication abuse can be drawn from Twitter posts and the percentage of tweets containing abuse signals are significantly higher for the three case medications (Adderall(®): 23 %, quetiapine: 5.0 %, oxycodone: 12 %) than the proportion for the control medication (metformin: 0.3 %). Our automatic classification approach achieves 82 % accuracy overall (medication abuse class recall: 0.51, precision: 0.41, F measure: 0.46). To illustrate the utility of automatic classification, we show how the classification data can be used to analyze abuse patterns over time. CONCLUSION: Our study indicates that social media can be a crucial resource for obtaining abuse-related information for medications, and that automatic approaches involving supervised classification and natural language processing hold promises for essential future monitoring and intervention tasks. Springer International Publishing 2016-01-09 2016 /pmc/articles/PMC4749656/ /pubmed/26748505 http://dx.doi.org/10.1007/s40264-015-0379-4 Text en © The Author(s) 2015 Open AccessThis article is distributed under the terms of the Creative Commons Attribution-NonCommercial 4.0 International License (http://creativecommons.org/licenses/by-nc/4.0/), which permits any noncommercial use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made.
spellingShingle Original Research Article
Sarker, Abeed
O’Connor, Karen
Ginn, Rachel
Scotch, Matthew
Smith, Karen
Malone, Dan
Gonzalez, Graciela
Social Media Mining for Toxicovigilance: Automatic Monitoring of Prescription Medication Abuse from Twitter
title Social Media Mining for Toxicovigilance: Automatic Monitoring of Prescription Medication Abuse from Twitter
title_full Social Media Mining for Toxicovigilance: Automatic Monitoring of Prescription Medication Abuse from Twitter
title_fullStr Social Media Mining for Toxicovigilance: Automatic Monitoring of Prescription Medication Abuse from Twitter
title_full_unstemmed Social Media Mining for Toxicovigilance: Automatic Monitoring of Prescription Medication Abuse from Twitter
title_short Social Media Mining for Toxicovigilance: Automatic Monitoring of Prescription Medication Abuse from Twitter
title_sort social media mining for toxicovigilance: automatic monitoring of prescription medication abuse from twitter
topic Original Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4749656/
https://www.ncbi.nlm.nih.gov/pubmed/26748505
http://dx.doi.org/10.1007/s40264-015-0379-4
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