Deleterious Effect of Participant Positioning on the Acceptability and Acceptance of a Wellness Management System under Development
Abstract
:1. Introduction
2. Description of SHERPAM Platform
- Extensibility: since distinct pathologies may require different types of data, the system is not limited to a pre-defined, unchanging set of sensors. On the contrary it is scalable so that it can easily accommodate new types of sensors or data processing algorithms if required.
- Self-sufficiency: the system allows that data acquired by sensors to be processed either “locally” or on a remote site. Local processing makes it possible for the sensing system worn by a subject to run autonomously—although possibly in a degraded mode—when no communication network is available. In contrast remote processing makes it possible to run advanced (CPU intensive) algorithms on the data acquired by the sensors. An aggregation server for data collection. This segment, like the previous one, is equipped with all the necessary means for encryption and data security.
- Agility: the system is agile in terms of network connectivity. It switches between cellular networks (2.5G/3G/4G) and Wi-Fi hotspots depending on their availability, but also other parameters such as the nature of the data to be transmitted or the power consumption related to the use of each type of network.
- Disruption-tolerance: Transmissions in the system are “bundle-oriented”, which allows network disruptions to be tolerated (including long disruptions as can be observed in “white zones” that are not covered by any wireless network) without ever losing important data.
- The addition of real-time feedback to the user of the collected data that can be consulted during the physical activity session (duration, speed, distance, heart rate, and respiratory rate).
- The modification of the visual codes of the application.
- The modification of the words used on the application so that they can be understood by the largest number of people.
- The importance of reducing the number of sensors in order to ease its installation.
- The importance of reviewing the display and taking into account the difficulty of reading the data in real time.
- The importance of restructuring the server interfaces in order to offer users the possibility to consult their history.
- Various technical issues such as Bluetooth connectivity between sensors and smartphone.
- This also allowed the development of a user manual to facilitate the use of the device.
3. The Acceptability and Acceptance Study of SHERPAM
3.1. Participants
3.2. Procedure
3.3. Measures
3.3.1. Qualitative Measure
3.3.2. Qualitative Data Analysis
- The first identifies the relationship with the technology endorsed by the participant, which leads him either to remain in his role as a tester (“T” category, which includes judgments against the technology) or to project himself as a future user (“U” category, which includes judgments about himself as a user).
- The second axis determines the valence of this response (favorable, “+”, or unfavorable, “-”, to the monitoring system).
3.3.3. Quantitative Measure
3.3.4. Quantitative Data Analysis
4. Results
4.1. Qualitative Study of Acceptability According to the Role Assumed
4.2. Quantitative Acceptability Study
4.2.1. Analysis at D0
4.2.2. Analysis at D + 21
5. Discussion
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
References
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U+ | U− | T+ | T− | |
---|---|---|---|---|
D0 | “Can allow me to detect an anomaly and see if I’m not too far in the red”; “Allows me to evaluate a person’s cardiac capacity, how far they can go and schedule workouts”; “It will reassure my wife”; “It reassures me to be monitored” | “Does not show the most interesting data”; “I am already equipped: this tool can generate stress and over-control”; “I am afraid of doing something stupid.” | “Real-time data”; “Discrete device” | “Bad ergonomics: too many devices to carry”; “I couldn’t look at it while I was pedaling”; “It lacks geolocation to call for help”; “The use seems complex” |
