Analyzing Themes, Sentiments, and Coping Strategies Regarding Online News Coverage of Depression in Hong Kong: Mixed Methods Study.

Publication date: Feb 13, 2025

Depression, a highly prevalent global mental disorder, has prompted significant research concerning its association with social media use and its impact during Hong Kong’s social unrest and COVID-19 pandemic. However, other mainstream media, specifically online news, has been largely overlooked. Despite extensive research conducted in countries, such as the United States, Australia, and Canada, to investigate the latent subthemes, sentiments, and coping strategies portrayed in depression-related news, the landscape in Hong Kong remains unexplored. This study aims to uncover the latent subthemes presented in the online news coverage of depression in Hong Kong, examine the sentiment conveyed in the news, and assess whether coping strategies have been provided in the news for individuals experiencing depression. This study used natural language processing (NLP) techniques, namely the latent Dirichlet allocation topic modeling and the Valence Aware Dictionary and Sentiment Reasoner (VADER) sentiment analysis, to fulfill the first and second objectives. Coping strategies were rigorously assessed and manually labeled with designated categories by content analysis. The online news was collected from February 2019 to May 2024 from Hong Kong mainstream news websites to examine the latest portrayal of depression, particularly during and after the social unrest and the COVID-19 pandemic. In total, 2435 news articles were retained for data analysis after the news screening process. A total of 7 subthemes were identified based on the topic modeling results. Societal system, law enforcement, global recession, lifestyle, leisure, health issues, and US politics were the latent subthemes. Moreover, the overall news exhibited a slightly positive sentiment. The correlations between the sentiment scores and the latent subthemes indicated that the societal system, law enforcement, health issues, and US politics revealed negative tendencies, while the remainder leaned toward a positive sentiment. The coping strategies for depression were substantially lacking; however, the categories emphasizing information on skills and resources and individual adjustment to cope with depression emerged as the priority focus. This pioneering study used a mixed methods approach where NLP was used to investigate latent subthemes and underlying sentiment in online news. Content analysis was also performed to examine available coping strategies. The findings of this research enhance our understanding of how depression is portrayed through online news in Hong Kong and the preferable coping strategies being used to mitigate depression. The potential impact on readers was discussed. Future research is encouraged to address the mentioned implications and limitations, with recommendations to apply advanced NLP techniques to a new mental health issue case or language.

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Concepts Keywords
Australia Adaptation, Psychological
Canada content analysis
Pandemic Coping Skills
Politics coping strategies
Recession COVID-19
Depression
depression
Hong Kong
Humans
latent Dirichlet allocation
LDA
Natural Language Processing
natural language processing
NLP
online news coverage
Pandemics
SARS-CoV-2
sentiment
Social Media

Semantics

Type Source Name
disease MESH Depression
disease MESH mental disorder
disease MESH COVID-19 pandemic
disease IDO process
disease MESH lifestyle
disease MESH suicide
disease MESH violence
disease MESH social stigma
disease MESH etiology
disease MESH anxiety
disease MESH psychological distress
disease MESH uncertainty
disease MESH privacy
drug DRUGBANK Trestolone
disease IDO country
disease MESH work stress
disease MESH dementia
disease IDO symptom
disease MESH cancer
disease MESH shock
disease MESH schizophrenia
disease MESH psychosis
disease IDO history
disease MESH suicidal ideations
disease IDO intervention
disease IDO replication
disease MESH bipolar disorder
disease MESH Depressive disorder
disease MESH infection
disease MESH loneliness
disease IDO blood
drug DRUGBANK Coenzyme M
disease MESH major depressive disorder
disease MESH anxiety disorders
disease MESH Morbidity
disease MESH kidney disease
disease MESH veganism
drug DRUGBANK Delorazepam
pathway REACTOME Reproduction

Original Article

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