Literature DB >> 36097239

Artificial Intelligent Context-Aware Machine-Learning Tool to Detect Adverse Drug Events from Social Media Platforms.

Don Roosan1, Anandi V Law2, Moom R Roosan3, Yan Li4.   

Abstract

INTRODUCTION: Pharmacovigilance (PV) has proven to detect post-marketing adverse drug events (ADE). Previous research used the natural language processing (NLP) tool to extract unstructured texts relevant to ADEs. However, texts without context reduce the efficiency of such algorithms. Our objective was to develop and validate an innovative NLP tool, aTarantula, using a context-aware machine-learning algorithm to detect existing ADEs from social media using an aggregated lexicon.
METHOD: aTarantula utilized FastText embeddings and an aggregated lexicon to extract contextual data from three patient forums (i.e., MedHelp, MedsChat, and PatientInfo) taking warfarin. The lexicon used warfarin package inserts and synonyms of warfarin ADEs from UMLS and FAERS databases. Data was stored on SQLite and then refined and manually checked by three clinical pharmacists for validation.
RESULTS: Multiple organ systems where the most frequent ADE were reported at 1.50%, followed by CNS side effects at 1.19%. Lymphatic system ADEs were the least common side effect reported at 0.09%. The overall Spearman rank correlation coefficient between patient-reported data from the forums and FAERS was 0.19. As determined by pharmacist validation, aTarantula had a sensitivity of 84.2% and a specificity of 98%. Three clinical pharmacists manually validated our results. Finally, we created an aggregated lexicon for mining ADEs from social media.
CONCLUSION: We successfully developed aTarantula, a machine-learning algorithmn based on artificial intelligence to extract warfarin-related ADEs from online social discussion forums automatically. Our study shows that it is feasible to use aTarantula to detect ADEs. Future researchers can validate aTarantula on the diverse dataset.
© 2022. American College of Medical Toxicology.

Entities:  

Keywords:  Adverse drug event; Machine learning; Natural language processing; Pharmacovigilance; Social media

Mesh:

Substances:

Year:  2022        PMID: 36097239     DOI: 10.1007/s13181-022-00906-2

Source DB:  PubMed          Journal:  J Med Toxicol        ISSN: 1556-9039


  21 in total

Review 1.  Utilizing social media data for pharmacovigilance: A review.

Authors:  Abeed Sarker; Rachel Ginn; Azadeh Nikfarjam; Karen O'Connor; Karen Smith; Swetha Jayaraman; Tejaswi Upadhaya; Graciela Gonzalez
Journal:  J Biomed Inform       Date:  2015-02-23       Impact factor: 6.317

2.  Filtering big data from social media--Building an early warning system for adverse drug reactions.

Authors:  Ming Yang; Melody Kiang; Wei Shang
Journal:  J Biomed Inform       Date:  2015-02-14       Impact factor: 6.317

3.  Adverse drug events in the outpatient setting: an 11-year national analysis.

Authors:  Florence T Bourgeois; Michael W Shannon; Clarissa Valim; Kenneth D Mandl
Journal:  Pharmacoepidemiol Drug Saf       Date:  2010-09       Impact factor: 2.890

4.  US Emergency Department Visits for Outpatient Adverse Drug Events, 2013-2014.

Authors:  Nadine Shehab; Maribeth C Lovegrove; Andrew I Geller; Kathleen O Rose; Nina J Weidle; Daniel S Budnitz
Journal:  JAMA       Date:  2016-11-22       Impact factor: 56.272

Review 5.  Novel data-mining methodologies for adverse drug event discovery and analysis.

Authors:  R Harpaz; W DuMouchel; N H Shah; D Madigan; P Ryan; C Friedman
Journal:  Clin Pharmacol Ther       Date:  2012-06       Impact factor: 6.875

6.  A patient's perspective: the impact of adverse drug reactions on patients and their views on reporting.

Authors:  S Lorimer; A Cox; N J Langford
Journal:  J Clin Pharm Ther       Date:  2011-05-18       Impact factor: 2.512

Review 7.  Assessing the economic impact of adverse drug effects.

Authors:  Rosa Rodríguez-Monguió; María José Otero; Joan Rovira
Journal:  Pharmacoeconomics       Date:  2003       Impact factor: 4.981

8.  Deep learning for pharmacovigilance: recurrent neural network architectures for labeling adverse drug reactions in Twitter posts.

Authors:  Anne Cocos; Alexander G Fiks; Aaron J Masino
Journal:  J Am Med Inform Assoc       Date:  2017-07-01       Impact factor: 4.497

9.  Digital drug safety surveillance: monitoring pharmaceutical products in twitter.

Authors:  Clark C Freifeld; John S Brownstein; Christopher M Menone; Wenjie Bao; Ross Filice; Taha Kass-Hout; Nabarun Dasgupta
Journal:  Drug Saf       Date:  2014-05       Impact factor: 5.606

10.  Pharmacovigilance from social media: mining adverse drug reaction mentions using sequence labeling with word embedding cluster features.

Authors:  Azadeh Nikfarjam; Abeed Sarker; Karen O'Connor; Rachel Ginn; Graciela Gonzalez
Journal:  J Am Med Inform Assoc       Date:  2015-03-09       Impact factor: 4.497

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