Identifying schizophrenia stigma on Twitter : a proof of principle model using service user supervised machine learning

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Abstract

Stigma has negative effects on people with mental health problems by making them less likely to seek help. We develop a proof of principle service user supervised machine learning pipeline to identify stigmatising tweets reliably and understand the prevalence of public schizophrenia stigma on Twitter. A service user group advised on the machine learning model evaluation metric (fewest false negatives) and features for machine learning. We collected 13,313 public tweets on schizophrenia between January and May 2018. Two service user researchers manually identified stigma in 746 English tweets; 80% were used to train eight models, and 20% for testing. The two models with fewest false negatives were compared in two service user validation exercises, and the best model used to classify all extracted public English tweets. Tweets classed as stigmatising by service users were more negative in sentiment (t (744) = 12.02, p < 0.001 [95% CI: 0.196–0.273]). Our linear Support Vector Machine was the best performing model with fewest false negatives and higher service user validation. This model identified public stigma in 47% of English tweets (n5,676) which were more negative in sentiment (t (12,143) = 64.38, p < 0.001 [95% CI: 0.29–0.31]). Machine learning can identify stigmatising tweets at large scale, with service user involvement. Given the prevalence of stigma, there is an urgent need for education and online campaigns to reduce it. Machine learning can provide a real time metric on their success.

Item Type: Journal Article
Subjects: P Language and Literature > P Philology. Linguistics
Q Science > Q Science (General)
R Medicine > RC Internal medicine
Divisions: Faculty of Science, Engineering and Medicine > Medicine > Warwick Medical School > Health Sciences > Mental Health and Wellbeing
Faculty of Science, Engineering and Medicine > Medicine > Warwick Medical School
SWORD Depositor: Library Publications Router
Library of Congress Subject Headings (LCSH): Schizophrenia , Schizophrenia -- Diagnosis, Schizophrenia -- Diagnosis -- Data processing, Supervised learning (Machine learning) , Microblogs , Microblogs -- -- Data processing, Machine translating
Journal or Publication Title: Schizophrenia
Publisher: Springer Nature
ISSN: 2334-265X
Official Date: 7 February 2022
Dates:
Date
Event
7 February 2022
Published
6 December 2021
Accepted
Volume: 8
Article Number: 1
DOI: 10.1038/s41537-021-00197-6
Status: Peer Reviewed
Publication Status: Published
Access rights to Published version: Open Access (Creative Commons open licence)
Date of first compliant deposit: 16 February 2022
Date of first compliant Open Access: 18 February 2022
RIOXX Funder/Project Grant:
Project/Grant ID
RIOXX Funder Name
Funder ID
IS-BRC-1215-20018
National Institute for Health Research
URI: https://wrap.warwick.ac.uk/162879/

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