The SleepFit Tablet Application for Home-Based Clinical Data Collection in Parkinson Disease: User-Centric Development and Usability Study

BackgroundParkinson disease (PD) is a common, multifaceted neurodegenerative disorder profoundly impacting patients' autonomy and quality of life. Assessment in real-life conditions of subjective symptoms and objective metrics of mobility and nonmotor symptoms such as sl...

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Main Authors: Mascheroni, Alessandro, Choe, Eun Kyoung, Luo, Yuhan, Marazza, Michele, Ferlito, Clara, Caverzasio, Serena, Mezzanotte, Francesco, Kaelin-Lang, Alain, Faraci, Francesca, Puiatti, Alessandro, Ratti, Pietro Luca
Format: Article
Language:English
Published: JMIR Publications 2021-06-01
Series:JMIR mHealth and uHealth
Online Access:https://mhealth.jmir.org/2021/6/e16304
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spelling doaj-dc24510eae6540fb9db2a96e7cb9c5202021-06-08T13:15:58ZengJMIR PublicationsJMIR mHealth and uHealth2291-52222021-06-0196e1630410.2196/16304The SleepFit Tablet Application for Home-Based Clinical Data Collection in Parkinson Disease: User-Centric Development and Usability StudyMascheroni, AlessandroChoe, Eun KyoungLuo, YuhanMarazza, MicheleFerlito, ClaraCaverzasio, SerenaMezzanotte, FrancescoKaelin-Lang, AlainFaraci, FrancescaPuiatti, AlessandroRatti, Pietro Luca BackgroundParkinson disease (PD) is a common, multifaceted neurodegenerative disorder profoundly impacting patients' autonomy and quality of life. Assessment in real-life conditions of subjective symptoms and objective metrics of mobility and nonmotor symptoms such as sleep disturbance is strongly advocated. This information would critically guide the adaptation of antiparkinsonian medications and nonpharmacological interventions. Moreover, since the spread of the COVID-19 pandemic, health care practices are being reshaped toward a more home-based care. New technologies could play a pivotal role in this new approach to clinical care. Nevertheless, devices and information technology tools might be unhandy for PD patients, thus dramatically limiting their widespread employment. ObjectiveThe goals of the research were development and usability evaluation of an application, SleepFit, for ecological momentary assessment of objective and subjective clinical metrics at PD patients’ homes, and as a remote tool for researchers to monitor patients and integrate and manage data. MethodsAn iterative and user-centric strategy was employed for the development of SleepFit. The core structure of SleepFit consists of (1) an electronic finger-tapping test; (2) motor, sleepiness, and emotional subjective scales; and (3) a sleep diary. Applicable design, ergonomic, and navigation principles have been applied while tailoring the application to the specific patient population. Three progressively enhanced versions of the application (alpha, v1.0, v2.0) were tested by a total of 56 patients with PD who were asked to perform multiple home assessments 4 times per day for 2 weeks. Patient compliance was calculated as the proportion of completed tasks out of the total number of expected tasks. Satisfaction on the latest version (v2.0) was evaluated as potential willingness to use SleepFit again after the end of the study. ResultsFrom alpha to v1.0, SleepFit was improved in graphics, ergonomics, and navigation, with automated flows guiding the patients in performing tasks throughout the 24 hours, and real-time data collection and consultation were made possible thanks to a remote web portal. In v2.0, the kiosk-mode feature restricts the use of the tablet to the SleepFit application only, thus preventing users from accidentally exiting the application. A total of 52 (4 dropouts) patients were included in the analyses. Overall compliance (all versions) was 88.89% (5707/6420). SleepFit was progressively enhanced and compliance increased from 87.86% (2070/2356) to 89.92% (2899/3224; P=.04). Among the patients who used v2.0, 96% (25/26) declared they would use SleepFit again. ConclusionsSleepFit can be considered a state-of-the-art home-based system that increases compliance in PD patients, ensures high-quality data collection, and works as a handy tool for remote monitoring and data management in clinical research. Thanks to its user-friendliness and modular structure, it could be employed in other clinical studies with minimum adaptation efforts. Trial RegistrationClinicalTrials.gov NCT02723396; https://clinicaltrials.gov/ct2/show/NCT02723396https://mhealth.jmir.org/2021/6/e16304
collection DOAJ
language English
format Article
sources DOAJ
author Mascheroni, Alessandro
Choe, Eun Kyoung
Luo, Yuhan
Marazza, Michele
Ferlito, Clara
Caverzasio, Serena
Mezzanotte, Francesco
Kaelin-Lang, Alain
Faraci, Francesca
Puiatti, Alessandro
Ratti, Pietro Luca
spellingShingle Mascheroni, Alessandro
