| Literature DB >> 31411147 |
Anna Serlachius1, Kiralee Schache1, Anel Kieser1, Bruce Arroll2, Keith Petrie1, Nicola Dalbeth3.
Abstract
BACKGROUND: Mobile health (mHealth) apps represent a promising approach for improving health outcomes in patients with chronic illness, but surprisingly few mHealth interventions have investigated the association between user engagement and health outcomes. We aimed to examine the efficacy of a recommended, commercially available gout self-management app for improving self-care behaviors and to assess self-reported user engagement of the app in a sample of adults with gout.Entities:
Keywords: chronic disease; gout; illness perceptions; mHealth; mobile apps; user engagement
Mesh:
Year: 2019 PMID: 31411147 PMCID: PMC6711037 DOI: 10.2196/15021
Source DB: PubMed Journal: JMIR Mhealth Uhealth ISSN: 2291-5222 Impact factor: 4.773
Figure 1Flow diagram of participant recruitment, randomization, and attrition. DASH: Dietary Approaches to Stop Hypertension.
Baseline demographic and clinical characteristics (N=72).
| Characteristics | Gout Central (n=36) | DASHa Diet (n=36) | |
| Age (years), mean (SD) | 45 (14) | 53 (15) | |
| Sex (male), n (%) | 30 (83) | 32 (89) | |
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| |||
| New Zealand European | 14 (39) | 12 (33) | |
| Maori | 5 (14) | 9 (25) | |
| Pacific | 10 (28) | 8 (22) | |
| Other ethnic groups | 7 (19) | 7 (19) | |
| Disease duration (years), mean (SD) | 11 (13) | 15 (10) | |
| Number of flares in the past 3 months, mean (SD) | 2.2 (5.1) | 0.9 (1.7) | |
| Serum urate (mmol/L) level, mean (SD) | 0.41 (0.12) | 0.35 (0.11) | |
| Serum creatinine (μmol/L) level, mean (SD) | 102 (46) | 99 (52) | |
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| Urate-lowering therapiesb | 20 (56) | 29 (81) | |
| Anti-inflammatory medications | 16 (44) | 11 (31) | |
| Polypharmacy (≥5 long-term medications) | 4 (11) | 10 (28) | |
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| Hypertension | 3 (8) | 6 (17) | |
| Type 2 diabetes | 3 (8) | 3 (8) | |
| Kidney disease | 4 (11) | 1 (3) | |
| Cardiovascular disease | 2 (6) | 5 (14) | |
| Hypercholesterolemia | 1 (3) | 1 (3) | |
aDASH: Dietary Approaches to Stop Hypertension.
bUrate-lowering therapies: allopurinol and febuxostat; anti-inflammatory medications: colchicine, nonsteroidal anti-inflammatory drugs, and corticosteroids.
Mean differences in illness perceptions at baseline and follow-up.
| Illness perceptions (score range 0-10) | Gout app, mean (SD) | DASHa app, mean (SD) | Mean difference (95% CI) | |||
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| .04 | |||||
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| Baseline | 4.50 (3.32) | 4.11 (3.51) | –0.39 (–1.99 to 1.22) |
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| Follow-up | 4.61 (2.63) | 2.19 (2.36) | –2.43 (–3.68 to –1.18) |
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| .70 | |||||
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| Baseline | 5.94 (3.54) | 8.03 (2.90) | 2.08 (0.56 to 3.61) |
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| Follow-up | 6.81 (3.31) | 7.19 (3.72) | 0.38 (–1.40 to 2.16) |
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| .28 | |||||
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| Baseline | 5.90 (3.02) | 7.67 (2.43) | 1.76 (0.48 to 3.05) |
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| Follow-up | 6.90 (2.66) | 7.56 (2.08) | 0.66 (–0.54 to 1.86) |
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| .54 | |||||
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| Baseline | 7.44 (2.69) | 8.92 (1.54) | 1.47 (0.44 to 2.50) |
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| Follow-up | 7.42 (3.00) | 7.88 (2.81) | 0.46 (–1.01 to 1.92) |
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| .001 | |||||
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| Baseline | 5.11 (2.94) | 3.64 (3.09) | –1.47 (–2.89 to –0.06) |
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| Follow-up | 4.06 (2.25) | 2.09 (2.32) | –1.97 (–3.12 to –0.82) |
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| .26 | |||||
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| Baseline | 5.89 (3.07) | 5.67 (3.43) | –0.22 (–1.75 to 1.31) |
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| Follow-up | 5.26 (3.01) | 4.34 (3.38) | –0.91 (–2.53 to 0.70) |
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| .23 | |||||
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| Baseline | 7.44 (2.26) | 8.03 (1.81) | 0.58 (–0.38 to 1.55) |
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| Follow-up | 8.13 (1.96) | 7.34 (3.07) | –0.79 (–2.09 to 0.52) |
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| .002 | |||||
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| Baseline | 4.81 (3.46) | 4.56 (3.83) | –0.25 (–1.97 to 1.47) |
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| Follow-up | 5.00 (3.01) | 2.63 (2.84) | –2.38 (–3.85 to –0.90) |
| |
aDASH: Dietary Approaches to Stop Hypertension.
bP value refers to analysis of covariance for between-group comparisons postintervention.
Differences in user engagement between app groups postintervention measured by the user version of the Mobile Application Rating Scale (score range: 1-5).
| Measures | Gout app (n=31) | DASHa app (n=32) | Mean difference (95% CI) | |
| Engagement subscale score | 3.26 (0.73) | 2.68 (0.77) | –0.58 (–0.96 to –0.21) | .003 |
| Information subscale score | 3.92 (0.51) | 3.58 (0.76) | –0.34 (–0.67 to –0.01) | .04 |
| Subjective app quality score | 3.06 (0.82) | 2.70 (0.94) | –0.36 (–0.81 to 0.08) | .11 |
| Perceived impact: Awareness | 3.42 (1.15) | 2.78 (1.36) | –0.64 (–1.27 to –0.003) | .049 |
| Perceived impact: Knowledge/understanding | 3.32 (1.14) | 2.63 (1.26) | –0.70 (–1.30 to –0.09) | .03 |
| Perceived impact: Attitudes | 3.19 (1.17) | 2.59 (1.46) | –0.60 (–1.27 to 0.07) | .08 |
| Perceived impact: Intention to change | 3.06 (1.21) | 2.56 (1.32) | –0.50 (–1.14 to 0.14) | .12 |
| Perceived impact: Help seeking | 2.84 (1.10) | 2.59 (1.29) | –0.24 (–0.85 to 0.36) | .42 |
| Perceived impact: Behavior change | 3.10 (1.19) | 2.59 (1.27) | –0.50 (–1.12 to 0.12) | .11 |
| App use (days) | 7.90 (3.95) | 8.13 (3.27) | 0.22 (–1.60 to 2.05) | .81 |
| App use (minutes) | 11.34 (13.00) | 9.64 (6.91) | –1.70 (–6.92 to 3.52) | .52 |
aDASH: Dietary Approaches to Stop Hypertension.