在资源有限的卫生系统中,对使用移动设备向患者发送文本的项目倡议进行定性分析。

Qualitative analysis of programmatic initiatives to text patients with mobile devices in resource-limited health systems.

作者信息

Garg Sachin K, Lyles Courtney R, Ackerman Sara, Handley Margaret A, Schillinger Dean, Gourley Gato, Aulakh Veenu, Sarkar Urmimala

机构信息

Division of General Internal Medicine and Center for Vulnerable Populations at San Francisco General Hospital, University of California, San Francisco (UCSF), San Francisco, USA.

Department of Social and Behavior Sciences, UCSF, San Francisco, USA.

出版信息

BMC Med Inform Decis Mak. 2016 Feb 6;16:16. doi: 10.1186/s12911-016-0258-7.

Abstract

BACKGROUND

Text messaging is an affordable, ubiquitous, and expanding mobile communication technology. However, safety net health systems in the United States that provide more care to uninsured and low-income patients may face additional financial and infrastructural challenges in utilizing this technology. Formative evaluations of texting implementation experiences are limited. We interviewed safety net health systems piloting texting initiatives to study facilitators and barriers to real-world implementation.

METHODS

We conducted telephone interviews with various stakeholders who volunteered from each of the eight California-based safety net systems that received external funding to pilot a texting-based program of their choosing to serve a primary care need. We developed a semi-structured interview guide based partly on the Consolidated Framework for Implementation Research (CFIR), which encompasses several domains: the intervention, individuals involved, contextual factors, and implementation process. We inductively and deductively (using CFIR) coded transcripts, and categorized themes into facilitators and barriers.

RESULTS

We performed eight interviews (one interview per pilot site). Five sites had no prior texting experience. Sites applied texting for programs related to medication adherence and monitoring, appointment reminders, care coordination, and health education and promotion. No site texted patient-identifying health information, and most sites manually obtained informed consent from each participating patient. Facilitators of implementation included perceived enthusiasm from patients, staff and management belief that texting is patient-centered, and the early identification of potential barriers through peer collaboration among grantees. Navigating government regulations that protect patient privacy and guide the handling of protected health information emerged as a crucial barrier. A related technical challenge in five sites was the labor-intensive tracking and documenting of texting communications due to an inability to integrate texting platforms with electronic health records.

CONCLUSIONS

Despite enthusiasm for the texting programs from the involved individuals and organizations, inadequate data management capabilities and unclear privacy and security regulations for mobile health technology slowed the initial implementation and limited the clinical use of texting in the safety net and scope of pilots. Future implementation work and research should investigate how different texting platform and intervention designs affect efficacy, as well as explore issues that may affect sustainability and the scalability.

摘要

背景

短信是一种经济实惠、无处不在且不断发展的移动通信技术。然而,美国为未参保和低收入患者提供更多医疗服务的安全网医疗系统在利用这项技术时可能面临额外的财务和基础设施挑战。对短信实施经验的形成性评估有限。我们采访了试点短信倡议的安全网医疗系统,以研究现实世界实施中的促进因素和障碍。

方法

我们对来自加利福尼亚州八个安全网系统的志愿者利益相关者进行了电话访谈,这些系统获得了外部资金,以试点他们选择的基于短信的项目,以满足初级保健需求。我们部分基于实施研究综合框架(CFIR)制定了一份半结构化访谈指南,该框架涵盖几个领域:干预措施、相关人员、背景因素和实施过程。我们对访谈记录进行归纳和演绎(使用CFIR)编码,并将主题分类为促进因素和障碍。

结果

我们进行了八次访谈(每个试点站点一次访谈)。五个站点此前没有短信经验。各站点将短信应用于与药物依从性和监测、预约提醒、护理协调以及健康教育与促进相关的项目。没有站点发送可识别患者身份的健康信息,大多数站点手动获得了每位参与患者的知情同意。实施的促进因素包括患者表现出的热情、工作人员和管理层认为短信以患者为中心,以及通过受资助者之间的同行合作尽早识别潜在障碍。应对保护患者隐私并指导受保护健康信息处理的政府法规成为一个关键障碍。五个站点面临的一个相关技术挑战是,由于无法将短信平台与电子健康记录集成,对短信通信进行劳动密集型跟踪和记录。

结论

尽管相关个人和组织对短信项目充满热情,但数据管理能力不足以及移动健康技术的隐私和安全法规不明确,减缓了初期实施,并限制了安全网中短信在试点范围内的临床应用。未来的实施工作和研究应调查不同的短信平台和干预设计如何影响疗效,以及探索可能影响可持续性和可扩展性的问题。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c9ca/4744448/a1474bca8b20/12911_2016_258_Fig1_HTML.jpg

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