Association Between Age and Familial Risk for Alcoholism on Functional Connectivity in Adolescence.
- Authors
- Vaidya, Jatin G; Elmore, Alexis L; Wallace, Alexander L; Langbehn, Douglas R; Kramer, John R; Kuperman, Samuel; O'Leary, Daniel S
- Year
- 2019
- Journal
- Journal of the American Academy of Child and Adolescent Psychiatry
- PMID
- 30768382
- DOI
- 10.1016/j.jaac.2018.12.008
- PMCID
- PMC7428193
OBJECTIVE: Youth with a family history of alcohol use disorder (family history positive [FHP]) are at increased risk for developing maladaptive substance use relative to family history negative (FHN) peers. Building on earlier studies demonstrating morphological differences and distinct patterns of neural activation in FHP, the purpose of the present study was to investigate differential intrinsic functional connectivity among brain networks indexing premorbid risk of developing alcohol use disorder (AUD). METHOD: The current study examined intrinsic functional connectivity using resting state functional magnetic resonance imaging in 191 adolescents 13 to 18 years of age with and without family history of AUD via independent component analysis, a method enabling data-driven investigation of internetwork and intranetwork connectivity among brain regions at rest. RESULTS: Analyses revealed significantly lower intranetwork connectivity in FHP compared to FHN participants between the dorsal premotor cortex and other sensorimotor network regions. Reduced intranetwork connectivity in this region was further correlated with the number of biological family members with AUD and mood disorders. Robust differences were also evident in internetwork connectivity as a function of age. However, there was no evidence for family history by age interactions. CONCLUSION: Intra- but not internetwork connectivity appears to differentiate FHP and FHN adolescents, whereas age differences within adolescence are marked by differences in internetwork connectivity.
Components Derived From Group Independent Components Analysis (ICA)Note:AUD = auditory; BG = basal ganglia; Cereb = cerebellum; DMN = default mode network; Exec = executive control; SM = sensorimotor; VIS = visual. Please note color figures are available online.
Internetwork Connectivity Differences Between Groups 17 to 18 Years Versus 13 to 14 Years of AgeNote: Main effect for age group comparing participants 17 to 18 years versus 13 to 14 years of age (false discovery rate [FDR] corrected). Hotter colors reflect higher conectiity between two components in the group 17 to 18 years of age. Cooler colors reflect connectivity that is higher in the group 13 to 14 years of age. Results are collapsed across family history group. AUD = auditory; BG = basal ganglia; CER = cerebellum; DMN = default mode network; EXEC = executive control; SM = sensorimotor; VIS = visual. Please note color figures are available online.
Intranetwork Connectivity Differences Between Groups With or Without Family History of Alcohol Use DisordersNote: Connectivity in premotor cortex to other regions of a sensorimotor network was lower in FHP adolescents compared to FHN participants. FH = family history; FHP = family history positive; FHP = family history negative. Please note color figures are available online.
| Name | Type |
|---|---|
| adolescent participants | cohort |
| age | phenotype |
| age (13β14) local | cohort |
| age 13-14 years local | cohort |
| age (15β16) local | cohort |
| age (17β18) local | cohort |
| age 17-18 years local | cohort |
| alcohol | phenotype |
| Alcohol Use | phenotype |
| Alcohol Use Disorder | phenotype |
| Altered connectivity patterns local | phenotype |
| antisocial personality disorder | phenotype |
| anxiety | phenotype |
| attention deficit hyperactivity disorder | phenotype |
| AUD | phenotype |
| auditory | anatomy |
| Auditory brain regions local | anatomy |
| BA6 local | anatomy |
| BA6 region of precentral gyrus local | anatomy |
| basal ganglia | anatomy |
| behavioral consequences | phenotype |
| brain | anatomy |
| brain measures local | anatomy |
| Brodmann area 6 local | anatomy |
| cerebellum | anatomy |
| cerebellum network local | anatomy |
| cerebrospinal fluid | drug |
| Cognitive consequences local | phenotype |
| cognitive processes | phenotype |
| Collaborative Study on the Genetics of Alcoholism (COGA) | cohort |
| Component 9 local | anatomy |
| conduct disorder | phenotype |
| cortical thickness | phenotype |
| default mode network | anatomy |
| Digit Span | phenotype |
| Dorsolateral cortex local | anatomy |
| drug dependence | phenotype |
| eating disorder | phenotype |
| education level of parents local | phenotype |
| executive control local | anatomy |
| executive function | phenotype |
| executive functioning | phenotype |
| externalizing disorders | phenotype |
| family history group local | cohort |
| family history negative | phenotype |
| family history positive | phenotype |
| FHN | cohort |
| FHN children local | cohort |
| FHN participants | cohort |
| FHP | cohort |
| FHP individuals | cohort |
| FHP participants local | cohort |
| frontal cortex | anatomy |
| frontal lobe networks local | anatomy |
| fronto-parietal network | anatomy |
| Functional connectivity alterations local | phenotype |
| internetwork connectivity local | anatomy |
| internetwork connectivity local | phenotype |
| Internetwork connectivity local | phenotype |
| intranetwork connectivity local | phenotype |
| Intranetwork connectivity local | phenotype |
| IQ | phenotype |
| lower connectivity in BA6 local | phenotype |
| marijuana | phenotype |
| mood disorders | phenotype |
| mothers | cohort |
| motor behaviors local | phenotype |
| older adolescents (17-18 years) local | cohort |
| Oppositional-defiant disorder | phenotype |
| orbitofrontal cortex | anatomy |
| other drugs | drug |
| other substances | phenotype |
| parental education | phenotype |
| parietal cortex | anatomy |
| participants | cohort |
| participants age 13-14 years local | cohort |
| participants age 17-18 years local | cohort |
| personality disorders | phenotype |
| poorer visuospatial working memory local | phenotype |
| Preadolescent participants local | cohort |
| precentral gyrus | anatomy |
| pregnancy | phenotype |
| premotor cortex | anatomy |
| problematic alcohol use | phenotype |
| salience network | anatomy |
| Semi-Structured Assessment for the Genetics of Alcoholism local | drug |
| sensorimotor | anatomy |
| sensorimotor cortex | anatomy |
| sensorimotor network local | anatomy |
| Sensorimotor network local | anatomy |
| Sensorimotor network connectivity local | phenotype |
| sensory/sensorimotor areas local | anatomy |
| sex | phenotype |
| socioeconomic status | phenotype |
| spatial working memory | phenotype |
| substance use | phenotype |
| Task switching local | phenotype |
| tobacco use | phenotype |
| Trails A local | phenotype |
| Trails A performance time local | phenotype |
| Trails B local | phenotype |
| Verbal working memory local | phenotype |
| visual | anatomy |
| visual attention | phenotype |
| Visual processing regions of the occipital lobe local | anatomy |
| visuomotor network local | anatomy |
| visuomotor task deficits local | phenotype |
| Visuospatial Sequencing local | phenotype |
| visuospatial working memory local | phenotype |
| Visuospatial working memory local | phenotype |
| white matter | anatomy |
| younger adolescents (13-14 years) local | cohort |
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