Depression, anxiety, and burnout in academia: topic modeling of PubMed abstracts.

Frontiers in research metrics and analytics Pub Date : 2023-11-27 eCollection Date: 2023-01-01 DOI:10.3389/frma.2023.1271385
Olga Lezhnina
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引用次数: 0

Abstract

The problem of mental health in academia is increasingly discussed in literature, and to extract meaningful insights from the growing amount of scientific publications, text mining approaches are used. In this study, BERTopic, an advanced method of topic modeling, was applied to abstracts of 2,846 PubMed articles on depression, anxiety, and burnout in academia published in years 1975-2023. BERTopic is a modular technique comprising a text embedding method, a dimensionality reduction procedure, a clustering algorithm, and a weighing scheme for topic representation. A model was selected based on the proportion of outliers, the topic interpretability considerations, topic coherence and topic diversity metrics, and the inevitable subjectivity of the criteria was discussed. The selected model with 27 topics was explored and visualized. The topics evolved differently with time: research papers on students' pandemic-related anxiety and medical residents' burnout peaked in recent years, while publications on psychometric research or internet-related problems are yet to be presented more amply. The study demonstrates the use of BERTopic for analyzing literature on mental health in academia and sheds light on areas in the field to be addressed by further research.

学术界的抑郁、焦虑和职业倦怠:PubMed 摘要的主题建模。
学术界的心理健康问题在文献中的讨论日益增多,为了从日益增多的科学出版物中提取有意义的见解,人们使用了文本挖掘方法。本研究将主题建模的高级方法 BERTopic 应用于 1975-2023 年间发表的 2,846 篇有关学术界抑郁、焦虑和职业倦怠的 PubMed 文章摘要。BERTopic 是一种模块化技术,包括文本嵌入方法、降维程序、聚类算法和主题表示权衡方案。根据离群值的比例、主题可解释性的考虑因素、主题一致性和主题多样性指标选择了一个模型,并讨论了这些标准不可避免的主观性。对选定的包含 27 个主题的模型进行了探讨和可视化。随着时间的推移,主题的发展也不尽相同:关于学生的大流行病相关焦虑和住院医生的职业倦怠的研究论文在近几年达到了顶峰,而关于心理测量研究或互联网相关问题的论文还没有得到更充分的展示。本研究展示了 BERTopic 在分析学术界心理健康文献方面的应用,并揭示了该领域有待进一步研究的领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
3.50
自引率
0.00%
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审稿时长
14 weeks
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