Maharjan Julina, Zhu Jianfeng, King Jennifer, Phan NhatHai, Kenne Deric, Jin Ruoming
Department of Computer Science, Kent State University, Kent, OH, United States.
Department of Public Health, Kent State University, Kent, OH, United States.
JMIR Infodemiology. 2025 Apr 17;5:e59076. doi: 10.2196/59076.
The COVID-19 pandemic intensified the challenges associated with mental health and substance use (SU), with societal and economic upheavals leading to heightened stress and increased reliance on drugs as a coping mechanism. Centers for Disease Control and Prevention data from June 2020 showed that 13% of Americans used substances more frequently due to pandemic-related stress, accompanied by an 18% rise in drug overdoses early in the year. Simultaneously, a significant increase in social media engagement provided unique insights into these trends. Our study analyzed social media data from January 2019 to December 2021 to identify changes in SU patterns across the pandemic timeline, aiming to inform effective public health interventions.
This study aims to analyze SU from large-scale social media data during the COVID-19 pandemic, including the prepandemic and postpandemic periods as baseline and consequence periods. The objective was to examine the patterns related to a broader spectrum of drug types with underlying themes, aiming to provide a more comprehensive understanding of SU trends during the COVID-19 pandemic.
We leveraged a deep learning model, Robustly Optimized Bidirectional Encoder Representations from Transformers Pretraining Approach (RoBERTa), to analyze 1.13 billion Twitter (subsequently rebranded X) posts from January 2019 to December 2021, aiming to identify SU posts. The model's performance was enhanced by a human-in-the-loop strategy that subsequently enriched the annotated data used during the fine-tuning phase. To gain insights into SU trends over the study period, we applied a range of statistical techniques, including trend analysis, k-means clustering, topic modeling, and thematic analysis. In addition, we integrated the system into a real-time application designed for monitoring and preventing SU within specific geographic locations.
Our research identified 9 million SU posts in the studied period. Compared to 2019 and 2021, the most substantial display of SU-related posts occurred in 2020, with a sharp 21% increase within 3 days of the global COVID-19 pandemic declaration. Alcohol and cannabinoids remained the most discussed substances throughout the research period. The pandemic particularly influenced the rise in nonillicit substances, such as alcohol, prescription medication, and cannabinoids. In addition, thematic analysis highlighted COVID-19, mental health, and economic stress as the leading issues that contributed to the influx of substance-related posts during the study period.
This study demonstrates the potential of leveraging social media data for real-time detection of SU trends during global crises. By uncovering how factors such as mental health and economic stress drive SU spikes, particularly in alcohol and prescription medication, we offer crucial insights for public health strategies. Our approach paves the way for proactive, data-driven interventions that will help mitigate the impact of future crises on vulnerable populations.
新冠疫情加剧了与心理健康和物质使用(SU)相关的挑战,社会和经济动荡导致压力增大,人们越来越依赖药物作为应对机制。美国疾病控制与预防中心2020年6月的数据显示,13%的美国人因疫情相关压力更频繁地使用物质,年初药物过量使用率上升了18%。与此同时,社交媒体参与度的显著增加为这些趋势提供了独特见解。我们的研究分析了2019年1月至2021年12月的社交媒体数据,以确定疫情期间物质使用模式的变化,旨在为有效的公共卫生干预提供信息。
本研究旨在分析新冠疫情期间大规模社交媒体数据中的物质使用情况,包括疫情前和疫情后时期作为基线和结果期。目的是研究与更广泛药物类型相关的模式及潜在主题,以便更全面地了解新冠疫情期间的物质使用趋势。
我们利用深度学习模型,即来自Transformer预训练方法的稳健优化双向编码器表示(RoBERTa),来分析2019年1月至2021年12月的11.3亿条推特(后更名为X)帖子,以识别物质使用相关帖子。通过人工参与策略提高了模型性能,并在微调阶段丰富了标注数据。为深入了解研究期间的物质使用趋势,我们应用了一系列统计技术,包括趋势分析、k均值聚类、主题建模和专题分析。此外,我们将该系统集成到一个实时应用程序中,用于监测和预防特定地理位置的物质使用情况。
我们的研究在研究期间识别出900万条物质使用相关帖子。与2019年和2021年相比,物质使用相关帖子在2020年出现最多,在全球宣布新冠疫情的3天内急剧增加了21%。在整个研究期间,酒精和大麻仍然是讨论最多的物质。疫情尤其影响了非非法物质的使用增加,如酒精、处方药和大麻。此外,专题分析突出显示,新冠疫情、心理健康和经济压力是导致研究期间与物质相关帖子大量涌入的主要因素。
本研究证明了利用社交媒体数据实时检测全球危机期间物质使用趋势方面的潜力。通过揭示心理健康和经济压力等因素如何推动物质使用激增,特别是酒精和处方药的使用,我们为公共卫生策略提供了关键见解。我们的方法为积极主动、数据驱动的干预措施铺平了道路,这将有助于减轻未来危机对弱势群体的影响。