Effectiveness of the mHealth intervention ‘MyDayPlan’ to increase physical activity: an aggregated single case approach

Abstract Background e- and mHealth interventions using self-regulation techniques like action and coping planning have the potential to tackle the worldwide problem of physical inactivity. However, they often use one-week self-regulation cycles, providing support toward an active lifestyle on a week...

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Main Authors: L. Degroote, A. De Paepe, I. De Bourdeaudhuij, D. Van Dyck, G. Crombez
Format: Article
Language:English
Published: BMC 2021-07-01
Series:International Journal of Behavioral Nutrition and Physical Activity
Online Access:https://doi.org/10.1186/s12966-021-01163-2
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spelling doaj-f529a8ca60e84590b83cff0ff89e95362021-07-11T11:52:31ZengBMCInternational Journal of Behavioral Nutrition and Physical Activity1479-58682021-07-0118111210.1186/s12966-021-01163-2Effectiveness of the mHealth intervention ‘MyDayPlan’ to increase physical activity: an aggregated single case approachL. Degroote0A. De Paepe1I. De Bourdeaudhuij2D. Van Dyck3G. Crombez4Department of Movement and Sport Sciences, Ghent UniversityDepartment of Clinical-Experimental and Health Psychology, Ghent UniversityDepartment of Movement and Sport Sciences, Ghent UniversityDepartment of Movement and Sport Sciences, Ghent UniversityDepartment of Clinical-Experimental and Health Psychology, Ghent UniversityAbstract Background e- and mHealth interventions using self-regulation techniques like action and coping planning have the potential to tackle the worldwide problem of physical inactivity. However, they often use one-week self-regulation cycles, providing support toward an active lifestyle on a weekly basis. This may be too long to anticipate on certain contextual factors that may fluctuate from day to day and may influence physical activity. Consequently, the formulated action and coping plans often lack specificity and instrumentality, which may decrease effectiveness of the intervention. The aim of this study was to evaluate effectiveness of a self-regulation, app-based intervention called ‘MyDayPlan’. “MyDayPlan’ provides an innovative daily cycle in which users are guided towards more physical activity via self-regulation techniques such as goal setting, action planning, coping planning and self-monitoring of behaviour. Methods An ABAB single-case design was conducted in 35 inactive adults between 18 and 58 years (M = 40 years). The A phases (A1 and A2) were the control phases in which the ‘MyDayPlan’ intervention was not provided. The B phases (B1 and B2) were the intervention phases in which ‘MyDayPlan’ was used on a daily basis. The length of the four phases varied within and between the participants. Each phase lasted a minimum of 5 days and the total study lasted 32 days for each participant. Participants wore a Fitbit activity tracker during waking hours to assess number of daily steps as an outcome. Single cases were aggregated and data were analysed using multilevel models to test intervention effects and possible carry-over effects. Results Results showed an average intervention effect with a significant increase in number of daily steps from the control to intervention phases for each AB combination. From A1 to B1, an increase of 1424 steps (95% CI [775.42, 2072.32], t (1082) = 4.31,p < .001), and from A2 to B2, an increase of 1181 steps (95% CI [392.98, 1968.16], t (1082) = 2.94, p = .003) were found. Furthermore, the number of daily steps decreased significantly (1134 steps) when going from the first intervention phase (B1) to the second control phase (A2) (95% CI [− 1755.60, − 512.38], t (1082) = − 3.58, p < .001). We found no evidence for a difference in trend between the two control (95% CI [− 114.59, 197.99], t (1078) = .52, p = .60) and intervention phases (95% CI [− 128.79,284.22], t (1078) = .74, p = .46). This reveals, in contrast to what was hypothesized, no evidence for a carry-over effect after removing the ‘MyDayPlan’ app after the first intervention phase (B1). Conclusion This study adds evidence that the self-regulation mHealth intervention, ‘MyDayPlan’ has the capacity to positively influence physical activity levels in an inactive adult population. Furthermore, this study provides evidence for the potential of interventions adopting a daily self-regulation cycle in general.https://doi.org/10.1186/s12966-021-01163-2
