| Literature DB >> 34989683 |
Bernhard Breil1, Christel Salewski2, Jennifer Apolinário-Hagen3.
Abstract
BACKGROUND: High blood pressure or hypertension is a vastly prevalent chronic condition among adults that can, if not appropriately treated, contribute to several life-threatening secondary diseases and events, such as stroke. In addition to first-line medication, self-management in daily life is crucial for tertiary prevention and can be supported by mobile health apps, including medication reminders. However, the prescription of medical apps is a relatively novel approach. There is limited information regarding the determinants of acceptance of such mobile health (mHealth) apps among patients as potential users and physicians as impending prescribers in direct comparison.Entities:
Keywords: blood pressure; digital health; health applications; mobile apps; mobile health; patient acceptance of health care; patients; physicians; technology acceptance
Year: 2022 PMID: 34989683 PMCID: PMC8778565 DOI: 10.2196/31617
Source DB: PubMed Journal: JMIR Cardio ISSN: 2561-1011
Figure 1Research model depicting the acceptance of hypertension apps by patients. This study analyzes the influence of the determinants in the adapted UTAUT2 model and the protection motivation theory on the intention of using hypertension apps in addition to self-efficacy and eHealth literacy. eHealth: electronic health; PMT: protection motivation theory; UTAUT2: unified theory of acceptance and use of technology.
Overall model of the determinants for the intention to use hypertension apps in patients (n=162).
| Predictor | Ba | SE | 95% CI | β | Δ | |||
| Constant | –1.85 | 1.58 | –4.98 to 1.28 |
| .25 |
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| 0.47 | ||
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| Performance expectancy | 0.48 | 0.11 | 0.26 to 0.70 | .42 | <.001 |
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| Effort expectancy | –0.03 | 0.10 | –0.23 to 0.16 | –.04 | .73 |
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| Social influence | –0.02 | 0.09 | –0.19 to 0.15 | –.02 | .82 |
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| Facilitating conditions | 0.07 | 0.09 | –0.11 to 0.24 | .06 | .46 |
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| Hedonistic motivation | 0.13 | 0.08 | –0.03 to 0.28 | .11 | .10 |
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| Habit | –0.10 | 0.08 | –0.27 to 0.07 | –.09 | .24 |
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| 0.02 | |||||||
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| Self-efficacy expectation | 0.19 | 0.10 | 0.00 to 0.38 | .13 | .05 |
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| eHealthc literacy | –0.01 | 0.04 | –0.10 to 0.07 | .06 | .73 | <0.01 | ||
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| <0.01 | |||||||
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| Usage for other purpose | 0.19 | 0.23 | –0.26 to 0.65 | .06 | .40 |
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| Loss/leakage of personal data | –0.10 | 0.25 | –0.59 to 0.40 | –.03 | .70 |
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| Misuse of personal data by criminals | –0.30 | 0.23 | –0.75 to 0.16 | –.10 | .20 |
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| 0.07 | |||||||
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| Perceived vulnerability | 0.24 | 0.08 | 0.09-0.39 | .20 | <.001 |
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| Perceived severity | 0.03 | 0.08 | -0.12-0.18 | .03 | .67 |
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| Response efficacy | 0.09 | 0.08 | -0.08-0.18 | .09 | .29 |
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| Perceived self-efficacy | 0.19 | 0.11 | -0.03-0.40 | .17 | .09 |
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aB: unstandardized β.
bUTAUT: unified theory of acceptance and use of technology.
ceHealth: electronic health.
Demographic characteristics.
| Characteristics | Total sample (N=209) | Patients (n=163) | Physicians (n=46) | |
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| Mean (SD) | 35.26 (13.8) | 35.53 (14.9) | 34.28 (8.6) |
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| Range (median) | 18-79 (33) | 18-76 (32) | 18-53 (34) |
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| Female | 126 (60.3) | 98 (60.1) | 28 (60.9) |
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| Male | 82 (39.2) | 64 (39.3) | 18 (39.1) |
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| Not mentioned | 1 (0.5) | 1 (0.6) | 0 (0) |
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| High school graduation | 114 (54.5) | 104 (63.8) | 10 (21.7) |
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| University degree | 95 (45.5) | 59 (36.2) | 36 (78.3) |
Experience using electronic health apps.
