Supporting the Management of Gestational Diabetes Mellitus With Comprehensive Self-Tracking: Mixed Methods Study of Wearable Sensors

BackgroundGestational diabetes mellitus (GDM) is an increasing health risk for pregnant women as well as their children. Telehealth interventions targeted at the management of GDM have been shown to be effective, but they still require health care professionals for providing...

Full description

Bibliographic Details
Main Authors: Mikko Kytö, Saila Koivusalo, Heli Tuomonen, Lisbeth Strömberg, Antti Ruonala, Pekka Marttinen, Seppo Heinonen, Giulio Jacucci
Format: Article
Language:English
Published: JMIR Publications 2023-10-01
Series:JMIR Diabetes
Online Access:https://diabetes.jmir.org/2023/1/e43979
_version_ 1827778107200765952
author Mikko Kytö
Saila Koivusalo
Heli Tuomonen
Lisbeth Strömberg
Antti Ruonala
Pekka Marttinen
Seppo Heinonen
Giulio Jacucci
author_facet Mikko Kytö
Saila Koivusalo
Heli Tuomonen
Lisbeth Strömberg
Antti Ruonala
Pekka Marttinen
Seppo Heinonen
Giulio Jacucci
author_sort Mikko Kytö
collection DOAJ
description BackgroundGestational diabetes mellitus (GDM) is an increasing health risk for pregnant women as well as their children. Telehealth interventions targeted at the management of GDM have been shown to be effective, but they still require health care professionals for providing guidance and feedback. Feedback from wearable sensors has been suggested to support the self-management of GDM, but it is unknown how self-tracking should be designed in clinical care. ObjectiveThis study aimed to investigate how to support the self-management of GDM with self-tracking of continuous blood glucose and lifestyle factors without help from health care personnel. We examined comprehensive self-tracking from self-discovery (ie, learning associations between glucose levels and lifestyle) and user experience perspectives. MethodsWe conducted a mixed methods study where women with GDM (N=10) used a continuous glucose monitor (CGM; Medtronic Guardian) and 3 physical activity sensors: activity bracelet (Garmin Vivosmart 3), hip-worn sensor (UKK Exsed), and electrocardiography sensor (Firstbeat 2) for a week. We collected data from the sensors, and after use, participants took part in semistructured interviews about the wearable sensors. Acceptability of the wearable sensors was evaluated with the Unified Theory of Acceptance and Use of Technology (UTAUT) questionnaire. Moreover, maternal nutrition data were collected with a 3-day food diary, and self-reported physical activity data were collected with a logbook. ResultsWe found that the CGM was the most useful sensor for the self-discovery process, especially when learning associations between glucose and nutrition intake. We identified new challenges for using data from the CGM and physical activity sensors in supporting self-discovery in GDM. These challenges included (1) dispersion of glucose and physical activity data in separate applications, (2) absence of important trackable features like amount of light physical activity and physical activities other than walking, (3) discrepancy in the data between different wearable physical activity sensors and between CGMs and capillary glucose meters, and (4) discrepancy in perceived and measured quantification of physical activity. We found the body placement of sensors to be a key factor in measurement quality and preference, and ultimately a challenge for collecting data. For example, a wrist-worn sensor was used for longer compared with a hip-worn sensor. In general, there was a high acceptance for wearable sensors. ConclusionsA mobile app that combines glucose, nutrition, and physical activity data in a single view is needed to support self-discovery. The design should support tracking features that are important for women with GDM (such as light physical activity), and data for each feature should originate from a single sensor to avoid discrepancy and redundancy. Future work with a larger sample should involve evaluation of the effects of such a mobile app on clinical outcomes. Trial RegistrationClinicaltrials.gov NCT03941652; https://clinicaltrials.gov/study/NCT03941652
first_indexed 2024-03-11T14:28:27Z
format Article
id doaj.art-ac7303a0811549e5bb9f0eac6c91246d
institution Directory Open Access Journal
issn 2371-4379
language English
last_indexed 2024-03-11T14:28:27Z
publishDate 2023-10-01
publisher JMIR Publications
record_format Article
series JMIR Diabetes
spelling doaj.art-ac7303a0811549e5bb9f0eac6c91246d2023-10-31T13:00:33ZengJMIR PublicationsJMIR Diabetes2371-43792023-10-018e4397910.2196/43979Supporting the Management of Gestational Diabetes Mellitus With Comprehensive Self-Tracking: Mixed Methods Study of Wearable SensorsMikko Kytöhttps://orcid.org/0000-0002-4936-3502Saila Koivusalohttps://orcid.org/0000-0002-9482-9826Heli Tuomonenhttps://orcid.org/0000-0002-3204-0205Lisbeth Strömberghttps://orcid.org/0000-0002-3407-8186Antti Ruonalahttps://orcid.org/0000-0003-2385-4861Pekka Marttinenhttps://orcid.org/0000-0001-7078-7927Seppo Heinonenhttps://orcid.org/0000-0001-5949-0874Giulio Jacuccihttps://orcid.org/0000-0002-9185-7928 BackgroundGestational diabetes mellitus (GDM) is an increasing health risk for pregnant women as well as their children. Telehealth