| Literature DB >> 31579022 |
Olga Perski1, Felix Naughton2, Claire Garnett1, Ann Blandford3, Emma Beard1, Robert West1, Susan Michie4.
Abstract
BACKGROUND: Previous studies have identified psychological and smartphone app-related predictors of engagement with alcohol reduction apps at a group level. However, strategies to promote engagement need to be effective at the individual level. Evidence as to whether group-level predictors of engagement are also predictive for individuals is lacking.Entities:
Keywords: apps; behavior change; engagement; excessive alcohol consumption; mHealth; n-of-1; time series analysis
Mesh:
Year: 2019 PMID: 31579022 PMCID: PMC6777278 DOI: 10.2196/14098
Source DB: PubMed Journal: JMIR Mhealth Uhealth ISSN: 2291-5222 Impact factor: 4.773
Statistical assumptions used to inform the simulation-based power analysis.
| Considerations | Statistical assumptions and source of information (where available) |
| Model type | Generalized additive mixed model |
| Number of observations | Twice-daily ecological momentary assessments for a period of 28 days (ie, a total of 56 data inputs per participant) |
| Seasonality | No seasonality reflected by the day of the week the data were collected. |
| Distribution and point estimate (outcome variable) | The outcome variable (ie, frequency of engagement, operationalized as the number of app log-ins per measurement period) was assumed to follow a Poisson distribution with a mean of 11.7 log-ins per measurement period [ |
| Distribution and point estimate (predictor variable) | The predictor variable (ie, perceived usefulness of the app), selected as a basis for the power analysis as data on the relationship of the other predictors and the frequency of engagement were lacking in the extant literature, was assumed to follow an autoregressive (AR) integrated moving average (MA) process with first-order autocorrelation, as it was expected that measurements would be similar to those taken 12 hours previously. We drew on the results from the between-person, factorial screening experiment of the |
Participants’ demographic, drinking, and app-related characteristics.
| Participant (P) identifier | Gender | Age (years) | Occupational status | Alcohol Use Disorders Identification Test | Past use of an alcohol reduction app | Past use of the |
| P1 | Female | 28 | Nonmanual | 16 | No | No |
| P2 | Female | 20 | Other | 10 | No | No |
| P3 | Female | 25 | Nonmanual | 30 | No | No |
| P4 | Female | 18 | Other | 12 | No | No |
| P5 | Male | 21 | Other | 22 | No | No |
| P6 | Female | 31 | Nonmanual | 8 | No | No |
| P7 | Female | 23 | Nonmanual | 12 | Yes | Yes |
| P8 | Female | 30 | Nonmanual | 11 | No | No |
| P9 | Female | 28 | Other | 23 | Yes | No |
| P10 | Female | 26 | Nonmanual | 10 | No | No |
Compliance with the twice-daily ecological momentary assessments.
| Participant (P) identifier | Compliance (N=56), n (%) | Timing of text messages | Daily reminder switched on/off | Timing of daily reminder |
| P1 | 56 (100) | 10 am/pm | On | 10 am |
| P2 | 55 (98) | 10 am/pm | On | 1 pm |
| P3 | 50 (89) | 7:30 am/pm | On | 4 pm |
| P4 | 49 (88) | 10 am/pm | On | 11 am |
| P5 | 55 (98) | 9:30 am/pm | Off | —a |
| P6 | 47 (84) | 10 am/pm | On | 10 am |
| P7 | 48 (86) | 9 am/pm | On | 9 am |
| P8 | 51 (91) | 10 am/pm | Off | — |
| P9 | 56 (100) | 10 am/pm | On | 10:30 am |
| P10 | 54 (96) | 10 am/pm | On | 9 am |
aNot applicable.
Descriptive statistics for the predictor variables.
| Participant (P) identifier | Motivation to reduce alcohol | Perceived usefulness of the app | Alcohol consumption (drinks) | Perceived lack of time | ||||
|
| Meana (SD) | Range | Meana (SD) | Range | Meana (SD) | Range | Meana (SD) | Range |
| P1 | 5.3 (1.1) | 3-7 | 5.4 (0.8) | 4-7 | 2.1 (2.8) | 0-10 | 6.1 (1.2) | 3-7 |
| P2 | 6.3 (1.1)b | 3-7 | 6.3 (1.1)b | 3-7 | 0.1 (0.5)b | 0-3 | 4.6 (2.2)b | 1-7 |
| P3 | 5.2 (0.9)b | 4-7 | 5.3 (1.1)b | 3-7 | 1.2 (1.3)b | 0-5 | 4.5 (1.0)b | 2-7 |
| P4 | 4.1 (1.6)b | 1-7 | 2.4 (1.3)b | 1-5 | 0.1 (0.8)b | 0-4 | 4.9 (1.8)b | 2-7 |
| P5 | 3.6 (1.0)b | 2-6 | 3.6 (1.2)b | 1-7 | 1.2 (1.7)b | 0-8 | 3.9 (0.9)b | 2-7 |
| P6 | 5.6 (0.7)b | 4-7 | 4.4 (0.6)b | 4-6 | 0.3 (0.8)b | 0-3 | 4.4 (0.7)b | 3-7 |
| P7 | 4.1 (1.2)b | 1-6 | 3.2 (0.9)b | 2-5 | 1.1 (2.1)b | 0-6 | 2.8 (1.6)b | 1-6 |
| P8 | 5.9 (0.5)b | 4-7 | 6.1 (0.9)b | 4-7 | 0.4 (0.9)b | 0-4 | 2.2 (1.4)b | 1-5 |
| P9 | 4.3 (1.9) | 1-7 | 1.9 (0.9) | 1-5 | 3.9 (4.3) | 0-14 | 6.0 (1.3) | 2-7 |
| P10 | 5.3 (1.6)b | 1-7 | 4.8 (1.0)b | 1-6 | 1.9 (2.9)b | 0-9 | 5.5 (1.0)b | 3-7 |
aMean levels for the predictor variables over the 56 12-hour measurement periods.
