论文标题

在COVID-19期间,美国大学生中的Google的心理健康状况恶化与YouTube的纵向行为变化之间的关系:观察性研究

The Relationship between Deteriorating Mental Health Conditions and Longitudinal Behavioral Changes in Google and YouTube Usages among College Students in the United States during COVID-19: Observational Study

论文作者

Zaman, Anis, Zhang, Boyu, Hoque, Ehsan, Silenzio, Vincent, Kautz, Henry

论文摘要

冠状病毒病期间,全球人口中的心理健康问题恶化(Covid-19)。由于大流行和随后的锁定,个人如何与Google Search和YouTube等在线平台进行互动。这种无处不在的在线平台上的每日行为有可能以非侵入性的方式捕获和与临床上令人震惊的心理健康状况恶化相关。这项研究的目的是在大学生中检查心理健康状况恶化与在Covid-19期间与Google Search和YouTube互动时的关系变化之间的关系。这项研究在2020年1月(在大流行之前)招募了来自美国大学校园的49名学生,并测量了每个参与者的焦虑和抑郁水平。这项研究随后在2020年5月(在大流行期间)进行了同一队列,并再次评估了焦虑和抑郁水平。纵向的Google搜索和YouTube历史数据已被匿名并收集。从个人级别的Google搜索和YouTube历史记录中,我们开发了5个信号,可以量化大流行期间在线行为的变化。然后,我们评估了与这些特征有和没有恶化心理健康概况的群体之间的差异。重要的功能包括深夜在线活动,连续使用以及远离互联网的时间,色情消费以及与负面情绪,社交活动和个人事务相关的关键字。尽管需要进一步的研究,但我们的结果表明,利用普遍的在线数据为精神健康状况建立非侵入性监视系统的可行性,该系统绕过了现有筛查方法的许多缺点。

Mental health problems among the global population are worsened during the coronavirus disease (COVID-19). How individuals engage with online platforms such as Google Search and YouTube undergoes drastic shifts due to pandemic and subsequent lockdowns. Such ubiquitous daily behaviors on online platforms have the potential to capture and correlate with clinically alarming deteriorations in mental health profiles in a non-invasive manner. The goal of this study is to examine, among college students, the relationship between deteriorating mental health conditions and changes in user behaviors when engaging with Google Search and YouTube during COVID-19. This study recruited a cohort of 49 students from a U.S. college campus during January 2020 (prior to the pandemic) and measured the anxiety and depression levels of each participant. This study followed up with the same cohort during May 2020 (during the pandemic), and the anxiety and depression levels were assessed again. The longitudinal Google Search and YouTube history data were anonymized and collected. From individual-level Google Search and YouTube histories, we developed 5 signals that can quantify shifts in online behaviors during the pandemic. We then assessed the differences between groups with and without deteriorating mental health profiles in terms of these features. Significant features included late-night online activities, continuous usages, and time away from the internet, porn consumptions, and keywords associated with negative emotions, social activities, and personal affairs. Though further studies are required, our results demonstrated the feasibility of utilizing pervasive online data to establish non-invasive surveillance systems for mental health conditions that bypasses many disadvantages of existing screening methods.

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