| Literature DB >> 28362868 |
Courtenay Harris1, Leon Straker2, Clare Pollock3.
Abstract
Government initiatives have tried to ensure uniform computer access for young people; however a divide related to socioeconomic status (SES) may still exist in the nature of information technology (IT) use. This study aimed to investigate this relationship in 1,351 Western Australian children between 6 and 17 years of age. All participants had computer access at school and 98.9% at home. Neighbourhood SES was related to computer use, IT activities, playing musical instruments, and participating in vigorous physical activity. Participants from higher SES neighbourhoods were more exposed to school computers, reading, playing musical instruments, and vigorous physical activity. Participants from lower SES neighbourhoods were more exposed to TV, electronic games, mobile phones, and non-academic computer activities at home. These patterns may impact future economic, academic, and health outcomes. Better insight into neighbourhood SES influences will assist in understanding and managing the impact of computer use on young people's health and development.Entities:
Mesh:
Year: 2017 PMID: 28362868 PMCID: PMC5376329 DOI: 10.1371/journal.pone.0175011
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Sample demographics.
| School year | Sample | Age (years) | ||
|---|---|---|---|---|
| Proposed | Actual | Mean | SD | |
| 150 | 146 | 6.8 | 0.7 | |
| 350 | 350 | 11.3 | 1.0 | |
| 350 | 563 | 14.2 | 1.2 | |
| 350 | 292 | 16.3 | 1.2 | |
Distribution of index of relative social advantage and disadvantage for study sample, state and national populations.
| Percentile | Australia | Western Australia | Sample |
|---|---|---|---|
| 597 | 602 | 869 | |
| 880 | 909 | 924 | |
| 928 | 932 | 929 | |
| 990 | 957 | 1034 | |
| 1068 | 1008 | 1117 | |
| 1141 | 1077 | 1165 | |
| 1313 | 1301 | 1207 |
Percentage of participants with access to computers and internet at school and home by NSES decile.
| NSES | School | Home | |||
|---|---|---|---|---|---|
| Decile | Values | Computer | Internet | Computer | Internet |
| <10th | <924.5 | 100.0 | 100.0 | 96.8 | 92.0 |
| 10th–<20th | 924.6–929.5 | 100.0 | 100.0 | 98.7 | 93.5 |
| 20th–<30th | 929.6–973.5 | 100.0 | 100.0 | 100.0 | 93.4 |
| 30th–<40th | 973.6–995 | 100.0 | 100.0 | 100.0 | 94.3 |
| 40th–<50th | 995.1–1034.5 | 100.0 | 100.0 | 97.0 | 97.0 |
| 50th–<60th | 1034.6–1062.2 | 100.0 | 100.0 | 100.0 | 97.1 |
| 60th–<70th | 1062.3–1111.7 | 100.0 | 100.0 | 98.6 | 97.9 |
| 70th–<80th | 1111.8–1129.7 | 100.0 | 100.0 | 100.0 | 100.0 |
| 80th–<90th | 1129.8–1164.9 | 100.0 | 100.0 | 100.0 | 98.2 |
| >90th | >1165 | 100.0 | 100.0 | 99.4 | 98.9 |
Note. NSES = neighbourhood socioeconomic status.
Associations of NSES and the amount of computer exposure: Correlation and 3 step prediction model statistics.
| Outcome variables—computer exposure | Spearman’s rho correlation | Individual R squared change (Step 1) | Family R squared change (Step 2) | NSES R squared change Step 3) | Overall model R squared | Overall model F and p |
|---|---|---|---|---|---|---|
| Weekly hours | .086 | .073 | .008 | .002 | .083 | 8.93, <.001 |
| Monthly frequency | .148 | .077 | .004 | .018 | .100 | 11.27, <.001 |
| Usual duration | -.033 | .079 | .004 | .001 | .083 | 9.07, <.001 |
| Longest duration | .088 | .049 | .002 | .005 | .055 | 5.84, <.001 |
| Weekly hours | -.157 | .199 | .045 | .011 | .255 | 33.09, <.001 |
| Monthly frequency | -.036 | .268 | .011 | .000 | .279 | 39.07, <.001 |
| Usual duration | -.220 | .198 | .027 | .029 | .254 | 34.40, <.001 |
| Longest duration | -.138 | .244 | .014 | .010 | .268 | 36.89, <.001 |
Note.
* = p <.05,
** = p <.001.
NSES = neighbourhood socioeconomic status.
