基于数字群组的社交媒体心理健康监测

Silvio Amir, Mark Dredze, J. Ayers
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引用次数: 26

摘要

通过社交媒体追踪心理健康状况的能力为大规模、自动化的心理健康监测打开了大门。然而,推断准确的人口水平趋势需要潜在人口的代表性样本,考虑到社交媒体数据固有的偏见,这可能具有挑战性。虽然以前的工作是根据人口统计估计调整样本,但人口是根据具体结果选择的,例如具体的精神健康状况。我们通过对具有人口统计学代表性的社交媒体用户数字队列进行分析,与这些方法不同。为了验证这一方法,我们构建了一个基于美国Twitter用户的队列来测量抑郁症和创伤后应激障碍的患病率,并调查这些疾病在人口统计亚人群中的表现。分析表明,基于队列的研究可以帮助控制抽样偏差,将结果置于背景中,并对数据提供更深入的见解。
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Mental Health Surveillance over Social Media with Digital Cohorts
The ability to track mental health conditions via social media opened the doors for large-scale, automated, mental health surveillance. However, inferring accurate population-level trends requires representative samples of the underlying population, which can be challenging given the biases inherent in social media data. While previous work has adjusted samples based on demographic estimates, the populations were selected based on specific outcomes, e.g. specific mental health conditions. We depart from these methods, by conducting analyses over demographically representative digital cohorts of social media users. To validated this approach, we constructed a cohort of US based Twitter users to measure the prevalence of depression and PTSD, and investigate how these illnesses manifest across demographic subpopulations. The analysis demonstrates that cohort-based studies can help control for sampling biases, contextualize outcomes, and provide deeper insights into the data.
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