通过青少年智能手机社交交流捕捉情绪动态。

IF 3.1 Q2 PSYCHIATRY
Journal of psychopathology and clinical science Pub Date : 2023-11-01 Epub Date: 2023-07-27 DOI:10.1037/abn0000855
Lilian Y Li, Esha Trivedi, Fiona Helgren, Grace O Allison, Emily Zhang, Savannah N Buchanan, David Pagliaccio, Katherine Durham, Nicholas B Allen, Randy P Auerbach, Stewart A Shankman
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引用次数: 0

摘要

大多数患有抑郁症的青少年仍未得到诊断和治疗——从个人和公共卫生的角度来看,错过了代价高昂的机会。实时、大规模地检测青少年抑郁症的一种很有前景的方法是通过他们在智能手机上的社交交流(例如,短信、社交媒体帖子)。过去的研究表明,来自网络社交的语言可靠地表明了抑郁症的个体差异。为了检测个体抑郁症状的出现,本研究测试了83名抑郁严重程度不同的青少年(Mage = 16.49, 73.5%为女性)在智能手机社交交流中的情绪(即暗示积极和消极影响的词语)是否能预测日常情绪波动。参与者在90天内完成了每天的情绪评级,在此期间,他们被动地从社交通信应用程序收集了354278条信息。积极情绪越高(即积极加权复合效价得分越高,表达积极情绪的词汇比例越高),在控制了前一天的情绪后,预测第二天的情绪越积极。此外,更大比例的积极和消极情绪分别与更低的快感缺乏和更大的焦虑症状相关。对非情感语言特征的探索性分析表明,更多地使用社交参与词汇(例如,朋友和从属关系)和表情符号(主要由心形组成)预示着更积极的情绪变化。总的来说,研究结果表明,智能手机社交交流的语言可以检测青少年的情绪波动,为基于语言的工具识别抑郁风险增加的时期奠定了基础。(PsycInfo数据库记录(c) 2023 APA,版权所有)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Capturing mood dynamics through adolescent smartphone social communication.

Most adolescents with depression remain undiagnosed and untreated-missed opportunities that are costly from both personal and public health perspectives. A promising approach to detecting adolescent depression in real-time and at a large scale is through their social communication on the smartphone (e.g., text messages, social media posts). Past research has shown that language from online social communication reliably indicates interindividual differences in depression. To move toward detecting the emergence of depression symptoms intraindividually, the present study tested whether sentiment (i.e., words connoting positive and negative affect) from smartphone social communication prospectively predicted daily mood fluctuations in 83 adolescents (Mage = 16.49, 73.5% female) with a wide range of depression severity. Participants completed daily mood ratings across a 90-day period, during which 354,278 messages were passively collected from social communication apps. Greater positive sentiment (i.e., more positive weighted composite valence score and a greater proportion of words expressing positive sentiment) predicted more positive next-day mood, controlling for previous-day mood. Moreover, greater proportions of positive and negative sentiment were, respectively, associated with lower anhedonia and greater dysphoria symptoms measured at baseline. Exploratory analyses of nonaffective linguistic features showed that greater use of social engagement words (e.g., friends and affiliation) and emojis (primarily consisting of hearts) predicted more positive changes in mood. Collectively, findings suggest that language from smartphone social communication can detect mood fluctuations in adolescents, laying the foundation for language-based tools to identify periods of heightened depression risk. (PsycInfo Database Record (c) 2023 APA, all rights reserved).

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