| Literature DB >> 35090817 |
Orsolya Kiss1, Elisabet Alzueta1, Dilara Yuksel1, Kilian M Pohl2, Massimiliano de Zambotti1, Eva M Műller-Oehring2, Devin Prouty1, Ingrid Durley1, William E Pelham3, Connor J McCabe3, Marybel R Gonzalez3, Sandra A Brown3, Natasha E Wade3, Andrew T Marshall4, Elizabeth R Sowell4, Florence J Breslin5, Krista M Lisdahl6, Anthony S Dick7, Chandni S Sheth8, Bruce D McCandliss9, Mathieu Guillaume9, Amandine M Van Rinsveld9, Gayathri J Dowling10, Susan F Tapert3, Fiona C Baker11.
Abstract
PURPOSE: Adolescence is characterized by dramatic physical, social, and emotional changes, making teens particularly vulnerable to the mental health effects of the COVID-19 pandemic. This longitudinal study identifies young adolescents who are most vulnerable to the psychological toll of the pandemic and provides insights to inform strategies to help adolescents cope better in times of crisis.Entities:
Keywords: Adolescents; COVID-19; Children; Mental-health; Pandemic; Sex differences; Sleep
Mesh:
Year: 2022 PMID: 35090817 PMCID: PMC8789404 DOI: 10.1016/j.jadohealth.2021.11.023
Source DB: PubMed Journal: J Adolesc Health ISSN: 1054-139X Impact factor: 5.012
Demographics of ABCD study participants and the subset included in the current analysis
| Variable | Release 3.0 baseline data (N = 11,878) | Survey 1 (N = 3,091) | Survey 2 (N = 3,193) | Survey 3 (N = 2,934) |
|---|---|---|---|---|
| Age (years), mean (range) | 9.91 (9–11) | 12.86 (11–14) | 12.94 (11–14) | 13.05 (11–14) |
| Sex | ||||
| Female | 5,682 (47.8%) | 1,530 (49.3%) | 1,562 (48.9%) | 1,435 (48.9%) |
| Male | 6,196 (52.1%) | 1,561 (50.6%) | 1,631 (51.0%) | 1,499 (51.1%) |
| Race | ||||
| White | 8,244 (69.4%) | 2,481 (80.2%) | 2,521 (78.9%) | 2,365 (80.6%) |
| Black | 1,895 (15.9%) | 213 (6.8%) | 267 (8.3%) | 216 (7.36%) |
| Asian | 498 (4.1%) | 170 (5.4%) | 172 (5.3%) | 168 (5.7%) |
| Multiracial/Multiethnic | 184 (1.5%) | 27 (0.8%) | 32 (1%) | 26 (0.8%) |
| Other | 852 (7.1%) | 167 (5.4%) | 168 (5.2%) | 128 (4.36%) |
| Unknown/Not reported | 205 (1.7%) | 34 (1.0%) | 33 (1.0%) | 29 (0.9%) |
| Ethnicity | ||||
| Hispanic/Latino | 2,411 (20.3%) | 512 (16.5%) | 523 (16.3%) | 457 (15.5%) |
| Not Hispanic | 9,314 (78.4%) | 2,545 (82.3%) | 2,638 (82.5%) | 2,446 (8.36%) |
| Unknown/Not reported | 143 (1.2%) | 33 (1%) | 34 (1%) | 31 (1%) |
| Parental education | ||||
| <High school diploma | 1,395 (11.7%) | 40 (1.2%) | 32 (1.0%) | 32 (1.0%) |
| High school diploma/GED | 330 (2.7%) | 174 (5.6%) | 182 (5.5%) | 160 (5.4%) |
| Some college | 3,080 (25.9%) | 615 (19.8%) | 673 (21.0%) | 587 (20.0%) |
| Bachelor's degree | 3,015 (25.3%) | 934 (30.2%) | 978 (30.6%) | 923 (31.4%) |
| Postgraduate degree | 4,044 (34.0%) | 1,325 (42.8%) | 1,323 (41.4%) | 1,230 (42.1%) |
| Unknown/not reported | 14 (0.1%) | 3 (<0.1%) | 5 (<0.1%) | 2 (<0.1%) |
ABCD = Adolescent Brain Cognitive Development; GED = General Educational Development Test.
Categories for race for the ABCD cohort were defined as in Goldstone et al. 2020.
Figure 1Feature importance of the GBT model trained to predict positive affect in young adolescents during the pandemic (n = 2,896). Top 20 features are sorted by mean absolute SHAP value. The color of the bars represents the direction of the effect (red: higher values associated with higher SHAP scores). In variable names, “yr” = youth report; “pr” = parent report.
Figure 2Feature importance of the GBT model trained to predict stress in young adolescents during the pandemic (n = 3,193). Top 20 features are sorted by mean absolute SHAP value. The color of the bars represents the direction of the effect (red: higher values associated with higher SHAP scores). In variable names, “yr” = youth report; “pr” = parent report.
Figure 3Feature importance of the GBT model trained to predict anxiety in young adolescents during the pandemic (n = 3,193). Top 20 features are sorted by mean absolute SHAP value. The color of the bars represents the direction of the effect (red: higher values associated with higher SHAP scores). In variable names, “yr” = youth report; “pr” = parent report.
Figure 4(A) Differences in the number and percentage of participants who exceeded the cutoff for high depressive symptoms (standard T-Score > 60) at COVID-19 Survey 1 and COVID-19 Survey 3. (B) Feature importance of the GBT model trained to predict depressive symptoms based on the dataset from Survey 1 (n = 3,063) in young adolescents during the pandemic. Top 20 features are sorted by mean absolute SHAP value. The color of the bars represents the direction of the effect (red: higher values associated with higher SHAP scores). In variable names, “yr” = youth report; “pr” = parent report.