bFor participants with missing data, means and standard deviations for the complete datasets (after multiple imputation) were computed using Rubin rules.
Descriptive statistics of participants’ frequency, amount, and depth of engagement with the Drink Less app.
| Participant (P) identifier | Log-ins over the 28-day study | Total amount of engagement over the 28-day study (minutes:seconds) | Amount of engagement per measurement period (minutes:seconds) | Total depth of engagement over the 28-day study (%) | Depth of engagement per measurement period (%), mean (SD) | |||
| Total number | Mean (SD) | Range | Mean (SD) | Range | ||||
| P1 | 39 | 0.7 (0.7) | 0-3 | 23:11 | 00:26 (00:53) | 00:00-04:12 | 71 | 10 (12) |
| P2 | 47 | 0.8 (0.8) | 0-4 | 60:43 | 01:06 (02:33) | 00:00-16:32 | 86 | 20 (20) |
| P3 | 35 | 0.6 (0.6) | 0-2 | 13:12 | 00:14 (00:27) | 00:00-02:19 | 57 | 10 (11) |
| P4 | 10 | 0.2 (0.5) | 0-2 | 04:24 | 00:05 (00:18) | 00:00-01:29 | 43 | 3 (8) |
| P5 | 42 | 0.8 (0.7) | 0-3 | 18:20 | 00:20 (00:29) | 00:00-01:11 | 29 | 11 (11) |
| P6 | 31 | 0.6 (0.6) | 0-2 | 39:19 | 00:42 (85.42) | 00:00-08:12 | 57 | 9 (11) |
| P7 | 64 | 1.1 (0.9) | 0-3 | 19:14 | 00:21 (00:27) | 00:00-02:44 | 14 | 10 (6) |
| P8 | 69 | 1.2 (0.9) | 0-3 | 70:14 | 01:09 (02:01) | 00:00-10:47 | 43 | 17 (13) |
| P9 | 34 | 0.6 (0.7) | 0-2 | 35:26 | 00:38 (02:04) | 00:00-13:40 | 43 | 9 (11) |
| P10 | —a | — | — | — | — | — | — | — |
aDue to a technical issue, data were lost for P10.
Incidence rate ratios for the associations between the predictor and the outcome variables for each participant (P) in the multivariable generalized additive mixed models.
| Participant | Frequency of engagementa | Amount of engagementa | |||
|
|
| Incidence rate ratio (IRR) (95% CI) | IRR (95% CI) | ||
|
| |||||
|
| Reminder | 1.802,1b (1.19-2.74) |
| —d | — |
|
| Motivation to reduce alcohol | 1.142,1 (1.02-1.27) |
| 1.120,0 (0.68-1.83) | .65 |
|
| Perceived usefulness of the app | 0.822,1 (0.68-0.99) |
| — | — |
|
| Alcohol consumption | — | — | — | — |
|
| Perceived lack of time | 0.932,1 (0.86-1.02) | .15 | — | — |
|
| |||||
|
| Reminder | 1.991,0 (0.67-5.94) | .22 | — | — |
|
| Motivation to reduce alcohol | — | — | — | — |
|
| Perceived usefulness of the app | — | — | — | — |
|
| Alcohol consumption | 1.501,0 (1.16-1.93) |
| 2.381,0 (1.65-3.43) |
|
|
| Perceived lack of time | 1.131,0 (1.01-1.25) |
| — | — |
|
| |||||
|
| Reminder | — | — | 4.310,0 (1.73-10.73) |
|
|
| Motivation to reduce alcohol | 0.891,0 (0.67-1.19) | .45 | — | — |
|
| Perceived usefulness of the app | — | — | — | — |
|
| Alcohol consumption | — | — | 1.380,0 (1.11-1.73) |
|
|
| Perceived lack of time | — | — | 1.190,0 (0.79-1.77) | .40 |
|
| |||||
|
| Reminder | — | — | — | — |
|
| Motivation to reduce alcohol | 1.880,0 (1.22-2.91) |
| 2.030,0 (1.72-2.40) |
|
|
| Perceived usefulness of the app | — | — | 137.330,0 (49.45-381.34) |
|
|
| Alcohol consumption | — | — | — | — |
|
| Perceived lack of time | — | — | 0.200,0 (0.14-0.29) |
|
|
| |||||
|
| Motivation to reduce alcohol | — | — | — | — |
|
| Perceived usefulness of the app | 1.422,2 (1.15-1.75) |
| 1.390,0 (1.06-1.82) |
|
|
| Alcohol consumption | — | — | — | — |
|
| Perceived lack of time | 1.082,2 (0.81-1.43) | .60 | — | — |
|
| |||||
|
| Reminder | 3.882,0 (1.37-11.03) |
| — | — |
|
| Motivation to reduce alcohol | 1.072,0 (0.93-1.21) | .35 | 3.450,0 (1.34-8.83) |
|
|
| Perceived usefulness of the app | 1.122,0 (0.94-1.34) | .21 | — | — |
|
| Alcohol consumption | 0.922,0 (0.83-1.02) | .13 | — | — |
|
| Perceived lack of time | 0.772,0 (0.61-0.97) |
| 1.240,0 (0.71-2.17) | .45 |
|
| |||||
|
| Reminder | 3.261,0 (2.15-4.96) |
| — | — |
|
| Motivation to reduce alcohol | — | — | 1.670,0 (1.16-2.40) |
