Co-design of a voice-based app to monitor long COVID symptoms with its end-users: A mixed-method study

Author:

Fischer Aurélie12ORCID,Aguayo Gloria1ORCID,Pinker India3,Oustric Pauline4ORCID,Lachaise Tom4,Wilmes Paul56,Larché Jérôme7,Benoy Charles89,Fagherazzi Guy1

Affiliation:

1. Deep Digital Phenotyping Research Unit, Department of Precision Health, Luxembourg Institute of Health, Strassen, Luxembourg

2. Ecole doctorale BIOSE, Université de Lorraine, Nancy, France

3. ACADI, Department of Precision Health, Luxembourg Institute of Health, Strassen, Luxembourg

4. Association #ApresJ20 Covid Long France, Lucé, France

5. Luxembourg Centre for Systems Biomedicine (LCSB), University of Luxembourg, Esch-sur-Alzette, Luxembourg

6. Department of Life Sciences and Medicine, Faculty of Science, Technology and Medicine, University of Luxembourg, Esch-sur-Alzette, Luxembourg

7. Long Covid Center, Clinique du Parc, Castelnau-le-Lez, France

8. Centre Hospitalier Neuro-Psychiatrique Luxembourg (CHNP), Ettelbruck, Luxembourg

9. University Psychiatric Clinics (UPK), University of Basel, Basel, Switzerland

Abstract

Background People living with Long COVID (PWLC), which is still a poorly understood disease, often face major issues accessing proper care and frequently feel abandoned by the healthcare system. PWLC frequently report impaired quality of life because of the medical burden, the variability and intensity of symptoms, and insecurity toward the future. These particular needs justify the development of innovative, minimally disruptive solutions to facilitate the monitoring of this complex and fluctuating disease. Voice-based interactions and vocal biomarkers are promising digital approaches for such health monitoring. Methods Based on a mixed-method approach, this study describes the entire co-design process of Long COVID Companion, a voice-based digital health app to monitor Long COVID symptoms. Potential end-users of the app, both PWLC and healthcare professionals (HCP) were involved to (1) understand the unmet needs and expectations related to Long COVID care and management, (2) to assess the barriers and facilitators regarding a health monitoring app, (3) to define the app characteristics, including future potential use of vocal biomarkers and (4) to develop a first version of the app. Results This study revealed high needs and expectations regarding a digital health app to monitor Long COVID symptoms and the readiness to use vocal biomarkers from end-users. The main expectations included improved care and daily life, and major concerns were linked to accessibility and data privacy. Long COVID Companion was developed as a web application and is composed of a health monitoring component that allows auto-evaluation of symptoms, global health, and scoring relevant symptoms and quality of life using standardized questionnaires. Conclusions The Long COVID Companion app will address a major gap and provide day-to-day support for PWLC. However, further studies will be needed following its release, to evaluate its acceptability, usability and effectiveness.

Funder

Fonds National de la Recherche Luxembourg

Publisher

SAGE Publications

Reference63 articles.

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