D + 21 | “Allows you to know what you have done and have cardio data”; “Allows for activity tracking and remote control”; “Allows me to manage my effort by looking at the phone during the activity” | “I already have the information with my meter”; “I don’t know how to analyze the information it gives me”; “I am already equipped”; “I don’t need this” | “The data transmission function is good; “The belt is nice»; “Once you get the hang of it, it’s good.” | “Setup time for short trips”; “Lack of history”; “The belt is awkward behind, on the spine and the ribs”; “The devices are awkward for walking”; “The belt is awkward on the back”; “The belt is awkward on the spine and the ribs”; “The belt is awkward on the back”; “Devices are awkward for walking”; “Heart rate data is not accurate” |
Role Mobilized for the Response | N | Valence | N | % |
---|---|---|---|---|
Future User (U) | 266 | + | 195 | 30.9% |
- | 71 | 11.2% | ||
Taster (T) | 200 | + | 20 | 3.2% |
- | 180 | 28.5% | ||
Subtotal | 466 | 73.7% | ||
N/A | 166 | 26.3% | ||
Total | 632 | 100.0% |
Dimension | Role | M | Mean Difference | SE Difference | t | Cohen’s d |
---|---|---|---|---|---|---|
Performance Expectancy | U | 4.37 | 1.172 | 0.494 | 2.372 * | 0.828 |
T | 3.19 | |||||
Effort Expectancy | U | 5.35 | 0.157 | 0.290 | 0.543 | 0.189 |
T | 5.19 | |||||
Social Influence | U | 4.13 | 0.913 | 0.462 | 1.976. | 0.690 |
T | 3.22 | |||||
Facilitating Conditions | U | 4.78 | 0.946 | 0.534 | 1.770. | 0.618 |
T | 3.83 | |||||
Behavioral Intention | U | 5.25 | 1.319 | 0.494 | 2.668 * | 0.931 |
T | 3.93 |
Performance Expectancy | Effort Expectancy | Social Influence | Facilitating Conditions | Behavioral Intention | |
---|---|---|---|---|---|
Performance Expectancy | — | ||||
Effort Expectancy | 0.555 * | — | |||
Social Influence | — | ||||
Facilitating Conditions | 0.735 *** | 0.523 * | — | ||
Behavioral Intention | 0.473 * | — |
Performance Expectancy | Effort Expectancy | Social Influence | Facilitating Conditions | Behavioral Intention | |
---|---|---|---|---|---|
Performance Expectancy | — | ||||
Effort Expectancy | 0.740 *** | — | |||
Social Influence | — | ||||
Facilitating Conditions | 0.680 *** | 0.538 * | 0.622 ** | — | |
Behavioral Intention | 0.520 * | 0.519 * | 0.731 *** | — |
Dimension | D | M | Mean Difference | SE Difference | t | Cohen’s d |
---|---|---|---|---|---|---|
Performance Expectancy | 0 | 4.50 | 1.0042 | 0.234 | 4.295 *** | 0.9604 |
21 | 3.50 | |||||
Effort Expectancy | 0 | 5.30 | -0.0409 | 0.175 | -0.234 | -0.0523 |
21 | 5.35 | |||||
Social Influence | 0 | 4.04 | 0.4417 | 0.291 | 1.516 | 0.3391 |
21 | 3.60 | |||||
Facilitating Conditions | 0 | 4.88 | 0.7750 | 0.268 | 2.108 * | 0.4714 |
21 | 4.10 | |||||
Behavioral Intention | 0 | 5.30 | 1.0625 | 0.410 | 2.588 * | 0.5788 |
21 | 4.24 |
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Lemoine, F.; Nadarajah, K.; Carrault, G.; Guguen-Allain, A.; Somat, A. Deleterious Effect of Participant Positioning on the Acceptability and Acceptance of a Wellness Management System under Development. Appl. Sci. 2021, 11, 11250. https://doi.org/10.3390/app112311250
Lemoine F, Nadarajah K, Carrault G, Guguen-Allain A, Somat A. Deleterious Effect of Participant Positioning on the Acceptability and Acceptance of a Wellness Management System under Development. Applied Sciences. 2021; 11(23):11250. https://doi.org/10.3390/app112311250
Chicago/Turabian StyleLemoine, Fabien, Kévin Nadarajah, Guy Carrault, Anaïs Guguen-Allain, and Alain Somat. 2021. "Deleterious Effect of Participant Positioning on the Acceptability and Acceptance of a Wellness Management System under Development" Applied Sciences 11, no. 23: 11250. https://doi.org/10.3390/app112311250
APA StyleLemoine, F., Nadarajah, K., Carrault, G., Guguen-Allain, A., & Somat, A. (2021). Deleterious Effect of Participant Positioning on the Acceptability and Acceptance of a Wellness Management System under Development. Applied Sciences, 11(23), 11250. https://doi.org/10.3390/app112311250