Zhang Boyu, Zaman Anis, Silenzio Vincent, Kautz Henry, Hoque Ehsan
Department of Computer Science, University of Rochester, Rochester, NY, United States.
Department of Urban-Global Public Health, Rutgers University, Piscataway and Newark, NJ, United States.
JMIR Ment Health. 2020 Nov 23;7(11):e24012. doi: 10.2196/24012.
Depression and anxiety disorders among the global population have worsened during the COVID-19 pandemic. Yet, current methods for screening these two issues rely on in-person interviews, which can be expensive, time-consuming, and blocked by social stigma and quarantines. Meanwhile, how individuals engage with online platforms such as Google Search and YouTube has undergone drastic shifts due to COVID-19 and subsequent lockdowns. Such ubiquitous daily behaviors on online platforms have the potential to capture and correlate with clinically alarming deteriorations in depression and anxiety profiles of users in a noninvasive manner.
The goal of this study is to examine, among college students in the United States, the relationships of deteriorating depression and anxiety conditions with the changes in user behaviors when engaging with Google Search and YouTube during COVID-19.
This study recruited a cohort of undergraduate students (N=49) from a US college campus during January 2020 (prior to the pandemic) and measured the anxiety and depression levels of each participant. The anxiety level was assessed via the General Anxiety Disorder-7 (GAD-7). The depression level was assessed via the Patient Health Questionnaire-9 (PHQ-9). 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 of all participants were anonymized and collected. From individual-level Google Search and YouTube histories, we developed 5 features that can quantify shifts in online behaviors during the pandemic. We then assessed the correlations of deteriorating depression and anxiety profiles with each of these features. We finally demonstrated the feasibility of using the proposed features to build predictive machine learning models.
Of the 49 participants, 49% (n=24) of them reported an increase in the PHQ-9 depression scores; 53% (n=26) of them reported an increase in the GAD-7 anxiety scores. The results showed that a number of online behavior features were significantly correlated with deteriorations in the PHQ-9 scores (r ranging between -0.37 and 0.75, all P values less than or equal to .03) and the GAD-7 scores (r ranging between -0.47 and 0.74, all P values less than or equal to .03). Simple machine learning models were shown to be useful in predicting the change in anxiety and depression scores (mean squared error ranging between 2.37 and 4.22, R ranging between 0.68 and 0.84) with the proposed features.
The results suggested that deteriorating depression and anxiety conditions have strong correlations with behavioral changes in Google Search and YouTube use during the COVID-19 pandemic. Though further studies are required, our results demonstrate the feasibility of using pervasive online data to establish noninvasive surveillance systems for mental health conditions that bypasses many disadvantages of existing screening methods.
在新冠疫情期间,全球人口中的抑郁症和焦虑症病情有所恶化。然而,目前筛查这两个问题的方法依赖面对面访谈,这种方式可能成本高昂、耗时,且受到社会 stigma 和隔离措施的阻碍。与此同时,由于新冠疫情及随后的封锁措施,个人与谷歌搜索和 YouTube 等在线平台的互动方式发生了巨大变化。在线平台上这些普遍存在的日常行为有可能以非侵入性方式捕捉用户抑郁和焦虑状况的临床警示性恶化情况,并建立关联。
本研究的目的是在美国大学生中,考察新冠疫情期间抑郁症和焦虑症病情恶化与使用谷歌搜索和 YouTube 时用户行为变化之间的关系。
本研究于2020年1月(疫情之前)从美国一所大学校园招募了一组本科生(N = 49),并测量了每位参与者的焦虑和抑郁水平。焦虑水平通过广泛性焦虑障碍量表(GAD - 7)进行评估。抑郁水平通过患者健康问卷 - 9(PHQ - 9)进行评估。本研究在2020年5月(疫情期间)对同一组人群进行了随访,并再次评估了焦虑和抑郁水平。对所有参与者的谷歌搜索和 YouTube 历史数据进行匿名化处理并收集。从个人层面的谷歌搜索和 YouTube 历史记录中,我们开发了5个能够量化疫情期间在线行为变化的特征。然后,我们评估了抑郁和焦虑状况恶化与这些特征之间的相关性。我们最终证明了使用所提出的特征构建预测性机器学习模型的可行性。
在49名参与者中,49%(n = 24)报告 PHQ - 9抑郁评分增加;53%(n = 26)报告 GAD - 7焦虑评分增加。结果表明,一些在线行为特征与 PHQ - 9评分的恶化(r值在 - 0.37至0.75之间,所有P值小于或等于0.03)和GAD - 7评分的恶化(r值在 - 0.47至0.7 " />