Chen Lucia Lushi, Cheng Christopher H K, Gong Tao
School of Informatics, University of Edinburgh, Edinburgh, United Kingdom.
Department of Social and Behavioral Sciences, City University of Hong Kong, Hong Kong, Hong Kong.
Front Psychiatry. 2020 Feb 21;11:54. doi: 10.3389/fpsyt.2020.00054. eCollection 2020.
Affect describes a person's feelings or emotions in reaction to stimuli, and affective expressions were found to be related to depression in social media. This study examined the longitudinal pattern of affect on a popular Chinese social media platform: Weibo. We collected 1,664 Chinese Weibo users' self-reported CES-D scores surveys and 3 years' worth of Weibo posts preceding the surveys. First, we visualized participants' social media affect and found evidence of cognitive vulnerability indicated by affect patterns: Users with high depression symptoms tended to use not only more negative affective words but also more positive affective words long before they developed early depression symptoms. Second, to identify the type of language that is directly predictive of depression symptoms, we observed ruminations from users who experienced specific life events close to the time of survey completion, and we found that: increased use of negative affective words on social media posts, together with the presence of specific stressful life events, increased a person's risk of developing high depression symptoms; and meanwhile, though tending to focus on negative attributes, participants also incorporated problem-solving skills in their ruminations. These findings expand our understanding of social media affect and its relationship with individuals' risks of developing depression symptoms.
情感描述的是一个人对刺激做出反应时的感受或情绪,并且在社交媒体中发现情感表达与抑郁症有关。本研究考察了在中国一个热门社交媒体平台——微博上情感的纵向模式。我们收集了1664名中国微博用户的自我报告的流调中心抑郁量表(CES-D)得分调查以及调查前三年的微博帖子。首先,我们将参与者的社交媒体情感进行了可视化处理,并发现了情感模式所表明认知易损性的证据:在出现早期抑郁症状之前很久,具有高抑郁症状的用户不仅倾向于使用更多的消极情感词汇,还倾向于使用更多的积极情感词汇。其次,为了确定直接预测抑郁症状的语言类型,我们观察了在接近调查完成时间经历特定生活事件的用户的沉思内容,并且我们发现:在社交媒体帖子上增加使用消极情感词汇,再加上存在特定的应激性生活事件,会增加一个人出现高抑郁症状的风险;同时,尽管参与者倾向于关注消极属性,但他们在沉思中也融入了问题解决技巧。这些发现扩展了我们对社交媒体情感及其与个体出现抑郁症状风险之间关系的理解。