Overview of infection control in nursing research in Korea over the last 10 years: Text network analysis and topic modeling

EunJo Kim, JaHyun Kang
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Abstract

Background: With the emergence of new infectious diseases, infection control nursing (ICN) in hospitals has become increasingly significant. Consequently, research on ICN has been actively performed. We examined the knowledge structure and trends addressed in Korean ICN research. Methods: From 5 web-based Korean academic databases (DBpia, KISS, KMbase, KoreaMed, and RISS), 2,244 studies published between 2013 and 2022 were retrieved using ICN-related search terms (eg, “nurse” or “nursing” along with “infection control,” “infection prevention,” “healthcare-associated infection,” or “standard precautions”). After deleting duplicates, the authors assessed titles and abstracts and included 250 research abstracts in this study. Using NetMiner 4.4 software (Cyram, Seoul, Korea), words from abstracts of published articles were extracted and refined, then text network analysis and topic modeling were performed. A text network was structured based on the co-occurrence matrix of key words (semantic morphemes) and was analyzed to identify the main key words. Through topic modeling using the Latent Dirichlet Allocation algorithm, latent topics in the research abstracts were extracted. The authors verified the key words comprising the topic and the result of classifying the documents by topic and named topics. Results: The number of studies, which increased following the outbreak of Middle East respiratory syndrome in 2015, has declined over time but peaked in 2021 with the COVID-19 pandemic. The text network composed of the key words of the research abstracts was generated and visualized (Fig. 1). As a result of text network analysis, the 5 most common key words were ‘nurse,’ ‘infection control,’ ‘nursing care,’ ‘practice,’ and ‘perception’ in terms of degree and betweenness centrality. Other prominent main keywords were also identified: ‘knowledge,’ ‘compliance,’ ‘education,’ ‘intervention,’ ‘intention,’ and ‘safety.’ With the application of topic modeling to the research abstracts, 5 topics were derived and named as follows (Fig. 2): “infection control in nursing care for patient safety,” “infection control measures for healthcare personnel safety,” “burdens and obstacles for infection control among nurses,” “infection control for multidrug-resistant organisms,” and “knowledge, attitude, practice for infection control among nurses.” Conclusions: By applying text-network analysis and topic modeling, we obtained insights into Korean ICN research trends. To explore global ICN research trends, further study is necessary to analyze internationally published studies reflecting each country’s nursing work conditions. Disclosure: None
过去10年韩国护理研究中的感染控制综述:文本网络分析和主题建模
背景:随着新型传染病的出现,医院感染控制护理(ICN)变得越来越重要。因此,ICN的研究一直在积极进行。我们研究了韩国ICN研究的知识结构和趋势。方法:从5个基于网络的韩国学术数据库(DBpia、KISS、KMbase、KoreaMed和RISS)中,使用icn相关搜索词(例如,“护士”或“护理”以及“感染控制”、“感染预防”、“医疗保健相关感染”或“标准预防”)检索2013年至2022年间发表的2244项研究。在删除重复内容后,作者评估了标题和摘要,并将250篇研究摘要纳入本研究。使用NetMiner 4.4软件(Cyram, Seoul, Korea)对已发表文章摘要中的词语进行提取和提炼,然后进行文本网络分析和主题建模。基于关键词(语义语素)共现矩阵构建文本网络,并对其进行分析,识别主要关键词。利用Latent Dirichlet Allocation算法进行主题建模,提取研究摘要中的潜在主题。验证了构成主题的关键词以及按主题和命名主题对文献进行分类的结果。结果:2015年中东呼吸综合征爆发后,研究数量有所增加,但随着时间的推移,研究数量有所下降,但在2021年COVID-19大流行时达到顶峰。生成由研究摘要关键词组成的文本网络并将其可视化(图1)。通过文本网络分析,在程度和中间中心性方面,最常见的5个关键词是“护士”、“感染控制”、“护理”、“实践”和“感知”。其他突出的关键词还包括:“知识”、“遵守”、“教育”、“干预”、“意图”和“安全”。将主题建模应用于研究摘要,得出5个主题,命名如下(图2):“护理中的感染控制对患者安全的影响”、“医护人员安全的感染控制措施”、“护士感染控制的负担与障碍”、“耐多药菌感染控制”、“护士感染控制的知识、态度与实践”。结论:通过文本网络分析和主题建模,我们了解了韩国ICN的研究趋势。为探究全球ICN研究趋势,有必要进一步分析国际上发表的反映各国护理工作状况的研究。披露:没有
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