Associations of NSES and the nature of school and home computer exposure: Correlation and 3 step prediction model statistics.
| Outcome variables—computer exposure | Spearman’s rho correlation | Individual R squared change (Step 1) | Family R squared change (Step 2) | NSES R squared change (Step 3) | Overall model R squared | Overall model F and p |
|---|---|---|---|---|---|---|
| Play games | .126 | .091 | .021 | .008 | .121 | 13.95, <.001 |
| Multimedia | -.010 | .086 | .007 | .001 | .094 | 10.52, <.001 |
| Write Letter | .029 | .041 | .002 | .000 | .044 | 4.63, <.001 |
| Learning Programs | .094 | .040 | .006 | .006 | .052 | 5.60, <.001 |
| Surf Internet | .033 | .171 | .004 | .001 | .176 | 21.69, <.001 |
| .257 | .064 | .015 | .050 | .129 | 15.03, <.001 | |
| Chat rooms | .017 | .070 | .009 | .654 | .079 | 8.70, <.001 |
| Play games | .020 | .225 | .008 | .001 | .234 | 30.80, <.001 |
| Multimedia | -.079 | .166 | .010 | .003 | .179 | 22.05, <.001 |
| Write Letter | .009 | .025 | .008 | .000 | .032 | 3.37, <.001 |
| Learning Programs | .042 | .012 | .006 | .000 | .019 | 1.90, =.035 |
| Surf Internet | -.062 | .348 | .008 | .001 | .356 | 55.73, <.001 |
| -.056 | .238 | .010 | .001 | .249 | 33.43, <.001 | |
| Chat rooms | -.117 | .094 | .006 | .011 | .110 | 12.51, <.001 |
Note.
* = p <.05,
** = p <.001.
NSES = neighbourhood socioeconomic status.
Associations of NSES and other IT exposure: Correlation and 3 step prediction model statistics.
| Outcome variables other IT types | Spearman’s rho correlation | Individual R squared change (Step 1) | Family R squared change (Step 2) | NSES R squared change Step 3) | Overall model R squared | Overall model F and p |
|---|---|---|---|---|---|---|
| Monthly frequency | .130 | .111 | .010 | .009 | .130 | 15.09, <.001 |
| Usual duration | .072 | .027 | .008 | .004 | .038 | 4.01, <.001 |
| Longest duration | .087 | .035 | .009 | .004 | .048 | 5.13, <.001 |
| Monthly frequency | .011 | .033 | .008 | .000 | .033 | 4.33, <.001 |
| Usual duration | -.048 | .036 | .002 | .001 | .040 | 4.12, <.001 |
| Longest duration | .007 | .024 | .002 | .000 | .026 | 2.70, =.002 |
| Monthly frequency | -.060 | .200 | .000 | .006 | .454 | 26.20, <.001 |
| Usual duration | -.100 | .156 | .003 | .007 | .167 | 14.10, <.001 |
| Longest duration | -.069 | .176 | .001 | .003 | .180 | 15.46, <.001 |
| Monthly frequency | -.092 | .004 | .001 | .004 | .008 | .852, =.588 |
| Usual duration | -.126 | .053 | .001 | .007 | .062 | 6.66, <.001 |
| Longest duration | -.026 | .064 | .004 | .000 | .068 | 7.30, <.001 |
| Monthly frequency | -.127 | .404 | .003 | .005 | .412 | 70.64, <.001 |
| Duration | -.144 | .254 | .005 | .009 | .268 | 36.85, <.001 |
| Longest duration | -.152 | .199 | .007 | .014 | .221 | 28.52, <.001 |
Note.
* = p <.05,
** = p <.001. NSES = neighbourhood socioeconomic status.
IT = information technology.
Associations of NSES and other activity exposure: Correlation and 3 step prediction model statistics.
| Outcome variables—computerexposure | Spearman’s rho correlation | Individual R squared change (Step 1) | Family R squared change (Step 2) | NSES R squared change (Step 3) | Overall model R squared | Overall model F and p |
|---|---|---|---|---|---|---|
| Monthly frequency | . 173 | .056 | .013 | .024 | .094 | 10.10, <.001 |
| Usual duration | .143 | .026 | .008 | .009 | .042 | 4.27, <.001 |
| Longest duration | .144 | .030 | .012 | .007 | .121 | 5.05, <.001 |
| Monthly frequency | .068 | .033 | .007 | .001 | .032 | 4.57, <.001 |
| Usual duration | .001 | .045 | .003 | .000 | .039 | 5.04, <.001 |
| Longest duration | .058 | .074 | .002 | .002 | .070 | 8.63, <.001 |
Note.
* = p <.05,
** = p <.001.
NSES = neighbourhood socioeconomic status.