Matching science to reality: how to deploy a participant-driven digital brain health platform

Ileana De Anda-Duran, Phillip H. Hwang, Z. Popp, Spencer Low, Huitong Ding, Salman Rahman, Akwaugo Igwe, V. Kolachalama, Honghuang Lin, R. Au
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Abstract

Introduction Advances in digital technologies for health research enable opportunities for digital phenotyping of individuals in research and clinical settings. Beyond providing opportunities for advanced data analytics with data science and machine learning approaches, digital technologies offer solutions to several of the existing barriers in research practice that have resulted in biased samples. Methods A participant-driven, precision brain health monitoring digital platform has been introduced to two longitudinal cohort studies, the Boston University Alzheimer's Disease Research Center (BU ADRC) and the Bogalusa Heart Study (BHS). The platform was developed with prioritization of digital data in native format, multiple OS, validity of derived metrics, feasibility and usability. A platform including nine remote technologies and three staff-guided digital assessments has been introduced in the BU ADRC population, including a multimodal smartphone application also introduced to the BHS population. Participants select which technologies they would like to use and can manipulate their personal platform and schedule over time. Results Participants from the BU ADRC are using an average of 5.9 technologies to date, providing strong evidence for the usability of numerous digital technologies in older adult populations. Broad phenotyping of both cohorts is ongoing, with the collection of data spanning cognitive testing, sleep, physical activity, speech, motor activity, cardiovascular health, mood, gait, balance, and more. Several challenges in digital phenotyping implementation in the BU ADRC and the BHS have arisen, and the protocol has been revised and optimized to minimize participant burden while sustaining participant contact and support. Discussion The importance of digital data in its native format, near real-time data access, passive participant engagement, and availability of technologies across OS has been supported by the pattern of participant technology use and adherence across cohorts. The precision brain health monitoring platform will be iteratively adjusted and improved over time. The pragmatic study design enables multimodal digital phenotyping of distinct clinically characterized cohorts in both rural and urban U.S. settings.
将科学与现实相结合:如何部署参与者驱动的数字大脑健康平台
卫生研究数字技术的进步为在研究和临床环境中对个人进行数字表型分析提供了机会。除了利用数据科学和机器学习方法为高级数据分析提供机会之外,数字技术还为研究实践中导致样本偏差的几个现有障碍提供了解决方案。方法将参与者驱动的精确脑健康监测数字平台引入波士顿大学阿尔茨海默病研究中心(BU ADRC)和Bogalusa心脏研究(BHS)两项纵向队列研究。该平台的开发具有原生格式的数字数据优先级、多操作系统、派生指标的有效性、可行性和可用性。一个包括九种远程技术和三种工作人员指导的数字评估的平台已经在BU ADRC人群中引入,包括一个多模式智能手机应用程序也引入了BHS人群。参与者可以选择他们想要使用的技术,并可以随着时间的推移操纵他们的个人平台和时间表。结果:迄今为止,来自BU ADRC的参与者平均使用5.9种技术,为老年人群中众多数字技术的可用性提供了强有力的证据。两组人群的广泛表型分析正在进行中,收集的数据涵盖认知测试、睡眠、身体活动、语言、运动活动、心血管健康、情绪、步态、平衡等。在BU ADRC和BHS实施数字表型的过程中出现了一些挑战,该方案已经进行了修订和优化,以尽量减少参与者的负担,同时保持参与者的联系和支持。原生格式的数字数据、接近实时的数据访问、被动的参与者参与以及跨操作系统的技术可用性的重要性,得到了参与者技术使用模式和跨队列依从性的支持。精准脑健康监测平台将随着时间的推移不断调整和完善。实用的研究设计使美国农村和城市环境中不同临床特征队列的多模态数字表型成为可能。
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