Latent Profiles of Childhood Adversity, Adolescent Mental Health, and Neural Network Connectivity

Author:

Hardi Felicia A.12,Beltz Adriene M.1,McLoyd Vonnie1,Brooks-Gunn Jeanne34,Huntley Edward5,Mitchell Colter56,Hyde Luke W.15,Monk Christopher S.1578

Affiliation:

1. Department of Psychology, University of Michigan, Ann Arbor

2. Yale University, New Haven, Connecticut

3. Teachers College, Columbia University, New York, New York

4. College of Physicians and Surgeons, Columbia University, New York, New York

5. Survey Research Center of the Institute for Social Research, University of Michigan, Ann Arbor

6. Population Studies Center of the Institute for Social Research, University of Michigan, Ann Arbor

7. Neuroscience Graduate Program, University of Michigan, Ann Arbor

8. Department of Psychiatry, University of Michigan, Ann Arbor

Abstract

ImportanceAdverse childhood experiences are pervasive and heterogeneous, with potential lifelong consequences for psychiatric morbidity and brain health. Existing research does not capture the complex interplay of multiple adversities, resulting in a lack of precision in understanding their associations with neural function and mental health.ObjectivesTo identify distinct childhood adversity profiles and examine their associations with adolescent mental health and brain connectivity.Design, Setting, and ParticipantsThis population-based birth cohort used data for children who were born in 20 large US cities between 1998 and 2000 and participated in the Future Families and Child Well-Being Study. Families were interviewed when children were born and at ages 1, 3, 5, 9, and 15 years. At age 15 years, neuroimaging data were collected from a subset of these youths. Data were collected from February 1998 to April 2017. Analyses were conducted from March to December 2023.ExposuresLatent profiles of childhood adversity, defined by family and neighborhood risks across ages 0 to 9 years.Main Outcomes and MeasuresInternalizing and externalizing symptoms at age 15 years using parent- and youth-reported measures. Profile-specific functional magnetic resonance imaging connectivity across the default mode network (DMN), salience network (SN), and frontoparietal network (FPN).ResultsData from 4210 individuals (2211 [52.5%] male; 1959 [46.5%] Black, 1169 [27.7%] Hispanic, and 786 [18.7%] White) revealed 4 childhood adversity profiles: low-adversity (1230 individuals [29.2%]), medium-adversity (1973 [46.9%]), high-adversity (457 [10.9%]), and high maternal depression (MD; 550 [13.1%]). High-adversity, followed by MD, profiles had the highest symptoms. Notably, internalizing symptoms did not differ between these 2 profiles (mean difference, 0.11; 95% CI, −0.03 to 0.26), despite the MD profile showing adversity levels most similar to the medium-adversity profile. In the neuroimaging subsample of 167 individuals (91 [54.5%] female; 128 [76.6%] Black, 11 [6.6%] Hispanic, and 20 [12.0%] White; mean [SD] age, 15.9 [0.5] years), high-adversity and MD profiles had the highest DMN density relative to other profiles (F(3,163) = 11.14; P < .001). The high-adversity profile had lower SN density relative to the low-adversity profile (mean difference, −0.02; 95% CI, −0.04 to −0.003) and the highest FPN density among all profiles (F(3,163) = 18.96; P < .001). These differences were specific to brain connectivity during an emotion task, but not at rest.Conclusions and RelevanceIn this cohort study, children who experienced multiple adversities, or only elevated MD, had worse mental health and different neural connectivity in adolescence. Interventions targeting multiple risk factors, with a focus on maternal mental health, could produce the greatest benefits.

Publisher

American Medical Association (AMA)

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