Division of Health Informatics, Department of Healthcare Policy and Research, Weill Cornell Medicine, Cornell University, New York, New York, United States.
School of Nursing, Columbia University, New York, New York, United States.
Appl Clin Inform. 2018 Oct;9(4):772-781. doi: 10.1055/s-0038-1672138. Epub 2018 Oct 10.
Patient-generated health data (PGHD) collected digitally with mobile health (mHealth) technology has garnered recent excitement for its potential to improve precision management of chronic conditions such as atrial fibrillation (AF), a common cardiac arrhythmia. However, sustained engagement is a major barrier to collection of PGHD. Little is known about barriers to sustained engagement or strategies to intervene upon engagement through application design.
This article investigates individual patient differences in sustained engagement among individuals with a history of AF who are self-monitoring using mHealth technology.
This qualitative study involved patients, health care providers, and research coordinators previously involved in a randomized, controlled trial involving electrocardiogram (ECG) self-monitoring of AF. Patients were adults with a history of AF randomized to the intervention arm of this trial who self-monitored using ECG mHealth technology for 6 months. Semistructured interviews and focus groups were conducted separately with health care providers and research coordinators, engaged patients, and unengaged patients. A validated model of sustained engagement, an adapted unified theory of acceptance and use of technology (UTAUT), guided data collection, and analysis through directed content analysis.
We interviewed 13 patients (7 engaged, 6 unengaged), 6 providers, and 2 research coordinators. In addition to finding differences between engaged and unengaged patients within each predictor in the adapted UTAUT model (perceived ease of use, perceived usefulness, facilitating conditions), four additional factors were identified as being related to sustained engagement in this population. These are: (1) internal motivation to manage health, (2) relationship with health care provider, (3) supportive environments, and (4) feedback and guidance.
Although it required some modification, the adapted UTAUT model was useful in understanding of the parameters of sustained engagement. The findings of this study provide initial requirement specifications for the design of applications that engage patients in this unique population of adults with AF.
通过移动医疗(mHealth)技术数字化收集的患者生成的健康数据(PGHD)因其有可能改善心房颤动(AF)等常见心律失常等慢性疾病的精准管理而受到近期关注。然而,持续参与是收集 PGHD 的主要障碍。对于持续参与的障碍或通过应用程序设计干预参与的策略,人们知之甚少。
本研究旨在调查使用 mHealth 技术自我监测的 AF 病史患者中,个体患者在持续参与方面的差异。
这项定性研究涉及先前参与涉及 AF 心电图(ECG)自我监测的随机对照试验的患者、医疗保健提供者和研究协调员。患者为随机分配到该试验干预组的 AF 病史成年人,使用 ECG mHealth 技术自我监测 6 个月。分别对医疗保健提供者和研究协调员、参与患者和未参与患者进行半结构化访谈和焦点小组。经过验证的持续参与模型,即经过改编的接受和使用技术的统一理论(UTAUT),通过定向内容分析指导数据收集和分析。
我们采访了 13 名患者(7 名参与,6 名不参与)、6 名提供者和 2 名研究协调员。除了在适应的 UTAUT 模型的每个预测因子(感知易用性、感知有用性、促进条件)内发现参与和不参与患者之间的差异外,还确定了与该人群持续参与相关的另外四个因素。这些是:(1)管理健康的内在动机,(2)与医疗保健提供者的关系,(3)支持性环境,以及(4)反馈和指导。
尽管需要进行一些修改,但适应的 UTAUT 模型在理解持续参与的参数方面是有用的。本研究的结果为设计吸引这一独特的 AF 成年人群体患者的应用程序提供了初步的需求规范。