在英国出生队列中调查推特时间与心理健康、幸福和睡眠质量之间的关系

Oliver Davis, Nina Di Cara, Nello Cristianini, Claire Haworth
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 Objectives & ApproachWe aimed to investigate the relationships between the time Twitter users post content and their mental health, wellbeing and sleep quality using direct measurements of Twitter use linked to standardised mental health measures in a well-characterized cohort.
 This study uses approximately 1.5 million Tweets harvested between January 2008 and March 2023 from 622 participants in the Avon Longitudinal Study of Parents and Children (ALSPAC). These Tweets have been linked to questionnaire data collected on six occasions spanning April 2019 to May 2021. These questionnaires included standard measures of depressive symptoms, anxiety symptoms, mental wellbeing and difficulty sleeping.We have taken two approaches to explore these relationships, using circular statistical methods novel to social media data analysis to account for day/night cycles. The first approach used mixed effect models to investigate the association between the time a Tweet was posted and the mental health, mental wellbeing and sleep quality of the poster. The second approach explored the relationships between the mean hour participants post Tweets in a given time period, and their mental health, mental wellbeing and sleep quality.
 Relevance to Digital FootprintsThis research is highly relevant to Digital Footprints, due to its use of data directly extracted from a social media site. The methodologies employed in analysing this alongside more traditional epidemiological survey data provides an example of how digital footprint data can complemented by high quality ground truths.
 ResultsThere was evidence that the timing of Twitter activity was predictive of the mental wellbeing and sleep quality of participants, even after adjustment for demographic, educational and socio-economic covariates. However, the hour a Tweet was posted at explained very little of the variation in the mental wellbeing or sleep quality of the participant who posted it (0.1% and less than 0.1% respectively). There was weak to no evidence that the timing of Twitter activity was predictive of the depressive and anxiety symptoms of participants.
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引用次数: 0

摘要

介绍,在过去十年中,社交媒体的使用被认为是导致心理健康和福祉恶化的一个原因,但它在缓解大流行期间社交距离的一些影响方面的作用表明,它也有可能改善这些结果。虽然现有的研究在社交媒体使用的危害或帮助程度上存在分歧,但越来越多的人认为,有必要从对社交媒体使用的全球衡量转向对社交媒体使用类型的具体衡量。这些新措施可以探索将社交媒体使用与心理健康和福祉联系起来的拟议机制和因果途径。一种普遍提出的机制是,夜间使用社交媒体会降低睡眠质量,从而损害心理健康和福祉。目标,方法:我们旨在调查Twitter用户发布内容的时间与他们的心理健康、幸福和睡眠质量之间的关系,在一个特征明确的队列中,使用与标准化心理健康措施相关的Twitter使用的直接测量。 这项研究使用了2008年1月至2023年3月期间从雅芳父母与儿童纵向研究(ALSPAC)的622名参与者中收集的大约150万条推文。这些推文与2019年4月至2021年5月期间六次收集的问卷数据有关。这些问卷包括抑郁症状、焦虑症状、心理健康和睡眠困难的标准测量。我们采用了两种方法来探索这些关系,使用循环统计方法来分析社交媒体数据,以解释昼夜周期。第一种方法使用混合效应模型来调查推特发布时间与发布者的心理健康、心理健康和睡眠质量之间的关系。第二种方法探讨了参与者在给定时间段内发布推文的平均小时数与他们的心理健康、心理健康和睡眠质量之间的关系。与数字足迹的相关性这项研究与数字足迹高度相关,因为它使用了直接从社交媒体网站提取的数据。与更传统的流行病学调查数据一起分析这一数据所采用的方法提供了一个例子,说明数字足迹数据如何与高质量的实地事实相辅相成。结果有证据表明,Twitter活动的时间可以预测参与者的心理健康和睡眠质量,即使在调整了人口统计学、教育和社会经济协变量之后也是如此。然而,推特发布的时间几乎不能解释发布推特的参与者的心理健康或睡眠质量的变化(分别为0.1%和不到0.1%)。几乎没有证据表明推特活动的时间可以预测参与者的抑郁和焦虑症状。 结论,虽然这项研究发现有证据表明,参与者在推特上发帖的时间可以预测他们的心理健康和睡眠质量,但这些模型解释的差异数量表明,这不是一个临床相关的风险因素。这项研究支持了文献中的观点,即社交媒体的使用对心理健康、幸福和睡眠质量的影响非常小,而且微不足道。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigating the Relationship between Timing of Tweets and Mental Health, Well-being and Sleep Quality in a UK birth cohort
Introduction & BackgroundSocial media use has been proposed as a cause of worsening mental health and wellbeing over the last decade, but its role in mitigating some of the effects of social distancing during the pandemic showed that it also has the potential to improve these outcomes. Whilst existing research disagrees on the degree to which social media use harms or helps, there is growing consensus around the need to move from global measures of social media use to specific measures of types of social media use. These new measures can enable an exploration of proposed mechanisms and causal pathways linking social media use and mental health and wellbeing. A commonly proposed mechanism is nighttime social media use reducing sleep quality, and consequently harming mental health and wellbeing. Objectives & ApproachWe aimed to investigate the relationships between the time Twitter users post content and their mental health, wellbeing and sleep quality using direct measurements of Twitter use linked to standardised mental health measures in a well-characterized cohort. This study uses approximately 1.5 million Tweets harvested between January 2008 and March 2023 from 622 participants in the Avon Longitudinal Study of Parents and Children (ALSPAC). These Tweets have been linked to questionnaire data collected on six occasions spanning April 2019 to May 2021. These questionnaires included standard measures of depressive symptoms, anxiety symptoms, mental wellbeing and difficulty sleeping.We have taken two approaches to explore these relationships, using circular statistical methods novel to social media data analysis to account for day/night cycles. The first approach used mixed effect models to investigate the association between the time a Tweet was posted and the mental health, mental wellbeing and sleep quality of the poster. The second approach explored the relationships between the mean hour participants post Tweets in a given time period, and their mental health, mental wellbeing and sleep quality. Relevance to Digital FootprintsThis research is highly relevant to Digital Footprints, due to its use of data directly extracted from a social media site. The methodologies employed in analysing this alongside more traditional epidemiological survey data provides an example of how digital footprint data can complemented by high quality ground truths. ResultsThere was evidence that the timing of Twitter activity was predictive of the mental wellbeing and sleep quality of participants, even after adjustment for demographic, educational and socio-economic covariates. However, the hour a Tweet was posted at explained very little of the variation in the mental wellbeing or sleep quality of the participant who posted it (0.1% and less than 0.1% respectively). There was weak to no evidence that the timing of Twitter activity was predictive of the depressive and anxiety symptoms of participants. Conclusions & ImplicationsWhilst this study found evidence that the hour participants post on Twitter is predictive of their mental wellbeing and sleep quality, the amount of variation explained by these models suggests that this is not a clinically relevant risk factor. This study supports arguments in the literature that the use of social media has a very small and insignificant effect on mental health, wellbeing and sleep quality.
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