4.7 Article

Experience Sampling and Programmed Intervention Method and System for Planning, Authoring, and Deploying Mobile Health Interventions: Design and Case Reports

Journal

JOURNAL OF MEDICAL INTERNET RESEARCH
Volume 23, Issue 7, Pages -

Publisher

JMIR PUBLICATIONS, INC
DOI: 10.2196/24278

Keywords

mobile apps; mHealth; intervention; experience sampling; method; monitoring; Experience Sampling and Programmed Intervention Method; experience sampling method; ecological momentary assessment; just-in-time adaptive intervention

Funding

  1. Sao Paulo Research Foundation (FAPESP) [2017/09549-6, 2015/18117-7, 2018/14674-7, 2016/00351-6, 2016/50489-4]
  2. Conselho Nacional de Desenvolvimento Cientifico e Tecnologico (CNPq) [150465/2016-5, 312058/2015-2]
  3. Coordenacao de Aperfeicoamento de Pessoal de Nivel Superior (CAPES) [001]

Ask authors/readers for more resources

This study aims to design the Experience Sampling and Programmed Intervention Method (ESPIM) to support specialists in deploying mHealth interventions, as well as the ESPIM model, guiding health specialists in adopting existing solutions and advising software developers in building new ones. The study also focuses on creating a software platform allowing specialists to plan, create, and deploy interventions effectively. Through a participatory design approach and real case studies involving various professionals, the ESPIM method and model have been shown to be successful in supporting specialists in planning and authoring mobile-based intervention programs.
Background: Health professionals initiating mobile health (mHealth) interventions may choose to adapt apps designed for other activities (eg, peer-to-peer communication) or to employ purpose-built apps specialized in the required intervention, or to exploit apps based on methods such as the experience sampling method (ESM). An alternative approach for professionals would be to create their own apps. While ESM-based methods offer important guidance, current systems do not expose their design at a level that promotes replicating, specializing, or extending their contributions. Thus, a twofold solution is required: a method that directs specialists in planning intervention programs themselves, and a model that guides specialists in adopting existing solutions and advises software developers on building new ones. Objective: The main objectives of this study are to design the Experience Sampling and Programmed Intervention Method (ESPIM), formulated toward supporting specialists in deploying mHealth interventions, and the ESPIM model, which guides health specialists in adopting existing solutions and advises software developers on how to build new ones. Another goal is to conceive and implement a software platform allowing specialists to be users who actually plan, create, and deploy interventions (ESPIM system). Methods: We conducted the design and evaluation of the ESPIM method and model alongside a software system comprising integrated web and mobile apps. A participatory design approach with stakeholders included early software prototype, predesign interviews with 12 health specialists, iterative design sustained by the software as an instance of the method's conceptual model, support to 8 real case studies, and postdesign interviews. Results: The ESPIM comprises (1) a list of requirements for mHealth experience sampling and intervention-based methods and systems, (2) a 4-dimension planning framework, (3) a 7-step-based process, and (4) an ontology-based conceptual model. The ESPIM system encompasses web and mobile apps. Eight long-term case studies, involving professionals in psychology, gerontology, computer science, speech therapy, and occupational therapy, show that the method allowed specialists to be actual users who plan, create, and deploy interventions via the associated system. Specialists' target users were parents of children diagnosed with autism spectrum disorder, older persons, graduate and undergraduate students, children (age 8-12), and caregivers of older persons. The specialists reported being able to create and conduct their own studies without modifying their original design. A qualitative evaluation of the ontology-based conceptual model showed its compliance to the functional requirements elicited. Conclusions: The ESPIM method succeeds in supporting specialists in planning, authoring, and deploying mobile-based intervention programs when employed via a software system designed and implemented according to its conceptual model. The ESPIM ontology-based conceptual model exposes the design of systems involving active or passive sampling interventions. Such exposure supports the evaluation, implementation, adaptation, or extension of new or existing systems.

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