Sahandi Far Mehran, Fischer Jona M, Senge Svea, Rathmakers Robin, Meissner Thomas, Schneble Dominik, Narava Mamaka, Eickhoff Simon B, Dukart Juergen
Research Centre Jülich, Institute of Neuroscience and Medicine, Brain and Behaviour (INM-7), Jülich, Germany.
Medical Faculty, Institute of Systems Neuroscience, Heinrich Heine University Düsseldorf, Düsseldorf, Germany.
J Med Internet Res. 2025 Jan 28;27:e51689. doi: 10.2196/51689.
Traditional in-clinic methods of collecting self-reported information are costly, time-consuming, subjective, and often limited in the quality and quantity of observation. However, smartphone-based ecological momentary assessments (EMAs) provide complementary information to in-clinic visits by collecting real-time, frequent, and longitudinal data that are ecologically valid. While these methods are promising, they are often prone to various technical obstacles. However, despite the potential of smartphone-based EMAs, they face technical obstacles that impact adaptability, availability, and interoperability across devices and operating systems. Deficiencies in these areas can contribute to selection bias by excluding participants with unsupported devices or limited digital literacy, increase development and maintenance costs, and extend deployment timelines. Moreover, these limitations not only impede the configurability of existing solutions but also hinder their adoption for addressing diverse clinical challenges.
The primary aim of this research was to develop a cross-platform EMA app that ensures a uniform user experience and core features across various operating systems. Emphasis was placed on maximizing the integration and adaptability to various study designs, all while maintaining strict adherence to security and privacy protocols. JTrack-EMA+ was designed and implemented per the FAIR (findable, accessible, interpretable, and reusable) principles in both its architecture and data management layers, thereby reducing the burden of integration for clinicians and researchers.
JTrack-EMA+ was built using the Flutter framework, enabling it to run seamlessly across different platforms. This platform comprises two main components. JDash (Research Centre Jülich, Institute of Neuroscience and Medicine, Brain and Behaviour [INM-7]) is an online management tool created using Python (Python Software Foundation) with the Django (Django Software Foundation) framework. This online dashboard offers comprehensive study management tools, including assessment design, user administration, data quality control, and a reminder casting center. The JTrack-EMA+ app supports a wide range of question types, allowing flexibility in assessment design. It also has configurable assessment logic and the ability to include supplementary materials for a richer user experience. It strongly commits to security and privacy and complies with the General Data Protection Regulations to safeguard user data and ensure confidentiality.
We investigated our platform in a pilot study with 480 days of follow-up to assess participants' compliance. The 6-month average compliance was 49.3%, significantly declining (P=.004) from 66.7% in the first month to 42% in the sixth month.
The JTrack-EMA+ platform prioritizes platform-independent architecture, providing an easy entry point for clinical researchers to deploy EMA in their respective clinical studies. Remote and home-based assessments of EMA using this platform can provide valuable insights into patients' daily lives, particularly in a population with limited mobility or inconsistent access to health care services.
传统的在诊所收集自我报告信息的方法成本高、耗时、主观,并且观察的质量和数量往往有限。然而,基于智能手机的生态瞬时评估(EMA)通过收集生态有效、实时、频繁且纵向的数据,为诊所就诊提供补充信息。虽然这些方法很有前景,但它们往往容易出现各种技术障碍。然而,尽管基于智能手机的EMA有潜力,但它们面临影响跨设备和操作系统的适应性、可用性及互操作性的技术障碍。这些领域的缺陷可能导致选择偏倚,排除使用不受支持设备或数字素养有限的参与者,增加开发和维护成本,并延长部署时间线。此外,这些限制不仅阻碍现有解决方案的可配置性,还阻碍它们被采用以应对各种临床挑战。
本研究的主要目的是开发一个跨平台的EMA应用程序,确保在各种操作系统上具有统一的用户体验和核心功能。重点是最大限度地提高对各种研究设计的集成和适应性,同时严格遵守安全和隐私协议。JTrack-EMA+在其架构和数据管理层均按照FAIR(可查找、可访问、可解释和可重用)原则进行设计和实施,从而减轻临床医生和研究人员的集成负担。
JTrack-EMA+使用Flutter框架构建,使其能够在不同平台上无缝运行。该平台由两个主要组件组成。JDash(于利希研究中心,神经科学与医学研究所,大脑与行为[INM-7])是一个使用Python(Python软件基金会)和Django(Django软件基金会)框架创建的在线管理工具。这个在线仪表板提供全面的研究管理工具,包括评估设计、用户管理、数据质量控制和提醒投放中心。JTrack-EMA+应用程序支持多种问题类型,在评估设计上具有灵活性。它还具有可配置的评估逻辑,并能够包含补充材料以提供更丰富的用户体验。它坚定地致力于安全和隐私,并遵守通用数据保护条例以保护用户数据并确保保密性。
我们在一项为期480天随访的试点研究中对我们的平台进行了调查,以评估参与者的依从性。6个月的平均依从性为49.3%,从第一个月的66.7%显著下降(P = 0.004)至第六个月的42%。
JTrack-EMA+平台优先考虑独立于平台的架构,为临床研究人员在各自的临床研究中部署EMA提供了一个便捷的切入点。使用该平台进行EMA的远程和居家评估可以为患者的日常生活提供有价值的见解,特别是在行动不便或获得医疗服务不一致的人群中。