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Accepted for/Published in: JMIR Research Protocols

Date Submitted: Jun 22, 2023
Date Accepted: Jul 27, 2023

The final, peer-reviewed published version of this preprint can be found here:

Personalized Management of Fatigue in Individuals With Myalgic Encephalomyelitis/Chronic Fatigue Syndrome and Long COVID Using a Smart Digital mHealth Solution: Protocol for a Participatory Design Approach

Dorronzoro-Zubiete E, Castro-Marrero J, Ropero Rodriguez J, Sevillano-Ramos JL, Dolores Hernández M, Sanmartin Sentañes R, Alegre Martin J, Launois P, Martin Garrido I, Luque Budia A, Ramon Lacalle J, Béjar Prado L, Rivera Romero O

Personalized Management of Fatigue in Individuals With Myalgic Encephalomyelitis/Chronic Fatigue Syndrome and Long COVID Using a Smart Digital mHealth Solution: Protocol for a Participatory Design Approach

JMIR Res Protoc 2024;13:e50157

DOI: 10.2196/50157

PMID: 38608263

PMCID: 11053387

Personalized Just-In-Time Management of Fatigue in Individuals with ME/CFS and long COVID using a Smart Context-Aware Digital mHealth Solution: Protocol for a Participatory Design Approach

  • Enrique Dorronzoro-Zubiete; 
  • Jesús Castro-Marrero; 
  • Jorge Ropero Rodriguez; 
  • José Luis Sevillano-Ramos; 
  • María Dolores Hernández; 
  • Ramon Sanmartin Sentañes; 
  • Jose Alegre Martin; 
  • Patricia Launois; 
  • Isabel Martin Garrido; 
  • Asuncion Luque Budia; 
  • Juan Ramon Lacalle; 
  • Luis Béjar Prado; 
  • Octavio Rivera Romero

ABSTRACT

Background:

Fatigue is the most common symptom in ME/CFS and long COVID impacting the patients’ quality of life; however, there is currently a lack of evidence-based context-aware tools for fatigue self-management in these populations.

Objective:

This study aimed to (1) address fatigue in ME/CFS and long COVID through the development of digital mHealth solutions for self-management, (2) predicting perceived fatigue severity using real-time data, and (3) assessing the feasibility and potential benefits of personalized digital mHealth solutions

Methods:

The MyFatigue project adopts a patient-centred approach within the participatory health informatics domain. Patient representatives will be actively involved in decision-making processes. This study combines inductive and deductive research approaches, utilizing qualitative studies to generate new knowledge and quantitative methods to test hypotheses regarding the relationship between factors like physical activity, sleep behaviours, and perceived fatigue in ME/CFS and long COVID. Co-design methods will be employed to develop a personalized digital solution for fatigue self-management, based on the generated knowledge. Finally, a pilot study will evaluate the feasibility, acceptance, and potential benefits of the digital health solution

Results:

Fatigue study opened to enrolment in November 2023. Initial results are expected to be published by the end of 2024.

Conclusions:

This study protocol holds the potential to expand understanding, create personalized self-management approaches, engage stakeholders, and ultimately improve the well-being of individuals with ME/CFS and long COVID.


 Citation

Please cite as:

Dorronzoro-Zubiete E, Castro-Marrero J, Ropero Rodriguez J, Sevillano-Ramos JL, Dolores Hernández M, Sanmartin Sentañes R, Alegre Martin J, Launois P, Martin Garrido I, Luque Budia A, Ramon Lacalle J, Béjar Prado L, Rivera Romero O

Personalized Management of Fatigue in Individuals With Myalgic Encephalomyelitis/Chronic Fatigue Syndrome and Long COVID Using a Smart Digital mHealth Solution: Protocol for a Participatory Design Approach

JMIR Res Protoc 2024;13:e50157

DOI: 10.2196/50157

PMID: 38608263

PMCID: 11053387

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