Document Type
Article
Publication Date
1-1-2022
Publication Title
Applied Sciences (Switzerland)
Volume
12
Issue
2
First page number:
1
Last page number:
12
Abstract
With the prevalence of obesity in adolescents, and its long-term influence on their overall health, there is a large body of research exploring better ways to reduce the rate of obesity. A traditional way of maintaining an adequate body mass index (BMI), calculated by measuring the weight and height of an individual, is no longer enough, and we are in need of a better health care tool. Therefore, the current research proposes an easier method that offers instant and real-time feedback to the users from the data collected from the motion sensors of a smartphone. The study utilized the mHealth application to identify participants presenting the walking movements of the high BMI group. Using the feedforward deep learning models and convolutional neural network models, the study was able to distinguish the walking movements between nonobese and obese groups, at a rate of 90.5%. The research highlights the potential use of smartphones and suggests the mHealth application as a way to monitor individual health.
Keywords
Adolescent health; Deep learning; Mobile health application; Mobile sensor data; Obesity
Disciplines
Human Factors Psychology | Medical Nutrition
File Format
File Size
1705 KB
Rights
IN COPYRIGHT. For more information about this rights statement, please visit http://rightsstatements.org/vocab/InC/1.0/
Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 License.
Repository Citation
Lee, S.,
Hwang, E.,
Kim, Y.,
Demir, F.,
Lee, H.,
Mosher, J.,
Jang, E.,
Lim, K.
(2022).
Mobile Health App for Adolescents: Motion Sensor Data and Deep Learning Technique to Examine the Relationship Between Obesity and Walking Patterns.
Applied Sciences (Switzerland), 12(2),
1-12.
http://dx.doi.org/10.3390/app12020850