| Literature DB >> 23977016 |
Jason D Runyan1, Timothy A Steenbergh, Charles Bainbridge, Douglas A Daugherty, Lorne Oke, Brian N Fry.
Abstract
We have designed a flexible ecological momentary assessment/intervention smartphone (EMA/EMI) "app". We examine the utility of this app for collecting real-time data, and assessing intra-subject variability, by using it to assess how freshman undergraduates spend their time. We also explore whether its use can promote greater self-awareness. Participants were randomly divided into an experimental group, who used the app, and a control group, who did not. We used the app to collect both randomized in-the-moment data as well as end-of-day data to assess time use. Using a posttest survey we asked participants questions about how they spent time throughout the school semester. We also asked the experimental group about their experience with the app. Among other findings, 80.49% participants indicated that they became more aware of how they spent their time using the app. Corroborating this report, among the experimental group, end-of-semester self-assessment of time spent wasted, and time spent using electronics recreationally, predicted semester GPA at a strength comparable to high school GPA and ACT score (two of the best single predictors for first semester college GPA), but had no correlation among controls. We discuss the advantages and limitations of using apps, such as ours, for EMA and/or EMI.Entities:
Mesh:
Year: 2013 PMID: 23977016 PMCID: PMC3743745 DOI: 10.1371/journal.pone.0071325
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Figure 1Screen captures of (A) iHabit’s visual check-in notification, (B) a representative check-in question, and (C) a representative end-of-day question.
Experimental (app) and Control Group Demographics.
| Variable | Experimental/App | Control |
|
| ||
|
|
|
|
| |||
| Age | 18.25 | .49 | 18.27 | .51 | .18 | .86 |
| Family Income (U.S. $)1 | 132,882 | 195,413 | 121,956 | 166,301 | .22 | .83 |
| High School GPA | 3.64 | .39 | 3.70 | .35 | .84 | .40 |
| ACT Scores | 24.73 | 3.88 | 24.16 | 4.17 | .63 | .53 |
| Owned device (months) | 17.80 | 13.41 | 16.51 | 12.23 | .44 | .66 |
Notes: 1The mean family incomes for both groups were skewed by high income outliers. The median family income for the experimental/app group was $72,500 and the median income for the control group was $80,000.
For those reporting SAT scores, a formula was used to derive equivalent ACT scores.
Participants’ estimates for how they spent their last 20 minutes at check-in points during the day.
| Check-in | Week 3 | Week 8 | Week 14 | |||
| Average | Ave SD | Average | Ave SD | Average | Ave SD | |
| Socializing | 42.80±14.60% | 43.10±10.35% | 36.70±23.50% | 41.70±8.05% | 39.50±24.55% | 38.30±14.45% |
| Electronics | 31.45±12.80% | 36.40±9.70% | 33.80±25.90% | 32.27±14.10% | 27.35±18.65% | 35.15±15.15% |
| Academics | 25.85±20.75% | 36.00±13.90% | 33.65±26.65% | 39.05±12.95% | 32.95±20.35% | 42.8±14.95% |
| Waste | 20.65±18.55% | 25.85±12.45% | 24.95±28.25% | 25.70±16.80% | 15.15±14.45% | 24.95±19.85% |
| Exercise | 3.85±5.35% | 11.50±13.35% | 5.70±13.25% | 11.90±12.1% | 8.15±20.35% | 9.05±12.35% |
Per week group means for percent of last 20 minutes spent on each activity (Average), and average within-subject standard deviation (Ave SD) for each assessment week.
Figure 2Intra-subject change in estimated time spent on academics at check-in across test weeks.
Average estimated time spent on academics over the 20 minutes prior to check-in was significantly greater in weeks 8 and 14 than in week 3 (p = 0.05). Each participant’s average estimate during each week is represented by a colored line.
Participants’ estimates for hours of time spent each day.
| End-of-day | Week 3 | Week 8 | Week 14 | |||
| Average | Ave SD | Average | Ave SD | Average | Ave SD | |
| Social Media | 2.2±1.22 hr | .59±.50 hr | 1.91±1.17 hr | .53±.28 hr | 1.64±1.17 hr | .66±.42 hr |
| Studying | 1.65±1.22 hr | 1.16±.85 hr | 1.67±1.17 hr | 1.17±.98 hr | 2.29±1.84 hr | 1.21±1.01 hr |
| Exercise | .47±.66 hr | .31±.22 hr | .30±.46 hr | .25±.32 hr | .53±.59 hr | .32±.31 hr |
| Well-spent | 66.28±16.75% | 11.97±6.19% | 65.94±16.05% | 10.54±4.55% | 70.49±20.15% | 9.24±12.33% |
Group means (Average) and average within-subject standard deviation (Ave SD) for each assessment week.
Figure 3Means and standard deviations for posttest estimations of percentage of time (A) spent recreationally using electronics and (B) wasted throughout the semester.
The app group estimated spending more time using electronics recreationally and wasting more time than controls (p<.05; statistical significance denoted by an asterisk).
Figure 4Means and standard deviations for end-of-day estimates of time spent studying during the three testing weeks for participants who reported changing their behavior as a result of app use (“Change”) and who reported no change (“No Change”) in the posttest questionnaire.
Average end-of-day estimates of time spent studying over week 8–but not weeks 3 or 14 (p’s>,05)–was significantly higher for the group that reported changing their behavior as a result of using the app than for the group that reported no change (p<.01; statistical significance denoted by an asterisk).