Development of a smartphone application for clinical-guideline-based obesity management

Eunjoo Jeon, Hyeoun-Ae Park, Eunjoo Jeon, Hyeoun-Ae Park

Abstract

Objectives: The purpose of the study was to develop and evaluate a clinical-guideline-based smartphone application ('app') for obesity management.

Methods: Obesity-related knowledge and functional requirements were extracted from clinical practice guidelines, a literature review, and consultations with experts. The extracted knowledge was used to design obesity-management algorithms, and the functions of the developed app are presented through a use case diagram and activity diagrams. The database and user interface were designed and then an app was developed. The proficiency and efficiency of the algorithm were evaluated using scenarios, while the user interface was assessed using a mobile heuristics evaluation tool, with its usability determined using the Post-Study System Usability Questionnaire.

Results: In total, 131 obesity-related knowledge statements and 11 functions for the app were extracted, and 5 algorithms (comprising 1 main algorithm and 4 subalgorithms) were developed. The database comprised 11 tables and 41 screens. The app was developed using the Android SDK platform 4.0.3, JDK 1.7.0, and Eclipse. The overall proficiency and efficiency scores of the algorithm were 88.0 and 69.1, respectively. In heuristics tests, 57 comments were made, and the mean usability score was 3.47 out of 5. Thirteen usability problems were identified by the heuristics and usability evaluations.

Conclusions: The app developed in this study might be helpful for weight management because it can provide high-quality health information and intervention without spatial or temporal constraints. However, the clinical effectiveness of this app still requires further investigation.

Keywords: Mobile Health Units; Obesity; Practice Guideline; Telemedicine; Weight Loss.

Conflict of interest statement

No potential conflict of interest relevant to this article was reported.

Figures

Figure 1
Figure 1
Study outline and research procedure.
Figure 2
Figure 2
Main algorithm for the obesity management application.
Figure 3
Figure 3
Use case diagram for the obesity management application
Figure 4
Figure 4
Activity diagram of assessment.
Figure 5
Figure 5
Database of the obesity management application.
Figure 6
Figure 6
Screenshots of the obesity management application.

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