通过社交媒体跟踪孕妇的心理健康:对reddit帖子的分析。

IF 2.5 Q2 HEALTH CARE SCIENCES & SERVICES JAMIA Open Pub Date : 2023-11-28 eCollection Date: 2023-12-01 DOI:10.1093/jamiaopen/ooad094
Abhishek Dhankar, Alan Katz
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引用次数: 0

摘要

目的:提出一种人工智能支持的管道,用于使用孕妇社交媒体帖子中的文本来估计抑郁和一般焦虑的患病率。使用该管道来分析孕妇经常访问的子reddit上的心理健康趋势,并报告可能对政策制定者、临床医生等有帮助的有趣见解。材料和方法:我们使用预训练的基于变压器的模型来构建自然语言处理管道,该管道可以自动检测社交媒体上的抑郁孕妇,并进行主题建模以检测他们的关注点。结果:我们检测了Reddit上孕妇的抑郁帖子,并通过主题建模验证了抑郁分类模型的性能,发现抑郁话题被检测到。在大流行期间(2020年和2021年),潜在抑郁症的比例出人意料地下降了。在大流行之前(2018年和2019年),与左洛复(Zoloft)等抗抑郁药和管理心理健康的潜在方法相关的问题占主导地位,而在大流行期间,关于盆腔疼痛和相关压力的问题占主导地位。讨论和结论:支持性在线社区可能是减轻与大流行有关的压力的一个因素,因此在大流行期间抑郁用户的比例减少。大流行期间的压力与孕妇的盆腔疼痛有关,这一趋势通过大流行期间抑郁帖子的主题建模得到证实。
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Tracking pregnant women's mental health through social media: an analysis of reddit posts.

Objectives: Present an artificial intelligence-enabled pipeline for estimating the prevalence of depression and general anxiety among pregnant women using texts from their social media posts. Use said pipeline to analyze mental health trends on subreddits frequented by pregnant women and report on interesting insights that could be helpful for policy-makers, clinicians, etc.

Materials and methods: We used pretrained transformer-based models to build a natural language processing pipeline that can automatically detect depressed pregnant women on social media and carry out topic modeling to detect their concerns.

Results: We detected depressed posts by pregnant women on Reddit and validated the performance of the depression classification model by carrying out topic modeling to reveal that depressive topics were detected. The proportion of potentially depressed surprisingly reduced during the pandemic (2020 and 2021). Queries related to antidepressants, such as Zoloft, and potential ways of managing mental health dominated discourse before the pandemic (2018 and 2019), whereas queries about pelvic pain and associated stress dominated the discourse during the pandemic.

Discussion and conclusion: Supportive online communities could be a factor in alleviating stress related to the pandemic, hence the reduction in the proportion of depressed users during the pandemic. Stress during the pandemic has been associated with pelvic pain among pregnant women, and this trend is confirmed through topic modeling of depressive posts during the pandemic.

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来源期刊
JAMIA Open
JAMIA Open Medicine-Health Informatics
CiteScore
4.10
自引率
4.80%
发文量
102
审稿时长
16 weeks
期刊最新文献
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