| Literature DB >> 28993396 |
Maxine E Whelan1,2, Andrew P Kingsnorth1,2, Mark W Orme3, Lauren B Sherar1,2,4, Dale W Esliger1,2,4.
Abstract
INTRODUCTION: Increasing physical activity (PA) reduces the risk of developing diabetes, highlighting the role of preventive medicine approaches. Changing lifestyle behaviours is difficult and is often predicated on the assumption that individuals are willing to change their lifestyles today to reduce the risk of developing disease years or even decades later. The self-monitoring technologies tested in this study will present PA feedback in real time, parallel with acute physiological data. Presenting the immediate health benefits of being more physically active may help enact change by observing the immediate consequences of that behaviour. The present study aims to assess user engagement with the self-monitoring technologies in individuals at moderate-to-high risk of developing type 2 diabetes. METHODS AND ANALYSIS: 45 individuals with a moderate-to-high risk, aged ≥40 years old and using a compatible smartphone, will be invited to take part in a 7-week protocol. Following 1 week of baseline measurements, participants will be randomised into one of three groups: group 1- glucose feedback followed by biobehavioural feedback (glucose plus PA); group 2-PA feedback followed by biobehavioural feedback; group 3-biobehavioural feedback. A PA monitor and a flash glucose monitor will be deployed during the intervention. Participants will wear both devices throughout the intervention but blinded to feedback depending on group allocation. The primary outcome is the level of participant engagement and will be assessed by device use and smartphone usage. Feasibility will be assessed by the practicality of the technology and screening for diabetes risk. Semistructured interviews will be conducted to explore participant experiences using the technologies. TRIAL REGISTRATION NUMBER: ISRCTN17545949. Registered on 15/05/2017. © Article author(s) (or their employer(s) unless otherwise stated in the text of the article) 2017. All rights reserved. No commercial use is permitted unless otherwise expressly granted.Entities:
Keywords: activity trackers; bio-behavioural feedback; flash glucose monitoring; physical activity; prevention; type 2 diabetes
Mesh:
Substances:
Year: 2017 PMID: 28993396 PMCID: PMC5640007 DOI: 10.1136/bmjopen-2017-018282
Source DB: PubMed Journal: BMJ Open ISSN: 2044-6055 Impact factor: 2.692
Figure 1An illustration of the intervention design (*indicates a brief appointment at 4 weeks).
An overview of the feasibility components to be assessed
| Feasibility component | Data source (indicator of feasibility) |
| Practicality of technology/intervention |
Qualitative interviews Fitabase (sync compliance, missing data and response to haptic prompt) LibreLinkUp (scan compliance) Diasend (missing data, identification of glucose sensor sensor-related issues) Project records (identification of need to dispatch additional glucose sensors, number of individuals screened, rate of eligibility, study uptake and retention) Ethica data (data sources, enrolment into full* or restricted† coverage) |
| Acceptability of technology/intervention |
Qualitative interviews Fitabase (activity tracker wear time) Diasend (glucose sensor wear time, digital footprint of time taken to move onto the next glucose sensor that is, sensor delay?) Project records (changes to goal settings, manual withdrawals, attendance at appointments, retention to follow-up) Ethica data (digital footprint of application usage, Bluetooth and Wi-Fi status, battery status, electronic withdrawal) |
*Full coverage: application usage, screen state, Bluetooth, Wi-Fi, GPS, pedometer, accelerometer, gravity, gyroscope, linear acceleration, magnetic field, orientation, battery and survey responses.
†Restricted coverage: application usage, screen state and survey responses.
GPS, global positioning system
Figure 2A schematic of how the wearable technologies, mobile applications and software connect.