View : 521 Download: 0

Twitter Analysis of the Nonmedical Use and Side Effects of Methylphenidate: Machine Learning Study

Title
Twitter Analysis of the Nonmedical Use and Side Effects of Methylphenidate: Machine Learning Study
Authors
Kim, Myeong GyuKim, JunguKim, Su CheolJeong, Jaegwon
Ewha Authors
김명규
SCOPUS Author ID
김명규scopus
Issue Date
2020
Journal Title
JOURNAL OF MEDICAL INTERNET RESEARCH
ISSN
1438-8871JCR Link
Citation
JOURNAL OF MEDICAL INTERNET RESEARCH vol. 22, no. 2
Keywords
methylphenidatesocial mediaTwitterprescription drug misusedrug-related side effects and adverse reactionsmachine learningsupport vector machine
Publisher
JMIR PUBLICATIONS, INC
Indexed
SCIE; SCOPUS WOS
Document Type
Article
Abstract
Background: Methylphenidate, a stimulant used to treat attention deficit hyperactivity disorder, has the potential to be used nonmedically, such as for studying and recreation. In an era when many people actively use social networking services, experience with the nonmedical use or side effects of methylphenidate might be shared on Twitter. Objective: The purpose of this study was to analyze tweets about the nonmedical use and side effects of methylphenidate using a machine learning approach. Methods: A total of 34,293 tweets mentioning methylphenidate from August 2018 to July 2019 were collected using searches for "methylphenidate" and its brand names. Tweets in a randomly selected training dataset (6860/34,293, 20.00%) were annotated as positive or negative for two dependent variables: nonmedical use and side effects. Features such as personal noun, nonmedical use terms, medical use terms, side effect terms, sentiment scores, and the presence of a URL were generated for supervised learning. Using the labeled training dataset and features, support vector machine (SVM) classifiers were built and the performance was evaluated using F-1 scores. The classifiers were applied to the test dataset to determine the number of tweets about nonmedical use and side effects. Results: Of the 6860 tweets in the training dataset, 5.19% (356/6860) and 5.52% (379/6860) were about nonmedical use and side effects, respectively. Performance of SVM classifiers for nonmedical use and side effects, expressed as F-1 scores, were 0.547 (precision: 0.926, recall: 0.388, and accuracy: 0.967) and 0.733 (precision: 0.920, recall: 0.609, and accuracy: 0.976), respectively. In the test dataset, the SVM classifiers identified 361 tweets (1.32%) about nonmedical use and 519 tweets (1.89%) about side effects. The proportion of tweets about nonmedical use was highest in May 2019 (46/2624, 1.75%) and December 2018 (36/2041, 1.76%). Conclusions: The SVM classifiers that were built in this study were highly precise and accurate and will help to automatically identify the nonmedical use and side effects of methylphenidate using Twitter.
DOI
10.2196/16466
Appears in Collections:
약학대학 > 약학과 > Journal papers
Files in This Item:
There are no files associated with this item.
Export
RIS (EndNote)
XLS (Excel)
XML


qrcode

BROWSE