collection DOAJ
language English
format Article
sources DOAJ
author L. Degroote
A. De Paepe
I. De Bourdeaudhuij
D. Van Dyck
G. Crombez
spellingShingle L. Degroote
A. De Paepe
I. De Bourdeaudhuij
D. Van Dyck
G. Crombez
Effectiveness of the mHealth intervention ‘MyDayPlan’ to increase physical activity: an aggregated single case approach
International Journal of Behavioral Nutrition and Physical Activity
author_facet L. Degroote
A. De Paepe
I. De Bourdeaudhuij
D. Van Dyck
G. Crombez
author_sort L. Degroote
title Effectiveness of the mHealth intervention ‘MyDayPlan’ to increase physical activity: an aggregated single case approach
title_short Effectiveness of the mHealth intervention ‘MyDayPlan’ to increase physical activity: an aggregated single case approach
title_full Effectiveness of the mHealth intervention ‘MyDayPlan’ to increase physical activity: an aggregated single case approach
title_fullStr Effectiveness of the mHealth intervention ‘MyDayPlan’ to increase physical activity: an aggregated single case approach
title_full_unstemmed Effectiveness of the mHealth intervention ‘MyDayPlan’ to increase physical activity: an aggregated single case approach
title_sort effectiveness of the mhealth intervention ‘mydayplan’ to increase physical activity: an aggregated single case approach
publisher BMC
series International Journal of Behavioral Nutrition and Physical Activity
issn 1479-5868
publishDate 2021-07-01
description Abstract Background e- and mHealth interventions using self-regulation techniques like action and coping planning have the potential to tackle the worldwide problem of physical inactivity. However, they often use one-week self-regulation cycles, providing support toward an active lifestyle on a weekly basis. This may be too long to anticipate on certain contextual factors that may fluctuate from day to day and may influence physical activity. Consequently, the formulated action and coping plans often lack specificity and instrumentality, which may decrease effectiveness of the intervention. The aim of this study was to evaluate effectiveness of a self-regulation, app-based intervention called ‘MyDayPlan’. “MyDayPlan’ provides an innovative daily cycle in which users are guided towards more physical activity via self-regulation techniques such as goal setting, action planning, coping planning and self-monitoring of behaviour. Methods An ABAB single-case design was conducted in 35 inactive adults between 18 and 58 years (M = 40 years). The A phases (A1 and A2) were the control phases in which the ‘MyDayPlan’ intervention was not provided. The B phases (B1 and B2) were the intervention phases in which ‘MyDayPlan’ was used on a daily basis. The length of the four phases varied within and between the participants. Each phase lasted a minimum of 5 days and the total study lasted 32 days for each participant. Participants wore a Fitbit activity tracker during waking hours to assess number of daily steps as an outcome. Single cases were aggregated and data were analysed using multilevel models to test intervention effects and possible carry-over effects. Results Results showed an average intervention effect with a significant increase in number of daily steps from the control to intervention phases for each AB combination. From A1 to B1, an increase of 1424 steps (95% CI [775.42, 2072.32], t (1082) = 4.31,p < .001), and from A2 to B2, an increase of 1181 steps (95% CI [392.98, 1968.16], t (1082) = 2.94, p = .003) were found. Furthermore, the number of daily steps decreased significantly (1134 steps) when going from the first intervention phase (B1) to the second control phase (A2) (95% CI [− 1755.60, − 512.38], t (1082) = − 3.58, p < .001). We found no evidence for a difference in trend between the two control (95% CI [− 114.59, 197.99], t (1078) = .52, p = .60) and intervention phases (95% CI [− 128.79,284.22], t (1078) = .74, p = .46). This reveals, in contrast to what was hypothesized, no evidence for a carry-over effect after removing the ‘MyDayPlan’ app after the first intervention phase (B1). Conclusion This study adds evidence that the self-regulation mHealth intervention, ‘MyDayPlan’ has the capacity to positively influence physical activity levels in an inactive adult population. Furthermore, this study provides evidence for the potential of interventions adopting a daily self-regulation cycle in general.
url https://doi.org/10.1186/s12966-021-01163-2
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