Choe, Eun Kyoung
Luo, Yuhan
Marazza, Michele
Ferlito, Clara
Caverzasio, Serena
Mezzanotte, Francesco
Kaelin-Lang, Alain
Faraci, Francesca
Puiatti, Alessandro
Ratti, Pietro Luca
The SleepFit Tablet Application for Home-Based Clinical Data Collection in Parkinson Disease: User-Centric Development and Usability Study
JMIR mHealth and uHealth
author_facet Mascheroni, Alessandro
Choe, Eun Kyoung
Luo, Yuhan
Marazza, Michele
Ferlito, Clara
Caverzasio, Serena
Mezzanotte, Francesco
Kaelin-Lang, Alain
Faraci, Francesca
Puiatti, Alessandro
Ratti, Pietro Luca
author_sort Mascheroni, Alessandro
title The SleepFit Tablet Application for Home-Based Clinical Data Collection in Parkinson Disease: User-Centric Development and Usability Study
title_short The SleepFit Tablet Application for Home-Based Clinical Data Collection in Parkinson Disease: User-Centric Development and Usability Study
title_full The SleepFit Tablet Application for Home-Based Clinical Data Collection in Parkinson Disease: User-Centric Development and Usability Study
title_fullStr The SleepFit Tablet Application for Home-Based Clinical Data Collection in Parkinson Disease: User-Centric Development and Usability Study
title_full_unstemmed The SleepFit Tablet Application for Home-Based Clinical Data Collection in Parkinson Disease: User-Centric Development and Usability Study
title_sort sleepfit tablet application for home-based clinical data collection in parkinson disease: user-centric development and usability study
publisher JMIR Publications
series JMIR mHealth and uHealth
issn 2291-5222
publishDate 2021-06-01
description BackgroundParkinson disease (PD) is a common, multifaceted neurodegenerative disorder profoundly impacting patients' autonomy and quality of life. Assessment in real-life conditions of subjective symptoms and objective metrics of mobility and nonmotor symptoms such as sleep disturbance is strongly advocated. This information would critically guide the adaptation of antiparkinsonian medications and nonpharmacological interventions. Moreover, since the spread of the COVID-19 pandemic, health care practices are being reshaped toward a more home-based care. New technologies could play a pivotal role in this new approach to clinical care. Nevertheless, devices and information technology tools might be unhandy for PD patients, thus dramatically limiting their widespread employment. ObjectiveThe goals of the research were development and usability evaluation of an application, SleepFit, for ecological momentary assessment of objective and subjective clinical metrics at PD patients’ homes, and as a remote tool for researchers to monitor patients and integrate and manage data. MethodsAn iterative and user-centric strategy was employed for the development of SleepFit. The core structure of SleepFit consists of (1) an electronic finger-tapping test; (2) motor, sleepiness, and emotional subjective scales; and (3) a sleep diary. Applicable design, ergonomic, and navigation principles have been applied while tailoring the application to the specific patient population. Three progressively enhanced versions of the application (alpha, v1.0, v2.0) were tested by a total of 56 patients with PD who were asked to perform multiple home assessments 4 times per day for 2 weeks. Patient compliance was calculated as the proportion of completed tasks out of the total number of expected tasks. Satisfaction on the latest version (v2.0) was evaluated as potential willingness to use SleepFit again after the end of the study. ResultsFrom alpha to v1.0, SleepFit was improved in graphics, ergonomics, and navigation, with automated flows guiding the patients in performing tasks throughout the 24 hours, and real-time data collection and consultation were made possible thanks to a remote web portal. In v2.0, the kiosk-mode feature restricts the use of the tablet to the SleepFit application only, thus preventing users from accidentally exiting the application. A total of 52 (4 dropouts) patients were included in the analyses. Overall compliance (all versions) was 88.89% (5707/6420). SleepFit was progressively enhanced and compliance increased from 87.86% (2070/2356) to 89.92% (2899/3224; P=.04). Among the patients who used v2.0, 96% (25/26) declared they would use SleepFit again. ConclusionsSleepFit can be considered a state-of-the-art home-based system that increases compliance in PD patients, ensures high-quality data collection, and works as a handy tool for remote monitoring and data management in clinical research. Thanks to its user-friendliness and modular structure, it could be employed in other clinical studies with minimum adaptation efforts. Trial RegistrationClinicalTrials.gov NCT02723396; https://clinicaltrials.gov/ct2/show/NCT02723396
url https://mhealth.jmir.org/2021/6/e16304
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