interventions targeted at the management of GDM have been shown to be effective, but they still require health care professionals for providing guidance and feedback. Feedback from wearable sensors has been suggested to support the self-management of GDM, but it is unknown how self-tracking should be designed in clinical care. ObjectiveThis study aimed to investigate how to support the self-management of GDM with self-tracking of continuous blood glucose and lifestyle factors without help from health care personnel. We examined comprehensive self-tracking from self-discovery (ie, learning associations between glucose levels and lifestyle) and user experience perspectives. MethodsWe conducted a mixed methods study where women with GDM (N=10) used a continuous glucose monitor (CGM; Medtronic Guardian) and 3 physical activity sensors: activity bracelet (Garmin Vivosmart 3), hip-worn sensor (UKK Exsed), and electrocardiography sensor (Firstbeat 2) for a week. We collected data from the sensors, and after use, participants took part in semistructured interviews about the wearable sensors. Acceptability of the wearable sensors was evaluated with the Unified Theory of Acceptance and Use of Technology (UTAUT) questionnaire. Moreover, maternal nutrition data were collected with a 3-day food diary, and self-reported physical activity data were collected with a logbook. ResultsWe found that the CGM was the most useful sensor for the self-discovery process, especially when learning associations between glucose and nutrition intake. We identified new challenges for using data from the CGM and physical activity sensors in supporting self-discovery in GDM. These challenges included (1) dispersion of glucose and physical activity data in separate applications, (2) absence of important trackable features like amount of light physical activity and physical activities other than walking, (3) discrepancy in the data between different wearable physical activity sensors and between CGMs and capillary glucose meters, and (4) discrepancy in perceived and measured quantification of physical activity. We found the body placement of sensors to be a key factor in measurement quality and preference, and ultimately a challenge for collecting data. For example, a wrist-worn sensor was used for longer compared with a hip-worn sensor. In general, there was a high acceptance for wearable sensors. ConclusionsA mobile app that combines glucose, nutrition, and physical activity data in a single view is needed to support self-discovery. The design should support tracking features that are important for women with GDM (such as light physical activity), and data for each feature should originate from a single sensor to avoid discrepancy and redundancy. Future work with a larger sample should involve evaluation of the effects of such a mobile app on clinical outcomes. Trial RegistrationClinicaltrials.gov NCT03941652; https://clinicaltrials.gov/study/NCT03941652https://diabetes.jmir.org/2023/1/e43979
spellingShingle Mikko Kytö
Saila Koivusalo
Heli Tuomonen
Lisbeth Strömberg
Antti Ruonala
Pekka Marttinen
Seppo Heinonen
Giulio Jacucci
Supporting the Management of Gestational Diabetes Mellitus With Comprehensive Self-Tracking: Mixed Methods Study of Wearable Sensors
JMIR Diabetes
title Supporting the Management of Gestational Diabetes Mellitus With Comprehensive Self-Tracking: Mixed Methods Study of Wearable Sensors
title_full Supporting the Management of Gestational Diabetes Mellitus With Comprehensive Self-Tracking: Mixed Methods Study of Wearable Sensors
title_fullStr Supporting the Management of Gestational Diabetes Mellitus With Comprehensive Self-Tracking: Mixed Methods Study of Wearable Sensors
title_full_unstemmed Supporting the Management of Gestational Diabetes Mellitus With Comprehensive Self-Tracking: Mixed Methods Study of Wearable Sensors
title_short Supporting the Management of Gestational Diabetes Mellitus With Comprehensive Self-Tracking: Mixed Methods Study of Wearable Sensors
title_sort supporting the management of gestational diabetes mellitus with comprehensive self tracking mixed methods study of wearable sensors
url https://diabetes.jmir.org/2023/1/e43979
work_keys_str_mv AT mikkokyto supportingthemanagementofgestationaldiabetesmellituswithcomprehensiveselftrackingmixedmethodsstudyofwearablesensors
AT sailakoivusalo supportingthemanagementofgestationaldiabetesmellituswithcomprehensiveselftrackingmixedmethodsstudyofwearablesensors
AT helituomonen supportingthemanagementofgestationaldiabetesmellituswithcomprehensiveselftrackingmixedmethodsstudyofwearablesensors
AT lisbethstromberg supportingthemanagementofgestationaldiabetesmellituswithcomprehensiveselftrackingmixedmethodsstudyofwearablesensors
AT anttiruonala supportingthemanagementofgestationaldiabetesmellituswithcomprehensiveselftrackingmixedmethodsstudyofwearablesensors
AT pekkamarttinen supportingthemanagementofgestationaldiabetesmellituswithcomprehensiveselftrackingmixedmethodsstudyofwearablesensors
AT seppoheinonen supportingthemanagementofgestationaldiabetesmellituswithcomprehensiveselftrackingmixedmethodsstudyofwearablesensors
AT giuliojacucci supportingthemanagementofgestationaldiabetesmellituswithcomprehensiveselftrackingmixedmethodsstudyofwearablesensors