| Literature DB >> 35831180 |
Jonathan B Bricker1,2, Kristin E Mull1, Margarita Santiago-Torres1, Zhen Miao3, Olga Perski4, Chongzhi Di1.
Abstract
BACKGROUND: Little is known about how individuals engage over time with smartphone app interventions and whether this engagement predicts health outcomes.Entities:
Keywords: ACT; QuitGuide; acceptance and commitment therapy; digital interventions; eHealth; engagement; iCanQuit; mHealth; mobile health; mobile phone; smartphone apps; smoking; tobacco; trajectories
Mesh:
Year: 2022 PMID: 35831180 PMCID: PMC9437788 DOI: 10.2196/39208
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 7.076
Figure 1Mean weekly log-ins for each trajectory group from the iCanQuit arm. Error bars represent IQRs.
Figure 2Mean weakly log-ins for each trajectory group from the QuitGuide arm. Error bars indicate IQRs.
Logistic regression models predicting 12-month smoking cessation outcome by log-in trajectory group, adjusted for Akaike Information Criterion model–selected covariatesa.
| Treatment arm and covariate | Odds ratio (95% CI) | ||||
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| 4-week users | 1.50 (1.05-2.14) | .03 | ||
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| 26-week users | 4.97 (3.31-7.52) | <.001 | ||
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| Gender (male) | 1.87 (1.33-2.62) | <.001 | ||
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| High school or lower education | 1.42 (1.03-1.95) | .03 | ||
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| Depression screen positive | 0.69 (0.50-0.97) | .03 | ||
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| Panic disorder screen positive | 0.74 (0.50-1.09) | .14 | ||
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| Used e-cigarettes at least once in past month | 0.66 (0.45-0.96) | .03 | ||
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| Confidence in being smoke free | 1.01 (1.01-1.02) | <.001 | ||
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| Drinks per day on a typical drinking day | 0.95 (0.91-1.00) | .048 | ||
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| 3-week users | 1.16 (0.84-1.62) | .37 | ||
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| Used e-cigarettes at least once in past month | 1.44 (0.99-2.08) | .05 | ||
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| Confidence in being smoke free | 1.01 (1.00-1.02) | .005 | ||
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| Close friends who smoke | 0.89 (0.81-0.97) | .01 | ||
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| Heavy drinkerb | 0.64 (0.37-1.07) | .10 | ||
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| Valuing questionnaire—progress | 1.03 (1.01-1.06) | .01 | ||
aThe reference group is 1-week users for both arms.
bHeavy drinkers are defined as women who had 4 or more drinks and men who had 5 or more drinks on a typical drinking day.
Multinomial logistic regression (iCanQuit arm) and logistic regression (QuitGuide arm) results predicting log-in trajectory group membership from Akaike Information Criterion model–selected baseline characteristicsa.
| Arm, trajectory group, and characteristic | Odds ratio (95% CI) | |||
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| Age (years) | 1.01 (0.99-1.02) | |
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| Smokes ≤10 cigarettes per day | 1.25 (0.89-1.76) | |
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| First cigarette >5 minutes after waking | 1.42 (1.05-1.92) | |
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| Number of quit attempts in previous year | 1.03 (0.99-1.08) | |
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| Each point increase in acceptance of physical sensations | 1.82 (1.41-2.35) | |
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| Age (years) | 1.05 (1.03-1.06) | |
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| Smokes ≤10 cigarettes per day | 1.90 (1.25-2.87) | |
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| First cigarette >5 minutes after waking | 1.42 (0.96-2.08) | |
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| Number of quit attempts in previous year | 0.92 (0.83-1.02) | |
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| Each point increase in acceptance of physical sensations | 1.23 (0.88-1.71) | |
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| Gender (female) | 1.46 (1.10-1.95) | ||
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| Minority race or ethnicity | 1.40 (1.08-1.83) | ||
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| Anxiety screen positive | 0.75 (0.55-1.02) | ||
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| Smoked for ≥10 years | 1.56 (1.04-2.35) | ||
aThe reference group is 1-week users for both treatment arms.