|
|
| Perceived usefulness of the app | — | — | 0.520,0 (0.33-0.80) |
|
|
| Alcohol consumption | — | — | — | — |
|
| Perceived lack of time | — | — | — | — |
|
| |||||
|
| Motivation to reduce alcohol | — | — | — | — |
|
| Perceived usefulness of the app | — | — | — | — |
|
| Alcohol consumption | 0.851,0 (0.67-1.09) | .20 | 0.820,0 (0.47-1.43) | .50 |
|
| Perceived lack of time | — | — | 1.330,0 (0.97-1.82) | .08 |
|
| |||||
|
| Reminder | — | — | — | — |
|
| Motivation to reduce alcohol | — | — | 1.201,1 (0.92-1.58) | 0.18 |
|
| Perceived usefulness of the app | 1.381,0 (1.24-1.53) |
| 1.671,1 (1.22-2.29) |
|
|
| Alcohol consumption | — | — | — | — |
|
| Perceived lack of time | — | — | 4.771,1 (1.09-20.79) |
|
aAll models were adjusted for the day of the week using a cyclic cubic smoothing term.
bNumbers in subscript indicate the lags of autoregressive (AR) and moving average (MA) terms, respectively. A lag value of 0 indicates that an AR or an MA term was not included.
cP values significant at the .05 level are highlighted in italics.
dIndicates that a predictor variable was not included in the best-fitting model.
eFor P4, generalized additive mixed models would not converge. Therefore, generalized additive models were fitted.
fAs P5 and P8 opted out of receiving the daily reminder, this variable did not apply to these 2 participants.
Figure 1Plot of incidence rate ratios and 95% CIs (x-axis) for the association of the daily reminder and the frequency of engagement for each participant (y-axis) in univariable analyses. The vertical line indicates parity; 95% CIs that cross the line of parity indicate nonsignificant incidence rate ratios. For P4, the univariable model did not converge. P4 is hence not included in this plot. P: participant.
Figure 2Plot of incidence rate ratios and 95% CIs (x-axis) for the association of the daily reminder and the amount of engagement for each participant (y-axis) in univariable analyses. For P4, the univariable model did not converge. P4 is hence not included in this plot. P: participant.
Figure 3Plot of incidence rate ratios and 95% CIs (x-axis) for the association of motivation to reduce alcohol and the frequency of engagement for each participant (y-axis) in univariable analyses. P: participant.
Figure 4Plot of incidence rate ratios and 95% CIs (x-axis) for the association of motivation to reduce alcohol and the amount of engagement for each participant (y-axis) in univariable analyses. P: participant.
Figure 5Plot of incidence rate ratios and 95% CIs (x-axis) for the association of perceived usefulness of the app and the frequency of engagement for each participant (y-axis) in univariable analyses. P: participant.
Figure 6Plot of incidence rate ratios and 95% CIs (x-axis) for the association of perceived usefulness of the app and the amount of engagement for each participant (y-axis) in univariable analyses. P: participant.
Figure 7Plot of incidence rate ratios and 95% CIs (x-axis) for the association of alcohol consumption and the frequency of engagement for each participant (y-axis) in univariable analyses. For P4, the univariable model did not converge. P4 is hence not included in this plot. P: participant.
Figure 8Plot of incidence rate ratios and 95% CIs (x-axis) for the association of alcohol consumption and the amount of engagement for each participant (y-axis) in univariable analyses. For P4, the univariable model did not converge. P4 is hence not included in this plot. P: participant.
Figure 9Plot of incidence rate ratios and 95% CIs (x-axis) for the association of perceived lack of time and the frequency of engagement for each participant (y-axis) in univariable analyses. P: participant.