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| Total sample (N=209) | Patients (n=163) | Physicians (n=46) | ||
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| Yes | 129 (61.7) | 103 (63.2) | 26 (56.5) | |
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| No | 74 (35.4) | 55 (33.7) | 19 (41.3) | |
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| Not specified | 6 (2.9) | 5 (3.1) | 1 (2.2) | |
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| Vital signs measurement | 58 (27.8) | 51 (31.3) | 7 (15.2) | |
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| Reminder | 54 (25.8) | 46 (28.2) | 8 (17.4) | |
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| Documentation | 47 (22.5) | 37 (22.7) | 10 (21.7) | |
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| Electronic communication | 50 (23.9) | 35 (21.5) | 15 (32.6) | |
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| Search for information | 68 (32.5) | 45 (27.6) | 23 (50) | |
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| Relaxation | 53 (25.4) | 40 (24.5) | 13 (28.3) | |
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| Other | 24 (11.5) | 17 (10.4) | 7 (15.2) | |
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| Searched or found by self | 126 (60.3) | 103 (63.2) | 23 (50) | |
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| Recommendation from friends | 40 (19.1) | 34 (20.9) | 6 (13) | |
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| Recommendation from physicians | 33 (15.8) | 15 (9.2) | 18 (39.1) | |
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| Advertising | 16 (7.7) | 15 (9.2) | 1 (2.2) | |
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| Other | 10 (4.8) | N/Aa | N/A | |
aN/A: not applicable.
Hierarchical regression model of the determinants for the intention to use in physicians (n=46)a.
| Predictor | Bb | SE | 95% CI | β | Δ | |||
| Constant | 4.31 | 4.30 | –4.41 to 13.03 | 0 | .32 |
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| 0.27 | |||||||
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| Performance expectancy | 0.76 | 0.28 | 0.20 to 1.32 | .54 | .01 |
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| Effort expectancy | –0.33 | 0.20 | –0.74 to 0.07 | –.29 | .11 |
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| Social influence | –0.29 | 0.28 | –0.86 to 0.28 | –.20 | .30 |
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| Facilitating conditions | –0.04 | 0.19 | –0.43 to 0.34 | –.04 | .82 |
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| Hedonistic motivation | 0.05 | 0.22 | –0.40 to 0.51 | .04 | .82 |
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| Habit | 0.06 | 0.22 | –0.39 to 0.51 | .06 | .78 |
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| eHealth literacy | 0.30 | 0.11 | 0.07 to 0.53 | .41 | .01 | 0.10 | ||
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| 0.05 | |||||||
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| Usage for other purposes | 0.45 | 0.57 | –0.71 to 1.62 | .12 | .43 |
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| Loss or leakage of personal data | –1.03 | 0.60 | –2.25 to 0.19 | –.29 | .09 |
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| Misuse of personal data by criminals | 0.38 | 0.50 | –0.64 to 1.39 | .11 | .45 |
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aData concerning self-efficacy and PMT were collected only for patients.
bB: unstandardized β.
cUTAUT: unified theory of acceptance and use of technology.
Figure 2Overall model showing the determinants of the intention to use hypertension apps in patients. Significant influence is shown with solid lines and corresponding beta values; influences that were investigated but not significant are shown with dashed lines. PMT: protection motivation theory; UTAUT2: unified theory of acceptance and use of technology.
Overall model of determinants of intention to use among patients.
| Predictor | Performance expectancy | Intention to use | ||||
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| β | β | 95% CI | |||
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| Direct effect | .22 | .004 | –.02 | .82 | –0.21 to 0.17 |
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| Indirect effect | N/Aa | N/A | .12 |
| 0.04 to 0.23 |
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| Total effect | .22 | .004 | .09 | .36 | –0.11 to 0.30 |
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| Direct effect | .19 | .004 | .00 | .98 | –0.17 to 0.17 |
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| Indirect effect | N/A | N/A | .10 |
| 0.04 to 0.19 |
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| Total effect | .19 | .004 | .10 | .27 | –0.08 to 0.27 |
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| Direct effect | .01 | .93 | .08 | .38 | –0.10 to 0.25 |
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| Indirect effect | N/A | N/A | .00 |
| –0.10 to 0.08 |
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| Total effect | .01 | .93 | .08 | .40 | –0.11 to 0.27 |
aN/A: not applicable.