Levanti Danielle, Monastero Rebecca N, Zamani Mohammadzaman, Eichstaedt Johannes C, Giorgi Salvatore, Schwartz H Andrew, Meliker Jaymie R
Undergraduate Studies, Cornell University, Ithaca, New York.
Renaissance School of Medicine, Stony Brook University, Stony Brook, New York.
AJPM Focus. 2023 Mar;2(1):100062. doi: 10.1016/j.focus.2022.100062. Epub 2022 Dec 22.
Although surveys are a well-established instrument to capture the population prevalence of mental health at a moment in time, public Twitter is a continuously available data source that can provide a broader window into population mental health. We characterized the relationship between COVID-19 case counts, stay-at-home orders because of COVID-19, and anxiety and depression in 7 major U.S. cities utilizing Twitter data.
We collected 18 million Tweets from January to September 2019 (baseline) and 2020 from 7 U.S. cities with large populations and varied COVID-19 response protocols: Atlanta, Chicago, Houston, Los Angeles, Miami, New York, and Phoenix. We applied machine learning‒based language prediction models for depression and anxiety validated in previous work with Twitter data. As an alternative public big data source, we explored Google Trends data using search query frequencies. A qualitative evaluation of trends is presented.
Twitter depression and anxiety scores were consistently elevated above their 2019 baselines across all the 7 locations. Twitter depression scores increased during the early phase of the pandemic, with a peak in early summer and a subsequent decline in late summer. The pattern of depression trends was aligned with national COVID-19 case trends rather than with trends in individual states. Anxiety was consistently and steadily elevated throughout the pandemic. Google search trends data showed noisy and inconsistent results.
Our study shows the feasibility of using Twitter to capture trends of depression and anxiety during the COVID-19 public health crisis and suggests that social media data can supplement survey data to monitor long-term mental health trends.
尽管调查是一种成熟的工具,可用于在某一时刻获取心理健康的人群患病率,但公共推特是一个持续可用的数据源,能提供更广阔的视角来了解人群心理健康状况。我们利用推特数据,对美国7个主要城市中新冠病毒病例数、因新冠疫情实施的居家令与焦虑和抑郁之间的关系进行了特征分析。
我们收集了2019年1月至9月(基线期)以及2020年来自美国7个人口众多且新冠疫情应对方案各异的城市(亚特兰大、芝加哥、休斯顿、洛杉矶、迈阿密、纽约和凤凰城)的1800万条推文。我们应用了基于机器学习的抑郁和焦虑语言预测模型,这些模型在之前使用推特数据的研究中得到了验证。作为另一种公共大数据源,我们利用搜索查询频率探索了谷歌趋势数据,并对趋势进行了定性评估。
在所有7个地点,推特上的抑郁和焦虑得分始终高于2019年的基线水平。推特上的抑郁得分在疫情早期有所上升,在初夏达到峰值,随后在夏末下降。抑郁趋势模式与全国新冠病毒病例趋势一致,而非与各个州的趋势一致。在整个疫情期间,焦虑情绪持续且稳步上升。谷歌搜索趋势数据显示结果嘈杂且不一致。
我们的研究表明,在新冠疫情公共卫生危机期间,利用推特捕捉抑郁和焦虑趋势是可行的,并表明社交媒体数据可以补充调查数据,以监测长期心理健康趋势。