Research Topic Trends on Turnover Intention among Korean Registered Nurses: An Analysis Using Topic Modeling

Author:

Lee Jung Lim1ORCID,Kim Youngji2

Affiliation:

1. Department of Nursing, Daejeon University, Daejeon-si 34520, Republic of Korea

2. Department of Nursing, College of Nursing and Health, Kongju National University, Kongju-si 32588, Republic of Korea

Abstract

This study aimed to explore research topic trends on turnover intention among Korean hospital nurses by analyzing the keywords and topics of related articles. Methods: This text-mining study collected, processed, and analyzed text data from 390 nursing articles published between 1 January 2010 and 30 June 2021 that were collected via search engines. The collected unstructured text data were preprocessed, and the NetMiner program was used to perform keyword analysis and topic modeling. Results: The word with the highest degree centrality was “job satisfaction”, the word with the highest betweenness centrality was “job satisfaction”, and the word with the highest closeness centrality and frequency was “job stress”. The top 10 keywords in both the frequency analysis and the 3 centrality analyses included “job stress”, “burnout”, “organizational commitment”, “emotional labor”, “job”, and “job embeddedness”. The 676 preprocessed key words were categorized into five topics: “job”, “burnout”, “workplace bullying”, “job stress”, and “emotional labor”. Since many individual-level factors have already been thoroughly investigated, future research should concentrate on enabling successful organizational interventions that extend beyond the microsystem.

Funder

the Daejeon University fund

Publisher

MDPI AG

Subject

Health Information Management,Health Informatics,Health Policy,Leadership and Management

Reference29 articles.

1. World Health Organization (2020). The State of the World’s Nursing 2020 Report, World Health Organization.

2. Nurse staffing, nursing assistants and hospital mortality: Retrospective longitudinal cohort study;Griffiths;BMJ Qual. Saf.,2019

3. Noneconomic and economic impacts of nurse turnover in hospitals: A systematic review;Bae;Int. Nurs. Rev.,2022

4. Forecasting supply and demand for registered nurses’ workforce in Korea;Kim;J. Korean Data Anal. Soc.,2017

5. Comparison of nursing workforce supply and employment in South Korean and other OECD countries;Hong;Perspect. Nurs. Sci.,2019

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