Understanding the Use of Mobility Data in Disasters: Exploratory Qualitative Study of COVID-19 User Feedback.

IF 2.6 Q2 HEALTH CARE SCIENCES & SERVICES
JMIR Human Factors Pub Date : 2024-08-01 DOI:10.2196/52257
Jennifer Lisa Chan, Sarah Tsay, Sraavya Sambara, Sarah B Welch
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引用次数: 0

Abstract

Background: Human mobility data have been used as a potential novel data source to guide policies and response planning during the COVID-19 global pandemic. The COVID-19 Mobility Data Network (CMDN) facilitated the use of human mobility data around the world. Both researchers and policy makers assumed that mobility data would provide insights to help policy makers and response planners. However, evidence that human mobility data were operationally useful and provided added value for public health response planners remains largely unknown.

Objective: This exploratory study focuses on advancing the understanding of the use of human mobility data during the early phase of the COVID-19 pandemic. The study explored how researchers and practitioners around the world used these data in response planning and policy making, focusing on processing data and human factors enabling or hindering use of the data.

Methods: Our project was based on phenomenology and used an inductive approach to thematic analysis. Transcripts were open-coded to create the codebook that was then applied by 2 team members who blind-coded all transcripts. Consensus coding was used for coding discrepancies.

Results: Interviews were conducted with 45 individuals during the early period of the COVID-19 pandemic. Although some teams used mobility data for response planning, few were able to describe their uses in policy making, and there were no standardized ways that teams used mobility data. Mobility data played a larger role in providing situational awareness for government partners, helping to understand where people were moving in relation to the spread of COVID-19 variants and reactions to stay-at-home orders. Interviewees who felt they were more successful using mobility data often cited an individual who was able to answer general questions about mobility data; provide interactive feedback on results; and enable a 2-way communication exchange about data, meaning, value, and potential use.

Conclusions: Human mobility data were used as a novel data source in the COVID-19 pandemic by a network of academic researchers and practitioners using privacy-preserving and anonymized mobility data. This study reflects the processes in analyzing and communicating human mobility data, as well as how these data were used in response planning and how the data were intended for use in policy making. The study reveals several valuable use cases. Ultimately, the role of a data translator was crucial in understanding the complexities of this novel data source. With this role, teams were able to adapt workflows, visualizations, and reports to align with end users and decision makers while communicating this information meaningfully to address the goals of responders and policy makers.

了解移动数据在灾害中的应用:COVID-19 用户反馈的定性探索研究。
背景:在 COVID-19 全球大流行期间,人员流动数据被用作指导政策和应对规划的潜在新数据源。COVID-19 人员流动数据网络 (CMDN) 促进了世界各地人员流动数据的使用。研究人员和政策制定者都认为,流动性数据将为政策制定者和应对规划者提供帮助。然而,是否有证据表明人员流动数据在操作上有用并为公共卫生响应规划人员提供了附加值,这一点在很大程度上仍不为人所知:本探索性研究的重点是加深对 COVID-19 大流行早期阶段人员流动数据使用情况的了解。这项研究探讨了世界各地的研究人员和从业人员如何在应对规划和政策制定中使用这些数据,重点关注数据处理以及促进或阻碍数据使用的人为因素:我们的项目以现象学为基础,采用归纳法进行专题分析。对记录誊本进行开放式编码以创建编码手册,然后由两名团队成员对所有记录誊本进行盲码。对编码差异采用共识编码法:结果:在 COVID-19 大流行初期,我们对 45 人进行了访谈。尽管一些团队在应对计划中使用了流动性数据,但很少有团队能够描述其在政策制定中的用途,而且各团队使用流动性数据的方式也不尽相同。流动性数据在为政府合作伙伴提供态势感知方面发挥了更大的作用,有助于了解与 COVID-19 变体传播相关的人员流动情况以及对留在家中的命令的反应。受访者认为他们在使用流动性数据方面比较成功的,往往是那些能够回答有关流动性数据的一般问题、就结果提供互动反馈、就数据、意义、价值和潜在用途进行双向交流的人:由学术研究人员和从业人员组成的网络利用保护隐私和匿名的移动数据,将人类移动数据作为 COVID-19 大流行病中的新型数据源。本研究反映了分析和交流人员流动数据的过程,以及这些数据如何用于应对计划和如何用于政策制定。研究揭示了几个有价值的使用案例。最终,数据翻译者的角色对于理解这种新型数据源的复杂性至关重要。有了这个角色,团队就能够调整工作流程、可视化和报告,以便与最终用户和决策者保持一致,同时有意义地传达这些信息,以实现响应者和决策者的目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
JMIR Human Factors
JMIR Human Factors Medicine-Health Informatics
CiteScore
3.40
自引率
3.70%
发文量
123
审稿时长
12 weeks
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