Understanding global research trends in the control and prevention of infectious diseases for children: Insights from text mining and topic modeling

IF 2.4 3区 医学 Q1 NURSING Journal of Nursing Scholarship Pub Date : 2024-02-21 DOI:10.1111/jnu.12963
Won-Oak Oh RN, PhD, Eunji Lee RN, MSN, Yoo-jin Heo RN, PhD, Myung-Jin Jung RN, PhD student, Jihee Han RN, PhD student
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Abstract

Introduction

The emergence of novel infectious diseases has amplified the urgent need for effective prevention strategies, especially ones targeting vulnerable populations such as children. Factors such as the high incidence of both emerging and existing infectious diseases, delays in vaccinations, and routine exposure in communal settings heighten children's susceptibility to infections. Despite this pressing need, a comprehensive exploration of research trends in this domain remains lacking. This study aims to address this gap by employing text mining and modeling techniques to conduct a comprehensive analysis of the existing literature, thereby identifying emerging research trends in infectious disease prevention among children.

Methods

A cross-sectional text mining approach was adopted, focusing on journal articles published between January 1, 2003, and August 31, 2022. These articles, related to infectious disease prevention in children, were sourced from databases such as PubMed, CINAHL, MEDLINE (Ovid), Scopus, and Korean RISS. The data underwent preprocessing using the Natural Language Toolkit (NLTK) in Python, with a semantic network analysis and topic modeling conducted using R software.

Results

The final dataset comprised 509 journal articles extracted from multiple databases. The study began with a word frequency analysis to pinpoint relevant themes, subsequently visualized through a word cloud. Dominant terms encompassed “vaccination,” “adolescent,” “infant,” “parent,” “family,” “school,” “country,” “household,” “community,” “HIV,” “HPV,” “COVID-19,” “influenza,” and “diarrhea.” The semantic analysis identified “age” as a key term across infection, control, and intervention discussions. Notably, the relationship between “hand” and “handwashing” was prominent, especially in educational contexts linked with “school” and “absence.” Latent Dirichlet Allocation (LDA) topic modeling further delineated seven topics related to infectious disease prevention for children, encompassing (1) educational programs, (2) vaccination efforts, (3) family-level responses, (4) care for immunocompromised individuals, (5) country-specific responses, (6) school-based strategies, and (7) persistent threats from established infectious diseases.

Conclusion

The study emphasizes the indispensable role of personalized interventions tailored for various child demographics, highlighting the pivotal contributions of both parental guidance and school participation.

Clinical Relevance

The study provides insights into the complex public health challenges associated with preventing and managing infectious diseases in children. The insights derived could inform the formulation of evidence-based public health policies, steering practical interventions and fostering interdisciplinary synergy for holistic prevention strategies.

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了解全球儿童传染病防控研究趋势:文本挖掘和主题建模的启示。
导言:新型传染病的出现加剧了对有效预防策略的迫切需求,尤其是针对儿童等易感人群的预防策略。新发传染病和现有传染病的高发病率、疫苗接种的延迟以及在社区环境中的常规接触等因素都增加了儿童受感染的可能性。尽管存在这一迫切需求,但对这一领域的研究趋势仍缺乏全面的探讨。本研究旨在利用文本挖掘和建模技术对现有文献进行全面分析,从而确定儿童传染病预防方面新出现的研究趋势,从而弥补这一空白:研究采用横向文本挖掘方法,重点关注 2003 年 1 月 1 日至 2022 年 8 月 31 日期间发表的期刊论文。这些与儿童传染病预防相关的文章来自 PubMed、CINAHL、MEDLINE (Ovid)、Scopus 和 Korean RISS 等数据库。数据使用 Python 中的自然语言工具包(NLTK)进行预处理,并使用 R 软件进行语义网络分析和主题建模:最终数据集包括从多个数据库中提取的 509 篇期刊论文。研究首先进行了词频分析,以确定相关主题,随后通过词云将其可视化。主要术语包括 "疫苗接种"、"青少年"、"婴儿"、"父母"、"家庭"、"学校"、"国家"、"家庭"、"社区"、"HIV"、"HPV"、"COVID-19"、"流感 "和 "腹泻"。语义分析发现,"年龄 "是贯穿感染、控制和干预讨论的关键术语。值得注意的是,"手 "与 "洗手 "之间的关系非常突出,尤其是在与 "学校 "和 "缺席 "相关的教育语境中。Latent Dirichlet Allocation(LDA)主题建模进一步划分出与儿童传染病预防相关的七个主题,包括:(1)教育计划;(2)疫苗接种工作;(3)家庭层面的应对措施;(4)对免疫力低下者的护理;(5)针对特定国家的应对措施;(6)以学校为基础的策略;以及(7)既有传染病的持续威胁:结论:本研究强调了针对不同儿童人口特征的个性化干预措施的不可或缺的作用,突出了家长指导和学校参与的关键贡献:临床相关性:这项研究让我们深入了解了与预防和管理儿童传染病相关的复杂公共卫生挑战。临床相关性:这项研究深入探讨了与预防和管理儿童传染病相关的复杂公共卫生挑战,所得出的见解可为制定循证公共卫生政策、指导实际干预措施和促进跨学科协同合作以实施整体预防战略提供参考。
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来源期刊
CiteScore
6.30
自引率
5.90%
发文量
85
审稿时长
6-12 weeks
期刊介绍: This widely read and respected journal features peer-reviewed, thought-provoking articles representing research by some of the world’s leading nurse researchers. Reaching health professionals, faculty and students in 103 countries, the Journal of Nursing Scholarship is focused on health of people throughout the world. It is the official journal of Sigma Theta Tau International and it reflects the society’s dedication to providing the tools necessary to improve nursing care around the world.
期刊最新文献
Low-value and high-value care recommendations in nursing: A systematic assessment of clinical practice guidelines. Issue Information Missed nursing care: Expanding the research scope for a comprehensive understanding. Response to a Letter to the Editor on "The Role of Nurses' Adherence to Clinical Safety Guidelines in Linking Nurse Practice Environment to Missed Nursing Care". Transcutaneous electrical acupoint stimulation for preventing postoperative nausea and vomiting after laparoscopic surgery: A meta-analysis.
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