| Literature DB >> 32025375 |
Amy Orben1,2, Andrew K Przybylski3,4.
Abstract
BACKGROUND: Throughout the developed world, adolescents are growing up with increased access to and engagement with a range of screen-based technologies, allowing them to encounter ideas and people on a global scale from the intimacy of their bedroom. The concerns about digital technologies negatively influencing sleep are therefore especially noteworthy, as sleep has been proven to greatly affect both cognitive and emotional well-being. The associations between digital engagement and adolescent sleep should therefore be carefully investigated in research adhering to the highest methodological standards. This understood, studies published to date have not often done so and have instead focused mainly on data derived from general retrospective self-report questionnaires. The value of this work has been called into question by recent research showing that retrospective questionnaires might fail to accurately measure these variables of interest. Novel and diverse approaches to measurement are therefore necessary for academic study to progress.Entities:
Keywords: Adolescents; Digital technology use; Large-scale social data; Measurement; Screen time; Sleep; Specification curve analysis; Time-use diary
Year: 2020 PMID: 32025375 PMCID: PMC6993745 DOI: 10.7717/peerj.8427
Source DB: PubMed Journal: PeerJ ISSN: 2167-8359 Impact factor: 2.984
Figure 1Correlation matrix showing the correlation between various self-report sleep measures and self-reported digital engagement.
Red indicates negative correlations while blue indicates positive correlations.
Table showing the four different analytical decisions that needed to be taken to analyze the data.
The decisions were: what day of the week to analyze, how to define sleep, how to define technology use, and which control variables to include. Each analytical decision had multiple analytical options that could have been taken. Each unique combination of different analytical options that could be implemented to analyze the data is a specification. In total, this study encompassed 120 defined specifications.
| Analytical decision | Day of the week | Sleep | Technology use | Control variables |
|---|---|---|---|---|
| Analytical options | Weekday | Bedtime (retrospective) | Participation (time-use diary) | Demographics |
| Weekend day | Bedtime (time-use diary) | Before bedtime (time-use diary) | Demographics + child-level | |
| Total time sleeping (retrospective) | Total time spent (time-use diary) | Demographics + mother-level | ||
| Total time spent (retrospective) | Demographics + family-level | |||
| All control variables |
Figure 2Specification curve analysis.
SCA showing the results of the two separate SCAs for weekdays (A) 60 specifications and weekend days (B) 60 specifications with standardized regression coefficients presented in ranked order ranging from those results with the most negative regression associations to those with the most positive ones. In the top half of the graph the resulting standardized regression coefficient is shown. In the bottom half of the graph one can read off the analytical decisions that constitute the specification that results in the corresponding standardized regression coefficient (* = analytical variables calculated using time-use diaries). Teal dots represent statistically significant specifications (p-value < 0.05) while pink dots represent non-significant specifications (p-value > 0.05).
Figure 3Number of participants included in each specification.
Each point shows the amount of participants included in the analysis of each specification for both weekdays (A) and weekends (B) visualized in Fig. 2.