Fischer Aurélie, Aguayo Gloria, Pinker India, Oustric Pauline, Lachaise Tom, Wilmes Paul, Larché Jérôme, Benoy Charles, Fagherazzi Guy
Deep Digital Phenotyping Research Unit, Department of Precision Health, Luxembourg Institute of Health, Strassen, Luxembourg.
Ecole doctorale BIOSE, Université de Lorraine, Nancy, France.
Digit Health. 2024 Sep 9;10:20552076241272671. doi: 10.1177/20552076241272671. eCollection 2024 Jan-Dec.
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.
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.
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.
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.
长期新冠患者(PWLC)仍然是一种了解甚少的疾病,他们在获得适当护理方面常常面临重大问题,并且经常感觉被医疗系统抛弃。长期新冠患者经常报告称,由于医疗负担、症状的多变性和强度以及对未来的不安全感,他们的生活质量受到损害。这些特殊需求促使人们开发创新的、干扰性最小的解决方案,以促进对这种复杂且波动的疾病的监测。基于语音的交互和声音生物标志物是用于此类健康监测的有前景的数字方法。
基于混合方法,本研究描述了长期新冠伴侣(Long COVID Companion)的整个协同设计过程,这是一款用于监测长期新冠症状的基于语音的数字健康应用程序。该应用程序的潜在最终用户,即长期新冠患者和医疗专业人员(HCP)参与其中,以(1)了解与长期新冠护理和管理相关的未满足需求和期望,(2)评估关于健康监测应用程序的障碍和促进因素,(3)定义应用程序的特征,包括声音生物标志物的未来潜在用途,以及(4)开发该应用程序的第一个版本。
本研究揭示了对用于监测长期新冠症状的数字健康应用程序的高度需求和期望,以及最终用户使用声音生物标志物的意愿。主要期望包括改善护理和日常生活,主要担忧与可及性和数据隐私有关。长期新冠伴侣被开发为一个网络应用程序,由一个健康监测组件组成,该组件允许使用标准化问卷对症状、整体健康状况进行自动评估,并对相关症状和生活质量进行评分。
长期新冠伴侣应用程序将填补一个重大空白,并为长期新冠患者提供日常支持。然而,在其发布后还需要进一步研究,以评估其可接受性、可用性和有效性。