Tailoring mHealth Apps on Users to Support Behavior Change Interventions: Conceptual and Computational Considerations
Abstract
:1. Introduction
2. Related Work
- Ergonomic: the UX is focused on the human–system interaction from the usability, performance, affordances, effectiveness, and user’s behavior;
- Cognitive: the UX focus is on the system perception and understanding by humans, in particular from the functional and aesthetic points of view;
- Emotions: the UX concerns how the users feel, in terms of pleasure, empathy, hedonistic values, social values, affection, and so on.
3. Materials and Methods
3.1. The Core of a Wearable Expert System
3.2. Personalization Level Improvement in MoveUp
- some cases are not clearly attributable to a specific class;
- classes numerosity could diverge in case of different case characterization.
4. A New Approach
4.1. Goal Index
4.2. Physical Activity Index
4.3. Psychological Index
4.4. An Example
- a user CU is considered capable iff ;
- a user CU is considered slow but gradual iff ;
- a user CU is considered complicated iff ;
- a user CU is considered staticl iff .
5. Implementation and Use in MoveUp
6. User Experience Evaluation
6.1. Involvement Evaluation
6.2. Computational Model Evaluation
6.3. Discussion
- users profiled by the system proposing a group PA session on the shared calendar;
- users profiled by the systems who accept joining a group PA session on a shared calendar proposed by peers.
- Profile, which is used to define the type of user according to different scales;
- Need for cognition, which describes users based on their differences in motivation to engage in effortful cognitive endeavors;
- Perception of the social norm, referring to the perceived social pressure to perform or not to perform a given behavior;
- App functionalities, which refers to the services provided by the application to the user, such as reminders or self-monitoring;
- Gamification, concerning gaming features that can be personalized, like goal settings or progressions.
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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User | MET | SE | ||||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
29 | 120 | 240 | 360 | 360 | 480 | 480 | 600 | 480 | 7 | 7 | 3 | 8 | 2 | 6 | 2 | 4 |
6 | 120 | 240 | 360 | 480 | 360 | 480 | 480 | 600 | 6 | 6 | 6 | 2 | 6 | 4 | 8 | 4 |
= | = | = | − | + | = | + | − | + | + | − | + | − | + | − | = |
Index Goal Characterization based on Equation (5) | ||||||||
---|---|---|---|---|---|---|---|---|
A | 120 | 240 | 360 | 480 | 360 | 480 | 480 | 600 |
B | 120 | 240 | 360 | 360 | 360 | 480 | 480 | 360 |
C | 120 | 240 | 240 | 240 | 360 | 480 | 360 | 240 |
D | 120 | 120 | 240 | 120 | 120 | 240 | 120 | 120 |
Physical Activity Characterization based on Equation (8) | ||||||||
A | 251 | 278 | 385 | 388 | 520 | 515 | 535 | 498 |
B | 282 | 293 | 389 | 392 | 402 | 496 | 378 | 320 |
C | 187 | 251 | 262 | 305 | 310 | 382 | 405 | 310 |
D | 110 | 140 | 125 | 115 | 125 | 134 | 116 | 115 |
Psychological index characterization based on Equation (10) | ||||||||
A | 6 | 6 | 6 | 2 | 6 | 4 | 8 | 4 |
B | 6 | 5 | 4 | 4 | 6 | 4 | 4 | 4 |
C | 6 | 4 | 4 | 6 | 6 | 4 | 4 | 4 |
D | 6 | 6 | 2 | 2 | 7 | 2 | 2 | 2 |
Question | Aspect/Category | Possible Answers |
---|---|---|
Q1: Did the app live up to your expectations? | Development process/Satisfaction | Yes/Somewhat/No |
Q2: Was the information provided by the app useful to you? | Functionality/Useful information | Yes/Somewhat/No |
Q3: What do you think about the app icons and images? | Aesthetics/Images | Good/Fair/Bad |
Q4: What would you change in the app? | Infrastructure/Modifications | GUI/Suggestions/ Entertainment |
Q5: Would you keep using the app? | Everyday operations/Keep using | Yes/Somewhat/No |
Q6: Would you recommend this app to others? | Trustworthiness/Recommendation | Yes/Somewhat/No |
Q7: Did you like the app methods? | Method/Assessment | Yes/Somewhat/No |
Q8: Do you feel better performing suggested physical activity in a group or alone? | Method/Assessment | Group/Alone |
Q9: If you have performed the last physical activity session alone, do you feel ready to do it in a group next time? | Emotional/Feeling | Yes/Somewhat/No |
Q10: If you have performed the last physical activity session in a group, do you think you will continue next time? | Emotional/Feeling | Yes/Somewhat/No |
Q11: If you have performed the last physical activity session in a group, do you feel able to join a group with a profile higher than yours? | Emotional/Feeling | Yes/Somewhat/No |
Participant | Answers to Questions in Table 3 | ||
---|---|---|---|
Leveret | None | Y/S/G/S/Y/Y/S/A/N/-/- | |
Leveret | Leveret | Y/Y/F/GS/S/Y/Y/A/Y/-/- | |
Y/Y/F/GS/Y/Y/Y/G/-/Y/S | |||
Cheetah | Cheetah | S/S/F/GSE/Y/Y/Y/A/N/-/- | |
S/S/F/GSE/Y/Y/Y/A/N/-/- | |||
Undefined | None | N/S/F/GSE/N/N/S/G/-/Y/S | |
Turtle | None | Y/Y/B/G/S/S/S/G/-/Y/Y | |
Undefined | None | No answers given | |
Leveret | Cat | Y/Y/G/E/Y/Y/Y/A/Y/-/- | |
Y/Y/F/GE/Y/Y/Y/G/-/Y/N | |||
Leveret | None | No answers given | |
Cheetah | Cheetah | Y/S/G/S/Y/Y/S/A/Y/-/- | |
Y/S/F/GS/Y/Y/S/G/-/Y/Y | |||
Cat | None | N/N/F/S/N/N/N/A/N/-/- | |
Leveret | Leveret | Y/S/G/SE/S/S/S/G/-/Y/N | |
Y/S/G/SE/S/S/S/G/-/Y/S | |||
Leveret | Cheetah | S/Y/F/S/S/S/S/A/N/-/- | |
S/S/F/S/N/N/N/A/N/-/- | |||
Cheetah | None | N/N/B/GSE/N/N/Y/A/S/-/- |
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Sartori, F.; Savi, M.; Talpini, J. Tailoring mHealth Apps on Users to Support Behavior Change Interventions: Conceptual and Computational Considerations. Appl. Sci. 2022, 12, 3782. https://doi.org/10.3390/app12083782
Sartori F, Savi M, Talpini J. Tailoring mHealth Apps on Users to Support Behavior Change Interventions: Conceptual and Computational Considerations. Applied Sciences. 2022; 12(8):3782. https://doi.org/10.3390/app12083782
Chicago/Turabian StyleSartori, Fabio, Marco Savi, and Jacopo Talpini. 2022. "Tailoring mHealth Apps on Users to Support Behavior Change Interventions: Conceptual and Computational Considerations" Applied Sciences 12, no. 8: 3782. https://doi.org/10.3390/app12083782
APA StyleSartori, F., Savi, M., & Talpini, J. (2022). Tailoring mHealth Apps on Users to Support Behavior Change Interventions: Conceptual and Computational Considerations. Applied Sciences, 12(8), 3782. https://doi.org/10.3390/app12083782