公共卫生数据的视觉传达:范围审查。

IF 3.2 Q1 HEALTH CARE SCIENCES & SERVICES
Frontiers in digital health Pub Date : 2025-04-24 eCollection Date: 2025-01-01 DOI:10.3389/fdgth.2025.1555231
Michael Arthur Ofori, Stella Lartey, Polina Durneva, Niharika Jha, Nidhi Mittal, Shongkour Roy, Zebunnesa Zeba, Stella Chirwa, Nichole Saulsberry-Scarboro, Michelle Taylor, Ashish Joshi
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引用次数: 0

摘要

视觉传达(VC)在有效地将公共卫生数据传达给不同的受众(包括决策者、医疗保健专业人员和普通公众)方面发挥着至关重要的作用。尽管美国政府在健康数据和数据可访问性方面投入了大量资金,但健康数据并非完全可访问或易于理解。这可以归因于数据共享和可视化挑战。风险投资的挑战造成了公共卫生信息的差距,在COVID-19大流行等紧急情况下,这种差距进一步加剧,可能影响不良的健康结果并加剧卫生不平等。目的:探讨公共卫生可视化数据传播的有效可视化工具和技术。方法:进行范围综述,总结与公共卫生可视化数据通信可视化技术和工具以及相关原则和最佳实践相关的现有证据。纳入了2020年至2024年PubMed数据库中发表的涉及可视化、以用户为中心的可视化公共卫生应用/界面设计、可视化分析、信息图表或仪表板的英文同行评审原创文章。此外,综述性文章、评论、社论、海报、系统性和范围界定性文章也被排除在本综述之外。总共纳入了28项研究。结果:确定了25种不同的可视化技术,包括图表和图形(如条形图、折线图、饼图、气泡图、箱形图、散点图)、地图(如等值线图、热点图和热图)和专门的可视化(如太阳暴图、冲积图、颠覆图、circos)。这些视觉效果是使用不同的编程和统计工具和库(如R、Python、Power BI、Tableau、ArcGIS和自定义的基于web的应用程序)显示的。视觉测量了不同类型的数据可及性、模式和趋势识别、单变量和双变量数据的关联和关系,以及探索卫生数据的多维形式。可视化应用于艾滋病毒预防与护理、公共卫生传播、干预、监测、政策措施和决策以及改善健康教育等不同公共卫生领域。结论:仪表板和基于web的工具与图表、地图或专门绘图等静态可视化相结合,有助于数据探索、模式识别和健康信息的传播。公共卫生数据的有效交流促进知情决策,提高认识,并导致改善和更好的健康结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visual communication of public health data: a scoping review.

Introduction: Visual communications (VC) play a crucial role in effectively conveying public health data to diverse audiences, including policymakers, healthcare professionals, and the general public. Although the U.S. government invests heavily in health data and data accessibility, health data are not entirely accessible or easily understood. This can be attributed to data sharing and visualization challenges. VC challenges have created public health information gaps which are compounded in emergencies such as the COVID-19 pandemic, potentially impacting poor health outcomes and increasing health inequities.

Objective: To examine visualization tools and techniques effective for public health visual data communication.

Methods: A scoping review was conducted to summarize the available evidence related to visualization techniques and tools for public health visual data communication as well as related principles and best practices. Original peer-reviewed articles published in English that involve visualization, user-centered design of visual public health applications/interfaces, visual analytics, infographics, or dashboards from PubMed database from 2020 to 2024 were included. Also, review articles, commentaries, editorials, posters, systematic and scoping articles were excluded from this review. In all, twenty-eight (28) studies were included.

Results: There were 25 different visualization techniques identified which included charts and graphs (e.g., bar charts, line charts, pie charts, bubble charts, box plots, scatter plots), maps (e.g., choropleth maps, hotspot maps, and heatmaps), and specialized visualizations (e.g., sunburst diagrams, alluvial plots, upset plots, circos). These visuals were displayed employing different programming and statistical tools and libraries like R, Python, Power BI, Tableau, ArcGIS, and custom web-based applications. The visuals measured different types of data accessibility, pattern and trends identification, association and relationships of univariate and bivariate data, as well as exploring multidimensional forms of health data. The visualizations were applied in different public health domains, such as HIV prevention and care, public health communication, interventions, surveillance, policy measures and decision-making, and improving health education.

Conclusion: Dashboards and web-based tools combined with static visualizations like charts, maps, or specialized plots can help with data exploration, pattern recognition, and dissemination of health information. Effective communication of public health data promotes informed decision-making, creates awareness, and leads to improved and better health outcomes.

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