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从过去展望老年学的未来:使用自然语言处理技术研究老年学领域。

What Can We Learn From the Past About the Future of Gerontology: Using Natural Language Processing to Examine the Field of Gerontology.

机构信息

Louis and Gabi Weisfeld School of Social Work, Bar Ilan University, Ramat Gan, Israel.

The Department of Mathematics and Computer Science, The Open University, Raanana, Israel.

出版信息

J Gerontol B Psychol Sci Soc Sci. 2021 Oct 30;76(9):1828-1837. doi: 10.1093/geronb/gbaa066.

Abstract

OBJECTIVES

We thematically classified all titles of eight top psychological and social gerontology journals over a period of six decades, between 1961 and February 2020. This was done in order to provide a broad overview of the main topics that interest the scientific community over time and place.

METHOD

We used natural language processing in order to analyze the data. In order to capture the diverse thematic clusters covered by the journals, a cluster analysis, based on "topic detection" was conducted.

RESULTS

A total of 15,566 titles were classified into 38 thematic clusters. These clusters were then compared over time and geographic location. The majority of titles fell into a relatively small number of thematic clusters and a large number of thematic clusters were hardly addressed. The most frequently addressed thematic clusters were (a) Cognitive functioning, (b) Long-term care and formal care, (c) Emotional and personality functioning, (d) health, and (e) Family and informal care. The least frequently addressed thematic clusters were (a) Volunteering, (b) Sleep, (c) Addictions, (d) Suicide, and (e) Nutrition. There was limited variability over time and place with regard to the most frequently addressed themes.

DISCUSSION

Despite our focus on journals that specifically address psychological and social aspects of gerontology, the biomedicalization of the field is evident. The somewhat limited variability of themes over time and place is disconcerting as it potentially attests to slow progress and limited attention to contextual/societal variations.

摘要

目的

我们对六十年间(1961 年至 2020 年 2 月)八本顶级心理与社会老年学期刊的标题进行了主题分类,旨在全面概述随着时间和地点推移而引起科学界关注的主要议题。

方法

我们使用自然语言处理技术来分析数据。为了捕捉期刊涵盖的多样主题集群,我们进行了基于“主题检测”的聚类分析。

结果

共对 15566 个标题进行了 38 个主题集群的分类。然后对这些集群进行了时间和地理位置上的比较。大部分标题归入相对较少的主题集群,而大量主题集群很少涉及。涉及最多的主题集群是(a)认知功能,(b)长期护理和正式护理,(c)情感和人格功能,(d)健康,以及(e)家庭和非正式护理。涉及最少的主题集群是(a)志愿服务,(b)睡眠,(c)成瘾,(d)自杀,以及(e)营养。在时间和地点上,最常涉及的主题变化有限。

讨论

尽管我们专注于专门研究老年学心理和社会方面的期刊,但该领域的生物医学化是显而易见的。主题随时间和地点的变化有限令人不安,因为这可能表明进展缓慢且对上下文/社会变化的关注有限。

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