Department of Psychiatry, University of Michigan, Ann Arbor, MI, USA.
Department of Psychology, University of Michigan, Ann Arbor, MI, USA.
Sleep. 2024 Jun 13;47(6). doi: 10.1093/sleep/zsae048.
Sleep disturbances are common in adolescence and associated with a host of negative outcomes. Here, we assess associations between multifaceted sleep disturbances and a broad set of psychological, cognitive, and demographic variables using a data-driven approach, canonical correlation analysis (CCA).
Baseline data from 9093 participants from the Adolescent Brain Cognitive Development (ABCD) Study were examined using CCA, a multivariate statistical approach that identifies many-to-many associations between two sets of variables by finding combinations for each set of variables that maximize their correlation. We combined CCA with leave-one-site-out cross-validation across ABCD sites to examine the robustness of results and generalizability to new participants. The statistical significance of canonical correlations was determined by non-parametric permutation tests that accounted for twin, family, and site structure. To assess the stability of the associations identified at baseline, CCA was repeated using 2-year follow-up data from 4247 ABCD Study participants.
Two significant sets of associations were identified: (1) difficulty initiating and maintaining sleep and excessive daytime somnolence were strongly linked to nearly all domains of psychopathology (r2 = 0.36, p < .0001); (2) sleep breathing disorders were linked to BMI and African American/black race (r2 = 0.08, p < .0001). These associations generalized to unseen participants at all 22 ABCD sites and were replicated using 2-year follow-up data.
These findings underscore interwoven links between sleep disturbances in early adolescence and psychological, social, and demographic factors.
睡眠障碍在青少年中很常见,与许多负面后果有关。在这里,我们使用数据驱动的方法——典型相关分析(CCA),评估多方面的睡眠障碍与广泛的心理、认知和人口统计学变量之间的关联。
使用 CCA 分析了来自青少年大脑认知发展(ABCD)研究的 9093 名参与者的基线数据,CCA 是一种多元统计方法,通过找到每个变量集的组合来最大化它们之间的相关性,从而识别两个变量集之间的多对多关联。我们将 CCA 与 ABCD 站点的逐个站点外交叉验证相结合,以检查结果的稳健性和对新参与者的可推广性。典型相关的统计显著性通过考虑双胞胎、家庭和站点结构的非参数置换检验来确定。为了评估在基线时确定的关联的稳定性,我们使用来自 4247 名 ABCD 研究参与者的 2 年随访数据重复了 CCA。
确定了两组显著的关联:(1)入睡和维持睡眠困难以及白天过度嗜睡与几乎所有的精神病理学领域都有很强的关联(r2=0.36,p<0.0001);(2)睡眠呼吸障碍与 BMI 和非裔美国人/黑人种族有关(r2=0.08,p<0.0001)。这些关联在所有 22 个 ABCD 站点的未见过的参与者中都具有普遍性,并使用 2 年的随访数据进行了复制。
这些发现强调了青少年早期睡眠障碍与心理、社会和人口统计学因素之间的交织联系。