Development and Effects of Cognitive Behavior-Based Healing Programs Using Mobile Apps
Abstract
:1. Introduction
2. Materials and Methods
2.1. App Development Process
2.1.1. Structural Design
2.1.2. User Interface Design
- Two tools were used for stress. The first was the Perceived Stress Scale (PSS), developed by Cohen, Kamarck, and Mermelstein [16]. It is a Korean version of the PSS (PS-10)—a tool developed to assess the awareness of subjective stress. It comprises six items that measure negative awareness and four items that measure positive awareness. It evaluates the past month and provides a score from 0 to 4 per item (range = 0–40), and higher scores indicate greater stress awareness. Cronbach’s α was 0.89. Second, we used the effort–reward imbalance (ERI), a tool translated by Hwang, Hong, and Kang [17] based on a tool developed by Siegrist [18]. The ERI measures work-related stress, and Cronbach’s α was 0.80.
- Depression was based on the Patient Health Questionnaire-9 (PHQ-9) score, a self-reporting evaluation measure developed by Kroenke, et al. [19]. We used the Korean version of PHQ-9 by Lee, et al. [20]. Participants were to answer the level of symptoms experienced in the past two weeks based on frequency. Scores ranged from 0 to 27, and higher scores indicated higher depression levels. Cronbach’s α was 0.89.
- Anxiety was measured with the General Anxiety Disorder-7 (GAD-7), a seven-item self-reporting assessment tool developed by Spitzer, et al. [21]. The GAD-7 was designed based on Diagnostic and Statistical Manual of Mental Disorders (DSM)-IV diagnosis criteria to enable a GAD diagnosis. Cronbach’s α was 0.92.
- Emotional labor was measured with the Korean Emotional Labor Scale (K-ELS) by Lee, et al. [22]. It was designed to quantitatively and objectively evaluate the level and intensity of emotional labor and the negative emotional responses caused by emotional labor, which reflects the specific nature of Korea’s organizational culture and service industry. The K-ELS consists of 24 questions measured on a 4-point scale. Cronbach’s α was 0.79.
- Well-being was based on the WHO-5 well-being score. This was measured with five questions on a 6-point scale covering the past two weeks. Higher scores indicate better well-being [23].
2.2. Assessment of App Effectiveness
2.2.1. Research Design
2.2.2. Participants
2.3. Research Procedure
2.3.1. Ethical Aspects
2.3.2. App Development
2.4. Data Analysis
3. Results
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
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Category | n (%) | Mean ± SD | ||
---|---|---|---|---|
Gender | Male | 22 (25.9) | ||
Female | 63 (74.1) | |||
Age (yr) | 30 and younger | 11 (12.9) | ||
31–40 | 28 (32.9) | |||
41–50 | 36 (42.4) | |||
51 and older | 6 (11.8) | |||
Marriage | Unmarried | 24 (28.2) | ||
Married | 61 (71.8) | |||
Education | High shcool | 7 (8.2) | ||
College | 58 (68.2) | |||
Beyond college | 20 (23.5) | |||
Income (millon Won) | <200 | 8 (9,.4) | ||
200 ~ <400 | 22 (25.9) | |||
≥400 | 55 (64.7) | |||
BMI | Low weight | 1 (1.2) | 23.17 ± 2.71 | |
Normal | 51 (60.0) | |||
Overweight | 9 (10.6)) | |||
Obesity | 24 (28.2) | |||
Height | 164.47 ± 7.06 | |||
Weight | 62.97 ± 10.04 | |||
Working time | 8.25 ± 1.85 | |||
Blood pressure | DBP | 118.53 ± 11.76 | ||
SBP | 77.42 ± 9.37 | |||
Health Status | Physical health | Not good | 10(11.8) | 3.3.4 ± 0.76 |
Average | 41(48.2) | |||
Good | 34(40.0) | |||
Mental health | Not good | 8(9.4) | 3.46 ± 0.74 | |
Average | 35(41.2) | |||
Good | 42(49.5) |
Variables | Pre-Test (M ± SD) | Post-Test (M ± SD) | t | p | |
---|---|---|---|---|---|
Stress | PSS | 15.56 ± 3.56 | 16.80 ± 3.67 | −3.431 | 0.001 |
ERI | 35.49 ± 4.55 | 35.67 ± 4.4.4 | −0.423 | 0.673 | |
Depression | 5.65 ± 4.53 | 4.80 ± 4.00 | 2.052 | 0.043 | |
Anxiety | 3.92 ± 3.69 | 2.76 ± 2.85 | 3.037 | 0.003 | |
Emotional labor | 55.77 ± 11.65 | 55.37 ± 11.82 | 0.343 | 0.732 | |
Well-being | 51.62 ± 22.99 | 49.93 ± 22.92 | 0.689 | 0.493 | |
PPG | 73.46 ± 5.43 | 64.83 ± 10.07 | 3.415 | 0.002 |
Question | Strongly Disagree | Disagree | Agree | Strongly Agree |
---|---|---|---|---|
Recognize the need for mental health management | 2(2.4) | 7(8.2) | 57(67.1) | 12(14.1) |
Increased mental health management knowledge | 2(2.4) | 16(18.8) | 49(57.9) | 11(12.9) |
Improving your attitude toward mental health | 3(3.5) | 13(15.3) | 54(63.5) | 8(9.4) |
Motivation for stress management | 1(1.2) | 13(15.3) | 52(61.2) | 12(14.1) |
Request for help | 2(2.4) | 18(21.2) | 45(52.9) | 13(15.3) |
Behavior change | 3(3.5) | 23(27.1) | 46(54.1) | 6(7.1) |
Question | Item | n (%) | |
---|---|---|---|
Satisfaction with app | Dissatisfied | 6(7.1) | |
Usually | 38(44.7) | ||
Satisfied | 34(40.0) | ||
Would you recommend the app to others? | Nobody at all | 1(1.2) | |
Few people | 18(21.2) | ||
To a few people | 43(50.6) | ||
To many people | 11(12.9) | ||
To almost everyone | 5(5.9) | ||
Subjective opinion | Benefits | Instant inspection result confirmation and interpretation Healing program that can be applied quickly and in a short time Various programs Easy to use, available anywhere | |
Suggestions | Simplified survey Added alarm function for continuous use and interest Continuous content update Clarity of the user manual |
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Hwang, W.J.; Jo, H.H. Development and Effects of Cognitive Behavior-Based Healing Programs Using Mobile Apps. Int. J. Environ. Res. Public Health 2021, 18, 3334. https://doi.org/10.3390/ijerph18073334
Hwang WJ, Jo HH. Development and Effects of Cognitive Behavior-Based Healing Programs Using Mobile Apps. International Journal of Environmental Research and Public Health. 2021; 18(7):3334. https://doi.org/10.3390/ijerph18073334
Chicago/Turabian StyleHwang, Won Ju, and Hyun Hee Jo. 2021. "Development and Effects of Cognitive Behavior-Based Healing Programs Using Mobile Apps" International Journal of Environmental Research and Public Health 18, no. 7: 3334. https://doi.org/10.3390/ijerph18073334
APA StyleHwang, W. J., & Jo, H. H. (2021). Development and Effects of Cognitive Behavior-Based Healing Programs Using Mobile Apps. International Journal of Environmental Research and Public Health, 18(7), 3334. https://doi.org/10.3390/ijerph18073334