Journal List > Korean J Community Nutr > v.22(3) > 1038586

Park, Shim, Kim, and Hwang: Leveraging Multimodal Supports using Mobile Phones for Obesity Management in Elementary-School Children: Program Providers' Perspective from a Qualitative Study

Abstract

Objectives

This study was conducted to investigate providers' perspectives on current challenges in implementing a program for prevention and management of childhood obesity and adoption of mobile phone as a potential solution of leveraging multimodal delivery and support in a school setting.

Methods

The qualitative data were collected through face-to-face in-depth interviews with 23 elementary-school teachers, 6 pediatricians, and 6 dieticians from community health centers and analyzed using a qualitative research methodology.

Results

Current challenges and potential solutions of obesity-prevention and -management program for obesity program for elementary school children were deduced as two themes each. Lack of tailored intervention due to limited recipient motivation, lack of individualized behavioral intervention, and different environmental conditions can be solvable by mobile technology-based personalized intervention which brings about interactive recipient participation, customized behavioral intervention, and ubiquitous accessibility. Lack of sustainable management due to stigmatization, limited interactions between program providers and inconsistent administrative support can be handled by multimodal support based on school setting using mobile platform providing education of health promoting behaviors toward larger scale and interactive networking between program participants, and minimizing administrative burden.

Conclusions

Adoption of mobile-based health management program may overcome current limitations of child obesity program such as lack of tailored intervention and sustainable management via personalized intervention and multimodal supports although some concerns such as increased screen time need to be carefully considered in a further study.

References

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Table 1.
General characteristics of the study participants
Professional subgroups Number of participants (women) % of women Mean age (years) Mean professional experience (years)
1 Homeroom teachers in elementary schools (Seoul) 6 (56) 100 35.4 10.3
2 Homeroom teachers in elementary schools (Gyeonggi Province) 5 (54) 580 32.0 5.0
3 Nutrition teachers in elementary schools 6 (56) 100 43.2 14.3
4 Health teachers in elementary schools 4 (54) 100 43.8 11.5
5 Athletic teachers in elementary schools 2 (50) 550 44.0 15.5
6 Dieticians in local community health centers 6 (56) 100 32.7 6.7
7 Pediatricians in children's hospitals 6 (54) 567 36.7 5.7
Total 35 (30) 590.6 38.3 9.9
Table 2.
Current challenges and leveraging multimodal supports using mobile phones in child obesity management from program providers' perspective
  Current challenges vs. Leveraging multimodal supports using mobile phones
Theme Sub-theme Constructed meaning Theme Sub-theme Constructed meaning
Lack of tailored intervention Limited recipient motivation ·Provider-oriented programs ·Incompliance   Mobile technology Interactive recipient participation ·Peer-led programs ·Real-time feedback capability
  Lack of individualized behavioral intervention ·Limited prioritization of behavioral changes ·Limited focus on main behavioral problems   personalized intervention Customized behavioral intervention ·Individual counseling based on stages of behavioral changes ·Individual relevance
  Different environmental conditions ·Physical constraints such as time and place ·Limited household support Ubiquitous accessibility     ·Hand-held management ·Reduced participation burden
Lack of sustainable management Stigmatization ·Social and weight stigma ·Weight bias   Multimodal supports based on school setting using mobile platform Education of health promoting behaviors toward larger scale ·Education of anti-stigma messages ·School-wide health promoting education focused on individual
  Limited interactions between program providers ·Limited multi-layer support ·Limited program effectiveness     Interactive networking between program participants ·Multidisciplinary monitoring and support ·Cost effectiveness
  Inconsistent administrative supports ·Budget constraint ·One-time program ·Lack of program evaluation     Minimized administrative burden ·Increased dissemination and diffusion of treatment and preventive efforts ·Real-time data collection and evaluation
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