The MARCS Institute for Brain, Behaviour and Development, Western Sydney University, Penrith, Australia.
School of Architecture and Built Environment, The University of Newcastle, Callaghan, Australia.
J Med Internet Res. 2024 Jun 5;26:e49450. doi: 10.2196/49450.
Construction and nursing are critical industries. Although both careers involve physically and mentally demanding work, the risks to workers during the COVID-19 pandemic are not well understood. Nurses (both younger and older) are more likely to experience the ill effects of burnout and stress than construction workers, likely due to accelerated work demands and increased pressure on nurses during the COVID-19 pandemic. In this study, we analyzed a large social media data set using advanced natural language processing techniques to explore indicators of the mental status of workers across both industries before and during the COVID-19 pandemic.
This social media analysis aims to fill a knowledge gap by comparing the tweets of younger and older construction workers and nurses to obtain insights into any potential risks to their mental health due to work health and safety issues.
We analyzed 1,505,638 tweets published on Twitter (subsequently rebranded as X) by younger and older (aged <45 vs >45 years) construction workers and nurses. The study period spanned 54 months, from January 2018 to June 2022, which equates to approximately 27 months before and 27 months after the World Health Organization declared COVID-19 a global pandemic on March 11, 2020. The tweets were analyzed using big data analytics and computational linguistic analyses.
Text analyses revealed that nurses made greater use of hashtags and keywords (both monograms and bigrams) associated with burnout, health issues, and mental health compared to construction workers. The COVID-19 pandemic had a pronounced effect on nurses' tweets, and this was especially noticeable in younger nurses. Tweets about health and well-being contained more first-person singular pronouns and affect words, and health-related tweets contained more affect words. Sentiment analyses revealed that, overall, nurses had a higher proportion of positive sentiment in their tweets than construction workers. However, this changed markedly during the COVID-19 pandemic. Since early 2020, sentiment switched, and negative sentiment dominated the tweets of nurses. No such crossover was observed in the tweets of construction workers.
The social media analysis revealed that younger nurses had language use patterns consistent with someone experiencing the ill effects of burnout and stress. Older construction workers had more negative sentiments than younger workers, who were more focused on communicating about social and recreational activities rather than work matters. More broadly, these findings demonstrate the utility of large data sets enabled by social media to understand the well-being of target populations, especially during times of rapid societal change.
建筑和护理是至关重要的行业。尽管这两个职业都涉及体力和脑力的高强度工作,但在 COVID-19 大流行期间,工作人员面临的风险并未得到充分了解。与建筑工人相比,护士(包括年轻护士和年长护士)更容易受到职业倦怠和压力的影响,这可能是由于 COVID-19 大流行期间对护士的工作要求加速以及压力增加所致。在这项研究中,我们使用先进的自然语言处理技术分析了一个大型社交媒体数据集,以探讨这两个行业的工人在 COVID-19 大流行前后的精神状态指标。
本社交媒体分析旨在通过比较年轻和年长(<45 岁和>45 岁)建筑工人和护士的推文,填补知识空白,以了解因工作健康和安全问题对他们的心理健康可能带来的任何潜在风险。
我们分析了 1505638 条在 Twitter(随后更名为 X)上发布的推文,这些推文由年轻和年长(<45 岁和>45 岁)的建筑工人和护士发布。研究期间跨度为 54 个月,从 2018 年 1 月到 2022 年 6 月,相当于世界卫生组织 2020 年 3 月 11 日宣布 COVID-19 为全球大流行之前约 27 个月和之后 27 个月。推文使用大数据分析和计算语言学分析进行了分析。
文本分析显示,与建筑工人相比,护士在推文中更频繁地使用与倦怠、健康问题和心理健康相关的标签和关键词(包括缩略词和双词)。COVID-19 大流行对护士的推文产生了显著影响,这在年轻护士中尤为明显。关于健康和福祉的推文包含更多的第一人称单数代词和情感词汇,而与健康相关的推文包含更多的情感词汇。情感分析显示,总体而言,护士的推文比建筑工人的推文更具积极情绪。然而,这在 COVID-19 大流行期间发生了显著变化。自 2020 年初以来,情绪发生了转变,负面情绪主导了护士的推文。在建筑工人的推文中没有观察到这种转变。
社交媒体分析显示,年轻护士的语言使用模式与经历职业倦怠和压力影响的人一致。年长的建筑工人比年轻工人有更多的负面情绪,而年轻工人更关注社交和娱乐活动,而不是工作事务。更广泛地说,这些发现表明,社交媒体支持的大数据集可用于了解目标人群的幸福感,尤其是在社会快速变革时期。