| Literature DB >> 30684408 |
Jennifer Apolinário-Hagen1, Mireille Menzel1, Severin Hennemann2, Christel Salewski1.
Abstract
BACKGROUND: Mobile health (mHealth) apps might have the potential to promote self-management of people with multiple sclerosis (MS) in everyday life. However, the uptake of MS apps remains poor, and little is known about the facilitators and barriers for their efficient utilization, such as technology acceptance.Entities:
Keywords: eHealth; mHealth, acceptability of health care; multiple sclerosis; patient preference
Year: 2018 PMID: 30684408 PMCID: PMC6334710 DOI: 10.2196/11977
Source DB: PubMed Journal: JMIR Form Res ISSN: 2561-326X
Figure 1Conceptual study model: adapted and extended Unified Theory of Acceptance and Use of Technology for the acceptance of multiple sclerosis apps. UTAUT: Unified Theory of Acceptance and Use of Technology; MS: multiple sclerosis; eHealth: electronic health.
Sample characteristics (N=98).
| Variables | Statistics | |
| All, mean (SD), range | 47.03 (10.17), 22-67 | |
| Women, mean (SD), range | 45.11 (10.09), 22-67 | |
| Men, mean (SD), range | 51.0 (9.28), 22-66 | |
| 20-35 years, n (%) | 16 (16) | |
| 36-50 years, n (%) | 43 (44) | |
| 51-67 years, n (%) | 39 (40) | |
| Female | 66 (67) | |
| Male | 32 (33) | |
| Certificate of secondary educationa | 8 (8) | |
| General certificate of secondary educationb | 27 (28) | |
| Advanced technical college entrance qualificationc | 19 (19) | |
| General qualification for university entranced | 44 (45) | |
| No professional qualification | 4 (4) | |
| Training qualificatione | 62 (63) | |
| Polytechnic or college degree | 9 (9) | |
| University degree | 23 (24) | |
| All, mean (SD), range | 13.92 (9.84), 1-45 | |
| 1-10, n (%) | 43 (44) | |
| 11-21, n (%) | 37 (38) | |
| >21, n (%) | 18 (18) | |
aGerman “Hauptschulabschluss” as basic school qualification.
bGerman secondary school level-I certificate (“Mittlere Reife”).
cGerman “Fachhochschulreife.”
dGerman “Allgemeine Hochschulreife” (“Abitur” or A Level).
eGerman dual training model.
Figure 2Frequency of general and multiple sclerosis–related smartphone use, proportions in percent (N=98). MS: multiple sclerosis.
Mean values, SDs, and internal consistency of the scales of the conceptual study model (N=98).
| Variable or scalea | Mean (SD)b | Cronbach alphac | |
| Behavioral intention to use overall (3 items per group, N=98)d | 3.11 (1.31) | —e | |
| Group 1: current users (n=18) | 4.33 (0.79) | .83f | |
| Group 2: nonusers (n=62) | 2.76 (1.32) | .91g | |
| Group 3: past users (n=18) | 3.11 (0.91) | .73h | |
| Performance expectancy (5 items) | 2.81 (0.97) | .88f | |
| Effort expectancy (2 items) | 3.80 (0.80) | .60i | |
| Social influence (3 items) | 2.81 (1.02) | .90g | |
| Facilitating conditions (3 items) | 4.45 (0.78) | .85f | |
| Intolerance of uncertainty (4 items) | 2.61 (0.99) | .78j | |
| Electronic health literacy (4 items) | 4.22 (0.70) | .87f | |
| Multiple sclerosis self-efficacy (4 items) | 4.06 (0.80) | .85f | |
| Computer self-efficacy (3 items) | 4.18 (0.94) | .84f | |
| Fatigue (5 items) | 3.31 (1.17) | .89f | |
aItems were adapted from previous research (Multimedia Appendix 1).
bScale range; minimum=1 to maximum=5. Item keying: higher scores mean a higher expression of the respective variable.
cInternal consistency; classification according to Cohen criteria [72].
dGroup 1=participants who are current users of MS apps, group 2=participants who never used MS apps, and group 3=participants who had used MS apps in the past. All assessed 3 items on behavioral intention that were modified based on the experience with MS apps.
eNot applicable.
fCronbach alpha: good.
gCronbach alpha: excellent.
hCronbach alpha: sufficient.
iCronbach alpha: questionable.
jCronbach alpha: acceptable.
Coefficients in the multiple regression model of the adapted and extended Unified Theory of Acceptance and Use of Technology (N=98).
| Predictorsa | B | SE | Beta | Tolerence | VIFb | ||
| Constant | −.56 | 0.77 | —c | −0.73 | .47 | — | — |
| Performance expectancy | .63 | 0.12 | .47 | 5.32 | <.001 | .52 | 1.92 |
| Effort expectancy | .09 | 0.13 | .06 | 0.70 | .49 | .62 | 1.6 |
| Social influence | .42 | 0.13 | .33 | 3.33 | .001 | .42 | 2.40 |
| Facilitating conditions | .07 | 0.13 | .04 | 0.51 | .61 | .64 | 1.56 |
| Intolerance of uncertainty | .09 | 0.09 | .06 | 0.90 | .37 | .79 | 1.27 |
| Electronic health literacy | −.04 | 0.14 | −.02 | −.030 | .77 | .78 | 1.28 |
aCriterion: behavioral intention to use MS apps. All predictors were included simultaneously, without covariates.
bVIF: variance inflation factor.
cNot applicable.
Figure 3Exploratory model for the assessment of the moderation hypotheses for fatigue. Criterion: behavioral intentions to use multiple sclerosis apps. The numbering of the predictors corresponds to the numbering of the 6 reported models. eHealth: electronic health.