Clifford Gari, Nguyen Tony, Shaw Corey, Newton Brittney, Francis Sherilyn, Salari Mohsen, Evans Chad, Jones Camara, Akintobi Tabia Henry, Taylor Herman
Department of Biomedical Informatics, Emory University, Atlanta, GA, United States.
Department of Biomedical Engineering, Georgia Institute of Technology, Atlanta, GA, United States.
JMIR Form Res. 2022 Jan 11;6(1):e25444. doi: 10.2196/25444.
Cardiovascular diseases (CVDs) are the leading cause of death worldwide and are increasingly affecting younger populations, particularly African Americans in the southern United States. Access to preventive and therapeutic services, biological factors, and social determinants of health (ie, structural racism, resource limitation, residential segregation, and discriminatory practices) all combine to exacerbate health inequities and their resultant disparities in morbidity and mortality. These factors manifest early in life and have been shown to impact health trajectories into adulthood. Early detection of and intervention in emerging risk offers the best hope for preventing race-based differences in adult diseases. However, young-adult populations are notoriously difficult to recruit and retain, often because of a lack of knowledge of personal risk and a low level of concern for long-term health outcomes.
This study aims to develop a system design for the MOYO mobile platform. Further, we seek to addresses the challenge of primordial prevention in a young, at-risk population (ie, Southern-urban African Americans).
Urban African Americans, aged 18 to 29 years (n=505), participated in a series of co-design sessions to develop MOYO prototypes (ie, HealthTech Events). During the sessions, participants were orientated to the issues of CVD risk health disparities and then tasked with wireframing prototype screens depicting app features that they considered desirable. All 297 prototype screens were subsequently analyzed using NVivo 12 (QSR International), a qualitative analysis software. Using the grounded theory approach, an open-coding method was applied to a subset of data, approximately 20% (5/25), or 5 complete prototypes, to identify the dominant themes among the prototypes. To ensure intercoder reliability, 2 research team members analyzed the same subset of data.
Overall, 9 dominant design requirements emerged from the qualitative analysis: customization, incentive motivation, social engagement, awareness, education, or recommendations, behavior tracking, location services, access to health professionals, data user agreements, and health assessment. This led to the development of a cross-platform app through an agile design process to collect standardized health surveys, narratives, geolocated pollution, weather, food desert exposure data, physical activity, social networks, and physiology through point-of-care devices. A Health Insurance Portability and Accountability Act-compliant cloud infrastructure was developed to collect, process, and review data, as well as generate alerts to allow automated signal processing and machine learning on the data to produce critical alerts. Integration with wearables and electronic health records via fast health care interoperability resources was implemented.
The MOYO mobile platform provides a comprehensive health and exposure monitoring system that allows for a broad range of compliance, from passive background monitoring to active self-reporting. These study findings support the notion that African Americans should be meaningfully involved in designing technologies that are developed to improve CVD outcomes in African American communities.
心血管疾病(CVDs)是全球主要死因,且越来越多地影响年轻人群,尤其是美国南部的非裔美国人。获得预防和治疗服务、生物因素以及健康的社会决定因素(即结构性种族主义、资源限制、居住隔离和歧视性做法)共同加剧了健康不平等及其在发病率和死亡率方面的差异。这些因素在生命早期就会显现,并已被证明会影响成年后的健康轨迹。尽早发现并干预新出现的风险是预防成人疾病中基于种族差异的最大希望。然而,青年人群招募和留存难度极大,这通常是因为他们缺乏个人风险知识,且对长期健康结果的关注度较低。
本研究旨在为MOYO移动平台开发一种系统设计。此外,我们试图应对在年轻的高危人群(即美国南部城市的非裔美国人)中进行初级预防的挑战。
年龄在18至29岁的城市非裔美国人(n = 505)参加了一系列协同设计会议,以开发MOYO原型(即健康科技活动)。在会议期间,参与者了解了心血管疾病风险健康差异问题,然后负责勾勒出描绘他们认为理想的应用程序功能的原型屏幕框架。随后,使用定性分析软件NVivo 12(QSR国际公司)对所有297个原型屏幕进行了分析。采用扎根理论方法,对约20%(5/25)的数据子集或5个完整原型应用开放编码方法,以确定原型中的主要主题。为确保编码员间的可靠性,由2名研究团队成员分析同一数据子集。
总体而言,定性分析得出了9项主要设计要求:定制化、激励动机、社交参与、意识、教育或建议、行为跟踪、定位服务、获得医疗专业人员帮助、数据用户协议以及健康评估。这促使通过敏捷设计流程开发了一款跨平台应用程序,以通过即时医疗设备收集标准化健康调查、叙述、地理位置污染、天气、食物荒漠暴露数据、身体活动、社交网络和生理数据。开发了一个符合《健康保险流通与责任法案》的云基础设施,用于收集、处理和审查数据,并生成警报,以便对数据进行自动信号处理和机器学习,从而产生关键警报。通过快速医疗保健互操作性资源实现了与可穿戴设备和电子健康记录的集成。
MOYO移动平台提供了一个全面的健康和暴露监测系统,允许从被动背景监测到主动自我报告的广泛合规性。这些研究结果支持这样一种观点,即非裔美国人应切实参与设计旨在改善非裔美国人社区心血管疾病结果的技术。