Development, Deployment, and Evaluation of DyMand – An Open-Source Smartwatch and Smartphone System for Capturing Couples' Dyadic Interactions in Chronic Disease Management i

05/16/2022
by   George Boateng, et al.
0

Dyadic interactions of couples are of interest as they provide insight into relationship quality and chronic disease management. Currently, ambulatory assessment of couples' interactions entails collecting data at random or scheduled times which could miss significant couples' interaction/conversation moments. In this work, we developed, deployed and evaluated DyMand, a novel open-source smartwatch and smartphone system for collecting self-report and sensor data from couples based on partners' interaction moments. Our smartwatch-based algorithm uses the Bluetooth signal strength between two smartwatches each worn by one partner, and a voice activity detection machine-learning algorithm to infer that the partners are interacting, and then to trigger data collection. We deployed the DyMand system in a 7-day field study and collected data about social support, emotional well-being, and health behavior from 13 (N=26) Swiss-based heterosexual couples managing diabetes mellitus type 2 of one partner. Our system triggered 99.1 number of sensor and self-report data when the app was running, and 77.6 algorithm-triggered recordings contained partners' conversation moments compared to 43.8 DyMand was easy to use. DyMand can be used by social, clinical, or health psychology researchers to understand the social dynamics of couples in everyday life, and for developing and delivering behavioral interventions for couples who are managing chronic diseases.

READ FULL TEXT

page 5

page 10

page 11

page 14

research
01/18/2021

JTrack: A Digital Biomarker Platform for Remote Monitoring in Neurological and Psychiatric Diseases

Objective: Health-related data being collected by smartphones offer a pr...
research
08/16/2022

"Are you okay, honey?": Recognizing Emotions among Couples Managing Diabetes in Daily Life using Multimodal Real-World Smartwatch Data

Couples generally manage chronic diseases together and the management ta...
research
03/11/2021

Smartphone Impostor Detection with Behavioral Data Privacy and Minimalist Hardware Support

Impostors are attackers who take over a smartphone and gain access to th...
research
03/16/2021

Interpretable Deep Learning for the Remote Characterisation of Ambulation in Multiple Sclerosis using Smartphones

The emergence of digital technologies such as smartphones in healthcare ...
research
03/18/2018

TYDR - Track Your Daily Routine. Android App for Tracking Smartphone Sensor and Usage Data

We present the Android app TYDR (Track Your Daily Routine) which tracks ...
research
08/28/2020

HOPES – An Integrative Digital Phenotyping Platform for Data Collection, Monitoring and Machine Learning

We describe the development of, and early experiences with, comprehensiv...
research
09/06/2018

Visions and Challenges in Managing and Preserving Data to Measure Quality of Life

Health-related data analysis plays an important role in self-knowledge, ...

Please sign up or login with your details

Forgot password? Click here to reset